Advanced Python GIS Engineering: Cloud-Native, Open-Source Spatial Workflows for Remote Sensing & Scalable Applications - Brossura

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9798294590468: Advanced Python GIS Engineering: Cloud-Native, Open-Source Spatial Workflows for Remote Sensing & Scalable Applications

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Advanced Python GIS Engineering
Cloud-Native, Open-Source Spatial Workflows for Remote Sensing & Scalable Applications

Build production-ready, cloud-native GIS applications using modern Python tools and open-source workflows.
Whether you're a geospatial developer, data scientist, or remote sensing engineer, this hands-on guide will take you from local shapefiles to scalable cloud deployments using the most powerful spatial tools available in 2025.

This is not a theory book. You'll build, automate, and deploy real-world geospatial pipelines step by step — using Python, GeoPandas, Rasterio, Earth Engine, Leafmap, STAC, TiTiler, FastAPI, Streamlit, AWS, and Docker.

What You’ll Master Inside This Book:
  • Engineering-ready Python GIS stack setup using Conda, pipx, and Docker
  • Processing shapefiles, GeoJSON, and raster data at scale with GeoPandas & Rasterio
  • Cloud-based remote sensing pipelines using Google Earth Engine Python API
  • Serving COGs and dynamic tiles with TiTiler, STAC, and CloudFront
  • Building interactive dashboards with Streamlit, Deck.gl, and Folium
  • Automating spatial ETL pipelines with Prefect and Airflow
  • Deploying FastAPI-based geospatial services on AWS Lambda & GCP Functions
  • Creating production-ready workflows with CI/CD, GitHub Actions, and Terraform
  • Real-world projects: Land use detection, asset tracking, urban growth mapping & more
Tools & Technologies Covered
  • Python 3.10+, GeoPandas, Rasterio, Xarray, Leafmap, Dask
  • Cloud Platforms: AWS S3, Google Cloud Storage, STAC, TiTiler
  • Visualization: ipyleaflet, Pydeck, Mapbox GL JS
  • Automation: Docker, Prefect, GitHub Actions, Terraform
  • APIs & Apps: FastAPI, Streamlit, Heroku, Serverless Framework
Who This Book Is For
  • GIS Developers & Engineers
  • Remote Sensing Analysts
  • Geospatial Data Scientists
  • Freelancers & Technical Consultants
  • Professionals migrating from desktop GIS to modern Python and cloud-first workflows
What Makes This Book Different?

This book goes beyond GeoPandas tutorials — it gives you engineering-grade, modern GIS pipelines that scale from your laptop to cloud infrastructure. Every chapter builds toward real deployment, automation, and production-readiness — no fluff, no theory, just results.

Includes:
  • Full reproducible Code Representations in Courier New and red formatting
  • Real-world open datasets with COGs, STAC, GeoParquet, and metadata
  • Docker, CI/CD, and deployment recipes for Heroku, Lambda, and Streamlit Cloud
  • Portfolio-ready projects for GitHub and freelance applications

Don’t just analyze maps — build systems that serve them.
If you're ready to future-proof your GIS skillset and deploy real applications, this is the book you’ve been looking for.

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