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I'm running into some issues, trying to load a JSON file in my Python editor so that I can run some analysis on the data within.

The JSON file is in the following folder: 'C:\Users\Admin\JSON files\file1.JSON'

It contains the following tweet data (this is just one record, there are hundreds in there):

    "created": "Fri Mar 13 18:09:33 GMT 2014",
    "description": "Tweeting the latest Playstation news!",
    "favourites_count": 4514,
    "followers": 235,
    "following": 1345,
    "geo_lat": null,
    "geo_long": null,
    "hashtags": "",
    "id": 2144411414,
    "is_retweet": false,
    "is_truncated": false,
    "lang": "en",
    "location": "",
    "media_urls": "",
    "mentions": "",
    "name": "Playstation News",
    "original_text": null,
    "reply_status_id": 0,
    "reply_user_id": 0,
    "retweet_count": 4514,
    "retweet_id": 0,
    "score": 0.0,
    "screen_name": "SevenPS4",
    "source": "<a href=\"\" rel=\"nofollow\">twitterfeed</a>",
    "text": "tweetinfohere",
    "timezone": "Amsterdam",
    "url": null,
    "urls": "",
    "user_created": "2013-05-19",
    "user_id": 13313,
    "utc_offset": 3600

I am using the following code to try and test this data:

import json
import pandas as pa
z = pa.read_json('C:\Users\Admin\JSON files\file1.JSON')
d = pa.DataFrame.from_dict([{k:v} for k,v in z.iteritems() if k in ["retweet_count", "user_id", "is_retweet"]])
print d.retweet_count.sum()

When I run this, it successfully reads the JSON file then prints out a list of the retweet_count's like this:

0, 4514 1, 300 2, 450 3, 139 etc etc

My questions: How do I actually sum up all of the retweet_count/user_id values rather than just listing them like shown above?

How do I then divide this sum by the number of entries to get an average?

How can I choose a sample size of the JSON data rather than use it all? (I thought it was d.iloc[:10] but that doesn't work)

With the 'is_retweet' field in the JSON file, is it possible to make a count for the amount of false/trues that are given? IE within the JSON file, I want the number of tweets that were retweeted and the number that weren't.

Thanks in advance, yeah I'm pretty new to this.. gives:

<class 'pandas.core.frame.DataFrame'> Int64Index: 506 entries, 0 to 505 Data columns (total 31 columns): created 506 non-null object description 506 non-null object favourites_count 506 non-null int64 followers 506 non-null int64 following 506 non-null int64 geo_lat 10 non-null float64 geo_long 10 non-null float64 hashtags 506 non-null object id 506 non-null int64 is_retweet 506 non-null bool is_truncated 506 non-null bool lang 506 non-null object location 506 non-null object media_urls 506 non-null object mentions 506 non-null object name 506 non-null object original_text 172 non-null object reply_status_id 506 non-null int64 reply_user_id 506 non-null int64 retweet_id 506 non-null int64 retweet_count 506 non_null int64 score 506 non-null int64 screen_name 506 non-null object source 506 non-null object status_count 506 non-null int64 text 506 non-null object timezone 415 non-null object url 273 non-null object urls 506 non-null object user_created 506 non-null object user_id 506 non-null int64 utc_offset 506 non-null int64 dtypes: bool(2), float64(2), int64(11), object(16)

How come it is showing retweet_count and user_id as objects when I run

share|improve this question is showing the columns as non-null objects, when I assume they must be values, right? How can I change them to values, rather than objects?<class 'pandas.core.frame.DataFrame'> Int64Index: 2 entries, 0 to 1 Data columns (total 2 columns): retweet_count 1 non-null object user_id 1 non-null object dtypes: object(2) – user1745447 Apr 2 '14 at 13:39
What is the datatype of z? – myacobucci Apr 2 '14 at 13:40
check my edit at the bottom @myacobucci – user1745447 Apr 2 '14 at 13:49
Not exactly sure, I've honestly never used pandas before, I just scanned through the documentation real quick for the methods and classes you were using to get an understanding of them. throwing an int(retweet_count_value) should change those into integers without problems. – myacobucci Apr 2 '14 at 13:58
sorry, but where does that line go? – user1745447 Apr 2 '14 at 14:07

1 Answer 1

d.retweet_count is a list of dictionaries for your retweet_counts correct?

So to get the sum:

keys = d.retweet_count.keys()
sum = 0
for items in keys:

To get the average:

avg = sum/len(keys)

Now to get a sample size just divide up keys:

sample_keys = keys[0:10]

to get the mean

for items in sample_keys:
avg = sum/len(sample_keys)
share|improve this answer
I think when I used the following line d = pa.DataFrame.from_dict([{k:v} for k,v in z.iteritems() if k in ["retweet_count", "user_id", "is_retweet"]]) it turned my value columns into objects so that I couldn't run sum/mean/etc on them. will try the sample size in a sec, thanks. – user1745447 Apr 2 '14 at 13:57
When you run print d.retweet_count what is the exact output? – myacobucci Apr 2 '14 at 14:15
I have fixed that problem now thanks, having a problem now with trying to use samples of the JSON data, rather than all of it. I have z = pa.read_json('C:\Users\Admin\JSON files\file1.JSON') as before, but I wish to use sample of 100/200 of the retweet_count so I can find mean/max/etc of diff size samples. I've tried keys = z.retweet_count.keys() sample_keys = keys[:200], then calling the mean with sample_keys.mean, but it's not working, any ideas @myacobucci thanks – user1745447 Apr 2 '14 at 15:14
At what point do you get an error? sample_keys are just the key values for your sample size. They are not the values... you have to make a list of your values. – myacobucci Apr 2 '14 at 15:20
There is no method called mean... You have to calculate it yourself as I did before to get the average... I've added another example that shows you how to use the sample_keys.. though this should have been obvious. – myacobucci Apr 2 '14 at 15:28

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