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I've got a CSV with agency names and addresses. If I want a string of agency names with the same address (specifically the same zip code), how can I do that in R or Python? Whichever way is most efficient is preferable, but I'm still learning both. Google Refine gave me the counts of each zip code cluster already, but I just need to know which agencies correspond to those zips.

PS. Yes I know zip code isn't good to rely upon; the point of this is to illustrate that.

Example input data:

enter image description here

Final output (to be merged with shapefiles later):

enter image description here

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2 Answers 2

up vote 5 down vote accepted

You should be able to just construct a dictionary:

import csv

from collections import defaultdict

agencies = defaultdict(list)

with open('file.csv', 'r') as handle:
    reader = csv.reader(handle)

    for row in reader:
        agencies[row[2]].append(row[0])

Now, agencies contains a mapping of zip codes to agencies.

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@grich: That's a problem with csv. I've never seen it before, so here's a ton of Google results for that exact problem. –  Blender Dec 10 '12 at 19:47
    
Got it. Thanks! –  geraldarthur Dec 10 '12 at 19:55
    
what about writing the list to a single cell? writerows just wants to separate each item in the list into separate cells. –  geraldarthur Dec 10 '12 at 20:25
    
@grich: You can do for zipcode in agencies: writer.writerow(zipcode, *agencies[zipcode]) –  Blender Dec 10 '12 at 21:59

Here's a rough sketch of an R solution using simulated data:

set.seed(123)
dat <- data.frame(agency = sample(letters[1:15],100,replace = TRUE),
                  zipcode = sample(15,100,replace = TRUE))

head(dat)

#A base R solution
aggregate(dat$agency,
          by = list(dat$zipcode),
          FUN = function(x){paste(x,collapse = ",")})

#Or using the populat plyr package
library(plyr)
ddply(dat,
      .(zipcode),
      summarise,
      agencies = paste(agency,collapse = ","))

Screen shots of your data are not generally the most useful thing to show. A complete, minimal reproducible example would allow for more complete answers that are more directly helpful. (And lead to fewer follow-up questions on your part.)

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@grich joran's comment about a minimal reproducible example is very important. It dramatically increases the chance that complete answers that solve the actual problem can be given. –  Glen_b Dec 10 '12 at 21:39

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