Mastering Gdal: Automating Geospatial Data Processing
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.28 GB | Duration: 3h 38m
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 3.28 GB | Duration: 3h 38m
Learn GDAL from Installation to Automation with Python – Includes Projects like Building Count and Snow Fraction Mapping
What you'll learn
Understanding the Open Source dataset
Use GDAL tools like gdalinfo, gdalwarp, and gdal_calc for spatial data conversion and analysis.
Understand GDAL’s role in geospatial data processing and large-scale data handling.
Automate geospatial workflows with parallel processing.
Implement parallel and multi-threaded processing for handling large raster and vector datasets efficiently.
Requirements
Basic understanding of geospatial concepts like raster and vector data is helpful but not mandatory.
Description
Learn to install and use GDAL with QGIS and Anaconda to automate geospatial workflows and enable multithreaded processing for large-scale analysis. Work with real-world datasets including OpenStreetMap and Google Earth Engine (GEE), integrating automated scripts for efficient data handling. Perform raster calculations (e.g., snow fraction, building count) using gdal_calc and Python-based processing. Process raster data through reprojection, mosaicing, rasterization, and export to optimized formats like Cloud-Optimized GeoTIFF (COG) and NetCDF. Build two hands-on projects: Building count estimation and snow fraction mapping in Switzerland using real satellite data.This course is designed for beginners and professionals alike who want to gain hands-on experience with geospatial data processing using open-source tools. You will learn how to read and interpret geospatial metadata, manipulate raster and vector data, and automate complex workflows using Python scripts and Jupyter Notebooks. All tools used in the course—QGIS, GDAL, and Anaconda—are open-source and freely available, making this course accessible to everyone. Whether you are working in climate research, urban planning, or environmental analysis, the skills learned in this course will empower you to streamline your geospatial data tasks and build scalable geospatial applications from scratch. No prior programming experience is required. This will change the way you work.
Overview
Section 1: Introduction
Lecture 1 Introduction to GDAL The Backbone of Geospatial Data Processing
Lecture 2 Introduction to Geospatial Dataset
Section 2: Installation of QGIS and Anaconda
Lecture 3 Install open software QGIS
Lecture 4 Install Python Anaconda navigator
Section 3: Everything About Open Dataset
Lecture 5 Everything you need to know about OpenStreetMap data
Lecture 6 Basics of Google Earth Engine
Section 4: Installing GDAL and Verifying the Installation
Lecture 7 Installing GDAL and verifying
Section 5: Understanding Metadata in Geospatial Data in GDAL
Lecture 8 Understanding Metadata in Geospatial Data in GDAL
Section 6: Vectorization and Rasterization using GDAL
Lecture 9 Vectorization and Rasterization using GDAL
Section 7: Raster Reprojection with GDAL: Multi-threading and Automation in Python
Lecture 10 Reprojection using GDAL
Section 8: Mosaicing using GDAL
Lecture 11 Mosaicing Raster Datasets with GDAL and Converting to NetCDF Format
Section 9: Projects
Lecture 12 Building Count dataset and cloud optimize tiff file using GDAL
Lecture 13 Snow Fraction Mapping in Switzerland Using GDAL
This course is ideal for geospatial professionals, GIS students, data scientists, geospatial developer, and remote sensing analysts who want to automate spatial data workflows using GDAL and Python. It is also valuable for anyone working with large geospatial datasets who wants to leverage multithreading and parallel computing for efficient processing.