Skip to main content

Posts

Featured

In-Context Reinforcement Learning Under Non-Stationarity: How Agents Adapt from Context Alone

In-Context Reinforcement Learning Under Non-Stationarity: How Agents Adapt from Context Alone A recent survey, In-Context Reinforcement Learning under Non-Stationarity , frames a growing line of work around in-context reinforcement learning (ICRL) and explains why it is drawing renewed attention now. The survey points to decision-pretrained transformers, algorithm distillation, long-context meta-RL, and retrieval-augmented agents as key developments behind this renewed interest. Its central question is how a pretrained or fine-tuned decision model can infer latent task rules and improve future behavior from interaction context, without updating its parameters at test time, especially when the environment is non-stationary. [S1] [S1] Paper overview: ICRL and non-stationarity The survey introduced in source S1 focuses on ICRL in settings where the environment changes over time rather than staying fixed. In the source’s framing, non-stationarity matters because an agent cannot assume t...

Latest Posts

2026 LLM Research Trends: Search Agents, RL Credit Design, Internal Representations, and Inference Scaling

Multimodal Sentiment Analysis and Sparse Attention: Two Recent Papers, Two Different Efficiency Ideas

From Multimodal Depression Detection to Long-Context Language Models: 3 Recent arXiv Papers in Brief

Multimodal Depression Detection and Lightweight EEG: What Two Recent Papers Say About Practical Medical AI

Why Traditional LLM Agent Evaluation Falls Short: From Auditable Question Formation to Simulation Environments

How Audio and Visual Signals Move Inside Multimodal LLMs

How Can We Make LLM Agents More Reliable in Memory and Tool Use?

Three Recent Papers on LLM Agents: Memory, Workflow Verification, and Skill Creation

Safety, Efficiency, and Real-World Use of LLM Agents: Reading Four Recent arXiv Papers

Pre-Deployment Checks and Runtime Safety for AI Agents: Three Recent arXiv Papers