Abstract
AbstractWe follow up on the idea of Lars Arge to rephrase the Reduce and Apply operations of Binary Decision Diagrams (BDDs) as iterative I/O-efficient algorithms. We identify multiple avenues to simplify and improve the performance of his proposed algorithms. Furthermore, we extend the technique to other common BDD operations, many of which are not derivable using Apply operations alone. We provide asymptotic improvements to the few procedures that can be derived using Apply.Our work has culminated in a BDD package named Adiar that is able to efficiently manipulate BDDs that outgrow main memory. This makes Adiar surpass the limits of conventional BDD packages that use recursive depth-first algorithms. It is able to do so while still achieving a satisfactory performance compared to other BDD packages: Adiar, in parts using the disk, is on instances larger than 9.5 GiB only 1.47 to 3.69 times slower compared to CUDD and Sylvan, exclusively using main memory. Yet, Adiar is able to obtain this performance at a fraction of the main memory needed by conventional BDD packages to function.
Publisher
Springer International Publishing
Cited by
3 articles.
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1. HermesBDD: A Multi-Core and Multi-Platform Binary Decision Diagram Package;2023 26th International Symposium on Design and Diagnostics of Electronic Circuits and Systems (DDECS);2023-05-03
2. Predicting Memory Demands of BDD Operations Using Maximum Graph Cuts;Automated Technology for Verification and Analysis;2023
3. Adiar 1.1;Lecture Notes in Computer Science;2023