EPISODE · Jul 28, 2025 · 11 MIN
Learning without training: The implicit dynamics of in-context learning
from Best AI papers explained · host Enoch H. Kang
This academic paper proposes a novel explanation for in-context learning (ICL) in Large Language Models (LLMs), a phenomenon where LLMs adapt to new patterns at inference time without explicit weight updates. The authors introduce the concept of a contextual block, which generalizes a transformer block by stacking a contextual layer (like self-attention) with a neural network. They demonstrate, through theoretical derivations and experimental verification, that the context provided in the prompt implicitly modifies the weights of the neural network's first layer, effectively performing a low-rank weight update. This implicit weight adjustment behaves similarly to a gradient descent learning dynamics, suggesting that ICL isn't solely about the internal workings of self-attention but a broader property of neural networks transferring input modifications to their weight structures.
What this episode covers
This academic paper proposes a novel explanation for in-context learning (ICL) in Large Language Models (LLMs), a phenomenon where LLMs adapt to new patterns at inference time without explicit weight updates. The authors introduce the concept of a contextual block, which generalizes a transformer block by stacking a contextual layer (like self-attention) with a neural network. They demonstrate, through theoretical derivations and experimental verification, that the context provided in the prompt implicitly modifies the weights of the neural network's first layer, effectively performing a low-rank weight update. This implicit weight adjustment behaves similarly to a gradient descent learning dynamics, suggesting that ICL isn't solely about the internal workings of self-attention but a broader property of neural networks transferring input modifications to their weight structures.
NOW PLAYING
Learning without training: The implicit dynamics of in-context learning
No transcript for this episode yet
Similar Episodes
Mar 31, 2026 ·54m
Mar 27, 2026 ·14m
Mar 24, 2026 ·42m
Mar 20, 2026 ·42m
Mar 17, 2026 ·41m
Mar 13, 2026 ·44m