Press "Enter" to skip to content

Telent | Machine Learning know-how helps validate job completion as Telent continues in its mission for improved productiveness

Warwick, U.Okay., 13th September 2021 – Telent has efficiently enhanced its modern SOLO software, with Machine Learning (ML) know-how, enabling it to construct ultra-fast broadband infrastructure initiatives at scale and with predictable high quality by offering digital data and picture proof of accomplished work packages. The SOLO know-how makes use of photos captured by way of sensible telephones to validate job completion. The work is inspected and verified by way of the photographs with the assist of ML know-how, that are then saved for future reference.

This software program will guarantee Telent can enhance visibility of constructing websites, infrastructure, and planning processes for works to be accomplished to the best high quality potential. Furthermore, SOLO can show predictive working indicators for added visibility and real-time administration. The knowledge stream is able to scanning a picture throughout a number of workstreams inside a couple of seconds, rising effectivity, throughput and time-effectiveness.

Ric Welsby, Managing Director, Telent Infrastructure Services stated: “This is a very exciting time for Infrastructure Services, and this demonstrates how we are adapting technology to enable us to build fibre networks at scale with consistent, predictable high quality. As we continue to trial innovative new products and utilise such impressive resources, we expect to see an increase in our quality service and productivity across our business in the forthcoming months.”

Telent has branched out via ML, to create a software program resolution that goals to enhance the SOLO service expertise via an economical type of Artificial Intelligence (AI). Following a profitable proof of idea utilizing ML, the brand new performance is now in full manufacturing use and contains enhancements that allow predictive upkeep, complicated picture scanning and constant updates primarily based on programming automation for future reference.

The ML and AI kind options utilised by Telent propel the SOLO software to new heights past easy database, types and reporting. This presents substantial potential for additional software use going ahead, permitting Telent to repeatedly enhance real-time high quality, visibility and productiveness of service, in addition to security of its employees.

Senior Business Systems Analyst Hari Yenumula, answerable for SOLO’s picture validation technical necessities reported a predictive accuracy of greater than 95%, when the system is run 24/7. SOLO went stay earlier this yr and has since mechanically scanned hundreds of thousands of photos with out human intervention. Due to those spectacular outcomes, the SOLO software has now been totally deployed at Telent and is ready to deal with greater volumes sooner or later.

Learn extra about Telent’s new applied sciences and newest work right here


About Telent
Telent is a number one know-how firm and specialist within the design, construct, operation, and upkeep of the UK’s important digital infrastructure, drawing on many years of expertise in mission important communications and know-how. We allow organisations to create, enhance and function the ICT and communication networks that their companies and operations rely on.

Telent are on the coronary heart of lots of the UK’s and Ireland’s best-known organisations, with a powerful give attention to key areas together with transport, emergency providers, community suppliers and the general public sector. Our experience, accreditations and information make us a trusted accomplice for organisations on the forefront of the digital revolution.

Clients embody Transport for London, Highways England, Maritime and Coastguard Agency, Virgin Media, Network Rail, Openreach, Merseyside Fire and Rescue and Hinkley Point C.

Be First to Comment

    Leave a Reply

    Your email address will not be published. Required fields are marked *

    %d bloggers like this: