Optimization and deployment of CNNs at the Edge: The ALOHA experience

Open Access
Authors
  • P. Meloni
  • D. Loi
  • P. Busia
  • G. Deriu
  • A.D. Pimentel ORCID logo
  • D. Sapra ORCID logo
  • T. Stefanov
  • S. Minakova
  • F. Conti
  • L. Benini
  • M. Pintor
  • B. Biggio
  • B. Moser
  • N. Shepeleva
  • N. Fragoulis
  • I. Theodorakopoulos
  • M. Masin
  • F. Palumbo
Publication date 2019
Book title ACM International Conference on Computing Frontiers 2019 (CF 2019)
Book subtitle proceedings : April 30-May 2, 2019, Alghero, Sardinia, Italy
ISBN (electronic)
  • 9781450366854
Event 16th ACM International Conference on Computing Frontiers, CF 2019
Pages (from-to) 326-332
Number of pages 7
Publisher New York, New York: Association for Computing Machinery
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract

Deep learning (DL) algorithms have already proved their effectiveness on a wide variety of application domains, including speech recognition, natural language processing, and image classification. To foster their pervasive adoption in applications where low latency, privacy issues and data bandwidth are paramount, the current trend is to perform inference tasks at the edge. This requires deployment of DL algorithms on low-energy and resource-constrained computing nodes, often heterogenous and parallel, that are usually more complex to program and to manage without adequate support and experience. In this paper, we present ALOHA, an integrated tool flow that tries to facilitate the design of DL applications and their porting on embedded heterogenous architectures. The proposed tool flow aims at automating different design steps and reducing development costs. ALOHA considers hardware-related variables and security, power efficiency, and adaptivity aspects during the whole development process, from pre-training hyperparameter optimization and algorithm configuration to deployment.

Document type Conference contribution
Note Invited paper
Language English
Published at https://doi.org/10.1145/3310273.3323435
Other links https://www.scopus.com/pages/publications/85066029325
Downloads
3310273.3323435 (Final published version)
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