search
0
cart
close
You have no products in your basket yet
left
Tech Categories
Best Sellers
New Releases
Books
Videos
Audiobooks
Articles
Newsletters
Free Learning
right
Hands-On Transfer Learning with TensorFlow 2.0 [Video]

Hands-On Transfer Learning with TensorFlow 2.0: Transfer experience from models using TensorFlow 2.0 [Video]

By Margaret Maynard-Reid
$130.99
Video May 2020 1 hours 25 minutes 1st Edition
Video
$130.99
Subscription
$15.99 Monthly
Video
$130.99
Subscription
$15.99 Monthly

What do you get with a video?

Feature icon Download this video in MP4 format
Feature icon Access this title in our online reader with advanced features
Feature icon DRM FREE - Read whenever, wherever and however you want
Buy Now

Product Details


Publication date : May 28, 2020
Length 1 hours 25 minutes
Edition : 1st Edition
Language : English
ISBN-13 : 9781789953947
Category :
Concepts :

Key benefits

  • Refresh your knowledge of CNN with in-depth explanations of how transfer learning works
  • Use transfer learning for both image and text classification, and compare/contrast with the training from scratch approach
  • Learn new features of TensorFlow 2.0, tf.keras, TensorFlow Hub, TensorFlow Model Maker, and on-device training

Description

Transfer learning involves using a pre-trained model on a new problem. It is currently very popular in the field of Deep Learning because it enables you to train Deep Neural Networks with comparatively little data. In Transfer learning, knowledge of an already trained Machine Learning model is applied to a different but related problem. The general idea is to use knowledge, which a model has learned from a task where a lot of labeled training data is available, in a new task where we don't have a lot of data. Instead of starting the learning process from scratch, you start from patterns that have been learned by solving a related task. In this course, learn how to implement transfer learning to solve a different set of machine learning problems by reusing pre-trained models to train other models. Hands-on examples with transfer learning will get you started, and allow you to master how and why it is extensively used in different deep learning domains. You will implement practical use cases of transfer learning in CNN and RNN such as using image classifiers, text classification, sentimental analysis, and much more. You'll be shown how to train models and how a pre-trained model is used to train similar untrained models in order to apply the transfer learning process even further. Allowing you to implement advanced use cases and learn how transfer learning is gaining momentum when it comes to solving real-world problems in deep learning. By the end of this course, you will not only be able to build machine learning models, but have mastered transferring with tf.keras, TensorFlow Hub, and TensorFlow Lite tools. The code bundle for this course is available at https://github.com/PacktPublishing/Hands-On-Transfer-Learning-with-TensorFlow-2.0-Video

What you will learn

Build your own image classification application using Convolutional Neural Networks and TensorFlow 2.0 Improve any image classification system by leveraging the power of transfer learning on Convolutional Neural Networks, in only a few lines of code Discover how users feel about IMDB movies by building a Sentiment Analysis system utilizing the power of Recurrent Neural Networks and the TensorFlow 2.0 high-level API Learn how to perform transfer learning on Recurrent Neural Networks and powerfully improve any text-based system Learn how to use TensorFlow Hub and TensorFlow Lite to make transfer learning much easier

What do you get with a video?

Feature icon Download this video in MP4 format
Feature icon Access this title in our online reader with advanced features
Feature icon DRM FREE - Read whenever, wherever and however you want
Buy Now

Product Details


Publication date : May 28, 2020
Length 1 hours 25 minutes
Edition : 1st Edition
Language : English
ISBN-13 : 9781789953947
Category :
Concepts :

Table of Contents

4 Chapters
Image Classifier from Scratch with TensorFlow 2.0 Packt Packt
Transfer Learning with tf.keras Packt Packt
Transfer Learning with TensorFlow Hub Packt Packt
TFLite Model Maker Packt Packt

Customer reviews

filter Filter
Top Reviews
Rating distribution
star-icon star-icon star-icon star-icon star-icon 0
(0 Ratings)
5 star 0%
4 star 0%
3 star 0%
2 star 0%
1 star 0%

Filter reviews by


No reviews found
Get free access to Packt library with over 7500+ books and video courses for 7 days!
Start Free Trial

FAQs

How can I download a video package for offline viewing? Packt Packt
  1. Login to your account at Packtpub.com.
  2. Click on "My Account" and then click on the "My Videos" tab to access your videos.
  3. Click on the "Download Now" link to start your video download.
How can I extract my video file? Packt Packt

All modern operating systems ship with ZIP file extraction built in. If you'd prefer to use a dedicated compression application, we've tested WinRAR / 7-Zip for Windows, Zipeg / iZip / UnRarX for Mac and 7-Zip / PeaZip for Linux. These applications support all extension files.

How can I get help and support around my video package? Packt Packt

If your video course doesn't give you what you were expecting, either because of functionality problems or because the content isn't up to scratch, please mail customercare@packt.com with details of the problem. In addition, so that we can best provide the support you need, please include the following information for our support team.

  1. Video
  2. Format watched (HTML, MP4, streaming)
  3. Chapter or section that issue relates to (if relevant)
  4. System being played on
  5. Browser used (if relevant)
  6. Details of support
Why can’t I download my video package? Packt Packt

In the even that you are having issues downloading your video package then please follow these instructions:

  1. Disable all your browser plugins and extensions: Some security and download manager extensions can cause issues during the download.
  2. Download the video course using a different browser: We've tested downloads operate correctly in current versions of Chrome, Firefox, Internet Explorer, and Safari.