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* [https://www.nature.com/articles/s41893-018-0194-x '''Policy design for the Anthropocene (2019)''']: a study that examines the complexities of designing policies that can keep Earth warming to a minimum.
* [https://www.nature.com/articles/s41893-018-0194-x '''Policy design for the Anthropocene (2019)''']: a study that examines the complexities of designing policies that can keep Earth warming to a minimum.
* [https://pubs.aeaweb.org/doi/pdfplus/10.1257/aer.98.2.1 '''The economics of climate change (2008)'''] : a complex analysis of the economics of climate change, the scientific and economic challenges that come up, and ways in which economics can be used to spur global action.
* [https://pubs.aeaweb.org/doi/pdfplus/10.1257/aer.98.2.1 '''The economics of climate change (2008)'''] : a complex analysis of the economics of climate change, the scientific and economic challenges that come up, and ways in which economics can be used to spur global action.
* [https://static1.squarespace.com/static/54ff9c5ce4b0a53decccfb4c/t/59b7f2409f8dce5316811916/1505227332748/CarbonPricing_FullReport.pdf '''Report of the High-Level Commission on Carbon Prices (2017)'''] : a report aiming to identify corridors of carbon prices that can be used to guide the design of carbon-pricing instruments and other climate policies,
* [https://static1.squarespace.com/static/54ff9c5ce4b0a53decccfb4c/t/59b7f2409f8dce5316811916/1505227332748/CarbonPricing_FullReport.pdf '''Report of the High-Level Commission on Carbon Prices (2017)'''] : a report aiming to identify corridors of carbon prices that can be used to guide the design of carbon-pricing instruments and other climate policies.
*'''[https://arxiv.org/abs/1906.05433 Tackling Climate Change with Machine Learning (2019)]:''' a review paper identifying high impact problems where existing gaps can be filled by machine learning, in collaboration with other fields.


== Online Courses and Course Materials ==
== Online Courses and Course Materials ==

Revision as of 18:22, 24 September 2020

As described in the paper "Tackling Climate Change with Machine Learning":

Climate change is one of the greatest problems society has ever faced, with increasingly severe consequences for humanity as natural disasters multiply, sea levels rise, and ecosystems falter. While no silver bullet, machine learning (ML) can be an invaluable tool in fighting climate change via a wide array of applications and techniques. [...] Despite the growth of movements applying ML and AI to problems of societal and global good, there remains the need for a concerted effort to identify how these tools may best be applied to tackle climate change. Many ML practitioners wish to act, but are uncertain how. On the other side, many fields have begun actively seeking input from the ML community.

Machine Learning Application Areas

Please refer to the specific topics and application areas listen in the pages of our Wikipedia, a list of which can be found on the Main Page.

Background Readings

On the problem of climate change

On how to tackle climate change

Online Courses and Course Materials

  • UN Climate Change E-Learning Portal : a central website to help countries and individuals achieve climate change action both through general climate literacy and applied skills development

Community

Societies and organizations

  • AI, People & Planet: an initiative that aims to explore how rapid technological change like AI might both support and undermine transformations to sustainability.
  • Climate Informatics: a network of scientists working at the intersection of computer science and climate science.
  • Open Climate Fix: a non-profit research and development lab focused on reducing greenhouse gas emissions.
  • Computational Sustainability Network: a network of Interdisciplinary, multi-investigator research teams that are focusing on cross-cutting computational topics such as optimization, dynamical models, big data, machine learning, and citizen science, applied to sustainability challenges including conservation, poverty mitigation and renewable energy.
  • ClimateAction.tech: A global community of tech professionals using their skills, expertise and platforms to support solutions to the climate crisis.

Libraries and Tools

Data

References