2

I have a data like

ID,"url","used_at","active_seconds"
d684cd5f0189ab49c391c2b7bcbac0cb,"vk.com/videos168693045?section=all",2016-03-01 10:18:45,4
d684cd5f0189ab49c391c2b7bcbac0cb,"vk.com",2016-03-01 10:18:49,2
d684cd5f0189ab49c391c2b7bcbac0cb,"vk.com/feed",2016-03-01 10:18:51,2
d684cd5f0189ab49c391c2b7bcbac0cb,"vk.com/audios291781172",2016-03-01 10:18:53,2
d684cd5f0189ab49c391c2b7bcbac0cb,"vk.com/audios291781172?q=Тимур%20Гатиятуллин%20%7C%20Честный%20-%20Улетай%20полная%20версия",2016-03-01 10:18:55,6
d684cd5f0189ab49c391c2b7bcbac0cb,"vk.com/audios291781172?q=Тимур%20ГатиятуллинЧестный%20-%20Улетай%20полная%20версия",2016-03-01 10:19:01,2
d684cd5f0189ab49c391c2b7bcbac0cb,"vk.com/audios291781172?q=Тимур%20Гатиятуллин%20Честный%20-%20Улетай%20полная%20версия",2016-03-01 10:19:03,4
d684cd5f0189ab49c391c2b7bcbac0cb,"vk.com/audios168693045?section=all",2016-03-01 10:19:07,2

I need to count id in url that include audios. Desire output:

d684cd5f0189ab49c391c2b7bcbac0cb: 291781172 - 4, 168693045 - 1, etc

I don't know how can I get id after audio and count that.

data = pd.read_csv("get_id.csv")
data_name = pd.read_excel("name.xlsx")
names_panel = data_name['Names']
urls = data['url']
ids = data['ID']
for url in urls:
    if 'audios' in url:
        print url
2
  • IIUC then you could add a new column with the extracted user id and call value_counts on this: df['user_id'] = df['url'].str.extract(r'audios(\d+)?') df['user_id'].value_counts()
    – EdChum
    May 11 '16 at 9:05
  • If I need to print first ID from table d684cd5f0189ab49c391c2b7bcbac0cb and next count id from vk.com, to know, how often this user saw audio. This code count id after audio to all list of url, but I need to count it to every ID
    – user6230169
    May 11 '16 at 9:11
1
print pd.concat([df['ID'], df['url'].str.extract('(?P<count>audios)(?P<digit>\d+)')], axis=1).groupby(['ID', 'digit']).count()

                                            count
ID                               digit           
d684cd5f0189ab49c391c2b7bcbac0cb 168693045      1
                                 291781172      4
2
  • Thank you for your answer. And can you say, if I want get count of ID who visit vk.com, what should I do? I Know, that I can get all ID df['ID'].nunique(). I don't know how can I add condition about vk.com
    – user6230169
    May 11 '16 at 10:14
  • @hellmoore Try print df['url'].groupby([df['ID'], df['url'].str.contains('vk.com')]).count().reset_index(name='visit') first, and add ['ID'].count() to it and try again to retrieve the number what you need.
    – su79eu7k
    May 11 '16 at 15:52
1

I think you need str.extract. Then groupby by ID and new column no with size:

df[['no']] = df.url.str.extract(r'audios(\d+)?', expand=False)
print df

print df.groupby(['ID', 'no']).size().reset_index(name='count')
                                 ID         no  count
0  d684cd5f0189ab49c391c2b7bcbac0cb  168693045      1
1  d684cd5f0189ab49c391c2b7bcbac0cb  291781172      4

Or without creating new column:

print df.groupby([df.ID, df.url.str.extract(r'audios(\d+)?', expand=False)])
        .size().reset_index(name='count')
                                 ID        url  count
0  d684cd5f0189ab49c391c2b7bcbac0cb  168693045      1
1  d684cd5f0189ab49c391c2b7bcbac0cb  291781172      4

I little improve su79eu7k answer (add as_index=False for return DataFrame and remove warning by add expand=False) and then compare solutions:

Timing:

In [152]: %timeit pd.concat([df['ID'], df['url'].str.extract('(?P<count>audios)(?P<digit>\d+)', expand=False)], axis=1).groupby(['ID', 'digit'], as_index=False).count()
100 loops, best of 3: 3.5 ms per loop

In [153]: %timeit df.groupby([df.ID, df.url.str.extract(r'audios(\d+)?', expand=False)]).size().reset_index(name='count')
1000 loops, best of 3: 1.92 ms per loop
1
  • opps, you are right. answer was edited. Thank you, EdChum
    – jezrael
    May 11 '16 at 9:18
0

Here is a non-pythonic way to do it (using loops).

First IIUC the numbers you are trying to get always have the same length, am I right? then just do a list out of your url, select what you want, and create a string back out of it.

ids = df.ID.unique()
for identity in ids:
    my_list = []
    for url in urls:
        if 'audios' in url:
            my_list.append(''.join(list(url)[13:22]))
    for number in set(my_list):
        print(str(identity) + ': ' +number +': '+ str(my_list.count(number)))

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