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@HuggingPapers

Top AI papers on @huggingface this week: Language feedback for RL, training agents by talking, and fixing LLM story consistency - Bootstrapping Exploration with Group-Level Natural Language Feedback in Reinforcement Learning - Geometry-Guided Reinforcement Learning for Multi-view Consistent 3D Scene Editing - Penguin-VL by Tencent: Exploring the Efficiency Limits of VLM with LLM-based Vision Encoders - OpenClaw-RL: Train Any Agent Simply by Talking - Lost in Stories: Consistency Bugs in Long Story Generation by LLMs - Holi-Spatial: Evolving Video Streams into Holistic 3D Spatial Intelligence - Spatial-TTT: Streaming Visual-based Spatial Intelligence with Test-Time Training - Flash-KMeans: Fast and Memory-Efficient Exact K-Means - Thinking to Recall: How Reasoning Unlocks Parametric Knowledge in LLMs - LoGeR: Long-Context Geometric Reconstruction with Hybrid Memory

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