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Robotic Technology-Based Cloud Computing for Improved Services

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Abstract

Cloud is Internet-based utility computing which offers a choice to rent and use the computational resources on subscription basis. It has the service-oriented and deployment models which would provide suitable services to the end-users. Robotics can be defined as a machine which would do some useful works as given by the user which would reduce his/her work and make smooth transactions. Cloud robotics is an upcoming technological area with a combination of cloud computing and robotics. Interconnection of these two fields would profit the mankind. Many more different varieties of applications are emerging as on today. In coming of the days, cloud robots will have major role to perform, such as to improve the ‘public utility of technology’. This paper describes the laws of robotics, characteristics of robotics, need for cloud robotics, initial steps for cloud robotics, available cloud robotic technologies, constraints on cloud robotics, cloud robotics architectures, addressing needs of cloud robotics, cloud robotic algorithm—SLAM. This present paper would bring out a review of all such aspects which would benefit the reader with a fine tune.

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Acknowledgements

I sincerely thank and express deep sense of gratitude to my Research supervisor Prof. T. Anuradha (Professor-in-Computer Science & Registrar Dravidian University) who has guided me for exploring more to in the qualitative content about the cloud computing environment. I sincerely express my sincere thanks for her Inspiration and Mentorship for this Paper. I wish to thank Sri Anil Nama CIO Cloud4C & CtrlS-CTRLS Data Center, Hitech City-Hyderabad, who has helped me to know various information about the Datacenter-related standards like ANSI/TIA-942 Datacenter Quality, IEEE 493 for Electrical Standards, ANSI/TIA-942 Certification and Auditing. I would like to thank Sri. Sai Ram Gandikota, Compliance Officer NettLinx Data Center, Saifabad, Hyderabad, who has given me the Information about the Datacenter requirements like CMMI Level 5, CMMISVC/3, ISO/IEC 27000:2013 certifications, etc., for his immense support in collecting the Research-related data. And also RailTel Data Center, Secunderabad, who constantly answered my questions with patience, and assisted me to collect Information related to my research. I take this opportunity to thank Ricoh Data Center, Hyderabad, and National Informatics Centre, Hyderabad, who has guided me to collect relevant information.

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This study was not funded by any agency or organization.

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Correspondence to Srinivasa Rao Gundu.

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This article is part of the topical collection “Advances in Computational Approaches for Artificial Intelligence, Image Processing, IoT and Cloud Applications” guest edited by Bhanu Prakash K N and M. Shivakumar.

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Gundu, S.R., Panem, C.A. & Timmapuram, A. Robotic Technology-Based Cloud Computing for Improved Services. SN COMPUT. SCI. 1, 190 (2020). https://doi.org/10.1007/s42979-020-00203-1

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