KAUST_Logo_SCREEN_ 2012

Frontiers in Computing Workshop

30-31 August, 2023

Building 19, Conference Hall 1

  • HOME
  • SPEAKERS
  • AGENDA
  • REGISTRATION
  • GENERAL
    • FAQ
    • CONTACT

Prof. Marco Canini, KAUST

  • About
  • Speakers
Title: Programmable Networks for Distributed Deep Learning: Advances and Perspectives

Abstract: Training large deep learning models is challenging due to high communication overheads that distributed training entails. Embracing the recent technological development of programmable network devices, this talk describes our efforts to rein in distributed deep learning's communication bottlenecks and offers an agenda for future work in this area. We demonstrate that an in-network aggregation primitive can accelerate distributed DL workloads, and can be implemented using modern programmable switch hardware. We discuss various designs for streaming aggregation and in-network data processing that lower memory requirements and exploit sparsity to maximize effective bandwidth use. We also touch on gradient compression methods, which contribute to lower communication volume and adapt to dynamic network conditions. Lastly, we consider how the rise of programmable NICs may have a role in this space.

Speakers

Prof. Marco Canini

Associate Professor, Computer Science, Principal Investigator, Software-Defined Advanced Networked and Distributed Systems, KAUST

  • Share this:
KAUST
Computational Bioscience Research Center (CBRC)

4700 King Abdullah University of Science and Technology (KAUST) Thuwal 23955-6900, Kingdom of Saudi Arabia Ibn Sina (building 3), Level 4 (seaside)

Contact Us

  • cbrc.info@kaust.edu.sa
  • Building 19, L3, Conference Hall 1
website key visual-01

© 2019 Educati. All rights reserved. Created by EchoTheme