Javascript must be enabled to continue!
A Microservices-Based Hybrid Cloud-Edge Architecture for Real-Time IIoT Analytics
View through CrossRef
Hybrid and multi-cloud computing have become very important for enterprises and companies managing large-scale, real-time data streaming and analytics. At the same time, edge computing has come into the limelight as a key approach to reducing latency and optimizing resource usage at the network’s outermost layer.This paper bridges the gap between scalable multi-cloud architectures and modern microservices-driven cloud-edge collaboration which solves real-time streaming, analytics, and condition monitoring. We first summarize the major limitations—such as data integration, latency, interoperability, and vendor lock-in—when designing solutions that span in different cloud environments.We then provide a hybrid architecture that integrates edge computing to guarantee quick response and uses microservices for containerized deployments. For activities like feature extraction and AI-driven analytics, we will investigate cloud-edge collaboration solutions that will allow for instant decision-making at the edge while also shifting more complicated processing to the cloud.Lastly, we present a case study on battery scanning and quality analysis in battery manufacturing. Findings show that integrating multi-cloud and edge computing can reduce operating expenses, cut latency by up to 30%, and greatly increase predictive accuracy, with a 90% success rate in real-time anomaly detection and a 50% reduction in predictive mistakes.Finally, this hybrid cloud-edge strategy positions itself as a strong framework for the upcoming generation of intelligent applications by improving scalability, real-time efficiency, and cost-effectiveness.
Science Research Society
Title: A Microservices-Based Hybrid Cloud-Edge Architecture for Real-Time IIoT Analytics
Description:
Hybrid and multi-cloud computing have become very important for enterprises and companies managing large-scale, real-time data streaming and analytics.
At the same time, edge computing has come into the limelight as a key approach to reducing latency and optimizing resource usage at the network’s outermost layer.
This paper bridges the gap between scalable multi-cloud architectures and modern microservices-driven cloud-edge collaboration which solves real-time streaming, analytics, and condition monitoring.
We first summarize the major limitations—such as data integration, latency, interoperability, and vendor lock-in—when designing solutions that span in different cloud environments.
We then provide a hybrid architecture that integrates edge computing to guarantee quick response and uses microservices for containerized deployments.
For activities like feature extraction and AI-driven analytics, we will investigate cloud-edge collaboration solutions that will allow for instant decision-making at the edge while also shifting more complicated processing to the cloud.
Lastly, we present a case study on battery scanning and quality analysis in battery manufacturing.
Findings show that integrating multi-cloud and edge computing can reduce operating expenses, cut latency by up to 30%, and greatly increase predictive accuracy, with a 90% success rate in real-time anomaly detection and a 50% reduction in predictive mistakes.
Finally, this hybrid cloud-edge strategy positions itself as a strong framework for the upcoming generation of intelligent applications by improving scalability, real-time efficiency, and cost-effectiveness.
Related Results
Optimizing edge cloud deployments for video analytics
Optimizing edge cloud deployments for video analytics
(English) As our digital world and physical realities blend together, we, as users, are growing to expect real-time interaction wherever and whenever we want. Newer internet servic...
ecision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predi
ecision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predictive Analytics in Precision Farming and Predi
The scope of sensor networks and the Internet of Things spanning rapidly to diversified domains but not limited to sports, health, and business trading. In recent past, the sensors...
AI-driven zero-touch orchestration of edge-cloud services
AI-driven zero-touch orchestration of edge-cloud services
(English) 6G networks demand orchestration systems capable of managing thousands of distributed microservices under sub-millisecond latency constraints. Traditional centralized app...
Integrated Fuzzy Decision Tree based Blockchain Federated Safety- as-a-Service for IIoT
Integrated Fuzzy Decision Tree based Blockchain Federated Safety- as-a-Service for IIoT
Abstract
Blockchains are not appropriate for smart appliances because they are expensive to compute, have a lot of overhead bandwidth and cause delays. Improving data deliv...
Integration of Next Generation IIoT with Blockchain for the Development of Smart Industries
Integration of Next Generation IIoT with Blockchain for the Development of Smart Industries
In modern era, a wide range of smart industries is being focus on automation-based applications. Various technologies are rapidly implementing in Industrial Internet of Things (IIo...
An Overview of Privacy Dimensions on the Industrial Internet of Things (IIoT)
An Overview of Privacy Dimensions on the Industrial Internet of Things (IIoT)
The rapid advancements in technology have given rise to groundbreaking solutions and practical applications in the field of the Industrial Internet of Things (IIoT). These advancem...
A Secure Hybrid Deep Learning Technique for Anomaly Detection in IIoT Edge Computing
A Secure Hybrid Deep Learning Technique for Anomaly Detection in IIoT Edge Computing
The IIoT network involves smart sensors, actuators, and technologies extending IoT capabilities across industrial sectors. With the rapid development in connected technology and co...
The architecture of differences
The architecture of differences
Following in the footsteps of the protagonists of the Italian architectural debate is a mark of culture and proactivity. The synthesis deriving from the artistic-humanistic factors...

