a CAROL query API for the National Transportation Safety Board
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Updated
Dec 16, 2025 - Python
a CAROL query API for the National Transportation Safety Board
The aim of this project is to build a machine learning model that will predict the level of crash severity which is compared to the percentage of deaths with respect to total Souls on board.
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Risk quantification of UAS (drones) in the real world using OSM data.
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Join our mission to enhance aviation safety by diving into a century's worth of aerial accidents. As the data analyst for the International Civil Aviation Organization (ICAO), I've meticulously examined data, conducted extensive analyses, and developed an interactive Tableau Dashboard to provide insightful visualizations.
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Unveiling Aviation's Hidden Dangers: A Data-Driven Exploration of Crashes and Fatalities (1980-2023)
This repository contains the final project for Applied Machine Learning, where we built and evaluated predictive models to assess the risk of bird strikes on aircraft. The project explores various machine learning techniques to classify incidents and determine whether they resulted in aircraft damage.
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Aviation Accident Database Analysis Tools for NTSB Datasets (1962-present) - includes MDB extraction scripts, SQL query tools, Python analysis examples, and comprehensive documentation.
av-safety-parser extracts aviation incident details from unstructured text, outputting standardized data on incident type, aircraft, and risks.
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AirLang: A domain-specific language for aviation flight planning and operations, featuring a complete compiler toolchain with 7-phase compilation, and specialized aviation calculations. Deployed as a standalone application with comprehensive documentation and examples
FAA HIMS Program
a dataset + scripts for all 2010-2025 aviation accidents
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