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I try to add different datatypes to an array:

 mtype = np.dtype({'names':['a', 's', 'x', 'y'], 
                   'formats':['f8', 'S10', 'f8',   'f8']})

or

 mtype = np.dtype([("a", np.float), ("s", np.str), 
                   ("x", np.float), ("y", np.float)])

array:

   a[i] = np.empty([4, d[i]], dtype= mtype)

The data to array a is read from SQL queries, there are 4 different arrays a in a loop:

 a[0], a[1], a[2], a[3]

and for each different there is different SQL query...

The data in databes is read by sqlite3 package:

   cur.execute(('''CREATE TABLE example
        (a real, s text , t real, x real, y real)''')


   for j in range(len(rows)):
        a[i][0, j] = rows[j][0]
        a[i][1, j] = rows[j][1]
        a[i][2, j] = rows[j][2]
        a[i][3, j] = rows[j][3]

And then I get the error:

 File "C:\(..)", line 39,
 in diff_spec
      a[i][0, j] = rows[j][0]
 TypeError: expected a readable buffer object

If I make just the array a as:

  a[i] = np.empty([4, d[i]], float)

and I don't read second column (which is string), I will not get the error...

   for j in range(len(rows)):
        a[i][0, j] = rows[j][0]
        #a[i][1, j] = rows[j][1]
        a[i][2, j] = rows[j][2]
        a[i][3, j] = rows[j][3]

thanks in advance!

share|improve this question
    
Please confirm, is np an alias for numpy? –  cdarke Jun 20 '12 at 13:01
    
ah, I am sorry, yes, sure, it's numpy –  Purchawka Jun 20 '12 at 13:09
    
one more, it works when I create a array, like: a[i] = np.empty([4, d[i]], dtype=np.object) but then I can't use ex. log10 on a column of a –  Purchawka Jun 20 '12 at 13:10

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