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1
Intro
2
Outline
3
Data Sources
4
Data Transformations
5
User-defined Functions
6
Example
7
Iterator Life Cycle Ops
8
tf.data C++ Abstractions
9
Performance
10
Supported Types
11
Using tf.data Structure
12
Static Optimizations
13
tf.data Options
14
Parallelism Quiz
15
Implementing
16
Autotuning
Description:
Dive deep into TensorFlow's input pipeline with this 54-minute technical session from the TensorFlow team. Explore tf.data's architecture, including Python and C++ views, support for non-tensor types, and both static and dynamic optimizations. Learn about data sources, transformations, user-defined functions, iterator life cycle operations, and C++ abstractions. Gain insights into performance optimization techniques, supported data types, and the tf.data structure. Discover static optimizations, tf.data options, parallelism implementation, and autotuning features. Enhance your TensorFlow skills with this comprehensive look at the internal workings of tf.data, designed for those with basic familiarity of TensorFlow concepts.

Inside TensorFlow - TF Input Pipeline

TensorFlow
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