I need to programmatically insert tens of millions of records into a Postgres database. Presently I am executing thousands of insert statements in a single query.
Is there a better way to do this, some bulk insert statement I do not know about?
PostgreSQL has a guide on how to best populate a database initially, and they suggest using the COPY command for bulk loading rows. The guide has some other good tips on how to speed up the process, like removing indexes and foreign keys before loading the data (and adding them back afterwards).
There is an alternative to using COPY, which is the multirow values syntax that Postgres supports. From the documentation:
INSERT INTO films (code, title, did, date_prod, kind) VALUES ('B6717', 'Tampopo', 110, '1985-02-10', 'Comedy'), ('HG120', 'The Dinner Game', 140, DEFAULT, 'Comedy');
The above code inserts two rows, but you can extend it arbitrarily, until you hit the maximum number of prepared statement tokens (it might be $999, but I'm not 100% sure about that). Sometimes one cannot use COPY, and this is a worthy replacement for those situations.
One way to speed things up is to explicitly perform multiple inserts or copy's within a transaction (say 1000). Postgres's default behavior is to commit after each statement, so by batching the commits, you can avoid some overhead. As the guide in Daniel's answer says, you may have to disable autocommit for this to work. Also note the comment at the bottom that suggests increasing the size of the wal_buffers to 16 MB may also help.
UNNEST function with arrays can be used along with multirow VALUES syntax. I'm think that this method is slower than using
COPY but it is useful to me in work with psycopg and python (python
list passed to
cursor.execute becomes pg
INSERT INTO tablename (fieldname1, fieldname2, fieldname3) VALUES ( UNNEST(ARRAY[1, 2, 3]), UNNEST(ARRAY[100, 200, 300]), UNNEST(ARRAY['a', 'b', 'c']) );
VALUES using subselect with additional existance check:
INSERT INTO tablename (fieldname1, fieldname2, fieldname3) SELECT * FROM ( SELECT UNNEST(ARRAY[1, 2, 3]), UNNEST(ARRAY[100, 200, 300]), UNNEST(ARRAY['a', 'b', 'c']) ) AS temptable WHERE NOT EXISTS ( SELECT 1 FROM tablename tt WHERE tt.fieldname1=temptable.fieldname1 );
the same syntax to bulk updates:
UPDATE tablename SET fieldname1=temptable.data FROM ( SELECT UNNEST(ARRAY[1,2]) AS id, UNNEST(ARRAY['a', 'b']) AS data ) AS temptable WHERE tablename.id=temptable.id;
You can use
COPY table TO ... WITH BINARY which is "somewhat faster than the text and CSV formats." Only do this if you have millions of rows to insert, and if you are comfortable with binary data.
((this is a WIKI you can edit and enhance the answer!))
The term "bulk data" is related to "a lot of data", so it is natural to use original raw data, with no need to transform it into SQL. Typical raw data files for "bulk insert" are CSV and JSON formats.
In ETL applications and ingestion processes, we need to change the data before inserting it. Temporary table consumes (a lot of) disk space, and it is not the faster way to do it. The PostgreSQL foreign-data wrapper (FDW) is the best choice.
CSV example. Suppose the
tablename (x, y, z) on SQL and a CSV file like
fieldname1,fieldname2,fieldname3 etc,etc,etc ... million lines ...
You can use the classic SQL
COPY to load (as is original data) into
tmp_tablename, them insert filtered data into
tablename... But, to avoid disk consumption, the best is to ingested directly by
INSERT INTO tablename (x, y, z) SELECT f1(fieldname1), f2(fieldname2), f3(fieldname3) -- the transforms FROM tmp_tablename_fdw -- WHERE condictions ;
You need to prepare database for FDW, and instead static
tmp_tablename_fdw you can use a function that generates it:
CREATE EXTENSION file_fdw; CREATE SERVER import FOREIGN DATA WRAPPER file_fdw; CREATE FOREIGN TABLE tmp_tablename_fdw( ... ) SERVER import OPTIONS ( filename '/tmp/pg_io/file.csv', format 'csv');
JSON example. A set of two files,
Ranger_Policies2.json can be ingested by:
INSERT INTO tablename (fname, metadata, content) SELECT fname, meta, j -- do any data transformation here FROM jsonb_read_files('myRawData%.json') -- WHERE any_condiction_here ;
where the function jsonb_read_files() reads all files of a folder, defined by a mask:
CREATE or replace FUNCTION jsonb_read_files( p_flike text, p_fpath text DEFAULT '/tmp/pg_io/' ) RETURNS TABLE (fid int, fname text, fmeta jsonb, j jsonb) AS $f$ WITH t AS ( SELECT (row_number() OVER ())::int id, f AS fname, p_fpath ||'/'|| f AS f FROM pg_ls_dir(p_fpath) t(f) WHERE f LIKE p_flike ) SELECT id, fname, to_jsonb( pg_stat_file(f) ) || jsonb_build_object('fpath', p_fpath), pg_read_file(f)::jsonb FROM t $f$ LANGUAGE SQL IMMUTABLE;
The most frequent method for "file ingestion" (mainlly in Big Data) is preserving original file on gzip format and transfering it with streaming algorithm, anything that can runs fast and without disc consumption in unix pipes:
gunzip remote_or_local_file.csv.gz | convert_to_sql | psql
So ideal (future) is a server option for format
Note after @CharlieClark comment: currently (2022) nothing to do, the best alternative seems
gunzip -c file.csv.gz | pgloader --type csv ... - pgsql:///target?foo
It mostly depends on the (other) activity in the database. Operations like this effectively freeze the entire database for other sessions. Another consideration is the datamodel and the presence of constraints,triggers, etc.
My first approach is always: create a (temp) table with a structure similar to the target table (
create table tmp AS select * from target where 1=0), and start by reading the file into the temp table.
Then I check what can be checked: duplicates, keys that already exist in the target, etc.
Then I just do a
do insert into target select * from tmp or similar.
If this fails, or takes too long, I abort it and consider other methods (temporarily dropping indexes/constraints, etc)
I implemented very fast Postgresq data loader with native libpq methods. Try my package https://www.nuget.org/packages/NpgsqlBulkCopy/
I just encountered this issue and would recommend csvsql (releases) for bulk imports to Postgres. To perform a bulk insert you'd simply
createdb and then use
csvsql, which connects to your database and creates individual tables for an entire folder of CSVs.
$ createdb test $ csvsql --db postgresql:///test --insert examples/*.csv
May be I'm late already. But, there is a Java library called
pgbulkinsert by Bytefish. Me and my team were able to bulk insert 1 Million records in 15 seconds. Of course, there were some other operations that we performed like, reading 1M+ records from a file sitting on Minio, do couple of processing on the top of 1M+ records, filter down records if duplicates, and then finally insert 1M records into the Postgres Database. And all these processes were completed within 15 seconds. I don't remember exactly how much time it took to do the DB operation, but I think it was around less then 5 seconds. Find more details from https://www.bytefish.de/blog/pgbulkinsert_bulkprocessor.html
As others have noted, when importing data into Postgres, things will be slowed by the checks that Postgres is designed to do for you. Also, you often need to manipulate the data in one way or another so that it's suitable for use. Any of this that can be done outside of the Postgres process will mean that you can import using the COPY protocol.
For my use I regularly import data from the httparchive.org project using pgloader. As the source files are created by MySQL you need to be able to handle some MySQL oddities such as the use of
\N for an empty value and along with encoding problems. The files are also so large that, at least on my machine, using FDW runs out of memory. pgloader makes it easy to create a pipeline that lets you select the fields you want, cast to the relevant data types and any additional work before it goes into your main database so that index updates, etc. are minimal.