<p>The year 2022 has been declared by the United Nations as the βInternational Year of Basic Sciences for Sustainable Developmentβ. Sustainable development is focused on the UNβs 17 Sustainable Development Goals. These require the use of basic sciences. This edited book (volume 1) is a collection of
Basic Sciences for Sustainable Development: Energy, Artificial intelligence, Chemistry, and Materials Science
β Scribed by Ponnadurai Ramasami (editor)
- Publisher
- De Gruyter
- Year
- 2023
- Tongue
- English
- Leaves
- 274
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
The year 2022 has been declared by the United Nations as the βInternational Year of Basic Sciences for Sustainable Developmentβ. Sustainable development is focused on the UNβs 17 Sustainable Development Goals. These require the use of basic sciences. This edited book (volume 1) is a collection of twelve invited and peer-reviewed contributions from chemistry, materials science, energy applications, and artificial intelligence.
- Contains chapters on recent research on basic sciences for sustainable development.
- Topics include utilizing artificial intelligence, sustainable energy, developing new green synthesis techniques and much more.
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