Job Title: Director- Data & Analytics Engineer
GCL - F
Introduction to role:
As the Director of Data & Analytics Engineering, you'll be at the forefront of revolutionizing how competitive intelligence is created, shared, and consumed within AstraZeneca. Through Connected Insights, we are making our data Findable, Accessible, Interoperable, and Re-usable (FAIR). You'll architect solutions that ensure unstructured data is readily available for AI applications, using innovative technologies like vector databases and knowledge graphs. Your leadership will guide a team of dedicated engineers in developing scalable data solutions and database enhancements for large-scale products. Are you prepared to drive innovation and excellence in data engineering?
Accountabilities:
1. Data Platform Design and Implementation
- Design and implement advanced data capabilities, including auto ingestion, data cataloguing, automated access control, lifecycle management, backup & restore, and AI-ready data structures.
- Implement vector databases and knowledge graphs to support AI and machine learning initiatives.
2. AI-Focused Solution Architecture
- Collaborate with AI Engineering leads and Architects to design AI-ready data architectures.
- Analyze data requirements for AI applications, modeling both structured and unstructured data sources.
3. ETL and Data Processing
- Implement optimal ETL workflows using SQL, APIs, ETL tools, AWS big data technologies, and AI-specific techniques.
- Develop processes to prepare data for AI model training and inference.
4. AI Integration and Technical Leadership
- Lead technical deliveries across multiple initiatives, focusing on integrating AI capabilities into existing data solutions.
- Provide technical feedback on design, architecture, and integration of AI-enhanced data sourcing platforms.
5. Collaborator, Teamwork and Problem Solving
- Liaise with technical infrastructure teams to resolve issues impacting AI application performance.
- Engage with architects, product owners, and business stakeholders to ensure efficient engineering of AI-driven data solutions.
6. Agile Project Management
- Lead a dedicated Data pod including managing backlogs, sprints, and planning.
- Collaborate with product pods to help them meet their deliveries.
7. Standards and Best Practices
- Define data engineering and AI integration standards in collaboration with architects and AI Engineering leads.
- Establish standard processes for managing AI model versioning and data lineage.
8. Quality Assurance and Documentation
- Test, document, and quality assess new data and AI solutions.
- Implement robust testing frameworks for AI models and data pipelines.
9. Research and Development
- Explore emerging AI technologies and drive their integration into existing data infrastructure.
10. Technical Problem Solving and Innovation
- Adopt a "can-do" approach to technical challenges related to AI integration.
- Coach team members on solving complex AI and data engineering problems.
11. Team Leadership and Development
- Build and support your team through hiring, coaching, and mentoring.
- Foster a culture of continuous learning in AI and data technologies.
12. Code and Design Quality
- Perform regular quality checks of both data engineering and AI-related code.
- Guide engineers on design patterns emphasizing AI-specific considerations.
13. Data Interoperability and FAIR Principles
- Lead initiatives to enhance data interoperability through rich metadata.
- Ensure all data solutions align with FAIR principles.
14. Knowledge Graph Development
- Be responsible for the design, implementation, and maintenance of knowledge graphs using Neo4j.
- Integrate knowledge graphs with AI applications to enhance data context.
Essential Skills/Experience:
MNCJobsIndia.com will not be responsible for any payment made to a third-party. All Terms of Use are applicable.