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  1. Log into the ML UI (default URL: https://127.0.0.1:9443/ml) using admin as both the username and password. The following is displayed in the Home page.
     
  2. Click ADD DATASET to open the Create Dataset page. 
  3. In the Data Source field, click Choose File and browse for the <ML_HOME>/samples/tuned/naive-bayes/breastCancerWisconsin.csv file. Enter values for the rest of the parameters as shown below.

    Parameter NameValue
    Dataset NameBreast_Cancer_Dataset
    Version1.0.0
    DescriptionBreast cancer data in Wisconsin.
    Source TypeFile
    Data FormatCSV
    Column Header AvailableYes
  4. Click CREATE DATASET to save your changes. The Datasets page opens and the dataset you entered is displayed as follows.
    Image Removed Note that the status of the dataset is Processing.Click REFRESH. The status of the dataset changes to Processed as shown below.
    Image RemovedImage Added 

Step 2: Create a project

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  1. Log into the ML Management Console if you are not already logged in.
  2. Click ADD PROJECT


    If you are already logged in, you can click CREATE PROJECT in the DATASETS page as shown below. 
     
  3. In the Create Project page, enter information as shown below.

    Parameter NameDescription
    Project NameBreast_Cancer_data_analytics_project
    DescriptionThis project performs predictive analysis on the breast cancer data in Wisconsin.
    DatasetBreast_Cancer_Dataset
  4. Click Create Project to save the information. The project is displayed in the Projects page as follows.
     

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  1. Log into the ML UI if you are not already logged in. 
  2. Click the You have X projects link as shown below.
  3. Click on the Breast_Cancer_data_analytics_project project to expand it.
  4. Enter breast_cancer_analysis_1 as the analysis name and click CREATE ANALYSIS. The following page appears displaying the summary statistics.
     
  5. Click Next without making any changes to the summary statistics.

    The Explore view opens. Note that Parallel Sets and Trellis Chart visualisations are enabled, and Scatter Plot and Cluster Diagram visualisations are disabled. This is determined by the feature types of the dataset. 
  6. Click Next. The Algorithms view is displayed. Enter values as shown below.

    ParameterValue
    Algorithm nameLOGISTIC REGRESSION L_BFGS
    Response variableClass
    Train data fraction0.7
  7. Click Next. The Parameters view appears. Enter L2 as the reg type.
     
  8. Click Next. The Model view appears. Select Breast_Cancer_Dataset-1.0.0 as the dataset version.
     
  9. Click RUN to train the model.
    The training model is created as displayed as shown below.
    Image Removed
    Note that the status is In Progress.Click REFRESH. The status os the analysis changes as shown below.
     

Step 4: Predict using the model

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