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I have a dataset I'm doing analysis on. It turns out it can easily be enriched with demographic and community data which vastly improves the analytical results.

In order to do this I'm joining in demographic and community data before doing analysis. I need to exclude some fields from my core sample set, so my join looks something like this:

select sampledata.c1, 
       sampledata.c2, 
       demographics.*, 
       community.* 
from sample data 
    join demographics using (zip) 
    join community using (fips)

This gets me multiple zip or fips columns in the output which my analysis engine can't deal with. I can't specify each field by hand - the enrichment tables result in hundreds of columns in the end.

I could do select *, but then I'd have all the columns from my sample data which I don't want.

How can I join in my enrichment data without duplicating fields, whilst still selecting the columns I want from my sample table?

One thought I had, was if postgres (my database) could fully qualify each column in the output (like sample.c1, demographics.c1, etc) I would be perfectly happy with this.

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  • 2
    If you post the identical question to different stackexchange sites please mention this and link to the other site to avoid unnecessary efforts for people due to duplication.
    – j.p.
    Feb 25, 2013 at 9:44

1 Answer 1

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There is no column exclusion syntax in SQL, there is only column inclusion syntax (via the * operator for all columns, or listing the column names explicitly).

Generate list of only columns you want

However, you could generate the SQL statement with its hundreds of column names, minus the few duplicate columns you do not want, using schema tables and some built-in functions of your database.

SELECT
    'SELECT sampledata.c1, sampledata.c2, ' || ARRAY_TO_STRING(ARRAY(
        SELECT 'demographics' || '.' || column_name
        FROM information_schema.columns
        WHERE table_name = 'demographics' 
        AND column_name NOT IN ('zip')
        UNION ALL
        SELECT 'community' || '.' || column_name
        FROM information_schema.columns
        WHERE table_name = 'community' 
        AND column_name NOT IN ('fips')
    ), ',') || ' FROM sampledata JOIN demographics USING (zip) JOIN community USING (fips)'
AS statement

This only prints out the statement, it does not execute it. Then you just copy the result and run it.

If you want to both generate and run the statement dynamically in one go, then you may read up on how to run dynamic SQL in the PostgreSQL documentation.

Prepend column names with table name

Alternately, this generates a select list of all the columns, including those with duplicate data, but then aliases them to include the table name of each column as well.

SELECT
    'SELECT ' || ARRAY_TO_STRING(ARRAY(
        SELECT table_name || '.' || column_name || ' AS ' || table_name || '_' || column_name
        FROM information_schema.columns
        WHERE table_name in ('sampledata', 'demographics', 'community')
    ), ',') || ' FROM sampledata JOIN demographics USING (zip) JOIN community USING (fips)'
AS statement

Again, this only generates the statement. If you want to both generate and run the statement dynamically, then you'll need to brush up on dynamic SQL execution for your database, otherwise just copy and run the result.

If you really want a dot separator in the column aliases, then you'll have to use double-quoted aliases such as SELECT table_name || '.' || column_name || ' AS "' || table_name || '.' || column_name || '"'. However, double-quoted aliases can cause extra complications (case-sensitivity, etc); so, I used the underscore character instead to separate the table name from the column name within the alias, and the aliases can then be treated like regular column names else-wise.

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  • Actually this query works without excluding zip and fips codes - I don't mind them being duplicated as long as it's not a duplicate name. and I just checked with all the demographics filled in, it's 673 columns. Voting this as the right answer.
    – user2106341
    Feb 26, 2013 at 1:49
  • This might be a shorter approach. can I do my select * as a query, and have another query remove the columns I'm not interested in?
    – user2106341
    Feb 26, 2013 at 5:48
  • I'll update the answer for a way to prepend the column names with their respective table name. But I thought the main question was to exclude duplicate columns, since they mess up your analysis engine. Plus since they contain duplicate data, so I'm not sure I see the benefit of keeping them. However, it should satisfy your first comment.
    – Sybeus
    Feb 26, 2013 at 7:45
  • As for your second comment, I've updated the first paragraph of my answer to be more clear. There is no column exclusion syntax in SQL. In other words there is no SELECT * EXCEPT column_name clause or similar idea. Therefore, I'm not sure how you envision a shorter approach.
    – Sybeus
    Feb 26, 2013 at 8:25
  • The analysis engine cares about duplicate column names. Duplicated data (or data that closely correlates with each other) cancels itself out.
    – user2106341
    Feb 28, 2013 at 6:36

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