Logo Questions Linux Laravel Mysql Ubuntu Git Menu
 

Polars Create Column with String Formatting

I have a polars dataframe:

df = pl.DataFrame({'schema_name': ['test_schema', 'test_schema_2'], 
                       'table_name': ['test_table', 'test_table_2'],
                       'column_name': ['test_column, test_column_2','test_column']})
schema_name table_name column_name
test_schema test_table test_column, test_column_2
test_schema_2 test_table_2 test_column

I have a string:

date_field_value_max_query = '''
    select '{0}' as schema_name, 
           '{1}' as table_name, 
           greatest({2})
    from {0}.{1}
    group by 1, 2
'''

I would like to use polars to add a column by using string formatting. The target dataframe is this:

schema_name table_name column_name query
test_schema test_table test_column, test_column_2 select test_schema, test_table, greatest(test_column, test_column_2) from test_schema.test_table group by 1, 2
test_schema_2 test_table_2 test_column select test_schema_2, test_table_2, greatest(test_column) from test_schema_2.test_table_2 group by 1, 2

In pandas, I would do something like this:

df.apply(lambda row: date_field_value_max_query.format(row['schema_name'], row['table_name'], row['column_name']), axis=1)

For polars, I tried this:

df.map_rows(lambda row: date_field_value_max_query.format(row[0], row[1], row[2]))

...but this returns only the one column, and I lose the original three columns. I know this approach is also not recommended for polars, when possible.

How can I perform string formatting across multiple dataframe columns with the output column attached to the original dataframe?

like image 319
OverflowingTheGlass Avatar asked Apr 17 '26 22:04

OverflowingTheGlass


1 Answers

Another option is to use polars.format to create your string. For example:

date_field_value_max_query = (
'''select {} as schema_name,
       {} as table_name,
       greatest({})
    from {}.{}
    group by 1, 2
'''
)

(
    df
    .with_columns(
        pl.format(date_field_value_max_query,
                  'schema_name',
                  'table_name',
                  'column_name',
                  'schema_name',
                  'table_name')
    )
)
shape: (2, 4)
┌───────────────┬──────────────┬────────────────────────────┬─────────────────────────────────────────────┐
│ schema_name   ┆ table_name   ┆ column_name                ┆ literal                                     │
│ ---           ┆ ---          ┆ ---                        ┆ ---                                         │
│ str           ┆ str          ┆ str                        ┆ str                                         │
╞═══════════════╪══════════════╪════════════════════════════╪═════════════════════════════════════════════╡
│ test_schema   ┆ test_table   ┆ test_column, test_column_2 ┆ select test_schema as schema_name,          │
│               ┆              ┆                            ┆        test_table as table_name,            │
│               ┆              ┆                            ┆        greatest(test_column, test_column_2) │
│               ┆              ┆                            ┆     from test_schema.test_table             │
│               ┆              ┆                            ┆     group by 1, 2                           │
│               ┆              ┆                            ┆                                             │
│               ┆              ┆                            ┆                                             │
│ test_schema_2 ┆ test_table_2 ┆ test_column                ┆ select test_schema_2 as schema_name,        │
│               ┆              ┆                            ┆        test_table_2 as table_name,          │
│               ┆              ┆                            ┆        greatest(test_column)                │
│               ┆              ┆                            ┆     from test_schema_2.test_table_2         │
│               ┆              ┆                            ┆     group by 1, 2                           │
│               ┆              ┆                            ┆                                             │
│               ┆              ┆                            ┆                                             │
└───────────────┴──────────────┴────────────────────────────┴─────────────────────────────────────────────┘

Donate For Us

If you love us? You can donate to us via Paypal or buy me a coffee so we can maintain and grow! Thank you!