I want to upload a huge number of entries (~600k) into a simple table in a PostgreSQL DB, with one foreign key, a timestamp and 3 float per each entry. However, it takes 60 ms per each entry to execute the core bulk insert described here, thus the whole execution would take 10 h. I have found out, that it is a performance issue of executemany() method, however it has been solved with the execute_values() method in psycopg2 2.7.

The code I run is the following:

#build a huge list of dicts, one dict for each entry
               values) # around 600k dicts in a list

I see that it is a common problem, however I have not managed to find a solution in sqlalchemy itself. Is there any way to tell sqlalchemy to call execute_values() in some occasions? Is there any other way to implement huge inserts without constructing the SQL statements by myself?

Thanks for the help!

  • 1
    I was about to suggest using SimpleTable.__table__.insert().values(values), which would compile to a single INSERT statement with multiple VALUES tuples, but it turned out that it was actually even slower on my machine. The compiling itself was as slow as using your method that relies on executemany(). Apr 10, 2017 at 10:50

2 Answers 2


Meanwhile it became possible (from SqlAlchemy 1.2.0) with the use_batch_mode flag on the create_engine() function. See the docs. It uses the execute_batch() function from psycopg.extras.

  • 2
    And they've expanded their support for the fast execution helpers even more: "Changed in version 1.3.7: the use_batch_mode flag has been superseded by a new parameter executemany_mode which provides support both for psycopg2’s execute_batch helper as well as the execute_values helper." docs.sqlalchemy.org/en/13/dialects/… Nov 28, 2019 at 21:07
  • 2
    And since 1.4, values_only is the default. The psycopg2 execute_values() extension is used for qualifying INSERT statements, which rewrites the INSERT to include multiple VALUES clauses so that many parameter sets can be inserted with one statement.
    – Jérôme
    Apr 22, 2021 at 20:16

Not the answer you are looking for in the sense that this does not address attempting to instruct SQLAlchemy to use the psycopg extras, and requires – sort of – manual SQL, but: you can access the underlying psycopg connections from an engine with raw_connection(), which allows using COPY FROM:

import io
import csv
from psycopg2 import sql

def bulk_copy(engine, table, values):
    csv_file = io.StringIO()
    headers = list(values[0].keys())
    writer = csv.DictWriter(csv_file, headers)


    # NOTE: `format()` here is *not* `str.format()`, but
    # `SQL.format()`. Never use plain string formatting.
    copy_stmt = sql.SQL("COPY {} (" +
                        ",".join(["{}"] * len(headers)) +
                        ") FROM STDIN CSV").\
               *(sql.Identifier(col) for col in headers))

    # Fetch a raw psycopg connection from the SQLAlchemy engine
    conn = engine.raw_connection()
        with conn.cursor() as cur:
            cur.copy_expert(copy_stmt, csv_file)




and then

bulk_copy(engine, SimpleTable.__table__, values)

This should be plenty fast compared to executing INSERT statements. Moving 600,000 records on this machine took around 8 seconds, ~13µs/record. You could also use the raw connections and cursor with the extras package.

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