如何在 Pandas 的时间序列中检测间隔和连续周期

Noa*_*ift 8 python pandas

我有一个按日期索引的熊猫数据框。我想按期间选择所有连续间隔,按期间选择所有连续天数。我怎样才能做到这一点?

没有列但有日期索引的数据框示例:

In [29]: import pandas as pd

In [30]: dates = pd.to_datetime(['2016-09-19 10:23:03', '2016-08-03 10:53:39','2016-09-05 11:11:30', '2016-09-05 11:10:46','2016-09-05 10:53:39'])

In [31]: ts = pd.DataFrame(index=dates)
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如您所见, 2016-08-03 和 2016-09-19 之间存在差距。我如何检测这些以便我可以创建描述性统计数据,即 40 个间隙,中间间隙持续时间为“x”等。此外,我可以看到2016-09-05 和 2016-09-06 是两天范围。我如何检测这些并打印描述性统计数据?

理想情况下,结果将在每种情况下作为另一个 Dataframe 返回,因为我想使用 Dataframe 中的其他列进行分组。

Add*_*nke 8

Pandas 1.0.1 版有一个内置方法DataFrame.diff(),您可以使用它来完成此操作。一个好处是您可以使用 Pandas 系列函数mean()来快速计算gaps系列对象的汇总统计信息

from datetime import datetime, timedelta
import pandas as pd

# Construct dummy dataframe
dates = pd.to_datetime([
    '2016-08-03',
    '2016-08-04',
    '2016-08-05',
    '2016-08-17',
    '2016-09-05',
    '2016-09-06',
    '2016-09-07',
    '2016-09-19'])
df = pd.DataFrame(dates, columns=['date'])

# Take the diff of the first column (drop 1st row since it's undefined)
deltas = df['date'].diff()[1:]

# Filter diffs (here days > 1, but could be seconds, hours, etc)
gaps = deltas[deltas > timedelta(days=1)]

# Print results
print(f'{len(gaps)} gaps with average gap duration: {gaps.mean()}')
for i, g in gaps.iteritems():
    gap_start = df['date'][i - 1]
    print(f'Start: {datetime.strftime(gap_start, "%Y-%m-%d")} | '
          f'Duration: {str(g.to_pytimedelta())}')
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Dic*_*ter 6

这里有一些可以开始的事情:

df = pd.DataFrame(np.ones(5),columns = ['ones'])
df.index = pd.DatetimeIndex(['2016-09-19 10:23:03', '2016-08-03 10:53:39', '2016-09-05 11:11:30', '2016-09-05 11:10:46', '2016-09-06 10:53:39'])
daily_rng = pd.date_range('2016-08-03 00:00:00', periods=48, freq='D')
daily_rng = daily_rng.append(df.index)
daily_rng = sorted(daily_rng)
df =  df.reindex(daily_rng).fillna(0)
df = df.astype(int)
df['ones'] = df.cumsum()
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cumsum() 在“个”上创建一个分组变量,在您提供的点对数据进行分区。如果你打印 df 来表示电子表格,那就有意义了:

print df.head()

                     ones
2016-08-03 00:00:00     0
2016-08-03 10:53:39     1
2016-08-04 00:00:00     1
2016-08-05 00:00:00     1
2016-08-06 00:00:00     1

print df.tail()
                     ones
2016-09-16 00:00:00     4
2016-09-17 00:00:00     4
2016-09-18 00:00:00     4
2016-09-19 00:00:00     4
2016-09-19 10:23:03     5
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现在要完成:

df = df.reset_index()
df = df.groupby(['ones']).aggregate({'ones':{'gaps':'count'},'index':{'first_spotted':'min'}})
df.columns = df.columns.droplevel()
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这使:

              first_time  gaps
ones                          
0    2016-08-03 00:00:00     1
1    2016-08-03 10:53:39    34
2    2016-09-05 11:10:46     1
3    2016-09-05 11:11:30     2
4    2016-09-06 10:53:39    14
5    2016-09-19 10:23:03     1
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