N
AI

Machine Learning Engineer

Nia Health GmbH · Berlin-Kreuzberg, BE, DE

Actively hiring Posted 24 days ago

Description

We are looking to hire an ambitious and highly analytical Machine Learning Engineer (f/m/d) based in Berlin. In this role, you will drive our AI initiatives by designing, deploying, and maintaining advanced computer vision models for medical image analysis.

This role is ideal for you if you combine a strong technical background in machine learning with hands-on software engineering experience, and are eager to create real impact in a fast-growing health tech startup - working closely with our cross-functional AI, product, and business teams.

Your mission

  • Design, train, and evaluate computer vision models for medical image analysis using PyTorch and PyTorch Lightning.
  • Monitor production models, optimize performance metrics, and proactively implement retraining strategies to address model drift.
  • Perform data preprocessing, augmentation, and quality control in close collaboration with data annotators and medical advisors.
  • Systematically maintain organized datasets, model versioning (FiftyOne, DVC), experiment tracking (MLflow), and automated testing.
  • Build and maintain scalable ML pipelines and APIs (FastAPI/Flask) utilizing CI/CD pipelines, containerization (Docker), and MLOps practices for automated workflows.
  • Collaborate closely with frontend and backend engineers to integrate AI models smoothly into product workflows.
  • Build and maintain ELT pipelines (Meltano), orchestrate workflows (Airflow), and create dashboards and visualizations (Metabase) for actionable model insights and business metrics.
  • Ensure high code quality through version control (Git), thorough code reviews, and comprehensive documentation of models, experiments, and best practices.
  • Work cross-functionally within the AI, product, and business teams, and present your findings effectively to both technical and non-technical stakeholders.

Your profile

  • You hold a Bachelor's or Master's degree in Computer Science, Machine Learning, Mathematics, or a related field.
  • You bring 2+ years of hands-on professional experience in machine learning and have a proven track record with modern ML frameworks (PyTorch, TensorFlow).
  • You ideally have practical experience in Computer Vision, NLP (Natural Language Processing), Time Series Analysis, or Reinforcement Learning.
  • You possess strong programming skills in Python and are highly familiar with scientific computing libraries (NumPy, Pandas, Scikit-learn).
  • You have solid experience with version control (Git), collaborative development, and Python packaging and dependency management (Poetry, uv).
  • You are experienced in Docker containerization, comfortable applying MLOps practices (MLflow, DVC), and skilled in data engineering tools (Meltano, Airflow, Metabase).
  • You bring web development skills (FastAPI, Flask, Django) for building robust ML APIs and have experience developing CI/CD pipelines for ML workflows.
  • You are fluent in English and possess excellent communication skills to thrive in a cross-functional environment.

Why us?

  • We invest in you. We offer a steep learning curve and the opportunity to grow through continuous feedback and a culture of lifelong learning. We partner with adesso to provide access to a selection of over 100 training courses.
  • At the same time, we give you the freedom to develop independently. Your energy and expertise will be directed toward improving the lives of people with chronic conditions. With us, you will work on something with real impact!
  • A monthly budget you can freely use through our benefits app – for gym memberships, wellness, or other activities.
  • Attractive office in a prime location overlooking the river Spree in the heart of Kreuzberg, Berlin.

About us

Nia Health GmbH, backed by institutional VCs, develops and markets AI-powered medical software to provide comprehensive digital support for people with chronic conditions. The health tech venture Nia Health was founded as a spin-off from Charité – Universitätsmedizin Berlin. Its first product, the award-winning medical atopic dermatitis app Nia, provides daily support to thousands of patients and their families and is the most widely used atopic dermatitis app in the German-speaking region. Nia Health collaborates with leading pharmaceutical companies, hospitals, and health insurance providers.

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Fulltime Ai Machine Learning Computer Vision Pytorch

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