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शुरू होता है 4 June 2026 01:26

समाप्त होता है 4 June 2026

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Efficient AI for Weather Forecasting

Explore how energy-efficient AI transforms weather forecasting, reducing computational costs while improving accuracy through modern techniques like LoRA fine-tuning and diffusion models.
via openHPI

13 कोर्स


2 weeks

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Free Online Course

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अवलोकन

Extreme weather events have caused severe damage and loss of life in recent decades. Traditional numerical weather prediction, while accurate, is computationally intensive—requiring supercomputers that consume massive amounts of energy.

In contrast, energy-efficient AI offers a transformative alternative. This course explores how modern AI models can drastically reduce energy consumption and CO₂ emissions while improving the accuracy and accessibility of weather forecasting.

Through practical examples, we demonstrate how techniques like LoRA fine-tuning, diffusion models, and GNSS-based sensing can enhance forecasting capabilities on both large and personal devices. By the end of this course, learners will understand how efficient AI methods enable sustainable, high-precision weather prediction for the future.

पाठ्यक्रम

  • Introduction to Weather Forecasting
  • Overview of traditional numerical weather prediction
    Energy consumption and environmental impact of supercomputers
    Introduction to AI in weather forecasting
  • Efficient AI Technologies
  • Understanding AI energy consumption and CO₂ emissions
    Comparison of traditional and AI-based methods for energy efficiency
  • AI Techniques for Weather Prediction
  • Introduction to LoRA (Low-Rank Adaptation) Fine-Tuning
    Overview of Diffusion Models
    Leveraging GNSS (Global Navigation Satellite System) for weather data sensing
  • Energy-Efficient Model Training
  • Strategies for reducing computational costs in AI training
    Case studies in low-power model deployment
  • AI Model Evaluation and Improvement
  • Techniques for enhancing model accuracy
    Balancing precision with energy efficiency
    Case study: Optimizing AI models for personal devices
  • Practical Applications and Case Studies
  • Real-world examples of AI in weather forecasting
    Analysis of efficiency gains and accuracy improvements
  • Tools and Software
  • Overview of open-source tools for AI weather modeling
    Hands-on session with AI frameworks and platforms
  • Ethical and Environmental Considerations
  • Discussion on the environmental impact of AI technologies
    Strategies for sustainable AI development and deployment
  • Future Directions in AI for Weather Forecasting
  • Emerging technologies and research areas
    The role of AI in future climate challenges and opportunities
  • Final Project and Assessment
  • Applying learned concepts to develop an energy-efficient AI weather model
    Evaluation of model performance and efficiency improvements

द्वारा पढ़ाया गया

PD Dr. Haojin Yang, Weixing Wang, Jona Otholt, Zi Yang, Gregor Nickel, Dr. Zhitong Xiong, Constantin Le Cleï, Dr. Peng Yuan, and Dr. Liangjing Zhang


विषय

Artificial Intelligence