LGMar 16

W2T: LoRA Weights Already Know What They Can Do

arXiv:2603.1599083.91 citationsh-index: 11Has Code
Predicted impact top 12% in LG · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses the challenge of efficiently analyzing and retrieving LoRA adapters for researchers and practitioners in machine learning, though it is incremental as it builds on existing LoRA methods.

The paper tackled the problem of directly reading task-specific information from LoRA checkpoint weights without running the base model or accessing training data, and achieved strong results on attribute classification, performance prediction, and adapter retrieval across language and vision collections.

Each LoRA checkpoint compactly stores task-specific updates in low-rank weight matrices, offering an efficient way to adapt large language models to new tasks and domains. In principle, these weights already encode what the adapter does and how well it performs. In this paper, we ask whether this information can be read directly from the weights, without running the base model or accessing training data. A key obstacle is that a single LoRA update can be factorized in infinitely many ways. Without resolving this ambiguity, models trained on the factors may fit the particular factorization rather than the underlying update. To this end, we propose \methodfull, which maps each LoRA update to a provably canonical form via QR decomposition followed by SVD, so that all equivalent factorizations share the same representation. The resulting components are then tokenized and processed by a Transformer to produce a weight-space embedding. Across language and vision LoRA collections, W2T achieves strong results on attribute classification, performance prediction, and adapter retrieval, demonstrating that LoRA weights reliably indicate model behavior once factorization ambiguity is removed. Code is available at https://github.com/xiaolonghan2000/Weight2Token.

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