I have a three table structure in SQL Server 2012: people, connections and messages. The affected schema would be like this:
People: Id (pk bigint), name...
Connections: Id (pk bigint), IdPpl1 fk, IdPpl2 fk
Messages: Id (pk uniqueidentifier), Idconnection (fk), Messagetype (smallint)
On the Connections table, IdPpl1 and IdPpl2 are fk's to people Id. It could happen to appear in this table the same "two people" but swapping their column, E.G:
Id IdPpl1 IdPpl2 .. ...... ...... 3 101 105 8 105 101 9 101 106 10 106 101
The above situation is correct. Actually, those are the maximum occurrences of these "two people" in the table.
The Messages table holds the information of which "connection" sent a message.
Id IdConnection Messagetype .. ............ ........... 24 3 1 25 8 1 26 3 2 27 8 2 28 9 3 29 10 2
(Note: the messages are one-way, that's why there can be two rows in the connections table affecting the same two people: on the first row, one person is the sender and the other the receiver, on the second row they swap)
Given a People Id, I need a SQL query to show "least connectiontype messages mutually sent by mutually connected people" and an extra colum indicating if the messagetype matches or not. The result should be like this, for People Id 101:
Person_id Person_name IdConnection MatchingMsgType ......... ........... ............ ............... 105 John 3 1 106 Peter 9 0
The first row appears because of MsgIds 24 and 25. A potential row corresponding with messages 26 and 27 won't appear because a previous matching messagetype was found. The second row appears because of MsgIds 28 and 29, marking the messagetype as non-matching.
Currently I get all the "messages related to a person" and iterate through the datatable sorting, filtering and operating in-memory.
Would you go with a full-SQL solution (I want to preserve full isolation between app tiers) or is more suitable the datatable iteration?
Thanks in advance!!