76

How to alter column data type in Amazon Redshift database?

I am not able to alter the column data type in Redshift; is there any way to modify the data type in Amazon Redshift?

  • 5
    "Create table as select..." And design your new table with the better column type. – Guy Jun 15 '13 at 7:51
125

There is currently no way to change a column in a redshift database.

All I can think of is to add a new column with a correct datatype, then insert all data from old column to a new one, and finaly drop the old column.

Use code similar to that:

ALTER TABLE t1 ADD COLUMN new_column ___correct_column_type___;
UPDATE t1 SET new_column = column;
ALTER TABLE t1 DROP COLUMN column;
ALTER TABLE t1 RENAME COLUMN new_column TO column;

There will be a schema change - the newly added column will be last in a table (that may be a problem with COPY statement, keep that in mind - you can define a column order with COPY)

  • 4
    I would wrap this in a transaction... – erikcw Jan 12 '16 at 0:18
  • 3
    ALTER or for that matter any DDL statement commits immediately irrespective of weather its wrapped in a transaction or not. – Raniendu Singh Jun 24 '16 at 11:10
  • @RanienduSingh some databases do support transactional DDL statements. I haven't found an authoritative list, but most DDL statements in Redshift appear to work in a transaction. However, I think reordering the operations similar to the approach described here (rename, add, update, drop) may be more robust: simple.com/engineering/safe-migrations-with-redshift – Matt Good Aug 29 '17 at 0:56
38

to avoid the schema change mentioned by Tomasz:

BEGIN TRANSACTION;

ALTER TABLE <TABLE_NAME> RENAME TO <TABLE_NAME>_OLD;
CREATE TABLE <TABLE_NAME> ( <NEW_COLUMN_DEFINITION> );
INSERT INTO <TABLE_NAME> (<NEW_COLUMN_DEFINITION>)
SELECT <COLUMNS>
FROM <TABLE_NAME>_OLD;
DROP TABLE <TABLE_NAME>_OLD;

END TRANSACTION;
  • This is the method we use as well in order to avoid copy statement misaligned. – smb Oct 19 '17 at 6:19
  • Keep in mind that any views that used to select from old table continue to point to old table. The drop table query will show the dependency error which can be but should not be bypassed. – user1741851 Nov 30 '17 at 10:59
  • 1
    Thanks for this, it was really helpful. I used it on a table with 31 million rows and it only took 3 minutes using dc1.large type. Great! I also used a slightly simpler form: INSERT INTO <TABLE_NAME> SELECT * FROM <TABLE_NAME>_OLD; – Tom Feb 8 '18 at 15:09
  • Encapsulating with TRANSACTION is very important – louis_guitton Nov 5 at 19:09
11

Recent update (as of 15th March 2019) to Redshift

  1. allows to alter columns of ONLY varchar types.
  2. You can only increase the length of the field. You cannot decrease it.
  3. Alter column cannot be run inside a transaction block. (Good bye migration scripts)

From the documentation, https://docs.aws.amazon.com/redshift/latest/dg/r_ALTER_TABLE.html

ALTER COLUMN column_name TYPE new_data_type

A clause that changes the size of a column defined as a VARCHAR data type. Consider the following limitations:

  • You can’t alter a column with compression encodings BYTEDICT, RUNLENGTH, TEXT255, or TEXT32K.
  • You can't decrease the size less than maximum size of existing data.
  • You can't alter columns with default values.
  • You can't alter columns with UNIQUE, PRIMARY KEY, or FOREIGN KEY.
  • You can't alter columns inside a multi-statement block (BEGIN...END).
7

If you don't want to change the column order, an option will be creating a temp table, drop & create the new one with desired size and then bulk again the data.

CREATE TEMP TABLE temp_table AS SELECT * FROM original_table;
DROP TABLE original_table;
CREATE TABLE original_table ...
INSERT INTO original_table SELECT * FROM temp_table;

The only problem recreating the table is that you will need to grant again permissions and if the table is too bigger it will take a piece of time.

  • 1
    This is pretty similar to the existing answer from Wolli to rename and then copy the old table data into the new schema. Both will keep the column order, but this solution with a temp table requires copying the data twice. Once to copy into the temp table, and another to copy back to the new table. Renaming the table should be faster by only performing one copy. – Matt Good Aug 29 '17 at 0:33
4
ALTER TABLE publisher_catalogs ADD COLUMN new_version integer;

update publisher_catalogs set new_version = CAST(version AS integer);
ALTER TABLE publisher_catalogs DROP COLUMN version RESTRICT;
ALTER TABLE publisher_catalogs RENAME new_version to version;
3

(Recent update) It's possible to alter the type for varchar columns in Redshift.

ALTER COLUMN column_name TYPE new_data_type

Example:

CREATE TABLE t1 (c1 varchar(100))

ALTER TABLE t1 ALTER COLUMN c1 TYPE varchar(200)

Here is the documentation link

2

Redshift being columnar database doesn't allow you to modify the datatype directly, however below is one approach this will change the column order.

Steps -

1.Alter table add newcolumn to the table 2.Update the newcolumn value with oldcolumn value 3.Alter table to drop the oldcolumn 4.alter table to rename the columnn to oldcolumn

If you don't want to alter the order of the columns then solution would be to

1.create temp table with new column name

  1. copy data from old table to new table.

  2. drop old table

  3. rename the newtable to oldtable

  4. One important thing create a new table using like command instead simple create.

1

This method works for converting an (big) int column into a varchar

-- Create a backup of the original table
create table original_table_backup as select * from original_table;

-- Drop the original table, and then recreate with new desired data types
drop table original_table;

create table original_table (
  col1 bigint,
  col2 varchar(20) -- changed from bigint
);

-- insert original entries back into the new table
insert into original_table select * from original_table_backup;

-- cleanup
drop original_table_backup;
-1

for updating the same column in redshift this would work fine

UPDATE table_name 
SET column_name = 'new_value' WHERE column_name = 'old_value'

you can have multiple clause in where by using and, so as to remove any confusion for sql

cheers!!

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