3 research outputs found

    PDMC 2003 Benchmarking Explicit State Parallel Model Checkers

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    This paper presents a set of benchmarks and metrics for performance reporting in explicit state parallel model checking algorithms. The benchmarks are selected for controllability, and the metrics are chosen to measure speedup and communication overhead. The benchmarks and metrics are used to compare two parallel model checking algorithms: partition and random walk. Implementations of the partition algorithm using synchronous and asynchronous communication are used. Metrics are reported for each benchmark and algorithm for up to 128 workstations using a network of dynamically loaded workstations. Empirical results show that load balancing becomes an issue for more than 32 workstations in the partition algorithm and that random walk is a reasonable, low overhead, approach for finding errors in large models. The synchronous implementation is consistently faster than the asynchronous. The benchmarks, metrics and results given here are intended to be a starting point for a larger discussion of performance reporting in parallel explicit state model checking.
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