The Pensieve Paradigm: Stateful Language Models Mastering Their Own Context
Abstract
In the world of Harry Potter, when Dumbledore's mind is overburdened, he extracts memories into a Pensieve to be revisited later. In the world of AI, while we possess the Pensieve—mature databases and retrieval systems, our models inexplicably lack the ``wand'' to operate it. They remain like a Dumbledore without agency, passively accepting a manually engineered context as their entire memory. This work finally places the wand in the model's hand. We introduce StateLM, a new class of foundation models endowed with an internal reasoning loop to manage their own state. We equip our model with a suite of memory tools, such as context pruning, document indexing, and note-taking, and train it to actively manage these tools. By learning to dynamically engineering its own context, our model breaks free from the architectural prison of a fixed window. Experiments across various model sizes demonstrate StateLM's effectiveness across diverse scenarios. On long-document QA tasks, StateLMs consistently outperform standard LLMs across all model scales; on the chat memory task, they achieve absolute accuracy improvements of 10% to 20% over standard LLMs. On the deep research task BrowseComp-Plus, the performance gap becomes even more pronounced: StateLM achieves up to 52% accuracy, whereas standard LLM counterparts struggle around 5%. Ultimately, our approach shifts LLMs from passive predictors to state-aware agents where reasoning becomes a stateful and manageable process.
Cite
Text
Liu et al. "The Pensieve Paradigm: Stateful Language Models Mastering Their Own Context." International Conference on Learning Representations, 2026.Markdown
[Liu et al. "The Pensieve Paradigm: Stateful Language Models Mastering Their Own Context." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/liu2026iclr-pensieve/)BibTeX
@inproceedings{liu2026iclr-pensieve,
title = {{The Pensieve Paradigm: Stateful Language Models Mastering Their Own Context}},
author = {Liu, Xiaoyuan and Liang, Tian and Ma, Dongyang and Zhou, Deyu and Mi, Haitao and He, Pinjia and Wang, Yan},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/liu2026iclr-pensieve/}
}