Enhancing self-adaptation for efficient decision-making at run-time in streaming applications on multicores


Contributors:
  • Marco Danelutto
  • Massimo Torquati
  • Dalvan Griebler
  • Luiz Gustavo Fernandes
The Journal of Supercomputing | 2025

Parallel computing is very important to accelerate the performance of computing applications. Moreover, parallel applications are expected to continue executing in more dynamic environments and react to changing conditions. In this context, applying self-adaptation is a potential solution to achieve a higher level of autonomic abstractions and runtime responsiveness. In our research, we aim to explore and assess the possible abstractions attainable through the transparent management of parallel executions by self-adaptation. Our primary objectives are to expand the adaptation space to better reflect real-world applications and assess the potential for self-adaptation to enhance efficiency. We provide the following scientific contributions: (I) A conceptual framework to improve the designing of self-adaptation; (II) A new decision-making strategy for applications with multiple parallel stages; (III) A comprehensive evaluation of the proposed decision-making strategy compared to the state-of-the-art. The results demonstrate that the proposed conceptual framework can help design and implement self-adaptive strategies that are more modular and reusable. The proposed decision-making strategy provides significant gains in accuracy compared to the state-of-the-art, increasing the parallel applications’ performance and efficiency.

Meet the contributors

See all publications

Get involved

We enable the best engineers and researchers to work on challenging problems and develop cutting-edge solutions ready to be applied to real-world use cases. If you are curious about the many exciting opportunities waiting for you.
Full wave bg