Biotech Health Data Governance Lead

Alignerr
Glasgow
1 week ago
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About The Job

At Alignerr, we partner with the world’s leading AI research teams and life sciences organizations to build and train cutting‑edge AI models using high-quality, trustworthy data. We are seeking a Biotech Health Data Governance Lead to ensure that research and clinical trial data is accurate, traceable, compliant, and ready to support scientific discovery, regulatory filings, and advanced analytics.


Organization

Organization: Alignerr
Position: Biotech Health Data Governance Lead
Type: Hourly Contract
Compensation: $40–$80 /hour
Location: Remote
Commitment: 10–40 hours/week


What You’ll Do

  • Govern biotech research and clinical trial data to ensure accuracy, lineage, and auditability for scientific analysis and regulatory submissions.
  • Define and enforce data policies for classification, access, security, and metadata across research, clinical, regulatory, and partner teams.
  • Enable secure, governed access to data for analytics, innovation, and external collaborations while protecting confidential and patient‑related information.

What We’re Looking For

  • Experience leading or implementing data governance programs in biotech, life sciences, clinical research, or regulated data environments.
  • Strong understanding of data privacy, security, compliance, and regulatory expectations for research and clinical trial data.
  • Ability to collaborate across scientific, IT, compliance, and business teams to align data standards and workflows.

Preferred

  • Prior experience with data annotation, data quality, or evaluation systems

Why Join Us

  • Competitive pay and flexible remote work.
  • Lead data governance initiatives that support cutting‑edge AI and life sciences research.
  • Exposure to advanced AI models and how high‑quality data enables better science.
  • Freelance perks: autonomy, flexibility, and global collaboration.
  • Potential for contract extension.

Application Process (Takes 15‑20 min)

  • Submit your resume
  • Complete a short screening
  • Project matching and onboarding

PS: Our team reviews applications daily. Please complete your AI interview and application steps to be considered for this opportunity.


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