Title: Applied Data Scientist, Senior
Company: U.S. based manufacturer of a life-saving medical devices.
Location: Must be local to Chelmsford area for a Hybrid work schedule from Chelmsford based office. NOT REMOTE at this time.
Description:
Machine Learning and Generative AI Development
- Apply machine learning techniques to derive insights.
- Prepare and structure data for LLM workflows.
- Experiment with emerging AI tools, prototyping new techniques that enhance automation, documentation, and storytelling for decision support.
- Support AI model evaluation, accuracy assessment, and guardrail development for use in regulated environments.
- Frame ambiguous problems, define analytical approaches, and iterate toward transformational solutions.
- Partner with software developers to integrate ML/AI components into internal tools, assistants, and automation solutions.
- Ensure analytic methods and models follow traceability, reproducibility, and documentation expectations suitable for regulated environments.
Data Analytics and Insight Support
- Perform statistical analysis, predictive modeling, and anomaly detection to support engineering and product support decisions.
- Translate complex data into actionable recommendations.
- Develop definitions of KPIs, metrics, and analytical logic.
- Couple analytical models with data visualizations.
- Monitor product failures, service efficiency, operational trends, and customer feedback.
- Partner with IT and data platform teams to access and prepare datasets and data transformations to support dashboards, analytics and AI models.
- Adhere to data privacy, cybersecurity, and internal governance standards when handling service, customer, or field data.
Continuous Improvement and Innovation
- Identify and recommend opportunities for automation, advanced analytics, and AI-driven enhancements to business processes.
- Research and vet 3rd party technology vendors to assess potential partnerships.
- Stay current with emerging AI, ML, and analytics technologies, and evaluate their applicability to current operational
Requirements:
- Minimum education of Bachelor’s Degree in Data Science, Engineering, Computer Science, Applied Mathematics, Statistics, or a related discipline.
- 3+ years of experience in analytics engineering, data analysis, machine learning application development, or similar roles.
- Medical device or regulated industry experience is a MUST.
- Experience working with engineering, product support, or industrial data environments.
- Proficiency developing dashboards, predictive analytics, or AI-driven tools in an engineering, industrial, or operations environment is preferred.
- Experience working with: datasets (Oracle Cloud, Camstar, Salesforce, ServiceMax, etc.); Cloud data platforms (AWS, Azure, etc.); Python for analytics and ML (pandas, numpy, scikit-learn); dashboarding and visualization tools (Power BI, Tableau, or equivalent).
- Experience building predictive models and applying ML techniques to real-world operational data.
- Experience with GenAI tools or modern AI workflows is strongly preferred
- Familiarity with LLM concepts (embeddings, RAG, prompting, semantic search) and demonstrated interest in GenAI experimentation.
- Ability to clean, transform, and prepare datasets for analytics and AI workflows.
- Comfort with complex and ambiguous datasets.
- Strong communication and data storytelling abilities.