Architecture Perspective
Architectural perspectives in machine learning and related fields encompass the design and optimization of system structures to improve performance, efficiency, and robustness. Current research focuses on exploring various model architectures, including transformers, recurrent neural networks, and graph neural networks, as well as optimizing algorithms like those used in reinforcement learning and federated learning. This research is significant because improved architectures lead to more efficient and effective systems across diverse applications, from personalized recommendations and speech recognition to medical image analysis and drug discovery.
Papers
Towards Human-Bot Collaborative Software Architecting with ChatGPT
Aakash Ahmad, Muhammad Waseem, Peng Liang, Mahdi Fehmideh, Mst Shamima Aktar, Tommi Mikkonen
AutoML for neuromorphic computing and application-driven co-design: asynchronous, massively parallel optimization of spiking architectures
Angel Yanguas-Gil, Sandeep Madireddy