About This Course
This three-module advanced course is designed for senior academicians, climate scientists, and PhD-level researchers who want to build a strong, integrative understanding of how AI and machine learning enhance climate modeling, extreme event analysis, and policy scenario evaluation.
Rather than treating AI as a “black box,” the course focuses on scientifically robust and policy-relevant workflows—including hybrid AI-physics approaches, uncertainty evaluation, interpretability, and decision intelligence that can be used by governments and international agencies. By the end, participants will be able to connect climate-AI research outputs to assessment and planning frameworks (e.g., scenario pathways and IPCC-aligned thinking) in a practical, usable way.
Aim
This course aims to provide senior academicians, climate scientists, and PhD scholars with a deep understanding of how AI/ML augment climate science—from accelerating and improving climate model outputs to building interpretable, uncertainty-aware systems that translate projections into policy-ready scenarios and decision-support.
Course Objectives
By the end of this course, participants will be able to:
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Understand how AI complements and enhances traditional climate models
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Apply AI methods to analyze, detect, and predict extreme climate events
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Design hybrid AI + physics models for climate risk assessment
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Evaluate uncertainty, robustness, and confidence in AI-driven projections
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Translate model outputs into policy-relevant climate scenarios and planning insights
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Align climate-AI research with international assessment frameworks and decision processes
Course Structure
Module 1: AI-Enhanced Climate Modeling and Earth System Intelligence
Theme: Augmenting physical climate models with data-driven AI
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Climate modeling foundations: GCMs, RCMs, ESMs
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How AI supports climate science: model emulation/acceleration, bias correction, statistical downscaling
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ML methods for climate data: regression, deep learning, spatio-temporal models
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Working with high-dimensional climate datasets
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Hybrid and physics-informed AI approaches
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Model evaluation, uncertainty quantification, and robustness
Outcome: AI-augmented climate modeling and Earth system intelligence workflows
Case perspectives:
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AI-assisted downscaling of temperature and precipitation
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Climate model emulators used in international climate assessments
Module 2: AI for Extreme Event Detection and Risk Attribution
Theme: Understanding, predicting, and attributing climate extremes
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Extreme event types: heatwaves, floods, droughts, cyclones, wildfires
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AI techniques: event detection/classification, anomaly detection, trend analysis
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Spatio-temporal risk modeling: forecasting frequency, intensity, duration
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Event attribution: linking extremes to climate change signals
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Integrating socio-economic exposure and vulnerability datasets
Outcome: AI-based extreme event detection and climate risk attribution models
Case perspectives:
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AI-based heatwave early warning systems
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Flood and drought risk attribution studies
Module 3: AI-Driven Scenario Modeling for Climate Policy and Planning
Theme: From climate projections to policy-ready scenarios
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Scenarios and pathways: SSPs, RCPs, mitigation and adaptation pathways
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AI for scenario simulation, comparison, and uncertainty exploration
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Decision-support systems for adaptation planning and risk-informed design
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Communicating climate-AI insights to policymakers and stakeholders
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Ethics, transparency, governance, and responsible use of AI in climate policy
Outcome: Policy-ready AI-driven climate scenarios and decision-support frameworks
Case perspectives:
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AI-assisted policy scenario analysis for national climate plans
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Decision frameworks used in IPCC-aligned assessments
Who Should Enrol?
This course is ideal for:
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Senior academicians in climate science and environmental modeling
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PhD scholars and postdoctoral researchers
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Climate policy analysts and government research teams
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Professionals working in climate risk assessment, resilience, and adaptation planning









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