Data Scientist / ML Engineer

Data Scientist / ML Engineer.

Data Scientist / ML Engineer



€65000 - €80000 per year





NB: For this position we are only considering candidates already located within Netherlands, within travelling distance to Amsterdam.

Seeking a skilled Data Scientist with expertise in machine learning model development and a software engineering background. If you enjoy tackling exciting challenges and deploying cutting-edge solutions, being part of a diverse and motivated team and have some fun, you may just be the person I am looking for.

Main expectations for the role are:

  • 4+ years of experience in Data Science and ML Engineering
  • Cloud experience (Azure is a plus), developing and deploying models into production
  • Proficiency in Python, PySpark, Java and/or Scala
  • Monitor and optimize model performance for real-time applications
  • Expert in statistical analysis, ML algorithms and data manipulation
  • Knowledge of event driven architecture and integration strategies
  • Strong communication and collaborative personality

The benefits are also on par with your responsibilities:

  • Annual salary of up to 80k including holiday allowance
  • Yearly bonus and great pension scheme
  • Mobility allowance
  • 25 days holidays
  • Hybrid work, 2-3 days in office

Does this sound like you? Apply right now and don't miss this opportunity!

Or maybe you know someone that's looking for a change? Please send them my way!

You can also call me on 020 305 8540 or send an email at

Darwin Recruitment is acting as an Employment Agency in relation to this vacancy.

Andreea Albu

To Apply for this Job Click Here


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