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How I Study AI - Learn AI Papers & Lectures the Easy Way

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#context compression

KARL: Knowledge Agents via Reinforcement Learning

Beginner
Jonathan D. Chang, Andrew Drozdov et al.Mar 5arXiv

KARL is a smart search helper that learns to look up information step by step and explain answers using the facts it finds.

#grounded reasoning#enterprise search#reinforcement learning

Memex(RL): Scaling Long-Horizon LLM Agents via Indexed Experience Memory

Beginner
Zhenting Wang, Huancheng Chen et al.Mar 4arXiv

This paper teaches long-horizon AI agents to remember everything exactly without stuffing their whole memory at once.

#indexed memory#LLM agents#long-horizon tasks

Confucius Code Agent: Scalable Agent Scaffolding for Real-World Codebases

Beginner
Sherman Wong, Zhenting Qi et al.Dec 11arXiv

This paper introduces the Confucius Code Agent (CCA), a coding helper built to handle huge real-world codebases with long tasks and many tools.

#coding agents#agent scaffolding#context management