Tutorial : Towards Next Generation Deep Learning Framework: An Introduction to MXNet
Naiyan Wang; Mu Li
Deep learning continues to push the state
of the art in computer vision. One of the key reasons for
this progress is the availability of highly flexible and
developer-friendly deep learning frameworks. During this
session, you'll learn how to use Apache MXNet to help
speed your development and leave able to quickly spin
up AWS GPU clusters to train at record speeds. Topics
covered: (1) A walk-through on setting up MXNet on both
your laptop and AWS, (2) A peek under the MXNet hood
and a comparison with other deep learning frameworks
(3) Hands on with Apache MXNet on computer vision
applications.
Видео Tutorial : Towards Next Generation Deep Learning Framework: An Introduction to MXNet канала ComputerVisionFoundation Videos
Deep learning continues to push the state
of the art in computer vision. One of the key reasons for
this progress is the availability of highly flexible and
developer-friendly deep learning frameworks. During this
session, you'll learn how to use Apache MXNet to help
speed your development and leave able to quickly spin
up AWS GPU clusters to train at record speeds. Topics
covered: (1) A walk-through on setting up MXNet on both
your laptop and AWS, (2) A peek under the MXNet hood
and a comparison with other deep learning frameworks
(3) Hands on with Apache MXNet on computer vision
applications.
Видео Tutorial : Towards Next Generation Deep Learning Framework: An Introduction to MXNet канала ComputerVisionFoundation Videos
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16 августа 2017 г. 2:47:21
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