将非日期时间列转换为索引,然后在列表理解中创建新的 DataFramenumpy.broadcast_to并通过以下方式连接在一起concat:
df1 = df.set_index('Col1')
dfs = [pd.DataFrame(data=np.broadcast_to(df1.iloc[:,[i]].to_numpy(),
shape=(len(df1), len(pd.date_range(s, e)))),
index=df1.index,
columns=pd.date_range(s, e))
if pd.notna(e)
else pd.DataFrame(df1.iloc[:,[i]].to_numpy(),
index=df1.index,
columns=[pd.to_datetime(s)])
for i, (s, e) in enumerate(df1.columns.str.split('-', expand=True))]
df = pd.concat(dfs, axis=1)
print (df)
2020-06-13 2020-06-14 2020-06-15 2020-06-16
Col1
A1 2.3 2.3 2.3 1.65
A2 1.4 1.4 1.4 1.40
A3 1.3 1.3 1.3 1.30
如果可能重叠:
print (df)
Col1 6/13/2020-6/16/2020 6/16/2020
0 A1 2.3 1.65 <- 6/16/2020 is overlap
1 A2 1.4 1.40
2 A3 1.3 1.30
df1 = df.set_index('Col1')
dfs = [pd.DataFrame(data=np.broadcast_to(df1.iloc[:,[i]].to_numpy(),
shape=(len(df1), len(pd.date_range(s, e)))),
index=df1.index,
columns=pd.date_range(s, e))
if pd.notna(e)
else pd.DataFrame(df1.iloc[:,[i]].to_numpy(),
index=df1.index,
columns=[pd.to_datetime(s)])
for i, (s, e) in enumerate(df1.columns.str.split('-', expand=True))]
df = pd.concat(dfs, axis=1).sum(level=0, axis=1)
print (df)
2020-06-13 2020-06-14 2020-06-15 2020-06-16
Col1
A1 2.3 2.3 2.3 3.95
A2 1.4 1.4 1.4 2.80
A3 1.3 1.3 1.3 2.60