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Showing 1–9 of 9 results
Advanced filters: Author: A. Irrgang Clear advanced filters
  • For a third year in a row, we followed up with authors of several recent Comments and Perspectives in Nature Machine Intelligence about what happened after their article was published: how did the topic they wrote about develop, did they gain new insights, and what are their hopes and expectations for AI in 2022?

    • Cameron Buckner
    • Risto Miikkulainen
    • Vidushi Marda
    Special Features
    Nature Machine Intelligence
    Volume: 4, P: 5-10
  • Understanding the progenitors of type Ia supernova is important for their use as cosmological distance probes. Here the authors identify a candidate for a type Ia supernova that is due to explode in 70 million years: a white dwarf in a binary system with a stripped core-helium-burning star.

    • Ingrid Pelisoli
    • P. Neunteufel
    • B. N. Barlow
    Research
    Nature Astronomy
    Volume: 5, P: 1052-1061
  • In the Arctic, the risks of the permafrost thaw are perceived differently by communities, and key hazards include infrastructure failure, mobility disruption, decreased water quality and food security, and exposure to diseases, according to a transdisciplinary analysis based on workshops and a thematic network approach.

    • Susanna Gartler
    • Johanna Scheer
    • Thomas Ingeman-Nielsen
    ResearchOpen Access
    Communications Earth & Environment
    Volume: 6, P: 1-20
  • In the past few years, AI approaches have been used to enhance Earth and climate modelling. This Perspective examines the opportunity to go further, and build from scratch hybrid systems that integrate AI tools and models based on physical process knowledge to make more efficient use of daily observational data streams.

    • Christopher Irrgang
    • Niklas Boers
    • Jan Saynisch-Wagner
    Reviews
    Nature Machine Intelligence
    Volume: 3, P: 667-674
  • Anthropogenic warming is perturbing the Arctic carbon cycle. This Review provides an overview of contemporary carbon stocks and fluxes across terrestrial, aquatic and oceanic components of the integrated Arctic system.

    • Jorien E. Vonk
    • Michael Fritz
    • Scott Zolkos
    Reviews
    Nature Reviews Earth & Environment
    Volume: 6, P: 86-105
  • Arctic coasts are increasingly affected by erosion and flooding, owing to decreasing sea ice, thawing permafrost and rising sea levels. This Review examines the changes in Arctic coastal morphodynamics and discusses the broader impacts on Arctic systems.

    • Anna M. Irrgang
    • Mette Bendixen
    • Benjamin M. Jones
    Reviews
    Nature Reviews Earth & Environment
    Volume: 3, P: 39-54
  • The rapid growth of artificial intelligence (AI) is reshaping our society in many ways, and climate change is no exception. This Perspective presents a framework to assess how AI affects GHG emissions and proposes approaches to align the technology with climate change mitigation.

    • Lynn H. Kaack
    • Priya L. Donti
    • David Rolnick
    Reviews
    Nature Climate Change
    Volume: 12, P: 518-527