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Special Issue: 20th International Workshop on Algorithms, Models and Tools for Parallel Computing on Heterogeneous Platforms (Heteropar'22)

CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE(2023)

Univ Lisbon

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Abstract
Heterogeneity is emerging as one of the most profound and challenging characteristics of parallel environments. From the macro level, where distributed systems are built around heterogeneous networks connecting multiple nodes with computing devices of diverse architectures, to the micro level, where ever-deeper memory hierarchies and specialized accelerators are increasingly common, the impact of heterogeneity on parallel processing is rapidly increasing. Traditional parallel algorithms, programming environments and tools designed for legacy homogeneous multiprocessors achieve at best a small fraction of the efficiency and performance expected from highly heterogeneous parallel computing systems. Therefore, innovative models, algorithms, programming environments and tools are required to efficiently tackle the challenges and fully exploit the resources of modern parallel and heterogeneous platforms. The international workshop on algorithms, models and tools for parallel computing on heterogeneous platforms (HeteroPar) is a premium forum for researchers on algorithms, programming languages, tools, and theoretical models for efficiently solving complex problems on heterogeneous parallel platforms. The 14th edition of HeteroPar (2022) took place in Glasgow, Scotland, co-located with the Euro-Par annual international conference. The workshop includes one keynote and 11 technical presentations. The selected papers cover a good spectrum of research topics in heterogeneous computing showing the challenges present on these modern platforms, hopefully indicating to interested readers possible directions for further research in this field. On behalf of every reader of this Special Issue, the Guest Editors would like to thank all the authors who submitted their papers and worked hard to respond to Reviewers' requests in due time, all the anonymous reviewers who participated in the review process providing helpful suggestions, as well as the Editor in Chief and the entire staff of Wiley's Concurrency and Computation: Practice and Experience who oversaw the whole process.
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