Data Scientist
Amsterdam
Netherlands
£70,000/year
Permanent
Other
Data Scientist – Energy- Amsterdam, Netherlands
Darwin is partnered with a well-established and rapidly expanding Energy+DefenseTech organisation building state-of-the-art sensor systems used across the defense and energy sectors – delivering ultra-high-precision measurement capabilities in some of the harshest environments on the planet.
We are looking for a skilled and curious Data Scientist with a strong physics background and hands-on machine learning experience to join our Energy division. In this role, you’ll work alongside a Senior Data Scientist on cutting-edge partial discharge monitoring and predictive analytics projects that directly impact the safety and performance of global energy infrastructure.
Why Join?
- High-growth international technology business with a unique market position
- Contribute to advanced sensing solutions supporting mission-critical applications
- Attractive salary package and comprehensive benefits
What You Bring
- Strong proficiency in Python and core data science libraries (NumPy, SciPy, pandas, scikit-learn).
- Solid background in algorithm development, statistical analysis, and data modelling.
- Strong understanding of signal processing (e.g., filtering, denoising, Fourier/wavelet transforms, PCA).
- Experience with deep learning frameworks (PyTorch, TensorFlow, or JAX).
- Experience with cloud or big data platforms (AWS, Azure, GCP).
Excellent salary: €60-71k (inclusive of 8%) + plus benefits.
Darwin Recruitment is acting as an Employment Agency in relation to this vacancy.

Veronica Gains
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