nvidia/Nemotron-Personas-Belgium
Dataset em destaque no Hugging Face — 1.4 mil downloads. Nemotron-Personas-Belgium (NL) Een compound-AI-benadering van meertalige Belgische persona's, verankerd in reële verdelingen (FR) Une approche d'IA c…
Papers, modelos e datasets em alta no Hugging Face, além do blog oficial — com leitura editorial em português.
Dataset em destaque no Hugging Face — 1.4 mil downloads. Nemotron-Personas-Belgium (NL) Een compound-AI-benadering van meertalige Belgische persona's, verankerd in reële verdelingen (FR) Une approche d'IA c…
A comprehensive corpus and access layer for U.
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Introducing LifeSciBench, an expert-authored, expert-reviewed benchmark for evaluating how AI systems handle real-world life science research tasks and decisions.
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An object-centric residual reinforcement learning framework improves real-world vision-language-action model robustness through simulation-trained corrective policies that transfer…
Current memory agents lack reliable shared institutional deployment due to challenges in balancing utility, access control, and forgetting across multiple principals with diverse a…
Trajectory-Augmented Policy Optimization (TAPO) enhances large language model reasoning by creating explicit corrective trajectories that preserve erroneous reasoning while incorpo…
FAPO optimizes LLM pipelines by combining prompt editing with structural changes, demonstrating superior performance across multiple benchmarks and security tasks.