Skip to content

Alignment with a millennium of moral progress. Spotlight@NeurIPS 2024 Track on Datasets and Benchmarks.

License

Notifications You must be signed in to change notification settings

PKU-Alignment/ProgressGym

Repository files navigation

ProgressGym: Alignment with a Millennium of Moral Progress

Links

Also, we want to thank the authors of the following libraries that ProgressGym is built upon:

Overview

Framework Diagram

ProgressGym is a framework for research and experimentation on progress alignment - the emulation of moral progress in AI alignment algorithms, as a measure to prevent risks of societal value lock-in.

To quote the paper ProgressGym: Alignment with a Millennium of Moral Progress:

Frontier AI systems, including large language models (LLMs), hold increasing influence over the epistemology of human users. Such influence can reinforce prevailing societal values, potentially contributing to the lock-in of misguided moral beliefs and, consequently, the perpetuation of problematic moral practices on a broad scale.

We introduce progress alignment as a technical solution to mitigate this imminent risk. Progress alignment algorithms learn to emulate the mechanics of human moral progress, thereby addressing the susceptibility of existing alignment methods to contemporary moral blindspots.

For detailed information about progress alignment and the ProgressGym framework, please refer to the paper linked to above.

Usage Guide #1: Package & Codebase

Package

We are in the process of wrapping the codebase into a PyPI package - stay tuned to know when we finish!

In the meantime, you could explore and run our codebase directly to use ProgressGym. It comes with a full documentation (see below), so should be easy to try out!

Codebase

This Github repository is the primary codebase of the ProgressGym framework, with its structure shown below. Please see the documentation page for instructions on how to use this codebase.

UML Diagram

ProgressGym provides the infrastructure for building and solving progress gym challenges (i.e., instances of progress alignment POMDPs).

  • The JudgeBase class provides evaluation mechanisms, while the ExamineeBase class represents the entities being evaluated, facilitating systematic testing and validation of alignment algorithms. Built on a dataset of historical text and historical LLMs, ProgressGym uses nine centuries of historical data and models as nine time steps in the POMDP.
    • Each problem instance (i.e., each challenge) is implemented as a subclass of JudgeBase.
    • Each algorithm is implemented as a subclass of ExamineeBase, interacting with judge instances to produce benchmark results.
    • ProgressGym benchmarks employ specialized judge and examinee classes to assess alignment algorithms. To demonstrate example applications, ProgressGym presents the predefined benchmarks PG-Follow, PG-Predict, and PG-Coevolve, for which FollowJudge, PredictJudge, and CoevolveJudge classes accept specialized examinees such as LifelongRLHFExaminee and ExtrapolativeDPOExaminee that correspond to alignment algorithms.
    • By open-sourcing ProgressGym and providing a real-time leaderboard, we invite the machine learning community to codify additional challenges and develop novel algorithms.
  • ProgressGym also contains a high-level abstraction library for data manipulation (the Data and DataFileCollection classes) and model tuning (the Model class), which serve as the foundation of the Judge and Examinee interface.
    • Key abstraction classes are the Model class for model fine-tuning and inference, the Data class for transforming raw data, and the DataFileCollection class for managing complex data collections.

Usage Guide #2: Leaderboard & Playground

The open leaderboard is available on Huggingface Spaces.

We are in the process of implementing interactive playground functionalities on top of the leaderboard site, and will update the instructions here when we finish - stay tuned for updates!

Usage Guide #3: Datasets & Models

All datasets and models are available on Huggingface.

The ProgressGym-HistLlama3 Historical LLMs

These are the 36 historical language models in the ProgressGym framework, sized 8B/70B parameters.

ProgressGym-HistLlama3 models are under continual iteration. Improving upon the current version, new versions of the model are currently being trained to reflect historical moral tendencies in ever more comprehensive ways.

Based on Meta-Llama-3-8B and Meta-Llama-3-70B, these models are continued-pretrained on the historical text data from ProgressGym-HistText, and then instruction-tuned on ProgressGym-TimelessQA.

The ProgressGym-HisText Dataset

ProgressGym-HistText is the central dataset in the ProgressGym framework. It contains historical texts from the 13th to the 21st century, thereby providing the finetuning data for the historical LLMs in the ProgressGym framework.

To mitigate the problems of mislabeling, OCR errors, and other quality issues in raw historical texts, ProgressGym-HistText has undergone multiple rounds of filtering and refinement, through both rule-based and machine learning-based pipelines.

We collected historical texts from portions of Internet Archive - Library of Congress, Project Gutenberg, Early English Books Online (EEBO), and Pile of Law, which are public-domain, freely available digital libraries of texts. The dataset encompasses different types of texts: fiction, nonfiction, legal, administrative, religious, and more.

The texts are organized into .json files by year, with each year's file containing a list of passages. Each passage is represented as a dictionary, with the fields creation_year, source_dataset, and content being mandatory, and many other metadata fields being optional to include.

The ProgressGym-HistText dataset is 38GB in size. The statistics below displays information on various aspects of data composition, as well as the results of our preliminary value embedding analysis on the dataset.

image-20240630103046223

image-20240630101921110

Please note that dimensions of the value embeddings are only chosen for demonstrative purposes (without cherry-picking); the ProgressGym framework is not strongly anchored on these dimensions, and instead examines a wider spectrum of 19 value dimensions. Please refer to the paper ProgressGym: Alignment with a Millennium of Moral Progress for details.

Supplementary Dataset: ProgressGym-MoralEvals

ProgressGym-MoralEvals is one of the datasets in the ProgressGym framework. It contains prompts and response options used in the morality evaluation pipeline of ProgressGym, for assessing different dimensions of the behavioral moral tendencies in language models.

ProgressGym-MoralEvals is not meant for telling right from wrong. Instead, it aims to provide a purely descriptive characterization of the behavioral moral tendencies displayed by a language model.

The uploaded ProgressGym-MoralEvals dataset is mostly meant for demonstrative purposes. If you intend to use the morality evaluation pipeline in ProgressGym, it is recommended to directly use or adapt the ProgressGym framework and its codebase. Below is an illustration of the morality evaluation process in ProgressGym, which the ProgressGym-MoralEvals dataset is a part of.

image-20240630113342775

Supplementary Dataset: ProgressGym-TimelessQA

ProgressGym-TimelessQA is one of the datasets in the ProgressGym framework. It contains approximately 3,000 prompt-response pairs used in the supervised funetuning (SFT) process of historical language models, in order to endow these pretrained models with instruction-following abilities.

In order to preserve the historical moral tendencies in pretrained historical language models, the ProgressGym-TimelessQA dataset is intentionally kept small, timeless (i.e., without modern context or context from any specific period), and value-neutral (i.e., without moral judgments or value-laden positions).

ProgressGym-TimelessQA is constructed from the LIMA, Dolly-15k, and Alpaca datasets via GPT-4-based filtering.

Citation

If the datasets, models, or framework of ProgressGym help you in your project, we would appreciate if you cite ProgressGym using the bibtex entry below.

@article{progressgym,
  title={ProgressGym: Alignment with a Millennium of Moral Progress},
  author={Tianyi Qiu and Yang Zhang and Xuchuan Huang and Jasmine Xinze Li and Jiaming Ji and Yaodong Yang},
  journal={arXiv preprint arXiv:2406.20087},
  eprint={2406.20087},
  eprinttype = {arXiv},
  year={2024}
}

Ethics Statement

  • Copyright information of historical text data sources:
    • Project Gutenberg, one among our four source of our historical text data, consists only of texts in the public domain.
    • For the text that we draw from Internet Archive, we only include those that uploaded by Library of Congress, which are texts freely released online by the U.S. Library of Congress for research and public use.
    • The text data from Early English Books Online are, according to their publisher, "freely available to the public" and "available for access, distribution, use, or reuse by anyone".
    • The last remaining source of our historical text data, the Pile of Law dataset, is released under a Creative Commons license, which we adhere to in our use.
  • Reproducibility: To ensure reproducibility, we open-source all the code involved in the production of our main results (including the entire pipeline starting from data collection and model training), as well as the supporting infrastructure (the ProgressGym framework), making replication as easy as running a few simple script files.
  • Misuse Prevention: In order to prevent potential misuse of progress alignment algorithms, we have carefully formulated progress alignment as strictly value-neutral, without a priori assumptions on the direction of progress. In the event of potential misuse of our dataset, we condemn any misuse attempt to the strongest degree possible, and will work with the research community on whistleblowing for such attempts.
  • Open-Sourcing: We confirm that our code, data, and models are to be open-sourced under a CC-BY 4.0 license. We will continue to maintain and update our open-source repositories and models.

About

Alignment with a millennium of moral progress. Spotlight@NeurIPS 2024 Track on Datasets and Benchmarks.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published