Lead Data Scientist – Next Generation Optical Sensing Solutions

Altium Associates
Manchester
3 days ago
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Our client is a highly ambitious UK deep-tech venture in rapid expansion mode. The company’s innovative technology offers both a leap in performance and superior power efficiency to create future optical spectroscopy solutions across a number of industry sectors.


To be considered for this newly created role, you will be able demonstrate the following:


  • Proven expertise in spectroscopy, optical sensing, or closely related domains (e.g., NIR/SWIR, chemometrics, or hyperspectral imaging), ideally applied in commercial or applied R&D environments.
  • Strong programming capability in Python and/or MATLAB, with hands-on experience building, validating, and deploying machine learning models using libraries such as PyTorch or TensorFlow.
  • Practical experience applying statistical and machine learning techniques such as PCA, PLS, clustering, anomaly detection, and supervised classification to real datasets.
  • Evidence of building end-to-end data pipelines, including data acquisition, preprocessing, feature engineering, model development, and performance evaluation.
  • Track record of customer-facing or stakeholder-facing technical work, including translating complex technical concepts into clear, actionable insights for non-expert audiences.
  • Demonstrated ability to validate models rigorously, including handling trade-offs (e.g., false positives vs false negatives), assessing dataset sufficiency, and managing bias and generalisation risks.
  • Experience contributing to an early-stage or start-up environment showing adaptability, ownership, and the ability to operate effectively in dynamic environment.


For a confidential discussion and further information about this unique opportunity please contact, Parm Flora, Managing Partner at Altium Associates.

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