DISCLAIMER: This application is used for demonstrative and illustrative purposes only and does not constitute an offering that has gone through regulatory review.
This code pattern can be thought of as two distinct parts:
A predictive model will be built using AutoAI on IBM Cloud Pak for Data. The model is then deployed to the Watson Machine Learning service, where it can be accessed via a REST API.
A Node.js web app that allows a user to input some data to be scored against the previous model.
When the reader has completed this Code Pattern, they will understand how to:
Sample output
Here's an example of what the final web app looks like
NOTE: As of 10/16/2020, the Watson Machine Learning service on IBM Cloud is only available in the Dallas, London, Frankfurt, or Tokyo regions. Not the Seoul, Frankfurt, or Sydney regions.
To use the Watson Machine Learning service programmatically we'll need an API key. Even though this isn't used until later on, let's create one now.
Navigate to https://cloud.ibm.com/iam/apikeys and choose to create a new API key.
Give it a name and description, hit OK. Write down the API key somewhere.
Log into IBM's Cloud Pak for Data service (formally known as Watson Studio). Once in, you'll land on the dashboard.
Create a new project by clicking Create a project
.
Choose an Empty project
.
Enter a Name
and associate the project with a Cloud Object Storage
service.
NOTE: By creating a project in Watson Studio a free tier
Object Storage
service will be created in your IBM Cloud account. Select theFree
storage type to avoid fees.
At the project dashboard click on the Assets
tab and upload the data set associated with this repo. patientdataV6.csv
Now we're going to build a model from the data using IBM's AutoAI. A tool that will automatically create multiple models and test them, giving us the best result. Data science made easy!
Start by clicking on Add to project
and choosing AutoAI experiment
.
Give it a Name
and specify a Watson Machine Learning
instance.
Choose to use data from your project.
Choose the patientdataV6.csv
option.
For the "What do you want to predict?" option, choose HEARTFAILURE
.
The experiment will take a few minutes to run. Once completed hover over the top option to make the Save as
button appear. Click it.
Choose to save the experiment as a Model
. You can optionally download a generated Jupyter Notebook that can be used to re-create the steps that were taken to create the model.
You model will be saved. Click the dialog to view it in your project.
Once you're at the model overview choose the button Promote to deployment space
.
To promote the model to deployment you must specify a deployment space. If no space is created choose the New space +
option to create one. This action will associate the model with the space.
Navigate to the space using the hamburger menu (☰
) on the top right and choose to View all spaces
.
Click on the space you saved the model to.
Choose the deploy the model by clicking the rocket ship icon.
Choose the Online
deployment option and give it a name.
Your new deployment will appear.
Click on the API reference
tab and save the Endpoint
. We'll be using this in our application.
You can deploy this application as a Cloud Foundry application to IBM Cloud by simply clicking the button below. This option will create a deployment pipeline, complete with a hosted Git lab project and devops toolchain.
You may be prompted for an IBM Cloud API Key during this process. Use the Create (+)
button to auto-fill this field and the others. Click on the Deploy
button to deploy the application.
Before using the application go to the Runtime
section of the application and in the Environment variables
tab add in your API_KEY
and DEPLOYMENT_URL
values from steps 1 and 4.
TIP Do NOT wrap these values with double quotes.
Once updated your application will restart and you can visit the application by clicking on Visit App URL
.
The app is fairly self-explantory, simply fill in the data you want to score and click on the Classify
button to test how those figures would score against our model. The model predicts that the risk of heart failure for a patient with these medical characteristics.
This code pattern is licensed under the Apache Software License, Version 2. Separate third party code objects invoked within this code pattern are licensed by their respective providers pursuant to their own separate licenses. Contributions are subject to the Developer Certificate of Origin, Version 1.1 (DCO) and the Apache Software License, Version 2.