Davipar / automix

Mixing Language Models with Self-Verification

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AutoMix: Automatically Mixing Language Models

Arxiv Paper

What is AutoMix?

The idea behind AutoMix is simple:

  1. Send a query to small language model (SLM), gets a noisy label on its correctness using few-shot self-verification done with the same model (SLM).

  2. Use a meta-verifier to double check verifier's output, and route the query to a larger language model (LLM) if needed.

Self-Verification and Meta-verification

At the center of automix is the idea of context-grounded self-verification:

  • However, such verification can often be noisy, so we introduce an additional layer of meta-verification using POMDPs or thresholding.

Notebooks

Running inference

Few-shot self-verification

  • Step2 Self Verify - Verification prompts, code to run verification on the outputs produced in step 1. Open In Colab

Meta-verification

  • Step3 Meta Verify - Run meta-verification using different AutoMix methods on outputs produced from Step 2.

  • You can run `python setup.py install' to use the meta-verifier system wide.

Replicating the results

  • To replicate the results in the paper, please run python scripts paper_results.py

Data and Outputs

  • We experiment with 5 datasets: CNLI, CoQA, NarrativeQA, QASPER, and Quality.

  • Note: The dataset are sourced from scrolls. Please cite scrolls and the appropriate sources if you use these datasets. We are making them available in a sinlge jsonl file for ease of use and reproducibility. For details on how CoQa was prepared, please see Preparing COQA.

  • Inputs: All input data for the AutoMix project is provided in automix_inputs.jsonl. You can access and download it directly from Google Drive.

  • Outputs from LLAMA2: The outputs generated using the LLAMA2 model are stored in automix_llama2_outputs.jsonl, available alongside the input file in the linked Google Drive.

id: A unique identifier for each question and answer pair.
pid: An additional identifier potentially mapping to specific instances or model variants.
base_ctx: The context.
question: Input question or query.
output: Ground truth.
dataset: .
llama13b_pred_ans: The answer generated by the llama13b model.
llama70b_pred_ans: The answer generated by the llama70b model.
llama13b_ver: Verification outputs of the llama13b model’s answers.

Stats

dataset       split
cnli          train    7191
              val      1037
coqa          train    3941
              val      3908
narrative_qa  train    9946
              val      5826
qasper        train    2556
              val      1715
quality       train    2515
              val      2085
Name: split, dtype: int64

Citation

@misc{madaan2023automix,
      title={AutoMix: Automatically Mixing Language Models}, 
      author={Aman Madaan and Pranjal Aggarwal and Ankit Anand and Srividya Pranavi Potharaju and Swaroop Mishra and Pei Zhou and Aditya Gupta and Dheeraj Rajagopal and Karthik Kappaganthu and Yiming Yang and Shyam Upadhyay and Mausam and Manaal Faruqui},
      year={2023},
      eprint={2310.12963},
      archivePrefix={arXiv},
      primaryClass={cs.CL}
}



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Mixing Language Models with Self-Verification

License:Apache License 2.0


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