I have encountered the following dilemma several times and would be interested to hear how others have addressed this issue or if there is a canonical way that the situation can be addressed.
In some domains, one is naturally led to consider very wide tables. Take, for instance, time series surveys that evolve over many years. Such surveys can have hundreds, if not thousands, of variables. Typically though there are probably only a few thousand or tens-of-thousands of rows. It is absolutely natural to consider such a result set as a table where each variable corresponds to a column in the table however, in SQL Server at least, one is limited to 1024 (non sparse) columns.
The obvious workarounds are to
- Distribute each record over multiple tables
- Stuff the data into a single table with columns of say,
ResponseId,VariableName,ResponseValue
Number 2. I think is very bad for a number of reasons (difficult to query, suboptimal storage, etc) so really the first choice is the only viable option I see. This choice can be improved perhaps by grouping columns that are likely to be queried together into the same table - but one can't really know this until the database is actually being used.
So, my basic question is: Are there better ways to handle this situation?
xmldata type may allow for grouping data into fewer columns. – HABO Jul 11 '12 at 0:59