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What is the best way to take a data file that contains a header row and read this row into a named tuple so that the data rows can be accessed by header name?

I was attempting something like this:

import csv
from collections import namedtuple

with open('data_file.txt', mode="r") as infile:
    reader = csv.reader(infile)
    Data = namedtuple("Data", ", ".join(i for i in reader[0]))
    next(reader)
    for row in reader:
        data = Data(*row)

The reader object is not subscriptable, so the above code throws a TypeError. What is the pythonic way to reader a file header into a namedtuple?

share|improve this question
up vote 26 down vote accepted

Use:

Data = namedtuple("Data", next(reader))

and omit the line:

next(reader)

Combining this with an iterative version based on martineau's comment below, the example becomes:

import csv
from collections import namedtuple
try:
    from itertools import imap
except ImportError:  # Python 3
    imap = map

with open("data_file.txt", mode="rb") as infile:
    reader = csv.reader(infile)
    Data = namedtuple("Data", next(reader))  # get names from column headers
    for data in imap(Data._make, reader):
        print(data.foo)
        # ...further processing of a line...
share|improve this answer
1  
drbunsen: After doing this you can change processing loop to: for data in map(Data._make, reader):. – martineau Jul 12 '15 at 15:56
    
@spinup: I changed your edit a little. – martineau Oct 26 '15 at 20:25

Please have a look at csv.DictReader. Basically, it provides the ability to get the column names from the first row as you're looking for and, after that, lets you access to each column in a row by name using a dictionary.

If for some reason you still need to access the rows as a collections.namedtuple, it should be easy to transform the dictionaries to named tuples as follows:

with open('data_file.txt') as infile:
    reader = csv.DictReader(infile)
    Data = collections.namedtuple('Data', reader.fieldnames)
    tuples = [Data(**row) for row in reader]
share|improve this answer
    
Problem with this solution is that every row is converted to a dictionary, and then converted to the named tuple. Inefficient if the intermediate dictionary is not required. – Chris Cogdon Sep 15 '15 at 20:48

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