Neural structured learning in TensorFlow / Da-Cheng Juan.

Author
Juan, Da-Cheng [Browse]
Format
Video/Projected medium
Language
English
Εdition
1st edition.
Published/​Created
O'Reilly Media, Incorporated, 2020.
Description
1 online resource.

Details

Subject(s)
Author
Library of Congress genre(s)
Series
Safari Books Online (Series) [More in this series]
Summary note
Neural structured learning is an easy-to-use, open-sourced TensorFlow framework that both novice and advanced developers can use for training neural networks with structured signals. NSL can be applied to construct accurate and robust models for vision, language understanding, and prediction in general. Many machine learning tasks benefit from using structured data that contains rich relational information among the samples. These structures can be explicitly given (e.g., as a graph) or implicitly inferred (e.g., as an adversarial example). Leveraging structured signals during training allows developers to achieve higher model accuracy, particularly when the amount of labeled data is relatively small. Training with structured signals also leads to more robust models. Da-Cheng Juan and Sujith Ravi explore the concept, framework, and workflow of NSL and provides the code examples for practitioners and developers. Prerequisite knowledge A basic understanding of neural networks and TensorFlow What you'll learn Discover the concept, framework, and workflow of NSL.
Issuing body
Made available through: Safari, an O'Reilly Media Company.
Source of description
Online resource; Title from title screen (viewed February 28, 2020)
Participant(s)/​Performer(s)
Presenter, Da-Cheng Juan, Sujith Ravi.
OCLC
1143018514
Other standard number
  • 0636920373513
Statement on language in description
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