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Decentralized Instruction Tuning: Conflict-Aware Splitting and Weight Merging

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Instruction tuning aligns large language models, including multimodal ones, with diverse user intents, but scaling to heterogeneous mixtures is hindered by gradient interference and bandwidth-heavy synchronization. We ask whether these two bottlenecks can be addressed jointly by training parts of the mixture independently and reconciling them once in parameter space. We develop a local quadratic theory inside a shared flat basin that yields three results: weight merging produces a curvature-weighted variance reduction; PCA-aligned conflict splitting maximizes this gain along high-curvature directions; and merging additionally acts as spectral filtering with implicit norm regularization. These results directly motivate MERIT, a decentralized merge-ready instruction-tuning pipeline that estimates dataset-level gradient conflicts, partitions the mixture along the top PCA conflict axes, fine-tunes each partition independently with no inter-partition communication, and merges once via token-weighted averaging. On Qwen2.5-VL-3B with 136 Vision-FLAN tasks, MERIT improves the 8-benchmark average from 54.3 (joint training) to 57.0. The same recipe scales to a 7B model on a 1.6M-example, 176-source mixture -- matching or exceeding centralized joint training with minimal cost overhead -- and transfers to text-only FLAN. Our code is available at https://github.com/naver-ai/merit.

Minsik Choi, Geewook Kim• 2026

Related benchmarks

TaskDatasetResultRank
Image ReasoningMathVista
Accuracy43
17
Image ReasoningMMMU
Accuracy44.8
17
General MCQAMMBench
Accuracy75.8
10
User Preference & FluencyLLaVA-W
Score66.2
10
User Preference & FluencyMMVet
MMVet User Preference Score39.1
10
General MCQASEEDBench
Score71.5
9
Text-Rich VQAAI2D
Score71.9
9
Text-Rich VQATextVQA
Score79.8
8
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