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Applications of Artificial Intelligence for the Dark Universe

- Forays in Mathematical Cosmology

Bag om Applications of Artificial Intelligence for the Dark Universe

The dark universe contains matter and energy unidentifiable with current physical models, accounting for 95% of all matter and energetic equivalent in the Universe. The enormous surplus brings up daunting enigmas, such as the cosmological constant problem, and so coming to grips with the invisible Universe has become a scientific imperative. This book addresses this need, reckoning that no cogent physical model of the dark universe can be implemented without first addressing the metaphysical hurdles along the way. The foremost problem is identifying the topology of the universe which, as argued in the book, is highly relevant to identifying secrets of the dark universe. Artificial Intelligence (AI) is a valuable tool in this effort since it can reconcile conflicting data from deep space with the extant laws of physics by building models to decipher the dark universe. This book explores the applications of AI and how it can be used to embark on a metaphysical quest to identify the topology of the universe as a prerequisite to implementing a physical model of the dark universe. The book is intended for a broad readership, but a background in college-level physics and computer science is essential. The book will be a valuable guide for graduate students as well as researchers in physics, astrophysics and computer science focusing on the applications of artificial intelligence in unravelling the nature of the dark universe. Key Features: - Provides readers with an intellectual toolbox to understand physical arguments on dark matter and energy - Up-to-date with the latest, cutting edge research - Authored by an expert on artificial intelligence and mathematical physics Ariel Fernández (born Ariel Fernández Stigliano, April 8, 1957) is an Argentine-American physical chemist and mathematician. He obtained a Ph. D. degree in Chemical Physics from Yale University in record time and held the Karl F. Hasselmann Endowed Chair Professorship in Engineering at Rice University until his retirement. He was also an Adjunct Professor of Computer Science at the University of Chicago. To date, he has published approximately 500 scientific papers in professional journals and has also authored nine books on physical chemistry, molecular medicine, artificial intelligence, mathematical cosmology and mathematical physics. Additionally, he holds several patents on technological innovation. Fernández is a member of the National Research Council of Argentina (CONICET) and, since 2018, heads the Daruma Institute for Applied Intelligence, the research arm of AF Innovation, a Consultancy based in Argentina and the US.

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  • Sprog:
  • Engelsk
  • ISBN:
  • 9781032817187
  • Indbinding:
  • Paperback
  • Udgivet:
  • 20. august 2024
  • Størrelse:
  • 156x234x13 mm.
  • Vægt:
  • 340 g.
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Leveringstid: 2-3 uger
Forventet levering: 22. januar 2025

Beskrivelse af Applications of Artificial Intelligence for the Dark Universe

The dark universe contains matter and energy unidentifiable with current physical models, accounting for 95% of all matter and energetic equivalent in the Universe. The enormous surplus brings up daunting enigmas, such as the cosmological constant problem, and so coming to grips with the invisible Universe has become a scientific imperative.
This book addresses this need, reckoning that no cogent physical model of the dark universe can be implemented without first addressing the metaphysical hurdles along the way. The foremost problem is identifying the topology of the universe which, as argued in the book, is highly relevant to identifying secrets of the dark universe.
Artificial Intelligence (AI) is a valuable tool in this effort since it can reconcile conflicting data from deep space with the extant laws of physics by building models to decipher the dark universe. This book explores the applications of AI and how it can be used to embark on a metaphysical quest to identify the topology of the universe as a prerequisite to implementing a physical model of the dark universe.
The book is intended for a broad readership, but a background in college-level physics and computer science is essential. The book will be a valuable guide for graduate students as well as researchers in physics, astrophysics and computer science focusing on the applications of artificial intelligence in unravelling the nature of the dark universe.
Key Features:
- Provides readers with an intellectual toolbox to understand physical arguments on dark matter and energy
- Up-to-date with the latest, cutting edge research
- Authored by an expert on artificial intelligence and mathematical physics
Ariel Fernández (born Ariel Fernández Stigliano, April 8, 1957) is an Argentine-American physical chemist and mathematician. He obtained a Ph. D. degree in Chemical Physics from Yale University in record time and held the Karl F. Hasselmann Endowed Chair Professorship in Engineering at Rice University until his retirement. He was also an Adjunct Professor of Computer Science at the University of Chicago. To date, he has published approximately 500 scientific papers in professional journals and has also authored nine books on physical chemistry, molecular medicine, artificial intelligence, mathematical cosmology and mathematical physics. Additionally, he holds several patents on technological innovation. Fernández is a member of the National Research Council of Argentina (CONICET) and, since 2018, heads the Daruma Institute for Applied Intelligence, the research arm of AF Innovation, a Consultancy based in Argentina and the US.

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