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SoftBank Corp. Develops a Foundational Large Telecom Model (LTM)

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SoftBank Corp. Develops a Foundational Large Telecom Model (LTM)
News

News

SoftBank Corp. Develops a Foundational Large Telecom Model (LTM)

2025-03-19 18:07 Last Updated At:18:41

TOKYO--(BUSINESS WIRE)--Mar 19, 2025--

SoftBank Corp. (TOKYO:9434, “SoftBank”) announced that it has developed a new Large Telecom Model (LTM), a generative AI foundation for the telecom industry. The LTM is trained on diverse datasets—ranging from SoftBank’s huge network data to the design, management, and operational know-how the company has accumulated over many years. The LTM enables advanced inference in the design, management, and operation of cellular networks. Moving forward, SoftBank will further advance its research and development efforts, aiming to implement the LTM into its own operations.

This press release features multimedia. View the full release here: https://www.businesswire.com/news/home/20250319899009/en/

SoftBank has also developed specialized AI models by fine-tuning the LTM, which is specifically designed to optimize base station configurations that enable advanced cellular network operations. The fine-tuned models were tasked with predicting configurations for actual base stations that had been excluded from the training phase, and their predictions were later verified by in-house experts to have over 90% accuracy. Compared to manual or partially automated workflows, the LTM-led approach reduces the time to make these changes from days to minutes, and with similar accuracy, indicating the potential for huge operational time and cost savings, in addition to reducing human error.

These results demonstrate that by fine-tuning the LTM for specific use cases, it will become easier to develop dedicated AI models tailored to various operational scenarios in cellular networks. The LTM also functions as a foundation for the “AI for RAN” initiative, which aims to enhance RAN (Radio Access Network) performance through AI. In the future, the LTM is expected to serve as a blueprint for network design and support the development of network optimization AI agents.

The LTM model was further optimized using NVIDIA NIM, which allows for significant performance gains for the two specialized use cases, including about a fivefold improvement in both Time to First Token (TTFT) and Tokens Per Second (TPS). Furthermore, using NVIDIA NIM provides SoftBank deployment flexibility (On-Prem and Cloud).

This technology is an implementation of the “Human AI” concept *1 envisioned by SoftBank's Research Institute of Advanced Technology (RIAT). SoftBank RIAT has proposed two approaches for utilizing AI in mobile networks, "Human AI" and "Machine AI," and has now successfully realized its vision of "Human AI". SoftBank aims to integrate various AI models developed based on the LTM with the orchestrator *2 of "AITRAS" *3, an AI-RAN integrated solution currently under development by SoftBank.

Main features of LTM

The LTM combines advanced inference capabilities leveraging large-scale data to solve network operational issues with flexible responsiveness enabled by natural language processing. Its main features are as follows:

1. Knowledge and insights as SoftBank’s mobile network specialist
LTM provides knowledge and insights cultivated by SoftBank’s mobile network experts. It reflects SoftBank’s extensive network and data, along with in-depth network information annotated by in-house experts skilled in network design, management, and operation.

2. Realizing use cases specific AI models through fine-tuning
By fine-tuning models based on the LTM, it is possible to develop AI models specialized for various use cases in mobile network operations. As the first implementation, SoftBank developed models specialized in generating optimal base station configurations, as described below. Its effectiveness has been verified in scenarios including generating optimal configurations for newly deployed base stations and modifying existing base station settings to accommodate sudden traffic increases expected during events.

- New base station deployment:
Focusing on Tokyo, a high-density urban area, the model generates optimal configurations for new base station deployments. The model receives requests to deploy a new base station in a specific area, along with additional information such as existing base station configurations and network performance, and outputs a list of configurations recommended for the new base station.

- Existing base station reconfiguration:
Assuming a special event is taking place, the model generates configuration changes for existing base stations in the surrounding area. The model receives requests to optimize configurations for a specific base station, along with additional information such as existing base station configurations and network performance, and outputs recommended configuration changes for the target base station.

3. Collaboration with NVIDIA
In developing its LTM, SoftBank used the NVIDIA DGX SuperPOD for distributed training. As SoftBank moves forward towards the deployment of the LTM, SoftBank will continue collaborating with NVIDIA on NIM Microservices Optimization for Inferencing and Aerial Omniverse Digital Twin (AODT) for simulating and validating the LTM configuration changes prior to taking actions.

SoftBank will explore utilizing the LTM in its own operations, aiming to enhance mobile network efficiency, create new services, and deliver higher-quality network experiences. SoftBank will also continue to advance its research and development efforts and strengthen collaborations with partners both in Japan and abroad, thereby contributing to the further evolution of next-generation networks. In particular, the SoftBank RIAT Silicon Valley Office, which led the development of LTM in collaboration with the Japan team, will continue to grow and develop its portfolio in the USA.

Ryuji Wakikawa, Vice President, Head of the Research Institute of Advanced Technology at SoftBank said: “SoftBank's AI platform model, the 'Large Telecom Model' (LTM), developed for telecommunications operators, significantly transforms the processes of designing, constructing, and operating communication networks. By fine-tuning LTM, it’s possible to build AI models specialized for various processes and deploy them as agents. This not only optimizes and automates operational tasks but also enhances network performance through the tuning of wireless devices. SoftBank will continue to leverage cutting-edge AI technologies, aiming to deliver unprecedented levels of high-quality communication services to customers.”

Chris Penrose, Vice President of Telecoms at NVIDIA, said: “Large Telecom Models are the foundation for simplifying and speeding up network operations by enabling the creation of network AI agents for specialized tasks such as network planning, network configuration and network optimization. SoftBank’s rapid innovation in developing its new LTM, leveraging NVIDIA AI technologies, sets a powerful example for telecom operators globally to redefine their network operations processes with AI.”

About SoftBank Corp.

Guided by the SoftBank Group’s corporate philosophy, “Information Revolution – Happiness for everyone,” SoftBank Corp. (TOKYO: 9434) operates telecommunications and IT businesses in Japan and globally. Building on its strong business foundation, SoftBank Corp. is expanding into non-telecom fields in line with its “Beyond Carrier” growth strategy while further growing its telecom business by harnessing the power of 5G/6G, IoT, Digital Twin and Non-Terrestrial Network (NTN) solutions, including High Altitude Platform Station (HAPS)-based stratospheric telecommunications. While constructing AI data centers and developing homegrown LLMs specialized for the Japanese language with 1 trillion parameters, SoftBank is integrating AI with radio access networks (AI-RAN) with the aim of becoming a provider of next-generation social infrastructure. To learn more, please visit https://www.softbank.jp/en/

*1 For more details, please refer to the white paper announced in February 2025: " Telco Al : Landscape, Challenges, and Path Forward "
*2 For more details, please refer to the press release dated November 13, 2024: " SoftBank Corp. Develops Orchestrator to Operate AI and vRAN on the Same Virtualized Infrastructure "
*3 For details on "AITRAS", please refer to the press release dated November 13, 2024: " SoftBank Corp. Announces Development of “AITRAS,” a Converged AI-RAN Solution "

Image of LTM utilization

Image of LTM utilization

The first stage of Mohamed Salah’s rehabilitation at Liverpool is complete after the Egypt forward returned to the team for its 2-0 win over Brighton in the Premier League on Saturday.

The question now as Salah heads off to the Africa Cup of Nations: Is there a future for him at Anfield when he comes back?

Salah, who let rip last weekend about his current frustrations at Liverpool, entered as a 26th-minute substitute to a big ovation and set up the second of Hugo Ekitike’s goals as the defending champion extended its unbeaten run to five games in all competitions.

Also Saturday, Chelsea beat Everton 2-0 and was set on its way to victory by Cole Palmer’s first goal in three months. First-place Arsenal hosts last-place Wolverhampton later.

Salah held talks with Liverpool manager Arne Slot on Friday in an effort to overcome their issues and the result was that Salah was recalled to the matchday squad for the Brighton game. He had been a substitute for the last three Premier League matches before being left at home for the midweek Champions League trip to Inter Milan as a punishment for his explosive comments to reporters last weekend.

“It was an easy decision to put him in the squad," Slot said. “I have said many times before what has been said between us will stay between us.”

Liverpool's fans demonstrated they are willing to excuse Salah for his show of anger and gave him a rapturous welcome when he came on as a substitute for the injured Joe Gomez midway through the first half.

By then, Liverpool was leading 1-0 thanks to Ekitike's rising shot inside the first minute and Salah showed glimpses of his class, especially on the counterattack. It was Salah's corner kick that was headed in by Ekitike for the second goal in the 60th, sparking another round of chants for the Egyptian.

Slot said Salah was a threat all game.

“Pleasing to see but not a surprise,” Slot said.

Salah could be away for more than a month if Egypt goes all the way in the Africa Cup.

It was a second straight start for Palmer, whose season has been blighted by a groin injury that has restricted him to seven games in all competitions.

There looked to be nothing wrong with Palmer when he ran onto Malo Gusto's pass and slipped a finish inside the near post to give Chelsea the lead in the 21st minute at Stamford Bridge.

However, Palmer said after the game that he wasn't at his best yet because he was “still dealing with an injury.”

“It’s just a matter of not doing too much too soon,” Palmer told the BBC. “Literally, it’s just a day-by-day thing. Hopefully it gets better.”

Gusto added the second goal in the 45th minute for Chelsea, which jumped to fourth place.

Steve Douglas is at https://twitter.com/sdouglas80

AP soccer: https://apnews.com/hub/soccer

Chelsea's Cole Palmer celebrates after scoring his sides first goal during the English Premier League soccer match between Chelsea and Everton in London, Saturday, Dec. 13, 2025. (Adam Davy/PA via AP)

Chelsea's Cole Palmer celebrates after scoring his sides first goal during the English Premier League soccer match between Chelsea and Everton in London, Saturday, Dec. 13, 2025. (Adam Davy/PA via AP)

Liverpool's Hugo Ekitike celebrates after scoring his side's second goal during the English Premier League soccer match between Liverpool and Brighton and Hove Albion in Liverpool, England, Saturday, Dec. 13, 2025. (AP Photo/Jon Super)

Liverpool's Hugo Ekitike celebrates after scoring his side's second goal during the English Premier League soccer match between Liverpool and Brighton and Hove Albion in Liverpool, England, Saturday, Dec. 13, 2025. (AP Photo/Jon Super)

Liverpool fans hold placard depicting Liverpool's Mohamed Salah before the English Premier League soccer match between Liverpool and Brighton and Hove Albion in Liverpool, England, Saturday, Dec. 13, 2025. (AP Photo/Jon Super)

Liverpool fans hold placard depicting Liverpool's Mohamed Salah before the English Premier League soccer match between Liverpool and Brighton and Hove Albion in Liverpool, England, Saturday, Dec. 13, 2025. (AP Photo/Jon Super)

Liverpool's Mohamed Salah, left, challenges for the ball with Brighton's Lewis Dunk during the English Premier League soccer match between Liverpool and Brighton and Hove Albion in Liverpool, England, Saturday, Dec. 13, 2025. (AP Photo/Jon Super)

Liverpool's Mohamed Salah, left, challenges for the ball with Brighton's Lewis Dunk during the English Premier League soccer match between Liverpool and Brighton and Hove Albion in Liverpool, England, Saturday, Dec. 13, 2025. (AP Photo/Jon Super)

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