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Journal Photo for Environmental Data Science
Peer reviewed only Open Access

Environmental Data Science (EDS)

Publisher : Cambridge University Press & Assessment
Environmental data science climate change AI and machine learning in environment
e-ISSN 2634-4602
Issue Frequency Yearly
Impact Factor 1.7
Est. Year 2022
Mobile 4401223552551
DOI YES
Language English
APC YES
Impact Factor Assignee GOOGLE SCHOLAR
Email press@cambridge.org

Journal Descriptions

Environmental Data Science is an open access journal dedicated to the use of data-driven approaches to understand environmental processes - including climate change - and aid sustainable decision-making. The data and methodological scope is defined broadly to encompass artificial intelligence, machine learning, data mining, computer vision, econometrics and other statistical techniques. EDS is a venue for application and methods papers, whether they relate to the geosphere (the solid earth and its processes), cryosphere (e.g. ice, snow, permafrost and tundra), biosphere (ecology), hydrosphere (oceans and fresh water, including the water cycle) or atmosphere (e.g. meteorology, climatology). It also welcomes work that shows how data science can inform societal responses to environmental problems (such as climate change, air quality, energy, natural resources and land use). EDS promotes open data and data re-use - through data papers that describe valuable environmental data sets - and publishes shorter position papers relevant to the journal’s scope.

Environmental Data Science (EDS) is :-

  • International, Peer-Reviewed, Open Access, Refereed, Environmental data science, climate change, AI and machine learning in environment, geosphere, cryosphere, biosphere, hydrosphere, atmosphere, sustainability , Online , Yearly Journal

  • UGC Approved, ISSN Approved: P-ISSN E-ISSN: 2634-4602, Established: 2022, Impact Factor: 1.7
  • Provides Crossref DOI
  • Not indexed in Scopus, WoS, DOAJ, PubMed, UGC CARE

Indexing