LGApr 20

Train Separately, Merge Together: Modular Post-Training with Mixture-of-Experts

arXiv:2604.1847350.1h-index: 5
Predicted impact top 1% in LG · last 90 daysOriginality Highly original
AI Analysis

For practitioners extending language models to new domains, BAR offers a scalable alternative to monolithic retraining that prevents capability degradation and reduces computational cost.

BAR enables modular post-training of language models by training independent domain experts and composing them via a Mixture-of-Experts architecture, achieving an overall score of 49.1 (averaged across 7 categories) at 7B scale, matching or exceeding retraining baselines (47.8 without mid-training, 50.5 with) while avoiding catastrophic forgetting and reducing cost.

Extending a fully post-trained language model with new domain capabilities is fundamentally limited by monolithic training paradigms: retraining from scratch is expensive and scales poorly, while continued training often degrades existing capabilities. We present BAR (Branch-Adapt-Route), which trains independent domain experts, each through its own mid-training, supervised finetuning, and reinforcement learning pipeline, and composes them via a Mixture-of-Experts architecture with lightweight router training. Unlike retraining approaches that mix all domains and require full reprocessing for any update (with cost scaling quadratically), BAR enables updating individual experts independently with linear cost scaling and no degradation to existing domains. At the 7B scale, with experts for math, code, tool use, and safety, BAR achieves an overall score of 49.1 (averaged across 7 evaluation categories), matching or exceeding re-training baselines (47.8 without mid-training, 50.5 with). We further show that modular training provides a structural advantage: by isolating each domain, it avoids the catastrophic forgetting that occurs when late-stage RL degrades capabilities from earlier training stages, while significantly reducing the cost and complexity of updating or adding a domain. Together, these results suggest that decoupled, expert-based training is a scalable alternative to monolithic retraining for extending language models.

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