January 26, 2020

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Deep Learning Neural Network Acceleration at the Edge

Deep Learning Neural Network Acceleration at the Edge

The dramatically growing amount of data captured by sensors and the ever more stringent requirements for latency and real time constraints are paving the way for edge computing, and this implies that …

Talk Title Deep Learning Neural Network Acceleration at the Edge
Speakers Andrea Gallo (VP of Membership Development, Linaro)
Conference Open Source Summit + ELC Europe
Conf Tag
Location Edinburgh, UK
Date Oct 21-25, 2018
URL Talk Page
Slides Talk Slides
Video

The dramatically growing amount of data captured by sensors and the ever more stringent requirements for latency and real time constraints are paving the way for edge computing, and this implies that not only big data analytics but also Machine Learning (ML) inference shall be executed at the edge. The multiple options for neural network acceleration in recent Arm-based platforms provides an unprecedented opportunity for new intelligent devices with ML inference. It also raises the risk of fragmentation and duplication of efforts when multiple frameworks shall support multiple accelerators. Andrea Gallowill summarise the existing NN frameworks, model description formats, accelerator solutions, low cost development boards and will describe the efforts underway to identify the best technologies to improve the consolidation and enable the competitive innovative advantage from all vendors.

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