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All Case studies

aircraft on airfield
Industry 4.0Business TransformationData Science & CybersecurityEngineering and Design

Keeping an eye on everything: How we created a dynamic maintenance database for an aerospace business

falcon plane
Industry 4.0

Deliver “Make in India” jigs & tools for Dassault Aviation manufacturing facility in India

Artificial Intelligence & RoboticsData Science & CybersecurityDigital TransformationEngineering and Design

Developing next-generation surface radar for military aerospace surveillance

Expleo works with long-term partner, Thales, across all aspects of its radar systems projects - from concept and design through to prototyping and mechanical engineering - to develop and deliver complex aerospace surveillance systems that are in use throughout the world.
Artificial Intelligence & RoboticsData Science & CybersecurityDigital TransformationEngineering and Design

Accelerate embedded software development with an MBD approach

A leading European land defence company turned to Expleo to help develop and implement a Model-based design (MBD) approach, by using MatLab-Simulink, that would accelerate embedded software development across its range of products.
aircraft maintenance feature
Innovation and R&DData Science & Cybersecurity

Analysis of system data (motors, electrical, etc.) for predictive maintenance 

Data Science & CybersecurityIndustry 4.0

Strengthen OTD with a predictive tool for the production line 

Combining its expertise in manufacturing engineering and data science, the Expleo team established a machine learning model capable of explaining the delays in previous operational flows and thus better predicting OTD.