Course Code:
gi2bs
Duration:
2 hours
Overview:
Objective: Teach the team how to apply AI for predictive analytics in geospatial intelligence, using machine learning models to make predictions based on geospatial data.
Course Outline:
Agenda:
Introduction to Predictive Analytics (15 minutes)
- Overview of predictive analytics and its importance in geospatial intelligence.
- Examples of predictive models in geospatial applications.
AI Tools for Predictive Analytics (15 minutes)
- Introduction to predictive analytics tools (e.g., scikit-learn, XGBoost, TensorFlow).
- Demonstration of a selected tool.
Hands-On Exercise: Building Predictive Models (30 minutes)
- Practical exercise: Use an AI tool to build a predictive model using geospatial data (e.g., predicting land use changes, weather patterns).
- Training a regression or classification model using scikit-learn.
Evaluating Model Performance (30 minutes)
- Techniques for evaluating and improving model performance.
- Practical exercise: Evaluate the predictive model using metrics like accuracy, precision, and recall.
Q&A and Discussion (30 minutes)
- Addressing questions and discussing best practices for predictive analytics in geospatial intelligence.
- Exploring potential use cases and applications in the team's projects.
Materials Needed:
- Laptops with internet access.
- Access to predictive analytics tools (e.g., scikit-learn, TensorFlow).
- Sample geospatial datasets for exercises.