Energy Efficient Orchestration of IoT Devices in Cloud Native Environments Using Green Computing Paradigms

Authors

Alexander K. Martin
Green Infrastructure Architect , Israel

Keywords:

IoT orchestration, cloud-native, green computing, energy efficiency, sustainability

Synopsis

The exponential growth of Internet of Things (IoT) devices has led to unprecedented demands on cloud infrastructures, raising concerns about energy consumption and sustainability. Green computing paradigms offer promising strategies for optimizing orchestration in cloud-native environments by reducing energy usage without compromising performance. This paper explores key mechanisms such as workload scheduling, containerization, virtualization, and dynamic scaling, which collectively enhance energy efficiency while maintaining system reliability. Furthermore, it highlights the synergy between IoT and green computing for sustainable digital ecosystems.

 

 

References

(1) Bonomi, Flavio, et al. “Fog Computing and Its Role in the Internet of Things.” MCC Workshop, 2012.

(2) Satyanarayanan, Mahadev, et al. “The Emergence of Edge Computing.” Computer, 2017.

(3) Dragoni, Nicola, et al. “Microservices: Yesterday, Today, and Tomorrow.” Springer, 2017.

(4) Buyya, Rajkumar, et al. “A Survey of Energy-Efficient Cloud Resource Management.” Future Generation Computer Systems, 2018.

(5) Anugula Sethupathy, U.K. (2021). Securing cloud-based streaming data platforms best practices and frameworks. International Research Journal of Modernization in Engineering Technology and Science, 3(11), 1516–1526. https://doi.org/10.56726/IRJMETS17179

(6) Beloglazov, Anton, et al. “Energy-Aware Resource Allocation Heuristics for Efficient Management of Data Centers for Cloud Computing.” Future Generation Computer Systems, 2012.

(7) Armbrust, Michael, et al. “A View of Cloud Computing.” Communications of the ACM, 2010.

(8) Varghese, Blesson, and Rajkumar Buyya. “Next Generation Cloud Computing: New Trends and Research Directions.” Future Generation Computer Systems, 2018.

(9) Abbas, Nebojsa, et al. “Mobile Edge Computing: A Survey.” IEEE IoT Journal, 2018.

(10) Dean, Jeffrey, and Luiz Barroso. “The Tail at Scale.” CACM, 2013.

(11) Anugula Sethupathy, U.K. (2020). Cloud-Native Architectures for Real-Time Retail Inventory and Analytics Platforms. International Journal of Novel Research and Development, 5(6), 339–355. https://doi.org/10.56975/ijnrd.v5i6.309063

(12) Hong, Kai, et al. “Mobile Fog.” SIGCOMM Workshop, 2013.

Published

January 22, 2022