MATH-APS (Our Dataset)
MATH-psa (Our Process Reward Model)
conda create -n open_reasoner python=3.10
conda activate open_reasoner
pip install -r requirements.txt
pip3 install "fschat[model_worker,webui]"
pip install -U pydantic
cd envs/MATH/latex2sympy
pip install -e .
cd -
Before running the project, please ensure that all required base models are downloaded. The models used in this project include:
Qwen2.5-Math-1.5B-Instruct
, Qwen2.5-Math-7B-Instruct
peiyi9979/mistral-7b-sft
peiyi9979/math-shepherd-mistral-7b-prm
To download these models, please refer to the Hugging Face model downloading tutorial for step-by-step guidance on downloading models from the Hugging Face Hub.
Please make sure that all models are saved in their directories according to the project setup before proceeding.
Before running inference, please modify the following variables in the scripts under reason/llm_service/
to set the appropriate base models for your usage:
$MODEL_BASE
: Set this to the directory where your models are stored.$POLICY_MODEL_NAME
: Set this to the name of the policy model you wish to use.$VALUE_MODEL_NAME
: Set this to the name of the value model you wish to use.$NUM_LM_WORKER
: Set this to the number of language model (LM) workers to start.$NUM_RM_WORKER
: Set this to the number of reward model (RM) workers to start.Then it prepares and runs inference using different techniques.
For example, to start the LM and RM services for the Math Shepherd model, run the following command:
sh reason/llm_service/create_service_math_shepherd.sh
To kill the server processes, recommend using the following command:
tmux kill-session -t {Your Session Name} # default is `FastChat`
⚠️ Make sure the input (--LM
, --RM
) in the script aligns with the variables ($POLICY_MODEL_NAME
, $VALUE_MODEL_NAME
) in the pending worker!
export PYTHONPATH=$(pwd)
sh scripts/eval/cot_greedy.sh
# Method: cot. Average result: ({'majority_vote': 0.734, 'total_completion_tokens': 559.13},)
sh scripts/eval/cot_rerank.sh
# Method: best_of_n. Average result: ({'majority_vote': 0.782,
# 'prm_min_max': 0.772,
# 'prm_min_vote': 0.792,
# 'prm_last_max': 0.776,
# 'prm_last_vote': 0.792,
# 'total_completion_tokens': 4431.268},)
sh scripts/eval/beam_search.sh
# Method: beam_search. Average result: ({'majority_vote': 0.74, 'total_completion_tokens': 2350.492},)
sh scripts/eval/vanila_mcts.sh
⚠️ Before training, please modify the $dataset_path
, $model_name_or_path
and $prm_name_or_path
in train/mat/scripts/train_llm.sh
.
cd train/mat/scripts
bash train_llm.sh
cd prm/code
\\ single gpu
python finetune_qwen_single_gpu.py --model_path $YOUR_MODEL_PATH \
--train_data_path $TRAIN_DATA_PATH \
--test_data_path $TEST_DATA_PATH
\\ multi gpu
torchrun --nproc_per_node=2 finetune_qwen.py --model_path $YOUR_MODEL_PATH \
--data_path $YOUR_DATA_FOLDER_PATH \
--datasets both \
Every contribution is valuable to the community.
Thank you for your interest in OpenR ! 🥰 We are deeply committed to the open-source community, and we welcome contributions from everyone. Your efforts, whether big or small, help us grow and improve. Contributions aren’t limited to code—answering questions, helping others, enhancing our documentation, and sharing the project are equally impactful.
Feel free to checkout the contribution guidance !
Add More Comprehensive Evaluations on RL Training and Search Strategies
Scaling the Prove-Verifier Model Size
Support Self-improvement Training
The OpenR community is maintained by:
OpenR is released under the MIT License.
If you do find our resources helpful, please cite our paper:
@misc{wang2024tutorial,
author = {Jun Wang},
title = {A Tutorial on LLM Reasoning: Relevant Methods Behind ChatGPT o1},
year = {2024},
url = {https://github.com/openreasoner/openr/blob/main/reports/tutorial.pdf},
note = {Available on GitHub}
}
@article{wang2024openr,
title={OpenR: An Open Source Framework for Advanced Reasoning with Large Language Models},
author={Wang, Jun and Fang, Meng and Wan, Ziyu and Wen, Muning and Zhu, Jiachen and Liu, Anjie and Gong, Ziqin and Song, Yan and Chen, Lei and Ni, Lionel M and others},
journal={arXiv preprint arXiv:2410.09671},
year={2024}
}
WeChat:
[1] Alphazero-like tree-search can guide large language model decoding and training.
[2] Reasoning with language model is planning with world model.
[3] Scaling LLM test-time compute optimally can be more effective than scaling model parameters
[4] Think before you speak: Training language models with pause tokens
[1] Training verifiers to solve math word problems
[2] Solving math word problems with process-and outcome-based feedback
[4] Making large language models better reasoners with step-aware verifier
[5] Ovm, outcome-supervised value models for planning in mathematical reasoning
[6] Generative verifiers: Reward modeling as next-token prediction
[1] Star: Bootstrapping reasoning with reasoning
[2] Quiet-star: Language models can teach themselves to think before speaking
[3] Improve mathematical reasoning in language models by automated process supervision
[4] Shepherd: A critic for language model generation
[5] Math-shepherd: Verify and reinforce llms step-by-step without human annotations