krishnakoushik225/GenDiff-PEFT-Efficient-Conditional-Diffusion-Optimization
Parameter-efficient optimization of conditional diffusion models using multi-resolution attention, classifier-free guidance ablation, and DDIM sampling — achieving 17% FID improvement with 85% reduced training time.
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Mar 03, 2026
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