Senior Data Platform & MLOps Engineer EMEA - Hemel Hempstead

Boston Scientific Gruppe
Hemel Hempstead
3 months ago
Applications closed

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Onsite Location(s): Hemel Hempstead, United Kingdom

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. Here, you’ll be supported in progressing – whatever your ambitions.

Location: Paris, Milan, Düsseldorf, Hemel Hempstead, or Madrid (Hybrid) Salary: salary range and benefits depend on experience and location, more information will be shared during the first interview.

At Boston Scientific, we are redesigning our global data and digital foundation and we are looking for an experienced Data Platform & MLOps Engineer to help build the next generation of data and AI capabilities across EMEA. This role will shape the technical backbone that powers analytics, automation, and machine learning throughout the region. If you enjoy solving complex engineering challenges, partnering with diverse teams, and building platforms that scale, this is an opportunity to make a meaningful impact: for our organization and ultimately for patients.

Your role in Data & AI

As a Senior Data Platform & MLOps Engineer, you will design, build, and operate the cloud data platforms that powers analytics and AI solutions across EMEA. You will partner closely with data engineers, AI engineers, data scientists, product managers, architects, and governance teams to create secure, reliable, and reusable platform services. This role combines hands‑on engineering with cross-functional collaboration and plays a key part in implementing our new global data strategy.

You will work across a wide range of platform components, from data ingestion and orchestration to observability, security, and automation, ensuring that regional requirements such as GDPR and data residency are built into platform design without slowing innovation.

Crucially, you will build and maintain the shared infrastructure that enables AI engineering and data science teams to develop, deploy, and scale machine learning solutions efficiently and responsibly. Your work will accelerate the delivery of AI‑driven insights and automation across EMEA, ensuring that advanced analytics and ML capabilities are grounded in a secure, compliant, and scalable data foundation.

What you will do

You will design, build, and operate cloud data platform components, including data lakes, warehouses, streaming systems, orchestration layers, and metadata tooling. Your work will focus on making these services secure, observable, automated, and scalable, enabling analytics, AI, and data science teams to innovate with confidence.

In parallel, you will design, implement, and maintain MLOps pipelines that support the full machine learning lifecycle, from experimentation and model training to deployment, monitoring, and continuous improvement. You will embed model governance, lineage tracking, and performance observability into the platform, ensuring that ML solutions are reliable, compliant, and production‑ready. You’ll also collaborate closely with data scientists and AI engineers to streamline model delivery using modern tools such as SageMaker, MLflow, Kubeflow, or Vertex AI.

In this role, you will:
  • Operate and enhance cloud-based data platform components across compute, storage, orchestration, streaming, and metadata.
  • Build and manage end‑to‑end MLOps pipelines, integrating CI/CD practices and automation for ML workflows.
  • Monitor platform and model health, pipeline performance, latency, and costs, driving continuous optimization.
  • Collaborate with global engineering and architecture teams to deliver infrastructure‑as‑code, secure patterns, and reusable services.
  • Translate business and product needs into reusable platform and MLOps capabilities, templates, and standards.
  • Provide guidance and coaching to teams on best practices, self‑service tooling, and platform adoption.
  • Strengthen observability, data quality, and compliance through metrics, logging, lineage, and GDPR‑aligned controls.
  • Contribute to global architecture and platform standards while representing EMEA‑specific requirements and priorities.

This is a deeply collaborative role where data platform engineering, MLOps, and AI enablement come together to create secure, scalable, and impactful systems that accelerate innovation across Boston Scientific.

The purple cow we are looking for

We’re seeking someone with deep engineering craft, strong MLOps expertise, and the ability to balance speed with governance in a complex environment. You enjoy solving platform challenges, building scalable, reusable patterns, and enabling data and AI teams to develop, deploy, and scale models efficiently. You do not need a MedTech background, though experience in regulated industries or working with sensitive data is an advantage.

Must-haves (the practical elements)
  • Bachelor’s degree in computer science, engineering, or a related field, with 5–8+ years of experience in data, platform, or MLOps engineering.
  • Strong cloud experience, particularly with AWS and Snowflake (Azure is a plus), combined with hands‑on skills in Python, SQL, and distributed processing frameworks (e.g., Spark/EMR).
  • Expertise with infrastructure‑as‑code (Terraform or similar), CI/CD pipelines (GitHub Actions, Azure DevOps), and containerized/orchestrated environments (Docker, Kubernetes).
  • Demonstrated ability to design, implement, and maintain MLOps pipelines covering model training, deployment, monitoring, and retraining, using tools such as SageMaker, MLflow, Kubeflow, or Vertex AI.
  • Model lifecycle management: Familiarity with model registries, feature stores, and governance frameworks that include versioning, lineage tracking, explainability, and compliance.
  • Experience in implementing observability for ML and data systems, including metrics collection, model‑drift detection, and performance dashboards.
  • Security and compliance: Solid understanding of cloud security best practices (IAM, encryption, secrets management, policy‑as‑code) and the ability to design solutions aligned with governance and regulatory requirements.
  • Strong communication and collaboration skills across technical and non‑technical stakeholders, fluency in English, and eligibility to work in one of the listed hub locations.
We also expect familiarity with

To thrive in this role, you should feel comfortable with, or be eager to grow in, these areas:

  • Modern data lakehouse architectures, data mesh concepts, and event streaming platforms (Kafka, Kinesis).
  • End‑to‑end MLOps lifecycle management, including CI/CD for machine learning models, model performance monitoring, and automation best practices.
  • Enterprise data catalogs (Collibra, Alation, Purview), documentation practices, and developer experience design.
  • Batch, micro‑batch, and streaming workloads, cost optimization strategies, and large‑scale or regulated environments.
  • Understanding of governance and compliance frameworks (GDPR), data residency requirements, and secure access models.
  • Experience in MedTech, Pharma, Consulting, or other regulated industries.
  • Exposure to AI/ML workflows, MLOps pipelines, semantic layers, feature stores, or GenAI‑assisted tooling.
  • Strong interest in coaching, knowledge sharing, and working in large, multinational teams.

You approach problems with curiosity, build reliable systems, and continuously look for ways to remove complexity and enable scale. You thrive in collaborative, fast‑moving environments where you can make a visible impact.

Why this role matters

This position sits at the heart of our new enterprise data strategy. The systems you build will provide the foundation for everything from operational reporting to advanced analytics, AI, and connected digital products. You will join a global community of engineers and architects who collaborate closely, share practices across regions, and collectively shape a new platform that will serve Boston Scientific for many years to come.

Because this is a greenfield transformation, you will have significant scope to influence architecture, establish standards, and design solutions that balance speed, governance, and sustainability. Your work will help accelerate how data improves decision‑making, supports clinicians, and ultimately enhances patient outcomes.

Boston Scientific offers a collaborative engineering community, a strong coaching culture, and the opportunity to work on globally relevant platform initiatives. You will have influence, ownership, and room to grow, with the added motivation of knowing that your work contributes to better healthcare and improved quality of life for patients around the world.

The process includes a first conversation with the recruiter, followed by a one‑hour interview with the hiring manager (optionally joined by a colleague), and concluding with a technical interview. Across these steps, we aim to create a transparent and respectful experience that allows you to show both your technical abilities and your approach to collaboration.

If you are excited by the idea of building secure, scalable, and well‑engineered data platforms that enable others to innovate, we would be happy to hear from you.

Requisition ID:618302

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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