Section 01
OPSD Tool Guide: Local Large Model Inference Optimization Scheme Based on In-Strategy Self-Distillation
OPSD is a local large language model inference optimization tool for Windows platforms. Its core uses a "student-teacher" dual-role architecture to implement in-strategy self-distillation, and improves the token-level output quality of models in tasks such as logical reasoning and mathematical computation through contrastive learning. This tool does not rely on external labeled data, realizes a closed loop of inference and learning, and allows the model to continuously evolve during use.