Propositional conflict-driven clause-learning (CDCL) satisfy ability (SAT) solvers have been successfully applied in a number of industrial domains. In some application areas such as circuit verification, bounded model checking, logical cryptanalysis, and approximate model counting, some requirements can be succinctly captured with parity (xor) constraints. However, satisfy ability solvers that typically operate in conjunctive normal form (CNF) may perform poorly with straightforward translation of parity constraints to CNF. This work studies how CDCL SAT solvers can be enhanced to handle problems with parity constraints using the recently introduced DPLL (XOR) framework where the SAT solver is coupled with a parity constraint solver modul...