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WhizzML: 101 - Using an OptiML

Following the schema described in the training and prediction workflow document, this is the code snippet that shows the minimal workflow to create an OptiML.

    ;; step 0: creating a source from the data in your remote "https://static.bigml.com/csv/iris.csv" file
    (define source-id (create-source {"remote" "https://static.bigml.com/csv/iris.csv"}))
    (log-info "Creating remote source: " source-id)
    ;; step 1: creating a dataset from the previously created `source`
    (define dataset-id (create-dataset source-id))
    (log-info "Creating dataset from source: " dataset-id)
    ;; step 2: creating an optiml. You can configure the maximum training
    ;; time or other arguments to control the type of models used or set
    ;; weight to be used. The example sets a `max_training_time" of 300 seconds
    ;; and uses only decision trees and logistic regressions
    (define optiml-id (create-optiml dataset-id
                                     {"max_training_time" 300
                                      "model_types" ["model"
                                      "logisticregression"]}))
    (log-info "Creating optiml from dataset: " optiml-id)

You can test this code in the WhizzML REPL.

Note that create calls are not waiting for the asynchronous resources to be finished before returning control. However, when a resource is used to generate another one, the next create call will wait for the origin resource to be finished before starting the creation process (e.g, (create-dataset source-id) will wait for the source to be finished before creating the dataset from it).

You can check all the available creation arguments in the API documentation.