Data Architect - LDMs for Formulation & Raw Materials

Lorien
London
1 day ago
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Data Architect - LDMs for Formulation, Raw Materials and Packaging

Contract: 6 MonthsLocation: Hybrid / Remote working IR35: Inside IR35Industry: Pharmaceutical / Life Sciences / CPG / R&D

Our client is seeking an experienced Data Architect to develop Logical Data Models (LDMs) in the areas of Formulation, Raw Materials and Packaging to support a major data transformation initiative, shaping how scientific, regulatory, and product data is structured, managed, and governed across R&D and Quality & Supply Chain functions. In this role the Data Architect - LDMs for Formulation, Raw Materials and Packaging will support the Chief Architect in defining and delivering a holistic end-to-end data and process architecture spanning product, formulation, raw materials and Bill of Materials (BoM) data.Key Responsibilities for the Data Architect - LDMs for Formulation, Raw Materials and Packaging:

Data Architecture Development

  • Define, refine, and communicate unified data and process architectures across R&D and QSC.
  • Support strategic alignment across core product and formulation data domains.

Industry Standards & Regulatory Data Integration

  • Embed regulatory and industry standards such as IDMP, UNII, and SPOR

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