Current GenAI Telecom Use Cases Focusing on Cost Reduction and Monetization
Sagar Nangare
Strategic Marketing Leader - Telecom & Networking @ ACL Digital | B2B Marketing | Thought Leadership | Partnerships & Alliances | Passionate about new Innovations
Originally Published on: https://www.acldigital.com/blogs/genai-telecom-use-cases-focusing-cost-reduction-and-monetization
Generative AI first gained public attention with solutions like ChatGPT, allowing users to generate content by conversing with AI systems powered by large language models (LLMs). Initially, businesses adopted Generative AI as chatbot solutions to enhance customer experience and streamline internal operations. These early use cases, leveraging conventional AI technology, achieved notable success. However, telecom operators are now exploring more advanced applications of Generative AI, taking it beyond mere chat tools to transform network operations and drive monetization.
The Strategic Focus of Telecom Operators on Generative AI
Over the past two years, telecom operators have invested significantly in Generative AI, recognizing its potential to reduce operational costs, optimize network resources, and prevent breakdowns. These efforts are part of a broader strategy to transform networks and tap into new revenue streams, requiring substantial investment. Generative AI is as a technological boom that can help achieve these goals, with progress already evident.
Telecom operators' focus extends beyond using Generative AI for customer experience and internal process optimization. They are now exploring advanced use cases that promise significant cost reductions and improved network performance. In this article, we will explore how leading telecom players and research bodies, such as the TM Forum, leverage Generative AI for network optimization, troubleshooting, and automated issue resolution.
Use Cases of Generative AI in Telecom
Mavenir: Automating Network Management
Mavenir is transforming network management with its AI-powered Operations Co-Pilot, which was developed in collaboration with NVIDIA and Amazon Web Services. This tool leverages Generative AI to analyze network data and automate tasks such as core dump analysis, log anomaly detection, and root cause analysis. These capabilities significantly streamline network management processes, reducing the workload on communication service provider (CSP) staff and enhancing service levels.
A notable application of this technology is in Mavenir’s Operations Co-Pilot for RAN Service Assurance (RSA), which proactively identifies and resolves network issues before they lead to outages. By leveraging large language models trained on extensive network data, this tool marks a significant advancement in telecom automation, promising more efficient and reliable operations.
Check out the detailed video here for an in-depth look at this transformative technology.
British Telecom: Enhancing Software Development with AI
英国电信集团 ’s Digital Unit is significantly boosting software development productivity by incorporating Amazon's CodeWhisperer. This AI-powered tool is a game-changer for BT's software engineers. It provides real-time code suggestions across 15 programming languages. It accelerates coding, helps developers avoid errors, and automates repetitive tasks, freeing up time for more creative problem-solving.
Since its rollout, CodeWhisperer has generated over 100,000 lines of code and now empowers 1,200 BT engineers. The initial feedback has been overwhelmingly positive, with a 37% acceptance rate for AI-suggested code and 12% of monotonous tasks being automated. This impressive start is just the beginning, as BT plans to introduce more AI tools to modernize its development process.
Additionally, BT is leveraging generative AI (GenAI) to breathe new life into its legacy code. By analyzing and refactoring outdated COBOL and Java code into microservices aligned with the Open Digital Architecture (ODA), BT is ensuring its systems are more agile and future-proof.
T-Mobile: Streamlining Network Operations with GURU
AWS recently highlighted a case study showcasing their generative AI's impact on T-Mobile ’s 5G radio networks, significantly boosting operational productivity, network efficiency, and service continuity.
The Radio Access Network (RAN) design and operations face many challenges, with engineers creating Methods of Operations (MoPs) and operations teams executing them, often at night without immediate assistance. When unexpected outcomes occur, extensive research into 3GPP standards and vendor documentation is required, and mistakes can lead to costly outages. To address these issues, AWS developed GURU, a generative AI-based chatbot.
GURU delivers precise real-time recommendations, resulting in a 10% decrease in network outages and a 30% boost in operational efficiency. This tool streamlines the MOP creation process, reduces research time, and enhances network operations with real-time Q&A capabilities and efficient troubleshooting, enabling engineers to resolve issues quickly.
The anticipated benefits include a 30% reduction in operational time for MOP creation and a 10% decrease in system outages through proactive troubleshooting. GURU addresses the challenges RAN design engineers and operations teams face, significantly improving overall network performance and reliability.
AWS’s GURU chatbot exemplifies how advanced AI can revolutionize telecom operations, leading to more efficient and resilient 5G networks.
The above telcos show the use cases below according to our analysis..
Now, let's talk about the use cases that TM Forum is exploring.
TM Forum Catalyst Programs The TM Forum Catalyst programs have been exploring using Generative AI for network optimization and troubleshooting. Operators in China and the APAC region have implemented use cases leveraging Generative AI for decision-making and intelligence analysis in wireless network optimization and transport network troubleshooting. These initiatives highlight the potential of Generative AI to revolutionize network operations and drive significant improvements in performance and reliability.
Conclusion
Telecom operators are at the forefront of leveraging Generative AI to transform network operations. By automating tasks, analyzing network data, and providing real-time recommendations, Generative AI is helping telcos reduce operational costs, enhance network performance, and improve service delivery. However, this is just the beginning.
In the following year, we can expect to see an explosion of innovative use cases as Generative AI becomes an integral part of telecom operations. The pace of adoption is accelerating, and those who fail to harness the power of this technology risk being left behind. The telecom industry stands on the brink of a revolution driven by the relentless advancements in AI. Buckle up because the next wave of Generative AI applications will not just optimize networks but redefine the very fabric of how telecom operators function and compete.
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