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Data Scientist / Software Develpoer

Farringdon Without
1 year ago
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Data Scientist / Software Developer

Location: Hybrid (Various Locations)

Company: Global Engineering Services Provider

Join a leading engineering services company and help solve complex problems using data science, AI, and software development. As part of a dynamic team, you'll work on projects ranging from optimizing drug trials to satellite control systems.

Responsibilities:

Analyze data and build AI models to address real-world challenges.
Develop custom software solutions using Python and machine learning techniques.
Mentor junior team members and collaborate with clients.
What We're Looking For:

Strong academic background in science, mathematics, or engineering (PhD preferred).
Proven experience in data science, software development, and machine learning.
Proficiency in Python and modern development tools.
Excellent communication and problem-solving skills.
Why Join Us:

Continuous learning and career growth opportunities.
Flexible, hybrid working environment.
Inclusive culture focused on equity and diversity.
Ready to make an impact? Apply now

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