Working Student ML Engineer
deeplify
Description
At deeplify, we’re building the first AI-native asset integrity co-pilot for critical industrial infrastructure. We turn inspection data from pipelines, chemical plants, ships, and bridges into real-time, risk-based maintenance decisions. We combine a digital inspection platform with proprietary deep-learning models and an evolving agentic AI system that learns from asset integrity engineers. This shifts asset integrity from slow, analogue, document-driven processes to a proactive, software-defined, and increasingly autonomous system.
Tasks
We are looking for an exceptional ML engineer working student to help us solve some of the hardest applied machine learning problems in industrial inspection — from weld defect detection and corrosion analysis on radiographic data to future UT-based systems and long-term corrosion prediction.
This is not a narrow research role. It is about solving hard end-to-end real-world problems: turning messy industrial data into reliable production systems.
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Deep learning models for weld defect detection and corrosion analysis on radiographic and ultrasonic data
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Managing external labeling teams
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Training, evaluation, and experiment tracking workflows
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Production inference pipelines
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Support an exciting research project
Requirements
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Strong hands-on ML engineering skills
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High ownership : you take responsibility, drive things forward, and do not wait to be told every next step
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High urgency : you move fast, care about execution, and know how to create momentum
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Excited by messy, difficult, real-world problems with no obvious solution
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Comfortable working across data, models, infrastructure, and deployment
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Bonus: experience in computer vision, MLOps, production ML, imaging, or sensor data
Benefits
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Work on technically ambitious problems with real industrial impact
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Build end-to-end ML systems, not just models in isolation
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Help lay the foundation for a scalable internal ML platform
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Be part of a team tackling long-term challenges like corrosion prediction, a genuinely hard problem with significant upside
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Well above average working student compensation