Section 01
Core Introduction to the DistillSpec Research Project
Distill-Spec-Research is an experimental machine learning system research project released by Rmuk655 on GitHub on May 26, 2026, focusing on speculative decoding, knowledge distillation, and efficient LLM inference. The project adopts an "intentionally narrow" design philosophy (single research direction, baseline architecture, evaluation plan) to ensure experimental reproducibility. Its core innovation lies in improving the DistillSpec framework to address the alignment bottleneck between draft models and target models, thereby enhancing acceptance rate and speedup ratio.