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Author SHA1 Message Date
Jesse Gross
c14f348ffa runner.go: Use stable llama.cpp sampling interface
Currently for sampling we are using an internal interface for the
llama.cpp examples, which tends to change from release to release.
This is the only such interface used for text models, though llava
and clip are also used for image processing.

This switches to use the stable interfaces, reducing the amount of
work needed for future llama.cpp bumps. It also significantly
reduces the amount of code that we need to vendor (much of it is
unused but is a dependency).

The sampling logic is the same as it is now for the parameters that
we support and is done at the CGo layer. However, in the future if
there are benefits to reconfiguring it then we can expose the
primatives to native Go code.
2024-11-21 11:22:01 -08:00
803 changed files with 71576 additions and 118804 deletions

9
.gitattributes vendored
View File

@@ -7,14 +7,5 @@ llama/**/*.cuh linguist-vendored
llama/**/*.m linguist-vendored
llama/**/*.metal linguist-vendored
ml/backend/**/*.c linguist-vendored
ml/backend/**/*.h linguist-vendored
ml/backend/**/*.cpp linguist-vendored
ml/backend/**/*.hpp linguist-vendored
ml/backend/**/*.cu linguist-vendored
ml/backend/**/*.cuh linguist-vendored
ml/backend/**/*.m linguist-vendored
ml/backend/**/*.metal linguist-vendored
* text=auto
*.go text eol=lf

View File

@@ -85,12 +85,13 @@ jobs:
import-module 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -vsinstallpath 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise' -skipautomaticlocation -DevCmdArguments '-arch=x64 -no_logo'
if (!(gcc --version | select-string -quiet clang)) { throw "wrong gcc compiler detected - must be clang" }
make dist
make
name: make
- uses: actions/upload-artifact@v4
with:
name: generate-windows-cpu
path: |
build/**/*
dist/windows-amd64/**
# ROCm generation step
@@ -142,12 +143,13 @@ jobs:
import-module 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -vsinstallpath 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise' -skipautomaticlocation -DevCmdArguments '-arch=x64 -no_logo'
if (!(gcc --version | select-string -quiet clang)) { throw "wrong gcc compiler detected - must be clang" }
make help-runners
make dist_rocm
make -C llama print-HIP_PATH print-HIP_LIB_DIR
make rocm
- uses: actions/upload-artifact@v4
with:
name: generate-windows-rocm
path: |
build/**/*
dist/windows-amd64/**
# CUDA generation step
@@ -224,11 +226,12 @@ jobs:
import-module 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -vsinstallpath 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise' -skipautomaticlocation -DevCmdArguments '-arch=x64 -no_logo'
if (!(gcc --version | select-string -quiet clang)) { throw "wrong gcc compiler detected - must be clang" }
make dist_cuda_v$(($env:CUDA_PATH | split-path -leaf) -replace 'v(\d+).*', '$1')
make cuda_v$(($env:CUDA_PATH | split-path -leaf) -replace 'v(\d+).*', '$1')
- uses: actions/upload-artifact@v4
with:
name: generate-windows-cuda-${{ matrix.cuda.version }}
path: |
build/**/*
dist/windows-amd64/**
# windows arm64 generate, go build, and zip file (no installer)
@@ -447,23 +450,20 @@ jobs:
- uses: actions/download-artifact@v4
with:
name: generate-windows-cpu
path: dist/windows-amd64/
- uses: actions/download-artifact@v4
with:
name: generate-windows-cuda-11.3
path: dist/windows-amd64/
- uses: actions/download-artifact@v4
with:
name: generate-windows-cuda-12.4
path: dist/windows-amd64/
- uses: actions/download-artifact@v4
with:
name: generate-windows-rocm
path: dist/windows-amd64/
- uses: actions/download-artifact@v4
with:
name: windows-arm64
path: dist
- run: dir build
- run: |
import-module 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -vsinstallpath 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise' -skipautomaticlocation -DevCmdArguments '-arch=x64 -no_logo'

View File

@@ -1,5 +1,11 @@
name: test
env:
ROCM_WINDOWS_URL: https://download.amd.com/developer/eula/rocm-hub/AMD-Software-PRO-Edition-24.Q3-WinSvr2022-For-HIP.exe
MSYS2_URL: https://github.com/msys2/msys2-installer/releases/download/2024-07-27/msys2-x86_64-20240727.exe
CUDA_12_WINDOWS_URL: https://developer.download.nvidia.com/compute/cuda/12.4.0/local_installers/cuda_12.4.0_551.61_windows.exe
CUDA_12_WINDOWS_VER: 12.4
concurrency:
# For PRs, later CI runs preempt previous ones. e.g. a force push on a PR
# cancels running CI jobs and starts all new ones.
@@ -21,7 +27,7 @@ jobs:
changes:
runs-on: ubuntu-latest
outputs:
changed: ${{ steps.changes.outputs.changed }}
RUNNERS: ${{ steps.changes.outputs.RUNNERS }}
steps:
- uses: actions/checkout@v4
with:
@@ -29,61 +35,292 @@ jobs:
- id: changes
run: |
changed() {
local BASE=${{ github.event.pull_request.base.sha }}
local HEAD=${{ github.event.pull_request.head.sha }}
local MERGE_BASE=$(git merge-base $BASE $HEAD)
git diff-tree -r --no-commit-id --name-only "$MERGE_BASE" "$HEAD" \
git diff-tree -r --no-commit-id --name-only \
$(git merge-base ${{ github.event.pull_request.base.sha }} ${{ github.event.pull_request.head.sha }}) \
${{ github.event.pull_request.head.sha }} \
| xargs python3 -c "import sys; from pathlib import Path; print(any(Path(x).match(glob) for x in sys.argv[1:] for glob in '$*'.split(' ')))"
}
echo changed=$(changed 'llama/llama.cpp/**' 'ml/backend/ggml/ggml/**') | tee -a $GITHUB_OUTPUT
{
echo RUNNERS=$(changed 'llama/**')
} >>$GITHUB_OUTPUT
linux:
runners-linux-cuda:
needs: [changes]
if: ${{ needs.changes.outputs.changed == 'True' }}
if: ${{ needs.changes.outputs.RUNNERS == 'True' }}
strategy:
matrix:
include:
- container: nvidia/cuda:11.8.0-devel-ubuntu22.04
preset: CUDA
- container: rocm/dev-ubuntu-22.04:6.1.2
preset: ROCm
extra-packages: rocm-libs
runs-on: ubuntu-latest
container: ${{ matrix.container }}
cuda-version:
- '11.8.0'
runs-on: linux
container: nvidia/cuda:${{ matrix.cuda-version }}-devel-ubuntu20.04
steps:
- uses: actions/checkout@v4
- run: |
apt-get update
apt-get install -y cmake pkg-config ${{ matrix.extra-packages }}
apt-get update && apt-get install -y git build-essential curl
env:
DEBIAN_FRONTEND: noninteractive
- uses: actions/checkout@v4
- uses: actions/setup-go@v4
with:
go-version-file: go.mod
cache: true
- run: go get ./...
- run: |
cmake --preset ${{ matrix.preset }}
cmake --build --preset ${{ matrix.preset }} --parallel
test:
git config --global --add safe.directory /__w/ollama/ollama
cores=$(grep '^core id' /proc/cpuinfo |sort -u|wc -l)
make -j $cores cuda_v11
runners-linux-rocm:
needs: [changes]
if: ${{ needs.changes.outputs.RUNNERS == 'True' }}
strategy:
matrix:
os: [ubuntu-latest, macos-latest, windows-latest]
rocm-version:
- '6.1.2'
runs-on: linux
container: rocm/dev-ubuntu-20.04:${{ matrix.rocm-version }}
steps:
- run: |
apt-get update && apt-get install -y git build-essential curl rocm-libs
env:
DEBIAN_FRONTEND: noninteractive
- uses: actions/checkout@v4
- uses: actions/setup-go@v4
with:
go-version-file: go.mod
cache: true
- run: go get ./...
- run: |
git config --global --add safe.directory /__w/ollama/ollama
cores=$(grep '^core id' /proc/cpuinfo |sort -u|wc -l)
make -j $cores rocm
# ROCm generation step
runners-windows-rocm:
needs: [changes]
if: ${{ needs.changes.outputs.RUNNERS == 'True' }}
runs-on: windows
steps:
- uses: actions/checkout@v4
- uses: actions/setup-go@v5
with:
go-version-file: go.mod
cache: true
- name: Set make jobs default
run: |
echo "MAKEFLAGS=--jobs=$((Get-ComputerInfo -Property CsProcessors).CsProcessors.NumberOfCores)" | Out-File -FilePath $env:GITHUB_ENV -Encoding utf8 -Append
# ROCM installation steps
- name: 'Cache ROCm installer'
id: cache-rocm
uses: actions/cache@v4
with:
path: rocm-install.exe
key: ${{ env.ROCM_WINDOWS_URL }}
- name: 'Conditionally Download ROCm'
if: steps.cache-rocm.outputs.cache-hit != 'true'
run: |
$ErrorActionPreference = "Stop"
Invoke-WebRequest -Uri "${env:ROCM_WINDOWS_URL}" -OutFile "rocm-install.exe"
- name: 'Install ROCm'
run: |
Start-Process "rocm-install.exe" -ArgumentList '-install' -NoNewWindow -Wait
- name: 'Verify ROCm'
run: |
& 'C:\Program Files\AMD\ROCm\*\bin\clang.exe' --version
echo "HIP_PATH=$(Resolve-Path 'C:\Program Files\AMD\ROCm\*\bin\clang.exe' | split-path | split-path | select -first 1)" | Out-File -FilePath $env:GITHUB_ENV -Encoding utf8 -Append
- name: Add msys paths
run: |
echo "c:\msys64\usr\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
echo "C:\msys64\clang64\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
- name: Install msys2 tools
run: |
Start-Process "c:\msys64\usr\bin\pacman.exe" -ArgumentList @("-S", "--noconfirm", "mingw-w64-clang-x86_64-gcc-compat", "mingw-w64-clang-x86_64-clang") -NoNewWindow -Wait
- name: make rocm runner
run: |
import-module 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -vsinstallpath 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise' -skipautomaticlocation -DevCmdArguments '-arch=x64 -no_logo'
if (!(gcc --version | select-string -quiet clang)) { throw "wrong gcc compiler detected - must be clang" }
make -C llama print-HIP_PATH print-HIP_LIB_DIR
make rocm
# CUDA generation step
runners-windows-cuda:
needs: [changes]
if: ${{ needs.changes.outputs.RUNNERS == 'True' }}
runs-on: windows
steps:
- uses: actions/checkout@v4
- uses: actions/setup-go@v5
with:
go-version-file: go.mod
cache: true
- name: Set make jobs default
run: |
echo "MAKEFLAGS=--jobs=$((Get-ComputerInfo -Property CsProcessors).CsProcessors.NumberOfCores)" | Out-File -FilePath $env:GITHUB_ENV -Encoding utf8 -Append
# CUDA installation steps
- name: 'Cache CUDA installer'
id: cache-cuda
uses: actions/cache@v4
with:
path: cuda-install.exe
key: ${{ env.CUDA_12_WINDOWS_URL }}
- name: 'Conditionally Download CUDA'
if: steps.cache-cuda.outputs.cache-hit != 'true'
run: |
$ErrorActionPreference = "Stop"
Invoke-WebRequest -Uri "${env:CUDA_12_WINDOWS_URL}" -OutFile "cuda-install.exe"
- name: 'Install CUDA'
run: |
$subpackages = @("cudart", "nvcc", "cublas", "cublas_dev") | foreach-object {"${_}_${{ env.CUDA_12_WINDOWS_VER }}"}
Start-Process "cuda-install.exe" -ArgumentList (@("-s") + $subpackages) -NoNewWindow -Wait
- name: 'Verify CUDA'
run: |
& (resolve-path "c:\Program Files\NVIDIA*\CUDA\v*\bin\nvcc.exe")[0] --version
$cudaPath=((resolve-path "c:\Program Files\NVIDIA*\CUDA\v*\bin\nvcc.exe")[0].path | split-path | split-path)
$cudaVer=($cudaPath | split-path -leaf ) -replace 'v(\d+).(\d+)', '$1_$2'
echo "$cudaPath\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
echo "CUDA_PATH=$cudaPath" | Out-File -FilePath $env:GITHUB_ENV -Encoding utf8 -Append
echo "CUDA_PATH_V${cudaVer}=$cudaPath" | Out-File -FilePath $env:GITHUB_ENV -Encoding utf8 -Append
echo "CUDA_PATH_VX_Y=CUDA_PATH_V${cudaVer}" | Out-File -FilePath $env:GITHUB_ENV -Encoding utf8 -Append
- name: Add msys paths
run: |
echo "c:\msys64\usr\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
echo "C:\msys64\clang64\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
- name: Install msys2 tools
run: |
Start-Process "c:\msys64\usr\bin\pacman.exe" -ArgumentList @("-S", "--noconfirm", "mingw-w64-clang-x86_64-gcc-compat", "mingw-w64-clang-x86_64-clang") -NoNewWindow -Wait
- name: make cuda runner
run: |
import-module 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -vsinstallpath 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise' -skipautomaticlocation -DevCmdArguments '-arch=x64 -no_logo'
if (!(gcc --version | select-string -quiet clang)) { throw "wrong gcc compiler detected - must be clang" }
make cuda_v$(($env:CUDA_PATH | split-path -leaf) -replace 'v(\d+).*', '$1')
runners-cpu:
needs: [changes]
if: ${{ needs.changes.outputs.RUNNERS == 'True' }}
strategy:
matrix:
os: [ubuntu-latest, macos-latest, windows-2019]
arch: [amd64, arm64]
exclude:
- os: ubuntu-latest
arch: arm64
- os: windows-2019
arch: arm64
runs-on: ${{ matrix.os }}
env:
GOARCH: ${{ matrix.arch }}
ARCH: ${{ matrix.arch }}
CGO_ENABLED: '1'
steps:
- uses: actions/checkout@v4
- uses: actions/setup-go@v5
with:
go-version-file: go.mod
cache: true
- name: Add msys paths
if: ${{ startsWith(matrix.os, 'windows-') }}
run: |
echo "c:\msys64\usr\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
echo "C:\msys64\clang64\bin" | Out-File -FilePath $env:GITHUB_PATH -Encoding utf8 -Append
- name: Install msys2 tools
if: ${{ startsWith(matrix.os, 'windows-') }}
run: |
Start-Process "c:\msys64\usr\bin\pacman.exe" -ArgumentList @("-S", "--noconfirm", "mingw-w64-clang-x86_64-gcc-compat", "mingw-w64-clang-x86_64-clang") -NoNewWindow -Wait
- name: 'Build Windows Go Runners'
if: ${{ startsWith(matrix.os, 'windows-') }}
run: |
$gopath=(get-command go).source | split-path -parent
$gccpath=(get-command gcc).source | split-path -parent
import-module 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise\Common7\Tools\Microsoft.VisualStudio.DevShell.dll'
Enter-VsDevShell -vsinstallpath 'C:\Program Files (x86)\Microsoft Visual Studio\2019\Enterprise' -skipautomaticlocation -DevCmdArguments '-arch=x64 -no_logo'
$env:CMAKE_SYSTEM_VERSION="10.0.22621.0"
$env:PATH="$gopath;$gccpath;$env:PATH"
echo $env:PATH
if (!(gcc --version | select-string -quiet clang)) { throw "wrong gcc compiler detected - must be clang" }
make -j 4
- name: 'Build Unix Go Runners'
if: ${{ ! startsWith(matrix.os, 'windows-') }}
run: make -j 4
- run: go build .
lint:
strategy:
matrix:
os: [ubuntu-latest, macos-latest, windows-2019]
arch: [amd64, arm64]
exclude:
- os: ubuntu-latest
arch: arm64
- os: windows-2019
arch: arm64
- os: macos-latest
arch: amd64
runs-on: ${{ matrix.os }}
env:
GOARCH: ${{ matrix.arch }}
CGO_ENABLED: '1'
steps:
- uses: actions/checkout@v4
with:
submodules: recursive
- uses: actions/setup-go@v5
with:
go-version-file: go.mod
cache: false
- run: |
case ${{ matrix.arch }} in
amd64) echo ARCH=x86_64 ;;
arm64) echo ARCH=arm64 ;;
esac >>$GITHUB_ENV
shell: bash
- uses: golangci/golangci-lint-action@v6
with:
args: --timeout 10m0s -v
- run: go test ./...
test:
strategy:
matrix:
os: [ubuntu-latest, macos-latest, windows-2019]
arch: [amd64]
exclude:
- os: ubuntu-latest
arch: arm64
- os: windows-2019
arch: arm64
runs-on: ${{ matrix.os }}
env:
GOARCH: ${{ matrix.arch }}
CGO_ENABLED: '1'
steps:
- uses: actions/checkout@v4
with:
submodules: recursive
- uses: actions/setup-go@v5
with:
go-version-file: go.mod
cache: true
- run: |
case ${{ matrix.arch }} in
amd64) echo ARCH=amd64 ;;
arm64) echo ARCH=arm64 ;;
esac >>$GITHUB_ENV
shell: bash
- run: go build
- run: go test -v ./...
patches:
needs: [changes]
if: ${{ needs.changes.outputs.RUNNERS == 'True' }}
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v4
- name: Verify patches apply cleanly and do not change files
with:
submodules: recursive
- name: Verify patches carry all the changes
run: |
make -f Makefile2 clean checkout sync
git diff --compact-summary --exit-code
make apply-patches sync && git diff --compact-summary --exit-code llama

3
.gitignore vendored
View File

@@ -10,6 +10,9 @@ ollama
.idea
test_data
*.crt
llm/build
build/*/*/*
!build/**/placeholder
llama/build
__debug_bin*
llama/vendor

View File

@@ -8,6 +8,8 @@ linters:
- containedctx
- contextcheck
- errcheck
- exportloopref
- gci
- gocheckcompilerdirectives
- gofmt
- gofumpt
@@ -28,6 +30,8 @@ linters:
- wastedassign
- whitespace
linters-settings:
gci:
sections: [standard, default, localmodule]
staticcheck:
checks:
- all

10
.prettierrc.json Normal file
View File

@@ -0,0 +1,10 @@
{
"trailingComma": "es5",
"tabWidth": 2,
"useTabs": false,
"semi": false,
"singleQuote": true,
"jsxSingleQuote": true,
"printWidth": 120,
"arrowParens": "avoid"
}

View File

@@ -1,45 +0,0 @@
cmake_minimum_required(VERSION 3.21)
project(Ollama C CXX)
include(CheckLanguage)
find_package(Threads REQUIRED)
set(CMAKE_BUILD_TYPE Release)
set(BUILD_SHARED_LIBS ON)
set(CMAKE_CXX_STANDARD 17)
set(CMAKE_CXX_STANDARD_REQUIRED ON)
set(CMAKE_CXX_EXTENSIONS OFF)
set(GGML_BUILD ON)
set(GGML_SHARED ON)
set(GGML_CCACHE ON)
set(GGML_BACKEND_DL ON)
set(GGML_BACKEND_SHARED ON)
set(GGML_SCHED_MAX_COPIES 4)
set(GGML_CPU_ALL_VARIANTS ON)
set(GGML_CUDA_PEER_MAX_BATCH_SIZE 128)
set(GGML_LLAMAFILE ON)
set(CMAKE_RUNTIME_OUTPUT_DIRECTORY ${CMAKE_BINARY_DIR}/lib)
include_directories(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src)
include_directories(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/include)
include_directories(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/ggml-cpu)
include_directories(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/ggml-cpu/amx)
set(GGML_CPU ON)
add_subdirectory(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src)
set_property(TARGET ggml PROPERTY EXCLUDE_FROM_ALL TRUE)
check_language(CUDA)
if(CMAKE_CUDA_COMPILER)
add_subdirectory(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/ggml-cuda)
endif()
check_language(HIP)
if(CMAKE_HIP_COMPILER)
add_subdirectory(${CMAKE_CURRENT_SOURCE_DIR}/ml/backend/ggml/ggml/src/ggml-hip)
endif()

View File

@@ -1,96 +0,0 @@
{
"version": 3,
"configurePresets": [
{
"name": "Default",
"binaryDir": "${sourceDir}/build",
"cacheVariables": {
"CMAKE_BUILD_TYPE": "Release"
}
},
{
"name": "CUDA",
"inherits": [ "Default" ]
},
{
"name": "CUDA 11",
"inherits": [ "CUDA" ],
"cacheVariables": {
"CMAKE_CUDA_ARCHITECTURES": "50;52;53;60;61;62;70;72;75;80;86"
}
},
{
"name": "CUDA 12",
"inherits": [ "CUDA" ],
"cacheVariables": {
"CMAKE_CUDA_ARCHITECTURES": "60;61;62;70;72;75;80;86;87;89;90;90a"
}
},
{
"name": "JetPack 5",
"inherits": [ "CUDA" ],
"cacheVariables": {
"CMAKE_CUDA_ARCHITECTURES": "72;87"
}
},
{
"name": "JetPack 6",
"inherits": [ "CUDA" ],
"cacheVariables": {
"CMAKE_CUDA_ARCHITECTURES": "87"
}
},
{
"name": "ROCm",
"inherits": [ "Default" ]
},
{
"name": "ROCm 6",
"inherits": [ "ROCm" ],
"cacheVariables": {
"CMAKE_HIP_ARCHITECTURES": "gfx900;gfx940;gfx941;gfx942;gfx1010;gfx1012;gfx1030;gfx1100;gfx1101;gfx1102"
}
}
],
"buildPresets": [
{
"name": "Default",
"configurePreset": "Default"
},
{
"name": "CUDA",
"configurePreset": "CUDA",
"targets": [ "ggml-cuda" ]
},
{
"name": "CUDA 11",
"inherits": [ "CUDA" ],
"configurePreset": "CUDA 11"
},
{
"name": "CUDA 12",
"inherits": [ "CUDA" ],
"configurePreset": "CUDA 12"
},
{
"name": "JetPack 5",
"inherits": [ "CUDA" ],
"configurePreset": "JetPack 5"
},
{
"name": "JetPack 6",
"inherits": [ "CUDA" ],
"configurePreset": "JetPack 6"
},
{
"name": "ROCm",
"configurePreset": "ROCm",
"targets": [ "ggml-hip" ]
},
{
"name": "ROCm 6",
"inherits": [ "ROCm" ],
"configurePreset": "ROCm 6"
}
]
}

View File

@@ -1,6 +1,9 @@
ARG GOLANG_VERSION=1.22.8
ARG CMAKE_VERSION=3.22.1
ARG CUDA_VERSION_11=11.3.1
ARG CUDA_V11_ARCHITECTURES="50;52;53;60;61;62;70;72;75;80;86"
ARG CUDA_VERSION_12=12.4.0
ARG CUDA_V12_ARCHITECTURES="60;61;62;70;72;75;80;86;87;89;90;90a"
ARG ROCM_VERSION=6.1.2
ARG JETPACK_6=r36.2.0
ARG JETPACK_5=r35.4.1
@@ -12,22 +15,24 @@ ARG JETPACK_5=r35.4.1
#
### Then incremental builds will be much faster in this container
#
# make -j 10 dist
# make -j 10 && go build -trimpath -o dist/linux-amd64/ollama .
#
FROM --platform=linux/amd64 rocm/dev-centos-7:${ROCM_VERSION}-complete AS unified-builder-amd64
ARG CMAKE_VERSION
ARG GOLANG_VERSION
ARG CUDA_VERSION_11
ARG CUDA_VERSION_12
COPY ./scripts/rh_linux_deps.sh /
ENV PATH /opt/rh/devtoolset-10/root/usr/bin:/usr/local/cuda/bin:$PATH
ENV LD_LIBRARY_PATH=${LD_LIBRARY_PATH}:/usr/local/cuda/lib64
RUN GOLANG_VERSION=${GOLANG_VERSION} sh /rh_linux_deps.sh
ENV LIBRARY_PATH=/usr/local/cuda/lib64/stubs:/opt/amdgpu/lib64
RUN CMAKE_VERSION=${CMAKE_VERSION} GOLANG_VERSION=${GOLANG_VERSION} sh /rh_linux_deps.sh
RUN yum-config-manager --add-repo https://developer.download.nvidia.com/compute/cuda/repos/rhel7/x86_64/cuda-rhel7.repo && \
dnf clean all && \
dnf install -y \
zsh \
cuda-toolkit-$(echo ${CUDA_VERSION_11} | cut -f1-2 -d. | sed -e "s/\./-/g") \
cuda-toolkit-$(echo ${CUDA_VERSION_12} | cut -f1-2 -d. | sed -e "s/\./-/g")
cuda-$(echo ${CUDA_VERSION_11} | cut -f1-2 -d. | sed -e "s/\./-/g") \
cuda-$(echo ${CUDA_VERSION_12} | cut -f1-2 -d. | sed -e "s/\./-/g")
# TODO intel oneapi goes here...
ENV GOARCH amd64
ENV CGO_ENABLED 1
@@ -41,11 +46,12 @@ ENTRYPOINT [ "zsh" ]
# docker run --platform linux/arm64 --rm -it -v $(pwd):/go/src/github.com/ollama/ollama/ builder-arm64
#
FROM --platform=linux/arm64 rockylinux:8 AS unified-builder-arm64
ARG CMAKE_VERSION
ARG GOLANG_VERSION
ARG CUDA_VERSION_11
ARG CUDA_VERSION_12
COPY ./scripts/rh_linux_deps.sh /
RUN GOLANG_VERSION=${GOLANG_VERSION} sh /rh_linux_deps.sh
RUN CMAKE_VERSION=${CMAKE_VERSION} GOLANG_VERSION=${GOLANG_VERSION} sh /rh_linux_deps.sh
RUN yum-config-manager --add-repo https://developer.download.nvidia.com/compute/cuda/repos/rhel8/sbsa/cuda-rhel8.repo && \
dnf config-manager --set-enabled appstream && \
dnf clean all && \
@@ -56,31 +62,38 @@ RUN yum-config-manager --add-repo https://developer.download.nvidia.com/compute/
ENV PATH /opt/rh/gcc-toolset-10/root/usr/bin:$PATH:/usr/local/cuda/bin
ENV LD_LIBRARY_PATH=${LD_LIBRARY_PATH}:/usr/local/cuda/lib64
ENV LIBRARY_PATH=/usr/local/cuda/lib64/stubs:/opt/amdgpu/lib64
ENV GOARCH arm64
ENV GOARCH amd64
ENV CGO_ENABLED 1
WORKDIR /go/src/github.com/ollama/ollama/
ENTRYPOINT [ "zsh" ]
FROM --platform=linux/amd64 unified-builder-amd64 AS build-amd64
FROM --platform=linux/amd64 unified-builder-amd64 AS runners-amd64
COPY . .
ARG OLLAMA_SKIP_CUDA_GENERATE
ARG OLLAMA_SKIP_CUDA_11_GENERATE
ARG OLLAMA_SKIP_CUDA_12_GENERATE
ARG OLLAMA_SKIP_ROCM_GENERATE
ARG CUDA_V11_ARCHITECTURES
ARG CUDA_V12_ARCHITECTURES
ARG OLLAMA_FAST_BUILD
ARG VERSION
ARG CUSTOM_CPU_FLAGS
RUN --mount=type=cache,target=/root/.ccache \
if grep "^flags" /proc/cpuinfo|grep avx>/dev/null; then \
make -j $(nproc) dist ; \
make -j $(expr $(nproc) / 2 ) ; \
else \
make -j 5 dist ; \
fi
RUN cd dist/linux-$GOARCH && \
tar -cf - . | pigz --best > ../ollama-linux-$GOARCH.tgz
RUN if [ -z ${OLLAMA_SKIP_ROCM_GENERATE} ] ; then \
cd dist/linux-$GOARCH-rocm && \
tar -cf - . | pigz --best > ../ollama-linux-$GOARCH-rocm.tgz ;\
make -j 5 ; \
fi
FROM --platform=linux/arm64 unified-builder-arm64 AS runners-arm64
COPY . .
ARG OLLAMA_SKIP_CUDA_GENERATE
ARG OLLAMA_SKIP_CUDA_11_GENERATE
ARG OLLAMA_SKIP_CUDA_12_GENERATE
ARG CUDA_V11_ARCHITECTURES
ARG CUDA_V12_ARCHITECTURES
ARG OLLAMA_FAST_BUILD
RUN --mount=type=cache,target=/root/.ccache \
make -j 5
# Jetsons need to be built in discrete stages
FROM --platform=linux/arm64 nvcr.io/nvidia/l4t-jetpack:${JETPACK_5} AS runners-jetpack5-arm64
ARG GOLANG_VERSION
@@ -93,11 +106,11 @@ WORKDIR /go/src/github.com/ollama/ollama/
COPY . .
ARG CGO_CFLAGS
ENV GOARCH arm64
ARG VERSION
RUN --mount=type=cache,target=/root/.ccache \
make -j 5 dist_cuda_v11 \
make -j 5 cuda_v11 \
CUDA_ARCHITECTURES="72;87" \
GPU_RUNNER_VARIANT=_jetpack5 \
CGO_EXTRA_LDFLAGS_LINUX=-L/usr/local/cuda/lib64/stubs \
DIST_LIB_DIR=/go/src/github.com/ollama/ollama/dist/linux-arm64-jetpack5/lib/ollama \
DIST_GPU_RUNNER_DEPS_DIR=/go/src/github.com/ollama/ollama/dist/linux-arm64-jetpack5/lib/ollama/cuda_jetpack5
@@ -112,29 +125,70 @@ WORKDIR /go/src/github.com/ollama/ollama/
COPY . .
ARG CGO_CFLAGS
ENV GOARCH arm64
ARG VERSION
RUN --mount=type=cache,target=/root/.ccache \
make -j 5 dist_cuda_v12 \
make -j 5 cuda_v12 \
CUDA_ARCHITECTURES="87" \
GPU_RUNNER_VARIANT=_jetpack6 \
CGO_EXTRA_LDFLAGS_LINUX=-L/usr/local/cuda/lib64/stubs \
DIST_LIB_DIR=/go/src/github.com/ollama/ollama/dist/linux-arm64-jetpack6/lib/ollama \
DIST_GPU_RUNNER_DEPS_DIR=/go/src/github.com/ollama/ollama/dist/linux-arm64-jetpack6/lib/ollama/cuda_jetpack6
FROM --platform=linux/arm64 unified-builder-arm64 AS build-arm64
# Intermediate stages used for ./scripts/build_linux.sh
FROM --platform=linux/amd64 centos:7 AS builder-amd64
ARG CMAKE_VERSION
ARG GOLANG_VERSION
COPY ./scripts/rh_linux_deps.sh /
RUN CMAKE_VERSION=${CMAKE_VERSION} GOLANG_VERSION=${GOLANG_VERSION} sh /rh_linux_deps.sh
ENV PATH /opt/rh/devtoolset-10/root/usr/bin:$PATH
ENV CGO_ENABLED 1
ENV GOARCH amd64
WORKDIR /go/src/github.com/ollama/ollama
FROM --platform=linux/amd64 builder-amd64 AS build-amd64
COPY . .
ARG OLLAMA_SKIP_CUDA_GENERATE
ARG OLLAMA_FAST_BUILD
ARG VERSION
COPY --from=runners-amd64 /go/src/github.com/ollama/ollama/dist/ dist/
COPY --from=runners-amd64 /go/src/github.com/ollama/ollama/build/ build/
ARG GOFLAGS
ARG CGO_CFLAGS
ARG OLLAMA_SKIP_ROCM_GENERATE
RUN --mount=type=cache,target=/root/.ccache \
make -j 5 dist
COPY --from=runners-jetpack5-arm64 /go/src/github.com/ollama/ollama/dist/ dist/
COPY --from=runners-jetpack6-arm64 /go/src/github.com/ollama/ollama/dist/ dist/
go build -trimpath -o dist/linux-amd64/bin/ollama .
RUN cd dist/linux-$GOARCH && \
tar -cf - . | pigz --best > ../ollama-linux-$GOARCH.tgz
tar --exclude runners -cf - . | pigz --best > ../ollama-linux-$GOARCH.tgz
RUN if [ -z ${OLLAMA_SKIP_ROCM_GENERATE} ] ; then \
cd dist/linux-$GOARCH-rocm && \
tar -cf - . | pigz --best > ../ollama-linux-$GOARCH-rocm.tgz ;\
fi
FROM --platform=linux/arm64 rockylinux:8 AS builder-arm64
ARG CMAKE_VERSION
ARG GOLANG_VERSION
COPY ./scripts/rh_linux_deps.sh /
RUN CMAKE_VERSION=${CMAKE_VERSION} GOLANG_VERSION=${GOLANG_VERSION} sh /rh_linux_deps.sh
ENV PATH /opt/rh/gcc-toolset-10/root/usr/bin:$PATH
ENV CGO_ENABLED 1
ENV GOARCH arm64
WORKDIR /go/src/github.com/ollama/ollama
FROM --platform=linux/arm64 builder-arm64 AS build-arm64
COPY . .
COPY --from=runners-arm64 /go/src/github.com/ollama/ollama/dist/ dist/
COPY --from=runners-arm64 /go/src/github.com/ollama/ollama/build/ build/
COPY --from=runners-jetpack5-arm64 /go/src/github.com/ollama/ollama/dist/ dist/
COPY --from=runners-jetpack5-arm64 /go/src/github.com/ollama/ollama/build/ build/
COPY --from=runners-jetpack6-arm64 /go/src/github.com/ollama/ollama/dist/ dist/
COPY --from=runners-jetpack6-arm64 /go/src/github.com/ollama/ollama/build/ build/
ARG GOFLAGS
ARG CGO_CFLAGS
RUN --mount=type=cache,target=/root/.ccache \
go build -trimpath -o dist/linux-arm64/bin/ollama .
RUN cd dist/linux-$GOARCH && \
tar --exclude runners -cf - . | pigz --best > ../ollama-linux-$GOARCH.tgz
RUN cd dist/linux-$GOARCH-jetpack5 && \
tar -cf - . | pigz --best > ../ollama-linux-$GOARCH-jetpack5.tgz
tar --exclude runners -cf - . | pigz --best > ../ollama-linux-$GOARCH-jetpack5.tgz
RUN cd dist/linux-$GOARCH-jetpack6 && \
tar -cf - . | pigz --best > ../ollama-linux-$GOARCH-jetpack6.tgz
tar --exclude runners -cf - . | pigz --best > ../ollama-linux-$GOARCH-jetpack6.tgz
FROM --platform=linux/amd64 scratch AS dist-amd64
COPY --from=build-amd64 /go/src/github.com/ollama/ollama/dist/ollama-linux-*.tgz /
@@ -143,13 +197,30 @@ COPY --from=build-arm64 /go/src/github.com/ollama/ollama/dist/ollama-linux-*.tgz
FROM dist-$TARGETARCH AS dist
# Optimized container images do not cary nested payloads
FROM --platform=linux/amd64 builder-amd64 AS container-build-amd64
WORKDIR /go/src/github.com/ollama/ollama
COPY . .
ARG GOFLAGS
ARG CGO_CFLAGS
RUN --mount=type=cache,target=/root/.ccache \
go build -trimpath -o dist/linux-amd64/bin/ollama .
FROM --platform=linux/arm64 builder-arm64 AS container-build-arm64
WORKDIR /go/src/github.com/ollama/ollama
COPY . .
ARG GOFLAGS
ARG CGO_CFLAGS
RUN --mount=type=cache,target=/root/.ccache \
go build -trimpath -o dist/linux-arm64/bin/ollama .
# For amd64 container images, filter out cuda/rocm to minimize size
FROM build-amd64 AS runners-cuda-amd64
FROM runners-amd64 AS runners-cuda-amd64
RUN rm -rf \
./dist/linux-amd64/lib/ollama/libggml_hipblas.so \
./dist/linux-amd64/lib/ollama/runners/rocm*
FROM build-amd64 AS runners-rocm-amd64
FROM runners-amd64 AS runners-rocm-amd64
RUN rm -rf \
./dist/linux-amd64/lib/ollama/libggml_cuda*.so \
./dist/linux-amd64/lib/ollama/libcu*.so* \
@@ -159,15 +230,15 @@ FROM --platform=linux/amd64 ubuntu:22.04 AS runtime-amd64
RUN apt-get update && \
apt-get install -y ca-certificates && \
apt-get clean && rm -rf /var/lib/apt/lists/*
COPY --from=build-amd64 /go/src/github.com/ollama/ollama/dist/linux-amd64/bin/ /bin/
COPY --from=container-build-amd64 /go/src/github.com/ollama/ollama/dist/linux-amd64/bin/ /bin/
COPY --from=runners-cuda-amd64 /go/src/github.com/ollama/ollama/dist/linux-amd64/lib/ /lib/
FROM --platform=linux/arm64 ubuntu:22.04 AS runtime-arm64
RUN apt-get update && \
apt-get install -y ca-certificates && \
apt-get clean && rm -rf /var/lib/apt/lists/*
COPY --from=build-arm64 /go/src/github.com/ollama/ollama/dist/linux-arm64/bin/ /bin/
COPY --from=build-arm64 /go/src/github.com/ollama/ollama/dist/linux-arm64/lib/ /lib/
COPY --from=container-build-arm64 /go/src/github.com/ollama/ollama/dist/linux-arm64/bin/ /bin/
COPY --from=runners-arm64 /go/src/github.com/ollama/ollama/dist/linux-arm64/lib/ /lib/
COPY --from=runners-jetpack5-arm64 /go/src/github.com/ollama/ollama/dist/linux-arm64-jetpack5/lib/ /lib/
COPY --from=runners-jetpack6-arm64 /go/src/github.com/ollama/ollama/dist/linux-arm64-jetpack6/lib/ /lib/
@@ -180,7 +251,7 @@ COPY --from=build-amd64 /go/src/github.com/ollama/ollama/dist/linux-amd64-rocm/l
RUN apt-get update && \
apt-get install -y ca-certificates && \
apt-get clean && rm -rf /var/lib/apt/lists/*
COPY --from=build-amd64 /go/src/github.com/ollama/ollama/dist/linux-amd64/bin/ /bin/
COPY --from=container-build-amd64 /go/src/github.com/ollama/ollama/dist/linux-amd64/bin/ /bin/
COPY --from=runners-rocm-amd64 /go/src/github.com/ollama/ollama/dist/linux-amd64/lib/ /lib/
EXPOSE 11434

View File

@@ -1,66 +0,0 @@
ARG CUDA_11_VERSION=11.3
ARG CUDA_12_VERSION=12.4
ARG ROCM_VERSION=6.1.2
ARG JETPACK_5_VERSION=r35.4.1
ARG JETPACK_6_VERSION=r36.2.0
ARG CMAKE_VERSION=3.31.2
FROM --platform=linux/amd64 rocm/dev-centos-7:${ROCM_VERSION}-complete AS base
ARG CMAKE_VERSION
RUN curl -fsSL https://github.com/Kitware/CMake/releases/download/v${CMAKE_VERSION}/cmake-${CMAKE_VERSION}-linux-x86_64.tar.gz | tar xz -C /usr --strip-components 1
RUN sed -i -e 's/mirror.centos.org/vault.centos.org/g' -e 's/^#.*baseurl=http/baseurl=http/g' -e 's/^mirrorlist=http/#mirrorlist=http/g' /etc/yum.repos.d/*.repo \
&& yum-config-manager --add-repo https://developer.download.nvidia.com/compute/cuda/repos/rhel7/x86_64/cuda-rhel7.repo
# FROM --platform=linux/arm64 rockylinux:8 AS base
# ARG CMAKE_VERSION
# RUN curl -fsSL https://github.com/Kitware/CMake/releases/download/v${CMAKE_VERSION}/cmake-${CMAKE_VERSION}-linux-aarch64.tar.gz | tar xz -C /usr --strip-components 1
# RUN yum-config-manager --add-repo https://developer.download.nvidia.com/compute/cuda/repos/rhel8/sbsa/cuda-rhel8.repo
FROM base AS amd64
ARG CUDA_11_VERSION
ARG CUDA_12_VERSION
RUN yum install -y cuda-toolkit-${CUDA_11_VERSION//./-} \
&& yum install -y cuda-toolkit-${CUDA_12_VERSION//./-}
COPY CMakeLists.txt CMakeLists.txt
COPY ml/backend/ggml/ggml ml/backend/ggml/ggml
FROM --platform=linux/amd64 amd64 AS cuda_11
ENV PATH=/usr/local/cuda-${CUDA_11_VERSION}/bin:$PATH
RUN cmake -S . -B build -DCMAKE_CUDA_ARCHITECTURES="50;52;53;60;61;62;70;72;75;80;86"
RUN cmake --build build --target ggml-cuda -j
FROM --platform=linux/amd64 amd64 AS cuda_12
ENV PATH=/usr/local/cuda-${CUDA_12_VERSION}/bin:$PATH
RUN cmake -S . -B build -DCMAKE_CUDA_ARCHITECTURES="60;61;62;70;72;75;80;86;87;89;90;90a"
RUN cmake --build build --target ggml-cuda -j
FROM --platform=linux/amd64 amd64 AS rocm
RUN cmake -S . -B build -DCMAKE_HIP_ARCHITECTURES="gfx900;gfx940;gfx941;gfx942;gfx1010;gfx1012;gfx1030;gfx1100;gfx1101;gfx1102"
RUN cmake --build build --target ggml-hip -j
FROM --platform=linux/arm64 nvcr.io/nvidia/l4t-jetpack:${JETPACK_5_VERSION} AS jetpack_5
ARG CMAKE_VERSION
RUN curl -fsSL https://github.com/Kitware/CMake/releases/download/v${CMAKE_VERSION}/cmake-${CMAKE_VERSION}-linux-aarch64.tar.gz | tar xz -C /usr --strip-components 1
COPY CMakeLists.txt .
COPY ml/backend/ggml/ggml .
RUN cmake -S . -B build \
-DCMAKE_CUDA_ARCHITECTURES="72;87"
RUN cmake --build build --target ggml-cuda
FROM --platform=linux/arm64 nvcr.io/nvidia/l4t-jetpack:${JETPACK_6_VERSION} AS jetpack_6
ARG CMAKE_VERSION
RUN curl -fsSL https://github.com/Kitware/CMake/releases/download/v${CMAKE_VERSION}/cmake-${CMAKE_VERSION}-linux-aarch64.tar.gz | tar xz -C /usr --strip-components 1
COPY CMakeLists.txt .
COPY ml/backend/ggml/ggml .
RUN cmake -S . -B build \
-DCMAKE_CUDA_ARCHITECTURES="87"
RUN cmake --build build --target ggml-cuda
FROM --platform=linux/amd64 golang:1.23
COPY --from=cuda_11 build/ml/backend/ggml/ggml/src/ggml-cuda/libggml-cuda.so libggml-cuda-11.so
COPY --from=cuda_12 build/ml/backend/ggml/ggml/src/ggml-cuda/libggml-cuda.so libggml-cuda-12.so
COPY --from=rocm build/ml/backend/ggml/ggml/src/ggml-hip/libggml-hip.so libggml-hip.so
# FROM --platform=linux/arm64 golang:1.23
# COPY --from=jetpack_5 build/ml/backend/ggml/ggml/src/ggml-cuda/libggml-cuda.so libggml-cuda-jetpack-5.so
# COPY --from=jetpack_6 build/ml/backend/ggml/ggml/src/ggml-cuda/libggml-cuda.so libggml-cuda-jetpack-6.so

4
Makefile Normal file
View File

@@ -0,0 +1,4 @@
GOALS := $(or $(MAKECMDGOALS),all)
.PHONY: $(GOALS)
$(GOALS):
$(MAKE) -C llama $@

View File

@@ -1,46 +0,0 @@
UPSTREAM=https://github.com/ggerganov/llama.cpp.git
WORKDIR=llama/vendor
FETCH_HEAD=46e3556e01b824e52395fb050b29804b6cff2a7c
all: sync
.PHONY: sync
sync: llama/llama.cpp ml/backend/ggml/ggml
.PHONY: llama/llama.cpp
llama/llama.cpp: llama/vendor/ apply_patches
rsync -arvzc -f "merge $@/.rsync-filter" $< $@
.PHONY: ml/backend/ggml/ggml apply_patches
ml/backend/ggml/ggml: llama/vendor/ggml/ apply_patches
rsync -arvzc -f "merge $@/.rsync-filter" $< $@
PATCHES=$(wildcard llama/patches/*.patch)
.PHONY: apply_patches
.NOTPARALLEL:
apply_patches: $(addsuffix ed, $(PATCHES))
%.patched: %.patch
@if git -c user.name=nobody -c 'user.email=<>' -C $(WORKDIR) am -3 $(realpath $<); then touch $@; else git -C $(WORKDIR) am --abort; exit 1; fi
.PHONY: checkout
checkout: $(WORKDIR)
git -C $(WORKDIR) fetch
git -C $(WORKDIR) checkout -f $(FETCH_HEAD)
$(WORKDIR):
git clone $(UPSTREAM) $(WORKDIR)
.PHONE: format_patches
format_patches: llama/patches
git -C $(WORKDIR) format-patch \
--no-signature \
--no-numbered \
--zero-commit \
-o $(realpath $<) \
$(FETCH_HEAD)
.PHONE: clean
clean: checkout
$(RM) $(addsuffix ed, $(PATCHES))

View File

@@ -1,11 +1,11 @@
<div align="center">
  <a href="https://ollama.com" />
<img alt="ollama" height="200px" src="https://github.com/ollama/ollama/assets/3325447/0d0b44e2-8f4a-4e99-9b52-a5c1c741c8f7">
</a>
 <img alt="ollama" height="200px" src="https://github.com/ollama/ollama/assets/3325447/0d0b44e2-8f4a-4e99-9b52-a5c1c741c8f7">
</div>
# Ollama
[![Discord](https://dcbadge.vercel.app/api/server/ollama?style=flat&compact=true)](https://discord.gg/ollama)
Get up and running with large language models.
### macOS
@@ -33,11 +33,6 @@ The official [Ollama Docker image](https://hub.docker.com/r/ollama/ollama) `olla
- [ollama-python](https://github.com/ollama/ollama-python)
- [ollama-js](https://github.com/ollama/ollama-js)
### Community
- [Discord](https://discord.gg/ollama)
- [Reddit](https://reddit.com/r/ollama)
## Quickstart
To run and chat with [Llama 3.2](https://ollama.com/library/llama3.2):
@@ -54,15 +49,15 @@ Here are some example models that can be downloaded:
| Model | Parameters | Size | Download |
| ------------------ | ---------- | ----- | -------------------------------- |
| Llama 3.3 | 70B | 43GB | `ollama run llama3.3` |
| Llama 3.2 | 3B | 2.0GB | `ollama run llama3.2` |
| Llama 3.2 | 1B | 1.3GB | `ollama run llama3.2:1b` |
| Llama 3.2 Vision | 11B | 7.9GB | `ollama run llama3.2-vision` |
| Llama 3.2 Vision | 90B | 55GB | `ollama run llama3.2-vision:90b` |
| Llama 3.1 | 8B | 4.7GB | `ollama run llama3.1` |
| Llama 3.1 | 70B | 40GB | `ollama run llama3.1:70b` |
| Llama 3.1 | 405B | 231GB | `ollama run llama3.1:405b` |
| Phi 4 | 14B | 9.1GB | `ollama run phi4` |
| Phi 3 Mini | 3.8B | 2.3GB | `ollama run phi3` |
| Phi 3 Medium | 14B | 7.9GB | `ollama run phi3:medium` |
| Gemma 2 | 2B | 1.6GB | `ollama run gemma2:2b` |
| Gemma 2 | 9B | 5.5GB | `ollama run gemma2` |
| Gemma 2 | 27B | 16GB | `ollama run gemma2:27b` |
@@ -102,7 +97,7 @@ Ollama supports importing GGUF models in the Modelfile:
ollama run example
```
### Import from Safetensors
### Import from PyTorch or Safetensors
See the [guide](docs/import.md) on importing models for more information.
@@ -137,7 +132,7 @@ ollama run mario
Hello! It's your friend Mario.
```
For more information on working with a Modelfile, see the [Modelfile](docs/modelfile.md) documentation.
For more examples, see the [examples](examples) directory. For more information on working with a Modelfile, see the [Modelfile](docs/modelfile.md) documentation.
## CLI Reference
@@ -303,8 +298,7 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [AnythingLLM (Docker + MacOs/Windows/Linux native app)](https://github.com/Mintplex-Labs/anything-llm)
- [Ollama Basic Chat: Uses HyperDiv Reactive UI](https://github.com/rapidarchitect/ollama_basic_chat)
- [Ollama-chats RPG](https://github.com/drazdra/ollama-chats)
- [IntelliBar](https://intellibar.app/) (AI-powered assistant for macOS)
- [QA-Pilot](https://github.com/reid41/QA-Pilot) (Interactive chat tool that can leverage Ollama models for rapid understanding and navigation of GitHub code repositories)
- [QA-Pilot](https://github.com/reid41/QA-Pilot) (Chat with Code Repository)
- [ChatOllama](https://github.com/sugarforever/chat-ollama) (Open Source Chatbot based on Ollama with Knowledge Bases)
- [CRAG Ollama Chat](https://github.com/Nagi-ovo/CRAG-Ollama-Chat) (Simple Web Search with Corrective RAG)
- [RAGFlow](https://github.com/infiniflow/ragflow) (Open-source Retrieval-Augmented Generation engine based on deep document understanding)
@@ -314,7 +308,6 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [Ollama RAG Chatbot](https://github.com/datvodinh/rag-chatbot.git) (Local Chat with multiple PDFs using Ollama and RAG)
- [BrainSoup](https://www.nurgo-software.com/products/brainsoup) (Flexible native client with RAG & multi-agent automation)
- [macai](https://github.com/Renset/macai) (macOS client for Ollama, ChatGPT, and other compatible API back-ends)
- [RWKV-Runner](https://github.com/josStorer/RWKV-Runner) (RWKV offline LLM deployment tool, also usable as a client for ChatGPT and Ollama)
- [Ollama Grid Search](https://github.com/dezoito/ollama-grid-search) (app to evaluate and compare models)
- [Olpaka](https://github.com/Otacon/olpaka) (User-friendly Flutter Web App for Ollama)
- [OllamaSpring](https://github.com/CrazyNeil/OllamaSpring) (Ollama Client for macOS)
@@ -333,7 +326,6 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [BoltAI for Mac](https://boltai.com) (AI Chat Client for Mac)
- [Harbor](https://github.com/av/harbor) (Containerized LLM Toolkit with Ollama as default backend)
- [PyGPT](https://github.com/szczyglis-dev/py-gpt) (AI desktop assistant for Linux, Windows and Mac)
- [Alpaca](https://github.com/Jeffser/Alpaca) (An Ollama client application for linux and macos made with GTK4 and Adwaita)
- [AutoGPT](https://github.com/Significant-Gravitas/AutoGPT/blob/master/docs/content/platform/ollama.md) (AutoGPT Ollama integration)
- [Go-CREW](https://www.jonathanhecl.com/go-crew/) (Powerful Offline RAG in Golang)
- [PartCAD](https://github.com/openvmp/partcad/) (CAD model generation with OpenSCAD and CadQuery)
@@ -346,29 +338,20 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [crewAI with Mesop](https://github.com/rapidarchitect/ollama-crew-mesop) (Mesop Web Interface to run crewAI with Ollama)
- [Tkinter-based client](https://github.com/chyok/ollama-gui) (Python tkinter-based Client for Ollama)
- [LLMChat](https://github.com/trendy-design/llmchat) (Privacy focused, 100% local, intuitive all-in-one chat interface)
- [Local Multimodal AI Chat](https://github.com/Leon-Sander/Local-Multimodal-AI-Chat) (Ollama-based LLM Chat with support for multiple features, including PDF RAG, voice chat, image-based interactions, and integration with OpenAI.)
- [ARGO](https://github.com/xark-argo/argo) (Locally download and run Ollama and Huggingface models with RAG on Mac/Windows/Linux)
- [OrionChat](https://github.com/EliasPereirah/OrionChat) - OrionChat is a web interface for chatting with different AI providers
- [G1](https://github.com/bklieger-groq/g1) (Prototype of using prompting strategies to improve the LLM's reasoning through o1-like reasoning chains.)
- [Web management](https://github.com/lemonit-eric-mao/ollama-web-management) (Web management page)
- [Promptery](https://github.com/promptery/promptery) (desktop client for Ollama.)
- [Ollama App](https://github.com/JHubi1/ollama-app) (Modern and easy-to-use multi-platform client for Ollama)
- [SpaceLlama](https://github.com/tcsenpai/spacellama) (Firefox and Chrome extension to quickly summarize web pages with ollama in a sidebar)
- [YouLama](https://github.com/tcsenpai/youlama) (Webapp to quickly summarize any YouTube video, supporting Invidious as well)
- [DualMind](https://github.com/tcsenpai/dualmind) (Experimental app allowing two models to talk to each other in the terminal or in a web interface)
- [ollamarama-matrix](https://github.com/h1ddenpr0cess20/ollamarama-matrix) (Ollama chatbot for the Matrix chat protocol)
- [ollama-chat-app](https://github.com/anan1213095357/ollama-chat-app) (Flutter-based chat app)
- [Perfect Memory AI](https://www.perfectmemory.ai/) (Productivity AI assists personalized by what you have seen on your screen, heard and said in the meetings)
- [Hexabot](https://github.com/hexastack/hexabot) (A conversational AI builder)
- [Reddit Rate](https://github.com/rapidarchitect/reddit_analyzer) (Search and Rate Reddit topics with a weighted summation)
- [OpenTalkGpt](https://github.com/adarshM84/OpenTalkGpt) (Chrome Extension to manage open-source models supported by Ollama, create custom models, and chat with models from a user-friendly UI)
- [OpenTalkGpt](https://github.com/adarshM84/OpenTalkGpt)
- [VT](https://github.com/vinhnx/vt.ai) (A minimal multimodal AI chat app, with dynamic conversation routing. Supports local models via Ollama)
- [Nosia](https://github.com/nosia-ai/nosia) (Easy to install and use RAG platform based on Ollama)
- [Witsy](https://github.com/nbonamy/witsy) (An AI Desktop application available for Mac/Windows/Linux)
- [Witsy](https://github.com/nbonamy/witsy) (An AI Desktop application avaiable for Mac/Windows/Linux)
- [Abbey](https://github.com/US-Artificial-Intelligence/abbey) (A configurable AI interface server with notebooks, document storage, and YouTube support)
- [Minima](https://github.com/dmayboroda/minima) (RAG with on-premises or fully local workflow)
- [aidful-ollama-model-delete](https://github.com/AidfulAI/aidful-ollama-model-delete) (User interface for simplified model cleanup)
- [Perplexica](https://github.com/ItzCrazyKns/Perplexica) (An AI-powered search engine & an open-source alternative to Perplexity AI)
### Cloud
@@ -381,7 +364,6 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [oterm](https://github.com/ggozad/oterm)
- [Ellama Emacs client](https://github.com/s-kostyaev/ellama)
- [Emacs client](https://github.com/zweifisch/ollama)
- [neollama](https://github.com/paradoxical-dev/neollama) UI client for interacting with models from within Neovim
- [gen.nvim](https://github.com/David-Kunz/gen.nvim)
- [ollama.nvim](https://github.com/nomnivore/ollama.nvim)
- [ollero.nvim](https://github.com/marco-souza/ollero.nvim)
@@ -391,7 +373,7 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [Oatmeal](https://github.com/dustinblackman/oatmeal)
- [cmdh](https://github.com/pgibler/cmdh)
- [ooo](https://github.com/npahlfer/ooo)
- [shell-pilot](https://github.com/reid41/shell-pilot)(Interact with models via pure shell scripts on Linux or macOS)
- [shell-pilot](https://github.com/reid41/shell-pilot)
- [tenere](https://github.com/pythops/tenere)
- [llm-ollama](https://github.com/taketwo/llm-ollama) for [Datasette's LLM CLI](https://llm.datasette.io/en/stable/).
- [typechat-cli](https://github.com/anaisbetts/typechat-cli)
@@ -403,11 +385,9 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [Ollama eBook Summary](https://github.com/cognitivetech/ollama-ebook-summary/)
- [Ollama Mixture of Experts (MOE) in 50 lines of code](https://github.com/rapidarchitect/ollama_moe)
- [vim-intelligence-bridge](https://github.com/pepo-ec/vim-intelligence-bridge) Simple interaction of "Ollama" with the Vim editor
- [x-cmd ollama](https://x-cmd.com/mod/ollama)
- [bb7](https://github.com/drunkwcodes/bb7)
- [SwollamaCLI](https://github.com/marcusziade/Swollama) bundled with the Swollama Swift package. [Demo](https://github.com/marcusziade/Swollama?tab=readme-ov-file#cli-usage)
- [aichat](https://github.com/sigoden/aichat) All-in-one LLM CLI tool featuring Shell Assistant, Chat-REPL, RAG, AI tools & agents, with access to OpenAI, Claude, Gemini, Ollama, Groq, and more.
- [PowershAI](https://github.com/rrg92/powershai) PowerShell module that brings AI to terminal on Windows, including support for Ollama
- [orbiton](https://github.com/xyproto/orbiton) Configuration-free text editor and IDE with support for tab completion with Ollama.
### Apple Vision Pro
@@ -416,11 +396,8 @@ See the [API documentation](./docs/api.md) for all endpoints.
### Database
- [pgai](https://github.com/timescale/pgai) - PostgreSQL as a vector database (Create and search embeddings from Ollama models using pgvector)
- [Get started guide](https://github.com/timescale/pgai/blob/main/docs/vectorizer-quick-start.md)
- [MindsDB](https://github.com/mindsdb/mindsdb/blob/staging/mindsdb/integrations/handlers/ollama_handler/README.md) (Connects Ollama models with nearly 200 data platforms and apps)
- [chromem-go](https://github.com/philippgille/chromem-go/blob/v0.5.0/embed_ollama.go) with [example](https://github.com/philippgille/chromem-go/tree/v0.5.0/examples/rag-wikipedia-ollama)
- [Kangaroo](https://github.com/dbkangaroo/kangaroo) (AI-powered SQL client and admin tool for popular databases)
### Package managers
@@ -436,12 +413,10 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [LangChain](https://python.langchain.com/docs/integrations/llms/ollama) and [LangChain.js](https://js.langchain.com/docs/integrations/chat/ollama/) with [example](https://js.langchain.com/docs/tutorials/local_rag/)
- [Firebase Genkit](https://firebase.google.com/docs/genkit/plugins/ollama)
- [crewAI](https://github.com/crewAIInc/crewAI)
- [Yacana](https://remembersoftwares.github.io/yacana/) (User-friendly multi-agent framework for brainstorming and executing predetermined flows with built-in tool integration)
- [Spring AI](https://github.com/spring-projects/spring-ai) with [reference](https://docs.spring.io/spring-ai/reference/api/chat/ollama-chat.html) and [example](https://github.com/tzolov/ollama-tools)
- [LangChainGo](https://github.com/tmc/langchaingo/) with [example](https://github.com/tmc/langchaingo/tree/main/examples/ollama-completion-example)
- [LangChain4j](https://github.com/langchain4j/langchain4j) with [example](https://github.com/langchain4j/langchain4j-examples/tree/main/ollama-examples/src/main/java)
- [LangChainRust](https://github.com/Abraxas-365/langchain-rust) with [example](https://github.com/Abraxas-365/langchain-rust/blob/main/examples/llm_ollama.rs)
- [LangChain for .NET](https://github.com/tryAGI/LangChain) with [example](https://github.com/tryAGI/LangChain/blob/main/examples/LangChain.Samples.OpenAI/Program.cs)
- [LLPhant](https://github.com/theodo-group/LLPhant?tab=readme-ov-file#ollama)
- [LlamaIndex](https://docs.llamaindex.ai/en/stable/examples/llm/ollama/) and [LlamaIndexTS](https://ts.llamaindex.ai/modules/llms/available_llms/ollama)
- [LiteLLM](https://github.com/BerriAI/litellm)
@@ -517,26 +492,18 @@ See the [API documentation](./docs/api.md) for all endpoints.
- [AI Telegram Bot](https://github.com/tusharhero/aitelegrambot) (Telegram bot using Ollama in backend)
- [AI ST Completion](https://github.com/yaroslavyaroslav/OpenAI-sublime-text) (Sublime Text 4 AI assistant plugin with Ollama support)
- [Discord-Ollama Chat Bot](https://github.com/kevinthedang/discord-ollama) (Generalized TypeScript Discord Bot w/ Tuning Documentation)
- [ChatGPTBox: All in one browser extension](https://github.com/josStorer/chatGPTBox) with [Integrating Tutorial](https://github.com/josStorer/chatGPTBox/issues/616#issuecomment-1975186467)
- [Discord AI chat/moderation bot](https://github.com/rapmd73/Companion) Chat/moderation bot written in python. Uses Ollama to create personalities.
- [Headless Ollama](https://github.com/nischalj10/headless-ollama) (Scripts to automatically install ollama client & models on any OS for apps that depends on ollama server)
- [Terraform AWS Ollama & Open WebUI](https://github.com/xuyangbocn/terraform-aws-self-host-llm) (A Terraform module to deploy on AWS a ready-to-use Ollama service, together with its front end Open WebUI service.)
- [node-red-contrib-ollama](https://github.com/jakubburkiewicz/node-red-contrib-ollama)
- [Local AI Helper](https://github.com/ivostoykov/localAI) (Chrome and Firefox extensions that enable interactions with the active tab and customisable API endpoints. Includes secure storage for user prompts.)
- [vnc-lm](https://github.com/jake83741/vnc-lm) (Discord bot for messaging with LLMs through Ollama and LiteLLM. Seamlessly move between local and flagship models.)
- [vnc-lm](https://github.com/jk011ru/vnc-lm) (A containerized Discord bot with support for attachments and web links)
- [LSP-AI](https://github.com/SilasMarvin/lsp-ai) (Open-source language server for AI-powered functionality)
- [QodeAssist](https://github.com/Palm1r/QodeAssist) (AI-powered coding assistant plugin for Qt Creator)
- [Obsidian Quiz Generator plugin](https://github.com/ECuiDev/obsidian-quiz-generator)
- [AI Summmary Helper plugin](https://github.com/philffm/ai-summary-helper)
- [TextCraft](https://github.com/suncloudsmoon/TextCraft) (Copilot in Word alternative using Ollama)
- [Alfred Ollama](https://github.com/zeitlings/alfred-ollama) (Alfred Workflow)
- [TextLLaMA](https://github.com/adarshM84/TextLLaMA) A Chrome Extension that helps you write emails, correct grammar, and translate into any language
### Supported backends
- [llama.cpp](https://github.com/ggerganov/llama.cpp) project founded by Georgi Gerganov.
### Observability
- [OpenLIT](https://github.com/openlit/openlit) is an OpenTelemetry-native tool for monitoring Ollama Applications & GPUs using traces and metrics.
- [HoneyHive](https://docs.honeyhive.ai/integrations/ollama) is an AI observability and evaluation platform for AI agents. Use HoneyHive to evaluate agent performance, interrogate failures, and monitor quality in production.

View File

@@ -1,17 +0,0 @@
# Ollama API Examples
Run the examples in this directory with:
```
go run example_name/main.go
```
## Chat - Chat with a model
- [chat/main.go](chat/main.go)
## Generate - Generate text from a model
- [generate/main.go](generate/main.go)
- [generate-streaming/main.go](generate-streaming/main.go)
## Pull - Pull a model
- [pull-progress/main.go](pull-progress/main.go)

View File

@@ -67,7 +67,7 @@ type GenerateRequest struct {
Raw bool `json:"raw,omitempty"`
// Format specifies the format to return a response in.
Format json.RawMessage `json:"format,omitempty"`
Format string `json:"format"`
// KeepAlive controls how long the model will stay loaded in memory following
// this request.
@@ -94,7 +94,7 @@ type ChatRequest struct {
Stream *bool `json:"stream,omitempty"`
// Format is the format to return the response in (e.g. "json").
Format json.RawMessage `json:"format,omitempty"`
Format string `json:"format"`
// KeepAlive controls how long the model will stay loaded into memory
// following the request.
@@ -146,7 +146,6 @@ type ToolCall struct {
}
type ToolCallFunction struct {
Index int `json:"index,omitempty"`
Name string `json:"name"`
Arguments ToolCallFunctionArguments `json:"arguments"`
}
@@ -216,6 +215,7 @@ type Options struct {
TopK int `json:"top_k,omitempty"`
TopP float32 `json:"top_p,omitempty"`
MinP float32 `json:"min_p,omitempty"`
TFSZ float32 `json:"tfs_z,omitempty"`
TypicalP float32 `json:"typical_p,omitempty"`
RepeatLastN int `json:"repeat_last_n,omitempty"`
Temperature float32 `json:"temperature,omitempty"`
@@ -225,6 +225,7 @@ type Options struct {
Mirostat int `json:"mirostat,omitempty"`
MirostatTau float32 `json:"mirostat_tau,omitempty"`
MirostatEta float32 `json:"mirostat_eta,omitempty"`
PenalizeNewline bool `json:"penalize_newline,omitempty"`
Stop []string `json:"stop,omitempty"`
}
@@ -294,21 +295,17 @@ type EmbeddingResponse struct {
// CreateRequest is the request passed to [Client.Create].
type CreateRequest struct {
Model string `json:"model"`
Stream *bool `json:"stream,omitempty"`
Quantize string `json:"quantize,omitempty"`
From string `json:"from,omitempty"`
Files map[string]string `json:"files,omitempty"`
Adapters map[string]string `json:"adapters,omitempty"`
Template string `json:"template,omitempty"`
License any `json:"license,omitempty"`
System string `json:"system,omitempty"`
Parameters map[string]any `json:"parameters,omitempty"`
Messages []Message `json:"messages,omitempty"`
Model string `json:"model"`
Modelfile string `json:"modelfile"`
Stream *bool `json:"stream,omitempty"`
Quantize string `json:"quantize,omitempty"`
// Deprecated: set the model name with Model instead
Name string `json:"name"`
// Deprecated: set the file content with Modelfile instead
Path string `json:"path"`
// Deprecated: use Quantize instead
Quantization string `json:"quantization,omitempty"`
}
@@ -597,6 +594,7 @@ func DefaultOptions() Options {
Temperature: 0.8,
TopK: 40,
TopP: 0.9,
TFSZ: 1.0,
TypicalP: 1.0,
RepeatLastN: 64,
RepeatPenalty: 1.1,
@@ -605,6 +603,7 @@ func DefaultOptions() Options {
Mirostat: 0,
MirostatTau: 5.0,
MirostatEta: 0.1,
PenalizeNewline: true,
Seed: -1,
Runner: Runner{

View File

@@ -97,6 +97,7 @@ Source: "..\dist\windows-amd64\lib\ollama\*"; DestDir: "{app}\lib\ollama\"; Chec
Source: "..\dist\windows-arm64\vc_redist.arm64.exe"; DestDir: "{tmp}"; Check: IsArm64() and vc_redist_needed(); Flags: deleteafterinstall
Source: "..\dist\windows-arm64-app.exe"; DestDir: "{app}"; DestName: "{#MyAppExeName}" ;Check: IsArm64(); Flags: ignoreversion 64bit
Source: "..\dist\windows-arm64\ollama.exe"; DestDir: "{app}"; Check: IsArm64(); Flags: ignoreversion 64bit
Source: "..\dist\windows-arm64\lib\ollama\*"; DestDir: "{app}\lib\ollama\"; Check: IsArm64(); Flags: ignoreversion 64bit recursesubdirs
#endif
Source: "..\dist\ollama_welcome.ps1"; DestDir: "{app}"; Flags: ignoreversion

View File

@@ -64,7 +64,7 @@ func initStore() {
slog.Debug(fmt.Sprintf("unexpected error searching for store: %s", err))
}
slog.Debug("initializing new store")
store.ID = uuid.NewString()
store.ID = uuid.New().String()
writeStore(getStorePath())
}

View File

@@ -98,7 +98,7 @@ func (t *winTray) wndProc(hWnd windows.Handle, message uint32, wParam, lParam ui
}
err = t.wcex.unregister()
if err != nil {
slog.Error(fmt.Sprintf("failed to unregister window %s", err))
slog.Error(fmt.Sprintf("failed to uregister windo %s", err))
}
case WM_DESTROY:
// same as WM_ENDSESSION, but throws 0 exit code after all

View File

@@ -0,0 +1 @@
This is here to make sure the build/ directory exists for the go:embed command

View File

@@ -0,0 +1 @@
This is here to make sure the build/ directory exists for the go:embed command

View File

@@ -0,0 +1,8 @@
package build
import "embed"
// Darwin payloads separated by architecture to avoid duplicate payloads when cross compiling
//go:embed darwin/amd64/*
var EmbedFS embed.FS

View File

@@ -0,0 +1,8 @@
package build
import "embed"
// Darwin payloads separated by architecture to avoid duplicate payloads when cross compiling
//go:embed darwin/arm64/*
var EmbedFS embed.FS

6
build/embed_linux.go Normal file
View File

@@ -0,0 +1,6 @@
package build
import "embed"
//go:embed linux/*
var EmbedFS embed.FS

8
build/embed_unused.go Normal file
View File

@@ -0,0 +1,8 @@
//go:build !linux && !darwin
package build
import "embed"
// unused on windows
var EmbedFS embed.FS

View File

@@ -0,0 +1 @@
This is here to make sure the build/ directory exists for the go:embed command

View File

@@ -0,0 +1 @@
This is here to make sure the build/ directory exists for the go:embed command

63
cache/cache.go vendored
View File

@@ -1,63 +0,0 @@
package cache
import (
"github.com/ollama/ollama/ml"
)
type Options struct {
Position int
}
type Cache interface {
Sub(i int) Cache
Put(ctx ml.Context, key, value ml.Tensor, opts Options) (ml.Tensor, ml.Tensor)
}
type Simple struct {
DType ml.DType
Capacity int
keys, values []ml.Tensor
}
func (c *Simple) Sub(i int) Cache {
if i >= len(c.keys) {
c.keys = append(c.keys, make([]ml.Tensor, i-len(c.keys)+1)...)
c.values = append(c.values, make([]ml.Tensor, i-len(c.values)+1)...)
}
return &Simple{
keys: c.keys[i : i+1],
values: c.values[i : i+1],
Capacity: c.Capacity,
DType: c.DType,
}
}
func (c *Simple) Put(ctx ml.Context, key, value ml.Tensor, opts Options) (ml.Tensor, ml.Tensor) {
if c.keys[0] == nil || c.values[0] == nil {
c.keys[0] = ctx.Zeros(c.DType, int(key.Dim(0)*key.Dim(1))*c.Capacity)
c.values[0] = ctx.Zeros(c.DType, int(value.Dim(0)*value.Dim(1))*c.Capacity)
}
ctx.Forward(key.Copy(ctx, c.keys[0].View(ctx, int(key.Stride(2))*opts.Position, int(key.Dim(0)*key.Dim(1)*key.Dim(2)))))
ctx.Forward(value.Copy(ctx, c.values[0].View(ctx, int(value.Stride(2))*opts.Position, int(value.Dim(0)*value.Dim(1)*value.Dim(2)))))
n := min(c.Capacity, int(key.Dim(2))+opts.Position)
key = c.keys[0].View(ctx, 0,
int(key.Dim(0)), int(key.Stride(1)),
int(key.Dim(1)), int(key.Stride(2)),
n,
)
value = c.values[0].View(ctx, 0,
int(value.Dim(0)), int(value.Stride(1)),
int(value.Dim(1)), int(value.Stride(2)),
n,
)
// TODO shift context if necessary
return key, value
}

View File

@@ -1,11 +1,13 @@
package cmd
import (
"archive/zip"
"bufio"
"bytes"
"context"
"crypto/ed25519"
"crypto/rand"
"encoding/json"
"crypto/sha256"
"encoding/pem"
"errors"
"fmt"
@@ -17,6 +19,7 @@ import (
"os"
"os/signal"
"path/filepath"
"regexp"
"runtime"
"strconv"
"strings"
@@ -32,22 +35,26 @@ import (
"golang.org/x/term"
"github.com/ollama/ollama/api"
"github.com/ollama/ollama/auth"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/llama"
"github.com/ollama/ollama/llama/runner"
"github.com/ollama/ollama/parser"
"github.com/ollama/ollama/progress"
"github.com/ollama/ollama/server"
"github.com/ollama/ollama/types/errtypes"
"github.com/ollama/ollama/types/model"
"github.com/ollama/ollama/version"
)
var errModelfileNotFound = errors.New("specified Modelfile wasn't found")
var (
errModelNotFound = errors.New("no Modelfile or safetensors files found")
errModelfileNotFound = errors.New("specified Modelfile wasn't found")
)
func getModelfileName(cmd *cobra.Command) (string, error) {
filename, _ := cmd.Flags().GetString("file")
fn, _ := cmd.Flags().GetString("file")
filename := fn
if filename == "" {
filename = "Modelfile"
}
@@ -59,7 +66,7 @@ func getModelfileName(cmd *cobra.Command) (string, error) {
_, err = os.Stat(absName)
if err != nil {
return filename, err
return fn, err
}
return absName, nil
@@ -95,52 +102,68 @@ func CreateHandler(cmd *cobra.Command, args []string) error {
return err
}
status := "gathering model components"
spinner := progress.NewSpinner(status)
p.Add(status, spinner)
req, err := modelfile.CreateRequest(filepath.Dir(filename))
home, err := os.UserHomeDir()
if err != nil {
return err
}
spinner.Stop()
req.Name = args[0]
quantize, _ := cmd.Flags().GetString("quantize")
if quantize != "" {
req.Quantize = quantize
}
status := "transferring model data"
spinner := progress.NewSpinner(status)
p.Add(status, spinner)
defer p.Stop()
client, err := api.ClientFromEnvironment()
if err != nil {
return err
}
if len(req.Files) > 0 {
fileMap := map[string]string{}
for f, digest := range req.Files {
if _, err := createBlob(cmd, client, f, digest, p); err != nil {
return err
for i := range modelfile.Commands {
switch modelfile.Commands[i].Name {
case "model", "adapter":
path := modelfile.Commands[i].Args
if path == "~" {
path = home
} else if strings.HasPrefix(path, "~/") {
path = filepath.Join(home, path[2:])
}
fileMap[filepath.Base(f)] = digest
}
req.Files = fileMap
}
if len(req.Adapters) > 0 {
fileMap := map[string]string{}
for f, digest := range req.Adapters {
if _, err := createBlob(cmd, client, f, digest, p); err != nil {
if !filepath.IsAbs(path) {
path = filepath.Join(filepath.Dir(filename), path)
}
fi, err := os.Stat(path)
if errors.Is(err, os.ErrNotExist) && modelfile.Commands[i].Name == "model" {
continue
} else if err != nil {
return err
}
fileMap[filepath.Base(f)] = digest
if fi.IsDir() {
// this is likely a safetensors or pytorch directory
// TODO make this work w/ adapters
tempfile, err := tempZipFiles(path)
if err != nil {
return err
}
defer os.RemoveAll(tempfile)
path = tempfile
}
digest, err := createBlob(cmd, client, path, spinner)
if err != nil {
return err
}
modelfile.Commands[i].Args = "@" + digest
}
req.Adapters = fileMap
}
bars := make(map[string]*progress.Bar)
fn := func(resp api.ProgressResponse) error {
if resp.Digest != "" {
spinner.Stop()
bar, ok := bars[resp.Digest]
if !ok {
bar = progress.NewBar(fmt.Sprintf("pulling %s...", resp.Digest[7:19]), resp.Total, resp.Completed)
@@ -160,23 +183,145 @@ func CreateHandler(cmd *cobra.Command, args []string) error {
return nil
}
if err := client.Create(cmd.Context(), req, fn); err != nil {
if strings.Contains(err.Error(), "path or Modelfile are required") {
return fmt.Errorf("the ollama server must be updated to use `ollama create` with this client")
}
quantize, _ := cmd.Flags().GetString("quantize")
request := api.CreateRequest{Name: args[0], Modelfile: modelfile.String(), Quantize: quantize}
if err := client.Create(cmd.Context(), &request, fn); err != nil {
return err
}
return nil
}
func createBlob(cmd *cobra.Command, client *api.Client, path string, digest string, p *progress.Progress) (string, error) {
realPath, err := filepath.EvalSymlinks(path)
func tempZipFiles(path string) (string, error) {
tempfile, err := os.CreateTemp("", "ollama-tf")
if err != nil {
return "", err
}
defer tempfile.Close()
bin, err := os.Open(realPath)
detectContentType := func(path string) (string, error) {
f, err := os.Open(path)
if err != nil {
return "", err
}
defer f.Close()
var b bytes.Buffer
b.Grow(512)
if _, err := io.CopyN(&b, f, 512); err != nil && !errors.Is(err, io.EOF) {
return "", err
}
contentType, _, _ := strings.Cut(http.DetectContentType(b.Bytes()), ";")
return contentType, nil
}
glob := func(pattern, contentType string) ([]string, error) {
matches, err := filepath.Glob(pattern)
if err != nil {
return nil, err
}
for _, safetensor := range matches {
if ct, err := detectContentType(safetensor); err != nil {
return nil, err
} else if ct != contentType {
return nil, fmt.Errorf("invalid content type: expected %s for %s", ct, safetensor)
}
}
return matches, nil
}
var files []string
if st, _ := glob(filepath.Join(path, "model*.safetensors"), "application/octet-stream"); len(st) > 0 {
// safetensors files might be unresolved git lfs references; skip if they are
// covers model-x-of-y.safetensors, model.fp32-x-of-y.safetensors, model.safetensors
files = append(files, st...)
} else if st, _ := glob(filepath.Join(path, "adapters.safetensors"), "application/octet-stream"); len(st) > 0 {
// covers adapters.safetensors
files = append(files, st...)
} else if st, _ := glob(filepath.Join(path, "adapter_model.safetensors"), "application/octet-stream"); len(st) > 0 {
// covers adapter_model.safetensors
files = append(files, st...)
} else if pt, _ := glob(filepath.Join(path, "pytorch_model*.bin"), "application/zip"); len(pt) > 0 {
// pytorch files might also be unresolved git lfs references; skip if they are
// covers pytorch_model-x-of-y.bin, pytorch_model.fp32-x-of-y.bin, pytorch_model.bin
files = append(files, pt...)
} else if pt, _ := glob(filepath.Join(path, "consolidated*.pth"), "application/zip"); len(pt) > 0 {
// pytorch files might also be unresolved git lfs references; skip if they are
// covers consolidated.x.pth, consolidated.pth
files = append(files, pt...)
} else {
return "", errModelNotFound
}
// add configuration files, json files are detected as text/plain
js, err := glob(filepath.Join(path, "*.json"), "text/plain")
if err != nil {
return "", err
}
files = append(files, js...)
// bert models require a nested config.json
// TODO(mxyng): merge this with the glob above
js, err = glob(filepath.Join(path, "**/*.json"), "text/plain")
if err != nil {
return "", err
}
files = append(files, js...)
if tks, _ := glob(filepath.Join(path, "tokenizer.model"), "application/octet-stream"); len(tks) > 0 {
// add tokenizer.model if it exists, tokenizer.json is automatically picked up by the previous glob
// tokenizer.model might be a unresolved git lfs reference; error if it is
files = append(files, tks...)
} else if tks, _ := glob(filepath.Join(path, "**/tokenizer.model"), "text/plain"); len(tks) > 0 {
// some times tokenizer.model is in a subdirectory (e.g. meta-llama/Meta-Llama-3-8B)
files = append(files, tks...)
}
zipfile := zip.NewWriter(tempfile)
defer zipfile.Close()
for _, file := range files {
f, err := os.Open(file)
if err != nil {
return "", err
}
defer f.Close()
fi, err := f.Stat()
if err != nil {
return "", err
}
zfi, err := zip.FileInfoHeader(fi)
if err != nil {
return "", err
}
zfi.Name, err = filepath.Rel(path, file)
if err != nil {
return "", err
}
zf, err := zipfile.CreateHeader(zfi)
if err != nil {
return "", err
}
if _, err := io.Copy(zf, f); err != nil {
return "", err
}
}
return tempfile.Name(), nil
}
func createBlob(cmd *cobra.Command, client *api.Client, path string, spinner *progress.Spinner) (string, error) {
bin, err := os.Open(path)
if err != nil {
return "", err
}
@@ -189,11 +334,18 @@ func createBlob(cmd *cobra.Command, client *api.Client, path string, digest stri
}
fileSize := fileInfo.Size()
hash := sha256.New()
if _, err := io.Copy(hash, bin); err != nil {
return "", err
}
if _, err := bin.Seek(0, io.SeekStart); err != nil {
return "", err
}
var pw progressWriter
status := fmt.Sprintf("copying file %s 0%%", digest)
spinner := progress.NewSpinner(status)
p.Add(status, spinner)
defer spinner.Stop()
status := "transferring model data 0%"
spinner.SetMessage(status)
done := make(chan struct{})
defer close(done)
@@ -204,14 +356,15 @@ func createBlob(cmd *cobra.Command, client *api.Client, path string, digest stri
for {
select {
case <-ticker.C:
spinner.SetMessage(fmt.Sprintf("copying file %s %d%%", digest, int(100*pw.n.Load()/fileSize)))
spinner.SetMessage(fmt.Sprintf("transferring model data %d%%", int(100*pw.n.Load()/fileSize)))
case <-done:
spinner.SetMessage(fmt.Sprintf("copying file %s 100%%", digest))
spinner.SetMessage("transferring model data 100%")
return
}
}
}()
digest := fmt.Sprintf("sha256:%x", hash.Sum(nil))
if err = client.CreateBlob(cmd.Context(), digest, io.TeeReader(bin, &pw)); err != nil {
return "", err
}
@@ -303,10 +456,6 @@ func RunHandler(cmd *cobra.Command, args []string) error {
if len(prompts) > 0 {
interactive = false
}
// Be quiet if we're redirecting to a pipe or file
if !term.IsTerminal(int(os.Stdout.Fd())) {
interactive = false
}
nowrap, err := cmd.Flags().GetBool("nowordwrap")
if err != nil {
@@ -363,6 +512,47 @@ func RunHandler(cmd *cobra.Command, args []string) error {
return generate(cmd, opts)
}
func errFromUnknownKey(unknownKeyErr error) error {
// find SSH public key in the error message
sshKeyPattern := `ssh-\w+ [^\s"]+`
re := regexp.MustCompile(sshKeyPattern)
matches := re.FindStringSubmatch(unknownKeyErr.Error())
if len(matches) > 0 {
serverPubKey := matches[0]
localPubKey, err := auth.GetPublicKey()
if err != nil {
return unknownKeyErr
}
if runtime.GOOS == "linux" && serverPubKey != localPubKey {
// try the ollama service public key
svcPubKey, err := os.ReadFile("/usr/share/ollama/.ollama/id_ed25519.pub")
if err != nil {
return unknownKeyErr
}
localPubKey = strings.TrimSpace(string(svcPubKey))
}
// check if the returned public key matches the local public key, this prevents adding a remote key to the user's account
if serverPubKey != localPubKey {
return unknownKeyErr
}
var msg strings.Builder
msg.WriteString(unknownKeyErr.Error())
msg.WriteString("\n\nYour ollama key is:\n")
msg.WriteString(localPubKey)
msg.WriteString("\nAdd your key at:\n")
msg.WriteString("https://ollama.com/settings/keys")
return errors.New(msg.String())
}
return unknownKeyErr
}
func PushHandler(cmd *cobra.Command, args []string) error {
client, err := api.ClientFromEnvironment()
if err != nil {
@@ -409,8 +599,6 @@ func PushHandler(cmd *cobra.Command, args []string) error {
}
request := api.PushRequest{Name: args[0], Insecure: insecure}
n := model.ParseName(args[0])
if err := client.Push(cmd.Context(), &request, fn); err != nil {
if spinner != nil {
spinner.Stop()
@@ -418,19 +606,18 @@ func PushHandler(cmd *cobra.Command, args []string) error {
if strings.Contains(err.Error(), "access denied") {
return errors.New("you are not authorized to push to this namespace, create the model under a namespace you own")
}
host := model.ParseName(args[0]).Host
isOllamaHost := strings.HasSuffix(host, ".ollama.ai") || strings.HasSuffix(host, ".ollama.com")
if strings.Contains(err.Error(), errtypes.UnknownOllamaKeyErrMsg) && isOllamaHost {
// the user has not added their ollama key to ollama.com
// re-throw an error with a more user-friendly message
return errFromUnknownKey(err)
}
return err
}
p.Stop()
spinner.Stop()
destination := n.String()
if strings.HasSuffix(n.Host, ".ollama.ai") || strings.HasSuffix(n.Host, ".ollama.com") {
destination = "https://ollama.com/" + strings.TrimSuffix(n.DisplayShortest(), ":latest")
}
fmt.Printf("\nYou can find your model at:\n\n")
fmt.Printf("\t%s\n", destination)
return nil
}
@@ -448,7 +635,7 @@ func ListHandler(cmd *cobra.Command, args []string) error {
var data [][]string
for _, m := range models.Models {
if len(args) == 0 || strings.HasPrefix(strings.ToLower(m.Name), strings.ToLower(args[0])) {
if len(args) == 0 || strings.HasPrefix(m.Name, args[0]) {
data = append(data, []string{m.Name, m.Digest[:12], format.HumanBytes(m.Size), format.HumanTime(m.ModifiedAt, "Never")})
}
}
@@ -885,14 +1072,10 @@ func chat(cmd *cobra.Command, opts runOptions) (*api.Message, error) {
return nil
}
if opts.Format == "json" {
opts.Format = `"` + opts.Format + `"`
}
req := &api.ChatRequest{
Model: opts.Model,
Messages: opts.Messages,
Format: json.RawMessage(opts.Format),
Format: opts.Format,
Options: opts.Options,
}
@@ -974,16 +1157,12 @@ func generate(cmd *cobra.Command, opts runOptions) error {
}
}
if opts.Format == "json" {
opts.Format = `"` + opts.Format + `"`
}
request := api.GenerateRequest{
Model: opts.Model,
Prompt: opts.Prompt,
Context: generateContext,
Images: opts.Images,
Format: json.RawMessage(opts.Format),
Format: opts.Format,
System: opts.System,
Options: opts.Options,
KeepAlive: opts.KeepAlive,
@@ -1269,19 +1448,6 @@ func NewCLI() *cobra.Command {
RunE: DeleteHandler,
}
runnerCmd := &cobra.Command{
Use: "runner",
Short: llama.PrintSystemInfo(),
Hidden: true,
RunE: func(cmd *cobra.Command, args []string) error {
return runner.Execute(os.Args[1:])
},
FParseErrWhitelist: cobra.FParseErrWhitelist{UnknownFlags: true},
}
runnerCmd.SetHelpFunc(func(cmd *cobra.Command, args []string) {
_ = runner.Execute(args[1:])
})
envVars := envconfig.AsMap()
envs := []envconfig.EnvVar{envVars["OLLAMA_HOST"]}
@@ -1316,7 +1482,6 @@ func NewCLI() *cobra.Command {
envVars["OLLAMA_SCHED_SPREAD"],
envVars["OLLAMA_TMPDIR"],
envVars["OLLAMA_FLASH_ATTENTION"],
envVars["OLLAMA_KV_CACHE_TYPE"],
envVars["OLLAMA_LLM_LIBRARY"],
envVars["OLLAMA_GPU_OVERHEAD"],
envVars["OLLAMA_LOAD_TIMEOUT"],
@@ -1338,7 +1503,6 @@ func NewCLI() *cobra.Command {
psCmd,
copyCmd,
deleteCmd,
runnerCmd,
)
return rootCmd

View File

@@ -4,10 +4,10 @@ import (
"bytes"
"context"
"encoding/json"
"io"
"net/http"
"net/http/httptest"
"os"
"path/filepath"
"strings"
"testing"
@@ -179,14 +179,18 @@ Weigh anchor!
t.Run("license", func(t *testing.T) {
var b bytes.Buffer
license := "MIT License\nCopyright (c) Ollama\n"
license, err := os.ReadFile(filepath.Join("..", "LICENSE"))
if err != nil {
t.Fatal(err)
}
if err := showInfo(&api.ShowResponse{
Details: api.ModelDetails{
Family: "test",
ParameterSize: "7B",
QuantizationLevel: "FP16",
},
License: license,
License: string(license),
}, &b); err != nil {
t.Fatal(err)
}
@@ -279,7 +283,7 @@ func TestGetModelfileName(t *testing.T) {
name: "no modelfile specified, no modelfile exists",
modelfileName: "",
fileExists: false,
expectedName: "Modelfile",
expectedName: "",
expectedErr: os.ErrNotExist,
},
{
@@ -338,8 +342,8 @@ func TestGetModelfileName(t *testing.T) {
t.Fatalf("couldn't set file flag: %v", err)
}
} else {
expectedFilename = tt.expectedName
if tt.modelfileName != "" {
expectedFilename = tt.modelfileName
err := cmd.Flags().Set("file", tt.modelfileName)
if err != nil {
t.Fatalf("couldn't set file flag: %v", err)
@@ -365,254 +369,3 @@ func TestGetModelfileName(t *testing.T) {
})
}
}
func TestPushHandler(t *testing.T) {
tests := []struct {
name string
modelName string
serverResponse map[string]func(w http.ResponseWriter, r *http.Request)
expectedError string
expectedOutput string
}{
{
name: "successful push",
modelName: "test-model",
serverResponse: map[string]func(w http.ResponseWriter, r *http.Request){
"/api/push": func(w http.ResponseWriter, r *http.Request) {
if r.Method != http.MethodPost {
t.Errorf("expected POST request, got %s", r.Method)
}
var req api.PushRequest
if err := json.NewDecoder(r.Body).Decode(&req); err != nil {
http.Error(w, err.Error(), http.StatusBadRequest)
return
}
if req.Name != "test-model" {
t.Errorf("expected model name 'test-model', got %s", req.Name)
}
// Simulate progress updates
responses := []api.ProgressResponse{
{Status: "preparing manifest"},
{Digest: "sha256:abc123456789", Total: 100, Completed: 50},
{Digest: "sha256:abc123456789", Total: 100, Completed: 100},
}
for _, resp := range responses {
if err := json.NewEncoder(w).Encode(resp); err != nil {
http.Error(w, err.Error(), http.StatusInternalServerError)
return
}
w.(http.Flusher).Flush()
}
},
},
expectedOutput: "\nYou can find your model at:\n\n\thttps://ollama.com/test-model\n",
},
{
name: "unauthorized push",
modelName: "unauthorized-model",
serverResponse: map[string]func(w http.ResponseWriter, r *http.Request){
"/api/push": func(w http.ResponseWriter, r *http.Request) {
w.Header().Set("Content-Type", "application/json")
w.WriteHeader(http.StatusUnauthorized)
err := json.NewEncoder(w).Encode(map[string]string{
"error": "access denied",
})
if err != nil {
t.Fatal(err)
}
},
},
expectedError: "you are not authorized to push to this namespace, create the model under a namespace you own",
},
}
for _, tt := range tests {
t.Run(tt.name, func(t *testing.T) {
mockServer := httptest.NewServer(http.HandlerFunc(func(w http.ResponseWriter, r *http.Request) {
if handler, ok := tt.serverResponse[r.URL.Path]; ok {
handler(w, r)
return
}
http.Error(w, "not found", http.StatusNotFound)
}))
defer mockServer.Close()
t.Setenv("OLLAMA_HOST", mockServer.URL)
cmd := &cobra.Command{}
cmd.Flags().Bool("insecure", false, "")
cmd.SetContext(context.TODO())
// Redirect stderr to capture progress output
oldStderr := os.Stderr
r, w, _ := os.Pipe()
os.Stderr = w
// Capture stdout for the "Model pushed" message
oldStdout := os.Stdout
outR, outW, _ := os.Pipe()
os.Stdout = outW
err := PushHandler(cmd, []string{tt.modelName})
// Restore stderr
w.Close()
os.Stderr = oldStderr
// drain the pipe
if _, err := io.ReadAll(r); err != nil {
t.Fatal(err)
}
// Restore stdout and get output
outW.Close()
os.Stdout = oldStdout
stdout, _ := io.ReadAll(outR)
if tt.expectedError == "" {
if err != nil {
t.Errorf("expected no error, got %v", err)
}
if tt.expectedOutput != "" {
if got := string(stdout); got != tt.expectedOutput {
t.Errorf("expected output %q, got %q", tt.expectedOutput, got)
}
}
} else {
if err == nil || !strings.Contains(err.Error(), tt.expectedError) {
t.Errorf("expected error containing %q, got %v", tt.expectedError, err)
}
}
})
}
}
func TestCreateHandler(t *testing.T) {
tests := []struct {
name string
modelName string
modelFile string
serverResponse map[string]func(w http.ResponseWriter, r *http.Request)
expectedError string
expectedOutput string
}{
{
name: "successful create",
modelName: "test-model",
modelFile: "FROM foo",
serverResponse: map[string]func(w http.ResponseWriter, r *http.Request){
"/api/create": func(w http.ResponseWriter, r *http.Request) {
if r.Method != http.MethodPost {
t.Errorf("expected POST request, got %s", r.Method)
}
req := api.CreateRequest{}
if err := json.NewDecoder(r.Body).Decode(&req); err != nil {
http.Error(w, err.Error(), http.StatusBadRequest)
return
}
if req.Name != "test-model" {
t.Errorf("expected model name 'test-model', got %s", req.Name)
}
if req.From != "foo" {
t.Errorf("expected from 'foo', got %s", req.From)
}
responses := []api.ProgressResponse{
{Status: "using existing layer sha256:56bb8bd477a519ffa694fc449c2413c6f0e1d3b1c88fa7e3c9d88d3ae49d4dcb"},
{Status: "writing manifest"},
{Status: "success"},
}
for _, resp := range responses {
if err := json.NewEncoder(w).Encode(resp); err != nil {
http.Error(w, err.Error(), http.StatusInternalServerError)
return
}
w.(http.Flusher).Flush()
}
},
},
expectedOutput: "",
},
}
for _, tt := range tests {
t.Run(tt.name, func(t *testing.T) {
mockServer := httptest.NewServer(http.HandlerFunc(func(w http.ResponseWriter, r *http.Request) {
handler, ok := tt.serverResponse[r.URL.Path]
if !ok {
t.Errorf("unexpected request to %s", r.URL.Path)
http.Error(w, "not found", http.StatusNotFound)
return
}
handler(w, r)
}))
t.Setenv("OLLAMA_HOST", mockServer.URL)
t.Cleanup(mockServer.Close)
tempFile, err := os.CreateTemp("", "modelfile")
if err != nil {
t.Fatal(err)
}
defer os.Remove(tempFile.Name())
if _, err := tempFile.WriteString(tt.modelFile); err != nil {
t.Fatal(err)
}
if err := tempFile.Close(); err != nil {
t.Fatal(err)
}
cmd := &cobra.Command{}
cmd.Flags().String("file", "", "")
if err := cmd.Flags().Set("file", tempFile.Name()); err != nil {
t.Fatal(err)
}
cmd.Flags().Bool("insecure", false, "")
cmd.SetContext(context.TODO())
// Redirect stderr to capture progress output
oldStderr := os.Stderr
r, w, _ := os.Pipe()
os.Stderr = w
// Capture stdout for the "Model pushed" message
oldStdout := os.Stdout
outR, outW, _ := os.Pipe()
os.Stdout = outW
err = CreateHandler(cmd, []string{tt.modelName})
// Restore stderr
w.Close()
os.Stderr = oldStderr
// drain the pipe
if _, err := io.ReadAll(r); err != nil {
t.Fatal(err)
}
// Restore stdout and get output
outW.Close()
os.Stdout = oldStdout
stdout, _ := io.ReadAll(outR)
if tt.expectedError == "" {
if err != nil {
t.Errorf("expected no error, got %v", err)
}
if tt.expectedOutput != "" {
if got := string(stdout); got != tt.expectedOutput {
t.Errorf("expected output %q, got %q", tt.expectedOutput, got)
}
}
}
})
}
}

View File

@@ -13,9 +13,11 @@ import (
"strings"
"github.com/spf13/cobra"
"golang.org/x/exp/maps"
"github.com/ollama/ollama/api"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/parser"
"github.com/ollama/ollama/readline"
"github.com/ollama/ollama/types/errtypes"
)
@@ -211,7 +213,10 @@ func generateInteractive(cmd *cobra.Command, opts runOptions) error {
return err
}
req := NewCreateRequest(args[1], opts)
req := &api.CreateRequest{
Name: args[1],
Modelfile: buildModelfile(opts),
}
fn := func(resp api.ProgressResponse) error { return nil }
err = client.Create(cmd.Context(), req, fn)
if err != nil {
@@ -454,25 +459,36 @@ func generateInteractive(cmd *cobra.Command, opts runOptions) error {
}
}
func NewCreateRequest(name string, opts runOptions) *api.CreateRequest {
req := &api.CreateRequest{
Name: name,
From: cmp.Or(opts.ParentModel, opts.Model),
}
func buildModelfile(opts runOptions) string {
var f parser.File
f.Commands = append(f.Commands, parser.Command{Name: "model", Args: cmp.Or(opts.ParentModel, opts.Model)})
if opts.System != "" {
req.System = opts.System
f.Commands = append(f.Commands, parser.Command{Name: "system", Args: opts.System})
}
if len(opts.Options) > 0 {
req.Parameters = opts.Options
keys := maps.Keys(opts.Options)
slices.Sort(keys)
for _, k := range keys {
v := opts.Options[k]
var cmds []parser.Command
switch t := v.(type) {
case []string:
for _, s := range t {
cmds = append(cmds, parser.Command{Name: k, Args: s})
}
default:
cmds = append(cmds, parser.Command{Name: k, Args: fmt.Sprintf("%v", t)})
}
f.Commands = append(f.Commands, cmds...)
}
if len(opts.Messages) > 0 {
req.Messages = opts.Messages
for _, msg := range opts.Messages {
f.Commands = append(f.Commands, parser.Command{Name: "message", Args: fmt.Sprintf("%s: %s", msg.Role, msg.Content)})
}
return req
return f.String()
}
func normalizeFilePath(fp string) string {
@@ -498,7 +514,7 @@ func extractFileNames(input string) []string {
// Regex to match file paths starting with optional drive letter, / ./ \ or .\ and include escaped or unescaped spaces (\ or %20)
// and followed by more characters and a file extension
// This will capture non filename strings, but we'll check for file existence to remove mismatches
regexPattern := `(?:[a-zA-Z]:)?(?:\./|/|\\)[\S\\ ]+?\.(?i:jpg|jpeg|png)\b`
regexPattern := `(?:[a-zA-Z]:)?(?:\./|/|\\)[\S\\ ]+?\.(?i:jpg|jpeg|png|svg)\b`
re := regexp.MustCompile(regexPattern)
return re.FindAllString(input, -1)

View File

@@ -3,50 +3,105 @@ package cmd
import (
"testing"
"github.com/google/go-cmp/cmp"
"github.com/stretchr/testify/assert"
"github.com/ollama/ollama/api"
)
func TestExtractFilenames(t *testing.T) {
// Unix style paths
input := ` some preamble
./relative\ path/one.png inbetween1 ./not a valid two.jpg inbetween2 ./1.svg
/unescaped space /three.jpeg inbetween3 /valid\ path/dir/four.png "./quoted with spaces/five.JPG`
./relative\ path/one.png inbetween1 ./not a valid two.jpg inbetween2
/unescaped space /three.jpeg inbetween3 /valid\ path/dir/four.png "./quoted with spaces/five.svg`
res := extractFileNames(input)
assert.Len(t, res, 5)
assert.Contains(t, res[0], "one.png")
assert.Contains(t, res[1], "two.jpg")
assert.Contains(t, res[2], "three.jpeg")
assert.Contains(t, res[3], "four.png")
assert.Contains(t, res[4], "five.JPG")
assert.Contains(t, res[4], "five.svg")
assert.NotContains(t, res[4], '"')
assert.NotContains(t, res, "inbetween1")
assert.NotContains(t, res, "./1.svg")
assert.NotContains(t, res, "inbtween")
// Windows style paths
input = ` some preamble
c:/users/jdoe/one.png inbetween1 c:/program files/someplace/two.jpg inbetween2
/absolute/nospace/three.jpeg inbetween3 /absolute/with space/four.png inbetween4
./relative\ path/five.JPG inbetween5 "./relative with/spaces/six.png inbetween6
d:\path with\spaces\seven.JPEG inbetween7 c:\users\jdoe\eight.png inbetween8
d:\program files\someplace\nine.png inbetween9 "E:\program files\someplace\ten.PNG some ending
./relative\ path/five.svg inbetween5 "./relative with/spaces/six.png inbetween6
d:\path with\spaces\seven.svg inbetween7 c:\users\jdoe\eight.png inbetween8
d:\program files\someplace\nine.png inbetween9 "E:\program files\someplace\ten.svg some ending
`
res = extractFileNames(input)
assert.Len(t, res, 10)
assert.NotContains(t, res, "inbetween2")
assert.NotContains(t, res, "inbtween")
assert.Contains(t, res[0], "one.png")
assert.Contains(t, res[0], "c:")
assert.Contains(t, res[1], "two.jpg")
assert.Contains(t, res[1], "c:")
assert.Contains(t, res[2], "three.jpeg")
assert.Contains(t, res[3], "four.png")
assert.Contains(t, res[4], "five.JPG")
assert.Contains(t, res[4], "five.svg")
assert.Contains(t, res[5], "six.png")
assert.Contains(t, res[6], "seven.JPEG")
assert.Contains(t, res[6], "seven.svg")
assert.Contains(t, res[6], "d:")
assert.Contains(t, res[7], "eight.png")
assert.Contains(t, res[7], "c:")
assert.Contains(t, res[8], "nine.png")
assert.Contains(t, res[8], "d:")
assert.Contains(t, res[9], "ten.PNG")
assert.Contains(t, res[9], "ten.svg")
assert.Contains(t, res[9], "E:")
}
func TestModelfileBuilder(t *testing.T) {
opts := runOptions{
Model: "hork",
System: "You are part horse and part shark, but all hork. Do horklike things",
Messages: []api.Message{
{Role: "user", Content: "Hey there hork!"},
{Role: "assistant", Content: "Yes it is true, I am half horse, half shark."},
},
Options: map[string]any{
"temperature": 0.9,
"seed": 42,
"penalize_newline": false,
"stop": []string{"hi", "there"},
},
}
t.Run("model", func(t *testing.T) {
expect := `FROM hork
SYSTEM You are part horse and part shark, but all hork. Do horklike things
PARAMETER penalize_newline false
PARAMETER seed 42
PARAMETER stop hi
PARAMETER stop there
PARAMETER temperature 0.9
MESSAGE user Hey there hork!
MESSAGE assistant Yes it is true, I am half horse, half shark.
`
actual := buildModelfile(opts)
if diff := cmp.Diff(expect, actual); diff != "" {
t.Errorf("mismatch (-want +got):\n%s", diff)
}
})
t.Run("parent model", func(t *testing.T) {
opts.ParentModel = "horseshark"
expect := `FROM horseshark
SYSTEM You are part horse and part shark, but all hork. Do horklike things
PARAMETER penalize_newline false
PARAMETER seed 42
PARAMETER stop hi
PARAMETER stop there
PARAMETER temperature 0.9
MESSAGE user Hey there hork!
MESSAGE assistant Yes it is true, I am half horse, half shark.
`
actual := buildModelfile(opts)
if diff := cmp.Diff(expect, actual); diff != "" {
t.Errorf("mismatch (-want +got):\n%s", diff)
}
})
}

View File

@@ -1,15 +0,0 @@
package main
import (
"fmt"
"os"
"github.com/ollama/ollama/llama/runner"
)
func main() {
if err := runner.Execute(os.Args[1:]); err != nil {
fmt.Fprintf(os.Stderr, "error: %s\n", err)
os.Exit(1)
}
}

View File

@@ -9,7 +9,7 @@ import (
"log/slog"
"strings"
"github.com/ollama/ollama/fs/ggml"
"github.com/ollama/ollama/llm"
)
type ModelParameters struct {
@@ -27,8 +27,8 @@ type AdapterParameters struct {
} `json:"lora_parameters"`
}
func (ModelParameters) KV(t *Tokenizer) ggml.KV {
kv := ggml.KV{
func (ModelParameters) KV(t *Tokenizer) llm.KV {
kv := llm.KV{
"general.file_type": uint32(1),
"general.quantization_version": uint32(2),
"tokenizer.ggml.pre": t.Pre,
@@ -54,7 +54,7 @@ func (ModelParameters) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p AdapterParameters) KV() ggml.KV {
func (p AdapterParameters) KV() llm.KV {
var alpha float32
if p.LoraParameters.Alpha == 0 {
alpha = float32(p.Alpha)
@@ -62,7 +62,7 @@ func (p AdapterParameters) KV() ggml.KV {
alpha = p.LoraParameters.Alpha
}
kv := ggml.KV{
kv := llm.KV{
"adapter.lora.alpha": alpha,
"adapter.type": "lora",
"general.file_type": uint32(1),
@@ -79,19 +79,19 @@ func (ModelParameters) specialTokenTypes() []string {
}
}
func (ModelParameters) writeFile(ws io.WriteSeeker, kv ggml.KV, ts []ggml.Tensor) error {
return ggml.WriteGGUF(ws, kv, ts)
func (ModelParameters) writeFile(ws io.WriteSeeker, kv llm.KV, ts []llm.Tensor) error {
return llm.WriteGGUF(ws, kv, ts)
}
func (AdapterParameters) writeFile(ws io.WriteSeeker, kv ggml.KV, ts []ggml.Tensor) error {
return ggml.WriteGGUF(ws, kv, ts)
func (AdapterParameters) writeFile(ws io.WriteSeeker, kv llm.KV, ts []llm.Tensor) error {
return llm.WriteGGUF(ws, kv, ts)
}
type ModelConverter interface {
// KV maps parameters to LLM key-values
KV(*Tokenizer) ggml.KV
KV(*Tokenizer) llm.KV
// Tensors maps input tensors to LLM tensors. Model specific modifications can be done here.
Tensors([]Tensor) []ggml.Tensor
Tensors([]Tensor) []llm.Tensor
// Replacements returns a list of string pairs to replace in tensor names.
// See [strings.Replacer](https://pkg.go.dev/strings#Replacer) for details
Replacements() []string
@@ -99,7 +99,7 @@ type ModelConverter interface {
// specialTokenTypes returns any special token types the model uses
specialTokenTypes() []string
// writeFile writes the model to the provided io.WriteSeeker
writeFile(io.WriteSeeker, ggml.KV, []ggml.Tensor) error
writeFile(io.WriteSeeker, llm.KV, []llm.Tensor) error
}
type moreParser interface {
@@ -108,17 +108,17 @@ type moreParser interface {
type AdapterConverter interface {
// KV maps parameters to LLM key-values
KV(ggml.KV) ggml.KV
KV(llm.KV) llm.KV
// Tensors maps input tensors to LLM tensors. Adapter specific modifications can be done here.
Tensors([]Tensor) []ggml.Tensor
Tensors([]Tensor) []llm.Tensor
// Replacements returns a list of string pairs to replace in tensor names.
// See [strings.Replacer](https://pkg.go.dev/strings#Replacer) for details
Replacements() []string
writeFile(io.WriteSeeker, ggml.KV, []ggml.Tensor) error
writeFile(io.WriteSeeker, llm.KV, []llm.Tensor) error
}
func ConvertAdapter(fsys fs.FS, ws io.WriteSeeker, baseKV ggml.KV) error {
func ConvertAdapter(fsys fs.FS, ws io.WriteSeeker, baseKV llm.KV) error {
bts, err := fs.ReadFile(fsys, "adapter_config.json")
if err != nil {
return err
@@ -187,8 +187,6 @@ func ConvertModel(fsys fs.FS, ws io.WriteSeeker) error {
conv = &gemma2Model{}
case "Phi3ForCausalLM":
conv = &phi3Model{}
case "Qwen2ForCausalLM":
conv = &qwen2Model{}
case "BertModel":
conv = &bertModel{}
default:

View File

@@ -8,7 +8,7 @@ import (
"slices"
"strings"
"github.com/ollama/ollama/fs/ggml"
"github.com/ollama/ollama/llm"
)
type bertModel struct {
@@ -85,7 +85,7 @@ func (p *bertModel) parseMore(fsys fs.FS) error {
return nil
}
func (p *bertModel) KV(t *Tokenizer) ggml.KV {
func (p *bertModel) KV(t *Tokenizer) llm.KV {
kv := p.ModelParameters.KV(t)
kv["general.architecture"] = "bert"
kv["bert.attention.causal"] = false
@@ -132,8 +132,8 @@ func (p *bertModel) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *bertModel) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *bertModel) Tensors(ts []Tensor) []llm.Tensor {
var out []llm.Tensor
for _, t := range ts {
if slices.Contains([]string{
"embeddings.position_ids",
@@ -143,7 +143,7 @@ func (p *bertModel) Tensors(ts []Tensor) []ggml.Tensor {
continue
}
out = append(out, ggml.Tensor{
out = append(out, llm.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -6,7 +6,7 @@ import (
"github.com/pdevine/tensor"
"github.com/pdevine/tensor/native"
"github.com/ollama/ollama/fs/ggml"
"github.com/ollama/ollama/llm"
)
type gemmaModel struct {
@@ -23,7 +23,7 @@ type gemmaModel struct {
var _ ModelConverter = (*gemmaModel)(nil)
func (p *gemmaModel) KV(t *Tokenizer) ggml.KV {
func (p *gemmaModel) KV(t *Tokenizer) llm.KV {
kv := p.ModelParameters.KV(t)
kv["general.architecture"] = "gemma"
kv["gemma.context_length"] = p.MaxPositionEmbeddings
@@ -42,14 +42,14 @@ func (p *gemmaModel) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *gemmaModel) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *gemmaModel) Tensors(ts []Tensor) []llm.Tensor {
var out []llm.Tensor
for _, t := range ts {
if strings.HasSuffix(t.Name(), "_norm.weight") {
t.SetRepacker(p.addOne)
}
out = append(out, ggml.Tensor{
out = append(out, llm.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -1,6 +1,8 @@
package convert
import "github.com/ollama/ollama/fs/ggml"
import (
"github.com/ollama/ollama/llm"
)
type gemma2Model struct {
gemmaModel
@@ -9,7 +11,7 @@ type gemma2Model struct {
FinalLogitSoftcap float32 `json:"final_logit_softcapping"`
}
func (p *gemma2Model) KV(t *Tokenizer) ggml.KV {
func (p *gemma2Model) KV(t *Tokenizer) llm.KV {
kv := p.ModelParameters.KV(t)
kv["general.architecture"] = "gemma2"
kv["gemma2.context_length"] = p.MaxPositionEmbeddings

View File

@@ -6,7 +6,7 @@ import (
"github.com/pdevine/tensor"
"github.com/pdevine/tensor/native"
"github.com/ollama/ollama/fs/ggml"
"github.com/ollama/ollama/llm"
)
type gemma2Adapter struct {
@@ -15,14 +15,14 @@ type gemma2Adapter struct {
var _ AdapterConverter = (*gemma2Adapter)(nil)
func (p *gemma2Adapter) KV(baseKV ggml.KV) ggml.KV {
func (p *gemma2Adapter) KV(baseKV llm.KV) llm.KV {
kv := p.AdapterParameters.KV()
kv["general.architecture"] = "gemma2"
return kv
}
func (p *gemma2Adapter) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *gemma2Adapter) Tensors(ts []Tensor) []llm.Tensor {
var out []llm.Tensor
for _, t := range ts {
shape := t.Shape()
if (strings.HasSuffix(t.Name(), "weight.lora_a") && shape[0] > shape[1]) ||
@@ -31,7 +31,7 @@ func (p *gemma2Adapter) Tensors(ts []Tensor) []ggml.Tensor {
t.SetRepacker(p.repack)
}
out = append(out, ggml.Tensor{
out = append(out, llm.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -9,7 +9,7 @@ import (
"github.com/pdevine/tensor"
"github.com/pdevine/tensor/native"
"github.com/ollama/ollama/fs/ggml"
"github.com/ollama/ollama/llm"
)
type llamaModel struct {
@@ -46,7 +46,7 @@ type llamaModel struct {
var _ ModelConverter = (*llamaModel)(nil)
func (p *llamaModel) KV(t *Tokenizer) ggml.KV {
func (p *llamaModel) KV(t *Tokenizer) llm.KV {
kv := p.ModelParameters.KV(t)
kv["general.architecture"] = "llama"
kv["llama.vocab_size"] = p.VocabSize
@@ -120,11 +120,11 @@ func (p *llamaModel) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *llamaModel) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *llamaModel) Tensors(ts []Tensor) []llm.Tensor {
var out []llm.Tensor
if p.RopeScaling.factors != nil {
out = append(out, ggml.Tensor{
out = append(out, llm.Tensor{
Name: "rope_freqs.weight",
Kind: 0,
Shape: []uint64{uint64(len(p.RopeScaling.factors))},
@@ -138,7 +138,7 @@ func (p *llamaModel) Tensors(ts []Tensor) []ggml.Tensor {
t.SetRepacker(p.repack)
}
out = append(out, ggml.Tensor{
out = append(out, llm.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -7,7 +7,7 @@ import (
"github.com/pdevine/tensor"
"github.com/pdevine/tensor/native"
"github.com/ollama/ollama/fs/ggml"
"github.com/ollama/ollama/llm"
)
type llamaAdapter struct {
@@ -18,7 +18,7 @@ type llamaAdapter struct {
var _ AdapterConverter = (*llamaAdapter)(nil)
func (p *llamaAdapter) KV(baseKV ggml.KV) ggml.KV {
func (p *llamaAdapter) KV(baseKV llm.KV) llm.KV {
kv := p.AdapterParameters.KV()
kv["general.architecture"] = "llama"
kv["llama.attention.head_count"] = baseKV["llama.attention.head_count"]
@@ -29,8 +29,8 @@ func (p *llamaAdapter) KV(baseKV ggml.KV) ggml.KV {
return kv
}
func (p *llamaAdapter) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
func (p *llamaAdapter) Tensors(ts []Tensor) []llm.Tensor {
var out []llm.Tensor
for _, t := range ts {
shape := t.Shape()
if (strings.HasSuffix(t.Name(), "weight.lora_a") && shape[0] > shape[1]) ||
@@ -41,7 +41,7 @@ func (p *llamaAdapter) Tensors(ts []Tensor) []ggml.Tensor {
t.SetRepacker(p.repack)
}
out = append(out, ggml.Tensor{
out = append(out, llm.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: shape,

View File

@@ -6,7 +6,7 @@ import (
"slices"
"strings"
"github.com/ollama/ollama/fs/ggml"
"github.com/ollama/ollama/llm"
)
type mixtralModel struct {
@@ -15,7 +15,7 @@ type mixtralModel struct {
NumExpertsPerToken uint32 `json:"num_experts_per_tok"`
}
func (p *mixtralModel) KV(t *Tokenizer) ggml.KV {
func (p *mixtralModel) KV(t *Tokenizer) llm.KV {
kv := p.llamaModel.KV(t)
if p.NumLocalExperts > 0 {
@@ -29,7 +29,7 @@ func (p *mixtralModel) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *mixtralModel) Tensors(ts []Tensor) []ggml.Tensor {
func (p *mixtralModel) Tensors(ts []Tensor) []llm.Tensor {
oldnew := []string{
"model.layers", "blk",
"w1", "ffn_gate_exps",
@@ -56,10 +56,10 @@ func (p *mixtralModel) Tensors(ts []Tensor) []ggml.Tensor {
return true
})
var out []ggml.Tensor
var out []llm.Tensor
for n, e := range experts {
// TODO(mxyng): sanity check experts
out = append(out, ggml.Tensor{
out = append(out, llm.Tensor{
Name: n,
Kind: e[0].Kind(),
Shape: append([]uint64{uint64(len(e))}, e[0].Shape()...),

View File

@@ -8,7 +8,7 @@ import (
"strings"
"sync"
"github.com/ollama/ollama/fs/ggml"
"github.com/ollama/ollama/llm"
)
type phi3Model struct {
@@ -37,7 +37,7 @@ type phi3Model struct {
var _ ModelConverter = (*phi3Model)(nil)
func (p *phi3Model) KV(t *Tokenizer) ggml.KV {
func (p *phi3Model) KV(t *Tokenizer) llm.KV {
kv := p.ModelParameters.KV(t)
kv["general.architecture"] = "phi3"
kv["phi3.context_length"] = p.MaxPositionEmbeddings
@@ -68,19 +68,19 @@ func (p *phi3Model) KV(t *Tokenizer) ggml.KV {
return kv
}
func (p *phi3Model) Tensors(ts []Tensor) []ggml.Tensor {
func (p *phi3Model) Tensors(ts []Tensor) []llm.Tensor {
var addRopeFactors sync.Once
out := make([]ggml.Tensor, 0, len(ts)+2)
out := make([]llm.Tensor, 0, len(ts)+2)
for _, t := range ts {
if strings.HasPrefix(t.Name(), "blk.0.") {
addRopeFactors.Do(func() {
out = append(out, ggml.Tensor{
out = append(out, llm.Tensor{
Name: "rope_factors_long.weight",
Kind: 0,
Shape: []uint64{uint64(len(p.RopeScaling.LongFactor))},
WriterTo: p.RopeScaling.LongFactor,
}, ggml.Tensor{
}, llm.Tensor{
Name: "rope_factors_short.weight",
Kind: 0,
Shape: []uint64{uint64(len(p.RopeScaling.ShortFactor))},
@@ -89,7 +89,7 @@ func (p *phi3Model) Tensors(ts []Tensor) []ggml.Tensor {
})
}
out = append(out, ggml.Tensor{
out = append(out, llm.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),

View File

@@ -1,79 +0,0 @@
package convert
import "github.com/ollama/ollama/fs/ggml"
type qwen2Model struct {
ModelParameters
MaxPositionEmbeddings uint32 `json:"max_position_embeddings"`
HiddenSize uint32 `json:"hidden_size"`
HiddenLayers uint32 `json:"num_hidden_layers"`
IntermediateSize uint32 `json:"intermediate_size"`
NumAttentionHeads uint32 `json:"num_attention_heads"`
NumKeyValueHeads uint32 `json:"num_key_value_heads"`
RopeTheta float32 `json:"rope_theta"`
RopeScaling struct {
Type string `json:"type"`
Factor ropeFactor `json:"factor"`
OriginalMaxPositionEmbeddings uint32 `json:"original_max_position_embeddings"`
} `json:"rope_scaling"`
RMSNormEPS float32 `json:"rms_norm_eps"`
}
var _ ModelConverter = (*qwen2Model)(nil)
func (q *qwen2Model) KV(t *Tokenizer) ggml.KV {
kv := q.ModelParameters.KV(t)
kv["general.architecture"] = "qwen2"
kv["qwen2.block_count"] = q.HiddenLayers
kv["qwen2.context_length"] = q.MaxPositionEmbeddings
kv["qwen2.embedding_length"] = q.HiddenSize
kv["qwen2.feed_forward_length"] = q.IntermediateSize
kv["qwen2.attention.head_count"] = q.NumAttentionHeads
kv["qwen2.attention.head_count_kv"] = q.NumKeyValueHeads
kv["qwen2.rope.freq_base"] = q.RopeTheta
kv["qwen2.attention.layer_norm_rms_epsilon"] = q.RMSNormEPS
switch q.RopeScaling.Type {
case "":
// no scaling
case "yarn":
kv["qwen2.rope.scaling.type"] = q.RopeScaling.Type
kv["qwen2.rope.scaling.factor"] = q.RopeScaling.Factor
default:
panic("unknown rope scaling type")
}
return kv
}
func (q *qwen2Model) Tensors(ts []Tensor) []ggml.Tensor {
var out []ggml.Tensor
for _, t := range ts {
out = append(out, ggml.Tensor{
Name: t.Name(),
Kind: t.Kind(),
Shape: t.Shape(),
WriterTo: t,
})
}
return out
}
func (p *qwen2Model) Replacements() []string {
return []string{
"lm_head", "output",
"model.embed_tokens", "token_embd",
"model.layers", "blk",
"input_layernorm", "attn_norm",
"self_attn.k_proj", "attn_k",
"self_attn.v_proj", "attn_v",
"self_attn.q_proj", "attn_q",
"self_attn.o_proj", "attn_output",
"mlp.down_proj", "ffn_down",
"mlp.gate_proj", "ffn_gate",
"mlp.up_proj", "ffn_up",
"post_attention_layernorm", "ffn_norm",
"model.norm", "output_norm",
}
}

View File

@@ -20,7 +20,7 @@ import (
"golang.org/x/exp/maps"
"github.com/ollama/ollama/fs/ggml"
"github.com/ollama/ollama/llm"
)
type tensorData struct {
@@ -29,7 +29,7 @@ type tensorData struct {
Shape []int `json:"shape"`
}
func convertFull(t *testing.T, fsys fs.FS) (*os.File, ggml.KV, ggml.Tensors) {
func convertFull(t *testing.T, fsys fs.FS) (*os.File, llm.KV, *llm.Tensors) {
t.Helper()
f, err := os.CreateTemp(t.TempDir(), "f16")
@@ -48,7 +48,7 @@ func convertFull(t *testing.T, fsys fs.FS) (*os.File, ggml.KV, ggml.Tensors) {
}
t.Cleanup(func() { r.Close() })
m, _, err := ggml.Decode(r, math.MaxInt)
m, _, err := llm.DecodeGGML(r, math.MaxInt)
if err != nil {
t.Fatal(err)
}
@@ -60,7 +60,7 @@ func convertFull(t *testing.T, fsys fs.FS) (*os.File, ggml.KV, ggml.Tensors) {
return r, m.KV(), m.Tensors()
}
func generateResultsJSON(t *testing.T, f *os.File, kv ggml.KV, tensors ggml.Tensors) map[string]string {
func generateResultsJSON(t *testing.T, f *os.File, kv llm.KV, tensors *llm.Tensors) map[string]string {
actual := make(map[string]string)
for k, v := range kv {
if s, ok := v.(json.Marshaler); !ok {
@@ -75,7 +75,7 @@ func generateResultsJSON(t *testing.T, f *os.File, kv ggml.KV, tensors ggml.Tens
}
}
for _, tensor := range tensors.Items() {
for _, tensor := range tensors.Items {
sha256sum := sha256.New()
sr := io.NewSectionReader(f, int64(tensors.Offset+tensor.Offset), int64(tensor.Size()))
if _, err := io.Copy(sha256sum, sr); err != nil {
@@ -108,7 +108,6 @@ func TestConvertModel(t *testing.T) {
"Phi-3-mini-128k-instruct",
"all-MiniLM-L6-v2",
"gemma-2-9b-it",
"Qwen2.5-0.5B-Instruct",
}
for i := range cases {
@@ -331,7 +330,7 @@ func TestConvertAdapter(t *testing.T) {
}
defer r.Close()
m, _, err := ggml.Decode(r, math.MaxInt)
m, _, err := llm.DecodeGGML(r, math.MaxInt)
if err != nil {
t.Fatal(err)
}

View File

@@ -331,7 +331,7 @@ type TrainerSpec struct {
// Reserved special meta tokens.
// * -1 is not used.
// * unk_id must not be -1.
// Id must start with 0 and be contiguous.
// Id must starts with 0 and be contigous.
UnkId *int32 `protobuf:"varint,40,opt,name=unk_id,json=unkId,def=0" json:"unk_id,omitempty"` // <unk>
BosId *int32 `protobuf:"varint,41,opt,name=bos_id,json=bosId,def=1" json:"bos_id,omitempty"` // <s>
EosId *int32 `protobuf:"varint,42,opt,name=eos_id,json=eosId,def=2" json:"eos_id,omitempty"` // </s>

View File

@@ -213,7 +213,7 @@ message TrainerSpec {
// Reserved special meta tokens.
// * -1 is not used.
// * unk_id must not be -1.
// Id must start with 0 and be contiguous.
// Id must starts with 0 and be contigous.
optional int32 unk_id = 40 [default = 0]; // <unk>
optional int32 bos_id = 41 [default = 1]; // <s>
optional int32 eos_id = 42 [default = 2]; // </s>

View File

@@ -1,314 +0,0 @@
{
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"qwen2.attention.head_count_kv": "2",
"qwen2.attention.layer_norm_rms_epsilon": "1e-06",
"qwen2.block_count": "24",
"qwen2.context_length": "32768",
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"tokenizer.ggml.eos_token_id": "151645",
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"blk.9.attn_q.weight": "93e84906684c0c7ede79967236d9fc8344da84a9f1daa04e8295c2c9b6b26a24",
"blk.9.attn_v.bias": "615421f812f821e230ecde4e6da35d868823248355ce7e4e51e2d650ead565f9",
"blk.9.attn_v.weight": "7f4913e289aefd9ceecbdaf9767b1e95303f5d59dd67ecb2cc15768477f4d08e",
"blk.9.ffn_down.weight": "95d1b3933221e87dc4af70dd566daec9498bf358070b8d26f1fc70766a84a152",
"blk.9.ffn_gate.weight": "530f2d04f6a1fbffaaa5f2fbc3a328ebed7b330e3af14b4fc7d8a51b13ad8d42",
"blk.9.ffn_norm.weight": "28077de416217ea1df94b96017bef4cc562ab62e51b1a03a671c70abc29ce52a",
"blk.9.ffn_up.weight": "b87b6190778aaee4695938e24ac6c90dbbee6dce7c5c2ab5bc26ba4564581822"
}

View File

@@ -10,7 +10,6 @@ import (
"log/slog"
"os"
"slices"
"strings"
"golang.org/x/exp/maps"
)
@@ -61,25 +60,7 @@ func parseTokenizer(fsys fs.FS, specialTokenTypes []string) (*Tokenizer, error)
addedTokens[t.Content] = t
}
if len(tt.Model.Merges) == 0 {
// noop; merges is empty
} else if err := json.Unmarshal(tt.Model.Merges, &t.Merges); err == nil {
// noop; merges is []string
} else if merges, err := func() ([][]string, error) {
var merges [][]string
if err := json.Unmarshal(tt.Model.Merges, &merges); err != nil {
return nil, err
}
return merges, nil
}(); err == nil {
t.Merges = make([]string, len(merges))
for i := range merges {
t.Merges[i] = strings.Join(merges[i], " ")
}
} else {
return nil, fmt.Errorf("could not parse tokenizer merges. expected []string or [][]string: %w", err)
}
t.Merges = tt.Model.Merges
sha256sum := sha256.New()
for _, pt := range tt.PreTokenizer.PreTokenizers {
@@ -100,8 +81,6 @@ func parseTokenizer(fsys fs.FS, specialTokenTypes []string) (*Tokenizer, error)
t.Pre = "deepseek-llm"
case "21cde974d587f0d54dc8d56b183cc1e6239600172035c68fbd6d4b9f8da0576e":
t.Pre = "deepseek-coder"
case "1ff7f41064896984db5d1bb6ff64fa4bc29007d08c1b439e505b7392777a319e":
t.Pre = "qwen2"
case "e3b0c44298fc1c149afbf4c8996fb92427ae41e4649b934ca495991b7852b855":
// noop, empty pretokenizer
default:
@@ -177,9 +156,9 @@ func parseTokenizer(fsys fs.FS, specialTokenTypes []string) (*Tokenizer, error)
type tokenizer struct {
AddedTokens []token `json:"added_tokens"`
Model struct {
Type string `json:"type"`
Vocab map[string]int `json:"vocab"`
Merges json.RawMessage `json:"merges"`
Type string `json:"type"`
Vocab map[string]int `json:"vocab"`
Merges []string `json:"merges"`
} `json:"model"`
PreTokenizer struct {

View File

@@ -191,62 +191,6 @@ func TestParseTokenizer(t *testing.T) {
Pre: "default",
},
},
{
name: "list string merges",
fsys: createTokenizerFS(t, t.TempDir(), map[string]io.Reader{
"tokenizer.json": strings.NewReader(`{
"model": {
"merges": [
"a b",
"c d",
"e f"
]
}
}`),
}),
want: &Tokenizer{
Vocabulary: &Vocabulary{
Model: "gpt2",
},
Merges: []string{
"a b",
"c d",
"e f",
},
Pre: "default",
},
},
{
name: "list list string merges",
fsys: createTokenizerFS(t, t.TempDir(), map[string]io.Reader{
"tokenizer.json": strings.NewReader(`{
"model": {
"merges": [
[
"a", "b"
],
[
"c", "d"
],
[
"e", "f"
]
]
}
}`),
}),
want: &Tokenizer{
Vocabulary: &Vocabulary{
Model: "gpt2",
},
Merges: []string{
"a b",
"c d",
"e f",
},
Pre: "default",
},
},
}
for _, tt := range cases {

View File

@@ -77,7 +77,6 @@ func AMDGetGPUInfo() ([]RocmGPUInfo, error) {
gfxOverride := envconfig.HsaOverrideGfxVersion()
var supported []string
depPaths := LibraryDirs()
libDir := ""
// The amdgpu driver always exposes the host CPU(s) first, but we have to skip them and subtract
@@ -301,11 +300,8 @@ func AMDGetGPUInfo() ([]RocmGPUInfo, error) {
})
continue
}
minVer, err := strconv.Atoi(RocmComputeMajorMin)
if err != nil {
slog.Error("invalid RocmComputeMajorMin setting", "value", RocmComputeMajorMin, "error", err)
}
if int(major) < minVer {
if int(major) < RocmComputeMin {
reason := fmt.Sprintf("amdgpu too old gfx%d%x%x", major, minor, patch)
slog.Warn(reason, "gpu", gpuID)
unsupportedGPUs = append(unsupportedGPUs, UnsupportedGPUInfo{
@@ -353,9 +349,8 @@ func AMDGetGPUInfo() ([]RocmGPUInfo, error) {
})
return nil, err
}
depPaths = append(depPaths, libDir)
}
gpuInfo.DependencyPath = depPaths
gpuInfo.DependencyPath = []string{libDir}
if gfxOverride == "" {
// Only load supported list once

View File

@@ -50,14 +50,12 @@ func AMDGetGPUInfo() ([]RocmGPUInfo, error) {
slog.Info(err.Error())
return nil, err
}
depPaths := LibraryDirs()
libDir, err := AMDValidateLibDir()
if err != nil {
err = fmt.Errorf("unable to verify rocm library: %w", err)
slog.Warn(err.Error())
return nil, err
}
depPaths = append(depPaths, libDir)
var supported []string
gfxOverride := envconfig.HsaOverrideGfxVersion()
@@ -113,7 +111,7 @@ func AMDGetGPUInfo() ([]RocmGPUInfo, error) {
UnreliableFreeMemory: true,
ID: strconv.Itoa(i), // TODO this is probably wrong if we specify visible devices
DependencyPath: depPaths,
DependencyPath: []string{libDir},
MinimumMemory: rocmMinimumMemory,
Name: name,
Compute: gfx,
@@ -184,7 +182,7 @@ func (gpus RocmGPUInfoList) RefreshFreeMemory() error {
hl, err := NewHipLib()
if err != nil {
slog.Debug(err.Error())
return err
return nil
}
defer hl.Release()

View File

@@ -5,8 +5,21 @@ import (
"path/filepath"
"runtime"
"strings"
"golang.org/x/sys/cpu"
)
func GetCPUCapability() CPUCapability {
if cpu.X86.HasAVX2 {
return CPUCapabilityAVX2
}
if cpu.X86.HasAVX {
return CPUCapabilityAVX
}
// else LCD
return CPUCapabilityNone
}
func IsNUMA() bool {
if runtime.GOOS != "linux" {
// numa support in llama.cpp is linux only

View File

@@ -16,14 +16,12 @@ import (
"os"
"path/filepath"
"runtime"
"strconv"
"strings"
"sync"
"unsafe"
"github.com/ollama/ollama/envconfig"
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/runners"
)
type cudaHandles struct {
@@ -47,6 +45,7 @@ const (
var (
gpuMutex sync.Mutex
bootstrapped bool
cpuCapability CPUCapability
cpus []CPUInfo
cudaGPUs []CudaGPUInfo
nvcudaLibPath string
@@ -65,13 +64,9 @@ var (
)
// With our current CUDA compile flags, older than 5.0 will not work properly
// (string values used to allow ldflags overrides at build time)
var (
CudaComputeMajorMin = "5"
CudaComputeMinorMin = "0"
)
var CudaComputeMin = [2]C.int{5, 0}
var RocmComputeMajorMin = "9"
var RocmComputeMin = 9
// TODO find a better way to detect iGPU instead of minimum memory
const IGPUMemLimit = 1 * format.GibiByte // 512G is what they typically report, so anything less than 1G must be iGPU
@@ -106,9 +101,9 @@ func initCudaHandles() *cudaHandles {
localAppData := os.Getenv("LOCALAPPDATA")
cudartMgmtPatterns = []string{filepath.Join(localAppData, "Programs", "Ollama", CudartMgmtName)}
}
libDirs := LibraryDirs()
for _, d := range libDirs {
cudartMgmtPatterns = append(cudartMgmtPatterns, filepath.Join(d, CudartMgmtName))
libDir := LibraryDir()
if libDir != "" {
cudartMgmtPatterns = []string{filepath.Join(libDir, CudartMgmtName)}
}
cudartMgmtPatterns = append(cudartMgmtPatterns, CudartGlobs...)
@@ -224,23 +219,16 @@ func GetGPUInfo() GpuInfoList {
if !bootstrapped {
slog.Info("looking for compatible GPUs")
cudaComputeMajorMin, err := strconv.Atoi(CudaComputeMajorMin)
if err != nil {
slog.Error("invalid CudaComputeMajorMin setting", "value", CudaComputeMajorMin, "error", err)
}
cudaComputeMinorMin, err := strconv.Atoi(CudaComputeMinorMin)
if err != nil {
slog.Error("invalid CudaComputeMinorMin setting", "value", CudaComputeMinorMin, "error", err)
}
bootstrapErrors = []error{}
needRefresh = false
cpuCapability = GetCPUCapability()
var memInfo C.mem_info_t
mem, err := GetCPUMem()
if err != nil {
slog.Warn("error looking up system memory", "error", err)
}
depPaths := LibraryDirs()
depPath := LibraryDir()
details, err := GetCPUDetails()
if err != nil {
slog.Warn("failed to lookup CPU details", "error", err)
@@ -250,14 +238,24 @@ func GetGPUInfo() GpuInfoList {
GpuInfo: GpuInfo{
memInfo: mem,
Library: "cpu",
Variant: runners.GetCPUCapability().String(),
Variant: cpuCapability.String(),
ID: "0",
DependencyPath: depPaths,
DependencyPath: []string{depPath},
},
CPUs: details,
},
}
// Fallback to CPU mode if we're lacking required vector extensions on x86
if cpuCapability < GPURunnerCPUCapability && runtime.GOARCH == "amd64" {
err := fmt.Errorf("CPU does not have minimum vector extensions, GPU inference disabled. Required:%s Detected:%s", GPURunnerCPUCapability, cpuCapability)
slog.Warn(err.Error())
bootstrapErrors = append(bootstrapErrors, err)
bootstrapped = true
// No need to do any GPU discovery, since we can't run on them
return GpuInfoList{cpus[0].GpuInfo}
}
// Load ALL libraries
cHandles = initCudaHandles()
@@ -294,23 +292,19 @@ func GetGPUInfo() GpuInfoList {
gpuInfo.DriverMajor = driverMajor
gpuInfo.DriverMinor = driverMinor
variant := cudaVariant(gpuInfo)
if depPaths != nil {
gpuInfo.DependencyPath = depPaths
if depPath != "" {
gpuInfo.DependencyPath = []string{depPath}
// Check for variant specific directory
if variant != "" {
for _, d := range depPaths {
if _, err := os.Stat(filepath.Join(d, "cuda_"+variant)); err == nil {
// Put the variant directory first in the search path to avoid runtime linking to the wrong library
gpuInfo.DependencyPath = append([]string{filepath.Join(d, "cuda_"+variant)}, gpuInfo.DependencyPath...)
break
}
if _, err := os.Stat(filepath.Join(depPath, "cuda_"+variant)); err == nil {
gpuInfo.DependencyPath = []string{filepath.Join(depPath, "cuda_"+variant), depPath}
}
}
}
gpuInfo.Name = C.GoString(&memInfo.gpu_name[0])
gpuInfo.Variant = variant
if int(memInfo.major) < cudaComputeMajorMin || (int(memInfo.major) == cudaComputeMajorMin && int(memInfo.minor) < cudaComputeMinorMin) {
if memInfo.major < CudaComputeMin[0] || (memInfo.major == CudaComputeMin[0] && memInfo.minor < CudaComputeMin[1]) {
unsupportedGPUs = append(unsupportedGPUs,
UnsupportedGPUInfo{
GpuInfo: gpuInfo.GpuInfo,
@@ -376,7 +370,7 @@ func GetGPUInfo() GpuInfoList {
gpuInfo.FreeMemory = uint64(memInfo.free)
gpuInfo.ID = C.GoString(&memInfo.gpu_id[0])
gpuInfo.Name = C.GoString(&memInfo.gpu_name[0])
gpuInfo.DependencyPath = depPaths
gpuInfo.DependencyPath = []string{depPath}
oneapiGPUs = append(oneapiGPUs, gpuInfo)
}
}
@@ -391,8 +385,6 @@ func GetGPUInfo() GpuInfoList {
if len(cudaGPUs) == 0 && len(rocmGPUs) == 0 && len(oneapiGPUs) == 0 {
slog.Info("no compatible GPUs were discovered")
}
// TODO verify we have runners for the discovered GPUs, filter out any that aren't supported with good error messages
}
// For detected GPUs, load library if not loaded
@@ -517,10 +509,7 @@ func FindGPULibs(baseLibName string, defaultPatterns []string) []string {
slog.Debug("Searching for GPU library", "name", baseLibName)
// Start with our bundled libraries
patterns := []string{}
for _, d := range LibraryDirs() {
patterns = append(patterns, filepath.Join(d, baseLibName))
}
patterns := []string{filepath.Join(LibraryDir(), baseLibName)}
switch runtime.GOOS {
case "windows":
@@ -542,6 +531,7 @@ func FindGPULibs(baseLibName string, defaultPatterns []string) []string {
patterns = append(patterns, defaultPatterns...)
slog.Debug("gpu library search", "globs", patterns)
for _, pattern := range patterns {
// Nvidia PhysX known to return bogus results
if strings.Contains(pattern, "PhysX") {
slog.Debug("skipping PhysX cuda library path", "path", pattern)
@@ -715,21 +705,32 @@ func (l GpuInfoList) GetVisibleDevicesEnv() (string, string) {
}
}
func LibraryDirs() []string {
// dependencies can exist wherever we found the runners (e.g. build tree for developers) and relative to the executable
// This can be simplified once we no longer carry runners as payloads
exe, err := os.Executable()
func LibraryDir() string {
// On Windows/linux we bundle the dependencies at the same level as the executable
appExe, err := os.Executable()
if err != nil {
slog.Warn("failed to lookup executable path", "error", err)
return nil
}
lib := filepath.Join(filepath.Dir(exe), envconfig.LibRelativeToExe(), "lib", "ollama")
if _, err := os.Stat(lib); err != nil {
return nil
cwd, err := os.Getwd()
if err != nil {
slog.Warn("failed to lookup working directory", "error", err)
}
return []string{lib}
// Scan for any of our dependeices, and pick first match
for _, root := range []string{filepath.Dir(appExe), filepath.Join(filepath.Dir(appExe), envconfig.LibRelativeToExe()), cwd} {
libDep := filepath.Join("lib", "ollama")
if _, err := os.Stat(filepath.Join(root, libDep)); err == nil {
return filepath.Join(root, libDep)
}
// Developer mode, local build
if _, err := os.Stat(filepath.Join(root, runtime.GOOS+"-"+runtime.GOARCH, libDep)); err == nil {
return filepath.Join(root, runtime.GOOS+"-"+runtime.GOARCH, libDep)
}
if _, err := os.Stat(filepath.Join(root, "dist", runtime.GOOS+"-"+runtime.GOARCH, libDep)); err == nil {
return filepath.Join(root, "dist", runtime.GOOS+"-"+runtime.GOARCH, libDep)
}
}
slog.Warn("unable to locate gpu dependency libraries")
return ""
}
func GetSystemInfo() SystemInfo {

View File

@@ -15,7 +15,6 @@ import (
"syscall"
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/runners"
)
const (
@@ -28,7 +27,7 @@ func GetGPUInfo() GpuInfoList {
return []GpuInfo{
{
Library: "cpu",
Variant: runners.GetCPUCapability().String(),
Variant: GetCPUCapability().String(),
memInfo: mem,
},
}
@@ -51,7 +50,7 @@ func GetCPUInfo() GpuInfoList {
return []GpuInfo{
{
Library: "cpu",
Variant: runners.GetCPUCapability().String(),
Variant: GetCPUCapability().String(),
memInfo: mem,
},
}

View File

@@ -209,7 +209,7 @@ func processSystemLogicalProcessorInforationList(buf []byte) []*winPackage {
}
}
// Summarize the results
// Sumarize the results
for i, pkg := range packages {
slog.Info("", "package", i, "cores", pkg.coreCount, "efficiency", pkg.efficiencyCoreCount, "threads", pkg.threadCount)
}

View File

@@ -5,7 +5,6 @@ import (
"log/slog"
"github.com/ollama/ollama/format"
"github.com/ollama/ollama/runners"
)
type memInfo struct {
@@ -48,13 +47,6 @@ type GpuInfo struct { // TODO better name maybe "InferenceProcessor"?
// TODO other performance capability info to help in scheduling decisions
}
func (gpu GpuInfo) RunnerName() string {
if gpu.Variant != "" {
return gpu.Library + "_" + gpu.Variant
}
return gpu.Library
}
type CPUInfo struct {
GpuInfo
CPUs []CPU
@@ -107,7 +99,7 @@ func (l GpuInfoList) ByLibrary() []GpuInfoList {
for _, info := range l {
found := false
requested := info.Library
if info.Variant != runners.CPUCapabilityNone.String() {
if info.Variant != CPUCapabilityNone.String() {
requested += "_" + info.Variant
}
for i, lib := range libs {
@@ -148,6 +140,29 @@ func (a ByFreeMemory) Len() int { return len(a) }
func (a ByFreeMemory) Swap(i, j int) { a[i], a[j] = a[j], a[i] }
func (a ByFreeMemory) Less(i, j int) bool { return a[i].FreeMemory < a[j].FreeMemory }
type CPUCapability uint32
// Override at build time when building base GPU runners
var GPURunnerCPUCapability = CPUCapabilityAVX
const (
CPUCapabilityNone CPUCapability = iota
CPUCapabilityAVX
CPUCapabilityAVX2
// TODO AVX512
)
func (c CPUCapability) String() string {
switch c {
case CPUCapabilityAVX:
return "avx"
case CPUCapabilityAVX2:
return "avx2"
default:
return "no vector extensions"
}
}
type SystemInfo struct {
System CPUInfo `json:"system"`
GPUs []GpuInfo `json:"gpus"`
@@ -168,17 +183,3 @@ func (si SystemInfo) GetOptimalThreadCount() int {
return coreCount
}
// For each GPU, check if it does NOT support flash attention
func (l GpuInfoList) FlashAttentionSupported() bool {
for _, gpu := range l {
supportsFA := gpu.Library == "metal" ||
(gpu.Library == "cuda" && gpu.DriverMajor >= 7) ||
gpu.Library == "rocm"
if !supportsFA {
return false
}
}
return true
}

View File

@@ -13,7 +13,6 @@
- [Push a Model](#push-a-model)
- [Generate Embeddings](#generate-embeddings)
- [List Running Models](#list-running-models)
- [Version](#version)
## Conventions
@@ -46,18 +45,14 @@ Generate a response for a given prompt with a provided model. This is a streamin
Advanced parameters (optional):
- `format`: the format to return a response in. Format can be `json` or a JSON schema
- `format`: the format to return a response in. Currently the only accepted value is `json`
- `options`: additional model parameters listed in the documentation for the [Modelfile](./modelfile.md#valid-parameters-and-values) such as `temperature`
- `system`: system message to (overrides what is defined in the `Modelfile`)
- `template`: the prompt template to use (overrides what is defined in the `Modelfile`)
- `context`: the context parameter returned from a previous request to `/generate`, this can be used to keep a short conversational memory
- `stream`: if `false` the response will be returned as a single response object, rather than a stream of objects
- `raw`: if `true` no formatting will be applied to the prompt. You may choose to use the `raw` parameter if you are specifying a full templated prompt in your request to the API
- `keep_alive`: controls how long the model will stay loaded into memory following the request (default: `5m`)
- `context` (deprecated): the context parameter returned from a previous request to `/generate`, this can be used to keep a short conversational memory
#### Structured outputs
Structured outputs are supported by providing a JSON schema in the `format` parameter. The model will generate a response that matches the schema. See the [structured outputs](#request-structured-outputs) example below.
#### JSON mode
@@ -190,52 +185,6 @@ curl http://localhost:11434/api/generate -d '{
}
```
#### Request (Structured outputs)
##### Request
```shell
curl -X POST http://localhost:11434/api/generate -H "Content-Type: application/json" -d '{
"model": "llama3.1:8b",
"prompt": "Ollama is 22 years old and is busy saving the world. Respond using JSON",
"stream": false,
"format": {
"type": "object",
"properties": {
"age": {
"type": "integer"
},
"available": {
"type": "boolean"
}
},
"required": [
"age",
"available"
]
}
}'
```
##### Response
```json
{
"model": "llama3.1:8b",
"created_at": "2024-12-06T00:48:09.983619Z",
"response": "{\n \"age\": 22,\n \"available\": true\n}",
"done": true,
"done_reason": "stop",
"context": [1, 2, 3],
"total_duration": 1075509083,
"load_duration": 567678166,
"prompt_eval_count": 28,
"prompt_eval_duration": 236000000,
"eval_count": 16,
"eval_duration": 269000000
}
```
#### Request (JSON mode)
> [!IMPORTANT]
@@ -388,6 +337,7 @@ curl http://localhost:11434/api/generate -d '{
"top_k": 20,
"top_p": 0.9,
"min_p": 0.0,
"tfs_z": 0.5,
"typical_p": 0.7,
"repeat_last_n": 33,
"temperature": 0.8,
@@ -506,15 +456,11 @@ The `message` object has the following fields:
Advanced parameters (optional):
- `format`: the format to return a response in. Format can be `json` or a JSON schema.
- `format`: the format to return a response in. Currently the only accepted value is `json`
- `options`: additional model parameters listed in the documentation for the [Modelfile](./modelfile.md#valid-parameters-and-values) such as `temperature`
- `stream`: if `false` the response will be returned as a single response object, rather than a stream of objects
- `keep_alive`: controls how long the model will stay loaded into memory following the request (default: `5m`)
### Structured outputs
Structured outputs are supported by providing a JSON schema in the `format` parameter. The model will generate a response that matches the schema. See the [Chat request (Structured outputs)](#chat-request-structured-outputs) example below.
### Examples
#### Chat Request (Streaming)
@@ -605,54 +551,6 @@ curl http://localhost:11434/api/chat -d '{
}
```
#### Chat request (Structured outputs)
##### Request
```shell
curl -X POST http://localhost:11434/api/chat -H "Content-Type: application/json" -d '{
"model": "llama3.1",
"messages": [{"role": "user", "content": "Ollama is 22 years old and busy saving the world. Return a JSON object with the age and availability."}],
"stream": false,
"format": {
"type": "object",
"properties": {
"age": {
"type": "integer"
},
"available": {
"type": "boolean"
}
},
"required": [
"age",
"available"
]
},
"options": {
"temperature": 0
}
}'
```
##### Response
```json
{
"model": "llama3.1",
"created_at": "2024-12-06T00:46:58.265747Z",
"message": { "role": "assistant", "content": "{\"age\": 22, \"available\": false}" },
"done_reason": "stop",
"done": true,
"total_duration": 2254970291,
"load_duration": 574751416,
"prompt_eval_count": 34,
"prompt_eval_duration": 1502000000,
"eval_count": 12,
"eval_duration": 175000000
}
```
#### Chat request (With History)
Send a chat message with a conversation history. You can use this same approach to start the conversation using multi-shot or chain-of-thought prompting.
@@ -928,25 +826,14 @@ A single JSON object is returned:
POST /api/create
```
Create a model from:
* another model;
* a safetensors directory; or
* a GGUF file.
If you are creating a model from a safetensors directory or from a GGUF file, you must [create a blob](#create-a-blob) for each of the files and then use the file name and SHA256 digest associated with each blob in the `files` field.
Create a model from a [`Modelfile`](./modelfile.md). It is recommended to set `modelfile` to the content of the Modelfile rather than just set `path`. This is a requirement for remote create. Remote model creation must also create any file blobs, fields such as `FROM` and `ADAPTER`, explicitly with the server using [Create a Blob](#create-a-blob) and the value to the path indicated in the response.
### Parameters
- `model`: name of the model to create
- `from`: (optional) name of an existing model to create the new model from
- `files`: (optional) a dictionary of file names to SHA256 digests of blobs to create the model from
- `adapters`: (optional) a dictionary of file names to SHA256 digests of blobs for LORA adapters
- `template`: (optional) the prompt template for the model
- `license`: (optional) a string or list of strings containing the license or licenses for the model
- `system`: (optional) a string containing the system prompt for the model
- `parameters`: (optional) a dictionary of parameters for the model (see [Modelfile](./modelfile.md#valid-parameters-and-values) for a list of parameters)
- `messages`: (optional) a list of message objects used to create a conversation
- `modelfile` (optional): contents of the Modelfile
- `stream`: (optional) if `false` the response will be returned as a single response object, rather than a stream of objects
- `path` (optional): path to the Modelfile
- `quantize` (optional): quantize a non-quantized (e.g. float16) model
#### Quantization types
@@ -972,15 +859,14 @@ If you are creating a model from a safetensors directory or from a GGUF file, yo
#### Create a new model
Create a new model from an existing model.
Create a new model from a `Modelfile`.
##### Request
```shell
curl http://localhost:11434/api/create -d '{
"model": "mario",
"from": "llama3.2",
"system": "You are Mario from Super Mario Bros."
"modelfile": "FROM llama3\nSYSTEM You are mario from Super Mario Bros."
}'
```
@@ -1011,7 +897,7 @@ Quantize a non-quantized model.
```shell
curl http://localhost:11434/api/create -d '{
"model": "llama3.1:quantized",
"from": "llama3.1:8b-instruct-fp16",
"modelfile": "FROM llama3.1:8b-instruct-fp16",
"quantize": "q4_K_M"
}'
```
@@ -1031,112 +917,52 @@ A stream of JSON objects is returned:
{"status":"success"}
```
#### Create a model from GGUF
Create a model from a GGUF file. The `files` parameter should be filled out with the file name and SHA256 digest of the GGUF file you wish to use. Use [/api/blobs/:digest](#push-a-blob) to push the GGUF file to the server before calling this API.
##### Request
```shell
curl http://localhost:11434/api/create -d '{
"model": "my-gguf-model",
"files": {
"test.gguf": "sha256:432f310a77f4650a88d0fd59ecdd7cebed8d684bafea53cbff0473542964f0c3"
}
}'
```
##### Response
A stream of JSON objects is returned:
```
{"status":"parsing GGUF"}
{"status":"using existing layer sha256:432f310a77f4650a88d0fd59ecdd7cebed8d684bafea53cbff0473542964f0c3"}
{"status":"writing manifest"}
{"status":"success"}
```
#### Create a model from a Safetensors directory
The `files` parameter should include a dictionary of files for the safetensors model which includes the file names and SHA256 digest of each file. Use [/api/blobs/:digest](#push-a-blob) to first push each of the files to the server before calling this API. Files will remain in the cache until the Ollama server is restarted.
##### Request
```shell
curl http://localhost:11434/api/create -d '{
"model": "fred",
"files": {
"config.json": "sha256:dd3443e529fb2290423a0c65c2d633e67b419d273f170259e27297219828e389",
"generation_config.json": "sha256:88effbb63300dbbc7390143fbbdd9d9fa50587b37e8bfd16c8c90d4970a74a36",
"special_tokens_map.json": "sha256:b7455f0e8f00539108837bfa586c4fbf424e31f8717819a6798be74bef813d05",
"tokenizer.json": "sha256:bbc1904d35169c542dffbe1f7589a5994ec7426d9e5b609d07bab876f32e97ab",
"tokenizer_config.json": "sha256:24e8a6dc2547164b7002e3125f10b415105644fcf02bf9ad8b674c87b1eaaed6",
"model.safetensors": "sha256:1ff795ff6a07e6a68085d206fb84417da2f083f68391c2843cd2b8ac6df8538f"
}
}'
```
##### Response
A stream of JSON objects is returned:
```shell
{"status":"converting model"}
{"status":"creating new layer sha256:05ca5b813af4a53d2c2922933936e398958855c44ee534858fcfd830940618b6"}
{"status":"using autodetected template llama3-instruct"}
{"status":"using existing layer sha256:56bb8bd477a519ffa694fc449c2413c6f0e1d3b1c88fa7e3c9d88d3ae49d4dcb"}
{"status":"writing manifest"}
{"status":"success"}
```
## Check if a Blob Exists
### Check if a Blob Exists
```shell
HEAD /api/blobs/:digest
```
Ensures that the file blob (Binary Large Object) used with create a model exists on the server. This checks your Ollama server and not ollama.com.
Ensures that the file blob used for a FROM or ADAPTER field exists on the server. This is checking your Ollama server and not ollama.com.
### Query Parameters
#### Query Parameters
- `digest`: the SHA256 digest of the blob
### Examples
#### Examples
#### Request
##### Request
```shell
curl -I http://localhost:11434/api/blobs/sha256:29fdb92e57cf0827ded04ae6461b5931d01fa595843f55d36f5b275a52087dd2
```
#### Response
##### Response
Return 200 OK if the blob exists, 404 Not Found if it does not.
## Push a Blob
### Create a Blob
```shell
POST /api/blobs/:digest
```
Push a file to the Ollama server to create a "blob" (Binary Large Object).
Create a blob from a file on the server. Returns the server file path.
### Query Parameters
#### Query Parameters
- `digest`: the expected SHA256 digest of the file
### Examples
#### Examples
#### Request
##### Request
```shell
curl -T model.gguf -X POST http://localhost:11434/api/blobs/sha256:29fdb92e57cf0827ded04ae6461b5931d01fa595843f55d36f5b275a52087dd2
curl -T model.bin -X POST http://localhost:11434/api/blobs/sha256:29fdb92e57cf0827ded04ae6461b5931d01fa595843f55d36f5b275a52087dd2
```
#### Response
##### Response
Return 201 Created if the blob was successfully created, 400 Bad Request if the digest used is not expected.
@@ -1599,29 +1425,3 @@ curl http://localhost:11434/api/embeddings -d '{
]
}
```
## Version
```shell
GET /api/version
```
Retrieve the Ollama version
### Examples
#### Request
```shell
curl http://localhost:11434/api/version
```
#### Response
```json
{
"version": "0.5.1"
}
```

View File

@@ -3,24 +3,35 @@
Install required tools:
- go version 1.22 or higher
- OS specific C/C++ compiler (see below)
- GNU Make
- gcc version 11.4.0 or higher
## Overview
Ollama uses a mix of Go and C/C++ code to interface with GPUs. The C/C++ code is compiled with both CGO and GPU library specific compilers. A set of GNU Makefiles are used to compile the project. GPU Libraries are auto-detected based on the typical environment variables used by the respective libraries, but can be overridden if necessary. The default make target will build the runners and primary Go Ollama application that will run within the repo directory. Throughout the examples below `-j 5` is suggested for 5 parallel jobs to speed up the build. You can adjust the job count based on your CPU Core count to reduce build times. If you want to relocate the built binaries, use the `dist` target and recursively copy the files in `./dist/$OS-$ARCH/` to your desired location. To learn more about the other make targets use `make help`
Once you have built the GPU/CPU runners, you can compile the main application with `go build .`
### MacOS
[Download Go](https://go.dev/dl/)
Optionally enable debugging and more verbose logging:
```bash
# At build time
export CGO_CFLAGS="-g"
# At runtime
export OLLAMA_DEBUG=1
```
Get the required libraries and build the native LLM code: (Adjust the job count based on your number of processors for a faster build)
```bash
make -j 5
```
Then build ollama:
```bash
go build .
```
Now you can run `ollama`:
```bash
@@ -40,42 +51,64 @@ _Your operating system distribution may already have packages for NVIDIA CUDA. D
Install `make`, `gcc` and `golang` as well as [NVIDIA CUDA](https://developer.nvidia.com/cuda-downloads)
development and runtime packages.
Typically the makefile will auto-detect CUDA, however, if your Linux distro
or installation approach uses alternative paths, you can specify the location by
overriding `CUDA_PATH` to the location of the CUDA toolkit. You can customize
a set of target CUDA architectures by setting `CUDA_ARCHITECTURES` (e.g. `CUDA_ARCHITECTURES=50;60;70`)
Typically the build scripts will auto-detect CUDA, however, if your Linux distro
or installation approach uses unusual paths, you can specify the location by
specifying an environment variable `CUDA_LIB_DIR` to the location of the shared
libraries, and `CUDACXX` to the location of the nvcc compiler. You can customize
a set of target CUDA architectures by setting `CMAKE_CUDA_ARCHITECTURES` (e.g. "50;60;70")
Then generate dependencies: (Adjust the job count based on your number of processors for a faster build)
```
make -j 5
```
If both v11 and v12 tookkits are detected, runners for both major versions will be built by default. You can build just v12 with `make cuda_v12`
Then build the binary:
#### Older Linux CUDA (NVIDIA)
To support older GPUs with Compute Capability 3.5 or 3.7, you will need to use an older version of the Driver from [Unix Driver Archive](https://www.nvidia.com/en-us/drivers/unix/) (tested with 470) and [CUDA Toolkit Archive](https://developer.nvidia.com/cuda-toolkit-archive) (tested with cuda V11). When you build Ollama, you will need to set two make variable to adjust the minimum compute capability Ollama supports via `make -j 5 CUDA_ARCHITECTURES="35;37;50;52" EXTRA_GOLDFLAGS="\"-X=github.com/ollama/ollama/discover.CudaComputeMajorMin=3\" \"-X=github.com/ollama/ollama/discover.CudaComputeMinorMin=5\""`. To find the Compute Capability of your older GPU, refer to [GPU Compute Capability](https://developer.nvidia.com/cuda-gpus).
```
go build .
```
#### Linux ROCm (AMD)
_Your operating system distribution may already have packages for AMD ROCm. Distro packages are often preferable, but instructions are distro-specific. Please consult distro-specific docs for dependencies if available!_
_Your operating system distribution may already have packages for AMD ROCm and CLBlast. Distro packages are often preferable, but instructions are distro-specific. Please consult distro-specific docs for dependencies if available!_
Install [ROCm](https://rocm.docs.amd.com/en/latest/) development packages first, as well as `make`, `gcc`, and `golang`.
Install [CLBlast](https://github.com/CNugteren/CLBlast/blob/master/doc/installation.md) and [ROCm](https://rocm.docs.amd.com/en/latest/) development packages first, as well as `make`, `gcc`, and `golang`.
Typically the build scripts will auto-detect ROCm, however, if your Linux distro
or installation approach uses unusual paths, you can specify the location by
specifying an environment variable `HIP_PATH` to the location of the ROCm
install (typically `/opt/rocm`). You can also customize
the AMD GPU targets by setting HIP_ARCHS (e.g. `HIP_ARCHS=gfx1101;gfx1102`)
specifying an environment variable `ROCM_PATH` to the location of the ROCm
install (typically `/opt/rocm`), and `CLBlast_DIR` to the location of the
CLBlast install (typically `/usr/lib/cmake/CLBlast`). You can also customize
the AMD GPU targets by setting AMDGPU_TARGETS (e.g. `AMDGPU_TARGETS="gfx1101;gfx1102"`)
Then generate dependencies: (Adjust the job count based on your number of processors for a faster build)
```
make -j 5
```
Then build the binary:
```
go build .
```
ROCm requires elevated privileges to access the GPU at runtime. On most distros you can add your user account to the `render` group, or run as root.
#### Advanced CPU Settings
By default, running `make` will compile a few different variations
of the LLM library based on common CPU families and vector math capabilities,
including a lowest-common-denominator which should run on almost any 64 bit CPU
somewhat slowly. At runtime, Ollama will auto-detect the optimal variation to
load.
Custom CPU settings are not currently supported in the new Go server build but will be added back after we complete the transition.
#### Containerized Linux Build
If you have Docker and buildx available, you can build linux binaries with `./scripts/build_linux.sh` which has the CUDA and ROCm dependencies included. The resulting artifacts are placed in `./dist` and by default the script builds both arm64 and amd64 binaries. If you want to build only amd64, you can build with `PLATFORM=linux/amd64 ./scripts/build_linux.sh`
If you have Docker available, you can build linux binaries with `./scripts/build_linux.sh` which has the CUDA and ROCm dependencies included. The resulting binary is placed in `./dist`
### Windows
@@ -93,8 +126,12 @@ The following tools are required as a minimal development environment to build C
> [!NOTE]
> Due to bugs in the GCC C++ library for unicode support, Ollama should be built with clang on windows.
```
make -j 5
Then, build the `ollama` binary:
```powershell
$env:CGO_ENABLED="1"
make -j 8
go build .
```
#### GPU Support
@@ -136,30 +173,3 @@ pacman -S mingw-w64-clang-aarch64-clang mingw-w64-clang-aarch64-gcc-compat mingw
```
You will need to ensure your PATH includes go, cmake, gcc and clang mingw32-make to build ollama from source. (typically `C:\msys64\clangarm64\bin\`)
## Advanced CPU Vector Settings
On x86, running `make` will compile several CPU runners which can run on different CPU families. At runtime, Ollama will auto-detect the best variation to load. If GPU libraries are present at build time, Ollama also compiles GPU runners with the `AVX` CPU vector feature enabled. This provides a good performance balance when loading large models that split across GPU and CPU with broad compatibility. Some users may prefer no vector extensions (e.g. older Xeon/Celeron processors, or hypervisors that mask the vector features) while other users may prefer turning on many more vector extensions to further improve performance for split model loads.
To customize the set of CPU vector features enabled for a CPU runner and all GPU runners, use CUSTOM_CPU_FLAGS during the build.
To build without any vector flags:
```
make CUSTOM_CPU_FLAGS=""
```
To build with both AVX and AVX2:
```
make CUSTOM_CPU_FLAGS=avx,avx2
```
To build with AVX512 features turned on:
```
make CUSTOM_CPU_FLAGS=avx,avx2,avx512,avx512vbmi,avx512vnni,avx512bf16
```
> [!NOTE]
> If you are experimenting with different flags, make sure to do a `make clean` between each change to ensure everything is rebuilt with the new compiler flags

View File

@@ -1,20 +0,0 @@
# Examples
This directory contains different examples of using Ollama.
## Python examples
Ollama Python examples at [ollama-python/examples](https://github.com/ollama/ollama-python/tree/main/examples)
## JavaScript examples
Ollama JavaScript examples at [ollama-js/examples](https://github.com/ollama/ollama-js/tree/main/examples)
## OpenAI compatibility examples
Ollama OpenAI compatibility examples at [ollama/examples/openai](../docs/openai.md)
## Community examples
- [LangChain Ollama Python](https://python.langchain.com/docs/integrations/chat/ollama/)
- [LangChain Ollama JS](https://js.langchain.com/docs/integrations/chat/ollama/)

View File

@@ -151,7 +151,7 @@ Refer to the section [above](#how-do-i-configure-ollama-server) for how to set e
Ollama runs an HTTP server and can be exposed using a proxy server such as Nginx. To do so, configure the proxy to forward requests and optionally set required headers (if not exposing Ollama on the network). For example, with Nginx:
```nginx
```
server {
listen 80;
server_name example.com; # Replace with your domain or IP
@@ -285,28 +285,4 @@ Note: Windows with Radeon GPUs currently default to 1 model maximum due to limit
## How does Ollama load models on multiple GPUs?
When loading a new model, Ollama evaluates the required VRAM for the model against what is currently available. If the model will entirely fit on any single GPU, Ollama will load the model on that GPU. This typically provides the best performance as it reduces the amount of data transferring across the PCI bus during inference. If the model does not fit entirely on one GPU, then it will be spread across all the available GPUs.
## How can I enable Flash Attention?
Flash Attention is a feature of most modern models that can significantly reduce memory usage as the context size grows. To enable Flash Attention, set the `OLLAMA_FLASH_ATTENTION` environment variable to `1` when starting the Ollama server.
## How can I set the quantization type for the K/V cache?
The K/V context cache can be quantized to significantly reduce memory usage when Flash Attention is enabled.
To use quantized K/V cache with Ollama you can set the following environment variable:
- `OLLAMA_KV_CACHE_TYPE` - The quantization type for the K/V cache. Default is `f16`.
> Note: Currently this is a global option - meaning all models will run with the specified quantization type.
The currently available K/V cache quantization types are:
- `f16` - high precision and memory usage (default).
- `q8_0` - 8-bit quantization, uses approximately 1/2 the memory of `f16` with a very small loss in precision, this usually has no noticeable impact on the model's quality (recommended if not using f16).
- `q4_0` - 4-bit quantization, uses approximately 1/4 the memory of `f16` with a small-medium loss in precision that may be more noticeable at higher context sizes.
How much the cache quantization impacts the model's response quality will depend on the model and the task. Models that have a high GQA count (e.g. Qwen2) may see a larger impact on precision from quantization than models with a low GQA count.
You may need to experiment with different quantization types to find the best balance between memory usage and quality.
Installing multiple GPUs of the same brand can be a great way to increase your available VRAM to load larger models. When you load a new model, Ollama evaluates the required VRAM for the model against what is currently available. If the model will entirely fit on any single GPU, Ollama will load the model on that GPU. This typically provides the best performance as it reduces the amount of data transfering across the PCI bus during inference. If the model does not fit entirely on one GPU, then it will be spread across all the available GPUs.

View File

@@ -28,7 +28,6 @@ Check your compute compatibility to see if your card is supported:
| 5.0 | GeForce GTX | `GTX 750 Ti` `GTX 750` `NVS 810` |
| | Quadro | `K2200` `K1200` `K620` `M1200` `M520` `M5000M` `M4000M` `M3000M` `M2000M` `M1000M` `K620M` `M600M` `M500M` |
For building locally to support older GPUs, see [developer.md](./development.md#linux-cuda-nvidia)
### GPU Selection

View File

@@ -10,9 +10,6 @@ curl -fsSL https://ollama.com/install.sh | sh
## Manual install
> [!NOTE]
> If you are upgrading from a prior version, you should remove the old libraries with `sudo rm -rf /usr/lib/ollama` first.
Download and extract the package:
```shell

View File

@@ -63,7 +63,7 @@ SYSTEM You are Mario from super mario bros, acting as an assistant.
To use this:
1. Save it as a file (e.g. `Modelfile`)
2. `ollama create choose-a-model-name -f <location of the file e.g. ./Modelfile>`
2. `ollama create choose-a-model-name -f <location of the file e.g. ./Modelfile>'`
3. `ollama run choose-a-model-name`
4. Start using the model!
@@ -156,7 +156,7 @@ PARAMETER <parameter> <parametervalue>
| seed | Sets the random number seed to use for generation. Setting this to a specific number will make the model generate the same text for the same prompt. (Default: 0) | int | seed 42 |
| stop | Sets the stop sequences to use. When this pattern is encountered the LLM will stop generating text and return. Multiple stop patterns may be set by specifying multiple separate `stop` parameters in a modelfile. | string | stop "AI assistant:" |
| tfs_z | Tail free sampling is used to reduce the impact of less probable tokens from the output. A higher value (e.g., 2.0) will reduce the impact more, while a value of 1.0 disables this setting. (default: 1) | float | tfs_z 1 |
| num_predict | Maximum number of tokens to predict when generating text. (Default: -1, infinite generation) | int | num_predict 42 |
| num_predict | Maximum number of tokens to predict when generating text. (Default: 128, -1 = infinite generation, -2 = fill context) | int | num_predict 42 |
| top_k | Reduces the probability of generating nonsense. A higher value (e.g. 100) will give more diverse answers, while a lower value (e.g. 10) will be more conservative. (Default: 40) | int | top_k 40 |
| top_p | Works together with top-k. A higher value (e.g., 0.95) will lead to more diverse text, while a lower value (e.g., 0.5) will generate more focused and conservative text. (Default: 0.9) | float | top_p 0.9 |
| min_p | Alternative to the top_p, and aims to ensure a balance of quality and variety. The parameter *p* represents the minimum probability for a token to be considered, relative to the probability of the most likely token. For example, with *p*=0.05 and the most likely token having a probability of 0.9, logits with a value less than 0.045 are filtered out. (Default: 0.0) | float | min_p 0.05 |

View File

@@ -59,40 +59,6 @@ embeddings = client.embeddings.create(
input=["why is the sky blue?", "why is the grass green?"],
)
```
#### Structured outputs
```py
from pydantic import BaseModel
from openai import OpenAI
client = OpenAI(base_url="http://localhost:11434/v1", api_key="ollama")
# Define the schema for the response
class FriendInfo(BaseModel):
name: str
age: int
is_available: bool
class FriendList(BaseModel):
friends: list[FriendInfo]
try:
completion = client.beta.chat.completions.parse(
temperature=0,
model="llama3.1:8b",
messages=[
{"role": "user", "content": "I have two friends. The first is Ollama 22 years old busy saving the world, and the second is Alonso 23 years old and wants to hang out. Return a list of friends in JSON format"}
],
response_format=FriendList,
)
friends_response = completion.choices[0].message
if friends_response.parsed:
print(friends_response.parsed)
elif friends_response.refusal:
print(friends_response.refusal)
except Exception as e:
print(f"Error: {e}")
```
### OpenAI JavaScript library
@@ -215,7 +181,7 @@ curl http://localhost:11434/v1/embeddings \
- [x] JSON mode
- [x] Reproducible outputs
- [x] Vision
- [x] Tools
- [x] Tools (streaming support coming soon)
- [ ] Logprobs
#### Supported request fields
@@ -233,8 +199,6 @@ curl http://localhost:11434/v1/embeddings \
- [x] `seed`
- [x] `stop`
- [x] `stream`
- [x] `stream_options`
- [x] `include_usage`
- [x] `temperature`
- [x] `top_p`
- [x] `max_tokens`
@@ -263,8 +227,6 @@ curl http://localhost:11434/v1/embeddings \
- [x] `seed`
- [x] `stop`
- [x] `stream`
- [x] `stream_options`
- [x] `include_usage`
- [x] `temperature`
- [x] `top_p`
- [x] `max_tokens`

View File

@@ -111,7 +111,7 @@ Keep the following tips and best practices in mind when working with Go template
ChatML is a popular template format. It can be used for models such as Databrick's DBRX, Intel's Neural Chat, and Microsoft's Orca 2.
```go
```gotmpl
{{- range .Messages }}<|im_start|>{{ .Role }}
{{ .Content }}<|im_end|>
{{ end }}<|im_start|>assistant
@@ -125,7 +125,7 @@ Tools support can be added to a model by adding a `{{ .Tools }}` node to the tem
Mistral v0.3 and Mixtral 8x22B supports tool calling.
```go
```gotmpl
{{- range $index, $_ := .Messages }}
{{- if eq .Role "user" }}
{{- if and (le (len (slice $.Messages $index)) 2) $.Tools }}[AVAILABLE_TOOLS] {{ json $.Tools }}[/AVAILABLE_TOOLS]
@@ -151,7 +151,7 @@ Fill-in-middle support can be added to a model by adding a `{{ .Suffix }}` node
CodeLlama [7B](https://ollama.com/library/codellama:7b-code) and [13B](https://ollama.com/library/codellama:13b-code) code completion models support fill-in-middle.
```go
```gotmpl
<PRE> {{ .Prompt }} <SUF>{{ .Suffix }} <MID>
```

View File

@@ -80,7 +80,7 @@ If you are using a container to run Ollama, make sure you've set up the containe
Sometimes the Ollama can have difficulties initializing the GPU. When you check the server logs, this can show up as various error codes, such as "3" (not initialized), "46" (device unavailable), "100" (no device), "999" (unknown), or others. The following troubleshooting techniques may help resolve the problem
- If you are using a container, is the container runtime working? Try `docker run --gpus all ubuntu nvidia-smi` - if this doesn't work, Ollama won't be able to see your NVIDIA GPU.
- If you are using a container, is the container runtime working? Try `docker run --gpus all ubuntu nvidia-smi` - if this doesn't work, Ollama wont be able to see your NVIDIA GPU.
- Is the uvm driver loaded? `sudo nvidia-modprobe -u`
- Try reloading the nvidia_uvm driver - `sudo rmmod nvidia_uvm` then `sudo modprobe nvidia_uvm`
- Try rebooting

9
docs/tutorials.md Normal file
View File

@@ -0,0 +1,9 @@
# Tutorials
Here is a list of ways you can use Ollama with other tools to build interesting applications.
- [Using LangChain with Ollama in JavaScript](./tutorials/langchainjs.md)
- [Using LangChain with Ollama in Python](./tutorials/langchainpy.md)
- [Running Ollama on NVIDIA Jetson Devices](./tutorials/nvidia-jetson.md)
Also be sure to check out the [examples](../examples) directory for more ways to use Ollama.

View File

@@ -83,6 +83,3 @@ If you'd like to install or integrate Ollama as a service, a standalone
and GPU library dependencies for Nvidia and AMD. This allows for embedding
Ollama in existing applications, or running it as a system service via `ollama
serve` with tools such as [NSSM](https://nssm.cc/).
> [!NOTE]
> If you are upgrading from a prior version, you should remove the old directories first.

View File

@@ -153,8 +153,6 @@ var (
Debug = Bool("OLLAMA_DEBUG")
// FlashAttention enables the experimental flash attention feature.
FlashAttention = Bool("OLLAMA_FLASH_ATTENTION")
// KvCacheType is the quantization type for the K/V cache.
KvCacheType = String("OLLAMA_KV_CACHE_TYPE")
// NoHistory disables readline history.
NoHistory = Bool("OLLAMA_NOHISTORY")
// NoPrune disables pruning of model blobs on startup.
@@ -175,6 +173,7 @@ func String(s string) func() string {
var (
LLMLibrary = String("OLLAMA_LLM_LIBRARY")
TmpDir = String("OLLAMA_TMPDIR")
CudaVisibleDevices = String("CUDA_VISIBLE_DEVICES")
HipVisibleDevices = String("HIP_VISIBLE_DEVICES")
@@ -235,7 +234,6 @@ func AsMap() map[string]EnvVar {
ret := map[string]EnvVar{
"OLLAMA_DEBUG": {"OLLAMA_DEBUG", Debug(), "Show additional debug information (e.g. OLLAMA_DEBUG=1)"},
"OLLAMA_FLASH_ATTENTION": {"OLLAMA_FLASH_ATTENTION", FlashAttention(), "Enabled flash attention"},
"OLLAMA_KV_CACHE_TYPE": {"OLLAMA_KV_CACHE_TYPE", KvCacheType(), "Quantization type for the K/V cache (default: f16)"},
"OLLAMA_GPU_OVERHEAD": {"OLLAMA_GPU_OVERHEAD", GpuOverhead(), "Reserve a portion of VRAM per GPU (bytes)"},
"OLLAMA_HOST": {"OLLAMA_HOST", Host(), "IP Address for the ollama server (default 127.0.0.1:11434)"},
"OLLAMA_KEEP_ALIVE": {"OLLAMA_KEEP_ALIVE", KeepAlive(), "The duration that models stay loaded in memory (default \"5m\")"},
@@ -249,6 +247,7 @@ func AsMap() map[string]EnvVar {
"OLLAMA_NUM_PARALLEL": {"OLLAMA_NUM_PARALLEL", NumParallel(), "Maximum number of parallel requests"},
"OLLAMA_ORIGINS": {"OLLAMA_ORIGINS", Origins(), "A comma separated list of allowed origins"},
"OLLAMA_SCHED_SPREAD": {"OLLAMA_SCHED_SPREAD", SchedSpread(), "Always schedule model across all GPUs"},
"OLLAMA_TMPDIR": {"OLLAMA_TMPDIR", TmpDir(), "Location for temporary files"},
"OLLAMA_MULTIUSER_CACHE": {"OLLAMA_MULTIUSER_CACHE", MultiUserCache(), "Optimize prompt caching for multi-user scenarios"},
// Informational

174
examples/.gitignore vendored Normal file
View File

@@ -0,0 +1,174 @@
node_modules
bun.lockb
.vscode
# OSX
.DS_STORE
# Models
models/
# Local Chroma db
.chroma/
db/
# Byte-compiled / optimized / DLL files
__pycache__/
*.py[cod]
*$py.class
# C extensions
*.so
# Distribution / packaging
.Python
build/
develop-eggs/
dist/
downloads/
eggs/
.eggs/
lib/
lib64/
parts/
sdist/
var/
wheels/
share/python-wheels/
*.egg-info/
.installed.cfg
*.egg
MANIFEST
# PyInstaller
# Usually these files are written by a python script from a template
# before PyInstaller builds the exe, so as to inject date/other infos into it.
*.manifest
*.spec
# Installer logs
pip-log.txt
pip-delete-this-directory.txt
# Unit test / coverage reports
htmlcov/
.tox/
.nox/
.coverage
.coverage.*
.cache
nosetests.xml
coverage.xml
*.cover
*.py,cover
.hypothesis/
.pytest_cache/
cover/
# Translations
*.mo
*.pot
# Django stuff:
*.log
local_settings.py
db.sqlite3
db.sqlite3-journal
# Flask stuff:
instance/
.webassets-cache
# Scrapy stuff:
.scrapy
# Sphinx documentation
docs/_build/
# PyBuilder
.pybuilder/
target/
# Jupyter Notebook
.ipynb_checkpoints
# IPython
profile_default/
ipython_config.py
# pyenv
# For a library or package, you might want to ignore these files since the code is
# intended to run in multiple environments; otherwise, check them in:
# .python-version
# pipenv
# According to pypa/pipenv#598, it is recommended to include Pipfile.lock in version control.
# However, in case of collaboration, if having platform-specific dependencies or dependencies
# having no cross-platform support, pipenv may install dependencies that don't work, or not
# install all needed dependencies.
#Pipfile.lock
# poetry
# Similar to Pipfile.lock, it is generally recommended to include poetry.lock in version control.
# This is especially recommended for binary packages to ensure reproducibility, and is more
# commonly ignored for libraries.
# https://python-poetry.org/docs/basic-usage/#commit-your-poetrylock-file-to-version-control
#poetry.lock
# pdm
# Similar to Pipfile.lock, it is generally recommended to include pdm.lock in version control.
#pdm.lock
# pdm stores project-wide configurations in .pdm.toml, but it is recommended to not include it
# in version control.
# https://pdm.fming.dev/#use-with-ide
.pdm.toml
# PEP 582; used by e.g. github.com/David-OConnor/pyflow and github.com/pdm-project/pdm
__pypackages__/
# Celery stuff
celerybeat-schedule
celerybeat.pid
# SageMath parsed files
*.sage.py
# Environments
.env
.venv
env/
venv/
ENV/
env.bak/
venv.bak/
# Spyder project settings
.spyderproject
.spyproject
# Rope project settings
.ropeproject
# mkdocs documentation
/site
# mypy
.mypy_cache/
.dmypy.json
dmypy.json
# Pyre type checker
.pyre/
# pytype static type analyzer
.pytype/
# Cython debug symbols
cython_debug/
# PyCharm
# JetBrains specific template is maintained in a separate JetBrains.gitignore that can
# be found at https://github.com/github/gitignore/blob/main/Global/JetBrains.gitignore
# and can be added to the global gitignore or merged into this file. For a more nuclear
# option (not recommended) you can uncomment the following to ignore the entire idea folder.
#.idea/

3
examples/README.md Normal file
View File

@@ -0,0 +1,3 @@
# Examples
This directory contains different examples of using Ollama.

1
examples/flyio/.gitignore vendored Normal file
View File

@@ -0,0 +1 @@
fly.toml

67
examples/flyio/README.md Normal file
View File

@@ -0,0 +1,67 @@
# Deploy Ollama to Fly.io
> Note: this example exposes a public endpoint and does not configure authentication. Use with care.
## Prerequisites
- Ollama: https://ollama.com/download
- Fly.io account. Sign up for a free account: https://fly.io/app/sign-up
## Steps
1. Login to Fly.io
```bash
fly auth login
```
1. Create a new Fly app
```bash
fly launch --name <name> --image ollama/ollama --internal-port 11434 --vm-size shared-cpu-8x --now
```
1. Pull and run `orca-mini:3b`
```bash
OLLAMA_HOST=https://<name>.fly.dev ollama run orca-mini:3b
```
`shared-cpu-8x` is a free-tier eligible machine type. For better performance, switch to a `performance` or `dedicated` machine type or attach a GPU for hardware acceleration (see below).
## (Optional) Persistent Volume
By default Fly Machines use ephemeral storage which is problematic if you want to use the same model across restarts without pulling it again. Create and attach a persistent volume to store the downloaded models:
1. Create the Fly Volume
```bash
fly volume create ollama
```
1. Update `fly.toml` and add `[mounts]`
```toml
[mounts]
source = "ollama"
destination = "/mnt/ollama/models"
```
1. Update `fly.toml` and add `[env]`
```toml
[env]
OLLAMA_MODELS = "/mnt/ollama/models"
```
1. Deploy your app
```bash
fly deploy
```
## (Optional) Hardware Acceleration
Fly.io GPU is currently in waitlist. Sign up for the waitlist: https://fly.io/gpu
Once you've been accepted, create the app with the additional flags `--vm-gpu-kind a100-pcie-40gb` or `--vm-gpu-kind a100-pcie-80gb`.

View File

@@ -0,0 +1,29 @@
package main
import (
"bytes"
"fmt"
"io"
"log"
"net/http"
"os"
)
func main() {
body := []byte(`{"model":"mistral"}`)
resp, err := http.Post("http://localhost:11434/api/generate", "application/json", bytes.NewBuffer(body))
if err != nil {
fmt.Print(err.Error())
os.Exit(1)
}
defer resp.Body.Close()
responseData, err := io.ReadAll(resp.Body)
if err != nil {
log.Fatal(err)
}
fmt.Println(string(responseData))
}

View File

@@ -0,0 +1,5 @@
# Ollama Jupyter Notebook
This example downloads and installs Ollama in a Jupyter instance such as Google Colab. It will start the Ollama service and expose an endpoint using `ngrok` which can be used to communicate with the Ollama instance remotely.
For best results, use an instance with GPU accelerator.

View File

@@ -0,0 +1,102 @@
{
"cells": [
{
"cell_type": "code",
"execution_count": null,
"id": "93f59dcb-c588-41b8-a792-55d88ade739c",
"metadata": {},
"outputs": [],
"source": [
"# Download and run the Ollama Linux install script\n",
"!curl -fsSL https://ollama.com/install.sh | sh\n",
"!command -v systemctl >/dev/null && sudo systemctl stop ollama"
]
},
{
"cell_type": "code",
"execution_count": null,
"id": "658c147e-c7f8-490e-910e-62b80f577dda",
"metadata": {},
"outputs": [],
"source": [
"!pip install aiohttp pyngrok\n",
"\n",
"import os\n",
"import asyncio\n",
"from aiohttp import ClientSession\n",
"\n",
"# Set LD_LIBRARY_PATH so the system NVIDIA library becomes preferred\n",
"# over the built-in library. This is particularly important for \n",
"# Google Colab which installs older drivers\n",
"os.environ.update({'LD_LIBRARY_PATH': '/usr/lib64-nvidia'})\n",
"\n",
"async def run(cmd):\n",
" '''\n",
" run is a helper function to run subcommands asynchronously.\n",
" '''\n",
" print('>>> starting', *cmd)\n",
" p = await asyncio.subprocess.create_subprocess_exec(\n",
" *cmd,\n",
" stdout=asyncio.subprocess.PIPE,\n",
" stderr=asyncio.subprocess.PIPE,\n",
" )\n",
"\n",
" async def pipe(lines):\n",
" async for line in lines:\n",
" print(line.strip().decode('utf-8'))\n",
"\n",
" await asyncio.gather(\n",
" pipe(p.stdout),\n",
" pipe(p.stderr),\n",
" )\n",
"\n",
"\n",
"await asyncio.gather(\n",
" run(['ollama', 'serve']),\n",
" run(['ngrok', 'http', '--log', 'stderr', '11434']),\n",
")"
]
},
{
"cell_type": "markdown",
"id": "e7735a55-9aad-4caf-8683-52e2163ba53b",
"metadata": {},
"source": [
"The previous cell starts two processes, `ollama` and `ngrok`. The log output will show a line like the following which describes the external address.\n",
"\n",
"```\n",
"t=2023-11-12T22:55:56+0000 lvl=info msg=\"started tunnel\" obj=tunnels name=command_line addr=http://localhost:11434 url=https://8249-34-125-179-11.ngrok.io\n",
"```\n",
"\n",
"The external address in this case is `https://8249-34-125-179-11.ngrok.io` which can be passed into `OLLAMA_HOST` to access this instance.\n",
"\n",
"```bash\n",
"export OLLAMA_HOST=https://8249-34-125-179-11.ngrok.io\n",
"ollama list\n",
"ollama run mistral\n",
"```"
]
}
],
"metadata": {
"kernelspec": {
"display_name": "Python 3 (ipykernel)",
"language": "python",
"name": "python3"
},
"language_info": {
"codemirror_mode": {
"name": "ipython",
"version": 3
},
"file_extension": ".py",
"mimetype": "text/x-python",
"name": "python",
"nbconvert_exporter": "python",
"pygments_lexer": "ipython3",
"version": "3.11.6"
}
},
"nbformat": 4,
"nbformat_minor": 5
}

View File

@@ -0,0 +1,38 @@
# Deploy Ollama to Kubernetes
## Prerequisites
- Ollama: https://ollama.com/download
- Kubernetes cluster. This example will use Google Kubernetes Engine.
## Steps
1. Create the Ollama namespace, deployment, and service
```bash
kubectl apply -f cpu.yaml
```
## (Optional) Hardware Acceleration
Hardware acceleration in Kubernetes requires NVIDIA's [`k8s-device-plugin`](https://github.com/NVIDIA/k8s-device-plugin) which is deployed in Kubernetes in form of daemonset. Follow the link for more details.
Once configured, create a GPU enabled Ollama deployment.
```bash
kubectl apply -f gpu.yaml
```
## Test
1. Port forward the Ollama service to connect and use it locally
```bash
kubectl -n ollama port-forward service/ollama 11434:80
```
1. Pull and run a model, for example `orca-mini:3b`
```bash
ollama run orca-mini:3b
```

View File

@@ -0,0 +1,42 @@
---
apiVersion: v1
kind: Namespace
metadata:
name: ollama
---
apiVersion: apps/v1
kind: Deployment
metadata:
name: ollama
namespace: ollama
spec:
selector:
matchLabels:
name: ollama
template:
metadata:
labels:
name: ollama
spec:
containers:
- name: ollama
image: ollama/ollama:latest
ports:
- name: http
containerPort: 11434
protocol: TCP
---
apiVersion: v1
kind: Service
metadata:
name: ollama
namespace: ollama
spec:
type: ClusterIP
selector:
name: ollama
ports:
- port: 80
name: http
targetPort: http
protocol: TCP

View File

@@ -0,0 +1,58 @@
---
apiVersion: v1
kind: Namespace
metadata:
name: ollama
---
apiVersion: apps/v1
kind: Deployment
metadata:
name: ollama
namespace: ollama
spec:
strategy:
type: Recreate
selector:
matchLabels:
name: ollama
template:
metadata:
labels:
name: ollama
spec:
containers:
- name: ollama
image: ollama/ollama:latest
env:
- name: PATH
value: /usr/local/nvidia/bin:/usr/local/cuda/bin:/usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin
- name: LD_LIBRARY_PATH
value: /usr/local/nvidia/lib:/usr/local/nvidia/lib64
- name: NVIDIA_DRIVER_CAPABILITIES
value: compute,utility
ports:
- name: http
containerPort: 11434
protocol: TCP
resources:
limits:
nvidia.com/gpu: 1
tolerations:
- key: nvidia.com/gpu
operator: Exists
effect: NoSchedule
---
apiVersion: v1
kind: Service
metadata:
name: ollama
namespace: ollama
spec:
type: ClusterIP
selector:
name: ollama
ports:
- port: 80
name: http
targetPort: http
protocol: TCP

View File

@@ -0,0 +1,29 @@
# LangChain Document QA
This example provides an interface for asking questions to a PDF document.
## Setup
1. Ensure you have the `llama3.2` model installed:
```
ollama pull llama3.2
```
2. Install the Python Requirements.
```
pip install -r requirements.txt
```
## Run
```
python main.py
```
A prompt will appear, where questions may be asked:
```
Query: How many locations does WeWork have?
```

View File

@@ -0,0 +1,61 @@
from langchain.document_loaders import OnlinePDFLoader
from langchain.vectorstores import Chroma
from langchain.embeddings import GPT4AllEmbeddings
from langchain import PromptTemplate
from langchain.llms import Ollama
from langchain.callbacks.manager import CallbackManager
from langchain.callbacks.streaming_stdout import StreamingStdOutCallbackHandler
from langchain.chains import RetrievalQA
import sys
import os
class SuppressStdout:
def __enter__(self):
self._original_stdout = sys.stdout
self._original_stderr = sys.stderr
sys.stdout = open(os.devnull, 'w')
sys.stderr = open(os.devnull, 'w')
def __exit__(self, exc_type, exc_val, exc_tb):
sys.stdout.close()
sys.stdout = self._original_stdout
sys.stderr = self._original_stderr
# load the pdf and split it into chunks
loader = OnlinePDFLoader("https://d18rn0p25nwr6d.cloudfront.net/CIK-0001813756/975b3e9b-268e-4798-a9e4-2a9a7c92dc10.pdf")
data = loader.load()
from langchain.text_splitter import RecursiveCharacterTextSplitter
text_splitter = RecursiveCharacterTextSplitter(chunk_size=500, chunk_overlap=0)
all_splits = text_splitter.split_documents(data)
with SuppressStdout():
vectorstore = Chroma.from_documents(documents=all_splits, embedding=GPT4AllEmbeddings())
while True:
query = input("\nQuery: ")
if query == "exit":
break
if query.strip() == "":
continue
# Prompt
template = """Use the following pieces of context to answer the question at the end.
If you don't know the answer, just say that you don't know, don't try to make up an answer.
Use three sentences maximum and keep the answer as concise as possible.
{context}
Question: {question}
Helpful Answer:"""
QA_CHAIN_PROMPT = PromptTemplate(
input_variables=["context", "question"],
template=template,
)
llm = Ollama(model="llama3.2", callback_manager=CallbackManager([StreamingStdOutCallbackHandler()]))
qa_chain = RetrievalQA.from_chain_type(
llm,
retriever=vectorstore.as_retriever(),
chain_type_kwargs={"prompt": QA_CHAIN_PROMPT},
)
result = qa_chain({"query": query})

View File

@@ -0,0 +1,109 @@
absl-py==1.4.0
aiohttp==3.8.5
aiosignal==1.3.1
anyio==3.7.1
astunparse==1.6.3
async-timeout==4.0.3
attrs==23.1.0
backoff==2.2.1
beautifulsoup4==4.12.2
bs4==0.0.1
cachetools==5.3.1
certifi==2023.7.22
cffi==1.15.1
chardet==5.2.0
charset-normalizer==3.2.0
Chroma==0.2.0
chroma-hnswlib==0.7.2
chromadb==0.4.5
click==8.1.6
coloredlogs==15.0.1
cryptography==41.0.3
dataclasses-json==0.5.14
fastapi==0.99.1
filetype==1.2.0
flatbuffers==23.5.26
frozenlist==1.4.0
gast==0.4.0
google-auth==2.22.0
google-auth-oauthlib==1.0.0
google-pasta==0.2.0
gpt4all==1.0.8
grpcio==1.57.0
h11==0.14.0
h5py==3.9.0
httptools==0.6.0
humanfriendly==10.0
idna==3.4
importlib-resources==6.0.1
joblib==1.3.2
keras==2.13.1
langchain==0.0.261
langsmith==0.0.21
libclang==16.0.6
lxml==4.9.3
Markdown==3.4.4
MarkupSafe==2.1.3
marshmallow==3.20.1
monotonic==1.6
mpmath==1.3.0
multidict==6.0.4
mypy-extensions==1.0.0
nltk==3.8.1
numexpr==2.8.5
numpy==1.24.3
oauthlib==3.2.2
onnxruntime==1.15.1
openapi-schema-pydantic==1.2.4
opt-einsum==3.3.0
overrides==7.4.0
packaging==23.1
pdf2image==1.16.3
pdfminer==20191125
pdfminer.six==20221105
Pillow==10.0.0
posthog==3.0.1
protobuf==4.24.0
pulsar-client==3.2.0
pyasn1==0.5.0
pyasn1-modules==0.3.0
pycparser==2.21
pycryptodome==3.18.0
pydantic==1.10.12
PyPika==0.48.9
python-dateutil==2.8.2
python-dotenv==1.0.0
python-magic==0.4.27
PyYAML==6.0.1
regex==2023.8.8
requests==2.31.0
requests-oauthlib==1.3.1
rsa==4.9
six==1.16.0
sniffio==1.3.0
soupsieve==2.4.1
SQLAlchemy==2.0.19
starlette==0.27.0
sympy==1.12
tabulate==0.9.0
tenacity==8.2.2
tensorboard==2.13.0
tensorboard-data-server==0.7.1
tensorflow==2.13.0
tensorflow-estimator==2.13.0
tensorflow-hub==0.14.0
tensorflow-macos==2.13.0
termcolor==2.3.0
tokenizers==0.13.3
tqdm==4.66.1
typing-inspect==0.9.0
typing_extensions==4.5.0
unstructured==0.9.2
urllib3==1.26.16
uvicorn==0.23.2
uvloop==0.17.0
watchfiles==0.19.0
websockets==11.0.3
Werkzeug==2.3.6
wrapt==1.15.0
yarl==1.9.2

View File

@@ -0,0 +1,170 @@
# OSX
.DS_STORE
# Models
models/
# Local Chroma db
.chroma/
db/
# Byte-compiled / optimized / DLL files
__pycache__/
*.py[cod]
*$py.class
# C extensions
*.so
# Distribution / packaging
.Python
build/
develop-eggs/
dist/
downloads/
eggs/
.eggs/
lib/
lib64/
parts/
sdist/
var/
wheels/
share/python-wheels/
*.egg-info/
.installed.cfg
*.egg
MANIFEST
# PyInstaller
# Usually these files are written by a python script from a template
# before PyInstaller builds the exe, so as to inject date/other infos into it.
*.manifest
*.spec
# Installer logs
pip-log.txt
pip-delete-this-directory.txt
# Unit test / coverage reports
htmlcov/
.tox/
.nox/
.coverage
.coverage.*
.cache
nosetests.xml
coverage.xml
*.cover
*.py,cover
.hypothesis/
.pytest_cache/
cover/
# Translations
*.mo
*.pot
# Django stuff:
*.log
local_settings.py
db.sqlite3
db.sqlite3-journal
# Flask stuff:
instance/
.webassets-cache
# Scrapy stuff:
.scrapy
# Sphinx documentation
docs/_build/
# PyBuilder
.pybuilder/
target/
# Jupyter Notebook
.ipynb_checkpoints
# IPython
profile_default/
ipython_config.py
# pyenv
# For a library or package, you might want to ignore these files since the code is
# intended to run in multiple environments; otherwise, check them in:
# .python-version
# pipenv
# According to pypa/pipenv#598, it is recommended to include Pipfile.lock in version control.
# However, in case of collaboration, if having platform-specific dependencies or dependencies
# having no cross-platform support, pipenv may install dependencies that don't work, or not
# install all needed dependencies.
#Pipfile.lock
# poetry
# Similar to Pipfile.lock, it is generally recommended to include poetry.lock in version control.
# This is especially recommended for binary packages to ensure reproducibility, and is more
# commonly ignored for libraries.
# https://python-poetry.org/docs/basic-usage/#commit-your-poetrylock-file-to-version-control
#poetry.lock
# pdm
# Similar to Pipfile.lock, it is generally recommended to include pdm.lock in version control.
#pdm.lock
# pdm stores project-wide configurations in .pdm.toml, but it is recommended to not include it
# in version control.
# https://pdm.fming.dev/#use-with-ide
.pdm.toml
# PEP 582; used by e.g. github.com/David-OConnor/pyflow and github.com/pdm-project/pdm
__pypackages__/
# Celery stuff
celerybeat-schedule
celerybeat.pid
# SageMath parsed files
*.sage.py
# Environments
.env
.venv
env/
venv/
ENV/
env.bak/
venv.bak/
# Spyder project settings
.spyderproject
.spyproject
# Rope project settings
.ropeproject
# mkdocs documentation
/site
# mypy
.mypy_cache/
.dmypy.json
dmypy.json
# Pyre type checker
.pyre/
# pytype static type analyzer
.pytype/
# Cython debug symbols
cython_debug/
# PyCharm
# JetBrains specific template is maintained in a separate JetBrains.gitignore that can
# be found at https://github.com/github/gitignore/blob/main/Global/JetBrains.gitignore
# and can be added to the global gitignore or merged into this file. For a more nuclear
# option (not recommended) you can uncomment the following to ignore the entire idea folder.
#.idea/

View File

@@ -0,0 +1,201 @@
Apache License
Version 2.0, January 2004
http://www.apache.org/licenses/
TERMS AND CONDITIONS FOR USE, REPRODUCTION, AND DISTRIBUTION
1. Definitions.
"License" shall mean the terms and conditions for use, reproduction,
and distribution as defined by Sections 1 through 9 of this document.
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@@ -0,0 +1,91 @@
# PrivateGPT with Llama 2 uncensored
https://github.com/ollama/ollama/assets/3325447/20cf8ec6-ff25-42c6-bdd8-9be594e3ce1b
> Note: this example is a slightly modified version of PrivateGPT using models such as Llama 2 Uncensored. All credit for PrivateGPT goes to Iván Martínez who is the creator of it, and you can find his GitHub repo [here](https://github.com/imartinez/privateGPT).
### Setup
Set up a virtual environment (optional):
```
python3 -m venv .venv
source .venv/bin/activate
```
Install the Python dependencies:
```shell
pip install -r requirements.txt
```
Pull the model you'd like to use:
```
ollama pull llama2-uncensored
```
### Getting WeWork's latest quarterly earnings report (10-Q)
```
mkdir source_documents
curl https://d18rn0p25nwr6d.cloudfront.net/CIK-0001813756/975b3e9b-268e-4798-a9e4-2a9a7c92dc10.pdf -o source_documents/wework.pdf
```
### Ingesting files
```shell
python ingest.py
```
Output should look like this:
```shell
Creating new vectorstore
Loading documents from source_documents
Loading new documents: 100%|██████████████████████| 1/1 [00:01<00:00, 1.73s/it]
Loaded 1 new documents from source_documents
Split into 90 chunks of text (max. 500 tokens each)
Creating embeddings. May take some minutes...
Using embedded DuckDB with persistence: data will be stored in: db
Ingestion complete! You can now run privateGPT.py to query your documents
```
### Ask questions
```shell
python privateGPT.py
Enter a query: How many locations does WeWork have?
> Answer (took 17.7 s.):
As of June 2023, WeWork has 777 locations worldwide, including 610 Consolidated Locations (as defined in the section entitled Key Performance Indicators).
```
### Try a different model:
```
ollama pull llama2:13b
MODEL=llama2:13b python privateGPT.py
```
## Adding more files
Put any and all your files into the `source_documents` directory
The supported extensions are:
- `.csv`: CSV,
- `.docx`: Word Document,
- `.doc`: Word Document,
- `.enex`: EverNote,
- `.eml`: Email,
- `.epub`: EPub,
- `.html`: HTML File,
- `.md`: Markdown,
- `.msg`: Outlook Message,
- `.odt`: Open Document Text,
- `.pdf`: Portable Document Format (PDF),
- `.pptx` : PowerPoint Document,
- `.ppt` : PowerPoint Document,
- `.txt`: Text file (UTF-8),

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import os
from chromadb.config import Settings
# Define the folder for storing database
PERSIST_DIRECTORY = os.environ.get('PERSIST_DIRECTORY', 'db')
# Define the Chroma settings
CHROMA_SETTINGS = Settings(
persist_directory=PERSIST_DIRECTORY,
anonymized_telemetry=False
)

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#!/usr/bin/env python3
import os
import glob
from typing import List
from multiprocessing import Pool
from tqdm import tqdm
from langchain.document_loaders import (
CSVLoader,
EverNoteLoader,
PyMuPDFLoader,
TextLoader,
UnstructuredEmailLoader,
UnstructuredEPubLoader,
UnstructuredHTMLLoader,
UnstructuredMarkdownLoader,
UnstructuredODTLoader,
UnstructuredPowerPointLoader,
UnstructuredWordDocumentLoader,
)
from langchain.text_splitter import RecursiveCharacterTextSplitter
from langchain.vectorstores import Chroma
from langchain.embeddings import HuggingFaceEmbeddings
from langchain.docstore.document import Document
from constants import CHROMA_SETTINGS
# Load environment variables
persist_directory = os.environ.get('PERSIST_DIRECTORY', 'db')
source_directory = os.environ.get('SOURCE_DIRECTORY', 'source_documents')
embeddings_model_name = os.environ.get('EMBEDDINGS_MODEL_NAME', 'all-MiniLM-L6-v2')
chunk_size = 500
chunk_overlap = 50
# Custom document loaders
class MyElmLoader(UnstructuredEmailLoader):
"""Wrapper to fallback to text/plain when default does not work"""
def load(self) -> List[Document]:
"""Wrapper adding fallback for elm without html"""
try:
try:
doc = UnstructuredEmailLoader.load(self)
except ValueError as e:
if 'text/html content not found in email' in str(e):
# Try plain text
self.unstructured_kwargs["content_source"]="text/plain"
doc = UnstructuredEmailLoader.load(self)
else:
raise
except Exception as e:
# Add file_path to exception message
raise type(e)(f"{self.file_path}: {e}") from e
return doc
# Map file extensions to document loaders and their arguments
LOADER_MAPPING = {
".csv": (CSVLoader, {}),
# ".docx": (Docx2txtLoader, {}),
".doc": (UnstructuredWordDocumentLoader, {}),
".docx": (UnstructuredWordDocumentLoader, {}),
".enex": (EverNoteLoader, {}),
".eml": (MyElmLoader, {}),
".epub": (UnstructuredEPubLoader, {}),
".html": (UnstructuredHTMLLoader, {}),
".md": (UnstructuredMarkdownLoader, {}),
".odt": (UnstructuredODTLoader, {}),
".pdf": (PyMuPDFLoader, {}),
".ppt": (UnstructuredPowerPointLoader, {}),
".pptx": (UnstructuredPowerPointLoader, {}),
".txt": (TextLoader, {"encoding": "utf8"}),
# Add more mappings for other file extensions and loaders as needed
}
def load_single_document(file_path: str) -> List[Document]:
if os.path.getsize(file_path) != 0:
filename, ext = os.path.splitext(file_path)
if ext in LOADER_MAPPING:
loader_class, loader_args = LOADER_MAPPING[ext]
try:
loader = loader_class(file_path, **loader_args)
if loader:
return loader.load()
except:
print(f"Corrupted file {file_path}. Ignoring it.")
else:
print(f"Unsupported file {file_path}. Ignoring it.")
else:
print(f"Empty file {file_path}. Ignoring it.")
def load_documents(source_dir: str, ignored_files: List[str] = []) -> List[Document]:
"""
Loads all documents from the source documents directory, ignoring specified files
"""
all_files = []
for ext in LOADER_MAPPING:
all_files.extend(
glob.glob(os.path.join(source_dir, f"**/*{ext}"), recursive=True)
)
filtered_files = [file_path for file_path in all_files if file_path not in ignored_files]
with Pool(processes=os.cpu_count()) as pool:
results = []
with tqdm(total=len(filtered_files), desc='Loading new documents', ncols=80) as pbar:
for i, docs in enumerate(pool.imap_unordered(load_single_document, filtered_files)):
if docs:
results.extend(docs)
pbar.update()
return results
def process_documents(ignored_files: List[str] = []) -> List[Document]:
"""
Load documents and split in chunks
"""
print(f"Loading documents from {source_directory}")
documents = load_documents(source_directory, ignored_files)
if not documents:
print("No new documents to load")
exit(0)
print(f"Loaded {len(documents)} new documents from {source_directory}")
text_splitter = RecursiveCharacterTextSplitter(chunk_size=chunk_size, chunk_overlap=chunk_overlap)
texts = text_splitter.split_documents(documents)
print(f"Split into {len(texts)} chunks of text (max. {chunk_size} tokens each)")
return texts
def does_vectorstore_exist(persist_directory: str) -> bool:
"""
Checks if vectorstore exists
"""
if os.path.exists(os.path.join(persist_directory, 'index')):
if os.path.exists(os.path.join(persist_directory, 'chroma-collections.parquet')) and os.path.exists(os.path.join(persist_directory, 'chroma-embeddings.parquet')):
list_index_files = glob.glob(os.path.join(persist_directory, 'index/*.bin'))
list_index_files += glob.glob(os.path.join(persist_directory, 'index/*.pkl'))
# At least 3 documents are needed in a working vectorstore
if len(list_index_files) > 3:
return True
return False
def main():
# Create embeddings
embeddings = HuggingFaceEmbeddings(model_name=embeddings_model_name)
if does_vectorstore_exist(persist_directory):
# Update and store locally vectorstore
print(f"Appending to existing vectorstore at {persist_directory}")
db = Chroma(persist_directory=persist_directory, embedding_function=embeddings, client_settings=CHROMA_SETTINGS)
collection = db.get()
texts = process_documents([metadata['source'] for metadata in collection['metadatas']])
print(f"Creating embeddings. May take some minutes...")
db.add_documents(texts)
else:
# Create and store locally vectorstore
print("Creating new vectorstore")
texts = process_documents()
print(f"Creating embeddings. May take some minutes...")
db = Chroma.from_documents(texts, embeddings, persist_directory=persist_directory)
db.persist()
db = None
print(f"Ingestion complete! You can now run privateGPT.py to query your documents")
if __name__ == "__main__":
main()

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#!/usr/bin/env python3
from langchain.chains import RetrievalQA
from langchain.embeddings import HuggingFaceEmbeddings
from langchain.callbacks.streaming_stdout import StreamingStdOutCallbackHandler
from langchain.vectorstores import Chroma
from langchain.llms import Ollama
import chromadb
import os
import argparse
import time
model = os.environ.get("MODEL", "llama2-uncensored")
# For embeddings model, the example uses a sentence-transformers model
# https://www.sbert.net/docs/pretrained_models.html
# "The all-mpnet-base-v2 model provides the best quality, while all-MiniLM-L6-v2 is 5 times faster and still offers good quality."
embeddings_model_name = os.environ.get("EMBEDDINGS_MODEL_NAME", "all-MiniLM-L6-v2")
persist_directory = os.environ.get("PERSIST_DIRECTORY", "db")
target_source_chunks = int(os.environ.get('TARGET_SOURCE_CHUNKS',4))
from constants import CHROMA_SETTINGS
def main():
# Parse the command line arguments
args = parse_arguments()
embeddings = HuggingFaceEmbeddings(model_name=embeddings_model_name)
db = Chroma(persist_directory=persist_directory, embedding_function=embeddings)
retriever = db.as_retriever(search_kwargs={"k": target_source_chunks})
# activate/deactivate the streaming StdOut callback for LLMs
callbacks = [] if args.mute_stream else [StreamingStdOutCallbackHandler()]
llm = Ollama(model=model, callbacks=callbacks)
qa = RetrievalQA.from_chain_type(llm=llm, chain_type="stuff", retriever=retriever, return_source_documents= not args.hide_source)
# Interactive questions and answers
while True:
query = input("\nEnter a query: ")
if query == "exit":
break
if query.strip() == "":
continue
# Get the answer from the chain
start = time.time()
res = qa(query)
answer, docs = res['result'], [] if args.hide_source else res['source_documents']
end = time.time()
# Print the result
print("\n\n> Question:")
print(query)
print(answer)
# Print the relevant sources used for the answer
for document in docs:
print("\n> " + document.metadata["source"] + ":")
print(document.page_content)
def parse_arguments():
parser = argparse.ArgumentParser(description='privateGPT: Ask questions to your documents without an internet connection, '
'using the power of LLMs.')
parser.add_argument("--hide-source", "-S", action='store_true',
help='Use this flag to disable printing of source documents used for answers.')
parser.add_argument("--mute-stream", "-M",
action='store_true',
help='Use this flag to disable the streaming StdOut callback for LLMs.')
return parser.parse_args()
if __name__ == "__main__":
main()

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@@ -0,0 +1,26 @@
[tool.poetry]
name = "privategpt"
version = "0.1.0"
description = ""
authors = ["Ivan Martinez <ivanmartit@gmail.com>"]
license = "Apache Version 2.0"
readme = "README.md"
[tool.poetry.dependencies]
python = "^3.10"
langchain = "0.0.261"
gpt4all = "^1.0.3"
chromadb = "^0.3.26"
PyMuPDF = "^1.22.5"
python-dotenv = "^1.0.0"
unstructured = "^0.8.0"
extract-msg = "^0.41.5"
tabulate = "^0.9.0"
pandoc = "^2.3"
pypandoc = "^1.11"
tqdm = "^4.65.0"
sentence-transformers = "^2.2.2"
[build-system]
requires = ["poetry-core"]
build-backend = "poetry.core.masonry.api"

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langchain==0.0.274
gpt4all==1.0.8
chromadb==0.5.0
llama-cpp-python==0.1.81
urllib3==2.0.4
PyMuPDF==1.23.5
python-dotenv==1.0.0
unstructured==0.10.8
extract-msg==0.45.0
tabulate==0.9.0
pandoc==2.3
pypandoc==1.11
tqdm==4.66.1
sentence_transformers==2.2.2
numpy>=1.22.2 # not directly required, pinned by Snyk to avoid a vulnerability

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# LangChain Web Summarization
This example summarizes the website, [https://ollama.com/blog/run-llama2-uncensored-locally](https://ollama.com/blog/run-llama2-uncensored-locally)
## Running the Example
1. Ensure you have the `llama3.2` model installed:
```bash
ollama pull llama3.2
```
2. Install the Python Requirements.
```bash
pip install -r requirements.txt
```
3. Run the example:
```bash
python main.py
```

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from langchain_community.llms import Ollama
from langchain_community.document_loaders import WebBaseLoader
from langchain.chains.summarize import load_summarize_chain
loader = WebBaseLoader("https://ollama.com/blog/run-llama2-uncensored-locally")
docs = loader.load()
llm = Ollama(model="llama3.2")
chain = load_summarize_chain(llm, chain_type="stuff")
result = chain.invoke(docs)
print(result)

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langchain==0.0.259

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# LangChain
This example is a basic "hello world" of using LangChain with Ollama.
## Running the Example
1. Ensure you have the `llama3.2` model installed:
```bash
ollama pull llama3.2
```
2. Install the Python Requirements.
```bash
pip install -r requirements.txt
```
3. Run the example:
```bash
python main.py
```

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@@ -0,0 +1,6 @@
from langchain.llms import Ollama
input = input("What is your question?")
llm = Ollama(model="llama3.2")
res = llm.predict(input)
print (res)

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