Title
The coming age of pervasive data processing
Author
Rellermeyer, J.S. (TU Delft Distributed Systems) 
Omranian Khorasani, S. (TU Delft Distributed Systems)
Graur, Dan (Student TU Delft)
Parthasarathy, Apourva (Student TU Delft)
Contributor
Iosup, Alexandru (editor)
Pop, Florin (editor)
Prodan, Radu (editor)
Uta, Alexandru (editor)
Date
2019
Abstract
Emerging Big Data analytics and machine learning applications require a significant amount of computational power. While there exists a plethora of large-scale data processing frameworks which thrive in handling the various complexities of data-intensive workloads, the ever-increasing demand of applications have made us reconsider the traditional ways of scaling (e.g., scale-out) and seek new opportunities for improving the performance. In order to prepare for an era where data collection and processing occur on a wide range of devices, from powerful HPC machines to small embedded devices, it is crucial to investigate and eliminate the potential sources of inefficiency in the current state of the art platforms. In this paper, we address the current and upcoming challenges of pervasive data processing and present directions for designing the next generation of large-scale data processing systems.
Subject
Big Data
Machine Learning
Systems
Performance
Efficiency
To reference this document use:
http://resolver.tudelft.nl/uuid:fe53f4b2-bdfa-4049-a755-0ce8fd8a6407
DOI
https://doi.org/10.1109/ISPDC.2019.00011
Publisher
IEEE
Embargo date
2020-02-08
ISBN
978-1-7281-3802-2
Source
2019 18th International Symposium on Parallel and Distributed Computing (ISPDC): Proceedings
Event
18th International Symposium on Parallel and Distributed Computing, ISPDC 2019, 2019-06-05 → 2019-06-07, Amsterdam, Netherlands
Bibliographical note
Accepted author manuscript
Part of collection
Institutional Repository
Document type
conference paper
Rights
© 2019 J.S. Rellermeyer, S. Omranian Khorasani, Dan Graur, Apourva Parthasarathy