Home
Categories
EXPLORE
True Crime
Comedy
Society & Culture
Business
Sports
Technology
History
About Us
Contact Us
Copyright
Β© 2024 PodJoint
Podjoint Logo
US
00:00 / 00:00
Sign in

or

Don't have an account?
Sign up
Forgot password
https://is1-ssl.mzstatic.com/image/thumb/Podcasts211/v4/86/ef/63/86ef639b-62d6-8758-aa09-f61a60ec26ca/mza_2459041931596518318.jpg/600x600bb.jpg
Earthly Machine Learning
Amirpasha
38 episodes
6 days ago
β€œEarthly Machine Learning (EML)” offers AI-generated insights into cutting-edge machine learning research in weather and climate sciences. Powered by Google NotebookLM, each episode distils the essence of a standout paper, helping you decide if it’s worth a deeper look. Stay updated on the ML innovations shaping our understanding of Earth. It may contain hallucinations.
Show more...
Earth Sciences
Science
RSS
All content for Earthly Machine Learning is the property of Amirpasha and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
β€œEarthly Machine Learning (EML)” offers AI-generated insights into cutting-edge machine learning research in weather and climate sciences. Powered by Google NotebookLM, each episode distils the essence of a standout paper, helping you decide if it’s worth a deeper look. Stay updated on the ML innovations shaping our understanding of Earth. It may contain hallucinations.
Show more...
Earth Sciences
Science
https://d3t3ozftmdmh3i.cloudfront.net/staging/podcast_uploaded_nologo/42762713/42762713-1735852906997-8ebdc8d7402cc.jpg
ClimaX: A foundation model for weather and climate
Earthly Machine Learning
13 minutes 25 seconds
6 months ago
ClimaX: A foundation model for weather and climate

πŸŽ™οΈ Episode 25: ClimaX: A foundation model for weather and climate

  • DOI: https://doi.org/10.48550/arXiv.2301.10343

πŸŒ€ Abstract:

Most cutting-edge approaches for weather and climate modeling rely on physics-informed numerical models to simulate the atmosphere's complex dynamics. These methods, while accurate, are often computationally demanding, especially at high spatial and temporal resolutions. In contrast, recent machine learning methods seek to learn data-driven mappings directly from curated climate datasets but often lack flexibility and generalization. ClimaX introduces a versatile and generalizable deep learning model for weather and climate science, capable of learning from diverse, heterogeneous datasets that cover various variables, time spans, and physical contexts.

πŸ“Œ Bullet points summary:

  • ClimaX is a flexible foundation model for weather and climate, overcoming the rigidity of physics-based models and the narrow focus of traditional ML approaches by training on heterogeneous datasets.

  • The model utilizes Transformer-based architecture with novel variable tokenization and aggregation mechanisms, allowing it to handle diverse climate data efficiently.

  • Pre-trained via a self-supervised randomized forecasting objective on CMIP6-derived datasets, ClimaX learns intricate inter-variable relationships, enhancing its adaptability to various forecasting tasks.

  • Demonstrates strong, often state-of-the-art performance across tasks like multi-scale weather forecasting, climate projections (ClimateBench), and downscaling β€” sometimes outperforming even operational systems like IFS.

  • The study highlights ClimaX's scalability, showing performance gains with more pretraining data and higher resolutions, underscoring its potential for future developments with increased data and compute resources.

πŸ’‘ Big idea:

ClimaX represents a shift toward foundation models in climate science, offering a single, adaptable architecture capable of generalizing across a wide array of weather and climate modeling tasks β€” setting the stage for more efficient, data-driven climate research.

πŸ“– Citation:

Nguyen, Tung, et al. "Climax: A foundation model for weather and climate." arXiv preprint arXiv:2301.10343 (2023).


Earthly Machine Learning
β€œEarthly Machine Learning (EML)” offers AI-generated insights into cutting-edge machine learning research in weather and climate sciences. Powered by Google NotebookLM, each episode distils the essence of a standout paper, helping you decide if it’s worth a deeper look. Stay updated on the ML innovations shaping our understanding of Earth. It may contain hallucinations.