Help Center/ GaussDB(DWS)/ FAQs/ Database Usage/ How Do I Delete Duplicate Table Data in GaussDB(DWS)?
Updated on 2024-10-21 GMT+08:00

How Do I Delete Duplicate Table Data in GaussDB(DWS)?

When clearing dirty data in the database, you may retain only one piece of duplicate data. In this scenario, you can use the aggregate function or window function.

Constructing Table Data

  1. Create a table t_customer and insert data that contains duplicate records into the table.

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    CREATE TABLE t_customer (
      id int NOT NULL,
    cust_name varchar(32) NOT NULL COMMENT' Name',
    gender varchar(10) NOT NULL COMMENT' Gender',
      email varchar(32) NOT NULL COMMENT 'email',
      PRIMARY KEY (id)
    ) ;
    
    INSERT INTO t_customer VALUES ('1', 'Tom', 'Male', 'high_salary@sample.com');
    INSERT INTO t_customer VALUES ('2', 'Jennifer', 'Female', 'good_job@sample.com');
    INSERT INTO t_customer VALUES ('3', 'Tom', 'Male', 'high_salary@sample.com');
    INSERT INTO t_customer VALUES ('4', 'John', 'Male', 'good_job@sample.com');
    INSERT INTO t_customer VALUES ('5', 'Jennifer', 'Female', 'good_job@sample.com');
    INSERT INTO t_customer VALUES ('6', 'Tom', 'Male', 'high_salary@sample.com');
    

  2. Query the t_customer table.

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    SELECT * FROM t_customer ORDER BY id;
    

If the name, gender, and email of a customer are the same, the customer is regarded as a duplicate record. In the t_customer table, data whose IDs are 1, 3, and 6 is duplicate, and data whose IDs are 2 and 5 is also duplicate. Delete redundant data and retain one of them.

Method 1: Use the aggregate function min(expr).

Use aggregate functions to obtain non-duplicate rows with the smallest ID through subqueries, and then use NOT IN to delete duplicate data.

  1. Run the following command to query the unique row with the smallest ID:

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    SELECT
        min(id) id,
        cust_name,
        gender,
        COUNT( cust_name ) count 
    FROM t_customer 
    GROUP BY cust_name,gender
    ORDER BY id;
    

    According to the query result, duplicate data rows whose IDs are 3, 5, and 6 are filtered out.

  2. Use NOT IN to filter out duplicate data rows and delete them.

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    DELETE from t_customer where id not in (
    	SELECT
    	min(id) id
    	FROM t_customer
    	GROUP BY cust_name,gender
    );
    

  3. Query the t_customer table after duplicate data is deleted.

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    SELECT * FROM t_customer ORDER BY id;
    

    The command output indicates that duplicate data has been deleted.

Method 2: Use the window function row_number().

Use PARTITION BY to partition and sort columns, generate sequence number columns, and delete rows whose sequence numbers are greater than 1.

  1. Partition query. Sort columns by partition and generate sequence number columns.

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    SELECT
    	id,
    	cust_name,
    	gender,
    	ROW_NUMBER() OVER (PARTITION BY cust_name,gender ORDER BY id) num
    FROM t_customer;
    

    According to the command output, the data in num>1 is duplicate.

  2. Delete the data of num>1.

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    DELETE FROM t_customer WHERE id in (
       SELECT id FROM(
    	SELECT * FROM (
            SELECT ROW_NUMBER() OVER w AS row_num,id
    	FROM t_customer  
    	WINDOW w AS (PARTITION BY cust_name,gender ORDER BY id) )
       WHERE row_num >1 )
    );
    

  3. Query the t_customer table after duplicate data is deleted.

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    SELECT * FROM t_customer ORDER BY id;