Working Student ML Engineer

deeplify
Munich Full-time 🌐 English
DE
Added to JobCollate: April 8, 2026

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This role is for a working student ML Engineer focused on solving complex, real-world machine learning problems in industrial inspection, such as defect detection and corrosion prediction. Key requirements include strong hands-on ML engineering skills and high ownership, offering the chance to build end-to-end ML systems with significant industrial impact.

Job 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. Deep learning models for weld defect detection and corrosion analysis on radiographic and ultrasonic data Managing external labeling teams Training, evaluation, and experiment tracking workflows Production inference pipelines Support an exciting research project Requirements Strong hands-on ML engineering skills High ownership: you take responsibility, drive things forward, and do not wait to be told every next step High urgency: you move fast, care about execution, and know how to create momentum Excited by messy, difficult, real-world problems with no obvious solution Comfortable working across data, models, infrastructure, and deployment Bonus: experience in computer vision, MLOps, production ML, imaging, or sensor data Benefits Work on technically ambitious problems with real industrial impact Build end-to-end ML systems, not just models in isolation Help lay the foundation for a scalable internal ML platform Be part of a team tackling long-term challenges like corrosion prediction, a genuinely hard problem with significant upside Well above average working student compensation Find Jobs in Germany on Arbeitnow

Full 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. Deep learning models for weld defect detection and corrosion analysis on radiographic and ultrasonic data Managing external labeling teams Training, evaluation, and experiment tracking workflows Production inference pipelines Support an exciting research project Requirements Strong hands-on ML engineering skills High ownership: you take responsibility, drive things forward, and do not wait to be told every next step High urgency: you move fast, care about execution, and know how to create momentum Excited by messy, difficult, real-world problems with no obvious solution Comfortable working across data, models, infrastructure, and deployment Bonus: experience in computer vision, MLOps, production ML, imaging, or sensor data Benefits Work on technically ambitious problems with real industrial impact Build end-to-end ML systems, not just models in isolation Help lay the foundation for a scalable internal ML platform Be part of a team tackling long-term challenges like corrosion prediction, a genuinely hard problem with significant upside Well above average working student compensation Find Jobs in Germany on Arbeitnow

Required Skills

Engineering