# Aggregate daily data to calculate monthly average

Hello I am a new user to Python and I am having problem doing what I imagined was a fairly basic task.

I have several (>50) csv files containing daily snow depth data. I would like to iterate through the csv files and calculate monthly means for the snow depth. Data example:

``````Date,SD
1/1/2000,36
1/2/2000,36
1/3/2000,38
1/4/2000,40
2/1/2000,48
2/2/2000,48
``````

In other words I would like to calculate monthly snow depth averages and write the output to a new csv file. I was able to modify a different example of code for my data, but I am receiving Key Errors for using Date as the key value in my Dictionary.

Code so far:

``````from __future__ import division
import csv
from collections  import defaultdict

def default_factory():
return [0, None, None, 0]

dates = defaultdict(default_factory)
sd = int(row["SD"])
dates[row["Dates"]][0] += sd
max = dates[row["Dates"]][1]
dates[row["Dates"]][1] = amount if max is None else amount if amount > max else max
min = dates[row["Date"]][2]
dates[row["Dates"]][2] = amount if min is None else amount if amount < min else min
dates[row["Dates"]][3] += 1

for date in dates:
dates[date][3] = dates[date][0]/dates[date][3]

writer = csv.writer(open(r'C:\SandBox\VALIDATION\TestAvg.csv', 'w', newline = ''))
writer.writerow(["Date", "SD", "max", "min", "mean"])
writer.writerows([date] + dates[date] for date in dates)
``````

EDIT: Just to clarify, I am trying to achieve total monthly mean, i.e. January mean, February mean, etc... not calculate a mean for a single date.

-
Can you post the whole stacktrace/error? –  jgritty Mar 30 '12 at 20:29
If you are calculating mean and not median, why do you care about min and max? –  jgritty Mar 30 '12 at 20:37
Date,Snowdepth or Dates,SD? –  WolframH Mar 30 '12 at 20:42
As WolframH said your csv has the first line of "Date,Snowdepth" but your code is looking for "Dates,SD" –  jgritty Mar 30 '12 at 20:51
jgritty, that is just a relic of some code I used as a reference. Doesn't really matter if it is in the output or not. –  total_immortal Mar 30 '12 at 21:04

You might want to use a dictionary to make the code a little more readable.

``````from __future__ import division
import csv
from collections  import defaultdict

def default_factory():
return { "sum": 0, "max": None, "min": None, "count": 0}

dates = defaultdict(default_factory)
rows = []
date = row["Date"]
sd = int(row["Snowdepth"])
rows.append([date, sd])
month = date.split("/")[0]
r = dates[month]
r["sum"] += sd
max = r["max"]
r["max"] = sd if max is None else sd if sd > max else max
min = r["min"]
r["min"] = sd if min is None else sd if sd < min else min
r["count"] += 1

for date in dates:
r = dates[date]
r["avg"] = r["sum"]/r["count"]

writer = csv.writer(open(r'TestAvg.csv', 'w'))
writer.writerow(["Date", "SD", "max", "min", "mean"])
for row in rows:
r = dates[row[0].split("/")[0]]
writer.writerow(row + [r["max"], r["min"], r["avg"]])
``````
-
Thanks Gebb, worked pretty well! –  total_immortal Mar 30 '12 at 21:56

Someplaces you have used `Dates` as column name (e.g. `max = dates[row["Dates"]][1]`), and other place it is `Date` (e.g. `min = dates[row["Date"]][2]`), from you example of data looks like `Date` is the column name? so if you use same name everywhere it should be ok eg.

``````s="""Date,Snowdepth
1/1/2000,36
1/2/2000,36
1/3/2000,38
1/4/2000,40
2/1/2000,48
2/2/2000,48"""

import StringIO
import csv

print row['Date']
``````

output:

``````1/1/2000
1/2/2000
1/3/2000
1/4/2000
2/1/2000
2/2/2000
``````
-
``````from __future__ import division
import csv
from collections  import defaultdict

def default_factory():
return [0, None, None, 0]

dates = defaultdict(default_factory)

amount = int(row["Snowdepth"])
dates[row["Date"]][0] += amount
max = dates[row["Date"]][1]
dates[row["Date"]][1] = amount if max is None else amount if amount > max else max
min = dates[row["Date"]][2]
dates[row["Date"]][2] = amount if min is None else amoun if amount < min else min
dates[row["Date"]][3] += 1

for date in dates:
dates[date][3] = dates[date][0]/dates[date][3]

writer = csv.writer(open(r'TestAvg.csv', 'w'))
writer.writerow(["Date", "Snowdepth", "max", "min", "mean"])
writer.writerows([date] + dates[date] for date in dates)
``````

I fixed the code to use `Date` and `Snowdepth` everywhere as, that is what your sample csv provides. Also, you had a variable `amount` which was intended to be `sd` otherwise amount is not defined. I made that one `amount` everywhere.

It won't give very exciting results unless you have multiple entries for a single date.

For example, here is the output from your sample csv:

``````Date,Snowdepth,max,min,mean

1/3/2000,38,38,38,38.0

2/2/2000,48,48,48,48.0

2/1/2000,48,48,48,48.0

1/4/2000,40,40,40,40.0

1/1/2000,36,36,36,36.0

1/2/2000,36,36,36,36.0
``````
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I think you misunderstood my question. I would like to achieve monthly average (i.e. January mean of 36.6667) not daily average. –  total_immortal Mar 30 '12 at 21:02
Oh right, I totally missed that part. –  jgritty Mar 30 '12 at 23:32