Skip to end of metadata
Go to start of metadata

You are viewing an old version of this page. View the current version.

Compare with Current View Page History

« Previous Version 6 Next »

Introduction 

Spark plugins that trains and classify data based on Multinomial/Binary Logistic Regression.

Use-case

Following are the use-cases that the plugin should support:

  1. User should be able to train the data.
  2. User should be able to classify the test data using the model build while training the data.
  3. User should be able to provide the list of columns(features) to use for training.
  4. User should be able to provide the list of columns(features) to classify.
  5. User should be able to provide the column to be used as prediction field while training/classification.
  6. User should be able to provide the number of features to be used while training/classification.
  7. User should be able to provide the number of classes to be used while training/classification.

 

User Stories

Example


Implementation Tips


Design 

Table of Contents

Checklist

  • User stories documented 
  • User stories reviewed 
  • Design documented 
  • Design reviewed 
  • Feature merged 
  • Examples and guides 
  • Integration tests 
  • Documentation for feature 
  • Short video demonstrating the feature
  • No labels