There's quite a few different ways to index a table and you might choose to index multiple tables differently depending on what your most used SELECT statements are. The 2 fundamental types of indexes are called clustered and non-clustered.
Clustered indexes store all of the information on the index itself rather than storing a list of references that the database can pull from and then use to find the actual data. The easiest way to visualize this is to think of the index and the table itself as separate objects. In a clustered index, if the column you indexed is used as a criterion (in the WHERE clause) then the information the query pulls will be pulled directly from the index and not the table.
On the other hand, non-clustered indexes is more like a reference table. It tells the query where the actual information it is requesting is stored at on the table object itself. So in essence, there is an extra step involved of actually retrieving the data from the table itself when you use non-clustered indexes.
Clustered indexes store data physically on the hard disk in a sequential order, and as a result of that, you can only have one clustered index on a table (since we can only store a table in one 'physical' way on a disk drive). Clustered indexes also need to be unique (although this may not be the case to the naked eye, it is always the case to the database itself). Because of this, most clustered indexes are put on the primary key (since most primary keys are unique).
Unlike clustered indexes, you can have as many non-clustered indexes are you want on a table since after all, they are just reference tables for the actual table itself. Since we have an essentially unlimited number of options for non-clustered indexes, users like to put as many of these as needed on columns that are commonly used in the WHERE clause of a SELECT statement.
But like all things, excess is not always good. The more indexes you put on a table, the more 'overhead' there is on that table. Indexes might speed up your query runs, but excessive overhead will also slow them down. The key is to find a balance between too many indexes and not enough indexes for your particular situation.
As far as a good place to test the performance of your queries with or without indexes, I would recommend using SQL Server. There's a function in SQL Server Management Studio called 'Execution Plan' which tells you the cost and time to run of a query.