After training the model, you can generate predictions.
To generate predictions, use the sample data from the
testing_data dataset. Even though the table
has labels for the Approved target column,
the column is not considered when generating predictions. This
allows you to compare the predictions to the actual values in
the dataset and determine if the predictions are reliable.
Once you determine the trained model is reliable for
generating predictions, you can start using unlabeled datasets
for generating predictions.
Complete the following tasks:
-
If not already done, load the model. You can use the session variable for the model that is valid for the duration of the connection. Alternatively, you can use the model handle previously set. For the option to set the user name, you can set it to
NULL.The following example uses the session variable.
mysql> CALL sys.ML_MODEL_LOAD(@model, NULL);The following example uses the model handle.
mysql> CALL sys.ML_MODEL_LOAD('classification_use_case', NULL); -
Make predictions for the test dataset by using the
ML_PREDICT_TABLEroutine.mysql> CALL sys.ML_PREDICT_TABLE(table_name, model_handle, output_table_name), [options]);Replace
table_name,model_handle, andoutput_table_namewith your own values. Addoptionsas needed.As of MySQL 9.4.1, you have the option to specify the input table and output table as the same table if specific conditions are met. See Input Tables and Output Tables to learn more.
The following example runs
ML_PREDICT_TABLEon the testing dataset previously created.mysql> CALL sys.ML_PREDICT_TABLE('classification_data.Loan_Testing', @model, 'classification_data.Loan_Testing_predictions',NULL);Where:
classification_data.Loan_Testingis the fully qualified name of the input table that contains the data to generate predictions for (database_name.table_name).@modelis the session variable for the model handle.classification_data.Loan_Testing_predictionsis the fully qualified name of the output table with predictions (database_name.table_name).NULLsets no options for the routine.
-
Query the
Approved,Prediction, andml_resultscolumns from the output table. This allows you to compare the real value with the generated prediction. You can also review the probabilities for each prediction. If needed, you can also query all the columns from the table (SELECT * FROM classification_predictions) to review all the data at once.mysql> SELECT Approved, Prediction, ml_results FROM Loan_Testing_predictions; +----------+------------+------------------------------------------------------------------------------------------------------+ | Approved | Prediction | ml_results | +----------+------------+------------------------------------------------------------------------------------------------------+ | Approved | Approved | {"predictions": {"Approved": "Approved"}, "probabilities": {"Approved": 0.9838, "Rejected": 0.0162}} | | Rejected | Rejected | {"predictions": {"Approved": "Rejected"}, "probabilities": {"Approved": 0.1135, "Rejected": 0.8865}} | | Approved | Approved | {"predictions": {"Approved": "Approved"}, "probabilities": {"Approved": 0.986, "Rejected": 0.014}} | | Rejected | Rejected | {"predictions": {"Approved": "Rejected"}, "probabilities": {"Approved": 0.0962, "Rejected": 0.9038}} | | Approved | Rejected | {"predictions": {"Approved": "Rejected"}, "probabilities": {"Approved": 0.0409, "Rejected": 0.9591}} | | Rejected | Rejected | {"predictions": {"Approved": "Rejected"}, "probabilities": {"Approved": 0.1082, "Rejected": 0.8918}} | | Approved | Approved | {"predictions": {"Approved": "Approved"}, "probabilities": {"Approved": 0.5535, "Rejected": 0.4465}} | | Rejected | Rejected | {"predictions": {"Approved": "Rejected"}, "probabilities": {"Approved": 0.1695, "Rejected": 0.8305}} | | Approved | Approved | {"predictions": {"Approved": "Approved"}, "probabilities": {"Approved": 0.9838, "Rejected": 0.0162}} | | Rejected | Approved | {"predictions": {"Approved": "Approved"}, "probabilities": {"Approved": 0.5542, "Rejected": 0.4458}} | +----------+------------+------------------------------------------------------------------------------------------------------+ 10 rows in set (0.0430 sec)The results show that two predictions do not match up with the real values.
To learn more about generating predictions for one or more rows of data, see Generate Predictions for a Row of Data.