Sorting CSV in Python
I assumed sorting a CSV file on multiple text/numeric fields u开发者_JS百科sing Python would be a problem that was already solved. But I can't find any example code anywhere, except for specific code focusing on sorting date fields.
How would one go about sorting a relatively large CSV file (tens of thousand lines) on multiple fields, in order?
Python code samples would be appreciated.
Python's sort works in-memory only; however, tens of thousands of lines should fit in memory easily on a modern machine. So:
import csv
def sortcsvbymanyfields(csvfilename, themanyfieldscolumnnumbers):
with open(csvfilename, 'rb') as f:
readit = csv.reader(f)
thedata = list(readit)
thedata.sort(key=operator.itemgetter(*themanyfieldscolumnnumbers))
with open(csvfilename, 'wb') as f:
writeit = csv.writer(f)
writeit.writerows(thedata)
Here's Alex's answer, reworked to support column data types:
import csv
import operator
def sort_csv(csv_filename, types, sort_key_columns):
"""sort (and rewrite) a csv file.
types: data types (conversion functions) for each column in the file
sort_key_columns: column numbers of columns to sort by"""
data = []
with open(csv_filename, 'rb') as f:
for row in csv.reader(f):
data.append(convert(types, row))
data.sort(key=operator.itemgetter(*sort_key_columns))
with open(csv_filename, 'wb') as f:
csv.writer(f).writerows(data)
Edit:
I did a stupid. I was playing with various things in IDLE and wrote a convert
function a couple of days ago. I forgot I'd written it, and I haven't closed IDLE in a good long while - so when I wrote the above, I thought convert
was a built-in function. Sadly no.
Here's my implementation, though John Machin's is nicer:
def convert(types, values):
return [t(v) for t, v in zip(types, values)]
Usage:
import datetime
def date(s):
return datetime.strptime(s, '%m/%d/%y')
>>> convert((int, date, str), ('1', '2/15/09', 'z'))
[1, datetime.datetime(2009, 2, 15, 0, 0), 'z']
Here's the convert()
that's missing from Robert's fix of Alex's answer:
>>> def convert(convert_funcs, seq):
... return [
... item if func is None else func(item)
... for func, item in zip(convert_funcs, seq)
... ]
...
>>> convert(
... (None, float, lambda x: x.strip().lower()),
... [" text ", "123.45", " TEXT "]
... )
[' text ', 123.45, 'text']
>>>
I've changed the name of the first arg to highlight that the per-columns function can do what you need, not merely type-coercion. None
is used to indicate no conversion.
You bring up 3 issues:
- file size
- csv data
- sorting on multiple fields
Here is a solution for the third part. You can handle csv data in a more sophisticated way.
>>> data = 'a,b,c\nb,b,a\nb,c,a\n'
>>> lines = [e.split(',') for e in data.strip().split('\n')]
>>> lines
[['a', 'b', 'c'], ['b', 'b', 'a'], ['b', 'c', 'a']]
>>> def f(e):
... field_order = [2,1]
... return [e[i] for i in field_order]
...
>>> sorted(lines, key=f)
[['b', 'b', 'a'], ['b', 'c', 'a'], ['a', 'b', 'c']]
Edited to use a list comprehension, generator does not work as I had expected it to.
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