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Hugging Face - Blog

Waypoint-1.5: Higher-Fidelity Interactive Worlds for Everyday GPUs ALTK‑Evolve: On‑the‑Job Learning for AI Agents Safetensors is Joining the PyTorch Foundation Holo3: Breaking the Computer Use Frontier Any Custom Frontend with Gradio's Backend A New Framework for Evaluating Voice Agents (EVA) Bringing Robotics AI to Embedded Platforms: Dataset Recording, VLA Fine‑Tuning, and On‑Device Optimizations One-Shot Any Web App with Gradio's gr.HTML CUGA on Hugging Face: Democratizing Configurable AI Agents New in llama.cpp: Model Management Building Deep Research: How we Achieved State of the Art OVHcloud on Hugging Face Inference Providers 🔥 20x Faster TRL Fine-tuning with RapidFire AI Building for an Open Future - our new partnership with Google Cloud Aligning to What? Rethinking Agent Generalization in MiniMax M2 Building a Healthcare Robot from Simulation to Deployment with NVIDIA Isaac Sentence Transformers is joining Hugging Face! Unlock the power of images with AI Sheets Supercharge your OCR Pipelines with Open Models Google Cloud C4 Brings a 70% TCO improvement on GPT OSS with Intel and Hugging Face Get your VLM running in 3 simple steps on Intel CPUs Nemotron-Personas-India: Synthesized Data for Sovereign AI Introducing RTEB: A New Standard for Retrieval Evaluation Accelerating Qwen3-8B Agent on Intel® Core™ Ultra with Depth-Pruned Draft Models VibeGame: Exploring Vibe Coding Games Nemotron-Personas-Japan: ソブリン AI のための合成データセット Swift Transformers Reaches 1.0 – and Looks to the Future Smol2Operator: Post-Training GUI Agents for Computer Use SyGra: The One-Stop Framework for Building Data for LLMs and SLMs Gaia2 and ARE: Empowering the community to study agents Scaleway on Hugging Face Inference Providers 🔥 Democratizing AI Safety with RiskRubric.ai Public AI on Hugging Face Inference Providers 🔥 `LeRobotDataset:v3.0`: Bringing large-scale datasets to `lerobot` Visible Watermarking with Gradio Introducing the Palmyra-mini family: Powerful, lightweight, and ready to reason! 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Announcing NeurIPS 2025 E2LM Competition: Early Training Evaluation of Language Models
mouadh yagoubi, Yasser Dahou, Billel Mokeddem, Younes B, Phúc Lê · 2025-07-04 · via Hugging Face - Blog

Join us in building benchmarks that capture early-stage reasoning & scientific knowledge in LLMs!

The development of Large Language Models (LLMs) typically begins with a series of ablation experiments, wherein various model architectures, data mixtures, and training hyperparameters are systematically evaluated. This phase is commonly referred to as the early stages of training. During this period, researchers primarily monitor two key metrics: the training loss curve and evaluation scores. However, existing evaluation benchmarks often fail to provide meaningful or discriminative signals during these initial stages where LLMs are trained on a few tokens ~200B tokens, making it challenging to derive conclusive insights from ongoing experiments.

In this competition, we want to build together new benchmarks to effectively capture relevant signals in early training stages of LLMs, specifically for scientific knowledge domain.

How to participate

The competition will be hosted on a dedicated Hugging Face organization - to register to the competition please follow this registration link 👉 https://e2lmc.github.io/registration. Participants will have to submit their solutions, which will be based on lm-evaluation-harness library through a HuggingFace Space. An active leaderboard will be maintained during the competition to track promising submissions. The size of the models make them easily runnable for everyone, on free-tier Google Colab GPUs. We also provide a comprehensive starting kit including several notebooks to get started with the competition.

Evaluation metrics

Each submission will be evaluated using three different scores: signal quality score (ScoreSQ), ranking consistency score (ScoreRC) amd compliance with scientific knowledge score (ScoreCS). These criteria will be combined into a global score used for the final ranking. Additionally, two validation procedures will be systematically applied to all submissions: (i) verification of alignment with established scientific knowledge domains, and (ii) detection of potential information leakage, specifically the presence of the answer within the question prompt.The overall score is computed as a weighted sum:

Score = α1 × ScoreSQ + α2 × ScoreRC + α3 × ScoreCS

where, αSQ, αRC and αCS are weighting coefficients that reflect the relative importance of each criterion. We set the weights as α1 = 0.5, α2 = 0.1 and α3 = 0.4, thereby placing greater emphasis on signal quality and compliance to scientific knowledge, which we consider the most important metrics in evaluating submissions.

Participants will be able to compute the signal quality subscore locally using the provided model checkpoints of three Small Language Models 0.5B, 1B and 3B (ranging from 0 to 200 BT) along with the accompanying scoring algorithm (provided in a notebook in the starting kit). In contrast, the other two subscores cannot be computed independently, as the corresponding checkpoints—from 200 GT to 1 T tokens, as well as the 0.5 billion parameter model trained exclusively on web data—will remain hidden throughout the competition. Nonetheless, the global score will be automatically computed upon submission through the Hugging Face competition space, allowing participants to track their overall performance. This setup is intended to prevent overly customized solutions specifically tailored to the released checkpoints.

Further details about each evaluation metric, along with full scoring results on state-of-the-art benchmarks, are available in the competition proposal

image

Competition timeline

Competition kick-off 14 July 2025
Warm-up Phase 14 July 2025 - 17 August 2025 (5 weeks)
Development Phase 18 August 2025 - 26 October 2025 (10 weeks)
Final Phase 27 October 2025 - 03 November 2025 (3 weeks)
Results Announcement 04 November 2025
Winners' Fact Sheets & Code Release Due 22 November 2025
NeurIPS Competition Workshop Presentation 6 or 7 December 2025

Prizes

  • 🥇 1st Place: 6,000 USD
  • 🥈 2nd Place: 4,000 USD
  • 🥉 3rd Place: 2,000 USD
  • 🎓 Student Awards: 2x 2,000 USD for the top 2 solutions submitted by participants justifying a student status

Support and contact

For inquiries and support, reach out to the task coordinators at e2lmc@tii.ae. You can also join our discord channel here to directly interact with us.

Affiliated Institutions

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