๐ŸŽ“How I Study AIHISA
๐Ÿ“–Read
๐Ÿ“„Papers๐Ÿ“ฐBlogs๐ŸŽฌCourses
๐Ÿ’กLearn
๐Ÿ›ค๏ธPaths๐Ÿ“šTopics๐Ÿ’กConcepts๐ŸŽดShorts
๐ŸŽฏPractice
๐Ÿ“Daily Log๐ŸŽฏPrompts๐Ÿง Review
SearchSettings
How I Study AI - Learn AI Papers & Lectures the Easy Way

Papers2

AllBeginnerIntermediateAdvanced
All SourcesarXiv
#context rot

LOCA-bench: Benchmarking Language Agents Under Controllable and Extreme Context Growth

Intermediate
Weihao Zeng, Yuzhen Huang et al.Feb 8arXiv

LOCA-bench is a test that challenges AI agents to work correctly as their to-do list and background information grow very, very long.

#LOCA-bench#long-context agents#context rot

An Information Theoretic Perspective on Agentic System Design

Intermediate
Shizhe He, Avanika Narayan et al.Dec 25arXiv

The paper shows that many AI systems work best when a small 'compressor' model first shrinks long text into a short, info-packed summary and a bigger 'predictor' model then reasons over that summary.

#agentic systems#compressor-predictor#mutual information