The Naive way to solve problems using brute force is indeed a simple **backtracking**, which explore all possibilities, evaluates them, and chose the best.

However, for some problems - you might have more information then "It solves it" or "It doesn't solve it". For example, for the SAT problem (Finding if a boolean formula has a solution) - you can get knowledge on "how exactly did you get the contradiction" (Which variables could not be satisfied with the assignment). Usually we refer this issue as **Constraint Propogation**. It is applied for SAT under the **DPLL** algorithm which is often used (in variations) for SAT solvers.

If you are interested - real life programs that use SAT solvers are various, Software verification algorithms are one example that use SAT solvers in order to *prove* a software (or more commonly hardware) is working as it should.

Another common optimization is **Branch and Bound** - meaning, you can trim your "search tree" before you reach the leaves. An example will be for Traveling Salesman Problem. If you already found a path of length 100, and you are exploring a new one, and reached 101, no need to keep exploring this possibility.

permutation- there, a certain character cannot repeat, which is not a standard restriction for passwords. – amit Sep 5 '12 at 6:48ZuntenableZ(untenable). will it ? – Suhail Gupta Sep 5 '12 at 8:43