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Nanobdd

First-ever high-performance thread-safe BDD (Binary Decision Diagrams) library.

As of our research, Nanobdd is currently the fastest BDD library available, achieving exceptional performance in various benchmarks and use cases.

Features

  • Fully lock-free concurrency
  • Automatic referencing for BDD nodes
  • User controlled garbage collection
  • Easy-to-use APIs by C++ operator overloading
  • And of course, it is thread-safe!

Install

Dependencies

Nanobdd depends on tbb for concurrent data structures.

CMake (>=v3.2) and g++(>=v9) is required for compilation.

Compile and install

Nanobdd follows the standard CMake project structure, the quick installation steps are as follows:

git clone https://github.com/guodong/nanobdd
cd nanobdd
mkdir build
cd build
cmake ..
make
sudo make install

Basic usage

A simple c++ code to use nanobdd is as follows:

// include the nanobdd header file
#include <nanobdd/nanobdd.h>
#include <assert.h>

int main(int argc, char** argv) {
  // init nanobdd with node table size, cache size, and the number of variables
  nanobdd::init(1000, 1000, 3);

  // get the three variables
  auto x = nanobdd::getVar(0);
  auto y = nanobdd::getVar(1);
  auto z = nanobdd::getVar(2);

  // do magic using c++ operators
  auto xy = x & y;
  auto xyz = xy & z;
  auto xyZ = xy & !z;

  assert(xy == (xyz | xyZ));
  assert(xy != nanobdd::bddFalse());

  return 0;
}

Compile and execute the above code by:

g++ -o exe test.cpp -lnanobdd -ltbb
./exe

If no exceptions, that means the assertions are passed.

Thread-safe concurrency

The most powerful feature of nanobdd is that it is thread-safe, which is achieved lock-free algorithms. One can safely perform any bdd operations in different threads, nanobdd will handle all underlay data contensions. An example for using C++17 parallel STL:

std::for_each(
  std::execution::par,
  somebdds.begin(),
  somebdds.end(),
  [&](auto bdd) {
    // operate your bdd here
  });

See examples/paralle.cpp for full example.

Performance

We have compared nanobdd with other librarys including Buddy, JDD and Sylvan in a network verification project on a 40 CPU cores server. Typically, nanobdd is 2~10x faster than others.

Author and contact

Author: Dong Guo (PhD candidate of Tongji University)

Email: [email protected]

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First-ever high-throughput thread-safe BDD library

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  • C++ 76.2%
  • C 16.1%
  • CMake 7.7%