Cloud Computing & IoT: 5G Focused IoT with Cloud Solutions
DOI:
https://doi.org/10.63282/3050-9416.IJAIBDCMS-V6I3P103Keywords:
5G, Cloud Computing, Cloud-Native Platforms, Digital Twin, Federated IoT, Fog Computing, FaaS, Internet of Things, Multi-Cloud, Serverless ComputingAbstract
The combination of 5G networks, cloud computing, and the IoT is providing a level of scalability, latency reduction, and real-time data processing that we have never had before. The paper presents an integrated view of 5G- oriented IoT systems utilizing cloud-native frameworks. It examines how serverless computing and Function-as-a-Service (FaaS) models simplify backend scalability, while cloud-native machine learning platforms offer edge intelligence and real- time analytics. The conversation is also extended to federated IoT and fog computing models, which provide an advantage for the disentanglement of attached systems in local decisions, while maintaining a global view in sync with neighbouring units. The paper further discusses how digital twin models are deployed in physical IoT setups that feature predictive simulation and feedback loops. Lastly, the research also examines the requirement for significantly more secure multi-cloud entities, specifically for mission-critical IoT deployments. The findings demonstrate that the adoption of these paradigms in concert yields prompt and efficient solutions for the dynamic management of modern IoT infrastructure. The paper concludes by outlining guidelines for future real-world deployments, enabling synergy among 5G, cloud, and IoT in various domains, including smart cities, healthcare, and industrial automation
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