A Study on Embedding the Artificial Intelligence and Machine Learning into Space Exploration and Astronomy

@article{Mohan2019ASO,
  title={A Study on Embedding the Artificial Intelligence and Machine Learning into Space Exploration and Astronomy},
  author={Jaya Mohan and N Tejaswi},
  journal={Emerging Trends in Computing and Expert Technology},
  year={2019}
}
  • Jaya Mohan, N. Tejaswi
  • Published 22 March 2019
  • Physics, Computer Science
  • Emerging Trends in Computing and Expert Technology
Artificial Intelligence and Machine Learning are powerful inventions which are applied to attain dynamic purposes in several disciplines. In that, the field of Space Exploration and Astronomy are highly supported by artificial intelligence and machine learning discoveries. The Strategies of Space Exploration and astronomy are enhanced by the progress of artificial intelligence and the efficiency of a machine learning algorithm in the scientific study of celestial objects and the atmosphere of… 

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