πŸŽ“How I Study AIHISA
πŸ“–Read
πŸ“„PapersπŸ“°Blogs🎬Courses
πŸ’‘Learn
πŸ›€οΈPathsπŸ“šTopicsπŸ’‘Concepts🎴Shorts
🎯Practice
πŸ“Daily Log🎯Prompts🧠Review
SearchSettings
How I Study AI - Learn AI Papers & Lectures the Easy Way

Papers2

AllBeginnerIntermediateAdvanced
All SourcesarXiv
#pass@K

Tool-R0: Self-Evolving LLM Agents for Tool-Learning from Zero Data

Beginner
Emre Can Acikgoz, Cheng Qian et al.Feb 24arXiv

Tool-R0 teaches a language model to use software tools (like APIs) with zero human-made training data.

#self-play reinforcement learning#tool calling#function calling

Not triaged yet

Thinking with Map: Reinforced Parallel Map-Augmented Agent for Geolocalization

Beginner
Yuxiang Ji, Yong Wang et al.Jan 8arXiv

The paper teaches an AI to act like a careful traveler: it looks at a photo, forms guesses about where it might be, and uses real map tools to check each guess.

#image geolocalization#map-augmented agent#Thinking with Map

Not triaged yet