The use of Deep Learning (DL) algorithms is increasingly evolving in many application domains. Despite the rapid growing of algorithm size and complexity, performing DL inference at the edge is becoming a clear trend to cope with low latency, privacy and bandwidth constraints. Nevertheless, traditional implementation on low-energy computing nodes often requires experience-based manual intervention and trial-and-error iterations to get to a functional and effective solution. This work presents a computer-aided design (CAD) support for effective implementation of DL algorithms on embedded systems, aiming at automating different design steps and reducing cost. The proposed tool flow comprises capabilities to consider architecture-and hardware-related variables at very early stages of the development process, from pre-training hyperparameter optimization and algorithm configuration to deployment, and to adequately address security, power efficiency and adaptivity requirements. This paper also presents some preliminary results obtained by the first implementation of the optimization techniques supported by the tool flow.

Architecture-aware design and implementation of CNN algorithms for embedded inference: The ALOHA project / Meloni, P., Loi, D., Deriu, G., Pimentel, A.D., Saprat, D., Pintort, M., Biggio, B., Ripolles, O., Solans, D., Conti, F., Benini, L., Stefanov, T., Minakova, S., Moser, B., Shepeleva, N., Masin, M., Palumbo, F., Fragoulis, N., Theodorakopoulos, I.. - 2018-:(2019), pp. 52-55. (30th International Conference on Microelectronics, ICM 2018 tun 2018) [10.1109/ICM.2018.8704093].

Architecture-aware design and implementation of CNN algorithms for embedded inference: The ALOHA project

Palumbo F.;
2019-01-01

Abstract

The use of Deep Learning (DL) algorithms is increasingly evolving in many application domains. Despite the rapid growing of algorithm size and complexity, performing DL inference at the edge is becoming a clear trend to cope with low latency, privacy and bandwidth constraints. Nevertheless, traditional implementation on low-energy computing nodes often requires experience-based manual intervention and trial-and-error iterations to get to a functional and effective solution. This work presents a computer-aided design (CAD) support for effective implementation of DL algorithms on embedded systems, aiming at automating different design steps and reducing cost. The proposed tool flow comprises capabilities to consider architecture-and hardware-related variables at very early stages of the development process, from pre-training hyperparameter optimization and algorithm configuration to deployment, and to adequately address security, power efficiency and adaptivity requirements. This paper also presents some preliminary results obtained by the first implementation of the optimization techniques supported by the tool flow.
2019
Inglese
Proceedings of the International Conference on Microelectronics, ICM
Contributo
30th International Conference on Microelectronics, ICM 2018
2018-
52
55
4
978-1-5386-8167-1
Institute of Electrical and Electronics Engineers Inc.
Esperti anonimi
2018
tun
Internazionale
Architecture-aware design and implementation of CNN algorithms for embedded inference: The ALOHA project / Meloni, P., Loi, D., Deriu, G., Pimentel, A.D., Saprat, D., Pintort, M., Biggio, B., Ripolles, O., Solans, D., Conti, F., Benini, L., Stefanov, T., Minakova, S., Moser, B., Shepeleva, N., Masin, M., Palumbo, F., Fragoulis, N., Theodorakopoulos, I.. - 2018-:(2019), pp. 52-55. (30th International Conference on Microelectronics, ICM 2018 tun 2018) [10.1109/ICM.2018.8704093].
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
Meloni, P.; Loi, D.; Deriu, G.; Pimentel, A. D.; Saprat, D.; Pintort, M.; Biggio, B.; Ripolles, O.; Solans, D.; Conti, F.; Benini, L.; Stefanov, T.; M...espandi
273
19
none
info:eu-repo/semantics/conferenceObject
   ALOHA - software framework for runtime-Adaptive and secure deep Learning On Heterogeneous Architectures
   H2020
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11388/227267
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