YoVDO

Deploying TensorFlow Models to AWS, Azure, and the GCP

Offered By: Pluralsight

Tags

TensorFlow Courses Machine Learning Courses Cloud Computing Courses Amazon Web Services (AWS) Courses Docker Courses Model Deployment Courses

Course Description

Overview

This course will show you how to take your TensorFlow model and deploy it locally or to the cloud platform of your choice- Azure, AWS, or the GCP.

Deploying and hosting your trained TensorFlow model locally or on your cloud platform of choice - Azure, AWS or, the GCP, can be challenging. In this course, Deploying TensorFlow Models to AWS, Azure, and the GCP, you will learn how to take your model to production on the platform of your choice. This course starts off by focusing on how you can save the model parameters of a trained model using the Saved Model interface, a universal interface for TensorFlow models. You will then learn how to scale the locally hosted model by packaging all dependencies in a Docker container. You will then get introduced to the AWS SageMaker service, the fully managed ML service offered by Amazon. Finally, you will get to work on deploying your model on the Google Cloud Platform using the Cloud ML Engine. At the end of the course, you will be familiar with how a production-ready TensorFlow model is set up as well as how to build and train your models end to end on your local machine and on the three major cloud platforms. Software required: TensorFlow, Python.

Topics:
  • Course Overview
  • Using TensorFlow Serving
  • Containerizing TensorFlow Models Using Docker on Microsoft Azure
  • Deploying TensorFlow Models on Amazon AWS
  • Deploying TensorFlow Models on the Google Cloud Platform

Taught by

Janani Ravi

Related Courses

Creative Applications of Deep Learning with TensorFlow
Kadenze
Creative Applications of Deep Learning with TensorFlow III
Kadenze
Creative Applications of Deep Learning with TensorFlow II
Kadenze
6.S191: Introduction to Deep Learning
Massachusetts Institute of Technology via Independent
Learn TensorFlow and deep learning, without a Ph.D.
Google via Independent