Skip to content

dell-ai-engineering/bigdlengine4cdsw

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

48 Commits
 
 
 
 
 
 
 
 

Repository files navigation

DellEMC BigDL and Analytics Zoo Engine for Cloudera Data Science Workbench

Overview

This repository contains preconfigured engines for the Dell EMC Ready Solution for AI - Machine Learning with Cloudera Hadoop. There are two engines. One is configured with Intel BigDL a distributed deep learning library for Apache Spark. The other is configured with Analytics Zoo a unified analytics + AI platform for Spark. Jumpstart examples are located in the BigDL4CDSW repository.

Versions

  • BigDL 0.7.2
  • Analytics Zoo 0.4.0
  • Spark 2.4
  • Scala 2.11.8
  • Java 8

Note: The Dockerfile to build these engines use BigDL and Analytic Zoo builds that are specific for above versions of Spark and Scala. If your environment has other versions of Spark, edit the Dockerfile accordingly.

Note on Java 7

Intel BigDL recommends Java 8 when using Spark 2.x as Java 7 may cause performance issues. If you are required to use Java 7 then follow the instructions to build from source using an environment with Java 7. Then replace the /opt/Intel directory with the Java 7 compiled BigDL and edit the spark.jars in spark-defaults.conf file if using the Jumpstart templates.

How to use Dockerfile for BigDL and Analytics Zoo

Download this repository to your workstation. Change the working directory to either the BigDL or analytics-zoo based on the engine you want to deploy.

Build image and push to a Docker repository

sudo yum install docker
sudo systemctl start docker

Run a docker registry:

Run registry container using the following command. This assumes the certificate is in a certs directory under the dockerfile. If you already have a docker registry, you can ignore this step and proceed to the next.

docker run -d \
  --restart=always \
  --name <registry-name> \
  -v `pwd`/certs:/certs \
  -e REGISTRY_HTTP_ADDR=0.0.0.0:443 \
  -e REGISTRY_HTTP_TLS_CERTIFICATE=/certs/domain.crt \
  -e REGISTRY_HTTP_TLS_KEY=/certs/domain.key \
  -p 443:443 \
  registry:2

Change to a desired name for your docker registry.

A docker registry is secured using TLS and requires a certificate. Docker registry configuration guide. If you must use a self signed certificate follow the Docker guide for an insecure registry server

Build the container

Build the container for BigDL

    docker build --network=host -t <registry-name>/bigdl:0.7.0 . -f Dockerfile

Build the container for Analytics Zoo

    docker build --network=host -t <registry-name>/analytics-zoo:0.3.0 . -f Dockerfile

Change the docker repo from <registry-name> to docker registry name.

Test that it works

    docker run -it <registry-name>/bigdl:0.7.0 /bin/bash

OR

    docker run -it <registry-name>/analytics-zoo:0.3.0 /bin/bash

You can exit out of the container by typing 'exit'.

Push the container image

    docker push <registry-name>/bigdl:0.7.0

OR

    docker push <registry-name>/analytics-zoo:0.3.0

Add the engine to CDSW

  1. Log in to CDSW as a site administrator
  2. Go to "Admin" followed by "Engines"
  3. On a blank line: name the engine, specify the docker registry location, and add this new entry

Verify that the engine works

  1. Log in to CDSW
  2. Create a new project
  3. Copy the spark-defaults.conf file from the respository to the root folder of the CDSW project
  4. Open a new workbench session
  5. Before starting the workbench change the engine image selection to the new BigDL or Analytics Zoo engine
  6. Start the engine by choosing "Launch Session"

spark-defaults.conf

For both BigDL and Analytic Zoo, sample spark-defaults.conf files are provided in the corresponding folder. These files need to be copied to the root directory of each CDSW project. The files specify the Spark parameters for the project. The parameters must be edited to suit the requirements for the project.

About

This repository contains the CDSW engines for BigDL and Analytics Zoo.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published