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FlowLM: Few-Step Language Modeling via Diffusion-to-Flow Adaptation

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We present FlowLM, a flow matching language model transformed from pre-trained diffusion language models via efficient fine-tuning. By re-aligning the curved sampling trajectories of diffusion models into straight-line flows, FlowLM enables high quality few-step generation that rivals or even outperforms the quality of 2,000-step diffusion sampling with very few training epochs. Remarkably, finetuned FlowLM reaches performance saturation with only half as many training epochs as training from scratch, both approaches greatly outperforming the original diffusion model, thereby validating our method. Furthermore, we validate a more effective training objective for flow matching: predicting clean data to consistently guide the sampling process towards the true data distribution. Empirical results demonstrate that our approach is highly effective for high-quality, few-step text generation.

Runzhe Zhang, Letian Chen, Wenpeng Zhang, Zhouhan Lin, Peilin Zhao• 2026

Related benchmarks

TaskDatasetResultRank
Question GenerationQuestion Generation
BLEU0.1596
13
Question GenerationQuestion Generation
BLEU0.1634
9
ParaphraseParaphrase dataset
BLEU0.2001
5
Text SimplificationText Simplification dataset
BLEU26.01
5
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