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What's New in TensorFlow 2.0

You're reading from   What's New in TensorFlow 2.0 Use the new and improved features of TensorFlow to enhance machine learning and deep learning

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Product type Paperback
Published in Aug 2019
Publisher Packt
ISBN-13 9781838823856
Length 202 pages
Edition 1st Edition
Languages
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Authors (3):
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Tanish Baranwal Tanish Baranwal
Author Profile Icon Tanish Baranwal
Tanish Baranwal
Alizishaan Khatri Alizishaan Khatri
Author Profile Icon Alizishaan Khatri
Alizishaan Khatri
Ajay Baranwal Ajay Baranwal
Author Profile Icon Ajay Baranwal
Ajay Baranwal
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Toc

Table of Contents (13) Chapters Close

Preface 1. Section 1: TensorFlow 2.0 - Architecture and API Changes
2. Getting Started with TensorFlow 2.0 FREE CHAPTER 3. Keras Default Integration and Eager Execution 4. Section 2: TensorFlow 2.0 - Data and Model Training Pipelines
5. Designing and Constructing Input Data Pipelines 6. Model Training and Use of TensorBoard 7. Section 3: TensorFlow 2.0 - Model Inference and Deployment and AIY
8. Model Inference Pipelines - Multi-platform Deployments 9. AIY Projects and TensorFlow Lite 10. Section 4: TensorFlow 2.0 - Migration, Summary
11. Migrating From TensorFlow 1.x to 2.0 12. Other Books You May Enjoy

Transforming datasets

Once the dataset objects have been created, they need to be transformed based on the model's requirements. The following diagram shows the flow of dataset transformation:

Some of the most important transformations are as follows:

  • Data rearrangements: These might be needed to select a portion of data instead of taking the entire dataset. They can be useful for doing experiments with a subset of data.
  • Data cleanups: These are extremely important. It could just be as simple as cleaning up a date format, such as from YYYY/MM/DD to MM-DD-YYYY, or removing data that has missing values or incorrect numbers. Other examples of data cleansing is removing stop words from text files for an NLP module.
  • Data standardization and normalization: These are crucial for data where one or more features are coming from various sources and have different units and scales...
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