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

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All SourcesarXiv
#Multi-hop Question Answering

EvoFSM: Controllable Self-Evolution for Deep Research with Finite State Machines

Intermediate
Shuo Zhang, Chaofa Yuan et al.Jan 14arXiv

EvoFSM is a way for AI agents to improve themselves safely by editing a clear flowchart (an FSM) instead of rewriting everything blindly.

#Finite State Machine#Structured Self-Evolution#Atomic Operations

AT$^2$PO: Agentic Turn-based Policy Optimization via Tree Search

Intermediate
Zefang Zong, Dingwei Chen et al.Jan 8arXiv

AT2PO is a new way to train AI agents that work in several turns, like asking the web a question, reading the result, and trying again.

#Agentic Reinforcement Learning#Turn-level Optimization#Tree Search

QuCo-RAG: Quantifying Uncertainty from the Pre-training Corpus for Dynamic Retrieval-Augmented Generation

Intermediate
Dehai Min, Kailin Zhang et al.Dec 22arXiv

QuCo-RAG is a new way to decide when an AI should look things up while it writes, using facts from its training data instead of its own shaky confidence.

#Dynamic RAG#Retrieval-Augmented Generation#Uncertainty Quantification