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EMEA Data Scientist - Hemel Hempstead

Boston Scientific
Hemel Hempstead
1 week ago
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EMEA Data Scientist – Hemel Hempstead – Boston Scientific


Additional Locations: United Kingdom – Hemel Hempstead


Diversity - Innovation - Caring - Global Collaboration - Winning Spirit - High Performance


At Boston Scientific, we’ll give you the opportunity to harness all that’s within you by working in teams of diverse and high-performing employees, tackling some of the most important health industry challenges. With access to the latest tools, information and training, we’ll help you in advancing your skills and career. You’ll be supported in progressing – whatever your ambitions.


Day in the Life


You will spend most of your time (60%) focused on MLOps and model deployment, and (40%) on data science and model development. You will work across the entire ML lifecycle—from building and maintaining pipelines to deploying and monitoring models, exploring data, and developing machine learning solutions. As a well‑rounded ML practitioner, you will balance engineering and data science. You will collaborate with peers, learn and continually improve your work. You will work with businesses to understand their data needs and translate those into data structures and model requirements, define standards for monitoring data model integrity during projects, lead data modelling and testing, conduct quality assurance on analytics tools and methods used, and apply expertise in machine learning, data mining, and information retrieval to design, prototype, and develop next‑generation analytics. You will develop best practices for analytics, including models, standards, and tools, and have metrics to assess the impact of analytics on the business.


Key Responsibilities

  • Data Engineering

    • Build and maintain data pipelines for structured and unstructured data.
    • Work with SQL/NoSQL databases and data warehouses (e.g., Snowflake, BigQuery, Redshift).
    • Ensure data quality, integrity, and availability.


  • Data Science

    • Explore, clean, and analyze datasets to derive insights.
    • Train, evaluate, and fine‑tune machine learning models.
    • Assist in developing proof‑of‑concepts and production‑ready ML solutions.


  • MLOps

    • Support deployment of ML models into production (batch and real‑time).
    • Implement model monitoring, retraining, and CI/CD workflows.
    • Work with cloud platforms (AWS, GCP, or Azure) and containerization tools (Docker, Kubernetes).



What You Will Need

  • Bachelor’s or Master’s in Computer Science, Data Science, Engineering, or related field.
  • 4-5 years of professional experience in data science, data engineering, or MLOps.
  • Strong programming skills in Python (pandas, scikit‑learn, PySpark preferred). Experience with SQL and familiarity with database design.
  • Exposure to cloud platforms (AWS, GCP, or Azure).
  • Knowledge of ML lifecycle tools (MLflow, Kubeflow, Airflow, Prefect, etc.).
  • Familiarity with Git, CI/CD pipelines, and containerization (Docker, Kubernetes).
  • Good problem‑solving skills and eagerness to learn new technologies.

Nice To Have

  • Hands‑on experience with deep learning frameworks (TensorFlow, PyTorch).
  • Experience with data visualization tools (Tableau, Power BI, or Looker).
  • Knowledge of distributed computing frameworks (Spark, Dask).
  • Prior internship or project work in MLOps.

What Do We Offer

  • A compelling career opportunity to lead impactful, innovative initiatives within the EMEA region.
  • Opportunity to work on end‑to‑end data projects.
  • Mentorship from senior data scientists and engineers.
  • A collaborative, learning‑focused environment.
  • A coaching culture environment focusing on your success and development!

Legal

Requisition ID: 618341


As a leader in medical science for more than 40 years, we are committed to solving the challenges that matter most – united by a deep caring for human life. Our mission to advance science for life is about transforming lives through innovative medical solutions that improve patient lives, create value for our customers, and support our employees and the communities in which we operate. Now more than ever, we have a responsibility to apply those values to everything we do – as a global business and as a global corporate citizen.


So, choosing a career with Boston Scientific (NYSE: BSX) isn’t just business, it’s personal. And if you’re a natural problem‑solver with the imagination, determination, and spirit to make a meaningful difference to people worldwide, we encourage you to apply and look forward to connecting with you!


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