Performance Prediction
Performance prediction aims to estimate the performance of systems or algorithms without exhaustive testing, saving significant computational resources and time. Current research focuses on developing accurate predictive models using diverse techniques, including graph neural networks, transformer-based models, and ensemble learning methods, often leveraging features extracted from various data representations (e.g., molecular structures, program code, architectural graphs). These advancements are crucial for optimizing resource allocation in diverse fields, from biopharmaceutical manufacturing and large language model development to algorithm selection and engineering design, enabling more efficient and effective decision-making.
Papers
AIO-P: Expanding Neural Performance Predictors Beyond Image Classification
Keith G. Mills, Di Niu, Mohammad Salameh, Weichen Qiu, Fred X. Han, Puyuan Liu, Jialin Zhang, Wei Lu, Shangling Jui
GENNAPE: Towards Generalized Neural Architecture Performance Estimators
Keith G. Mills, Fred X. Han, Jialin Zhang, Fabian Chudak, Ali Safari Mamaghani, Mohammad Salameh, Wei Lu, Shangling Jui, Di Niu