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Senior Principal, Clinical Data Lead
Location
United States
Posted
4 days ago
Salary
$134K - $179K / year
Seniority
Senior
Job Description
Senior Principal, Clinical Data Lead
Biogen
• Primary point of contact for the execution of Data Management deliverables on assigned trials and programs. • Interprets and applies data strategy, ensures use of global program standards, coordinates and oversees Data Management study team members, and monitors and reports overall study progress. • Accountable for all Data Management activities throughout the study lifecycle, including oversight of all Data Management tasks and performing tasks such as document creation, data cleaning, and query management. • Develops and executes plans for risk identification and mitigation. • Assesses operational metrics to optimize process efficiency. • Oversees issue investigation and solution proposals using experience, judgement, and precedent. • Contributes to the development of Data Management process, including new process creation, process improvement, and innovation as applicable. • Manages quality and efficiency performance with vendors, including Data Management FSP team members and external vendor data providers. • Leads and participates in cross-functional collaborations, including study level activities and special projects or initiatives.
Job Requirements
- Bachelor’s degree, preferably in a scientific discipline such as Statistics, Mathematics, Economics, Computer Science, IT, Biology, Social Science, etc.
- 7+ years’ experience in Clinical Data Management within the biopharmaceutical industry.
- 4+ years’ experience as a Lead Data Manager with full accountability across study start-up, conduct, and lock.
- Robust technical experience with Electronic Data Capture platforms (Medidata Rave preferred) and use of data review tools (elluminate preferred).
- Strong project management skills to effectively lead and collaborate with various business functions.
- Excellent written and oral communication skills in English.
- High attention to detail, including proven ability to manage multiple competing priorities successfully.
- Deep understanding of drug development and the biopharmaceutical industry.
Benefits
- Medical, Dental, Vision, & Life insurances
- Fitness & Wellness programs including a fitness reimbursement
- Short- and Long-Term Disability insurance
- A minimum of 15 days of paid vacation and an additional end-of-year shutdown time off (Dec 26-Dec 31)
- Up to 12 company paid holidays + 3 paid days off for Personal Significance
- 80 hours of sick time per calendar year
- Paid Maternity and Parental Leave benefit
- 401(k) program participation with company matched contributions
- Employee stock purchase plan
- Tuition reimbursement of up to $10,000 per calendar year
- Employee Resource Groups participation
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