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4 added 1 character in body
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How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lamdalambda v: v in com_vals)

Improved according to comments:

Instead of the lambda-function, you can use a helper function for the apply():

com_vals = df['Home_team_scores'].unique()
def helper():
  return v in com_vals
df['full_scores_list'].apply(helper)

You can have more fine-grained control on the outputs and conditions with the helper() function.

How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lamda v: v in com_vals)

Improved according to comments:

Instead of the lambda-function, you can use a helper function for the apply():

com_vals = df['Home_team_scores'].unique()
def helper():
  return v in com_vals
df['full_scores_list'].apply(helper)

You can have more fine-grained control on the outputs and conditions with the helper() function.

How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lambda v: v in com_vals)

Improved according to comments:

Instead of the lambda-function, you can use a helper function for the apply():

com_vals = df['Home_team_scores'].unique()
def helper():
  return v in com_vals
df['full_scores_list'].apply(helper)

You can have more fine-grained control on the outputs and conditions with the helper() function.

3 deleted 171 characters in body
source | link

How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lamda v: v in com_vals)

Improved according to comments:

Instead of the lambda-function, you can use a helper function for the apply():

com_vals = df['Home_team_scores'].unique()
def helper():
  return v in com_vals
df['full_scores_list'].apply(helper)

You can have more fine-grainded controllgrained control on the outputs and conditions inwith the helper() function. I do not quite understand the in and outputs that you have, so this is all I can currently provide. be a little more detailed with an example dataframe and expected output

How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lamda v: v in com_vals)

Improved according to comments:

Instead of the lambda-function, you can use a helper function for the apply():

com_vals = df['Home_team_scores'].unique()
def helper():
  return v in com_vals
df['full_scores_list'].apply(helper)

You can more fine-grainded controll the outputs and conditions in the helper() function. I do not quite understand the in and outputs that you have, so this is all I can currently provide. be a little more detailed with an example dataframe and expected output

How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lamda v: v in com_vals)

Improved according to comments:

Instead of the lambda-function, you can use a helper function for the apply():

com_vals = df['Home_team_scores'].unique()
def helper():
  return v in com_vals
df['full_scores_list'].apply(helper)

You can have more fine-grained control on the outputs and conditions with the helper() function.

2 : augment according to comments
source | link

How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lamda v: v in com_vals)

Improved according to comments:

Instead of the lambda-function, you can use a helper function for the apply():

com_vals = df['Home_team_scores'].unique()
def helper():
  return v in com_vals
df['full_scores_list'].apply(helper)

You can more fine-grainded controll the outputs and conditions in the helper() function. I do not quite understand the in and outputs that you have, so this is all I can currently provide. be a little more detailed with an example dataframe and expected output

How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lamda v: v in com_vals)

How about something along the lines:

com_vals = df['Home_team_scores'].unique()
df['full_scores_list'].apply(lamda v: v in com_vals)

Improved according to comments:

Instead of the lambda-function, you can use a helper function for the apply():

com_vals = df['Home_team_scores'].unique()
def helper():
  return v in com_vals
df['full_scores_list'].apply(helper)

You can more fine-grainded controll the outputs and conditions in the helper() function. I do not quite understand the in and outputs that you have, so this is all I can currently provide. be a little more detailed with an example dataframe and expected output

1
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