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Deep Learning Institute is going to ICML 2017

27 Jul 2017

XENON SystemsBack to NewsBack to EventsDeep Learning Institute is going to ICML 2017

The NVIDIA Deep Learning Institute (DLI) offers hands-on training for developers, data scientists, and researchers looking to solve the world’s most challenging problems with deep learning.

DLI is excited to announce this one-day “Scene Description Generation with TensorFlow” hands-on workshop taking place in Sydney International Convention Centre on Thursday, August 10th.

In this hands-on workshop, attendees will train a network to generate captions from images and videos to learn:

  • How to solve novel problems in deep learning by combining best practices.
  • The fundamentals of both convolutional and recurrent neural networks using TensorFlow.
  • Problem specific skills such as:
    • The difference between processing image and textual data.
    • Extracting high-level features from images.
    • One-hot sentence encoding.

Event Information

Date: Thursday, August 10th 2017
Time: 09:30 – 17:00

  • Image Classification with TensorFlow: 09:30 – 11:30
  • Recurrent Neural Networks with TensorFlow: 12:30 – 14:30
  • Scene Description Generation Combining Image Classification with RNNs using TensorFlow: 15:00 – 17:00

Location: International Convention Centre, Sydney AUSTRALIA
Price: AU$150

education, NVIDIA Deep Learning Institute, training courses

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