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Greetings All.

I have a [(tuple): value] dicts as elements in a list as follows:

lst = [{('unit1', 'test1'): 11, ('unit1','test2'): 12}, {('unit2','test1'): 13, ('unit2','test2'):14 }]

testnames = ['test1','test2']
unitnames = ['unit1','unit2']

How to write to csv file with the following output?

unitnames, test1, test2

unit1, 11, 12

unit2, 13, 14

Thanks.

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1  
I can't undestand what you want to output....What's unitname? –  wong2 Mar 25 '11 at 12:16
    
my bad.. editted. the 1st line of the output is the headers for the csv. –  siva Mar 25 '11 at 13:18
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3 Answers

up vote 1 down vote accepted

The way you have lst grouped is redundant; all keys are unique, it might as well be a single dictionary, as

data = {
    ('unit1', 'test1'): 11,
    ('unit1', 'test2'): 12,
    ('unit2', 'test1'): 13, 
    ('unit2', 'test2'): 14
}

then

import csv

def getUniqueValues(seq):
    "Return sorted list of unique values in sequence"
    values = list(set(seq))
    values.sort()
    return values

def dataArray(data2d, rowIterField=0, rowLabel='', defaultVal=''):
    # get all unique unit and test labels
    rowLabels = getUniqueValues(key[rowIterField] for key in data2d)
    colLabels = getUniqueValues(key[1-rowIterField] for key in data2d)

    # create key-tuple maker
    if rowIterField==0:
        key = lambda row,col: (row, col)
    else:
        key = lambda row,col: (col, row)

    # header row
    yield [rowLabel] + colLabels
    for row in rowLabels:
        # data rows
        yield [row] + [data2d.get(key(row,col), defaultVal) for col in colLabels]

def main():
    with open('output.csv', 'wb') as outf:
        outcsv = csv.writer(outf)
        outcsv.writerows(dataArray(data, 0, 'unitnames'))

if __name__=="__main__":
    main()

and the output can easily be flipped (units across, tests down) by changing dataArray(data, 0, 'unitnames') to dataArray(data, 1, 'testnames').

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great. thanks! very helpful.. –  siva Mar 26 '11 at 13:10
    
do you mean the 'data2d' is the dict 'data'? –  siva Mar 26 '11 at 13:24
    
@siva: yes; if you pass data as the first argument to dataArray(), then inside dataArray it is referred to as data2d. In retrospect it probably should have been called something like 'paired_key_dict'; feel free to change it. –  Hugh Bothwell Mar 26 '11 at 15:07
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First, flatten the structure.

units = collections.defaultdict(lambda: collections.defaultdict(lambda: float('-inf')))
for (u, t), r in lst.iteritems():
  units[u][t] = r
table = [(u, t['test1'], t['test2']) for (u, t) in units.iteritems()]

Then use csv to write out the CSV file.

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Following code creates a dict that can be dumped to a csv:

from collections import defaultdict
d = defaultdict(list)
for (unit, test), val in lst.items():
    d[unit].append(val)
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