Jobdescription
Are you a seasoned Data Scientist / Machine Learning Engineer driven by complex data and a passion for patient health? We are looking for you to take the lead in designing and validating predictive algorithms using cutting-edge techniques and time series data from medical devices, directly impacting diabetes care!
General Information:
* Start date: 1.2.26
* latest Start Date: 1.4.26
* Planned duration: 1.2.27
* Extension (in case of limitation): possible
* Workload: 100%
* Home Office: mostly onsite
* Working hours: Standard
Tasks & Responsibilities:
* Algorithm Design & Prototyping: Design, develop, and validate predictive and analytical algorithms for CGM data. Develop robust code using advanced ML and statistical techniques to prove technical feasibility.
* Feasibility & Ideation: Understand patient needs and creatively model potential algorithmic approaches using real-world sensor data.
* Data Pipeline & Feature Engineering: Apply expertise in processing and managing heterogeneous time series data originating from medical devices. Execute rigorous data cleaning, imputation, transformation, and sophisticated feature engineering.
* Technical Execution & Modeling: Build and optimize machine learning models (e.g., XGBoost, Neural Networks, etc.). Write high-quality, efficient, and reproducible Python code for data analysis, modeling, and experimentation.
* Collaboration: Provide technical guidance within an Agile team framework to junior data science colleagues. Work effectively within a multidisciplinary, distributed team to translate project goals into actionable data science tasks.
* Communication & Reporting: Synthesize complex technical results and present clear feasibility findings to diverse stakeholders.
Must Haves:
* Minimum of 5+ years of hands-on experience as a Data Scientist or Machine Learning Engineer.
* Demonstrated experience or robust academic background (Master or PhD is highly desirable) in Data Science, Machine Learning, Statistics, or a related quantitative field.
* Strong Statistical Foundation: Solid grasp of statistical principles, experimental design, and model validation techniques.
* Advanced Python Proficiency: Strong proficiency in Python and its core data science ecosystem: Pandas, NumPy, Scikit-learn, TensorFlow/PyTorch, and XGBoost/LightGBM.
* Time Series Data: Practical experience with the processing, analysis, and modeling of time series data from physical sensors or monitoring devices.
We thank you for your application!