Best AI papers explained
A podcast by Enoch H. Kang
437 Episodes
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General Intelligence Requires Reward-based Pretraining
Published: 6/25/2025 -
Deep Learning is Not So Mysterious or Different
Published: 6/25/2025 -
AI Agents Need Authenticated Delegation
Published: 6/25/2025 -
Probabilistic Modelling is Sufficient for Causal Inference
Published: 6/25/2025 -
Not All Explanations for Deep Learning Phenomena Are Equally Valuable
Published: 6/25/2025 -
e3: Learning to Explore Enables Extrapolation of Test-Time Compute for LLMs
Published: 6/17/2025 -
Extrapolation by Association: Length Generalization Transfer in Transformers
Published: 6/17/2025 -
Uncovering Causal Hierarchies in Language Model Capabilities
Published: 6/17/2025 -
Generalization or Hallucination? Understanding Out-of-Context Reasoning in Transformers
Published: 6/17/2025 -
Improving Treatment Effect Estimation with LLM-Based Data Augmentation
Published: 6/17/2025 -
LLM Numerical Prediction Without Auto-Regression
Published: 6/17/2025 -
Self-Adapting Language Models
Published: 6/17/2025 -
Why in-context learning models are good few-shot learners?
Published: 6/17/2025 -
Take Caution in Using LLMs as Human Surrogates: Scylla Ex Machina∗
Published: 6/14/2025 -
The Logic of Machines: The AI Reasoning Debate
Published: 6/12/2025 -
Layer by Layer: Uncovering Hidden Representations in Language Models
Published: 6/12/2025 -
Causal Attribution Analysis for Continuous Outcomes
Published: 6/12/2025 -
Training a Generally Curious Agent
Published: 6/12/2025 -
Estimation of Treatment Effects Under Nonstationarity via Truncated Difference-in-Q’s
Published: 6/12/2025 -
Strategy Coopetition Explains the Emergence and Transience of In-Context Learning
Published: 6/12/2025
Cut through the noise. We curate and break down the most important AI papers so you don’t have to.