Data Management Specialist

Bracknell
2 months ago
Applications closed

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Job Title: Data Management Specialist

Location: Bracknell

Contract: 12 Months

Hours: Monday - Friday / 36 hours per week

Rates: Competitive

Duties and Responsibilities

Driving the PT&E (Product Technology and Engineering) Data Management workflow tasks within the required time and quality.
Manage data governance of all PT&E data across the business and wider organization and ensure data verification prior to handover to downstream systems/processes (MDM, P&S, Logistics).
Collaborate with other departments to do data validation from upstream systems/processes (R&D).
Provides support for projects and business change program when PT&E and PT AI data is affected.
Management of data quality and associated improvement activity to ensure that data quality (including standards such as accuracy, validity, reliability, etc) of all PT&E data is achieved
Develop a thorough understanding how all possible chemical or biological information sources e.g., MSDS, Sales Specs, Labels contribute to the right set of data and the expected data quality.

Experience and Qualifications

Good basic knowledge of chemistry (e.g. good at chemistry in school). Preferred: Apprenticeship or Bachelor in Chemistry or Biology.
Skilled in Word, Excel and Outlook. Computer savvy and willingness to do some repetitive work.
A broad understanding of data in science, an interest in data management and a clear understanding of the importance of data and data quality
Experience or interest in Data Management and Data Quality documentation and implementation.
Good analytical thinking and the ability to implement the results that came out of the analysis.
Willingness to learn Product life cycle management from introduction to phase-out.
Good communication skills.
Experience with SAP EHS is preferred Carbon60, Lorien & SRG - The Impellam Group STEM Portfolio are acting as an Employment Business in relation to this vacancy

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