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I have a list of hashes that look like the below.

import pandas as pd
import datetime

rows = [{
          "version" : "v1",
          "timestamp" : "2013-06-04T06:00:00.000Z",
          "event" : {
            "campaign_id" : "cid2504649263",
            "country" : "AU",
            "region" : "Cairns",
            "impressions" : 3000
          }
        },
        {
          "version" : "v1",
          "timestamp" : "2013-06-04T06:00:00.000Z",
          "event" : {
            "campaign_id" : "cid2504649263",
            "country" : "AU",
            "region" : "Cairns",
            "impressions" : 3000
          }
        },

        {
          "version" : "v1",
          "timestamp" : "2013-06-04T07:00:00.000Z",
          "event" : {
            "campaign_id" : "cid2504649263",
            "country" : "AU",
            "region" : "Cairns",
            "impressions" : 3000
          }
        }
            ]

hash_data = []
for row in rows:
    ts = row['timestamp']
    meta = row['event']
    ts = datetime.datetime.strptime(ts,'%Y-%m-%dT%H:%M:%S.000Z')
    meta['utcdt']=ts
    hash_data.append(meta)

data = pd.DataFrame(hash_data)
print data.values
grouped = data.groupby(['utcdt','campaign_id','region','country']).sum()
print grouped.values

[['cid2504649263' 'AU' 3000 'Cairns' datetime.datetime(2013, 6, 4, 6, 0)]
 ['cid2504649263' 'AU' 3000 'Cairns' datetime.datetime(2013, 6, 4, 6, 0)]
 ['cid2504649263' 'AU' 3000 'Cairns' datetime.datetime(2013, 6, 4, 7, 0)]]

My issue is this. I need to rollup data by time. Data should look like the below. How do I do that in pandas?

[
 ['cid2504649263' 'AU' 6000 'Cairns' datetime.datetime(2013, 6, 4, 6, 0)]
 ['cid2504649263' 'AU' 3000 'Cairns' datetime.datetime(2013, 6, 4, 7, 0)]]

If use the below:

grouped = data.groupby(['utcdt','campaign_id','region','country']).sum()
print grouped.values

[[ 6000.]
 [ 3000.]]
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Hashes or JSON? –  squiguy Jun 11 '13 at 2:08
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2 Answers 2

You're looking for drop_duplicates:

In [11]: data.drop_duplicates()
Out[11]:
     campaign_id country  impressions  region               utcdt
0  cid2504649263      AU         3000  Cairns 2013-06-04 06:00:00
2  cid2504649263      AU         3000  Cairns 2013-06-04 07:00:00

As an aside, 0.11.1 will come with an experimental read_json function, which would create a DataFrame directly from json (file, url or string)...

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(read_json will even parse the dates for you!) –  Andy Hayden Jun 11 '13 at 2:18
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Use the Pandas DataFrame, data = DataFrame(rows), function first to efficiently organize your data. Then you can use data.groupby(['timestamp']) to 'roll your data up' by time.

Here is an interactive tutorial on how to use pandas. An extensive tutorial list is located here. It will take you though all the basics easily and will let accomplish the analysis your looking to do.

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