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Create a predictive model with Watson Machine Learning
Use IBM's Data Science Experience to build a predictive model with Watson Machine Learning.
Cognitive
Machine Learning is branching out in interesting ways across numerous fields, one of the most interesting is health care. In this Code Pattern, we will use a Jupyter Notebook on IBM Data Science Experience to build a predictive model that demonstrates a potential health care use case. This a customized version of a Node.js sample app that is available with the Watson Machine Learning Service on IBM Cloud. Note that this application is used for demonstrative and illustrative purposes only and does not constitute an offering that has gone through regulatory review.
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When the reader has completed this Code Pattern, they will understand how to:
- Build a predictive model within a Jupyter Notebook
- Deploy the model to IBM Watson Machine Learning service
- Access the Machine Learning model via either APIs or a Nodejs app
- The developer creates an IBM Data Science Experience Workspace.
- IBM Data Science Experience depends on an Apache Spark service.
- IBM Data Science Experience uses Cloud Object storage to manage your data.
- This lab is built around a Jupyter Notebook, this is where the developer will import data, train, and evaluate their model.
- Import data on heart failure.
- Trained models are deployed into production using IBM's Watson Machine Learning Service.
- A Node.js web app is deployed on IBM Cloud calling the predictive model hosted in the Watson Machine Learning Service.
- A user visits the web app, enters their information, and the predictive model returns a response.
- IBM Data Science Experience: Analyze data using RStudio, Jupyter, and Python in a configured, collaborative environment that includes IBM value-adds, such as managed Spark.
- Jupyter Notebook: An open source web application that allows you to create and share documents that contain live code, equations, visualizations, and explanatory text.
- PixieDust: Provides a Python helper library for IPython Notebook.
- Artificial Intelligence: Artificial intelligence can be applied to disparate solution spaces to deliver disruptive technologies.
- Data Science: Systems and scientific methods to analyze structured and unstructured data in order to extract knowledge and insights.
- Node.js: An open-source JavaScript run-time environment for executing server-side JavaScript code.
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- With Watson: Want to take your Watson app to the next level? Looking to utilize Watson Brand assets? Join the With Watson program to leverage exclusive brand, marketing, and tech resources to amplify and accelerate your Watson embedded commercial solution.
- Data Science Experience: Master the art of data science with IBM's Data Science Experience
- Spark on IBM Cloud: Need a Spark cluster? Create up to 30 Spark executors on IBM Cloud with our Spark service