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  <title>FDA Collection:</title>
  <link rel="alternate" href="http://hdl.handle.net/2451/63310" />
  <subtitle />
  <id>http://hdl.handle.net/2451/63310</id>
  <updated>2026-04-11T16:24:48Z</updated>
  <dc:date>2026-04-11T16:24:48Z</dc:date>
  <entry>
    <title>OpenABC-D: A Large-Scale Dataset For Machine Learning Guided Integrated Circuit Synthesis</title>
    <link rel="alternate" href="http://hdl.handle.net/2451/63311" />
    <author>
      <name>Basak Chowdhury, Animesh</name>
    </author>
    <id>http://hdl.handle.net/2451/63311</id>
    <updated>2021-09-08T14:30:07Z</updated>
    <published>2021-09-01T00:00:00Z</published>
    <summary type="text">Title: OpenABC-D: A Large-Scale Dataset For Machine Learning Guided Integrated Circuit Synthesis
Authors: Basak Chowdhury, Animesh
Abstract: Logic synthesis is a challenging and widely-researched combinatorial optimization  problem  during  integrated  circuit  (IC)  design.   It  transforms  a  high-level description  of  hardware  in  a  programming  language  like  Verilog  into  an  optimized  digital  circuit  netlist,  a  network  of  interconnected  Boolean  logic  gates,that implements the function.  Spurred by the success of ML in solving combinatorial  and  graph  problems  in  other  domains,  there  is  growing  interest  in  the design of ML-guided logic synthesis tools.   Yet,  there are no standard datasets or  prototypical  learning  tasks  defined  for  this  problem  domain.   Here,  we  de-scribe OpenABC-D, a large-scale, labeled dataset produced by synthesizing opensource  designs  with  a  leading  open-source  logic  synthesis  tool  and  illustrate its use in developing, evaluating and benchmarking ML-guided logic synthesis.OpenABC-D  has  intermediate  and  final  outputs  in  the  form  of  870,000  And-Inverter-Graphs (AIGs) produced from 1500 synthesis runs plus labels such as the node counts, longest path, area, and timing of the AIGs. We define four learning  problems  on  this  dataset  and  benchmark  existing  solutions  for  these  problems.  &#xD;
The codes related to dataset creation and benchmark models are available at: https://github.com/NYU-MLDA/OpenABC.git.&#xD;
The dataset generated is available during a review period at this location: https://app.globus.org/file-manager?origin_id=ae7b03ad-9e50-472c-9601-ff99054ae47c&amp;origin_path=%2F. &#xD;
The data will be published here following the review.</summary>
    <dc:date>2021-09-01T00:00:00Z</dc:date>
  </entry>
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