Pandas - 延长平均 session 时间

标签 pandas group-by mean timedelta

以下 DF 表示从用户接收到的事件。用户ID和事件时间戳:

    id           timestamp
0    1 2020-09-01 18:14:35
1    1 2020-09-01 18:14:39
2    1 2020-09-01 18:14:40
3    1 2020-09-01 02:09:22
4    1 2020-09-01 02:09:35
5    1 2020-09-01 02:09:53
6    1 2020-09-01 02:09:57
7    2 2020-09-01 18:14:35
8    2 2020-09-01 18:14:39
9    2 2020-09-01 18:14:40
10   2 2020-09-01 02:09:22
11   2 2020-09-01 02:09:35
12   2 2020-09-01 02:09:53
13   2 2020-09-01 02:09:57

我想获得平均扩展 session 时间。 session 被定义为由超过 5 分钟的休息时间终止的一系列事件。

我将 session 分组如下:

df.groupby(['id', pd.Grouper(key="timestamp", freq='5min', origin='start')])

并找到正确的组:

   id           timestamp
3   1 2020-09-01 02:09:22
4   1 2020-09-01 02:09:35
5   1 2020-09-01 02:09:53
6   1 2020-09-01 02:09:57
   id           timestamp
0   1 2020-09-01 18:14:35
1   1 2020-09-01 18:14:39
2   1 2020-09-01 18:14:40
    id           timestamp
10   2 2020-09-01 02:09:22
11   2 2020-09-01 02:09:35
12   2 2020-09-01 02:09:53
13   2 2020-09-01 02:09:57
   id           timestamp
7   2 2020-09-01 18:14:35
8   2 2020-09-01 18:14:39
9   2 2020-09-01 18:14:40

现在我想计算每个用户在任何给定行的平均 session 时间(以秒为单位),因此输出为:

    id           timestamp  avg_session_time
0    1 2020-09-01 18:14:35  0 <-- first event
1    1 2020-09-01 18:14:39  4 <-- 2nd event after 4 seconds
2    1 2020-09-01 18:14:40  5 <-- 3rd event after 5 seconds
--- session end
3    1 2020-09-01 02:09:22  5 <-- first event of second session
4    1 2020-09-01 02:09:35  9 <-- 2nd event after 13 seconds (13 seconds in the 2nd session + 5 in first session divide by the number of sessions 2)
5    1 2020-09-01 02:09:53  18 <-- 3rd event after 31 seconds ((31 + 5) / 2 = 18)
6    1 2020-09-01 02:09:57  20 <-- 4th event after 35 seconds ((35 + 5) / 2 = 20)
---
7    2 2020-09-01 18:14:35  0
8    2 2020-09-01 18:14:39  4
9    2 2020-09-01 18:14:40  5
---
10   2 2020-09-01 02:09:22  5
11   2 2020-09-01 02:09:35  9
12   2 2020-09-01 02:09:53  18
13   2 2020-09-01 02:09:57  20

任何帮助都会很棒 :)

最佳答案

使用:

#converting to datetimes
df['timestamp'] = pd.to_datetime(df['timestamp'])

#grouping per 5Min and id
g = df.groupby(['id', pd.Grouper(key="timestamp", freq='5min', origin='start')])
#get first values per groups to new column
df['diff'] = g['timestamp'].transform('first')
#subtract by timestamp and convert timedeltas to seconds
df['diff'] = df['timestamp'].sub(df['diff']).dt.total_seconds()
#shifting per groups by id
df['new'] = df.groupby('id')['diff'].shift()
#get first value per groups, now shifted
df['new'] = g['new'].transform('first')
#replace 0 to misisng values and get average
df['last'] = df[['new','diff']].replace(0, np.nan).mean(axis=1).fillna(df['new'])

print (df)
    id           timestamp  diff  new  last
0    1 2020-09-01 18:14:35   0.0  0.0   0.0
1    1 2020-09-01 18:14:39   4.0  0.0   4.0
2    1 2020-09-01 18:14:40   5.0  0.0   5.0
3    1 2020-09-01 02:09:22   0.0  5.0   5.0
4    1 2020-09-01 02:09:35  13.0  5.0   9.0
5    1 2020-09-01 02:09:53  31.0  5.0  18.0
6    1 2020-09-01 02:09:57  35.0  5.0  20.0
7    2 2020-09-01 18:14:35   0.0  0.0   0.0
8    2 2020-09-01 18:14:39   4.0  0.0   4.0
9    2 2020-09-01 18:14:40   5.0  0.0   5.0
10   2 2020-09-01 02:09:22   0.0  5.0   5.0
11   2 2020-09-01 02:09:35  13.0  5.0   9.0
12   2 2020-09-01 02:09:53  31.0  5.0  18.0
13   2 2020-09-01 02:09:57  35.0  5.0  20.0

关于Pandas - 延长平均 session 时间,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/65561016/

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