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Ericsson Q&A: Navigating community information challenges and AI/ML


There’s a dizzying array of knowledge out there to telecom operators on the standing, efficiency and well being of their networks; at numerous speeds and ranges of granularity; targeted on end-user-experience, peak community functionality, or dozens of different potential indicators. 

Ayodele Damola, director of AI/ML technique, Ericsson

Operators face appreciable challenges in making the most effective use of that information and translating it into actionable intelligence to validate, guarantee and optimize community operations. RCR Wi-fi Information reached out to Ayodele Damola, director of synthetic intelligence/machine studying technique at Ericsson, for his perspective on these challenges and the present panorama and traits in gathering, analyzing and leveraging community information in addition to using AI and ML in telecom networks.

This Q&A was carried out through electronic mail and has been evenly edited.

RCR: Because the business strikes additional into 5G and 5G Standalone deployments, in addition to disaggregation and cloud-native networks, how would you describe the challenges surrounding navigating network-related information? Is it a matter of recent sources (i.e., microservices resulting in extra information granularity), new quantity or scale of knowledge, or the speed/pace at which information is obtainable — or another issue? 

The primary problem navigating community information is the rise in complexity. As 5G features traction throughout the globe, communication service supplier (CSP) networks have gotten much more complicated. The complexity is because of the new set of companies being supplied, the rise in quantity and kinds of units within the community, availability of recent spectrum frequencies and bands, and the evolution of bodily networks to virtualized networks. This complexity equates to a rise within the quantity of community information generated; community information generated in several time frames along with the presence of extra number of community information. If we take, for instance, the reference parameter depend evolution in 3GPP radio entry networks (RAN) – we noticed that with 2G networks after we had only a few hundred reference parameters that wanted to be configured. In 5G, that quantity has grown to a number of thousand parameters. In 6G, we anticipate a good bigger variety of reference parameters. Improve in complexity can also be mirrored in ‘overabundance of knowledge’ – it turns into tough to seek out related information with out modern filtering and aggregation. One other situation is the dearth of standardization of knowledge throughout proprietary vendor gear resulting in difficulties in leveraging the information for insights. Yet one more situation is information administration – as we speak, it’s an afterthought consisting of brittle system info (SI) pushed pipelines that are inefficient. Mainly, information is duplicated and onerous to control. All these elements put new calls for on the extent of effort wanted to handle and management the community, and thereby result in an elevated CSP operation expense (OpEx) and ultimately elevated capital expense (CapEx). It’s changing into clear that it’s going to now not be attainable to handle networks in a legacy method the place community engineers have a look at dashboards and make modifications manually to the community. That is the place a know-how like AI enters the image, a know-how that permits automation and thereby reduces complexity.

RCR: Do you assume that telecom operators, by and huge, have a great deal with on their community information? What do you assume they do effectively, and the place is there room for enchancment? 

Entry to community information is a vital part of most CSP methods as we speak. Community information from multi-vendor networks has been considerably of a problem for CSPs as a result of every vendor has barely totally different community node interfaces – therefore, the format and syntax of the information could also be totally different throughout totally different distributors. Typically, CSPs lack a constant technique for information persistence and publicity. Completely different storage mechanisms (e.g., information lakes) and retention insurance policies complicate the scalable dealing with of knowledge volumes. Sooner or later, open requirements promise to alleviate this problem, particularly by the introduction of the Service Administration and Orchestration (SMO) framework outlined by the ORAN Alliance, which gives a set of well-defined interfaces enabling CSPs to entry and act on information from each purpose-built and virtualized multi-vendor and multi-technology networks. Community information is uncovered through open interfaces (e.g., R1, A1, O1, O2 and many others.) to the totally different SMO capabilities.  

Inside the SMO (our implementation is known as the Ericsson Clever Automation Platform) the Information administration and ingest operate permits CSPs to effectively and securely ingest and handle information. The AI/ML and perception technology operate permits the flexibility to course of and analyze the information, deriving insights and facilitating actuations.

RCR: What do community operators wish to use their information for? Are you able to give the highest three makes use of for network-related information which are the first curiosity of MNOs?

Market analysis earlier commissioned by Ericsson reveals that CSPs leverage community information throughout many use instances, with the highest three being: 

  • Buyer Expertise Administration: Resolution helps CSPs predict buyer satisfaction, detect expertise points, perceive root causes, and robotically takes the following greatest motion to enhance expertise and operational effectivity resulting in churn discount and elevated buyer adoption.
  • Safety/Fraud & Income Assurance: Addresses safety administration and income assurance together with billing and charging.
  • Cloud & IT Operations: Automation of cloud and IT administration operations together with administrative processes with assist for {hardware} and software program, and the speedy isolation of faults.

Moreover, different vital use instances embody Community Administration & Operations, Enterprise Operations, Service Assurance for RAN & Core, Community Design and Optimization, RAN Spectrum and Visitors Administration. 

RCR: What function is AI/ML enjoying in networks at this second in time? Persons are very within the potential — what’s the present actuality of sensible AI/ML use in telecom networks, and will you give some real-world examples? 

AI/ML guarantees big potential on the subject of optimizing and automating CSP networks. The business continues to be in its early days, however some issues which have been solved with AI/ML present substantial features. The complete systemization of CSP networks based mostly on AI/ML, additionally known as AI-native networks, continues to be some years away. With regards to the RAN particularly, Ericsson believes that AI/ML will play a key function within the following areas: 

  • Community evolution: Enhances community planning with extra environment friendly RF planning, website choice and capability administration.  Improves community and repair efficiency and permits new revenues by information pushed and intent-based insights and proposals.
  • Community deployment: Handles provisioning and life cycle administration of complicated networks with optimum prices and pace to market.
  • Community optimization: Clever autonomous capabilities to optimize buyer expertise and return on investments, e.g., RF shaping, site visitors and mobility administration, power effectivity and many others.
  • Community therapeutic: Service continuity and backbone of each primary and complicated incidents, delivering excessive availability whereas preserving the operation prices at a minimal.
  • AI and automation basis: Allows sooner TTM for – and belief in – excessive efficiency AI and automation use instances by the use of openness and suppleness.

As well as, Ericsson believes CSPs will profit from an end-to-end managed companies operations resolution enabling the clever administration of CSP networks and companies to supply superior connectivity and person expertise. Powered by superior analytics and machine studying algorithms, CSPs will profit from the flexibility to foretell potential community points attributable to {hardware}, software program, or exterior elements akin to climate disturbances or buyer habits patterns.

Sensible AI/ML use in telecom networks as we speak:

  • Capability Planning: Gives the flexibility to carry out proactive planning based mostly on site visitors forecast together with AI/ML prediction of utilization KPIs. The end result would be the optimum capability Expenditure to fulfill a sure QoS degree. Forecast predictions, bottleneck identification and community dimensioning are the primary use instances. Advantages embody 20-40% CapEx financial savings much less provider expansions in comparison with conventional strategy, and 83% elevated operational effectivity elevated operational effectivity on dimensioning duties.
  • Efficiency Diagnostics: An answer that analyzes CSPs’ RAN to detect and classify cell points. Recognized points are additional investigated right down to root trigger degree, enabling quick and correct optimization of end-user efficiency. Advantages embody: 30% improve in capability per optimization full time worker (FTE), and 15% higher downlink pace in cells with points.
  • Improved spectrum effectivity: By gathering adjoining cell information in actual time, it’s attainable to optimize radio hyperlink efficiency utilizing sample recognition. Advantages embody: 15% improved spectrum effectivity and 50% elevated cell edge DL throughput.
  • Sustainability: An autonomous mechanism utilizing AI/ML applied sciences and closed-loop automation to scale back every day radio community power consumption by as much as 25% with zero affect on person expertise.

With regards to the potential of AI/ML in CSP networks, we envision a journey with a number of steps: 

Within the earliest step, there was full human intervention because the community was manually configured. Within the subsequent step, the community configuration was nonetheless carried out by people, however the effort degree was lowered to the configuration of a really helpful set of parameters. Within the rule-based step, the human function was to create a algorithm which then managed the community; this required that the human builders have a deep understanding of how the community capabilities. We’re presently transitioning to the step with autonomous options the place we now have AI/ML fashions adapting to new conditions and thereby giving CPS extra automated management. Going ahead, the imaginative and prescient is that the community will evolve to completely autonomous with no human intervention apart from setting intents by which the community operates – mainly, offering the ‘what’ necessities to the community with the community performing the wanted ‘how’ actuation and management. It’s a journey much like the evolution of vehicles from manually managed to completely self-driving.

RCR: By way of edge vs. centralized cloud, is most information processing nonetheless centralized or do you see issues truly changing into extra distributed and taking place on the edge? Is it totally different for telco workloads vs. enterprise workloads? 

You will need to distinguish between information assortment, usually for the aim of coaching an AI/ML mannequin, and inference, which entails appearing on new information by a skilled mannequin. The method of gathering information will entail cleansing and sorting the information after which utilizing this information to coach fashions. Whereas the information assortment will occur out within the community in a distributed method, the information processing will usually be performed centralized. After the mannequin is skilled, the deployment of the mannequin within the community could possibly be both distributed or centralized, relying on the use case. Given the massive quantity of community information and given its real-time nature, inferencing of telco workloads will usually be extra distributed in comparison with enterprise workloads. 

RCR: There was for some years a giant push towards “information lakes” and storing as a lot information as attainable to sift by way of for enterprise intelligence. Is that this the case for community information as effectively, or is there extra desire for real-time intelligence? What does “actual time” truly imply proper now, how shut can it get? 

The desire for actual time intelligence will depend upon the use case. Community information is generated throughout the community in several time frames, and we will classify use instances based mostly on the community information into fast-loop use instances (microsecond timeframe) and slow-loop use instances (timeframe of days and even weeks) and all of the in-between. The character of the use instances throughout totally different timeframes will differ considerably.  An actual time or fast-loop use case is, for instance, radio scheduling made in microseconds executed domestically inside a community node and usually totally automated i.e., performed with no human within the loop. Sluggish-loop use instances will probably be targeted extra on long run community traits like community benchmarking, requiring community extensive coordination with extra time out there to decide and can doubtless entail interplay with a human. Information lakes are then fitted to the 2 higher loops within the image under, whereas the time sensitivity of each the information and the selections made within the two decrease loops communicate towards persistence of the decision-bearing information in any kind of knowledge lake.

RCR: What information wants, challenges or modifications ought to telecom operators be planning for now that you simply see coming within the subsequent 3-5 years?  

I see three issues:

  • High quality information: CSPs are challenged with methods to outline and develop a high quality information strategy from which all AI options may be delivered. The difficulty is that information continues to be contained in silos throughout most CSPs, from legacy methods to new methods. AI/ML will solely make a distinction if clear information is obtainable from all sources. Therefore, investing the time in after which coaching of AI algorithms with the appropriate information will probably be important to decreasing false alarms and in bettering AI effectiveness. An adjoining drawback is the problem of related information – a few of the information generated has little or no to no entropy (i.e., its usefulness is restricted) and figuring out such information is an ongoing problem. 
  • Information platform: All CSPs require a sturdy platform to combination, sanitize, and analyze the information. Whereas there are a number of potential options available in the market, there are considerations of privateness, safety, and vendor lock-in that make information platform choice tough.
  • Information technique: Many CSPs lack an end-to-end information technique which covers information governance, simplification and automatic assortment, and information evaluation. Whereas some CSPs have a Chief Information Officer (CDO), many CSPs haven’t but been capable of implement a companywide information technique throughout numerous organizations resulting in disconnected islands of knowledge.   



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