Edge Data Fabric: What It Is, Why It Matters

Edge Data Fabric: What It Is

An edge data fabric acts as both the plumbing and translator for data moving on and off different platforms deployed at the edge.

To generate richer and more timely insights, enterprises are using increasing amounts of data. Expect that trend to continue. An IDC model projects that the global datasphere will roughly triple in size by 2025.

But this trend isn’t new. After all, the term Big Data has been with us for quite a while. What’s different is where the data will emanate from and how fluid it will be. In other words, mobile and IoT – the edge – will drive data creation.

Further, the processing and analysis will happen at various points from on device, at the gateways, and across the cloud. Perhaps a better term would be Fluid Distributed Data instead of Big Data?

Regardless, more data ultimately translates to more viable business opportunities – particularly given that this new data is generated at the point of action from humans and machines.

To take full advantage of the growing amounts of data available to them, enterprises need a way to manage it more efficiently across platforms, from the edge to the cloud and back. They need to process, store and optimize different types of data that’s coming from different sources with different levels of cleanliness and validity.  They need to connect this data to internal applications and apply business process logic, increasingly aided by artificial intelligence and machine learning models.

It’s a big challenge. One solution enterprises are pursuing now is the adoption of adata fabric.And, as data volumes continue to grow at the network’s edge, that solution will evolve further into what will more commonly be referred to as an edge data fabric.

Data that is distributed across different areas can be accessed easily and transparently – in real time in a unifying data layer, under the same management – through a data fabric. The data fabric itself enables operators to move and access data across different deployment platforms, data processes, geographical locations and structural approaches.

Essentially, a data fabric acts as both the plumbing and translator for data moving onto and off different platforms – including data centers, the public cloud, private clouds and the many types of gateways and devices operating at the edge.

Edge computing provides a unique set of challenges for data being generated and processed outside the network core. The devices themselves operating at the edge are getting more complex.

Smart devices like networked PLCs manage solenoids that, in turn, control process flows in a chemical plant, pressure sensors that determine the weight and active RFID tags to determine the location of a cargo container.  The vast majority of the processing used to take place in the data center, but that has shifted to the point where a larger portion of the processing takes place in the cloud. In both cases, the processing happens on one side of a gateway.

The data center was fixed, not virtual, but the cloud is fluid. If you consider the definition of cloud, you can see why a data fabric would be needed in it. Cloud is about fluidity and removing locality, but, like the data center, it’s about processing data associated with applications.

We may not care where the Salesforce cloud or Oracle cloud or any other cloud is actually located but we do care that my data must transit between various clouds and persist in each of them for use in different operations.

Because of all that complexity, organizations have to determine which pieces of the processing are done at which level. There’s an application for each, and for each application there’s a manipulation. And for each manipulation, there’s processing of data and memory management.

The point of a data fabric is to handle all the complexity.

Share it:
Share it:

[Social9_Share class=”s9-widget-wrapper”]

Leave a Reply

Your email address will not be published. Required fields are marked *

This site uses Akismet to reduce spam. Learn how your comment data is processed.

You Might Be Interested In

What the Enterprise Has Been Missing: Governed Data Sharing

28 Oct, 2021

If the objective is for organizations to treat data as a strategic asset, if doing so is the ultimate means …

Read more

How to Grow Your Small Business Using AI

5 Jun, 2021

Does your brandleverage artificial intelligence ( AI)for small business tools currently helping brands perform various tasks with ease? 22%of companies …

Read more

Dark Side of AI: How to Make Artificial Intelligence Trustworthy

18 Nov, 2021

Security and privacy concerns are the top barriers to adoption of artificial intelligence, and for good reason. Both benign and …

Read more

Recent Jobs

Senior Cloud Engineer (AWS, Snowflake)

Remote (United States (Nationwide))

9 May, 2024

Read More

IT Engineer

Washington D.C., DC, USA

1 May, 2024

Read More

Data Engineer

Washington D.C., DC, USA

1 May, 2024

Read More

Applications Developer

Washington D.C., DC, USA

1 May, 2024

Read More

Do You Want to Share Your Story?

Bring your insights on Data, Visualization, Innovation or Business Agility to our community. Let them learn from your experience.

Get the 3 STEPS

To Drive Analytics Adoption
And manage change

3-steps-to-drive-analytics-adoption

Get Access to Event Discounts

Switch your 7wData account from Subscriber to Event Discount Member by clicking the button below and get access to event discounts. Learn & Grow together with us in a more profitable way!

Get Access to Event Discounts

Create a 7wData account and get access to event discounts. Learn & Grow together with us in a more profitable way!

Don't miss Out!

Stay in touch and receive in depth articles, guides, news & commentary of all things data.