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    2
  • Language
    C++
  • Created about 7 years ago
  • Updated almost 7 years ago

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Repository Details

The goal of this project is to develop and implement a simple logic and delay simulator. Theprogram should be able to read in circuits in the benchmark format (.bench files) and translate them to an internal netlist representation.

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