arXiv Open Access 2021

EVEREST: A design environment for extreme-scale big data analytics on heterogeneous platforms

Christian Pilato Stanislav Bohm Fabien Brocheton Jeronimo Castrillon Riccardo Cevasco +13 lainnya
Lihat Sumber

Abstrak

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 1st, 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.

Topik & Kata Kunci

Penulis (18)

C

Christian Pilato

S

Stanislav Bohm

F

Fabien Brocheton

J

Jeronimo Castrillon

R

Riccardo Cevasco

V

Vojtech Cima

R

Radim Cmar

D

Dionysios Diamantopoulos

F

Fabrizio Ferrandi

J

Jan Martinovic

G

Gianluca Palermo

M

Michele Paolino

A

Antonio Parodi

L

Lorenzo Pittaluga

D

Daniel Raho

F

Francesco Regazzoni

K

Katerina Slaninova

C

Christoph Hagleitner

Format Sitasi

Pilato, C., Bohm, S., Brocheton, F., Castrillon, J., Cevasco, R., Cima, V. et al. (2021). EVEREST: A design environment for extreme-scale big data analytics on heterogeneous platforms. https://arxiv.org/abs/2103.04185

Akses Cepat

Lihat di Sumber
Informasi Jurnal
Tahun Terbit
2021
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓