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Fundamentals of Deep Learning Workshop for Multiple Data Types

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Perl @ BASH, Level 3, 79 Ayer Rajah Crescent

Take Lift 3 at Ayer Rajah Crescent

139955

Singapore

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Description

SGInnovate partners with NVIDIA Deep Learning Institute (DLI) to offer hands-on training to developers, data scientists, and researchers looking to solve real world problems with deep learning across diverse industries such as self-driving cars, healthcare, online services and robotics.

This full-day workshop explores how convolutional and recurrent neural networks can be combined to generate effective descriptions of content within images and video clips.

You will receive a Fundamentals certificate from Deep Learning Institute!

Attendees MUST bring their own laptops

Workshop Overview:
This hands-on course explores how convolutional and recurrent neural networks can be combined to generate effective descriptions of content within images and video clips.

You will learn how to train a network using TensorFlow and the MSCOCO dataset to generate captions from images and video by:

  • Implementing deep learning workflows like image segmentation and text generation
  • Comparing and contrasting data types, workflows, and frameworks
  • Combining computer vision and natural language processing

Upon completion, you’ll be able to solve deep learning problems that require multiple types of data inputs.

Recommended Prerequisites:

  • Taken/Attended “Fundamentals of Deep Learning for Computer Vision” or equivalent knowledge. Please refer to the following link for more info: https://nvidia.qwiklab.com/quests/11
  • TensorFlow and Python experience can be useful for some exercises
  • The mathematical and theoretical aspects of deep learning will NOT be covered by this training - and they're not a requirement to complete the labs, reading the Wikipedia page of Deep Learning would be a good start if you're interested

Agenda:

09:00 Registration
09:30 Image Segmentation with TensorFlow (hands-on lab)
11:00 Tea Break
11:15 Word Generation with TensorFlow (hands-on lab)
12:30 Lunch
13:30 Word Generation with TensorFlow (hands-on lab) [continued]
14:45 Image and Video Captioning by Combining CNNs and RNNs (hands-on lab)
15:45 Tea Break
16:00 Image and Video Captioning by Combining CNNs and RNNs (hands-on lab) [continued]
17:00 Closing Comments and Questions

Lab 1: Image Segmentation with TensorFlow
Image (or semantic) segmentation is the task of placing each pixel of an image into a specific class. In this lab, you’ll segment MRI images to measure parts of the heart by:

  • Comparing image segmentation with other computer vision problems
  • Experimenting with TensorFlow tools such as TensorBoard and the TensorFlow Python API
  • Learning to implement effective metrics for assessing model performance

Upon completion of this lab, you’ll be able to set up most computer vision workflows using deep learning.

Lab 2: Word Generation with TensorFlow
Predict the next word of a sentence using a Recurrent Neural Network. Neural networks can transform complex inputs to complex outputs with many different types of data. In this lab, you’ll train a network to predict the next word of a sentence using the MSCOCO dataset by:

  • Introducing Natural Language Processing (NLP) and Recurrent Neural Networks (RNNs)
  • Creating network inputs from text data
  • Testing with new data and iterating to improve performance

Upon completion of this lab, you’ll be able to train neural networks to understand both images and text.

Lab 3: Image and Video Captioning by Combining CNNs and RNNs
Learn to combine computer vision and natural language processing to describe scenes. Many applications of deep learning require the processing of multiple data types. Train a model that generates a description of an image from raw pixel data by:

  • Making use of the output of layers in the middle of neural networks
  • Combining data from multiple networks through concatenation and/or averaging
  • Harnessing the functionality of CNNs and RNNs

Upon completion of this lab, you’ll be able to combine workflows and data to innovate using deep learning.

IMPORTANT PLEASE TAKE NOTE:

DLI Attendees Pre-Workshop Instructions

  1. You MUST bring your own laptop to this workshop.
  2. Create an account by going to https://nvlabs.qwiklab.com/ prior to getting to the workshop.
  3. MAKE SURE your laptop is set up prior to the workshop by following these steps:
    • Ensure websockets runs smoothly on your laptop by going to http://websocketstest.com/
    • Make sure that WebSockets work for you by seeing under Environment, WebSockets is supported and Data Receive, Send and Echo Test all check Yes under WebSockets (Port 80).
    • If there are issues with WebSockets, try updating your browser or trying a different browser. The labs will not run without WebSockets support.
    • Best browsers for the labs are Chrome, FireFox and Safari. The labs will run in IE but it is not an optimal experience.
  4. Please remember to sign in to https://nvlabs.qwiklab.com/ using the same email address as for event registration, since class access is given based on the event registration list.

For enquiries, please send an email to training@sginnovate.com

Date and Time

Location

Perl @ BASH, Level 3, 79 Ayer Rajah Crescent

Take Lift 3 at Ayer Rajah Crescent

139955

Singapore

View Map

Refund Policy

No Refunds

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