Director, Artificial Intelligence & Data Ethics

Proclinical Staffing
London
10 months ago
Applications closed

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We are on the hunt for bold, innovative thinkers who are ready to help push the boundaries of science and make a tangible difference in the world.


Proclinical is seeking a Director of Statistical Programming - Technical Solutions to lead the development and implementation of innovative programming standards and solutions. This role focuses on enhancing efficiency and quality in statistical analysis and reporting within the oncology and pharmaceutical sectors. You will work closely with various teams to ensure alignment with company goals and regulatory requirements.



Collaborate with the Head of Statistical Programming to implement a global statistical programming ecosystem.
Lead the design, implementation, and maintenance of statistical computing environments to support clinical trials.
Ensure infrastructure scalability, security, and compliance with regulatory standards.
Establish governance frameworks for code quality, version control, and documentation.
Promote automation to streamline routine tasks and reduce manual effort.
Evaluate and integrate emerging technologies into statistical programming workflows.
Provide technical guidance and training on advanced programming techniques and industry trends.
Partner with IT, Data Management, and other functions to align with enterprise data strategies.
Bachelor's degree in Statistics, Mathematics, Computer Science, or related discipline; Extensive experience in statistical programming within the pharmaceutical, biotechnology, or CRO industry.
Advanced proficiency in SAS, R, and Python.
Familiarity with machine learning, artificial intelligence, and data visualization tools.
Proven ability to manage multiple projects and coordinate with external vendors.
Mastery of SAS programming for clinical trial data analysis.
Knowledge of CDISC standards and regulatory submission requirements.
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