INTERNSHIP DETAILS

Internship: Anomaly Detection for Smart Maintenance

CompanyDamen
LocationGorinchem
Work ModeOn Site
PostedJuly 8, 2026
Internship Information
Core Responsibilities
Develop and improve ML-based anomaly detection models to identify equipment failures on vessels. Preprocess sensor data and conduct experiments in Python to enhance detection reliability and explainability.
Internship Type
full time
Company Size
6082
Visa Sponsorship
No
Language
English
Working Hours
40 hours
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About The Company
Oceans, seas, lakes and rivers offer growing possibilities in the areas of trade, food, energy and recreation. To ensure global prosperity for next generations and keep the earth habitable with an ever-increasing population, it is essential to utilise and protect these possibilities as efficiently and responsibly as possible. Damen provides unprecedented maritime solutions for this, through design, shipbuilding, ship repair and related services. We offer versatile platforms that enable our customers to be successful and that raise the standard in terms of safety, reliability, efficiency and sustainability. We want to become the most sustainable shipbuilders in the world. In the previous century, we revolutionized shipbuilding. Thanks to standardisation, we were able to supply our customers with better ships, faster. More than 90 years and 6,500 ships later, the importance of standardisation is only increasing in the light of zero-emissions and digitalisation. We do not build our ships alone, but together with an extensive network from the international maritime cluster. We firmly believe in the power of sharing. It means that we also use our craftsmanship to build platforms on production facilities that are not ours. In this way, through knowledge transfer, we not only contribute to better, safer and more eco-friendly ships, but also to sustainable local development and prosperity. We are a family owned business and stand for fellowship, craftsmanship, entrepreneurship and stewardship. Our playing field is the world. Our horizon is the long term. We firmly believe in our team, but also in the strength of the individual. Each colleague is an entrepreneur, focused on ensuring truly satisfied clients and making our contribution to a better world. In every aspect of our business the next generation is our starting point.
About the Role

We offer you an Ocean of Possibilities. Join our family.

About us 

Damen aims to become the world's most sustainable and digitally connected shipyard. The Research, Development & Innovation (RD&I) department develops and implements the technology and know-how to achieve these ambitions. We actively assist the business in creating an innovative product portfolio and provide forward-thinking guidance to improve the quality and performance of Damen's products and services.  You will be joining the Data Science team within Damen RD&I located in Gorinchem. Our department focuses on applying cutting-edge data and AI solutions to Damen's shipbuilding and maritime operations. The team includes domain experts in physics-informed machine learning, simulation acceleration, predictive maintenance, computer vision, and operational analytics. This internship is part of Smart Maintenance, a strategic project aimed at using AI to detect abnormal equipment behavior on board vessels before it leads to failure or unplanned downtime. 

 

The role

As an intern, you will work on our Smart Maintenance project where we have developed an anomaly detection algorithm, which aims to help engineers spot early signs of equipment problems, such as engines, pumps, propulsion and cooling systems, before they escalate into failures. Vessels generate huge amounts of sensor data during operation, and our goal is to turn that data into reliable, trustworthy signals that support maintenance decisions. You will contribute to an existing pipeline that learns what "healthy" equipment behavior looks like and flags deviations from it. Your primary focus will be on a dedicated research topic, to be selected together with the team, that strengthens a specific part of this pipeline — from data selection to detection reliability, health trending, explainability, or deployment. There is room to shape the exact topic based on your interests and background, either before or shortly after you start. This can be a thesis/graduate internship and could start from September onwards. 

Possible research topics that we offer, on which the final scope is to be defined together: 

  • Model transferability across vessels: exploring how an anomaly detection model trained on one vessel can be adapted to other vessels, machinery types, or operating environments — including retraining, recalibration, and drift detection strategies. 

  • Reliable anomaly detection: improving detection models to minimize false alarms, adapt to different operating conditions, handle transient events, and quantify prediction confidence. 

  • Health and degradation trending: moving beyond fault detection to identify gradual performance degradation, developing health indicators that give early warning of wear or efficiency loss. 

  • Explainable AI and fault diagnosis: making anomaly models explainable, identifying which sensors or components drive an alert, and supporting root-cause analysis for engineers. 

  • Defining "healthy" operation: identifying, selecting, and validating representative data from vessels operating under normal conditions, accounting for varying operating modes and environmental influences. 

Key accountabilities 

As an intern, you will: 

  • Support the development and improvement of ML-based anomaly detection models for vessel equipment. 
  • Preprocess and analyze sensor/time-series data from onboard systems. 
  • Run experiments in Python, evaluating model performance against real and/or simulated data. 
  • Work closely with our Data Scientists, maintenance engineers, and vessel operations stakeholders. 
  • Document results and present findings to the team regularly. 

 

Skills & Experience 
We are looking for a student who: 

  • Is currently pursuing a Bachelor or Master in Data Science, Applied Mathematics, Computer Science, Mechanical/Electrical Engineering, or a related technical field. 
  • Ideally combines data science with a mechanical/electrical engineering background, with the ability to model equipment behavior and understand which sensors are informative for which failure modes. 
  • Has experience with Statistics, Python, and ideally with machine learning (LSTMs) or time-series analysis. 
  • Has an interest in predictive maintenance, sensor data or industrial/marine systems. 
  • Is comfortable working with real-world, sometimes messy, operational data. 
  • Communicates fluently in English. 

 

What we offer

  • Mentoring at academic level throughout the internship. 
  • Internship/graduation fee and travel allowance for the duration of the assignment. 
  • Opportunity to contribute to a high-impact predictive maintenance project used in real vessel operations. 
  • Research publication is likely possible with a possible extension of the internship period. 
  • Exposure to a multidisciplinary team combining data science and maritime engineering expertise. 

Other

Are you ready to sail into your new adventure at Damen? Don’t hesitate, send us your motivation letter and resume here.

Due to housing issues we cannot accept international students that do not have accommodation in the Netherlands yet.


Recruiter:

Liselotte van Veenendaal

Email:

liselotte.van.veenendaal@damen.com

Please apply through the Apply Button. Due to GDPR reasons we cannot accept applications by email.

Key Skills
PythonMachine LearningTime-series AnalysisStatisticsAnomaly DetectionPredictive MaintenanceLSTMsData PreprocessingExplainable AISensor Data Analysis
Categories
Data & AnalyticsEngineeringScience & ResearchTechnologyManufacturing
Benefits
Mentoring at academic levelInternship/graduation feeTravel allowanceOpportunity for research publication