Senior / Principal Biostatistician

Parexel
Sheffield
1 day ago
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When our values align, there's no limit to what we can achieve.


As an experienced Biostatistician joining our FSP Team, you will lead research design and analytical strategies, provide input into protocols, develop and review statistical analysis plans. You will use your knowledge to advise, provide guidance and to oversee the quality control of statistical deliverables.


Our Biostatistics teams are not only focused on delivering quality results for our client’s needs, but also value working with one another in a flexible environment. Although some team members are home-based and others are office-based, our virtual resources support our teams to work collaboratively and effectively across the globe.


The overall long tenure of our team integrates a depth of knowledge and experience. Working together, you will create paths to answers and contribute to new therapies which ultimately will impact the patient.


What you’ll do
Supervise, advise and review

  • Leverage your expertise. Develop complex analysis strategies and execute them using efficient programming techniques (software : SAS, R).
  • Foster teamwork. Perform intricate statistical analyses and provide input to statistical reports.
  • Share knowledge. Provide input to analysis plans, statistical reports, statistical sections of integrated clinical reports.
  • Impact the process. Be a proactive advisor for all types of analysis from the proposal process through the project life cycle.
  • Take quality seriously. Review analysis data sets and quality control all types of statistical analysis deliverables.
  • Coach and mentor. Train and uplift junior members of the department.

Cooperate and network

  • Build relationships. Liaise with other biostatistical and company departments to optimize global efficiency.
  • Work collaboratively. Coordinate Biostatistics related project activities for successful completion within given timelines and budget.
  • Interact with heart. Coordinate with clients with regard to data analysis, scope of work, and budget.
  • Demonstrate our expertise. Represent Parexel at client meetings.

More about you

On your first day we’ll expect you to have :


Experience

  • A minimum of 5 years industry (or directly relevant) experience
  • A thorough understanding of the statistical aspects of either clinical trials and / or observational studies
  • Experience in statistical analysis in a clinically related subject, either within clinical trials or in Epidemiology
  • SAS programming or R programming skills

Education

  • A Masters or Ph.D. level education in biostatistics, statistics, mathematics, or another relevant discipline

Skills

  • Confidence, be self-reliant and a quick learner who enjoys working in a matrixed team
  • Good leadership skills
  • Strong oral and written English communication skills
  • The ability to travel as required, although this is not frequent
  • A strong work ethic to promote the development of life changing treatments for patients


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