{"id":1171674,"date":"2026-05-12T15:59:44","date_gmt":"2026-05-12T22:59:44","guid":{"rendered":"https:\/\/cm-edgetun.pages.dev\/en-us\/research\/publication\/data-selection-via-optimal-control-for-language-models\/"},"modified":"2026-05-13T16:41:41","modified_gmt":"2026-05-13T23:41:41","slug":"data-selection-via-optimal-control-for-language-models","status":"publish","type":"msr-research-item","link":"https:\/\/cm-edgetun.pages.dev\/en-us\/research\/publication\/data-selection-via-optimal-control-for-language-models\/","title":{"rendered":"Data Selection via Optimal Control for Language Models"},"content":{"rendered":"<p>This work investigates the selection of high-quality pre-training data from massive corpora to enhance LMs&#8217; capabilities for downstream usage. We formulate data selection as a generalized Optimal Control problem, which can be solved theoretically by Pontryagin&#8217;s Maximum Principle (PMP), yielding a set of necessary conditions that characterize the relationship between optimal data selection and LM training dynamics. Based on these theoretical results, we introduce PMP-based Data Selection (PDS), a framework that approximates optimal data selection by solving the PMP conditions. In our experiments, we adopt PDS to select data from CommmonCrawl and show that the PDS-selected corpus accelerates the learning of LMs and constantly boosts their performance on a wide range of downstream tasks across various model sizes. Moreover, the benefits of PDS extend to ~400B models trained on ~10T tokens, as evidenced by the extrapolation of the test loss curves according to the Scaling Laws. PDS also improves data utilization when the pre-training data is limited, by reducing the data demand by 1.8 times, which helps mitigate the quick exhaustion of available web-crawled corpora. Our code, model, and data can be found at https:\/\/github.com\/microsoft\/LMOps\/tree\/main\/data_selection.<\/p>\n","protected":false},"excerpt":{"rendered":"<p>This work investigates the selection of high-quality pre-training data from massive corpora to enhance LMs&#8217; capabilities for downstream usage. We formulate data selection as a generalized Optimal Control problem, which can be solved theoretically by Pontryagin&#8217;s Maximum Principle (PMP), yielding a set of necessary conditions that characterize the relationship between optimal data selection and LM 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