catalysts logo

Gain access to resources and project updates

Register or log in to save your details for future use
First name
Last name
Business email
Company name
Job title

TM Forum will be processing the above information, with the assistance of our service providers located within and outside the European Union, to manage your registration to this event or report download, as well as to keep you informed about our services and products, future events and special offers, the organization of events, providing training and certification, and facilitating collaboration programs. Privacy policy

I wish to receive further information from the Catalyst Team about their products and service by electronic means. Check the "Team Members" section of this Catalyst Project to review the companies that will receive your information. Companies may join the project in the future, so please check back periodically for any updates

logologo
All projects

Messy data in, treasure out: boosting Autonomous Networks

URN C25.0.830
Topics AI (Artificial Intelligence), Autonomous networks, Data management

In this Catalyst, we will process and collect a wide variety of data formats using AI, and attempt to visualize and manage network configurations

featured image
To build an autonomous network that will increase customer satisfaction and reduce costs, CSPs need to be able to accurately manage the network status. One important requirement is network configuration information. However, many CSPs track network configurations using multiple methods, and the data is siloed and not standardized. These issues, which also impact IT systems, are particularly prevalent in legacy networks. To solve this problem, this Catalyst is using AI to collect a wide variety of configuration information and process it into data formats which will enable CSPs to visualize and manage network configurations. The standardized data is also provided to the network inventory management function, which can then optimize network configurations. The ultimate goals are to enable the network to heal itself, in the event of a fault, and allow CSPs to make intent-based changes to the network configuration management. By employing AI to process and format data, CSPs don’t need to conduct manual data analysis, processing, and formatting – thereby paving the way for more autonomous networks. Furthermore, end-to-end network configuration management will improve customer satisfaction, reduce support costs, streamline operations and improve CSPs’ return on investment.

Team members

Articul8 AI, Inc logo
AXIAN TELECOM MIDDLE EAST TECHNICAL AND MANAGEMENT SERVICES LIMITED logo
Champion
Comarch S.A. logo
ITOCHU Techno-Solutions Corp. (CTC) logo
KDDI CORPORATION logo
Champion

Related projects