Abstract
Welcome to the International Symposium on High-Performance Parallel and Distributed Computing (ACM HPDC 2022), the premier conference at the intersection of high performance and distributed computing, now in our 30th year. ACM HPDC has a focus on high-performance parallel and distributed computing topics over the years including platforms spanning clouds, clusters, grids, edge, big data, massively multicore, and extreme-scale computing systems. One of the unique features of HPDC is that it welcomes a blend of ideas ranging from applied research in the form of experience papers on operational deployments and applications, and more fundamental research in parallel and distributed techniques and systems. The conference has always appreciated the heroic work taken to deploy real systems and applications and the insights gained by live measurement and experimentation. The HPDC 2022 program is no exception with topics ranging from clouds, edge/IoT, big data ecosystems, to novel post-Moore computing technologies, to name a few. In addition to regular research papers, this year also saw the introduction of a new paper category on open-source tools and data papers, to encourage the inclusion of new methods and tools in the program. In addition to a strong technical program, the conference has three exciting keynote addresses to be delivered by Dr. Franck Cappello (Argonne National Labs), Dr. Sudhanva Gurumurthi (AMD) and Prof. Manish Parashar (University of Utah). HPDC 2022 achievement award was given to Dr. Franck Cappello for pioneering contributions in methods, tools, and testbeds for resilient high performance parallel and distributed computing. This year the conference will include seven workshops on cutting edge topics including edge and serverless computing, AI/HPC, and performance modeling and telemetry. The program will also include a poster session highlighting emerging HPDC research.
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