Data Scientist role at Airbus developing AI/Data Science solutions for aircraft systems. Focused on value creation and collaboration with engineering teams for embedded computer vision applications.
Responsibilities
Design creative solutions from analytics to advanced AI for aircraft products and ways of working, with a focus on embedded systems for computer vision (Cockpit)
Develop innovative data-driven services in collaboration with engineers, focusing on value creation and specific business needs
Ensure communication and alignment with internal and external stakeholders, including Programs, R&T, Engineering, and IT
Contribute to the vision and strategy for AI-based solutions and improvements for Aircraft Systems, Services, and Ways of Working
Coach and foster stakeholders and students around AI applications, data-driven mindset, and agile ways of working
Requirements
Master degree in Data Science, Artificial Intelligence or equivalent
Minimum of 2 to 5 years experience in development of solutions based on Advanced Statistics, Machine Learning & Deep Learning methods, preferably around computer vision
Expertise in Machine Learning algorithms & tools linked to supervised, unsupervised, and reinforcement learning
Knowledge and experience in computer vision applications is a big plus
Proficiency in development environments & programming languages like Python, PySpark, Linux Shell Scripting, and NoSQL databases
Experience in industrialization and implementation of solutions in a production environment is a plus
Recognized team player with excellent communication skills; customer-centric, promoting continuous learning, and willing to influence the global ecosystem
Negotiation level in English; knowledge of French or German would be a plus
Benefits
Attractive salary
Agreements on success and profit sharing schemes
Employee savings plan abounded by Airbus
Employee stock purchase plan on a voluntary basis
Extra days-off for special occasions
Holiday transfer option
A Staff council offering many social, cultural and sport activities and other services
Complementary health insurance coverage (disability, invalidity, death)
Depending on the site: health services center, concierge services, gym, carpooling application
Great upskilling opportunities and development prospects with unlimited access to +10.000 e-learning courses to develop your employability
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