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I'm writing a Django-ORM enchancement that attempts to cache models and postpone model saving until the end of the transaction. It's all almost done, however I came across an unexpected difficulty in SQL syntax.

I'm not much of a DBA, but from what I understand, databases don't really work efficiently for many small queries. Few bigger queries are much better. For example it's better to use large batch inserts (say 100 rows at once) instead of 100 one-liners.

Now, from what I can see, SQL doesn't really supply any statement to perform a batch update on a table. The term seems to be confusing so, I'll explain what I mean by that. I have an array of arbitrary data, each entry describing a single row in a table. I'd like to update certain rows in the table, each using data from its corresponding entry in the array. The idea is very similar to a batch insert.

For example: My table could have two columns "id" and "some_col". Now the array describing the data for a batch update consists of three entries (1, 'first updated'), (2, 'second updated'), and (3, 'third updated'). Before the update the table contains rows: (1, 'first'), (2, 'second'), (3, 'third').

I came accross this post:

Why are batch inserts/updates faster? How do batch updates work?

which seems to do what I want, however I can't really figure out the syntax at the end.

I could also delete all the rows that require updating and reinsert them using a batch insert, however I find it hard to believe that this would actually perform any better.

I work with PostgreSQL 8.4, so some stored procedures are also possible here. However as I plan to open source the project eventually, any more portable ideas or ways to do the same thing on a different RDBMS are most welcome.

Follow up question: How to do a batch "insert-or-update"/"upsert" statement?

Test results

I've performed 100x times 10 insert operations spread over 4 different tables (so 1000 inserts in total). I tested on Django 1.3 with a PostgreSQL 8.4 backend.

These are the results:

  • All operations done through Django ORM - each pass ~2.45 seconds,
  • The same operations, but done without Django ORM - each pass ~1.48 seconds,
  • Only insert operations, without querying the database for sequence values ~0.72 seconds,
  • Only insert operations, executed in blocks of 10 (100 blocks in total) ~0.19 seconds,
  • Only insert operations, one big execution block ~0.13 seconds.
  • Only insert operations, about 250 statements per block, ~0.12 seconds.

Conclusion: execute as many operations as possible in a single connection.execute(). Django itself introduces a substantial overhead.

Disclaimer: I didn't introduce any indices apart from default primary key indices, so insert operations could possibly run faster because of that.

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  • 2
    +1 because I learned that "upsert" is a real word (it's even on wikipedia ) – SingleNegationElimination Aug 12 '11 at 16:36
  • Can you show us the statements you are running? I'm a bit confused by the term "batch update"? Can't you do all updates with a single UPDATE statement? With 9.1 you can also do UPDATE and INSERT in a single operation using writeable CTEs – a_horse_with_no_name May 4 '12 at 14:58
19

I've used 3 strategies for batch transactional work:

  1. Generate SQL statements on the fly, concatenate them with semicolons, and then submit the statements in one shot. I've done up to 100 inserts in this way, and it was quite efficient (done against Postgres).
  2. JDBC has batching capabilities built in, if configured. If you generate transactions, you can flush your JDBC statements so that they transact in one shot. This tactic requires fewer database calls, as the statements are all executed in one batch.
  3. Hibernate also supports JDBC batching along the lines of the previous example, but in this case you execute a flush() method against the Hibernate Session, not the underlying JDBC connection. It accomplishes the same thing as JDBC batching.

Incidentally, Hibernate also supports a batching strategy in collection fetching. If you annotate a collection with @BatchSize, when fetching associations, Hibernate will use IN instead of =, leading to fewer SELECT statements to load up the collections.

2
  • Thanks, executing many INSERT / UPDATE statements separated by semilocons sounds like a good idea. Indeed, Django ORM in its simplicity just executes each operation separately. – julx Aug 11 '11 at 10:55
  • It turned out to be a really good optimization. I've posted the results above. – julx Aug 12 '11 at 13:06
87

Bulk insert

You can modify the bulk insert of three columns by Ketema:

INSERT INTO "table" (col1, col2, col3)
  VALUES (11, 12, 13) , (21, 22, 23) , (31, 32, 33);

It becomes:

INSERT INTO "table" (col1, col2, col3)
  VALUES (unnest(array[11,21,31]), 
          unnest(array[12,22,32]), 
          unnest(array[13,23,33]))

Replacing the values with placeholders:

INSERT INTO "table" (col1, col2, col3)
  VALUES (unnest(?), unnest(?), unnest(?))

You have to pass arrays or lists as arguments to this query. This means you can do huge bulk inserts without doing string concatenation (and all its hazzles and dangers: sql injection and quoting hell).

Bulk update

PostgreSQL has added the FROM extension to UPDATE. You can use it in this way:

update "table" 
  set value = data_table.new_value
  from 
    (select unnest(?) as key, unnest(?) as new_value) as data_table
  where "table".key = data_table.key;

The manual is missing a good explanation, but there is an example on the postgresql-admin mailing list. I tried to elaborate on it:

create table tmp
(
  id serial not null primary key,
  name text,
  age integer
);

insert into tmp (name,age) 
values ('keith', 43),('leslie', 40),('bexley', 19),('casey', 6);

update tmp set age = data_table.age
from
(select unnest(array['keith', 'leslie', 'bexley', 'casey']) as name, 
        unnest(array[44, 50, 10, 12]) as age) as data_table
where tmp.name = data_table.name;

There are also other posts on StackExchange explaining UPDATE...FROM.. using a VALUES clause instead of a subquery. They might by easier to read, but are restricted to a fixed number of rows.

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    Found the update ... from example particularly useful, thanks. – Alan Buxton Feb 5 '18 at 13:36
  • 1
    I can vouch for this bulk insert method. I've noticed an order of magnitude improvement when separating multiple values statements with commas vs. entirely separate insert statements. My particular inserts finished in minutes instead of an hour as before. – Dan Torrey May 2 '18 at 19:06
  • 1
    For the Insert usage shown above, can a "ON CONFLICT" clause be added? If so, how does that function? – JoeG Jan 27 '20 at 19:34
13

Bulk inserts can be done as such:

INSERT INTO "table" ( col1, col2, col3)
  VALUES ( 1, 2, 3 ) , ( 3, 4, 5 ) , ( 6, 7, 8 );

Will insert 3 rows.

Multiple updating is defined by the SQL standard, but not implemented in PostgreSQL.

Quote:

"According to the standard, the column-list syntax should allow a list of columns to be assigned from a single row-valued expression, such as a sub-select:

UPDATE accounts SET (contact_last_name, contact_first_name) = (SELECT last_name, first_name FROM salesmen WHERE salesmen.id = accounts.sales_id);"

Reference: http://www.postgresql.org/docs/9.0/static/sql-update.html

1
10

it is pretty fast to populate json into recordset (postgresql 9.3+)

big_list_of_tuples = [
    (1, "123.45"),
    ...
    (100000, "678.90"),
]

connection.execute("""
    UPDATE mytable
    SET myvalue = Q.myvalue
    FROM (
        SELECT (value->>0)::integer AS id, (value->>1)::decimal AS myvalue 
        FROM json_array_elements(%s)
    ) Q
    WHERE mytable.id = Q.id
    """, 
    [json.dumps(big_list_of_tuples)]
)
1
  • Good solution without a temp table. It should be cursor.execute ... – Bruno Gabuzomeu Aug 17 '20 at 12:29
1

Turn off autocommit and just do one commit at the end. In plain SQL, this means issuing BEGIN at the start and COMMIT at the end. You would need to create a function in order to do an actual upsert.

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    The statements run inside a transaction. The problem is that they are sent to the database one by one, which turns out to be terribly inefficient. – julx Aug 11 '11 at 10:57

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