# Tuple Numpy Data Type

I currently am reading in colors from a sqlite database in the following way:

``````import numpy as np, apsw
connection = apsw.Connection(db_name)
cursor = connection.cursor()
desc = {'names':('name','R','G','B'),'formats':('a3','float','float','float')}
colorlist = np.array(cursor.execute("SELECT name, R, G, B FROM Colors").fetchall(),desc)
``````

But I was hoping to read in this data in a numpy array with only two columns, where the second column is a tuple containing (R,G,B), i.e. something like:

``````desc = {'names':('name','Color'),'formats':('a3','float_tuple')}
colorlist = np.array(cursor.execute("SELECT name, R, G, B FROM Colors").fetchall(),desc)
``````

I want to do this to simplify some of my later statements where I extract the color from the array as a tuple and to eliminate my need to create a dictionary to do this for me:

``````colorlist[colorlist['name']=='BOS']['Color'][0]
``````

Thanks!

-

Do you literally need a `tuple`? Or do you just want the values to be grouped? You can create a numpy record array with arbitrary shapes for each of the fields...

``````>>> np.array([('ABC', (1, 2, 3)), ('CBA', (3, 2, 1))], dtype='3a, 3i')
array([('ABC', [1, 2, 3]), ('CBA', [3, 2, 1])],
dtype=[('f0', '|S3'), ('f1', '<i4', 3)])
``````

This works even for n-dimensional arrays:

``````>>> np.array([('ABC', ((1, 2, 3), (1, 2, 3))), ('CBA', ((3, 2, 1), (3, 2, 1)))],
dtype='a3, (2, 3)i')
array([('ABC', [[1, 2, 3], [1, 2, 3]]), ('CBA', [[3, 2, 1], [3, 2, 1]])],
dtype=[('f0', '|S3'), ('f1', '<i4', (2, 3))])
``````

Partially applied to your specific problem:

``````>>> desc = {'names':('name','Color'),'formats':('a3','3f')}
>>> colorlist = np.array([('ABC', (1, 2, 3)), ('CBA', (3, 2, 1))], desc)
>>> colorlist[colorlist['name']=='ABC']['Color'][0]
array([ 1.,  2.,  3.], dtype=float32)
``````

Using `rec.fromarrays` to generate a record array from two regular arrays:

``````>>> desc = {'names':('name','Color'),'formats':('a3','3f')}
>>> np.rec.fromarrays([['ABC', 'CBA'], [(1, 2, 3), (3, 2, 1)]], desc)[0][1]
array([ 1.,  2.,  3.], dtype=float32)
``````

A full solution:

``````color_query = cursor.execute("SELECT R, G, B FROM Colors").fetchall()
name_query = cursor.execute("SELECT name FROM Colors").fetchall()
desc = {'names':('name','Color'),'formats':('a3','3f')}
colorlist = np.rec.fromarrays([color_query, name_query], desc)
``````

If for some reason you can't split the query like that, you'll just have to split the results of the query, perhaps using a list comprehension:

``````colorlist = np.rec.fromarrays([[row[0]  for row in query],
[row[1:] for row in query]], desc)
``````
-
An example of the sqlite result from the cursor.execute(QUERY).fetchall() statement looks like this: [('BOS',.96,.85,.80)]. If I can find a way to get sqlite to return R, G, and B grouped, then this is a great solution, but I am not sure if that is possible. – hotshotiguana Sep 22 '11 at 19:53
See above for a couple of possible solutions. – senderle Sep 23 '11 at 12:24
That should do the trick. Thanks. – hotshotiguana Sep 23 '11 at 13:09