Product Manager who likes getting hands-on with geospatial data.
GEOFF (GEOspatial Fact Finder) aims to turn natural language prompts like "how many bike lanes are near school zones?", turn them into Spatial SQL, and display the results on a web map. Project progressing ~ Live Demo | π GitHub Repo
Using trained LULC U-net classifier to autoamtically predict land use land cover of the entire City of Toronto aerial at 2 px per meter. Technologies: gdal, leaflet, Vite, Tensorflow/Keras, Python
πΊοΈ Live Demo | π GitHub Repo
Trained a Convolutional Neural Network (CNN) with U-net architecture on aerial imagery to classify land use in downtown Toronto. Technologies: CNN, U-net, Tensorflow/Keras, Map Digitization
Mapped urban heat islands in Toronto using remote imagery and overlaid demographic data to highlight vulnerable communities. Technologies: QGIS, GDAL, Raster Analysis, Remote Sensing, Landsat
πΊοΈ Full Story on StoryMaps! | π GitHub Repo
Analyzed Toronto's bike share data (2016-2024) using spatial SQL and geospatial visualization to assess impact of changes in infrastructure. Technologies: PostGIS, QGIS, Python, PyQGIS