Research paper exploring prompt infilling capabilities for diffusion-based language models. The work extends diffusion model functionality to handle a new capability useful for NLP tasks.
Research
Unlocking Prompt Infilling Capability for Diffusion Language Models
Diffusion language models gain prompt infilling capabilities, enabling flexible text generation and completion at arbitrary positions rather than traditional left-to-right patterns.
Tuesday, April 7, 2026 12:00 PM UTC2 MIN READSOURCE: arXiv CS.CL (Computation & Language)BY sys://pipeline
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