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columnFour = [data[0::, 1] == 1, data[0::, 4]]

The data is a table, with 1 being the variable I'm selecting for (where it equals 1), and 4 the variable I'm trying to draw out into an array of one dimension.

Some of the values in the 4 column are blank (''), and the error I'm getting from python is as follows:

Traceback (most recent call last):
File "<filename>", line 62, in <module>
  print np.mean(age, dtype=float);
File "D:\Python27\lib\site-packages\numpy\core\fromnumeric.py", line 2373, in mean
  return _wrapit(a, 'mean', axis, dtype, out)
File "D:\Python27\lib\site-packages\numpy\core\fromnumeric.py", line 37, in _wrapit
  result = getattr(asarray(obj),method)(*args, **kwds)
File "D:\Python27\lib\site-packages\numpy\core\numeric.py", line 235, in asarray
  return array(a, dtype, copy=False, order=order)
ValueError: cannot set an array element with a sequence

How can I either select all the non-null numbers in column 4, or select all including those nulls? I would prefer to select all, but either would work. I'm trying to come up with an average of the data in column 4 to reinsert into the null values, but averaging them across different column 1 values.

For example all the numbers in column 4 where column 1 == 1 would get averaged, and then the nulls where column 1 == 1 would get that average re-inserted.

EDIT: I used a for loop to just go through the data.

for x in data: if x[1] == '1' and x[4]: first.append(np.float(x[4]))
if x[1] == '2' and x[4]: second.append(np.float(x[4])) if x[1] == '3' and x[4]: third.append(np.float(x[4]))

The result is three arrays that have the different values I was looking for, and can then be averaged and put back into the holes in the data.

share|improve this question
What kind of array is data? An object array? It seems to have both numbers and strings. Or is it all strings? –  tiago Dec 5 '12 at 0:37
columnFour = [data[0::, 1] == 1, data[0::, 4]] This line does not make a lot of sense. What exactly are you trying to do here? >The data is a table, with 1 being the variable I'm selecting for (where it equals 1), and 4 the variable I'm trying to draw out into an array of one dimension. Can you try to explain this more clearly? –  JoeZuntz Dec 5 '12 at 10:06
the data is a table of numbers and strings, but both columns I'm trying to process are numbers. The list comprehension is bad, I know. I want to choose all the numbers in column 4, where column 1 == 1. I want the result to be an array where in each columnFour[x][1] the number is one, and in each columnFour[x][4] the number is whatever it was in that row in the data array. –  Chuck Zigler Dec 5 '12 at 13:10

1 Answer 1

I think you want something like:

mask = data[:, 1] == 1
average = np.mean(data[mask, 4])

There is no list comprehension in the code you've provided, you just create a list with two elements, the first data[:, 1] == 1 and the second data[:, 4].

share|improve this answer
I'm going to keep working on this, but the first line of your answer returns the boolean result of the '==' on the first row. –  Chuck Zigler Dec 6 '12 at 1:02
yes mask is a boolean array, the result of the == comparison, which I use on the second line to index data. –  Bi Rico Dec 6 '12 at 1:26

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