Statistician

Seda Talent
County Down
1 year ago
Applications closed

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Statistician SEDA Talent are recruiting a Statistician to join the team at one of the country's largest and most successful FMCG business' in Newry. The successful candidate will be a key member of the R&D team and be responsible for analysing data obtained from clinical/pre-clinical studies and pharmaceutical development, working in a GLP/GMP environment to exacting regulatory standards. Key Responsibilities: Act as statistical advisor and statistician on scientific studies conducted within the R&D facility (including pre-clinical/clinical and pharmaceutical development). Design and prepare Statistical Analysis Plans for inclusion in study protocols. Statistical analysis of study data according to protocol using internationally regulatory approved statistical methods Assessment and interpretation of results, compilation of statistical analysis reports including clear statistical conclusions. Capability for data mining, data cleaning and data visualisation reporting techniques Maintain in-depth knowledge of regulatory guidance (FDA, EMA, VICH) and GLP requirements to ensure continued compliance of statistical methods and approaches The Ideal Candidate: A relevant statistics, biostatistics, data science or maths degree (with statistical focus) At least 5 years expertise in statistical programming (e.g. SAS, R, Pythonor similar statistical programmes) At least 5 years' experience in clinical/pre-clinical statistics to include development of protocol design, sample size calculation, sampling plan, statistical planand modelling (including mixed modelling), ANOVA. Experience developing custom programming codes to generate summary tables, data listings, graphs and derived datasets as specified in statistical plan. Expertise in analysing large databases to support Clinical and Pharmaceutical research in new product development. Demonstrate understanding and use of Design of Experiments (DOE) principles to support Clinical, Pharmaceutical and Analytical Development This role requires an onsite presence and comes with a competitive salary & benefits package. For further details please apply directly below or contact me on Skills: Statistician SAS Python

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