Deploying Machine Learning Models as Microservices Using Docker

This Course is available for download now. You can contact us for Screenshots or Demo. Access for this course will be sent on google drive. Join our telegram channel to see updates and occasional discounts. If you want to pay through Paypal or Card contact us – On Telegram Click Here or contact on Mail โ€“ [email protected]

Categories: , Tags: ,

Description

Deploying Machine Learning Models as Microservices Using Docker

Deploying Machine Learning Models as Microservices Using Docker

MP4 | Video: AVC 1920×1080 | Audio: AAC 48KHz 2ch | Duration: 24M | 825 MB Genre: eLearning | Language: English
Modern applications running in the cloud often rely on REST-based microservices architectures by using Docker containers. Docker enables your applications to communicate between one another and to compose and scale various components. Data scientists use these techniques to efficiently scale their machine learning models to production applications. This video teaches you how to deploy machine learning models behind a REST API-to serve low latency requests from applications-without using a Spark cluster. In the process, you’ll learn how to export models trained in SparkML; how to work with Docker, a convenient way to build, deploy, and ship application code for microservices; and how a model scoring service should support single on-demand predictions and bulk predictions. Learners should have basic familiarity with the following: Scala or Python; Hadoop, Spark, or Pandas; SBT or Maven; cloud platforms like Amazon Web Services; Bash, Docker, and REST.

Understand how to deploy machine learning models behind a REST API

Learn to utilize Docker containers for REST-based microservices architectures
Explore methods for exporting models trained in SparkML using a library like CoMB ust MLeap
See how Docker builds, deploys, and ships application code for microservices
Discover how to deploy a model using exported PMML with a REST API in a Docker container
Learn to use the AWS elastic container service to deploy a model hosting server in Docker
Pick up techniques that enable a model hosting server to read a modelUnderstand how to deploy machine learning models behind a REST API
Learn to utilize Docker containers for REST-based microservices architectures
Explore methods for exporting models trained in SparkML using a library like CoMB ust MLeap
See how Docker builds, deploys, and ships application code for microservices

20%

off, especially for you ๐ŸŽ

Sign up to receive your exclusive discount, and keep up to date on our latest products & offers!

We donโ€™t spam! Read our privacy policy for more info.