熊猫:删除并计算有条件的连续重复项



val等于1时,我想删除并计算列 val中的重复项。

然后将start设置为第一行,将 end设置为连续重复的最后一行。

df = pd.DataFrame()
df['start'] = [1, 2, 3, 4, 5, 6, 18, 30, 31] 
df['end'] = [2, 3, 4, 5, 6, 18, 30, 31, 32]
df['val'] = [1 , 1, 1, 1, 1, 12, 12, 1, 1]
df
start  end  val
0      1    2    1
1      2    3    1
2      3    4    1
3      4    5    1
4      5    6    1
5      6   18   12
6     18   30   12
7     30   31    1
8     31   32    1

预期成果

start  end  val
0      1    6    5
1      6   18   12
2     18   30   12
3     30   32    2

我试过了。df[~((df.val==1) & (df.val == df.val.shift(1)) & (df.val == df.val.shift(-1)))]

start  end  val
0      1    2    1
4      5    6    1
5      6   18   12
6     18   30   12
7     30   31    1
8     31   32    1

但是我不知道如何完成预期的结果,有什么建议吗?

使用:

#mask by condition
m = df.val==1
#consecutive groups
g = m.ne(m.shift()).cumsum()
#filter by condition and aggregate per groups
df1 = df.groupby(g[m]).agg({'start':'first', 'end':'last', 'val':'sum'})
#concat together, for correct order create index by g
df = pd.concat([df1, df.set_index(g)[~m.values]]).sort_index().reset_index(drop=True)
print (df)
start  end  val
0      1    6    5
1      6   18   12
2     18   30   12
3     30   32    2

你也可以做一个带有掩码的两行代码来分组:

m = (df.val.ne(1) | df.val.ne(df.val.shift())).cumsum()
df = df.groupby(m).agg({'start': 'first', 'end': 'last', 'val': 'last'})

@jezrael的解决方案是完美的,但这里的方法略有不同:

df['aux'] = (df['val'] != df['val'].shift()).cumsum()
df.loc[df['val'] == 1, 'end'] = df[df['val'] == 1].groupby('aux')['end'].transform('last')
df.loc[df['val'] == 1, 'val'] = df.groupby('aux')['val'].transform('sum')
df = df.drop_duplicates(subset=df.columns.difference(['start']), keep='first')
df = df.drop(columns=['aux'])

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