Alexander Erben, Gauri Joshi, et al.
ICML 2025
High-Performance Big Data Analytics (HPDA) applications are characterized by huge volumes of distributed and heterogeneous data that require efficient computation for knowledge extraction and decision making. Designers are moving towards a tight integration of computing systems combining HPC, Cloud, and IoT solutions with artificial intelligence (AI). Matching the application and data requirements with the characteristics of the underlying hardware is a key element to improve the predictions thanks to high performance and better use of resources. We present EVEREST, a novel H2020 project started on October 1, 2020, that aims at developing a holistic environment for the co-design of HPDA applications on heterogeneous, distributed, and secure platforms. EVEREST focuses on programmability issues through a data-driven design approach, the use of hardware-accelerated AI, and an efficient runtime monitoring with virtualization support. In the different stages, EVEREST combines state-of-the-art programming models, emerging communication standards, and novel domain-specific extensions. We describe the EVEREST approach and the use cases that drive our research.
Alexander Erben, Gauri Joshi, et al.
ICML 2025
Chen Chang Lew, Christof Ferreira Torres, et al.
EuroS&P 2024
Herbert Woisetschläger, Alexander Erben, et al.
Middleware 2024
Elton Figueiredo de Souza Soares, Emilio Ashton Vital Brazil, et al.
Future Generation Computer Systems