Section 01
LLM-guided Program Evolution: Guide to the New Paradigm for Automatic Discovery of Quantum LDPC Codes
This article introduces an evolutionary workflow driven by large language models (LLMs) for the automatic discovery of bivariate bicycle codes and their perturbed variants. The method generates candidate codes by mutating Python programs via LLMs. After screening 200,000 candidate codes over approximately 140 hours of computation and with an LLM inference cost of $400, it finally discovered 465 distinct quantum codes (including 97 CSS codes and 368 non-CSS perturbed variants). This paradigm opens up a new path for quantum LDPC code discovery, combining AI with domain knowledge and applicable to complex design space exploration.