AI

Hugging Face Releases Open LLM Leaderboard 2: A Major Upgrade Featuring Tougher Benchmarks, Fairer Scoring, and Enhanced Community Collaboration for Evaluating Language Models

3 Mins read

Hugging Face has announced the release of the Open LLM Leaderboard v2, a significant upgrade designed to address the challenges and limitations of its predecessor. The new leaderboard introduces more rigorous benchmarks, refined evaluation methods, and a fairer scoring system, promising to reinvigorate the competitive landscape for language models.

Addressing Benchmark Saturation

Over the past year, the original Open LLM Leaderboard became a pivotal resource in the machine learning community, attracting over 2 million unique visitors and engaging 300,000 active monthly users. Despite its success, the escalating performance of models led to benchmark saturation. Models began to reach baseline human performance on benchmarks like HellaSwag, MMLU, and ARC, reducing their effectiveness in distinguishing model capabilities. Additionally, some models exhibited signs of contamination, having been trained on data similar to the benchmarks, which compromised the integrity of their scores.

Introduction of New Benchmarks

To counter these issues, the Open LLM Leaderboard v2 introduces six new benchmarks that cover a range of model capabilities:

  • MMLU-Pro: An enhanced version of the MMLU dataset, featuring ten-choice questions instead of four, requiring more reasoning and expert review to reduce noise.
  • GPQA (Google-Proof Q&A Benchmark): A highly challenging knowledge dataset designed by domain experts to ensure difficulty and factuality, with gating mechanisms to prevent contamination.
  • MuSR (Multistep Soft Reasoning): A dataset of algorithmically generated complex problems, including murder mysteries and team allocation optimizations, to test reasoning and long-range context parsing.
  • MATH (Mathematics Aptitude Test of Heuristics, Level 5 subset): High-school level competition problems formatted for rigorous evaluation, focusing on the hardest questions.
  • IFEval (Instruction Following Evaluation): Tests models’ ability to follow explicit instructions, using rigorous metrics for evaluation.
  • BBH (Big Bench Hard): A subset of 23 challenging tasks from the BigBench dataset covering multistep arithmetic, algorithmic reasoning, and language understanding.

Fairer Rankings with Normalized Scoring

A notable change in the new leaderboard is the adoption of normalized scores for ranking models. Previously, raw scores were summed, which could misrepresent performance due to varying benchmark difficulties. Now, scores are normalized between a random baseline (0 points) and the maximal possible score (100 points). This approach ensures a fairer comparison across different benchmarks, preventing any single benchmark from disproportionately influencing the final ranking.

For example, in a benchmark with two choices per question, a random baseline would score 50 points. This raw score would be normalized to 0, aligning scores between benchmarks and providing a clearer picture of model performance.

Enhanced Reproducibility and Interface

Hugging Face has updated the evaluation suite in collaboration with EleutherAI to improve reproducibility. The updates include support for delta weights (LoRA fine-tuning/adaptation), a new logging system compatible with the leaderboard, and using chat templates for evaluation. Additionally, manual checks were conducted on all implementations to ensure consistency and accuracy. The interface has also been significantly enhanced. Thanks to the Gradio team, notably Freddy Boulton, the new Leaderboard component loads data on the client side, making searches and column selections instantaneous. This improvement provides users with a faster and more seamless experience.

Prioritizing Community-Relevant Models

The new leaderboard introduces a “maintainer’s choice” category highlighting high-quality models from various sources, including major companies, startups, collectives, and individual contributors. This curated list aims to include state-of-the-art LLMs and prioritize evaluations of the most useful models for the community.

Voting on Model Relevance

A voting system has been implemented to manage the high volume of model submissions. Community members can vote for their preferred models, and those with the most votes will be prioritized for evaluation. This system ensures that the most anticipated models are evaluated first, reflecting the community’s interests.

In conclusion, the Open LLM Leaderboard v2 by Hugging Face represents a major milestone in evaluating language models. With its more challenging benchmarks, fairer scoring system, and improved reproducibility, it aims to push the boundaries of model development and provide more reliable insights into model capabilities. The Hugging Face team is optimistic about the future, expecting continued innovation and improvement as more models are evaluated on this new, more rigorous leaderboard.


Check out the Leaderboard and Details. All credit for this research goes to the researchers of this project. Also, don’t forget to follow us on Twitter

Join our Telegram Channel and LinkedIn Group.

If you like our work, you will love our newsletter..

Don’t Forget to join our 45k+ ML SubReddit


🚀 Create, edit, and augment tabular data with the first compound AI system, Gretel Navigator, now generally available! [Advertisement]


Asif Razzaq is the CEO of Marktechpost Media Inc.. As a visionary entrepreneur and engineer, Asif is committed to harnessing the potential of Artificial Intelligence for social good. His most recent endeavor is the launch of an Artificial Intelligence Media Platform, Marktechpost, which stands out for its in-depth coverage of machine learning and deep learning news that is both technically sound and easily understandable by a wide audience. The platform boasts of over 2 million monthly views, illustrating its popularity among audiences.



Source link

Related posts
AI

Enhance customer support with Amazon Bedrock Agents by integrating enterprise data APIs

10 Mins read
Generative AI has transformed customer support, offering businesses the ability to respond faster, more accurately, and with greater personalization. AI agents, powered…
AI

Build a multi-tenant generative AI environment for your enterprise on AWS

18 Mins read
While organizations continue to discover the powerful applications of generative AI, adoption is often slowed down by team silos and bespoke workflows….
AI

A New Google DeepMind Research Reveals a New Kind of Vulnerability that Could Leak User Prompts in MoE Model

3 Mins read
The routing mechanism of MoE models evokes a great privacy challenge. Optimize LLM large language model performance by selectively activating only a…

 

 

Leave a Reply

Your email address will not be published. Required fields are marked *