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Paper#llm🔬 ResearchAnalyzed: Jan 3, 2026 19:20

Improving LLM Pruning Generalization with Function-Aware Grouping

Published:Dec 28, 2025 17:26
1 min read
ArXiv

Analysis

This paper addresses the challenge of limited generalization in post-training structured pruning of Large Language Models (LLMs). It proposes a novel framework, Function-Aware Neuron Grouping (FANG), to mitigate calibration bias and improve downstream task accuracy. The core idea is to group neurons based on their functional roles and prune them independently, giving higher weight to tokens correlated with the group's function. The adaptive sparsity allocation based on functional complexity is also a key contribution. The results demonstrate improved performance compared to existing methods, making this a valuable contribution to the field of LLM compression.
Reference

FANG outperforms FLAP and OBC by 1.5%--8.5% in average accuracy under 30% and 40% sparsity.

Research#Aerodynamics🔬 ResearchAnalyzed: Jan 10, 2026 07:50

Geese Master Stationary Takeoff: Unveiling Kinematic and Aerodynamic Secrets

Published:Dec 24, 2025 02:35
1 min read
ArXiv

Analysis

This article's finding of synergistic wing kinematics and enhanced aerodynamics in geese stationary takeoffs is a significant contribution to understanding avian flight. Further research could apply these principles to the design of more efficient and maneuverable aerial vehicles.
Reference

Geese achieve stationary takeoff via synergistic wing kinematics and enhanced aerodynamics.

Hacking Flappy Bird with Machine Learning

Published:Feb 15, 2014 22:45
1 min read
Hacker News

Analysis

The article describes a project using machine learning to play the game Flappy Bird. The focus is likely on the application of AI techniques to a simple game environment, potentially for educational or demonstration purposes. The simplicity of the game makes it a good testbed for AI algorithms.
Reference