The amount of data coming out of IoT (Internet of Things) devices is vast and growing. Some of this data is vital, a lot of it is not. Informed estimates suggest that of every 400 events coming out of the IoT layer, only 1 will be interesting and actionable. This is a classic “needle in a haystack” problem. How to find that 1 interesting event among hundreds in a timely and cost-effective manner.
Why not send it all back to a data lake in “big cloud”?
How does MidoriCloud address these issues?
What kind of use cases are enabled by moving AI/ML to the edge?
While there are literally thousands of potential use cases for AI/ML-enabled edge computing the following examples will give an idea of some of the possibilities. Even if your enterprise does not fit with any of these use cases, there will almost certainly be similar use cases that can be identified by thinking through the examples that follow:
The MidoriCloud team includes Digital Transformation consultants and data scientists who can help you evaluate how AI/ML at the edge can help you optimize your business.
What AI/ML tools are available on MidoriCloud?
Thanks to MidoriCloud’s standards-based architecture, the majority of AI/ML tools that run on hyperscaler cloud or on-premise can be deployed at the edge. The main exception to this is tools that rely on access to huge volumes of persistent data, such as building Large Language Models.
In most cases, a model that is built and trained on hyperscaler cloud can be ported relatively easily to the MidoriCloud where it can continue to evolve based on new streaming data. Insights thus gained can then be fed back asynchronously to the master model in hyperscaler cloud for redistribution to other edge sites.
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