There are calculation engines for scalar parameters, and there are higher-level calculation engines for tables, typically used for applications like financial planning, fee and commission calculations, network and contract computations...
Let me explain this shortly. Consider following formulas for scalars:
1) z = f1(x,y)
2) p = f2(z,n)
3) q = f3(x,p)
and so on. Configuring such functions and dependency trees requires a calculation engine with scalar parameters. I would (also) recommend following link for such a calculation engine written in c# as a good starting point:
As mentioned, there are also calculation engines with table functions that take tables as parameters. The main principle is but the same:
1) (T4, T5) = TableFunction1(T1, T2, T3)
2) (T7, T8) = TableFunction2(T2, T4)
and so on. Note that a table function can return multiple tables as outputs, as shown above.
There two key issues to be observed here:
a) The values of tables T7 and T8 depend on tables T2 and T4. Therefore, the tables T7 and T8 need to be updated by executing the function "TableFunction2" only if there is a change in one of the input parameters T2 or T4.
Similarly, T4 need to be updated only if T1, T2 or T3 is updated; dependency tree!
b) Separation of database from the calculation process: The calculation engine must work independent of any fixed data structure or database schema so that it can be integrated with any database and data structure.
You can find my related article where these principles are explained at:
Logical Architecture of a Rule-Based Calculation Framework
Now, a C#/.NET library for a calculation engine with tables as input and output parameters is being developed based on these principles.
Note to moderators: Please delete the link above if it is counted as self-promotion.