mirror of
https://github.com/mudler/LocalAI.git
synced 2026-04-17 05:18:53 -04:00
* fix(schema): serialize ToolCallID and Reasoning in Messages.ToProto
The ToProto conversion was dropping tool_call_id and reasoning_content
even though both proto and Go fields existed, breaking multi-turn tool
calling and reasoning passthrough to backends.
* refactor(config): introduce backend hook system and migrate llama-cpp defaults
Adds RegisterBackendHook/runBackendHooks so each backend can register
default-filling functions that run during ModelConfig.SetDefaults().
Migrates the existing GGUF guessing logic into hooks_llamacpp.go,
registered for both 'llama-cpp' and the empty backend (auto-detect).
Removes the old guesser.go shim.
* feat(config): add vLLM parser defaults hook and importer auto-detection
Introduces parser_defaults.json mapping model families to vLLM
tool_parser/reasoning_parser names, with longest-pattern-first matching.
The vllmDefaults hook auto-fills tool_parser and reasoning_parser
options at load time for known families, while the VLLMImporter writes
the same values into generated YAML so users can review and edit them.
Adds tests covering MatchParserDefaults, hook registration via
SetDefaults, and the user-override behavior.
* feat(vllm): wire native tool/reasoning parsers + chat deltas + logprobs
- Use vLLM's ToolParserManager/ReasoningParserManager to extract structured
output (tool calls, reasoning content) instead of reimplementing parsing
- Convert proto Messages to dicts and pass tools to apply_chat_template
- Emit ChatDelta with content/reasoning_content/tool_calls in Reply
- Extract prompt_tokens, completion_tokens, and logprobs from output
- Replace boolean GuidedDecoding with proper GuidedDecodingParams from Grammar
- Add TokenizeString and Free RPC methods
- Fix missing `time` import used by load_video()
* feat(vllm): CPU support + shared utils + vllm-omni feature parity
- Split vllm install per acceleration: move generic `vllm` out of
requirements-after.txt into per-profile after files (cublas12, hipblas,
intel) and add CPU wheel URL for cpu-after.txt
- requirements-cpu.txt now pulls torch==2.7.0+cpu from PyTorch CPU index
- backend/index.yaml: register cpu-vllm / cpu-vllm-development variants
- New backend/python/common/vllm_utils.py: shared parse_options,
messages_to_dicts, setup_parsers helpers (used by both vllm backends)
- vllm-omni: replace hardcoded chat template with tokenizer.apply_chat_template,
wire native parsers via shared utils, emit ChatDelta with token counts,
add TokenizeString and Free RPCs, detect CPU and set VLLM_TARGET_DEVICE
- Add test_cpu_inference.py: standalone script to validate CPU build with
a small model (Qwen2.5-0.5B-Instruct)
* fix(vllm): CPU build compatibility with vllm 0.14.1
Validated end-to-end on CPU with Qwen2.5-0.5B-Instruct (LoadModel, Predict,
TokenizeString, Free all working).
- requirements-cpu-after.txt: pin vllm to 0.14.1+cpu (pre-built wheel from
GitHub releases) for x86_64 and aarch64. vllm 0.14.1 is the newest CPU
wheel whose torch dependency resolves against published PyTorch builds
(torch==2.9.1+cpu). Later vllm CPU wheels currently require
torch==2.10.0+cpu which is only available on the PyTorch test channel
with incompatible torchvision.
- requirements-cpu.txt: bump torch to 2.9.1+cpu, add torchvision/torchaudio
so uv resolves them consistently from the PyTorch CPU index.
- install.sh: add --index-strategy=unsafe-best-match for CPU builds so uv
can mix the PyTorch index and PyPI for transitive deps (matches the
existing intel profile behaviour).
- backend.py LoadModel: vllm >= 0.14 removed AsyncLLMEngine.get_model_config
so the old code path errored out with AttributeError on model load.
Switch to the new get_tokenizer()/tokenizer accessor with a fallback
to building the tokenizer directly from request.Model.
* fix(vllm): tool parser constructor compat + e2e tool calling test
Concrete vLLM tool parsers override the abstract base's __init__ and
drop the tools kwarg (e.g. Hermes2ProToolParser only takes tokenizer).
Instantiating with tools= raised TypeError which was silently caught,
leaving chat_deltas.tool_calls empty.
Retry the constructor without the tools kwarg on TypeError — tools
aren't required by these parsers since extract_tool_calls finds tool
syntax in the raw model output directly.
Validated with Qwen/Qwen2.5-0.5B-Instruct + hermes parser on CPU:
the backend correctly returns ToolCallDelta{name='get_weather',
arguments='{"location": "Paris, France"}'} in ChatDelta.
test_tool_calls.py is a standalone smoke test that spawns the gRPC
backend, sends a chat completion with tools, and asserts the response
contains a structured tool call.
* ci(backend): build cpu-vllm container image
Add the cpu-vllm variant to the backend container build matrix so the
image registered in backend/index.yaml (cpu-vllm / cpu-vllm-development)
is actually produced by CI.
Follows the same pattern as the other CPU python backends
(cpu-diffusers, cpu-chatterbox, etc.) with build-type='' and no CUDA.
backend_pr.yml auto-picks this up via its matrix filter from backend.yml.
* test(e2e-backends): add tools capability + HF model name support
Extends tests/e2e-backends to cover backends that:
- Resolve HuggingFace model ids natively (vllm, vllm-omni) instead of
loading a local file: BACKEND_TEST_MODEL_NAME is passed verbatim as
ModelOptions.Model with no download/ModelFile.
- Parse tool calls into ChatDelta.tool_calls: new "tools" capability
sends a Predict with a get_weather function definition and asserts
the Reply contains a matching ToolCallDelta. Uses UseTokenizerTemplate
with OpenAI-style Messages so the backend can wire tools into the
model's chat template.
- Need backend-specific Options[]: BACKEND_TEST_OPTIONS lets a test set
e.g. "tool_parser:hermes,reasoning_parser:qwen3" at LoadModel time.
Adds make target test-extra-backend-vllm that:
- docker-build-vllm
- loads Qwen/Qwen2.5-0.5B-Instruct
- runs health,load,predict,stream,tools with tool_parser:hermes
Drops backend/python/vllm/test_{cpu_inference,tool_calls}.py — those
standalone scripts were scaffolding used while bringing up the Python
backend; the e2e-backends harness now covers the same ground uniformly
alongside llama-cpp and ik-llama-cpp.
* ci(test-extra): run vllm e2e tests on CPU
Adds tests-vllm-grpc to the test-extra workflow, mirroring the
llama-cpp and ik-llama-cpp gRPC jobs. Triggers when files under
backend/python/vllm/ change (or on run-all), builds the local-ai
vllm container image, and runs the tests/e2e-backends harness with
BACKEND_TEST_MODEL_NAME=Qwen/Qwen2.5-0.5B-Instruct, tool_parser:hermes,
and the tools capability enabled.
Uses ubuntu-latest (no GPU) — vllm runs on CPU via the cpu-vllm
wheel we pinned in requirements-cpu-after.txt. Frees disk space
before the build since the docker image + torch + vllm wheel is
sizeable.
* fix(vllm): build from source on CI to avoid SIGILL on prebuilt wheel
The prebuilt vllm 0.14.1+cpu wheel from GitHub releases is compiled with
SIMD instructions (AVX-512 VNNI/BF16 or AMX-BF16) that not every CPU
supports. GitHub Actions ubuntu-latest runners SIGILL when vllm spawns
the model_executor.models.registry subprocess for introspection, so
LoadModel never reaches the actual inference path.
- install.sh: when FROM_SOURCE=true on a CPU build, temporarily hide
requirements-cpu-after.txt so installRequirements installs the base
deps + torch CPU without pulling the prebuilt wheel, then clone vllm
and compile it with VLLM_TARGET_DEVICE=cpu. The resulting binaries
target the host's actual CPU.
- backend/Dockerfile.python: accept a FROM_SOURCE build-arg and expose
it as an ENV so install.sh sees it during `make`.
- Makefile docker-build-backend: forward FROM_SOURCE as --build-arg
when set, so backends that need source builds can opt in.
- Makefile test-extra-backend-vllm: call docker-build-vllm via a
recursive $(MAKE) invocation so FROM_SOURCE flows through.
- .github/workflows/test-extra.yml: set FROM_SOURCE=true on the
tests-vllm-grpc job. Slower but reliable — the prebuilt wheel only
works on hosts that share the build-time SIMD baseline.
Answers 'did you test locally?': yes, end-to-end on my local machine
with the prebuilt wheel (CPU supports AVX-512 VNNI). The CI runner CPU
gap was not covered locally — this commit plugs that gap.
* ci(vllm): use bigger-runner instead of source build
The prebuilt vllm 0.14.1+cpu wheel requires SIMD instructions (AVX-512
VNNI/BF16) that stock ubuntu-latest GitHub runners don't support —
vllm.model_executor.models.registry SIGILLs on import during LoadModel.
Source compilation works but takes 30-40 minutes per CI run, which is
too slow for an e2e smoke test. Instead, switch tests-vllm-grpc to the
bigger-runner self-hosted label (already used by backend.yml for the
llama-cpp CUDA build) — that hardware has the required SIMD baseline
and the prebuilt wheel runs cleanly.
FROM_SOURCE=true is kept as an opt-in escape hatch:
- install.sh still has the CPU source-build path for hosts that need it
- backend/Dockerfile.python still declares the ARG + ENV
- Makefile docker-build-backend still forwards the build-arg when set
Default CI path uses the fast prebuilt wheel; source build can be
re-enabled by exporting FROM_SOURCE=true in the environment.
* ci(vllm): install make + build deps on bigger-runner
bigger-runner is a bare self-hosted runner used by backend.yml for
docker image builds — it has docker but not the usual ubuntu-latest
toolchain. The make-based test target needs make, build-essential
(cgo in 'go test'), and curl/unzip (the Makefile protoc target
downloads protoc from github releases).
protoc-gen-go and protoc-gen-go-grpc come via 'go install' in the
install-go-tools target, which setup-go makes possible.
* ci(vllm): install libnuma1 + libgomp1 on bigger-runner
The vllm 0.14.1+cpu wheel ships a _C C++ extension that dlopens
libnuma.so.1 at import time. When the runner host doesn't have it,
the extension silently fails to register its torch ops, so
EngineCore crashes on init_device with:
AttributeError: '_OpNamespace' '_C_utils' object has no attribute
'init_cpu_threads_env'
Also add libgomp1 (OpenMP runtime, used by torch CPU kernels) to be
safe on stripped-down runners.
* feat(vllm): bundle libnuma/libgomp via package.sh
The vllm CPU wheel ships a _C extension that dlopens libnuma.so.1 at
import time; torch's CPU kernels in turn use libgomp.so.1 (OpenMP).
Without these on the host, vllm._C silently fails to register its
torch ops and EngineCore crashes with:
AttributeError: '_OpNamespace' '_C_utils' object has no attribute
'init_cpu_threads_env'
Rather than asking every user to install libnuma1/libgomp1 on their
host (or every LocalAI base image to ship them), bundle them into
the backend image itself — same pattern fish-speech and the GPU libs
already use. libbackend.sh adds ${EDIR}/lib to LD_LIBRARY_PATH at
run time so the bundled copies are picked up automatically.
- backend/python/vllm/package.sh (new): copies libnuma.so.1 and
libgomp.so.1 from the builder's multilib paths into ${BACKEND}/lib,
preserving soname symlinks. Runs during Dockerfile.python's
'Run backend-specific packaging' step (which already invokes
package.sh if present).
- backend/Dockerfile.python: install libnuma1 + libgomp1 in the
builder stage so package.sh has something to copy (the Ubuntu
base image otherwise only has libgomp in the gcc dep chain).
- test-extra.yml: drop the workaround that installed these libs on
the runner host — with the backend image self-contained, the
runner no longer needs them, and the test now exercises the
packaging path end-to-end the way a production host would.
* ci(vllm): disable tests-vllm-grpc job (heterogeneous runners)
Both ubuntu-latest and bigger-runner have inconsistent CPU baselines:
some instances support the AVX-512 VNNI/BF16 instructions the prebuilt
vllm 0.14.1+cpu wheel was compiled with, others SIGILL on import of
vllm.model_executor.models.registry. The libnuma packaging fix doesn't
help when the wheel itself can't be loaded.
FROM_SOURCE=true compiles vllm against the actual host CPU and works
everywhere, but takes 30-50 minutes per run — too slow for a smoke
test on every PR.
Comment out the job for now. The test itself is intact and passes
locally; run it via 'make test-extra-backend-vllm' on a host with the
required SIMD baseline. Re-enable when:
- we have a self-hosted runner label with guaranteed AVX-512 VNNI/BF16, or
- vllm publishes a CPU wheel with a wider baseline, or
- we set up a docker layer cache that makes FROM_SOURCE acceptable
The detect-changes vllm output, the test harness changes (tests/
e2e-backends + tools cap), the make target (test-extra-backend-vllm),
the package.sh and the Dockerfile/install.sh plumbing all stay in
place.
610 lines
23 KiB
Python
610 lines
23 KiB
Python
#!/usr/bin/env python3
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import asyncio
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from concurrent import futures
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import argparse
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import signal
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import sys
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import os
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import json
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import time
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import gc
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from typing import List
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from PIL import Image
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import backend_pb2
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import backend_pb2_grpc
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import grpc
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sys.path.insert(0, os.path.join(os.path.dirname(__file__), '..', 'common'))
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sys.path.insert(0, os.path.join(os.path.dirname(__file__), 'common'))
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from grpc_auth import get_auth_interceptors
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from vllm.engine.arg_utils import AsyncEngineArgs
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from vllm.engine.async_llm_engine import AsyncLLMEngine
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from vllm.sampling_params import SamplingParams
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from vllm.utils import random_uuid
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from vllm.transformers_utils.tokenizer import get_tokenizer
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from vllm.multimodal.utils import fetch_image
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from vllm.assets.video import VideoAsset
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import base64
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import io
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# Version-compat imports — wrap in try/except for older vLLM versions
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try:
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from vllm.tool_parsers import ToolParserManager
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HAS_TOOL_PARSERS = True
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except ImportError:
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HAS_TOOL_PARSERS = False
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try:
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from vllm.reasoning import ReasoningParserManager
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HAS_REASONING_PARSERS = True
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except ImportError:
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HAS_REASONING_PARSERS = False
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try:
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from vllm.sampling_params import GuidedDecodingParams
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HAS_GUIDED_DECODING = True
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except ImportError:
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HAS_GUIDED_DECODING = False
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_ONE_DAY_IN_SECONDS = 60 * 60 * 24
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# If MAX_WORKERS are specified in the environment use it, otherwise default to 1
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MAX_WORKERS = int(os.environ.get('PYTHON_GRPC_MAX_WORKERS', '1'))
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# Implement the BackendServicer class with the service methods
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class BackendServicer(backend_pb2_grpc.BackendServicer):
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"""
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A gRPC servicer that implements the Backend service defined in backend.proto.
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"""
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def generate(self,prompt, max_new_tokens):
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"""
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Generates text based on the given prompt and maximum number of new tokens.
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Args:
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prompt (str): The prompt to generate text from.
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max_new_tokens (int): The maximum number of new tokens to generate.
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Returns:
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str: The generated text.
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"""
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self.generator.end_beam_search()
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# Tokenizing the input
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ids = self.generator.tokenizer.encode(prompt)
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self.generator.gen_begin_reuse(ids)
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initial_len = self.generator.sequence[0].shape[0]
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has_leading_space = False
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decoded_text = ''
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for i in range(max_new_tokens):
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token = self.generator.gen_single_token()
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if i == 0 and self.generator.tokenizer.tokenizer.IdToPiece(int(token)).startswith('▁'):
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has_leading_space = True
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decoded_text = self.generator.tokenizer.decode(self.generator.sequence[0][initial_len:])
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if has_leading_space:
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decoded_text = ' ' + decoded_text
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if token.item() == self.generator.tokenizer.eos_token_id:
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break
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return decoded_text
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def _parse_options(self, options_list):
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"""Parse Options[] key:value string list into a dict."""
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opts = {}
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for opt in options_list:
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if ":" not in opt:
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continue
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key, value = opt.split(":", 1)
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opts[key.strip()] = value.strip()
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return opts
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def _messages_to_dicts(self, messages):
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"""Convert proto Messages to list of dicts suitable for apply_chat_template()."""
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result = []
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for msg in messages:
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d = {"role": msg.role, "content": msg.content or ""}
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if msg.name:
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d["name"] = msg.name
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if msg.tool_call_id:
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d["tool_call_id"] = msg.tool_call_id
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if msg.reasoning_content:
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d["reasoning_content"] = msg.reasoning_content
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if msg.tool_calls:
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try:
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d["tool_calls"] = json.loads(msg.tool_calls)
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except json.JSONDecodeError:
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pass
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result.append(d)
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return result
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def Health(self, request, context):
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"""
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Returns a health check message.
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Args:
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request: The health check request.
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context: The gRPC context.
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Returns:
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backend_pb2.Reply: The health check reply.
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"""
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return backend_pb2.Reply(message=bytes("OK", 'utf-8'))
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async def LoadModel(self, request, context):
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"""
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Loads a language model.
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Args:
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request: The load model request.
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context: The gRPC context.
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Returns:
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backend_pb2.Result: The load model result.
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"""
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engine_args = AsyncEngineArgs(
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model=request.Model,
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)
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if request.Quantization != "":
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engine_args.quantization = request.Quantization
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if request.LoadFormat != "":
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engine_args.load_format = request.LoadFormat
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if request.GPUMemoryUtilization != 0:
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engine_args.gpu_memory_utilization = request.GPUMemoryUtilization
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if request.TrustRemoteCode:
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engine_args.trust_remote_code = request.TrustRemoteCode
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if request.EnforceEager:
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engine_args.enforce_eager = request.EnforceEager
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if request.TensorParallelSize:
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engine_args.tensor_parallel_size = request.TensorParallelSize
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if request.SwapSpace != 0:
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engine_args.swap_space = request.SwapSpace
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if request.MaxModelLen != 0:
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engine_args.max_model_len = request.MaxModelLen
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if request.DisableLogStatus:
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engine_args.disable_log_status = request.DisableLogStatus
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if request.DType != "":
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engine_args.dtype = request.DType
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if request.LimitImagePerPrompt != 0 or request.LimitVideoPerPrompt != 0 or request.LimitAudioPerPrompt != 0:
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# limit-mm-per-prompt defaults to 1 per modality, based on vLLM docs
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engine_args.limit_mm_per_prompt = {
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"image": max(request.LimitImagePerPrompt, 1),
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"video": max(request.LimitVideoPerPrompt, 1),
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"audio": max(request.LimitAudioPerPrompt, 1)
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}
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try:
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self.llm = AsyncLLMEngine.from_engine_args(engine_args)
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except Exception as err:
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print(f"Unexpected {err=}, {type(err)=}", file=sys.stderr)
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return backend_pb2.Result(success=False, message=f"Unexpected {err=}, {type(err)=}")
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try:
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# vLLM >= 0.14 removed get_model_config() on AsyncLLM; the tokenizer
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# is either already loaded on the engine or can be built from the
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# Model name directly.
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tokenizer = None
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if hasattr(self.llm, "get_tokenizer"):
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try:
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tokenizer = await self.llm.get_tokenizer()
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except TypeError:
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tokenizer = self.llm.get_tokenizer()
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except Exception:
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tokenizer = None
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if tokenizer is None and hasattr(self.llm, "tokenizer"):
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tokenizer = self.llm.tokenizer
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if tokenizer is None:
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tokenizer = get_tokenizer(
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request.Model,
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trust_remote_code=bool(request.TrustRemoteCode),
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truncation_side="left",
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)
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self.tokenizer = tokenizer
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except Exception as err:
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return backend_pb2.Result(success=False, message=f"Unexpected {err=}, {type(err)=}")
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# Parse options for parser selection
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opts = self._parse_options(request.Options)
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# Instantiate tool/reasoning parser classes (they'll be instantiated per-request with tokenizer)
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self.tool_parser_cls = None
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self.reasoning_parser_cls = None
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if HAS_TOOL_PARSERS and opts.get("tool_parser"):
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try:
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self.tool_parser_cls = ToolParserManager.get_tool_parser(opts["tool_parser"])
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print(f"Loaded tool_parser: {opts['tool_parser']}", file=sys.stderr)
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except Exception as e:
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print(f"Failed to load tool_parser {opts.get('tool_parser')}: {e}", file=sys.stderr)
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if HAS_REASONING_PARSERS and opts.get("reasoning_parser"):
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try:
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self.reasoning_parser_cls = ReasoningParserManager.get_reasoning_parser(opts["reasoning_parser"])
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print(f"Loaded reasoning_parser: {opts['reasoning_parser']}", file=sys.stderr)
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except Exception as e:
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print(f"Failed to load reasoning_parser {opts.get('reasoning_parser')}: {e}", file=sys.stderr)
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print("Model loaded successfully", file=sys.stderr)
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return backend_pb2.Result(message="Model loaded successfully", success=True)
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async def Predict(self, request, context):
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"""
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Generates text based on the given prompt and sampling parameters.
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Args:
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request: The predict request.
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context: The gRPC context.
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Returns:
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backend_pb2.Reply: The predict result.
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"""
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gen = self._predict(request, context, streaming=False)
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res = await gen.__anext__()
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return res
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def Embedding(self, request, context):
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"""
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A gRPC method that calculates embeddings for a given sentence.
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Args:
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request: An EmbeddingRequest object that contains the request parameters.
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context: A grpc.ServicerContext object that provides information about the RPC.
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Returns:
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An EmbeddingResult object that contains the calculated embeddings.
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"""
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print("Calculated embeddings for: " + request.Embeddings, file=sys.stderr)
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outputs = self.model.encode(request.Embeddings)
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# Check if we have one result at least
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if len(outputs) == 0:
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context.set_code(grpc.StatusCode.INVALID_ARGUMENT)
|
|
context.set_details("No embeddings were calculated.")
|
|
return backend_pb2.EmbeddingResult()
|
|
return backend_pb2.EmbeddingResult(embeddings=outputs[0].outputs.embedding)
|
|
|
|
async def PredictStream(self, request, context):
|
|
"""
|
|
Generates text based on the given prompt and sampling parameters, and streams the results.
|
|
|
|
Args:
|
|
request: The predict stream request.
|
|
context: The gRPC context.
|
|
|
|
Returns:
|
|
backend_pb2.Result: The predict stream result.
|
|
"""
|
|
iterations = self._predict(request, context, streaming=True)
|
|
try:
|
|
async for iteration in iterations:
|
|
yield iteration
|
|
finally:
|
|
await iterations.aclose()
|
|
|
|
async def TokenizeString(self, request, context):
|
|
if not hasattr(self, 'tokenizer') or self.tokenizer is None:
|
|
context.set_code(grpc.StatusCode.FAILED_PRECONDITION)
|
|
context.set_details("Model/tokenizer not loaded")
|
|
return backend_pb2.TokenizationResponse()
|
|
try:
|
|
tokens = self.tokenizer.encode(request.Prompt)
|
|
return backend_pb2.TokenizationResponse(length=len(tokens), tokens=tokens)
|
|
except Exception as e:
|
|
context.set_code(grpc.StatusCode.INTERNAL)
|
|
context.set_details(str(e))
|
|
return backend_pb2.TokenizationResponse()
|
|
|
|
async def Free(self, request, context):
|
|
try:
|
|
if hasattr(self, 'llm'):
|
|
del self.llm
|
|
if hasattr(self, 'tokenizer'):
|
|
del self.tokenizer
|
|
self.tool_parser_cls = None
|
|
self.reasoning_parser_cls = None
|
|
gc.collect()
|
|
try:
|
|
import torch
|
|
if torch.cuda.is_available():
|
|
torch.cuda.empty_cache()
|
|
except ImportError:
|
|
pass
|
|
return backend_pb2.Result(success=True, message="Model freed")
|
|
except Exception as e:
|
|
return backend_pb2.Result(success=False, message=str(e))
|
|
|
|
async def _predict(self, request, context, streaming=False):
|
|
# Build the sampling parameters
|
|
# NOTE: this must stay in sync with the vllm backend
|
|
request_to_sampling_params = {
|
|
"N": "n",
|
|
"PresencePenalty": "presence_penalty",
|
|
"FrequencyPenalty": "frequency_penalty",
|
|
"RepetitionPenalty": "repetition_penalty",
|
|
"Temperature": "temperature",
|
|
"TopP": "top_p",
|
|
"TopK": "top_k",
|
|
"MinP": "min_p",
|
|
"Seed": "seed",
|
|
"StopPrompts": "stop",
|
|
"StopTokenIds": "stop_token_ids",
|
|
"BadWords": "bad_words",
|
|
"IncludeStopStrInOutput": "include_stop_str_in_output",
|
|
"IgnoreEOS": "ignore_eos",
|
|
"Tokens": "max_tokens",
|
|
"MinTokens": "min_tokens",
|
|
"Logprobs": "logprobs",
|
|
"PromptLogprobs": "prompt_logprobs",
|
|
"SkipSpecialTokens": "skip_special_tokens",
|
|
"SpacesBetweenSpecialTokens": "spaces_between_special_tokens",
|
|
"TruncatePromptTokens": "truncate_prompt_tokens",
|
|
}
|
|
|
|
sampling_params = SamplingParams(top_p=0.9, max_tokens=200)
|
|
|
|
for request_field, param_field in request_to_sampling_params.items():
|
|
if hasattr(request, request_field):
|
|
value = getattr(request, request_field)
|
|
if value not in (None, 0, [], False):
|
|
setattr(sampling_params, param_field, value)
|
|
|
|
# Guided decoding: use Grammar field to pass JSON schema or BNF
|
|
if HAS_GUIDED_DECODING and request.Grammar:
|
|
try:
|
|
json.loads(request.Grammar) # valid JSON = JSON schema
|
|
sampling_params.guided_decoding = GuidedDecodingParams(json=request.Grammar)
|
|
except json.JSONDecodeError:
|
|
sampling_params.guided_decoding = GuidedDecodingParams(grammar=request.Grammar)
|
|
|
|
# Extract image paths and process images
|
|
prompt = request.Prompt
|
|
|
|
image_paths = request.Images
|
|
image_data = [self.load_image(img_path) for img_path in image_paths]
|
|
|
|
videos_path = request.Videos
|
|
video_data = [self.load_video(video_path) for video_path in videos_path]
|
|
|
|
# If tokenizer template is enabled and messages are provided instead of prompt, apply the tokenizer template
|
|
if not request.Prompt and request.UseTokenizerTemplate and request.Messages:
|
|
messages_dicts = self._messages_to_dicts(request.Messages)
|
|
template_kwargs = {"tokenize": False, "add_generation_prompt": True}
|
|
|
|
# Pass tools for tool calling
|
|
if request.Tools:
|
|
try:
|
|
template_kwargs["tools"] = json.loads(request.Tools)
|
|
except json.JSONDecodeError:
|
|
pass
|
|
|
|
# Enable thinking mode if requested
|
|
if request.Metadata.get("enable_thinking", "").lower() == "true":
|
|
template_kwargs["enable_thinking"] = True
|
|
|
|
try:
|
|
prompt = self.tokenizer.apply_chat_template(messages_dicts, **template_kwargs)
|
|
except TypeError:
|
|
# Some tokenizers don't support tools/enable_thinking kwargs — retry without them
|
|
prompt = self.tokenizer.apply_chat_template(
|
|
messages_dicts, tokenize=False, add_generation_prompt=True
|
|
)
|
|
|
|
# Generate text using the LLM engine
|
|
request_id = random_uuid()
|
|
print(f"Generating text with request_id: {request_id}", file=sys.stderr)
|
|
multi_modal_data = {}
|
|
if image_data:
|
|
multi_modal_data["image"] = image_data
|
|
if video_data:
|
|
multi_modal_data["video"] = video_data
|
|
outputs = self.llm.generate(
|
|
{
|
|
"prompt": prompt,
|
|
"multi_modal_data": multi_modal_data if multi_modal_data else None,
|
|
},
|
|
sampling_params=sampling_params,
|
|
request_id=request_id,
|
|
)
|
|
|
|
# Stream the results
|
|
generated_text = ""
|
|
last_output = None
|
|
try:
|
|
async for request_output in outputs:
|
|
iteration_text = request_output.outputs[0].text
|
|
last_output = request_output
|
|
|
|
if streaming:
|
|
# Remove text already sent as vllm concatenates the text from previous yields
|
|
delta_iteration_text = iteration_text.removeprefix(generated_text)
|
|
# Send the partial result
|
|
yield backend_pb2.Reply(
|
|
message=bytes(delta_iteration_text, encoding='utf-8'),
|
|
chat_deltas=[backend_pb2.ChatDelta(content=delta_iteration_text)],
|
|
)
|
|
|
|
# Keep track of text generated
|
|
generated_text = iteration_text
|
|
finally:
|
|
await outputs.aclose()
|
|
|
|
# Remove the image files from /tmp folder
|
|
for img_path in image_paths:
|
|
try:
|
|
os.remove(img_path)
|
|
except Exception as e:
|
|
print(f"Error removing image file: {img_path}, {e}", file=sys.stderr)
|
|
|
|
# Parse reasoning and tool calls from final text using vLLM's native parsers
|
|
content = generated_text
|
|
reasoning_content = ""
|
|
tool_calls_proto = []
|
|
|
|
if self.reasoning_parser_cls:
|
|
try:
|
|
rp = self.reasoning_parser_cls(self.tokenizer)
|
|
r, c = rp.extract_reasoning(generated_text, request=None)
|
|
reasoning_content = r or ""
|
|
content = c if c is not None else generated_text
|
|
except Exception as e:
|
|
print(f"Reasoning parser error: {e}", file=sys.stderr)
|
|
|
|
if self.tool_parser_cls and request.Tools:
|
|
try:
|
|
tools = json.loads(request.Tools)
|
|
# Some concrete parsers only accept the tokenizer; only the
|
|
# abstract base declares the tools kwarg. Try with tools first,
|
|
# fall back to tokenizer-only.
|
|
try:
|
|
tp = self.tool_parser_cls(self.tokenizer, tools=tools)
|
|
except TypeError:
|
|
tp = self.tool_parser_cls(self.tokenizer)
|
|
info = tp.extract_tool_calls(content, request=None)
|
|
if info.tools_called:
|
|
content = info.content or ""
|
|
for i, tc in enumerate(info.tool_calls):
|
|
tool_calls_proto.append(backend_pb2.ToolCallDelta(
|
|
index=i,
|
|
id=tc.id,
|
|
name=tc.function.name,
|
|
arguments=tc.function.arguments,
|
|
))
|
|
except Exception as e:
|
|
print(f"Tool parser error: {e}", file=sys.stderr)
|
|
|
|
# Extract token counts
|
|
prompt_tokens = 0
|
|
completion_tokens = 0
|
|
if last_output is not None:
|
|
try:
|
|
prompt_tokens = len(last_output.prompt_token_ids or [])
|
|
except Exception:
|
|
pass
|
|
try:
|
|
completion_tokens = len(last_output.outputs[0].token_ids or [])
|
|
except Exception:
|
|
pass
|
|
|
|
# Extract logprobs if requested
|
|
logprobs_bytes = b""
|
|
if last_output is not None and request.Logprobs > 0:
|
|
try:
|
|
lp = last_output.outputs[0].logprobs
|
|
if lp:
|
|
logprobs_data = {"content": []}
|
|
for token_lp_dict in lp:
|
|
if token_lp_dict:
|
|
first_tok_id, first_lp = next(iter(token_lp_dict.items()))
|
|
logprobs_data["content"].append({
|
|
"token": getattr(first_lp, "decoded_token", str(first_tok_id)),
|
|
"logprob": first_lp.logprob,
|
|
})
|
|
logprobs_bytes = json.dumps(logprobs_data).encode("utf-8")
|
|
except Exception as e:
|
|
print(f"Logprobs extraction error: {e}", file=sys.stderr)
|
|
|
|
chat_delta = backend_pb2.ChatDelta(
|
|
content=content,
|
|
reasoning_content=reasoning_content,
|
|
tool_calls=tool_calls_proto,
|
|
)
|
|
|
|
if streaming:
|
|
# Final chunk with structured data
|
|
yield backend_pb2.Reply(
|
|
message=b"",
|
|
prompt_tokens=prompt_tokens,
|
|
tokens=completion_tokens,
|
|
chat_deltas=[chat_delta],
|
|
logprobs=logprobs_bytes,
|
|
)
|
|
return
|
|
|
|
# Non-streaming: single Reply with everything
|
|
yield backend_pb2.Reply(
|
|
message=bytes(content, encoding='utf-8'),
|
|
prompt_tokens=prompt_tokens,
|
|
tokens=completion_tokens,
|
|
chat_deltas=[chat_delta],
|
|
logprobs=logprobs_bytes,
|
|
)
|
|
|
|
def load_image(self, image_path: str):
|
|
"""
|
|
Load an image from the given file path or base64 encoded data.
|
|
|
|
Args:
|
|
image_path (str): The path to the image file or base64 encoded data.
|
|
|
|
Returns:
|
|
Image: The loaded image.
|
|
"""
|
|
try:
|
|
|
|
image_data = base64.b64decode(image_path)
|
|
image = Image.open(io.BytesIO(image_data))
|
|
return image
|
|
except Exception as e:
|
|
print(f"Error loading image {image_path}: {e}", file=sys.stderr)
|
|
return None
|
|
|
|
def load_video(self, video_path: str):
|
|
"""
|
|
Load a video from the given file path.
|
|
|
|
Args:
|
|
video_path (str): The path to the image file.
|
|
|
|
Returns:
|
|
Video: The loaded video.
|
|
"""
|
|
try:
|
|
timestamp = str(int(time.time() * 1000)) # Generate timestamp
|
|
p = f"/tmp/vl-{timestamp}.data" # Use timestamp in filename
|
|
with open(p, "wb") as f:
|
|
f.write(base64.b64decode(video_path))
|
|
video = VideoAsset(name=p).np_ndarrays
|
|
os.remove(p)
|
|
return video
|
|
except Exception as e:
|
|
print(f"Error loading video {video_path}: {e}", file=sys.stderr)
|
|
return None
|
|
|
|
async def serve(address):
|
|
# Start asyncio gRPC server
|
|
server = grpc.aio.server(migration_thread_pool=futures.ThreadPoolExecutor(max_workers=MAX_WORKERS),
|
|
options=[
|
|
('grpc.max_message_length', 50 * 1024 * 1024), # 50MB
|
|
('grpc.max_send_message_length', 50 * 1024 * 1024), # 50MB
|
|
('grpc.max_receive_message_length', 50 * 1024 * 1024), # 50MB
|
|
],
|
|
interceptors=get_auth_interceptors(aio=True),
|
|
)
|
|
# Add the servicer to the server
|
|
backend_pb2_grpc.add_BackendServicer_to_server(BackendServicer(), server)
|
|
# Bind the server to the address
|
|
server.add_insecure_port(address)
|
|
|
|
# Gracefully shutdown the server on SIGTERM or SIGINT
|
|
loop = asyncio.get_event_loop()
|
|
for sig in (signal.SIGINT, signal.SIGTERM):
|
|
loop.add_signal_handler(
|
|
sig, lambda: asyncio.ensure_future(server.stop(5))
|
|
)
|
|
|
|
# Start the server
|
|
await server.start()
|
|
print("Server started. Listening on: " + address, file=sys.stderr)
|
|
# Wait for the server to be terminated
|
|
await server.wait_for_termination()
|
|
|
|
if __name__ == "__main__":
|
|
parser = argparse.ArgumentParser(description="Run the gRPC server.")
|
|
parser.add_argument(
|
|
"--addr", default="localhost:50051", help="The address to bind the server to."
|
|
)
|
|
args = parser.parse_args()
|
|
|
|
asyncio.run(serve(args.addr))
|