CREATE MODEL
Function
CREATE MODEL trains a machine learning model and saves the model.
Precautions
- The model name must be unique. Pay attention to the naming format.
- The AI training duration fluctuates greatly, and in some cases, the training duration is long. If the duration specified by the GUC parameter statement_timeout is too long, the training will be interrupted. You are advised to set statement_timeout to 0 so that the statement execution duration is not limited.
Syntax
CREATE MODEL model_name USING algorithm_name [FEATURES { {expression [ [ AS ] output_name ]} [, ...] }] [TARGET { {expression [ [ AS ] output_name ]} [, ...] }] FROM { table_name | select_query } WITH hyperparameter_name = { hyperparameter_value | DEFAULT } [, ...] }
Parameter Description
- model_name
Name of the training model, which must be unique.
Value range: a string. It must comply with the identifier naming convention.
- architecture_name
Algorithm type of the training model.
Value range: a string. Currently, the value can be logistic_regression, linear_regression, svm_classification, or kmeans.
- attribute_list
Enumerated input column name of the training model.
Value range: a string. It must comply with the naming convention of data attributes.
- attribute_name
Target column name of the retraining model in a supervised learning task (simple expression processing can be performed).
Value range: a string. It must comply with the naming convention of data attributes.
- subquery
Data source.
Value range: a string. It must comply with the SQL syntax of databases.
Examples
CREATE TABLE houses ( id INTEGER, tax INTEGER, bedroom INTEGER, bath DOUBLE PRECISION, price INTEGER, size INTEGER, lot INTEGER, mark text ); insert into houses(id, tax, bedroom, bath, price, size, lot, mark) VALUES (1,590,2,1,50000,770,22100,'a+'), (2,1050,3,2,85000,1410,12000,'a+'), (3,20,2,1,22500,1060,3500,'a-'), (4,870,2,2,90000,1300,17500,'a+'), (5,1320,3,2,133000,1500,30000,'a+'), (6,1350,2,1,90500,850,25700,'a-'), (7,2790,3,2.5,260000,2130,25000,'a+'), (8,680,2,1,142500,1170,22000,'a-'), (9,1840,3,2,160000,1500,19000,'a+'), (10,3680,4,2,240000,2790,20000,'a-'), (11,1660,3,1,87000,1030,17500,'a+'), (12,1620,3,2,118500,1250,20000,'a-'), (13,3100,3,2,140000,1760,38000,'a+'), (14,2090,2,3,148000,1550,14000,'a-'), (15,650,3,1.5,65000,1450,12000,'a-'); CREATE MODEL price_model USING logistic_regression FEATURES size, lot TARGET mark FROM HOUSES WITH learning_rate=0.88, max_iterations=default;
Helpful Links
DROP MODEL and PREDICT BY
Feedback
Was this page helpful?
Provide feedbackThank you very much for your feedback. We will continue working to improve the documentation.See the reply and handling status in My Cloud VOC.
For any further questions, feel free to contact us through the chatbot.
Chatbot