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I am working on a report that has two tables like the ones shown
Table 1
User | LoginTime | LogoutTime | SessionKey |
A | 11/12/2019 12:00 | 11/12/2019 15:00 | key1 |
B | 11/12/2019 7:00 | 11/12/2019 10:00 | key2 |
A | 11/12/2019 17:00 | 11/12/2019 18:00 | key3 |
Table 2
User | ActivityTime |
A | 11/12/2019 12:30 |
A | 11/12/2019 14:00 |
B | 11/12/2019 8:00 |
A | 11/12/2019 17:30 |
B | 11/12/2019 9:00 |
I need a way to match each row in Table 2 with a row in Table 1 by matching the User as well as making sure the ActivityTime is between the LoginTime and LogoutTime. Is there a way to do this?
Solved! Go to Solution.
Hi @Anonymous ,
You can create column in table2 like DAX below.
SessionKey_matched =
MAXX (
TOPN (
1,
FILTER (
'Table 1',
'Table 1'[User] = 'Table 2'[User]
&& 'Table 1'[LogoutTime] > 'Table 2'[ActivityTime]
&& 'Table 1'[LoginTime] <= 'Table 2'[ActivityTime]
),
'Table 1'[LoginTime] && 'Table 1'[LogoutTime], DESC
),
'Table 1'[SessionKey]
)
Best Regards,
Amy
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Hi @Anonymous ,
You can create column in table2 like DAX below.
SessionKey_matched =
MAXX (
TOPN (
1,
FILTER (
'Table 1',
'Table 1'[User] = 'Table 2'[User]
&& 'Table 1'[LogoutTime] > 'Table 2'[ActivityTime]
&& 'Table 1'[LoginTime] <= 'Table 2'[ActivityTime]
),
'Table 1'[LoginTime] && 'Table 1'[LogoutTime], DESC
),
'Table 1'[SessionKey]
)
Best Regards,
Amy
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
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