
Developed a new ARFF-formatted dataset for network traffic security analytics in the AI-Artisans/bda_cs41s1 repository, focusing on enabling data-driven security analysis and machine learning workflows. Leveraged SQL and data engineering skills to curate rich fields such as timestamps, IP addresses, protocols, and malware indicators, supporting advanced analytics and ML tooling. Improved database management by removing an obsolete SQL data directory, reducing data clutter and enhancing data governance. This work streamlined the ML data pipeline and improved readiness for security analytics, demonstrating a methodical approach to data cleanup, network security, and the integration of structured datasets for practical machine learning applications.
Delivered a new ARFF-formatted dataset for Network Traffic Security Analytics in AI-Artisans/bda_cs41s1, enabling data-driven security analytics and ML tooling with rich fields (timestamps, IPs, protocols, malware indicators). Removed obsolete Lab - 20251025 SQL data directory to reduce data clutter and prevent confusion, improving data governance. Combined, these efforts enhance security analytics readiness, streamline ML data pipelines, and reduce maintenance overhead.
Delivered a new ARFF-formatted dataset for Network Traffic Security Analytics in AI-Artisans/bda_cs41s1, enabling data-driven security analytics and ML tooling with rich fields (timestamps, IPs, protocols, malware indicators). Removed obsolete Lab - 20251025 SQL data directory to reduce data clutter and prevent confusion, improving data governance. Combined, these efforts enhance security analytics readiness, streamline ML data pipelines, and reduce maintenance overhead.

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