Director, R&D Data Transformation
Posted date Jun. 11, 2026
Contract type Full time
Job ID R\-254124
Why choose AstraZeneca Spain?
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AstraZeneca Spain is a rising force in our global business. With headquarters in Madrid and our global hub in Barcelona, we’ve become an important international centre of excellence in the fight against critical disease. Boasting vibrant universities and business schools, the Barcelona ecosystem is a place where scientists can thrive. We attract a diverse workforce from across the globe, shining a beacon for innovation in a country that’s committed to clinical development.
We invite you to bring your talents to Barcelona where our respiratory medicine R\&D and Global Marketing centre offers opportunities in R\&D, IT, Commercial and HR. Or join us in Madrid and shape our growth in our BUs (Respiratory, Oncology \& CVRM ), and a range of Corporate functions. Additionally, you can find sales roles throughout the country. Together, we’re contributing to a world\-leading pipeline of therapeutics and delivering life\-changing medicines to patients.
Who do we look for?
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Calling all tech innovators, ownership takers, challenge seekers and proactive collaborators. At AstraZeneca Spain, breakthroughs born in the lab become transformative medicine for the world's most complex diseases. Alongside technical expertise, colleagues have the resilience, energy and collaborative mindset to change lanes, work with different teams and start projects from scratch.
Here, diverse minds and bold disruptors can meaningfully impact the future of healthcare using cutting\-edge technology. Whether you join us in Madrid or Barcelona, you can make a tangible impact within a global biopharmaceutical company that invests in your future. Join a talented global team that's powering AstraZeneca to better serve patients every day.
Success Profile
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Ready to make an impact in your career? If you're passionate, growth\-orientated and a true team player, we'll help you succeed. Here are some of the skills and capabilities we look for.
Diverse collaborators
This is a speak\-up culture that values collaboration. You’ll proactively bring your unique perspectives, experiences and skills to the table and seek the same from others. With our international team composition and the need for fast\-paced collaboration, you’ll always be building new connections with colleagues.
Cutting\-edge innovators
When you join us, you’ll be part of a team that embraces digital technology and data to transform the way we work and the work we do. Every day, you’ll help make history, empowered to ignite your creativity and build something enduring.
Resilient trailblazers
Here, the answers aren’t always available. So, you’ll need to bring a fearless, self\-starter mindset to navigate uncharted territories. You’ll harness your ceaseless energy to discover and make the necessary connections with colleagues to shape the future and achieve maximum impact.
Agile movers
Seize ownership and excel with autonomy to enjoy the constant rush of ground\-breaking discovery. Your ability to anticipate sudden shifts and adapt swiftly will prove critical as you make your mark in an environment that rewards initiative and resilience.
Responsibilities
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Job ID R\-254124 Date posted 06/11/2026
The Director, R\&D Data Transformation leads the strategic programme of work that drives measurable improvement in the readiness, interoperability and reuse of data across AstraZeneca's R\&D data estate. Reporting to the Head of R\&D Data Office within Enterprise Data Enablement, this role defines R\&D transformation priorities and partners with Data Programmes to execute initiatives that make R\&D data AI\-ready and "available by default," directly supporting the AI30 ambition and Ambition 2030\. The Director leads their team and partners closely with R\&D functions, AI for Science Innovation, Enterprise AI Technology, and IT to ensure data flows seamlessly across the R\&D lifecycle.
Scope of accountability:
You will lead R\&D Data Transformation as an integrated programme within the R\&D Data Office directly reporting to the Head of R\&D Data Office, with accountability across the following areas:
- R\&D Data Readiness: Define and execute transformation plans that bring R\&D data assets to the quality, structure and completeness standards required to power AI, machine learning and advanced analytics at every stage of the R\&D lifecycle.
- Interoperability and Standards: Champion alignment to enterprise and industry data standards (ontologies, vocabularies, schemas, FAIR principles) within transformation initiatives, partnering with the R\&D Semantic Layer lead who drives standards adoption across the R\&D data estate.
- Data Reuse and Discoverability: Establish practices, cataloguing and metadata enrichment that maximise findability and reuse of R\&D data assets, reducing duplication and unlocking latent value from historical and emerging datasets.
- Transformation Delivery: Lead a portfolio of transformation initiatives — from assessment and prioritisation through design, execution and benefits realisation — in partnership with platform, technology and change teams.
- Team Leadership: Build and lead a high\-performing team, fostering accountability, collaboration and continuous learning aligned to Enterprise AI Unit principles.
Strategic leadership:
- Own the transformation portfolio priorities, sequencing, and benefits case; partner with Data Programmes (EDP) who provide programme leadership, delivery governance, stage gates, and vendor management to execute against the roadmap.
- Develop and present executive\-level business cases and progress reporting that articulate value, sequencing, risk and trade\-offs to senior stakeholders.
- Translate enterprise data strategy and emerging R\&D needs into prioritised, executable transformation plans that balance pace, quality and sustainability.
- Lead end\-to\-end delivery of transformation initiatives — from current\-state assessment and gap analysis through implementation, adoption and sustainment.
- Define and apply a consistent transformation methodology (maturity models, prioritisation criteria, delivery playbooks) ensuring rigour, repeatability and scalability.
- Partner with data domain owners and R\&D functions to identify high\-value opportunities and co\-design solutions addressing readiness, interoperability and reuse gaps.
Interoperability and standards adoption:
- Drive alignment to FAIR principles, data standards and ontologies within R\&D, working with governance, architecture and domain\-expert communities.
- Identify and resolve interoperability barriers between R\&D systems, platforms and data stores; champion modular, reusable data infrastructure.
- Partner with AI for Science Innovation to ensure transformation priorities reflect AI/ML data requirements across the R\&D lifecycle.
- Establish practices and governance that increase discoverability and contextual richness of R\&D data assets, enabling secondary use and cross\-functional insight.
- Define and track reuse metrics (e.g., asset utilisation, time\-to\-access, duplication reduction) to quantify value and inform prioritisation.
- Champion a culture of "data as an enterprise asset," partnering with the Change Management pillar to embed behaviours supporting data sharing and responsible reuse.
- Recruit, develop and retain a diverse team; set clear objectives and development plans aligned to individual growth and enterprise outcomes.
- Manage workload allocation, capacity planning and performance to deliver against the transformation portfolio within agreed timelines and resources.
- Partner with Data Programmes (project leadership, change management, data automation) to align transformation milestones with delivery stage gates and change plans.
- Contribute to Enterprise Data governance forums; ensure transformation artefacts and decisions are transparent, auditable and aligned to enterprise standards.
- Build relationships with R\&D functional leaders and AI for Science Innovation to maintain alignment and secure sponsorship for transformation priorities.
- Degree in life sciences, informatics, data science or a related discipline, or equivalent professional experience.
- Extensive experience leading data transformation or data strategy programmes within complex, global organisations; ideally within pharmaceutical R\&D or a highly regulated scientific environment.
- Demonstrated success delivering large\-scale, multi\-year transformation portfolios with measurable improvements in data quality, interoperability or reuse.
- Strong knowledge of data management principles, FAIR standards, metadata management and ontology frameworks.
- Proven ability to influence at senior levels across technical and scientific functions; skilled in translating complex data concepts into compelling business narratives.
- Experience leading and developing diverse teams across multiple seniority levels, with a track record of building high\-performing, collaborative cultures.
- Knowledge of pharmaceutical drug discovery and development processes, including data flows across preclinical, clinical, regulatory and manufacturing domains.
- Familiarity with AI/ML data requirements and experience enabling data readiness for advanced analytics and machine le
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