climatechange-ai-tutorials
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nlp-policy-analysis
nlp-policy-analysis PublicExplore how Natural Language Processing (NLP) can be used to assist in identifying and mapping climate-relevant literature using a supervised learning approach and leverage a state of the art Large…
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lulc-classification
lulc-classification PublicMapping the extent of land use and land cover categories over time is essential for better environmental monitoring, urban planning and nature protection. Train and fine-tune a deep learning model …
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optimal-power-flow
optimal-power-flow PublicAC Optimal Power Flow (OPF) attempts to determine the setpoints of generators that would minimize the operating cost of a power system while meeting other operational constraints. In this tutorial,…
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building-control-boptest
building-control-boptest PublicApply reinforcement learning to a building emulator to intelligently control HVAC systems.
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bioacoustic-monitoring
bioacoustic-monitoring PublicThis tutorial presents an "agile modeling" approach that enables users to build custom classifier systems efficiently for species of interest using transfer learning, audio search, and human-in-the…
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climatelearn
climatelearn PublicApply machine learning to predict climate variables into the future and transform low-resolution outputs of climate models into high-resolution regional forecasts.
Repositories
- piggy-cast Public
This tutorial introduces PiggyCast, an ensemble machine learning model designed to improve weather prediction accuracy by stacking forecasts from various numerical, AI-based, and hybrid weather prediction models.
climatechange-ai-tutorials/piggy-cast’s past year of commit activity - sustainability-reports-richness Public
In this tutorial, we learn about an advanced strategy for information retrieval for question answering with Large Language Models (LLMs) in knowledge-intensive domains like sustainability reporting.
climatechange-ai-tutorials/sustainability-reports-richness’s past year of commit activity - climate-policy-radar-knowledge-graph Public
At Climate Policy Radar, we’re building an open-source knowledge graph for climate policy. Using an ontology defined by climate policy experts, we create a set of machine learning models to highlight where each concept is mentioned in a comprehensive dataset of the world's climate laws, policies, and related documents.
climatechange-ai-tutorials/climate-policy-radar-knowledge-graph’s past year of commit activity - flood-mapping-optical-and-microwave Public
By the end of the tutorial, participants will understand how different satellite data sources and modeling approaches influence flood mapping outcomes, and how these methods can support disaster response and long-term climate resilience.
climatechange-ai-tutorials/flood-mapping-optical-and-microwave’s past year of commit activity - agricultural-monitoring-ftw Public
This tutorial demonstrates how to generate field boundaries globally using the Fields of The World dataset, pretrained models, and command line interface (CLI). We then show how to use those boundaries in agricultural monitoring tasks under climate change, including crop type classification and forest loss monitoring.
climatechange-ai-tutorials/agricultural-monitoring-ftw’s past year of commit activity - counterfactual-models-energy-saving Public
Using a real-world dataset of hourly meter and weather data, participants will learn to build a robust counterfactual energy baseline with a LightGBM (Gradient Boosting Machine) model.
climatechange-ai-tutorials/counterfactual-models-energy-saving’s past year of commit activity - quantus-x-climate Public
In climate science, explainable artificial intelligence (XAI) can be used to improve and validate deep learning methods, but evaluation and selection of XAI methods is challenging. Learn how to use the explainable AI evaluation package Quantus to compare and select an appropriate XAI for your climate AI research task.
climatechange-ai-tutorials/quantus-x-climate’s past year of commit activity - camels-hydrological-modeling Public
A guide to model hydrological system using the real-world CAMELS dataset, which contains weather drivers for 531 basins across the continental United States. Through this modeling process, we will demonstrate various methods to predict streamflow, aiding in flood and drought planning.
climatechange-ai-tutorials/camels-hydrological-modeling’s past year of commit activity - commonpower-safe-rl Public
This tutorial introduces the CommonPower library, designed to benchmark safe reinforcement learning (RL) algorithms on control problems for power systems. We highlight two crucial issues in RL for power system control: safeguarding RL decision-making and assessing the impact of forecast quality on control performance.
climatechange-ai-tutorials/commonpower-safe-rl’s past year of commit activity - climate-extremes-regime Public
The goal of this tutorial is to show how we can use methods from constraint-based causal discovery to uncover the causal relationships that are present in different moisture regimes. In doing that, we aim to improve our general understanding of the dynamics of extreme events.
climatechange-ai-tutorials/climate-extremes-regime’s past year of commit activity
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