FlowLM: Few-Step Language Modeling via Diffusion-to-Flow Adaptation
Signal
78
Hype
25
In three linesFlowLM converts pre-trained diffusion language models into flow matching models via efficient fine-tuning. By realigning curved diffusion trajectories into straight-line flows, FlowLM achieves high-quality few-step text generation rivaling 2,000-step diffusion sampling. Performance saturation is reached with half the training epochs compared to training from scratch.Read source
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