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arxiv:2606.06087

LatentSkill: From In-Context Textual Skills to In-Weight Latent Skills for LLM Agents

Published on Jun 4
· Submitted by
Tianyi Xu
on Jun 9
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Abstract

LatentSkill enables efficient deployment of textual skills in agent systems by converting them into LoRA adapters stored in weight space, reducing context overhead while maintaining modularity and composability.

Agent systems increasingly use textual skills to encode reusable task procedures, but injecting these skills into the prompt at every step incurs substantial context overhead and exposes skill content as plaintext. We present LatentSkill, a framework that converts textual skills into plug-and-play LoRA adapters through a pretrained hypernetwork. LatentSkill stores skill knowledge in weight space rather than context space, removing per-step skill tokens while preserving modular loading, scaling, and composition. On ALFWorld and Search-QA, LatentSkill outperforms the corresponding in-context skill baseline while using substantially fewer prefill tokens: it improves ALFWorld success by 21.4 and 13.4 points on the seen and unseen splits with 64.1% fewer prefill tokens, and improves Search-QA exact match by 3.0 points with 72.2% lower skill-token overhead. Further analysis shows that generated skill LoRAs form a structured semantic geometry, can be precisely controlled via the LoRA scaling coefficient, and can be composed through parameter-space arithmetic when skill components are aligned. These findings suggest that weight-space skills provide an efficient, modular, and less exposed substrate for extending LLM agents.

Community

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Shanghai Jiao Tong University, Sun Yat-sen University, Shanghai Innovation Institute, and OPPO Research Institute unveil LatentSkil, turning agent text skills into plug-and-play weight skills.

Neat paper. Storing agent skills as LoRA adapters via a hypernetwork instead of clogging up the context window seems like a much cleaner way to handle reusable procedures. I like that it offloads those tokens to weight space while actually improving performance on ALFWorld and Search-QA.

How does the hypernetwork handle the composition of different skills through parameter-space arithmetic, and are there limits to how many skill LoRAs you can stack before the model performance degrades?

I made a podcast on it with ResearchPod, it makes it easy to get the key concepts on the go:
https://researchpod.app/episode/26850a14-8165-46d4-a424-d570a8411aa5

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