Associate Principal Scientist, Data Engineer, Digital Insights, Dscs Digital Technologies

Merck Merck · Pharma · NJ

Merck is seeking an Associate Principal Scientist, Data Engineer to join their Digital Insights team. The role involves designing, building, and maintaining data pipelines to capture, curate, and deliver experimental and process data from Sterile Product Development (SPD) teams. These pipelines will support downstream SPD digital initiatives, including mechanistic and data-driven process modeling and Bayesian optimization approaches, ultimately enabling de-risking and optimizing manufacturing processes. The ideal candidate has experience in sterile drug product development and has transitioned into a data engineering or data science role, with familiarity in modeling approaches.

What you'd actually do

  1. Build strong partnerships with SPD experimentalists, process engineers, and analytical scientists to gather requirements for data solutions which will have direct pipeline impact.
  2. Design and implement robust, scalable data pipelines that ingest experimental and process data from SPD teams.
  3. Deliver analysis-ready datasets to support SPD digital initiatives, including process modeling and Bayesian optimization.
  4. Define and enforce data standards, metadata schemas, and ontologies that make SPD data interoperable and readily consumable by downstream modeling and optimization workflows.
  5. Automate data ingestion from laboratory instruments, electronic lab notebooks, PAT systems, and manufacturing systems and integrate with cloud-based storage and compute environments.

Skills

Required

  • Python
  • SQL
  • ETL/ELT
  • cloud platforms (AWS, Azure, or GCP)
  • sterile drug product development
  • data engineering
  • data science
  • mechanistic and data-driven models

Nice to have

  • Java
  • R
  • Posit/RStudio/Jupyter
  • Bayesian optimization

What the JD emphasized

  • sterile drug product development
  • data engineering
  • data science
  • mechanistic and data-driven modeling approaches