ICON is a global healthcare intelligence and clinical research organisation united by a mission to bring new medicines and treatments to patients faster. As a values-driven organisation, integrity, collaboration, agility, and inclusion are at the heart of how we work and interact with each other, customers, patients and suppliers.
Clinical Data Science Lead
Location
Mexico
Posted
5 days ago
Salary
0
Seniority
Lead
No structured requirement data.
Job Description
Clinical Data Science Lead
ICON plc
Role Description As a Clinical Data Science Lead at ICON, you will drive data science initiatives within clinical trials, ensuring that our analyses provide meaningful insights that inform strategic decisions. You will manage day-to-day clinical data science activities, supporting your team to deliver quality outcomes. - Leading the design and implementation of data science strategies to enhance clinical trial data analysis. - Collaborating with cross-functional teams to identify key data requirements and analytical needs. - Overseeing the development of statistical models and analytical tools to optimize data interpretation. - Mentoring and guiding team members in best practices for data analysis and visualization. - Communicating findings and insights to stakeholders through presentations and reports, influencing project direction. Qualifications - Bachelor's degree in life sciences, computer science, or a related discipline. - Extensive experience in data analysis and project leadership within a clinical research setting. - Strong expertise in statistical software and data visualization techniques. - Exceptional analytical and problem-solving skills, with a focus on translating data into actionable insights. - Excellent communication and leadership skills, with the ability to foster collaboration across diverse teams. - Willingness to travel as required (approximately 15%). Requirements - Employment with ICON is contingent upon having the legal right to work in the country where the role is based. Benefits - Competitive base salary and performance related incentives. - Health and wellbeing programmes including medical, dental, and vision coverage where applicable. - Retirement and pension plans. - Life assurance and disability coverage. - Employee assistance programmes and wellbeing resources. - Learning and development opportunities through structured training and career pathways. - Benefits may vary depending on role and location. Inclusion and Accessibility ICON is an equal opportunity employer. We are committed to building an inclusive and accessible workplace where everyone feels valued and supported. If you require reasonable accommodations during the recruitment process, please let us know or submit a request here.
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