I would like a fairly efficient way to condense an entire table to a hash value.

I have some tools that generate entire data tables, which can then be used to generate further tables, and so on. I'm trying to implement a simplistic build system to coordinate build runs and avoid repeating work. I want to be able to record hashes of the input tables so that I can later check whether they have changed. Building a table takes minutes or hours, so spending several seconds building hashes is acceptable.

A hack I have used is to just pipe the output of pg_dump to md5sum, but that requires transferring the entire table dump over the network to hash it on the local box. Ideally I'd like to produce the hash on the database server.

Finding the hash value of a row in postgresql gives me a way to calculate a hash for a row at a time, which could then be combined somehow.

Any tips would be greatly appreciated.

Edit to post what I ended up with: tinychen's answer didn't work for me directly, because I couldn't use 'plpgsql' apparently. When I implemented the function in SQL instead, it worked, but was very inefficient for large tables. So instead of concatenating all the row hashes and then hashing that, I switched to using a "rolling hash", where the previous hash is concatenated with the text representation of a row and then that is hashed to produce the next hash. This was much better; apparently running md5 on short strings millions of extra times is better than concatenating short strings millions of times.

create function zz_concat(text, text) returns text as 
    'select md5($1 || $2);' language 'sql';

create aggregate zz_hashagg(text) (
    sfunc = zz_concat,
    stype = text,
    initcond = '');
  • I am unaware of any way to do this. My first instinct would be to log the table creation and compare timestamps.
    – mikerobi
    Oct 26, 2010 at 1:32
  • 1
    I suppose you can't just run the pg_dump command on the server, right?
    – Joey Adams
    Oct 26, 2010 at 1:40
  • @Joey: +1. very pragmatic, probably fastest. Make this an answer.
    – Thilo
    Oct 26, 2010 at 1:45
  • @Joey: good idea, but no, I'm not able to run commands on the DB server
    – Ben
    Oct 26, 2010 at 2:08
  • Would abstime (postgresql.org/docs/8.3/static/contrib-spi.html) be a possible solution here? That has the benefit of fitting within Postgre natively... Oct 26, 2010 at 4:32

7 Answers 7


I know this is old question, however this is my solution:

    md5(CAST((array_agg(f.* order by id))AS text)) /* id is a primary key of table (to avoid random sorting) */
    foo f; 
  • 1
    This was the simplest solution I saw and it worked well for me. Thanks Tomas! Apr 10, 2020 at 18:08
SELECT md5(array_agg(md5((t.*)::varchar))::varchar)
  FROM (
        SELECT *
          FROM my_table
         ORDER BY 1
       ) AS t

just do like this to create a hash table aggregation function.

create function pg_concat( text, text ) returns text as '
    if $1 isnull then
        return $2;
       return $1 || $2;
    end if;
end;' language 'plpgsql';

create function pg_concat_fin(text) returns text as '
    return $1;
end;' language 'plpgsql';

create aggregate pg_concat (
    basetype = text,
    sfunc = pg_concat,
    stype = text,
    finalfunc = pg_concat_fin);

then you could use the pg_concat function to caculate the table's hash value.

select md5(pg_concat(md5(CAST((f.*)AS text)))) from f order by id
  • had to adjust (postgres 11.7) to select md5(pg_concat(md5(CAST((f.*)AS text))order by id)) from f . Also, for my largish table @harmic's/@Ben's solution runs in 1.5 min while this solution is still running after 45min
    – DrD
    Nov 2, 2020 at 9:14

I had a similar requirement, to use when testing a specialized table replication solution.

@Ben's rolling MD5 solution (which he appended to the question) seems quite efficient, but there were a couple of traps which tripped me up.

The first (mentioned in some of the other answers) is that you need to ensure that the aggregate is performed in a known order over the table you are checking. The syntax for that is eg.

select zz_hashagg(CAST((example.*)AS text) order by id) from example;

Note the order by is inside the aggregate.

The second is that using CAST((example.*)AS text will not give identical results for two tables with the same column contents unless the columns were created in the same order. In my case that was not guaranteed, so to get a true comparison I had to list the columns separately, for example:

select zz_hashagg(CAST((example.id, example.a, example.c)AS text) order by id) from example;

For completeness (in case a subsequent edit should remove it) here is the definition of the zz_hashagg from @Ben's question:

create function zz_concat(text, text) returns text as 
    'select md5($1 || $2);' language 'sql';

create aggregate zz_hashagg(text) (
    sfunc = zz_concat,
    stype = text,
    initcond = '');

Tomas Greif's solution is nice. But for huge enough table invalid memory alloc request size error will occur. So, it can be overcome with 2 options.

Option 1. Without batches

If the table is not big enough use string_agg and bytea data type.

    md5(string_agg(c.row_hash, '' order by c.row_hash)) table_hash
    foo f
    cross join lateral(select ('\x' || md5(f::text))::bytea row_hash) c

Option 2. With batches

If the query in previous option ends with error like

SQL Error [54000]: ERROR: out of memory Detail: Cannot enlarge string buffer containing 1073741808 bytes by 16 more bytes.

the row count limit is 1073741808 / 16 = 67108863 and the table should be divided to batches.

    md5(string_agg(t.batch_hash, '' order by t.batch_hash)) table_hash
        md5(string_agg(c.row_hash, '' order by c.row_hash)) batch_hash
        foo f
        cross join lateral(select ('\x' || md5(f::text))::bytea row_hash) c
    group by substring(row_hash for 3)
    ) t

Where 3 in group by clause divides row hashes to 16 777 216 batches (2: 65 536, 1: 256). Also other batching methods (e.g. strictly ntile) will work.

P.S. If you need to compare two tables this post may help.


Great answers.

In case by any means someone required not to use aggregation functions but maintaining support for tables sized several GiB, you can use this that has little performance penalties over the best answers in the case of largest tables.

  , VARIADIC order_key_columns CHARACTER VARYING [])
  order_key_columns_list CHARACTER VARYING;
  first BOOLEAN;
  working_cursor REFCURSOR;
  working_row_md5 CHARACTER VARYING;
  partial_md5_so_far CHARACTER VARYING;
  order_key_columns_list := '';

  first := TRUE;
  FOR i IN 1..array_length(order_key_columns, 1) LOOP
    IF first THEN
      first := FALSE;
      order_key_columns_list := order_key_columns_list || ', ';
    END IF;
    order_key_columns_list := order_key_columns_list || order_key_columns[i];

  query := (
    'SELECT ' ||
      'md5(CAST(t.* AS TEXT)) ' ||
    'FROM (' ||
      'SELECT * FROM ' || table_name || ' ' ||
      'ORDER BY ' || order_key_columns_list ||
    ') t');

  OPEN working_cursor FOR EXECUTE (query);
  -- RAISE NOTICE 'opened cursor for query: ''%''', query;

  first := TRUE;
    FETCH working_cursor INTO working_row_md5;
    IF first THEN
      first := FALSE;
      SELECT working_row_md5 INTO partial_md5_so_far;
      SELECT md5(working_row_md5 || partial_md5_so_far)
      INTO partial_md5_so_far;
    END IF;
    -- RAISE NOTICE 'partial md5 so far: %', partial_md5_so_far;

  -- RAISE NOTICE 'final md5: %', partial_md5_so_far;
  RETURN partial_md5_so_far :: CHARACTER VARYING;
$$ LANGUAGE plpgsql;

Used as:

SELECT table_md5(
  'table_name', 'sorting_col_0', 'sorting_col_1', ..., 'sorting_col_n'

As for the algorithm, you could XOR all the individual MD5 hashes, or concatenate them and hash the concatenation.

If you want to do this completely server-side you probably have to create your own aggregation function, which you could then call.

select my_table_hash(md5(CAST((f.*)AS text)) from f order by id 

As an intermediate step, instead of copying the whole table to the client, you could just select the MD5 results for all rows, and run those through md5sum.

Either way you need to establish a fixed sort order, otherwise you might end up with different checksums even for the same data.

  • "you need to establish a fixed sort order". That is if you want to rehash the hashes. For XOR this is not necessary. Makes me think that XOR may not be such a good idea.
    – Thilo
    Oct 26, 2010 at 1:44
  • 1
    You're right; XOR-aggregating the hashes means that if you have two identical rows, and they both change the same way, the final hash value will be the same as the original. Identical rows probably shouldn't be there, but I'd bet there are other properties of XOR that increase the chance of a collision too.
    – Ben
    Oct 26, 2010 at 2:31
  • Thanks for the pointer; I'll take a look at doing this. Unfortunately I use lots of different DBs (and new ones are created all the time), so I'll have to script the creation of the aggregation function as part of the build system. I'll come back and accept this answer if I don't get anything else.
    – Ben
    Oct 26, 2010 at 2:37

Your Answer

Reminder: Answers generated by Artificial Intelligence tools are not allowed on Stack Overflow. Learn more

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

Not the answer you're looking for? Browse other questions tagged or ask your own question.