Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am working on a program that (among other things) reads a CSV file in (it gets stored as an array of dicts in the form [{col1:data1a,col2:data2a},{col1:data1b,col2:data2b}] ). For each row, as part of other processing, I need to remap those keys to user entered values, which are provided in another dict so they can be used as parameters in an API call. The mapping array is in the form: {badname1:goodname1, badname2:goodname2,...}.

So I'd like to get from: {badname1:data1, badname2:data2,...} to {goodname1:data1, goodname2:data2,...}

I'd like to use something like zip() (although zip() yields {badname1:badname1,...}).

Seems like there should be an obvious solution that is alluding me.

EDIT: If the data is in a and the mapping in b:

dict(zip(b,a.itervalues()))

I get close, but it will only work in cases where the fields are known to be in the same order I think.

share|improve this question

3 Answers 3

up vote 7 down vote accepted
name_map = {'oldcol1': 'newcol1', 'oldcol2': 'newcol2', 'oldcol3': 'newcol3'...}

for row in rows:
    # Each row is a dict of the form: {'oldcol1': '...', 'oldcol2': '...'}
    row = dict([(name_map[name], val) for name, val in row.iteritems()])
    ...

Or in Python2.7+ with Dict Comprehensions:

for row in rows:
    row = {name_map[name]: val for name, val in row.items()}
share|improve this answer
2  
Yep. Also works without the [], as a generator expression. –  dF. Mar 14 '09 at 0:23
rows = [{"col1":"data1a","col2":"data2a"},{"col1":"data1b","col2":"data2b"}]
name_map = {"col1":"newcol1","col2":"newcol2"}

new_rows = [dict(zip(map(lambda x: name_map[x], r.keys()), r.values())) for r in rows]

Is this what you are after?

share|improve this answer

If you are using Python 2.7 or Python 3.x, you can use a dictionary comprehension. This is equivalent elo80ka's answer (which used a list comprehension), but produces slightly more readable code.

name_map = {'oldcol1': 'newcol1', 'oldcol2': 'newcol2', 'oldcol3': 'newcol3'...}

for row in rows:
    # Each row is a dict of the form: {'oldcol1': '...', 'oldcol2': '...'}
    row = {name_map[name]: val for name, val in row.iteritems()}
    ...
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.