In this paper, we present a novel all-solutions preimage SAT solver, SOLALL, with the following features: (1) a new success-driven learning algorithm employing smaller cut sets; (2) a marked CNF database non-trivially combining success/conflict-driven learning; (3) quantified-jump-back dynamically quantifying primary input variables from the preimage; (4) improved free BDD built on the fly, saving memory and avoiding inclusion of PI variables; finally, (5) a practical method of storing all solutions into a canonical OBDD format. Experimental results demonstrated the effi-ciency of the proposed approach for very large sequential circuits. 1
Abstract. We present an improvement to the Hypre preprocessing algorithm that was suggested by Bacch...
This thesis focuses on improving the SAT solving technology. The improvements focus on two major sub...
Propositional satisfiability (SAT) solvers based on conflict directed clause learning (CDCL) implici...
Preimage computation is a key step in formal verification. Pure OBDD-based symbolic method is vulner...
Abstract. This work presents a memory-efficient All-SAT engine which, given a propositional formula ...
Abstract — All-solution Boolean satisfiability (SAT) solvers are engines employed to find all the po...
Preprocessing techniques are crucial for SAT solvers when it comes to reaching state-of-the-art perf...
Recent work has shown the value of using propositional SAT solvers, as opposed to pure BDD solvers, ...
The DPLL procedure has found great success in SAT, where search terminates on the first solution dis...
Recent work has shown the value of using propositional SAT solvers, as opposed to pure BDD solvers, ...
Solvers for Quantified Boolean Formulae (QBF) use many analogues of technique from SAT. A significan...
Solvers for Quantified Boolean Formulae (QBF) use many analogues of technique from SAT. A significan...
Abstract. State of the art Stochastic Local Search (SLS) solvers have difficulty in solving many CNF...
We introduce Intel(R) SAT Solver (IntelSAT) - a new open-source CDCL SAT solver, written from scratc...
Abstract. SAT solvers are often challenged with very hard problems that remain unsolved after hours ...
Abstract. We present an improvement to the Hypre preprocessing algorithm that was suggested by Bacch...
This thesis focuses on improving the SAT solving technology. The improvements focus on two major sub...
Propositional satisfiability (SAT) solvers based on conflict directed clause learning (CDCL) implici...
Preimage computation is a key step in formal verification. Pure OBDD-based symbolic method is vulner...
Abstract. This work presents a memory-efficient All-SAT engine which, given a propositional formula ...
Abstract — All-solution Boolean satisfiability (SAT) solvers are engines employed to find all the po...
Preprocessing techniques are crucial for SAT solvers when it comes to reaching state-of-the-art perf...
Recent work has shown the value of using propositional SAT solvers, as opposed to pure BDD solvers, ...
The DPLL procedure has found great success in SAT, where search terminates on the first solution dis...
Recent work has shown the value of using propositional SAT solvers, as opposed to pure BDD solvers, ...
Solvers for Quantified Boolean Formulae (QBF) use many analogues of technique from SAT. A significan...
Solvers for Quantified Boolean Formulae (QBF) use many analogues of technique from SAT. A significan...
Abstract. State of the art Stochastic Local Search (SLS) solvers have difficulty in solving many CNF...
We introduce Intel(R) SAT Solver (IntelSAT) - a new open-source CDCL SAT solver, written from scratc...
Abstract. SAT solvers are often challenged with very hard problems that remain unsolved after hours ...
Abstract. We present an improvement to the Hypre preprocessing algorithm that was suggested by Bacch...
This thesis focuses on improving the SAT solving technology. The improvements focus on two major sub...
Propositional satisfiability (SAT) solvers based on conflict directed clause learning (CDCL) implici...