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2024 Catalyst Projects

See Innovation Come To Life

At the heart of innovation at DTW24 - Ignite, our 50+ Catalyst projects will debut their groundbreaking innovations live in the Quad and on the Innovation Arena stage.

Harnessing the collaborative global force of over 1000 industry minds from 250 organizations, our Catalyst project teams are pioneering solutions to propel industry innovation and growth through Open APIs, ODA, AI, and automation.

Experience first-hand their inventive and trailblazing demonstrations. Delve into the challenges tackled, use cases explored, and solutions forged. Connect with these visionaries to discover how you can leverage their achievements to align with your business objectives and advance future outcomes.

Catalyst Champions Include:

Browse Catalyst Projects

Data-to-NPS: Boosting NPS using Decision Intelligence

Data-to-NPS: Boosting NPS using Decision Intelligence

To remain competitive and ensure revenue growth, CSPs clearly need to keep their customers happy. Traditional satisfaction management solutions however are based on ad-hoc surveys, usually with small sample sizes, making it difficult to find and address the root causes of any issues. To help them make the right decisions to increase end-user satisfaction, CSPs can now use a concept known as NPS (net promoter score) management. Through NPS management, potential problems and dissatisfaction among end users can be discovered and resolved in a timely manner, thereby improving customers’ experience of the network and potentially increasing their loyalty to the CSP. This Catalyst will develop an intelligent decision-making solution, underpinned by a digital twin and generative AI technologies, to effectively increase the number of satisfaction samples available for analysis. In this way, the solution will improve the efficiency of root cause analysis, help CSPs improve user satisfaction, reduce churn rates and gain competitive advantage. The solution will employ a real-time digital twin of the network, equipped with a high-performance data processing engine, which can check and correct data and user experience automatically, while maintaining stable and continuous data production. The Catalyst will also apply a large language model to improve CSPs’ assurance activities, and maintain the accuracy of real-time data and the stability of their data assets. The project team will apply TM Forum DT4DI best practices and standards to ensure the solution can scale and help CSPs implement it efficiently. A successful outcome will see CSPs improve satisfaction survey results; reduce network complaints, churn and costs; and increase brand value, operational efficiency and revenue.

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URN: C24.0.652
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LOKI - LLM O&M Knowledge Integrator

LOKI - LLM O&M Knowledge Integrator

CSPs have traditionally relied heavily on the knowledge and expertise of engineers to solve network issues – as a result, multiple rounds of human interactions may be required to tackle a problem. This manual approach can however no longer cope with CSPs’ increasingly complex operations and maintenance (O&M) requirements. This Catalyst aims to harness data patterns and best practice to build large language models (LLMs) that will enable humans and computers to collaborate effectively on network O&M and IT service lifestyle (ITIL) processes. The project team will focus on developing LLMs to address several specific use cases, such as summarizing work order information, predicting network faults with the support of digital twins, and recommending next best actions for O&M tasks. Other priority applications will be identifying the root causes of network faults and issues and generating operational reports based on intent. In each case, the objective is to enable engineers to simply ‘ask’ an AI agent, underpinned by an LLM, to complete necessary tasks. The overarching goal of the Catalyst is to help CSPs greatly reduce manual repetitive tasks, thereby improving the employee experience and achieving efficiencies in fault handling and incident diagnosis. As they become less reliant on expert/high-skill support functions, CSPs should make significant time and cost savings. The project team will track the number of complex fault scenarios that can be quickly demarcated and located. Ultimately, the progress of the Catalyst will be assessed by tracking the amount of effective knowledge deposited in the models, which will be evident in various LLM parameters. Crucially, the success of the project depends on the solution’s ability to understand human intent and the accuracy of the answers it provides.

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URN: C24.0.628
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Mighty Minions: Unleashing domain-specific GenAI via SLMs

Mighty Minions: Unleashing domain-specific GenAI via SLMs

Large language models (LLMs) are enabling development of highly capable generative AI applications. But these generic models can be expensive and energy-intensive to run, prompting growing interest in bespoke smaller language models (SLMs) that promise greater cost-efficiency, deployment flexibility and enhanced privacy control. While fine-tuning LLMs on smaller datasets for specific use cases is a prolonged and resource-intensive process, fine-tuning pre-trained SLMs with domain-specific data can be accomplished swiftly. For example, an insurance company could fine-tune a pre-trained SLM with its policy documents in just two to three hours. Using an SLM allows for the implementation of a generative AI model on devices with relatively low processing and memory requirements, reducing overall cost of ownership by around 30%. As they can draw on customer, network, operations and billing data, CSPs could build SLMs both for internal use and for enterprise customers, opening up new revenue streams. This Catalyst plans to introduce an architectural framework wherein all CSP data is securely centralized on a single platform, facilitating the creation of clean and pre-processed datasets. This end-to-end framework would empower CSPs to extend this service to other enterprises, which could use their proprietary data to efficiently and effectively create their own generative AI models. CSPs could expose pre-trained SLMs arising from the framework as APIs so that enterprises can access and use them seamlessly, without needing a team of technical experts. Until now, implementing generative AI has required specialized skills in machine learning, data science and AI development. Enterprises may struggle with a shortage of talent or expertise in these areas, making it challenging to develop and deploy AI solutions, while also addressing ethical concerns and regulatory requirements. Once complete, this Catalyst project will help CSPs and businesses overcome these challenges by enabling them to harness pre-trained, domain-specific models that perform better than generic LLMs, while offering lower latency and reduced power consumption.

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URN: M24.0.620
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Wholesale fibre broadband standardization

Wholesale fibre broadband standardization

Adoption of standardized, context-specific processes, APIs and data models can make it easier to achieve interoperability between CSPs. These tools can lower the cost of integration for multiple wholesalers and reduce the complexity for new market entrants by having a readily available service they can adopt. This Catalyst will take advantage of the changes in the latest version of TM Forum’s APIs to create common context-specific processes, data models and APIs for use on different payloads. The first phase of the Catalyst will focus on product and service ordering, addressing, appointing and trouble ticket capabilities, to support interoperability between fiber wholesalers and service providers. While employing TM Forum standards, the project team intends to develop tools that are flexible enough to allow for innovation and differentiation. The goal is to achieve around 80-90% commonality so that companies can have a common set of integration and orchestration services for multiple partners, but still have scope for vendor customization. The Catalyst will develop a set of templates and a sample implementation on the ODA Canvas (an execution environment for open digital architecture components) CSPs can use as a starting point for their own implementations. As well as helping existing players, these technology-agnostic tools will reduce the time and cost to market for new entrants by providing a ready made reference implementation, so they don’t need to start from scratch.

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URN: C24.0.619
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AI chat agent: The game-changer for telecoms

AI chat agent: The game-changer for telecoms

AI chatbots are becoming increasingly central to enterprise customer service efforts. When combined with large language models (LLMs), AI chatbots can be trained on datasets from diverse service areas, enabling them to provide swift, precise, and personalized assistance. This not only enhances the customer experience but also offers to drive significant revenue growth. The telecom sector, in particular, is ripe for adoption of such technology, using it to effectively discern customer intent and tailor services accordingly. This Catalyst seeks to create an AI-based customer service system which can provide the best possible user experiences across common user scenarios. The aim of the project is to engineer advanced conversational AI chatbots that can understand and use comprehensive telco-specific data to execute defined and targeted tasks, and engage interactively on demand with end users. The core architecture will integrate enhanced LLMs that have been fine-tuned with specialized telco datasets. The system will incorporate a hybrid framework to coordinate a rule-based system, natural language understanding (NLU) modules, and LLM technologies to ensure high performance and adaptability in complex business scenarios. The Catalyst seeks to show how LLM-based chatbots can determine consumer intentions and proactively resolve current issues, such as recommending personalized data plans, explaining products or initiating direct subscriptions. The outcome will be to improve telco customer satisfaction and reduce long-term overheads.

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URN: M24.0.713
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Beyond chatbots – Revolutionizing telecom with advanced generative AI

Beyond chatbots – Revolutionizing telecom with advanced generative AI

Understanding and predicting customer needs is a longstanding challenge in the telecoms sector. Generative artificial intelligence (GenAI) and other AI technologies could help CSPs tackle this challenge head-on by providing valuable insights and enhancing their ability to anticipate and meet customers’ expectations effectively. In this way, the deployment of GenAI could lead to increased customer satisfaction, greater loyalty and more valuable relationships. This Catalyst aims to establish best practices for leveraging generative AI and other AI technologies in the telecoms sector. It plans to showcase their application in various use cases, such as predicting customer needs, elevating service quality and strengthening relationships. The Catalyst will meticulously analyze interactions during customer care calls and chats. The primary focus will be on precisely labelling the reason for the call and the key discussion topics. This process will help to develop “intent score” models that will be able to anticipate customer needs. Once intent can be accurately predicted, CSPs can route the customer to a GenAI-enabled virtual agent. The ultimate goal is to establish an 'Intent and GenAI Factory' that will deliver a continuous cycle of identification, thorough vetting, and dynamic development of additional intent and conversation models. By shaping best practices throughout this process, the Catalyst intends to create a blueprint that will both draw on and contribute to existing TM Forum assets, such as open APIs and ODA (Open Digital Architecture) best practices. This blueprint could be adapted by other players in the industry, fostering a collaborative environment for transformative innovation. To measure the impact of the proposed solution, the Catalyst will consider both operational efficiency metrics, such as reductions in call handling times, and business impact metrics, such as customer retention rates, new customer acquisitions and revenue growth.

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URN: C24.0.678
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WebAssembly canvas - Phase II

WebAssembly canvas - Phase II

As CSPs increasingly employ flexible and scalable cloud-native technologies, they are seeking to harness TM Forum’s open digital architecture (ODA) canvases: execution environments for ODA components and the release automation part of a pipeline in CI/CD (continuous integration and continuous deployment). Now in its second phase, this Catalyst explores how to integrate an ODA canvas based on the WebAssembly (Wasm) open standard with common services, such as identity and observability. Designed to support lightweight, instantaneous processes, W3C's Wasm serves as a stack-based virtual machine for clients and servers, acting as a portable compilation target for high-level languages. The CNCF's wasmCloud open-source project also offers a distributed application runtime that represents an evolutionary step beyond Kubernetes. Phase I of this Catalyst demonstrated the ability to run WebAssembly native components in a WasmCloud-based canvas. Phase II will begin to build the equivalent platform to the ODA Canvas Reference Implementation, written using wasmCloud providers to perform functions of the equivalent software in the Kubernetes-based original. The project team will also demonstrate how components are deployed and how they can be used in conjunction with the current ODA Canvas Reference Implementation. A successful outcome will enable deployment of components to a canvas that demonstrates some level of equivalent functionality to the Reference Implementation, while delivering interoperability between canvases based on different technologies. The project is also designed to highlight how the ODA can adapt to evolving technology, while remaining true to its purpose and allowing CSPs to achieve migration without the need for significant extra integration effort.

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URN: C24.0.621
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Displaying 1-12 of 56 results