In the last two decades deep learning has attracted a lot of attention internationally, solving problems in different application domains and achieving results beyond expectations. For example it has been applied in bioinformatics, game playing, imaging processing, object detection, robotic and drug discovery. One of the main reasons for the incremented use of deep learning algorithms is the need to implement approaches for the analysis of the large amount of data produces in every field, bringing researchers to dedicate their work to deep learning development. One of the main topics discussed up today is the possibility to run the training of deep models in a parallel fashion, so to reduce the time otherwise needed to find the hyperparameters and to make the achievement of the result faster.
Giansanti, V., Beretta, S., Cesini, D., D'Agostino, D., Merelli, I. (2019). Parallel Computing in Deep Learning: Bioinformatics Case Studiesa. In Proceedings - 27th Euromicro International Conference on Parallel, Distributed and Network-Based Processing, PDP 2019 (pp.329-333). New York : Institute of Electrical and Electronics Engineers Inc. [10.1109/EMPDP.2019.8671556].
Parallel Computing in Deep Learning: Bioinformatics Case Studiesa
Giansanti, V;Beretta, S;Merelli, I
2019
Abstract
In the last two decades deep learning has attracted a lot of attention internationally, solving problems in different application domains and achieving results beyond expectations. For example it has been applied in bioinformatics, game playing, imaging processing, object detection, robotic and drug discovery. One of the main reasons for the incremented use of deep learning algorithms is the need to implement approaches for the analysis of the large amount of data produces in every field, bringing researchers to dedicate their work to deep learning development. One of the main topics discussed up today is the possibility to run the training of deep models in a parallel fashion, so to reduce the time otherwise needed to find the hyperparameters and to make the achievement of the result faster.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.