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I have a file with data file named data.csv

name,value
A,10
1,20
B,30
3,20
...

So the problem is I use numpy with mlab to load this csvfile

data = mlab.csv2rec(data.csv) 

I have a question, how could I filter out the data.name is a number ?

for example: the output should be

1,20
3,20
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2 Answers 2

If you want to filter the recarray while preserving the structure of the filtered records:

filter_idx = [i for i, s in enumerate(data.names) if s.isdigit()]
data[filter_idx]

gives

rec.array([('1', 20), ('3', 20)], 
      dtype=[('names', 'S1'), ('value', '<i4')])

If you just want to print out the filtered records like in your example output I would just do it and catch the exceptions:

for rec in data:
    try:
        print int(rec.names), rec.value
    except:
        pass

prints

1 20
3 20
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Thanks! it looks great –  mark Jun 26 '13 at 7:48

You can use the isinstance().

for i in data:
    if isinstance(data.name, int):
        print data.name, data.value

or

new_data = list(x for x in data if isinstance(x.name, int))

works fine with this example:

data = [[1,10], ["a", 20], [2, 30], ["b", 40], [3, 50]]
new_data = list(x for x in data if isinstance(x[0], int))
print new_data
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In a numpy recarray, all the values in the column are the same type. This would only work if he is using object as the data type of the first field, which is not recommended, and almost certainly not what csv2rec returns by default. –  AFoglia Jun 28 '13 at 2:06

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