Given an algorithm of strings matching which works with certain strings (e.g. "123456789") and string patterns (e.g. "1*******9"). String patterns are not any kind of regexp or SQL LIKE pattern - they only provide "*" placeholder which means "a single digit or letter".

So, the algorithm will treat these values as "equal":


The data is stored in the relational database (MS SQL Server) and .net core app addressed it via EntityFramework Core. The required scenario is to obtain 500 input strings (either certain or a pattern) and to find matched rows in the database (in the table containing 1 million of rows).

First I implemented it using LIKE pattern matching (first I transformed input strings to the LIKE pattern and then built a predicate for WHERE clause), but tests showed that it has unacceptable performance.

Can I implement this task using FULL-TEXT SEARCH feature of MSSQL? What will the predicate look like in this case? Any other ideas on the implementation?


You can try CLR user-defined function approach (example). But you don't need to use SQL queries at all. Just compare 2 strings using your algorithm. Such approach theoretically should be faster

      DataAccess = DataAccessKind.None,
      SystemDataAccess = SystemDataAccessKind.None,
      IsPrecise = true,
      IsDeterministic = true)

  // Have to be public and static
  public static bool CustomIsEqualTo(string baseString, string stringToCompare)
      return true;   
| improve this answer | |
  • the problem here will be with fetching a million of rows from the database... I didn't say, that this operation is performed in the cycle and the same operation also modifies rows (that are read in the next iteration). So, it means that I have to take data fetching time into account when estimating your proposed solution. I've tested it and it will also take too long – Andrey Pesoshin Dec 22 '18 at 22:46

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