
Giuseppe Di Palma developed a machine learning-ready DGA detection testing dataset and supporting test infrastructure for the ntop/nDPI repository. He curated a comprehensive set of legitimate and DGA domains, integrating them into the ml_tests suite to enable robust evaluation of ML models targeting DGA-based traffic detection. Giuseppe implemented a Makefile to streamline packaging and deployment, ensuring the DGA test infrastructure was included in distribution tooling. His work demonstrated skills in data engineering, build systems, and testing infrastructure, with a focus on reproducibility and deployment. The project enhanced ML-based threat detection capabilities and improved the overall testing coverage for the repository.

Summary for 2024-10: Delivered ML-ready DGA detection testing dataset and test infrastructure for ntop/nDPI, enabling robust evaluation of ML models for DGA-based traffic detection. Implemented a comprehensive dataset of legitimate and DGA domains integrated into the ml_tests suite, and added a Makefile to the distribution tooling to package the DGA test infrastructure (EXTRA_DIST) for easier deployment. No major bugs fixed this month. Overall impact: strengthened ML-based threat detection capabilities, improved testing coverage and reproducibility, and streamlined packaging/deployment of DGA testing assets. Technologies/skills demonstrated include ML-driven testing data curation, test infrastructure development, Makefile-based tooling, and distribution packaging.
Summary for 2024-10: Delivered ML-ready DGA detection testing dataset and test infrastructure for ntop/nDPI, enabling robust evaluation of ML models for DGA-based traffic detection. Implemented a comprehensive dataset of legitimate and DGA domains integrated into the ml_tests suite, and added a Makefile to the distribution tooling to package the DGA test infrastructure (EXTRA_DIST) for easier deployment. No major bugs fixed this month. Overall impact: strengthened ML-based threat detection capabilities, improved testing coverage and reproducibility, and streamlined packaging/deployment of DGA testing assets. Technologies/skills demonstrated include ML-driven testing data curation, test infrastructure development, Makefile-based tooling, and distribution packaging.
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