I have a dataframe as below
Script Reco Rating Suggestion Mood
Rel Buy Sell BuyL Sell
ITC Sell Sell Sell Sell
INFO Sell BuyN Sell Sell
TCS Sell Sell Sell Sell
I want to get the rows where they is string 'Buy' in the columns 'Reco' , 'Rating', 'Suggestion' or 'Mood'.
I am able to accomplish that with the code below
df[(df['Reco'].str.contains('Buy', regex=True) | df['Rating'].str.contains('Buy', regex=True) | df['Suggestion'].str.contains('Buy', regex=True) | df['Mood'].str.contains('Buy', regex=True))]
However, the problem is that I have to type in the name of all columns except 'Script'. To avoid that, tried doing something like below
cols_to_include = df.columns[df.columns != 'Script']
df[(df[i].str.contains('Buy') for i in cols_to_include)]
This does not work & that is because
(df['Reco'].str.contains('Buy', regex=True) | df['Rating'].str.contains('Buy', regex=True) | df['Suggestion'].str.contains('Buy', regex=True) | df['Mood'].str.contains('Buy', regex=True))
returns
0 True
1 False
2 True
3 False
dtype: bool
Whereas
[df[i].str.contains('Buy') for i in cols_to_include]
Returns
[0 True
1 False
2 False
3 False
Name: Reco, dtype: bool, 0 False
1 False
2 True
3 False
Name: Rating, dtype: bool, 0 True
1 False
2 False
3 False
Name: Suggestion, dtype: bool, 0 False
1 False
2 False
3 False
Name: Mood, dtype: bool]
How to make [df[i].str.contains('Buy') for i in cols_to_include]
return the values as below?
0 True
1 False
2 True
3 False
dtype: bool
PS:
I am aware that can accomplish by output as below. But i am looking for a solution using for
loop.
cols_to_include = df.columns[df.columns != 'Script']
a = df[cols_to_include].astype(str).sum(axis=1)
df[a.str.contains('BUY', regex=True)]
|
should beor
.