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rendercv/examples/John_Doe_Sb2novTheme_CV.yaml
2025-12-22 22:26:24 +03:00

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# yaml-language-server: $schema=https://raw.githubusercontent.com/rendercv/rendercv/refs/tags/v2.5/schema.json
cv:
name: John Doe
headline:
location: San Francisco, CA
email: john.doe@email.com
photo:
phone:
website: https://rendercv.com/
social_networks:
- network: LinkedIn
username: rendercv
- network: GitHub
username: rendercv
custom_connections:
sections:
Welcome to RenderCV:
- RenderCV reads a CV written in a YAML file, and generates a PDF with professional typography.
- See the [documentation](https://docs.rendercv.com) for more details.
education:
- institution: Princeton University
area: Computer Science
degree: PhD
date:
start_date: 2018-09
end_date: 2023-05
location: Princeton, NJ
summary:
highlights:
- 'Thesis: Efficient Neural Architecture Search for Resource-Constrained Deployment'
- 'Advisor: Prof. Sanjeev Arora'
- NSF Graduate Research Fellowship, Siebel Scholar (Class of 2022)
- institution: Boğaziçi University
area: Computer Engineering
degree: BS
date:
start_date: 2014-09
end_date: 2018-06
location: Istanbul, Türkiye
summary:
highlights:
- 'GPA: 3.97/4.00, Valedictorian'
- Fulbright Scholarship recipient for graduate studies
experience:
- company: Nexus AI
position: Co-Founder & CTO
date:
start_date: 2023-06
end_date: present
location: San Francisco, CA
summary:
highlights:
- Built foundation model infrastructure serving 2M+ monthly API requests with 99.97% uptime
- Raised $18M Series A led by Sequoia Capital, with participation from a16z and Founders Fund
- Scaled engineering team from 3 to 28 across ML research, platform, and applied AI divisions
- Developed proprietary inference optimization reducing latency by 73% compared to baseline
- company: NVIDIA Research
position: Research Intern
date:
start_date: 2022-05
end_date: 2022-08
location: Santa Clara, CA
summary:
highlights:
- Designed sparse attention mechanism reducing transformer memory footprint by 4.2x
- Co-authored paper accepted at NeurIPS 2022 (spotlight presentation, top 5% of submissions)
- company: Google DeepMind
position: Research Intern
date:
start_date: 2021-05
end_date: 2021-08
location: London, UK
summary:
highlights:
- Developed reinforcement learning algorithms for multi-agent coordination
- Published research at top-tier venues with significant academic impact
- ICML 2022 main conference paper, cited 340+ times within two years
- NeurIPS 2022 workshop paper on emergent communication protocols
- Invited journal extension in JMLR (2023)
- company: Apple ML Research
position: Research Intern
date:
start_date: 2020-05
end_date: 2020-08
location: Cupertino, CA
summary:
highlights:
- Created on-device neural network compression pipeline deployed across 50M+ devices
- Filed 2 patents on efficient model quantization techniques for edge inference
- company: Microsoft Research
position: Research Intern
date:
start_date: 2019-05
end_date: 2019-08
location: Redmond, WA
summary:
highlights:
- Implemented novel self-supervised learning framework for low-resource language modeling
- Research integrated into Azure Cognitive Services, reducing training data requirements by 60%
projects:
- name: '[FlashInfer](https://github.com/)'
date:
start_date: 2023-01
end_date: present
location:
summary: Open-source library for high-performance LLM inference kernels
highlights:
- Achieved 2.8x speedup over baseline attention implementations on A100 GPUs
- Adopted by 3 major AI labs, 8,500+ GitHub stars, 200+ contributors
- name: '[NeuralPrune](https://github.com/)'
date: '2021'
start_date:
end_date:
location:
summary: Automated neural network pruning toolkit with differentiable masks
highlights:
- Reduced model size by 90% with less than 1% accuracy degradation on ImageNet
- Featured in PyTorch ecosystem tools, 4,200+ GitHub stars
publications:
- title: 'Sparse Mixture-of-Experts at Scale: Efficient Routing for Trillion-Parameter Models'
authors:
- '*John Doe*'
- Sarah Williams
- David Park
summary:
doi: 10.1234/neurips.2023.1234
url:
journal: NeurIPS 2023
date: 2023-07
- title: Neural Architecture Search via Differentiable Pruning
authors:
- James Liu
- '*John Doe*'
summary:
doi: 10.1234/neurips.2022.5678
url:
journal: NeurIPS 2022, Spotlight
date: 2022-12
- title: Multi-Agent Reinforcement Learning with Emergent Communication
authors:
- Maria Garcia
- '*John Doe*'
- Tom Anderson
summary:
doi: 10.1234/icml.2022.9012
url:
journal: ICML 2022
date: 2022-07
- title: On-Device Model Compression via Learned Quantization
authors:
- '*John Doe*'
- Kevin Wu
summary:
doi: 10.1234/iclr.2021.3456
url:
journal: ICLR 2021, Best Paper Award
date: 2021-05
selected_honors:
- bullet: MIT Technology Review 35 Under 35 Innovators (2024)
- bullet: Forbes 30 Under 30 in Enterprise Technology (2024)
- bullet: ACM Doctoral Dissertation Award Honorable Mention (2023)
- bullet: Google PhD Fellowship in Machine Learning (2020 2023)
- bullet: Fulbright Scholarship for Graduate Studies (2018)
skills:
- label: Languages
details: Python, C++, CUDA, Rust, Julia
- label: ML Frameworks
details: PyTorch, JAX, TensorFlow, Triton, ONNX
- label: Infrastructure
details: Kubernetes, Ray, distributed training, AWS, GCP
- label: Research Areas
details: Neural architecture search, model compression, efficient inference, multi-agent RL
patents:
- number: Adaptive Quantization for Neural Network Inference on Edge Devices (US Patent 11,234,567)
- number: Dynamic Sparsity Patterns for Efficient Transformer Attention (US Patent 11,345,678)
- number: Hardware-Aware Neural Architecture Search Method (US Patent 11,456,789)
invited_talks:
- reversed_number: Scaling Laws for Efficient Inference — Stanford HAI Symposium (2024)
- reversed_number: Building AI Infrastructure for the Next Decade — TechCrunch Disrupt (2024)
- reversed_number: 'From Research to Production: Lessons in ML Systems — NeurIPS Workshop (2023)'
- reversed_number: "Efficient Deep Learning: A Practitioner's Perspective — Google Tech Talk (2022)"
any_section_title:
- You can use any section title you want.
- 'You can choose any entry type for the section: `TextEntry`, `ExperienceEntry`, `EducationEntry`, `PublicationEntry`, `BulletEntry`, `NumberedEntry`, or `ReversedNumberedEntry`.'
- Markdown syntax is supported everywhere.
- The `design` field in YAML gives you control over almost any aspect of your CV design.
- See the [documentation](https://docs.rendercv.com) for more details.
design:
theme: sb2nov
# page:
# size: us-letter
# top_margin: 0.7in
# bottom_margin: 0.7in
# left_margin: 0.7in
# right_margin: 0.7in
# show_footer: true
# show_top_note: true
# colors:
# body: rgb(0, 0, 0)
# name: rgb(0, 0, 0)
# headline: rgb(0, 0, 0)
# connections: rgb(0, 0, 0)
# section_titles: rgb(0, 0, 0)
# links: rgb(0, 0, 0)
# footer: rgb(128, 128, 128)
# top_note: rgb(128, 128, 128)
# typography:
# line_spacing: 0.6em
# alignment: justified
# date_and_location_column_alignment: right
# font_family:
# body: New Computer Modern
# name: New Computer Modern
# headline: New Computer Modern
# connections: New Computer Modern
# section_titles: New Computer Modern
# font_size:
# body: 10pt
# name: 30pt
# headline: 10pt
# connections: 10pt
# section_titles: 1.4em
# small_caps:
# name: false
# headline: false
# connections: false
# section_titles: false
# bold:
# name: true
# headline: false
# connections: false
# section_titles: true
# links:
# underline: true
# show_external_link_icon: false
# header:
# alignment: center
# photo_width: 3.5cm
# photo_position: left
# photo_space_left: 0.4cm
# photo_space_right: 0.4cm
# space_below_name: 0.7cm
# space_below_headline: 0.7cm
# space_below_connections: 0.7cm
# connections:
# phone_number_format: national
# hyperlink: true
# show_icons: false
# display_urls_instead_of_usernames: true
# separator: •
# space_between_connections: 0.5cm
# section_titles:
# type: with_full_line
# line_thickness: 0.5pt
# space_above: 0.5cm
# space_below: 0.3cm
# sections:
# allow_page_break: true
# space_between_regular_entries: 1.2em
# space_between_text_based_entries: 0.3em
# show_time_spans_in: []
# entries:
# date_and_location_width: 4.15cm
# side_space: 0.2cm
# space_between_columns: 0.1cm
# allow_page_break: false
# short_second_row: false
# summary:
# space_above: 0cm
# space_left: 0cm
# highlights:
# bullet: ◦
# nested_bullet: ◦
# space_left: 0.15cm
# space_above: 0cm
# space_between_items: 0cm
# space_between_bullet_and_text: 0.5em
# templates:
# footer: '*NAME -- PAGE_NUMBER/TOTAL_PAGES*'
# top_note: '*LAST_UPDATED CURRENT_DATE*'
# single_date: MONTH_ABBREVIATION YEAR
# date_range: START_DATE END_DATE
# time_span: HOW_MANY_YEARS YEARS HOW_MANY_MONTHS MONTHS
# one_line_entry:
# main_column: '**LABEL:** DETAILS'
# education_entry:
# main_column: |-
# **INSTITUTION**
# *DEGREE* *in* *AREA*
# SUMMARY
# HIGHLIGHTS
# degree_column:
# date_and_location_column: |-
# *LOCATION*
# *DATE*
# normal_entry:
# main_column: |-
# **NAME**
# SUMMARY
# HIGHLIGHTS
# date_and_location_column: |-
# *LOCATION*
# *DATE*
# experience_entry:
# main_column: |-
# **POSITION**
# *COMPANY*
# SUMMARY
# HIGHLIGHTS
# date_and_location_column: |-
# *LOCATION*
# *DATE*
# publication_entry:
# main_column: |-
# **TITLE**
# SUMMARY
# AUTHORS
# URL (JOURNAL)
# date_and_location_column: DATE
locale:
language: english
# last_updated: Last updated in
# month: month
# months: months
# year: year
# years: years
# present: present
# month_abbreviations:
# - Jan
# - Feb
# - Mar
# - Apr
# - May
# - June
# - July
# - Aug
# - Sept
# - Oct
# - Nov
# - Dec
# month_names:
# - January
# - February
# - March
# - April
# - May
# - June
# - July
# - August
# - September
# - October
# - November
# - December
settings:
current_date: '2025-12-22'
render_command:
design:
locale:
typst_path: rendercv_output/NAME_IN_SNAKE_CASE_CV.typ
pdf_path: rendercv_output/NAME_IN_SNAKE_CASE_CV.pdf
markdown_path: rendercv_output/NAME_IN_SNAKE_CASE_CV.md
html_path: rendercv_output/NAME_IN_SNAKE_CASE_CV.html
png_path: rendercv_output/NAME_IN_SNAKE_CASE_CV.png
dont_generate_markdown: false
dont_generate_html: false
dont_generate_typst: false
dont_generate_pdf: false
dont_generate_png: false
bold_keywords: []