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

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SWE-World: Building Software Engineering Agents in Docker-Free Environments

Intermediate
Shuang Sun, Huatong Song et al.Feb 3arXiv

SWE-World lets code-fixing AI agents practice and learn without heavy Docker containers by using smart models that pretend to be the computer and tests.

#SWE-World#software engineering agents#Docker-free training

SWE-Master: Unleashing the Potential of Software Engineering Agents via Post-Training

Intermediate
Huatong Song, Lisheng Huang et al.Feb 3arXiv

SWE-Master is a fully open, step-by-step recipe for turning a regular coding model into a strong software-fixing agent that works across many steps, files, and tests.

#SWE-Master#software engineering agent#long-horizon SFT

SERA: Soft-Verified Efficient Repository Agents

Intermediate
Ethan Shen, Danny Tormoen et al.Jan 28arXiv

SERA is a new, low-cost way to train coding helpers (agents) that learn the style and secrets of your own codebase.

#SERA#Soft-Verified Generation#soft verification

MemGovern: Enhancing Code Agents through Learning from Governed Human Experiences

Beginner
Qihao Wang, Ziming Cheng et al.Jan 11arXiv

MemGovern teaches code agents to learn from past human fixes on GitHub by turning messy discussions into clean, reusable 'experience cards.'

#MemGovern#experience governance#agentic search

SWE-Lego: Pushing the Limits of Supervised Fine-tuning for Software Issue Resolving

Intermediate
Chaofan Tao, Jierun Chen et al.Jan 4arXiv

SWE-Lego shows that a simple training method called supervised fine-tuning (SFT), when done carefully, can teach AI to fix real software bugs very well.

#SWE-Lego#Supervised Fine-Tuning#Error Masking