What is the correct way to insert the values of numpy integer objects into databases in python 3? In python 2.7 numpy numeric datatypes insert cleanly into sqlite, but they don't in python 3

import numpy as np
import sqlite3
conn = sqlite3.connect(":memory:")
conn.execute("CREATE TABLE foo (id INTEGER NOT NULL, primary key (id))")
conn.execute("insert into foo values(?)", (np.int64(100),)) # <-- Fails in 3

The np.float types seem to still work just fine in both 2 and 3.

    conn.execute("insert into foo values(?)", (np.float64(101),))

In python 2, the numpy scalar integer datatypes are no longer instances of int, even converting integer-valued floating point numbers to ints.

   isinstance(np.int64(1), int)  # <- true for 2, false for python 3

Is this why the dbapi no longer works seamlessly with numpy?

  • 2
    A numpy integer type isn't just the byte representation of the number (it's .item() value); is an object, almost the same as a single element, 0d, array. So I don't think you can save it, in all of its numpy glory, in a database. You could save its integer value, or a some byte equivalent, but not the full numpy object. Is there anything in sqlite3 about saving a user defined object instance?
    – hpaulj
    Commented Aug 3, 2016 at 22:51
  • There is always the scary pickle-approach (targeting TEXT type), or something more modern and binary-based like MessagePack (targeting BLOB type).
    – sascha
    Commented Aug 3, 2016 at 23:15
  • What's the advantage to saving np.int64(100) instead of 100? Is there some useful information that you couldn't recover during a fetch? You might look at how modules like SQLAlchemy handle the sql-object interface.
    – hpaulj
    Commented Aug 3, 2016 at 23:49
  • stackoverflow.com/questions/18621513/… is an example of previous SO questions. The solution there to saving a whole array is to write np.save to a byteString and saving that as a custom type in the database. Search sqlite3 and numpy.
    – hpaulj
    Commented Aug 3, 2016 at 23:58
  • 1
    Py3 removed the distinction between integer and long. So some numpy integer dtypes no longer subclass integer. Floats still subclass. Can you still save an element of a float array?
    – hpaulj
    Commented Aug 4, 2016 at 12:15

3 Answers 3


According to sqlite3 docs:

To use other Python types with SQLite, you must adapt them to one of the sqlite3 module’s supported types for SQLite: one of NoneType, int, float, str, bytes.

So you can adapt np.int64 type. You should do something like this:

import numpy as np
import sqlite3

sqlite3.register_adapter(np.int64, lambda val: int(val))
conn = sqlite3.connect(":memory:")
conn.execute("CREATE TABLE foo (id INTEGER NOT NULL, primary key (id))")
conn.execute("insert into foo values(?)", (np.int64(100),))



Rather than:

sqlite3.register_adapter(np.int64, lambda val: int(val))

You can use:

sqlite3.register_adapter(np.int64, int)

Use the .item() method.


The advantage of this solution is that is portable and not sqlite3 specific.

For reference about numpy type conversions with the .item() method, refer to https://numpy.org/doc/stable/reference/generated/numpy.ndarray.item.html#numpy.ndarray.item

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