Optics11
AI

Senior AI/ML Engineer

Optics11 · Amsterdam-Zuidoost, NH, NL

Actively hiring Posted 4 months ago

Role overview

As a Senior AI/ML Engineer, you will apply machine learning to real-world underwater acoustic sensing challenges using Optics11’s fiber-optic technology platforms. You will work closely with acoustics engineers, signal-processing specialists, and embedded/software teams to develop robust ML components that integrate seamlessly into operational systems.

This role requires a strong foundation in signal processing, applied mathematics, and statistics, and the ability to combine physics-based acoustic algorithms with data-driven ML methods.

Responsibilities

  • Develop and implement machine learning solutions for underwater acoustic sensing use cases, including detection, classification, localization and anomaly monitoring within fiber-optic sensing systems.
  • Select and adapt modelling approaches based on data availability, operational constraints and system requirements.
  • Apply strong foundations in applied mathematics, statistics and signal processing (e.g., beamforming, spectral analysis, detection pipelines) and integrate these with modern data-driven ML techniques.
  • Design, train, evaluate and benchmark AI/ML models, ensuring robustness, generalization and deployment readiness.
  • Validate models rigorously across laboratory experiments and offshore field datasets, with clear performance tracking and reproducible experimentation.
  • Analyze and interpret large-scale experimental and real-world fiber-optic sensing datasets, contributing to scalable workflows for data preparation, labelling and augmentation.
  • Support technical trade-offs between accuracy, interpretability, latency and real-time or embedded constraints.
  • Collaborate closely with acoustics engineers, signal processing specialists, software and embedded teams to integrate ML components into operational acoustic sensing pipelines.
  • Translate complex AI/ML results into clear technical insights that inform system-level engineering decisions.
  • Contribute to strong engineering practices, including version-controlled experiments, documentation, traceability, validation standards and continuous improvement of ML components.
  • Stay informed about advances in AI/ML for time-series analysis, sensor fusion and signal-informed learning, and prototype promising approaches that complement the broader technology stack.
  • Competitive salary .
  • Innovative high-tech, international organization .
  • The opportunity to work in a cross-functional and interdisciplinary environment .
  • A lot to learn and to develop, we stimulate personal development .
  • Lunches.

Basic qualifications

  • MSc in Machine Learning, Signal Processing, Applied Mathematics, Computer Science, Physics, or a related field.
  • Strong foundation in linear algebra, probability, statistics, and signal processing.
  • Proven experience applying AI/ML methods to time-series or sensor data, including techniques such as: Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs) (e.g., LSTMs), Transformer-based architectures for time-series learning.
  • Supervised and unsupervised learning approaches for detection and classification.
  • Hands-on experience with model training, evaluation, and validation in applied settings.
  • Proficiency in Python and modern ML frameworks (e.g., PyTorch, TensorFlow, JAX).
  • Ability to work in an applied R&D environment with experimental and field data, balancing model performance with real-world constraints.

Preferred qualifications

  • Experience with underwater acoustics, sonar, or beamforming-related applications.
  • Knowledge of embedded or real-time deployment constraints.
  • Experience with sensor fusion, self-supervised learning, or physics-informed ML.
  • Familiarity with offshore, defense, or industrial monitoring domains.
  • Familiarity with structured ML development processes such as CRISP-ML(Q) or similar lifecycle and quality frameworks.

Tags & focus areas

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Fulltime Ai Engineer Machine Learning Ai
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