Hermes Logistics Technologies teams up with the IT University of Copenhagen and dnata

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The ITU team, headed by Professor Philippe Bonnet and working with HLT, will create, test, and develop the predictive models over the coming months to explore the design of cloud-native enterprise machine learning solutions.


Hermes Logistics Technologies (HTL) has announced they are working with researchers at the IT University of Copenhagen (ITU), Denmark, and dnata Australia to explore new machine learning models aimed at delivering predictive business analytics.

The Artificial Intelligence (AI) algorithms will run data from dnata Australia’s new Hermes Digital Ecosystem, which has a full data lake infrastructure that captures and stores all of dnata’s Hermes New Generation Business Intelligence events. The machine learning models will enable dnata to make predictive business process decisions providing key insights on efficiencies, costs, and new services.

“Machine learning is part of HLT’s digital agenda and our data lakes are a fantastic source of events and data, which are always up to date and ready to inform and train AI models in the Hermes Cloud,” Alex Labonne, chief technology officer at HLT commented.

“Successfully trained models will form new predictive functionalities for dnata and help them refine an already competitive cargo handling offering.”

The ITU team, headed by Professor Philippe Bonnet and working with HLT, will create, test, and develop the predictive models over the coming months to explore the design of cloud-native enterprise machine learning solutions.

“This is the future of enterprise machine learning envisaged by cloud providers, where any enterprise can incorporate data-driven predictions into their business processes,” said Professor Bonnet. “Collaborating with HLT and dnata is a unique opportunity for us to explore the capabilities and limitations of cloud-based enterprise machine learning.”

dnata recently went live with HLT’s H5 Cargo Management System (CMS) at six airports across Australia in Melbourne, Sydney, Adelaide, Darwin, Perth, and Brisbane.

“dnata is looking forward to using predictive modelling to enhance our cargo planning and operational processes. This data science not only benefits our interaction with customer airlines, it enables us to anticipate the demand patterns in advance for more efficient operations,” added Terence Yong, cargo development director, Asia Pacific of dnata.