Files

Reproduction guide

This directory contains the necessary information and assets to reproduce the results obtained during this Heretic run.

Important

Git installation

This system installed Heretic from a Git repository: https://github.com/p-e-w/heretic.git @ ebb5e651df4be58d05cb4f28652e65d725e845eb

To reproduce the model, you must install Heretic from this exact repository and commit.

Models

Datasets

Selected trial

  • Trial number: 7
  • KL divergence: 0.064686
  • Refusals: 1/100

System

  • Python: 3.12.12 (CPython, GCC 11.4.0) [System]
  • Operating system: Linux-6.6.113+-x86_64-with-glibc2.35 (x86_64)
  • CPU: Intel(R) Xeon(R) CPU @ 2.00GHz

Accelerators

  • CUDA: Detected 2 device(s) (29.12 GB total VRAM)
    • CUDA Version: 12.8
    • Driver Version: 580.105.08
  • Devices:
    • CUDA 0: Tesla T4 (14.56 GB)
    • CUDA 1: Tesla T4 (14.56 GB)

Environment

Contents of this directory

How to reproduce

  1. Ensure your system matches the specifications in the System section above. Exact reproducibility is only guaranteed if all aspects of your system are identical to the one the model was originally generated on.
  2. Install the exact version of Heretic indicated in the Environment section above, from its original source.
  3. Install the packages listed in requirements.txt: pip install -r requirements.txt
  4. Install the correct version of PyTorch: pip install torch==2.10.0+cu128 --index-url https://download.pytorch.org/whl/cu128
  5. Place the provided config.toml in your working directory.
  6. Run Heretic without any additional arguments: heretic
  7. Wait for the run to finish, then select trial 7 and export the model.
  8. Verify that the weight files have been exactly reproduced by comparing their SHA-256 hashes against those in SHA256SUMS: sha256sum -c SHA256SUMS (or look at the hashes online if you uploaded to Hugging Face)

Tip

To use the included Optuna study journal ibm-granite--granite-4--1-8b.jsonl, place it in the checkpoints directory (usually checkpoints/) before running Heretic.

This allows you to export other models from the Pareto front, or to run additional trials without having to re-run the stored trials.