To install click the Add extension button. That's it.

The source code for the WIKI 2 extension is being checked by specialists of the Mozilla Foundation, Google, and Apple. You could also do it yourself at any point in time.

4,5
Kelly Slayton
Congratulations on this excellent venture… what a great idea!
Alexander Grigorievskiy
I use WIKI 2 every day and almost forgot how the original Wikipedia looks like.
Live Statistics
English Articles
Improved in 24 Hours
Added in 24 Hours
What we do. Every page goes through several hundred of perfecting techniques; in live mode. Quite the same Wikipedia. Just better.
.
Leo
Newton
Brights
Milds

Radiant Earth Foundation

From Wikipedia, the free encyclopedia

Radiant Earth Foundation is an American non-profit organization founded in 2016.[1][2] Its goal is to apply machine learning for Earth observation[3] to meet the Sustainable Development Goals.[4] The foundation works on developing openly licensed Earth observation machine learning libraries, training data sets[5] and models through an open source hub[6] that support missions worldwide[7] like agriculture,[8] conservation, and climate change.[9] Radiant Earth also works on a community of practice that develop standards, templates and APIs[6] around machine learning for Earth observation. According to scholar David Lindgren, the foundation „serves to make satellite imagery widely accessible and usable for development practitioners".[10]

The Foundation is funded by Schmidt Futures, Bill & Melinda Gates Foundation,[1] McGovern Foundation and the Omidyar network[9]

See also

Notes

  1. ^ a b Totaro, Paola (3 March 2017). "Daten für alle – Gates startet Satelliten-Projekt". Reuters Weltnachrichten. Retrieved 9 October 2020.
  2. ^ "Radiant Earth Annual Report 2019" (PDF). 2020.
  3. ^ Demyanov, Vladislav (2020). Satellites Missions and Technologies for Geosciences. IntechOpen. p. 117. ISBN 978-1-78985-995-9.
  4. ^ "Radiant Earth Foundation". www.data4sdgs.org. Retrieved 2020-08-27.
  5. ^ Nachmany, Yoni (14 November 2018). "Generating a Training Dataset for Land Cover Classification to Advance Global Development". arXiv:1811.07998 [cs.CV].
  6. ^ a b Zenke da Cruz, Camila Lauria (2019). "Radiant Earth Platform: POTENCIALIDADES E LIMITAÇÕES DE ABORDAGEM DE PROCESSAMENTO DIGITAL DE IMAGEM NA NUVEM" (PDF). Anais do XIX Simpósio Brasileiro de Sensoriamento Remoto. ISBN 978-85-17-00097-3.
  7. ^ "Radiant Earth Foundation Releases First Earth Imagery Platform for Global Development – Tanzania News Gazette". Retrieved 2020-10-09.
  8. ^ Ballantynwe, A. (2019). "Benchmark Agricultural Training Datasets to Create Regional Crop Type Classification Models from Earth Observations". American Geophysical Union, Fall Meeting 2019, Abstract #GC23H-1439. 2019: GC23H–1439. Bibcode:2019AGUFMGC23H1439B.
  9. ^ a b "About – Radiant Earth Foundation". Retrieved 2020-08-27.
  10. ^ Lindgren, David (2020), Froehlich, Annette (ed.), "Satellites and Their Potential Role in Supporting the African Union's Continental Early Warning System", Space Fostering African Societies: Developing the African Continent through Space, Part 1, Southern Space Studies, Cham: Springer International Publishing, pp. 195–205, doi:10.1007/978-3-030-32930-3_13, ISBN 978-3-030-32930-3, S2CID 213700549, retrieved 2020-10-26

External links


This page was last edited on 11 January 2023, at 09:20
Basis of this page is in Wikipedia. Text is available under the CC BY-SA 3.0 Unported License. Non-text media are available under their specified licenses. Wikipedia® is a registered trademark of the Wikimedia Foundation, Inc. WIKI 2 is an independent company and has no affiliation with Wikimedia Foundation.