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Premium boutique software development company that helps brands with big ideas to make a difference in people’s lives.
Senior Enterprise Data Architect – Biotechnology
Location
Colombia
Posted
96 days ago
Salary
0
Seniority
Senior
Job Description
Senior Enterprise Data Architect – Biotechnology
Truelogic Software
• Establish and govern the enterprise data architecture across core platforms, including CRM, HUB, ERP, RIM, CTMS, QMS, and AWS, ensuring a unified and scalable data foundation. • Define and maintain the canonical enterprise data model, including a standardized data dictionary and shared business definitions to ensure consistency across systems and reporting. • Architect scalable AWS data lake and data warehouse structures aligned with commercialization, analytics, and enterprise reporting needs. • Define, document, and enforce enterprise integration standards, including API, ETL/ELT, and event-driven patterns to ensure consistent, reliable data movement across systems. • Implement and evolve master data governance standards, establishing data domains, stewardship, and an ownership framework across cross-functional teams. • Ensure data lineage, traceability, and documentation meet regulatory expectations and support SOX controls and IPO readiness initiatives. • Provide data architecture oversight for system selection and implementation, partnering with vendors and internal teams to align solutions with the target-state architecture. • Partner with stakeholders across IT, Commercial, Regulatory, Clinical, and Finance to prevent siloed implementations, improve data quality, and enable trusted enterprise reporting.
Job Requirements
- 8+ years of experience in enterprise data architecture, data engineering, or closely related roles, building and scaling data platforms in complex environments.
- Strong technical foundation, including prior experience as a software engineer or working deeply within software engineering teams to deliver production-grade systems.
- Experience working in regulated industries (required); Biotech or Pharma experience is strongly preferred.
- Proven success designing data architecture across enterprise systems such as CRM, ERP, and other regulated platforms, ensuring consistent definitions and trusted reporting.
- Hands-on experience establishing data governance and master data frameworks, ideally in environments preparing for IPO readiness and audit-grade controls.
- Demonstrated expertise architecting AWS-based data lakes and data warehouses to support analytics, commercialization reporting, and scalable data operations.
- Experience leading cross-system integrations (API, ETL/ELT, event-driven patterns) and setting enterprise integration standards.
- Track record of influencing or leading system selection decisions from a data architecture perspective, partnering with vendors and internal stakeholders.
Benefits
- 100% Remote Work: Enjoy the freedom to work from the location that helps you thrive. All it takes is a laptop and a reliable internet connection.
- Highly Competitive USD Pay: Earn an excellent, market-leading compensation in USD, that goes beyond typical market offerings.
- Paid Time Off: We value your well-being. Our paid time off policies ensure you have the chance to unwind and recharge when needed.
- Work with Autonomy: Enjoy the freedom to manage your time as long as the work gets done. Focus on results, not the clock.
- Work with Top American Companies: Grow your expertise working on innovative, high-impact projects with Industry-Leading U.S. Companies.
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