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  • DIVE: A Multi-Label Smart Contract Vulnerability Dataset

    Shikah J. Alsunaidi, Hamoud Aljamaan, Mohammad Hammoudeh

    A multi-label dataset for smart contract vulnerability detection, containing 22,330 real-world Solidity contracts deployed between 2016 and 2024, annotated with eight co-occurring vulnerability types.

    Paper Data
    BibTeX
    @article{alsunaidi2026dive,
      title     = {{DIVE}: A multi-label smart contract vulnerability dataset},
      author    = {Alsunaidi, Shikah J and Aljamaan, Hamoud and Hammoudeh, Mohammad},
      journal   = {Scientific Data},
      volume    = {13},
      year      = {2026},
      doi       = {10.1038/s41597-026-07025-5},
      publisher = {Nature Publishing Group}
    }
  • SmellyCode++: Multi-Label Dataset for Code Smell Detection

    Nawaf Alomari, Amal Alazba, Hamoud Aljamaan, Mohammad Alshayeb

    An extended multi-label dataset for detecting code smells in Java and Python projects, containing 107,554 samples covering four smell types: God Class, Data Class, Feature Envy, and Long Method.

    Paper Data
    BibTeX
    @article{alomari2025smellycode,
      title     = {{SmellyCode++}: Multi-label dataset for code smell detection},
      author    = {Alomari, Nawaf and Alazba, Amal and Aljamaan, Hamoud and Alshayeb, Mohammad},
      journal   = {Scientific Data},
      volume    = {12},
      number    = {1},
      year      = {2025},
      doi       = {10.1038/s41597-025-05465-z},
      publisher = {Nature Publishing Group}
    }
  • Python Code Smells Dataset

    Rana Sandouka, Hamoud Aljamaan

    A dataset of Python source files annotated with code smell labels, used to benchmark conventional machine learning models for smell detection in Python projects.

    Paper Data
    BibTeX
    @article{sandouka2023python,
      title     = {Python code smells detection using conventional machine learning models},
      author    = {Sandouka, Rana and Aljamaan, Hamoud},
      journal   = {PeerJ Computer Science},
      volume    = {9},
      pages     = {e1370},
      year      = {2023},
      doi       = {10.7717/peerj-cs.1370},
      publisher = {PeerJ}
    }
  • AWARE: Aspect-Based Sentiment Analysis Dataset of App Reviews

    Nouf Alturayeif, Hamoud Aljamaan, Malak Baslyman

    A dataset of 11,323 annotated mobile app store reviews labeled with aspect terms, categories, and sentiment polarity, designed to support requirements elicitation from user feedback.

    Paper Data
    BibTeX
    @inproceedings{alturayeif2021aware,
      title        = {{AWARE}: Aspect-based sentiment analysis dataset of apps reviews
                      for requirements elicitation},
      author       = {Alturayeif, Nouf and Aljamaan, Hamoud and Baslyman, Malak},
      booktitle    = {2021 36th IEEE/ACM International Conference on Automated
                      Software Engineering (ASE)},
      year         = {2021},
      doi          = {10.1109/ASE51524.2021.9679823},
      organization = {IEEE}
    }

© Hamoud Aljamaan 2026