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I'm trying to store a numpy array of about 1000 floats in a sqlite3 database but I keep getting the error "InterfaceError: Error binding parameter 1 - probably unsupported type".

I was under the impression a BLOB data type could be anything but it definitely doesn't work with a numpy array. Here's what I tried:

import sqlite3 as sql
import numpy as np
con = sql.connect('test.bd',isolation_level=None)
cur = con.cursor()
cur.execute("CREATE TABLE foobar (id INTEGER PRIMARY KEY, array BLOB)")
cur.execute("INSERT INTO foobar VALUES (?,?)", (None,np.arange(0,500,0.5)))
con.commit()

Is there another module I can use to get the numpy array into the table? Or can I convert the numpy array into another form in Python (like a list or string I can split) that sqlite will accept? Performance isn't a priority. I just want it to work!

Thanks!

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Don't know, but try to convert to list? np.arange(1000).tolist() –  reptilicus Sep 4 '13 at 18:51
    
or probably json.dumps(np.arange(1000).tolist()) –  reptilicus Sep 4 '13 at 18:53

2 Answers 2

up vote 8 down vote accepted

You could register a new array data type with sqlite3:

import sqlite3
import numpy as np
import io

def adapt_array(arr):
    out = io.BytesIO()
    np.save(out, arr)
    out.seek(0)
    try:
        # for Python3
        return out.read()
    except sqlite3.ProgrammingError:
        # for Python2
        # http://stackoverflow.com/a/3425465/190597 (R. Hill)
        return buffer(out.read())

def convert_array(text):
    out = io.BytesIO(text)
    out.seek(0)
    return np.load(out)


# Converts np.array to TEXT when inserting
sqlite3.register_adapter(np.ndarray, adapt_array)

# Converts TEXT to np.array when selecting
sqlite3.register_converter("array", convert_array)

x = np.arange(12).reshape(2,6)

con = sqlite3.connect(":memory:", detect_types=sqlite3.PARSE_DECLTYPES)
cur = con.cursor()
cur.execute("create table test (arr array)")

With this setup, you can simply insert the NumPy array with no change in syntax:

cur.execute("insert into test (arr) values (?)", (x, ))

And retrieve the array directly from sqlite as a NumPy array:

cur.execute("select arr from test")
data = cur.fetchone()[0]

print(data)
# [[ 0  1  2  3  4  5]
#  [ 6  7  8  9 10 11]]
print(type(data))
# <type 'numpy.ndarray'>
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2  
This works great for me. Just to make clear for others, the connection must be opened with the option detect_types=sqlite3.PARSE_DECLTYPES I ran in to trouble because I forgot to keep that in. –  Robin Newhouse Oct 23 '13 at 11:29
    
Beautiful! Thanks! –  Joe Flip Oct 28 '13 at 20:24
    
That buffer breaks 3.x compatibility (which is a weird thing to do in code that uses the io module and print as a function), and it is doesn't seem to be necessary in my 2.7.6 or 2.7.9. Maybe older versions of sqlite3 had a problem with it, but if 2.6+ works without it, you should probably remove it. See also this question. –  abarnert May 5 at 22:23
    
Also, if it is a problem with 2.x, does bytearray solve the problem? Because that would be portable to 3.x (without having to do a hack like defining try: buffer except NameError: buffer=bytes or def buffer(x): return x or something). –  abarnert May 5 at 22:31

This works for me:

import sqlite3 as sql
import numpy as np
import json
con = sql.connect('test.db',isolation_level=None)
cur = con.cursor()
cur.execute("DROP TABLE FOOBAR")
cur.execute("CREATE TABLE foobar (id INTEGER PRIMARY KEY, array BLOB)")
cur.execute("INSERT INTO foobar VALUES (?,?)", (None, json.dumps(np.arange(0,500,0.5).tolist())))
con.commit()
cur.execute("SELECT * FROM FOOBAR")
data = cur.fetchall()
print data
data = cur.fetchall()
my_list = json.loads(data[0][1])
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