Securing Edge-to-Edge Chain of Custody in Augmented and Predictive Analytics?
Numerous digital entities in existence today incorporate elements of an Internet of Things (IoT) or IoMT (M for Medical) management framework. However, their contributions to advancing technology within the diverse realm of "IoT data management" are often limited. Established cloud-based IoT data aggregation and visualization platforms have been present significantly. These platforms operate on a cloud-based model, serving as platform-as-a-service solutions that receive data streams, store, aggregate, contextualize, compute, and visualize data. These platforms are not groundbreaking, leaving ample space for enhancement through innovative resources entering the market.
This article aims to accentuate the distinctions between low-speed Industry 4.0 interfacing and high-speed data operations that necessitate elevated security measures, specific data transmission protocols, and data mining environments as well as how to assure the chain of custody of all your high-risk and compliance-oriented assets are confidentially secured with zero trust. Examples include clinical predictive analytics, which demands a secure transformation or even from the very beginning, the birth of groundbreaking data tools tailored for streaming, computation, visualization, and data aggregation.
A typical IoT-to-cloud environment encompasses the following components:
In summary, while numerous digital entities play a role in IoT management, there is still significant space for innovation.? A wide range of applications, from low-speed interfacing to high-speed tasks such as clinical predictive analytics, underscores the demand for tailored solutions. The facets of security, data transmission protocols, storage, aggregation, computation, and visualization collectively define the IoT data management landscape, presenting opportunities for continuous growth and development.?
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In Industry 4.0, real-time sensor connections can inadvertently contain sensitive PII or HIPAA-related information that must be safeguarded with the utmost care. Achieving comprehensive security, including encryption at rest, in transit, and, crucially, during execution, is paramount. Cloud-edge augmented analytics or predictive analytics, where models and data are processed within secure enclaves using nano instances, offer a robust solution.
SafeLiShare's innovative approach allows organizations to choose between "bringing compute to data" or "bringing data to compute," tailored to their specific regulatory compliance needs. We deliberately left out the key software solutions used in each stage of cloud edge ML or edge AI lifecycle.?
If you're interested in delving deeper into this topic, we'd love to share our insights and reference designs with you. Let's connect and discuss this further by clicking this link:Request a SafeLiShare Demo. #Industry40 #DataSecurity #SafeLiShare #IoT #Analytics