Senior Statistical Programmer

Warman O'Brien
united kingdom, united kingdom
3 months ago
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Senior / Principal Statistical Programmer | Global Pharma | UK | France | Germany | Spain | Home Based |


Award-winning global biometric CRO have multiple opportunities for experienced Statistical Programmers to join its growing team. Partnering with top pharma, biotech, and medical device companies, they deliver high-quality biostatistics, programming, data management, and data science services. Senior Programmers will have hands-on technical roles, while Principal Programmers will also take on leadership tasks. This is a great opportunity to grow with a recognized CRO, gain pharma experience, and benefit from continuous learning and development.


What you will be doing:

  • Manipulation of data to produce analysis datasets, including SDTM and ADaM datasets
  • Production and review of TFLs according to statistical analysis plan
  • Creation and review of programming specifications and, if required, annotation of case report forms (CRFs) to CDISC standards
  • Feeding back data errors to client data management teams
  • Working to industry (CDISC) and client standards
  • working on production or QC of pooled data or will help the standard macro development team.


What you will need:

  • Bachelor’s degree or equivalent in Maths, Statistics or other scientific.
  • Statistical Programming experience within the pharmaceutical industry essential.
  • Excellent working knowledge of SAS.
  • Good working knowledge of data structures e.g. CDISC, SDTM, ADaM.
  • Experience with ISS/ISE submissions.
  • Experienced in leading studies plus strong hands-on programming background .
  • Expertise of CDISC standards and Pinnacle 21E is essential.
  • Strong written and verbal communication skills.


What’s in it for you:

  • Recognized as an outstanding workplace, committed to employee engagement, satisfaction, and work-life balance.
  • Structured training, development plans, and a supportive, friendly environment.
  • Condensed hours for a shorter workweek.
  • Competitive salary and benefits package.
  • Fully remote role available in the UK, France, Spain, or Germany.


What to do next:

If this opportunity is of interest, please apply now with your CV as the organisation are looking to welcome the Senior & Principal Statistical Programmers onboard as soon as possible.


Not what you’re looking for?

Please contact Jo Fornaciari on +44 7488 822 859 for a confidential discussion about potential opportunities.

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