I have a lists in one column of a dataframe df1
, and I want to check to see for each row if all elements of that list are in another column that is in a second dataframe df2
.
The two dataframes are something like this:
df1 df2
id | members | num | available |
1 |['a',b'] | one | ['a','b','c','d','e']|
2 |['b'] | two | ['a','b'] |
3 |['a','b','c'] | three| ['b','d','e'] |
I am trying to come up with a method that can give me which rows in df2
have all elements of members
for each row in df1
. Maybe something that yields this:
id | members | which_cols |
1 |['a',b'] | ['one','two'] |
2 |['b'] | ['one','two','three'] |
3 |['a','b','c'] | ['one'] |
I thought converting it into dictionaries like {k: list(v) for k,v in df1.groupby("id")["members"]}
and {i: list(j) for i,j in df2.groupby("num")["available"]}
might make it more flexible to achieve the desired output but still haven't found a method to get to what I'm looking for.
df2
will have about 300
rows with length of available
being as large as 25,000
. And df1
can be as big as 1M
rows with list length in members
up to 15. So I think efficiency will also be important.
c
does not appear intwo
?members
are a lot more abundant thanavailable
. You can make your problem a little easier by filtering out allmembers
lists with length more than15
as they wouldn't fit in any ofavailable
.available
will be like a master list andmembers
are subsets but they are not all in all rows ofdf2