Course Outline

Introduction

Setting up TensorFlow Extended (TFX)

Overview of TFX Features and Architecture

Understanding Pipelines and Components

Working with TFX Components

Ingesting Data

Validating Data

Tranforming a Data Set

Analyzing a Model

Feature Engineering

Training a Model

Orchestrating a TFX Pipeline

Managing Meta Data for ML Pipelines

Model Versioning with TensorFlow Serving

Deploying a Model to Production

Troubleshooting

Summary and Conclusion

Requirements

  • An understanding of DevOps concepts
  • Machine learning development experience
  • Python programming experience

Audience

  • Data scientists
  • ML engineers
  • Operation engineers
 21 Hours

Number of participants



Price per participant

Testimonials (1)

Related Courses

Applied AI from Scratch

28 Hours

Deep Learning for NLP (Natural Language Processing)

28 Hours

Deep Learning for Vision

21 Hours

Embedding Projector: Visualizing Your Training Data

14 Hours

Fraud Detection with Python and TensorFlow

14 Hours

Kubeflow on OpenShift

28 Hours

Neural Networks Fundamentals using TensorFlow as Example

28 Hours

Deep Learning with TensorFlow 2

21 Hours

Machine Learning with TensorFlow.js

14 Hours

TensorFlow Serving

7 Hours

Deep Learning with TensorFlow

21 Hours

TensorFlow for Image Recognition

28 Hours

TPU Programming: Building Neural Network Applications on Tensor Processing Units

7 Hours

Natural Language Processing (NLP) with TensorFlow

35 Hours

Understanding Deep Neural Networks

35 Hours

Related Categories