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The aim of this wiki is to help foster impactful research to tackle climate change, by identifying areas for a useful implementation of machine learning (ML).
The aim of this wiki is to help foster impactful research to tackle the climate crisis, by identifying problems where ML can be useful. The scope of solutions to address the climate crisis goes far beyond the intersection we address here; the problems of climate change require cooperation between diverse stakeholders, and action in many forms. But whether you are machine learning researcher looking to apply your skills to combat climate change, a young researcher aiming to have impact in your career, a practitioner in one of these areas looking to apply ML to your problem, or for any other reason are interested in the intersection of climate change and ML, we hope these pages can help inform and facilitate your research!▼
▲The
We welcome your contributions and feedback! This wiki is maintained and moderated by members of [https://www.climatechange.ai/about CCAI].
See '''[[Contributing_to_the_CCAI_Wiki|guide on contributing to the CCAI Wiki]]'''. Feel free to start suggesting changes to any of the following pages!
If you would like to discuss your ideas for additional pages or gain moderator privileges, feel free to reach out to CCAI at [mailto:wiki@climatechange.ai wiki@climatechange.ai].
=== Quick start ===
*[[General Resources]] page▼
*[https://arxiv.org/abs/1906.05433 Tackling Climate Change with Machine Learning] review paper▼
▲* [[General Resources]] page
▲* [https://arxiv.org/abs/1906.05433 Tackling Climate Change with Machine Learning] review paper or explore its [https://www.climatechange.ai/summaries interactive summary]!
* Explore the [https://www.climatechange.ai/papers Climate Change AI Workshop papers]
The pages below provide overviews and resources on topics at the intersection of climate change and machine learning. ''Mitigation'' refers to reducing emissions in order to lessen the extent of climate change, while ''adaptation'' refers to preparing for the effects of climate change. We also provide overviews of various ''tools for action'' -- such as policy, economics, education, and finance -- that can help enable mitigation and adaptation strategies.
====Mitigation====
*[[Electricity Systems|Electricity systems]]
*[[Agriculture]]
*[[Forestry and Other Land Use|Forestry and other land use]]
*[[Negative Emissions Technologies|
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*[[Climate Change Adaptation|Climate change adaptation]]
*[[Biodiversity]]
*[[Solar Geoengineering|Solar geoengineering]]
====Climate science====
==== Social Impacts & Tools for Action ====▼
*[[Climate_Modeling_and_Analysis|Climate modeling and analysis]]
*[[Weather prediction|Weather forecasting]]
*[[Public Policy and Decision Science|Public policy and decision science]]
*[[Climate and Environmental Economics|Climate and environmental economics]]
*[[Education]]
*[[Climate Finance|Climate finance]]
*[[Tools for Individuals|Tools for individuals]]
There are several cross-cutting themes and research problems that recur across the topic areas above.
▲=== Topics organized by Cross-cutting Theme ===
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*[[Efficient sensing]]
*[[Surrogate modeling]]
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<!-- === Topics organized by Machine Learning Area ===
Here pages are organized by the area or type of machine learning research. If you are an ML researcher in one of these areas, this provides a quick way to see which problems of climate change potentially best align with your expertise.
* [[Uncertainty quantification and Bayesian methods]]
* [[Unsupervised and Self-supervised learning]]
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