AI RESEARCH
DynaMiCS: Fine-tuning LLMs with Performance Constraints using Dynamic Mixtures
arXiv CS.LG
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ArXi:2605.10770v1 Announce Type: new Multi-domain fine-tuning of large language models requires improving performance on target domains while preserving performance on constrained domains, such as general knowledge, instruction following, or safety evaluations. Existing data mixing strategies rely on fixed heuristics or adaptive rules that cannot explicitly enforce preservation of such capabilities. We propose DynaMiCS, a dynamic mixture optimizer that casts multi-domain fine-tuning as a constrained optimization problem.