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Starts 7 June 2025 03:13

Ends 7 June 2025

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Harnessing AI and Machine Learning for Geospatial Analysis

Master AI, Deep Learning and ML for Geospatial Analysis
via Udemy

4052 Courses


5 hours 11 minutes

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Overview

Unlock the transformative power of AI, Deep Learning, and Machine Learning in Geospatial Analysis with this comprehensive course using Python and R. This course is designed to equip you with the skills and knowledge needed to apply advanced AI techniques to geospatial data, enabling you to solve real-world problems in fields such as agriculture, environmental monitoring, and air quality analysis.

Syllabus

  • Introduction to Geospatial Analysis
  • Overview of Geospatial Data
    Applications of Geospatial Analysis
    Introduction to Python and R for Geospatial Analysis
  • Fundamentals of AI and Machine Learning
  • Basics of Machine Learning
    Introduction to Deep Learning
    AI Applications in Geospatial Data
  • Data Acquisition and Preprocessing
  • Sources of Geospatial Data
    Data Cleaning Techniques
    Geospatial Data Formats and Conversion
  • Exploratory Data Analysis (EDA)
  • Visualization Techniques for Geospatial Data
    Statistical Analysis of Geospatial Data
    Tools for EDA in Python and R
  • Spatial Machine Learning Techniques
  • Supervised Learning for Geospatial Data
    Unsupervised Learning Methods
    Spatial Regression and Classification
  • Deep Learning for Geospatial Analysis
  • Neural Networks and Convolutional Neural Networks (CNNs)
    Image Recognition and Analysis
    Time Series Analysis with Recurrent Neural Networks (RNNs)
  • Integration of AI Models with Geospatial Information Systems (GIS)
  • Overview of GIS Tools and Libraries
    Implementing AI Models in GIS Platforms
    Case Studies: AI-powered GIS Applications
  • Application of AI in Agriculture
  • Crop Monitoring and Yield Prediction
    Land Use and Land Cover Classification
    Precision Agriculture Techniques
  • Environmental Monitoring Using AI
  • Predicting and Managing Natural Disasters
    Biodiversity and Habitat Mapping
    Remote Sensing for Climate Change Analysis
  • AI in Air Quality Analysis
  • Air Pollution Monitoring and Prediction
    Health Impact Assessment
    Using Satellite Imagery for Air Quality Control
  • Ethical Considerations and Challenges
  • Data Privacy and Security in Geospatial Analysis
    Bias and Fairness in AI Models
    Addressing Legal and Regulatory Aspects
  • Capstone Project
  • Project Planning and Proposal
    Implementation of AI Techniques on Real-world Geospatial Data
    Presentation and Peer Review
  • Conclusion and Future Trends
  • Emerging Trends in AI and Geospatial Analysis
    Continuous Learning and Research Opportunities
    Resources for Further Exploration

Taught by

Senior Assist Prof Azad Rasul


Subjects

Data Science