MLNetworks CEO, Jawad Maaloum, discusses how modern data structures are the key enablers for AI-driven telecom transformation.
Modern data structures: enabling high-impact AI-driven telecom operations
Telecom operators today must navigate increasing data complexity driven by AI, 5G, and IoT. Traditional, siloed data architectures fail to meet the real-time processing and scalability requirements for modern networks. To remain competitive, operators need innovative data management approaches that enable automation, accuracy, and measurable operational impact.
Data mesh and data fabric are emerging as foundational concepts for building AI-driven telecom operations. These architectures shift the focus from centralized systems to domain-oriented, AI-ready data pipelines, offering efficiency and scalability.
The principles of Data Mesh—a concept pioneered by Zhamak Dehghani—have revolutionized how enterprises view and utilize data. Telecom operators can benefit from:
Similarly, data fabric integrates data across legacy systems, clouds, and edge networks, providing a unified and virtualized framework to enable AI, digital twins, and predictive modeling.
By transitioning to modern data structures, operators can achieve tangible, measurable results:
These results align with ongoing work within the TM Forum Modern Data Architecture group, which emphasizes:
Modern data architectures complement key TM Forum frameworks:
These frameworks provide telecom operators with a structured path to achieving AI-native operations that are scalable, transparent, and future-proof.
Modern data structures—data mesh and data fabric—are the key enablers for AI-driven telecom transformation. By treating data as a product, embracing decentralization, and ensuring interoperability, telecom operators can unlock:
To achieve measurable financial and operational impact, the telecom industry must align with modern architectural principles and embrace next-generation frameworks for data management.