๐ Paper2Code: Automating Code Generation from Scientific Papers in Machine Learning
Paper2Code: Automating Code Generation from Scientific Papers in Machine Learning
README
๐ Paper2Code: Automating Code Generation from Scientific Papers in Machine Learning
Minju Seo, Jinheon Baekโ , Seongyun Lee, and Sung Ju Hwangโ (โ denotes equal advising)
International Conference on Learning Representations (ICLR), 2026
๐ Read the paper
PaperCoder is the multi-agent LLM system introduced in Paper2Code, designed to transform a paper into a code repository.
It follows a three-stage pipeline: planning, analysis, and code generation, each handled by specialized agents.
Our method outperforms strong baselines on both Paper2Code and PaperBench and produces faithful, high-quality implementations.
๐บ๏ธ Table of Contents
- โก Quick Start
- ๐ Detailed Setup Instructions
- ๐ฆ Paper2Code Benchmark Datasets
- ๐ Model-based Evaluation of Repositories
โก Quick Start
- Note: The following command runs example paper (Attention Is All You Need).
- For more setup options, including LaTeX-based inputs and PDF-to-JSON conversion, see ๐ Detailed Setup Instructions.
Using OpenAI API
- ๐ต Estimated cost for using o3-mini: $0.50โ$0.70
pip install openai
export OPENAI_API_KEY="<OPENAI_API_KEY>"
cd scripts
bash run.sh
Using Open Source Models with vLLM
- If you encounter any issues installing vLLM, please refer to the official vLLM repository.
- The default model is
deepseek-ai/DeepSeek-Coder-V2-Lite-Instruct.
pip install vllm
cd scripts
bash run_llm.sh
Output Folder Structure (Only Important Files)
outputs
โโโ Transformer
โ โโโ analyzing_artifacts
โ โโโ coding_artifacts
โ โโโ planning_artifacts
โโโ Transformer_repo # Final output repository
๐ Detailed Setup Instructions
๐ ๏ธ Environment Setup
- ๐ก To use the
o3-miniversion, make sure you have the latestopenaipackage installed. - We recommend using a Python virtual environment before installing dependencies.
- ๐ฆ Install only what you need:
- For OpenAI API, install
openai. - For open-source models, install
vllm. - If you encounter any issues installing vLLM, please refer to the official vLLM repository.
- For OpenAI API, install
pip install openai
pip install vllm
- Or, if you prefer, you can install all dependencies using
pip:
pip install -r requirements.txt
๐ (Option) Convert PDF to JSON
The following process describes how to convert a paper PDF into JSON format.
If you have access to the LaTeX source and plan to use it with PaperCoder, you may skip this step and proceed to ๐ Running PaperCoder.
Note: In our experiments, we converted all paper PDFs to JSON format.
- Clone the
s2orc-doc2jsonrepository to convert your PDF file into a structured JSON format.
(For detailed configuration, please refer to the official repository.)
git clone https://github.com/allenai/s2orc-doc2json.git
- Run the PDF processing service.
cd ./s2orc-doc2json/grobid-0.7.3
./gradlew run
- Convert your PDF into JSON format.
mkdir -p ./s2orc-doc2json/output_dir/paper_coder
python ./s2orc-doc2json/doc2json/grobid2json/process_pdf.py \
-i ${PDF_PATH} \
-t ./s2orc-doc2json/temp_dir/ \
-o ./s2orc-doc2json/output_dir/paper_coder
๐ Running PaperCoder
- Note: The following command runs example paper (Attention Is All You Need).
If you want to run PaperCoder on your own paper, please modify the environment variables accordingly.
Using OpenAI API
- ๐ต Estimated cost for using o3-mini: $0.50โ$0.70
# Using the PDF-based JSON format of the paper
export OPENAI_API_KEY="<OPENAI_API_KEY>"
cd scripts
bash run.sh
# Using the LaTeX source of the paper
export OPENAI_API_KEY="<OPENAI_API_KEY>"
cd scripts
bash run_latex.sh
Using Open Source Models with vLLM
- The default model is
deepseek-ai/DeepSeek-Coder-V2-Lite-Instruct.
# Using the PDF-based JSON format of the paper
cd scripts
bash run_llm.sh
# Using the LaTeX source of the paper
cd scripts
bash run_latex_llm.sh
๐ฆ Paper2Code Benchmark Datasets
-
Huggingface dataset: paper2code
-
You can find the description of the Paper2Code benchmark dataset in data/paper2code.
-
For more details, refer to Section 4.1 "Paper2Code Benchmark" in the paper.
๐ Model-based Evaluation of Repositories Generated by PaperCoder
-
We evaluate repository quality using a model-based approach, supporting both reference-based and reference-free settings.
The model critiques key implementation components, assigns severity levels, and generates a 1โ5 correctness score averaged over 8 samples using o3-mini-high. -
For more details, please refer to Section 4.3.1 (Paper2Code Benchmark) of the paper.
-
Note: The following examples evaluate the sample repository (Transformer_repo).
Please modify the relevant paths and arguments if you wish to evaluate a different repository.
๐ ๏ธ Environment Setup
pip install tiktoken
export OPENAI_API_KEY="<OPENAI_API_KEY>"
๐ Reference-free Evaluation
target_repo_diris the generated repository.
cd codes/
python eval.py \
--paper_name Transformer \
--pdf_json_path ../examples/Transformer_cleaned.json \
--data_dir ../data \
--output_dir ../outputs/Transformer \
--target_repo_dir ../outputs/Transformer_repo \
--eval_result_dir ../results \
--eval_type ref_free \
--generated_n 8 \
--papercoder
๐ Reference-based Evaluation
target_repo_diris the generated repository.gold_repo_dirshould point to the official repository (e.g., author-released code).
cd codes/
python eval.py \
--paper_name Transformer \
--pdf_json_path ../examples/Transformer_cleaned.json \
--data_dir ../data \
--output_dir ../outputs/Transformer \
--target_repo_dir ../outputs/Transformer_repo \
--gold_repo_dir ../examples/Transformer_gold_repo \
--eval_result_dir ../results \
--eval_type ref_based \
--generated_n 8 \
--papercoder
๐ Example Output
========================================
๐ Evaluation Summary ๐
๐ Paper name: Transformer
๐งช Evaluation type: ref_based
๐ Target repo directory: ../outputs/Transformer_repo
๐ Evaluation result:
๐ Score: 4.5000
โ
Valid: 8/8
========================================
๐ Usage Summary ๐
[Evaluation] Transformer - ref_based
๐ ๏ธ Model: o3-mini
๐ฅ Input tokens: 44318 (Cost: $0.04874980)
๐ฆ Cached input tokens: 0 (Cost: $0.00000000)
๐ค Output tokens: 26310 (Cost: $0.11576400)
๐ต Current total cost: $0.16451380
๐ช Accumulated total cost so far: $0.16451380
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