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Arithmo2-Mistral-7B model improves initially released Arithmo-Mistral-7B model on both GSM8K and MATH benchmarks. Specifically, there is absolute improvement of:

  • +1.7% on GSM8K
  • +3.0% on GSM8K PoT
  • +1.9% on MATH

This repo contains final merged model. If you are interested in LoRA adapter, use LoRA Adapter instead.

Model Description

Results

Arithmo2-Mistral-7B is improved version of Arithmo-Mistral-7B model and is competitive with full fine-tuned state-of-the-art 7B Mathematical Reasoning models. Refer to Comparing Arithmo models with other SFT LLM models section for more details.

Prompt Approach GSM8k MATH
Zero-Shot CoT 76.4 27.2
Zero-Shot PoT 74.2 -
  • Zero-Shot CoT: On providing a question as prompt, model generates reasoning steps to solve the question along with answer. We check if answer matches with ground-truth.
  • Zero-Shot PoT: We prompt the model to generate a Python program for the given question. During inference, we execute the Python program generated by the model and check if the program output matches with ground-truth answer.

Installation

pip install transformers >=4.34.0
pip install accelerate
pip install sentencepiece
pip install protobuf

# If you are GPU poor like me
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cpu

# If you have a GPU.
pip install --pre torch --index-url https://download.pytorch.org/whl/nightly/cu118
pip install scipy
pip install bitsandbytes

How to query the model

# Set `run_model_on_gpu` to `False` if you are running on CPU. Model will generate reasoning steps with answer for your question. If you want to generate Python program, uncomment line-69 that adds a Python prompt.
# This script automatically does formatting for you, so you just need to type question (eg: `What is 2+2?`) without any prefix like `Question:`, etc.**

$ python query_model.py

Note: Above script automatically does formatting for you, so you just need to type question (eg: What is 2+2?) without any prefix like Question:, etc. Checkout query_model.py for more details.

Sample Input:
Question: There are total 10 children. I have to give 1 apple to first child, 2 apples to second child, 3 apples to third child, and so on. How many apples do I need?
Model Output:
Answer: The total number of apples needed is the sum of the first 10 positive integers.
This can be calculated using the formula for the sum of an arithmetic series:
\[S = \frac{n}{2}(a_1 + a_n),\]
where $S$ is the sum, $n$ is the number of terms, $a_1$ is the first term, and $a_n$ is the last term.
In this case, $n = 10$, $a_1 = 1$, and $a_n = 10$.
Plugging these values into the formula, we get:
\[S = \frac{10}{2}(1 + 10) = 5(11) = \boxed{55}.\]
The answer is: 55

Arithmo2-Mistral-7B is trained with same format as Arithmo-Mistral-7B:

CoT Format (generate reasoning steps with answer):

Question: <question>

Answer:

PoT Format (generate a python program):

Question: <question> <python_prompt>

Answer:

It will perform best if queried in this way with your own script.

Comparing Arithmo models with other SFT LLM models

Results for all models except Arithmo2-Mistral-7B are taken from MetaMath repository.

Model GSM8k Pass@1 MATH Pass@1 Fine-tuning
MPT-7B 6.8 3.0
Falcon-7B 6.8 2.3
LLaMA-1-7B 11.0 2.9
LLaMA-2-7B 14.6 2.5
MPT-30B 15.2 3.1
LLaMA-1-13B 17.8 3.9
GPT-Neo-2.7B 19.5 --
Falcon-40B 19.6 2.5
Baichuan-chat-13B 23.9 --
Vicuna-v1.3-13B 27.6 --
LLaMA-2-13B 28.7 3.9
InternLM-7B 31.2 --
ChatGLM-2-6B 32.4 --
GPT-J-6B 34.9 --
LLaMA-1-33B 35.6 3.9
LLaMA-2-34B 42.2 6.24
RFT-7B 50.3 --
LLaMA-1-65B 50.9 10.6
Qwen-7B 51.6 --
WizardMath-7B 54.9 10.7
LLaMA-2-70B 56.8 13.5
WizardMath-13B 63.9 14.0
MetaMath-7B 66.5 19.8
MetaMath-13B 72.3 22.4
Arithmo-Mistral-7B (PoT) 71.2 -- SFT: 4-bit QLoRA
Arithmo2-Mistral-7B (PoT) 74.2 -- SFT: 4-bit QLoRA
MetaMath-Mistral-7B 77.7 28.2 SFT: Full fine-tuned
Arithmo-Mistral-7B 74.7 25.3 SFT: 4-bit QLoRA
🔥 Arithmo2-Mistral-7B 76.4 27.2 SFT: 4-bit QLoRA

If you are interested in reproducing the results, visit https://github.com/akjindal53244/Arithmo#reproducing-results section.

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Citation

To cite Arithmo models:

@misc{jindal_2023_arithmo,
  author = {Jindal, Ashvini},
  title = {Arithmo-Mistral-7B: Mathematical Reasoning Model},
  howpublished = {Hugging Face},
  month = {October},
  year = {2023},
  url = {https://huggingface.co/akjindal53244/Arithmo-Mistral-7B}
}

References

@article{yu2023metamath,
  title={MetaMath: Bootstrap Your Own Mathematical Questions for Large Language Models},
  author={Yu, Longhui and Jiang, Weisen and Shi, Han and Yu, Jincheng and Liu, Zhengying and Zhang, Yu and Kwok, James T and Li, Zhenguo and Weller, Adrian and Liu, Weiyang},
  journal={arXiv preprint arXiv:2309.12284},
  year={2023}
}

@article{Yue2023mammoth,
  title={MAmmoTH: Building math generalist models through hybrid instruction tuning},
  author={Xiang Yue, Xingwei Qu, Ge Zhang, Yao Fu, Wenhao Huang, Huan Sun, Yu Su, and Wenhu Chen},
  journal={arXiv preprint arXiv:2309.05653},
  year={2023}
}

@article{mishra2022lila,
  title={Lila: A unified benchmark for mathematical reasoning},
  author={Swaroop Mishra, Matthew Finlayson, Pan Lu, Leonard Tang, Sean Welleck, Chitta Baral, Tanmay Rajpurohit, Oyvind Tafjord, Ashish Sabharwal, Peter Clark, and Ashwin Kalyan},
  journal={arXiv preprint arXiv:2210.17517},
  year={2022}
}
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