VIE-Data Scientist(M/F/D)

Air Liquide
Birmingham
3 days ago
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How will you CONTRIBUTE and GROW?

As a Data Scientist at Air Liquide IT SA, you will be instrumental in extracting valuable insights from complex datasets to drive business innovation and optimize operational efficiency. You will leverage advanced analytical techniques, machine learning, and statistical modeling to solve challenging problems and contribute to Air Liquide's digital transformation journey.

Responsibilities
  • Proactively develop business knowledge to identify opportunities to apply business intelligence and data science solutions to improve business outcomes
  • Assist in the development of data science technical solutions and/or analysis to meet project requirements
  • Be responsible for the creation of dashboards and visualisations aligned to project requirements
  • Assist in development of data solutions, including extract, transform, load routines in Power BI
  • Assist in the facilitation of workshops and interviews with business areas to establish project scope and identify data science requirements
Are you a MATCH?

Working experience:
Interest in data and exploring the possibilities of analytics

Languages

English fluency is Must have
German None

Additional information

Please send your CV and motivation letter in English! Position open only for candidates eligible to the VIE program. Therefore, only the applicants meeting the requirements of the French V.I.E program will be taken into consideration. For more information: https://mon-vie-via.businessfrance.fr/en/what-is-the-vie-french-international-internship-program The V.I.E., an international young graduate program, enables young professionals who are less than 28 and European Union nationals to work for a French company in any country of the world. Becoming part of this program means going abroad to carry out a professional assignment for up to 24 months whilst benefiting from social care coverage and an interesting salary, which depends on the host country. Business France, the French agency for international business development, is in charge of all the administrative procedures of your assignment. For further information, please visit the following link: https://mon-vie-via.businessfrance.fr/en

Our Differences make our Performance At Air Liquide, we are committed to build a diverse and inclusive workplace that embraces the diversity of our employees, our customers, patients, community stakeholders and cultures across the world. We welcome and consider applications from all qualified applicants, regardless of their background. We strongly believe a diverse organization opens up opportunities for people to express their talent, both individually and collectively and it helps foster our ability to innovate by living our fundamentals, acting for our success and creating an engaging environment in a changing world.


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