Machine Learning and Automations

Prof. Shailesh R. ThakareProfessor, Department of MCA, Vidyabharati Mahavidyalaya, Amravati, IndiaVikram S. SharmaStudent, Department of MCA, Vidyabharati Mahavidyalaya, Amravati, IndiaAmar V. GulhaneStudent, Department of MCA, Vidyabharati Mahavidyalaya, Amravati, India

Vol 7 No 12 (2023): Volume 7, Issue 12, December 2023 | Pages: 51-54

International Research Journal of Innovations in Engineering and Technology

OPEN ACCESS | Research Article | Published Date: 12-12-2023

doi Logo doi.org/10.47001/IRJIET/2023.712006

Abstract

Machine learning and automation are two interconnected fields that have revolutionized various industries and processes. Machine learning is the use of algorithms and statistical models that allow computer systems to improve their performance on a specific task through experience and data, without the need for explicit programming. Automation, on the other hand, involves the use of technology to perform tasks with minimal human intervention. This article examines current machine learning techniques to automatically define planning knowledge. It was organized according to the objective of the learning process: automatic definition of planning action models and automatic definition of planning control knowledge.

Keywords

Machine Learning, Artificial Intelligence, Data Science, Deep Learning


Citation of this Article

Prof. Shailesh R. Thakare, Vikram S. Sharma, Amar V. Gulhane, “Machine Learning & Automations” Published in International Research Journal of Innovations in Engineering and Technology - IRJIET, Volume 7, Issue 12, pp 51-54, December 2023. Article DOI https://doi.org/10.47001/IRJIET/2023.712006

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