AI Extreme Weather and Climate

Zhi Li

Brace yourself for a deep dive into the science of how artificial intelligence is revolutionizing our understanding of extreme weather and climate change. Each episode brings you cutting-edge research and insights on how AI-powered tools are being used to predict and mitigate natural disasters like floods, droughts, and wildfires. We'll unravel the complexities of climate models, explore the frontiers of AI-powered early warning systems, and discuss the ethical implications of AI-driven solutions. Join us as we break down the science and uncover the transformative potential of AI in tackling our planet's most pressing challenges.

  1. Ep.8 AQUAH: An Automatic Quantification and Unified Agent in Hydrology

    09/03/2025

    Ep.8 AQUAH: An Automatic Quantification and Unified Agent in Hydrology

    Welcome to a new episode where we dive into AQUAH, the Automatic Quantification and Unified Agent in Hydrology! This groundbreaking system is the first end-to-end language-based agent specifically designed for hydrologic modeling. In this episode, we'll explore how AQUAH tackles the persistent challenges in water resource management, such as fragmented workflows, steep technical requirements, and lengthy model-setup times that often limit access for non-experts and slow down rapid-response applications. Traditional hydrologic tools demand significant manual effort for data download, model configuration, and output interpretation, requiring both domain knowledge and programming skills. AQUAH aims to bridge this gap and enhance communication in hydrologic simulation. You'll discover how AQUAH transforms a simple natural-language prompt (e.g., “simulate floods for the Little Bighorn basin from 2020 to 2022”) into autonomous, end-to-end hydrologic simulations and narrative reports. It leverages vision-enabled large-language models (LLMs) to interpret maps and rasters on the fly, automating key decisions like outlet selection and parameter initialization that previously required expert human intervention. This system enables fully automated hydrologic simulations within data-available regions, particularly across the contiguous United States (CONUS). Initial experiments demonstrate that AQUAH can complete cold-start simulations and produce analyst-ready documentation without manual intervention, generating results that hydrologists judge as clear, transparent, and physically plausible. We'll also touch on the evaluation process, where AQUAH-generated reports were scored by professional hydrologists and LLM co-evaluators on criteria such as Model Completeness, Simulation Results, Reasonableness, and Clarity. While various vision-capable LLMs like GPT-4o, Claude-Sonnet-4, and Gemini-2.5-Flash were benchmarked, Claude-4-opus achieved the highest average score. We'll discuss how these LLMs perform in tasks like gauge selection and parameter initialization, highlighting that while some LLMs like GPT-4o can produce outstanding results, others like Claude-Sonnet-4 offer more consistent performance for first-guess parameterization. Join us to understand how AQUAH represents a significant leap towards democratizing access to complex environmental modeling, lowering the barrier between Earth-observation data, physics-based tools, and decision-makers, and pointing the way toward fully autonomous hydrologic modeling agents.

    16 min
  2. 08/05/2025

    Ep 7. cBottle: Climate in a bottle - foundational AI weather prediction

    cBottle, developed by NVIDIA, is a generative diffusion-based framework that acts as a generative foundation model for the global atmosphere. It directly tackles the challenge of petabyte-scale climate simulation data, which is currently almost impossible to access and interact with easily due to immense storage and data movement issues1.... This revolutionary system works in two stages: a coarse-resolution generator that creates 100-kilometer global fields, followed by a super-resolution stage that upscales to incredibly detailed 5-kilometer fields. The results are astonishing: cBottle achieves an extreme 3000x compression ratio per sample over raw data, encapsulating vast climate outputs into just a few gigabytes of neural network weights. This enables low-latency generation of realistic kilometer-scale data whenever you need it. Beyond mere emulation, cBottle demonstrates remarkable versatility. It can bridge different climate datasets like ERA5 and ICON, perform zero-shot bias correction, fill in missing or corrupted data channels (like fixing streaking artifacts in ERA5 radiation fields), and even generate spatio-temporally coherent weather sequences. By faithfully reproducing diurnal-to-seasonal scale variability, large-scale atmospheric modes, and even tropical cyclone statistics, cBottle is poised to transform climate informatics. It's a significant step towards building interactive digital twins of Earth, making high-fidelity climate projections accessible and usable for everyone."

    20 min

About

Brace yourself for a deep dive into the science of how artificial intelligence is revolutionizing our understanding of extreme weather and climate change. Each episode brings you cutting-edge research and insights on how AI-powered tools are being used to predict and mitigate natural disasters like floods, droughts, and wildfires. We'll unravel the complexities of climate models, explore the frontiers of AI-powered early warning systems, and discuss the ethical implications of AI-driven solutions. Join us as we break down the science and uncover the transformative potential of AI in tackling our planet's most pressing challenges.