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

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AllBeginnerIntermediateAdvanced
All SourcesarXiv
#Supervised fine-tuning

Towards Automated Kernel Generation in the Era of LLMs

Intermediate
Yang Yu, Peiyu Zang et al.Jan 22arXiv

AI programs called LLMs can now help write the tiny, super-fast pieces of code (kernels) that make GPUs run AI models efficiently.

#LLM-driven kernel generation#GPU kernels#CUDA

ChartVerse: Scaling Chart Reasoning via Reliable Programmatic Synthesis from Scratch

Intermediate
Zheng Liu, Honglin Lin et al.Jan 20arXiv

ChartVerse is a new way to make lots of tricky, realistic charts and perfectly checked questions so AI can learn to read charts better.

#Chart reasoning#Vision-Language Models#Rollout Posterior Entropy

MemoBrain: Executive Memory as an Agentic Brain for Reasoning

Intermediate
Hongjin Qian, Zhao Cao et al.Jan 12arXiv

MemoBrain is like a helpful co-pilot for AI that keeps important thoughts neat and ready so the main thinker (the agent) doesn’t get overwhelmed.

#Executive memory#Tool-augmented agents#Context budget

T-pro 2.0: An Efficient Russian Hybrid-Reasoning Model and Playground

Intermediate
Dmitrii Stoianov, Danil Taranets et al.Dec 11arXiv

T-pro 2.0 is an open Russian language model that can answer quickly or think step by step, so you can pick speed or accuracy when you need it.

#T-pro 2.0#Russian LLM#Hybrid reasoning