Limited Time Offer!

For Less Than the Cost of a Starbucks Coffee, Access All DevOpsSchool Videos on YouTube Unlimitedly.
Master DevOps, SRE, DevSecOps Skills!

Enroll Now

Making Progress Towards AI/ML Standards for Cable

Source – https://www.cablefax.com/

The use of artificial intelligence (AI) and machine learning (ML) has infiltrated many industries and cable is no exception. We are seeing cable network operators increasingly embrace the power of AI and ML to improve the network.

In the Spring of 2020, SCTE launched a working group to create standards for AI and ML for the cable industry. The work of the AI/ML working group represents just one part of the SCTE Explorer Initiative which launched in 2020 as part of SCTE’s Standards program, the only ANSI-accredited platform for developing technical standards supporting cable broadband networks. The Explorer Initiative is made up of seven working groups – including aging in place and telehealth, and telemedicine, smart cities, and more – that represent industries, technologies, or practices that will place significant demands on telecommunications infrastructure.

Tasked with exploring how AI and ML can be leveraged to make the network more efficient, this group consists of more than 50 participants from both inside and outside of cable who have been working diligently to shape industry best practices around data governance, anomaly detection, digital piracy, and automated video and ad analysis. Over the past year, the group has made significant progress toward the creation of standards in several areas that will help the industry advance toward 10G and will support scalability of new technology deployments across the network, including the use of ML for spectral impairment detection, HFC node splits, and video metadata extraction.

Machine Learning and Preventative Network Maintenance

The working group has made significant progress over the past year on creating a standard for how cable operators can apply machine learning for preventative network maintenance (PNM). The initial work has been around the use of ML for spectral impairment detection across the access network to create automated diagnostic reporting and mitigation.

Spectral impairments from a variety of sources contribute to a large percentage of infrastructure issues. We are seeing that machine learning models can be trained with numerous sets of labeled spectral impairment observations, including 15 different types of impairment (i.e. tilt, roll-off, notch, foreign carrier, etc.), to return a complete impairment diagnostic. These models, which learn over time to become more accurate, improve the rapid identification and mitigation of impairments to provide fewer network disruptions. Once complete, a standard for this application will assist cable operators big and small, and improve network service for everyone.

Machine Learning for Network Management

Another area the working group has focused on over the past year is the application of ML for network management, specifically HFC node splits. Commonly used by network operators to provide greater bandwidth and capacity to a specific geographic area, node splits require considerable labor and capital investment. This typically leads operators to prioritize where to invest finite resources, a process that has historically relied on a time intensive manual evaluation effort. Machine learning models are proving effective at evaluating the variables to rapidly provide actionable node split reports. The development of an industry standard for this application promises to speed up network growth, improve network efficiency, and provide customers with reliable high-speed services as the network continues to grow.

Artificial Intelligence and Video Piracy

Another area in which the working group has been busy over the past year is around developing best practices for video metadata extraction.

A standard around the application of artificial intelligence on the network to detect signatures of bad actors will help control video piracy. The work of the group over the past year indicates that the use of AI can significantly reduce video piracy. The successful creation and application of a standard around this use case has the potential to provide remarkable benefits to content creators, streaming servicing, and others. The work of the group around video piracy illustrates the power of having technology experts from both inside and outside of the industry working together to create standards.

Over the next couple of years, we expect to see new methods arise for leveraging artificial intelligence and machine learning to optimize

network operations. And, as the industry advances towards 10G, emerging technologies will continue to place demands on the industry to not only keep pace, but to remain ahead of the rapid acceleration of technology. As this happens, it is critical that these advancements are met with standards that will help to support a new era of connectivity and enable businesses to optimize their products and services to reach customers across the broadband network. Join us to be a part of the standards working groups and help shape the future of connectivity.

Related Posts

Subscribe
Notify of
guest
0 Comments
Oldest
Newest Most Voted
Inline Feedbacks
View all comments
0
Would love your thoughts, please comment.x
()
x
Artificial Intelligence