Get the latest tech news

A sleep-like consolidation mechanism for LLMs


Transformer-based large language models are increasingly used for long-horizon tasks; however, their attention mechanism scales poorly with context length. To handle this, we study a sleep-like consolidation mechanism in which a model periodically converts recent context into persistent fast weights before clearing its key-value cache. During sleep, the model performs $N$ offline recurrent passes over the accumulated context and updates the fast weights in its state-space model (SSM) blocks through a learned local rule. During inference, this shifts extra computation to sleep while preserving the latency of wake-time prediction. We test our method on controlled synthetic tasks, including cellular automata and multi-hop graph retrieval, as well as a realistic math reasoning task, on which a regular transformer as well as SSM-attention hybrid models fail. We then show that increasing sleep duration $N$ for our models improves performance, with the largest gains on examples that require deeper reasoning.

None

Get the Android app

Or read this on Hacker News

Read more on:

Photo of Sleep

Sleep

Photo of language models

language models

Related news:

News photo

Pixel Watch owners say sleep tracking is broken again (Updated)

News photo

Language Models Trained on State Media Sources Launder Propaganda

News photo

Solar-based sleep patterns compared to modern norms