Data Edge
Linkedin · Posted 21d ago
Data Platform Engineer
Continue to application
Add your email once, then Caio opens the original posting.
Indexed description
As a Data Platform Engineer, you will be responsible for designing, building, and evolving scalable data platforms and pipelines that enable enterprise applications, analytics, and AI-driven products.
Key Responsibilities:
- Design, develop, and maintain scalable data pipelines, ingestion frameworks, and transformation processes.
- Build and optimise data models to support analytics, reporting, operational systems, and AI use cases.
- Develop robust ETL/ELT solutions to enable efficient and reliable data movement across enterprise platforms.
- Support integration with enterprise data architectures and evolving cloud-based data ecosystems.
- Ensure data solutions align with governance, security, compliance, and enterprise architecture standards.
- Build automated data pipelines to support scheduled and real-time production workloads.
- Deliver production-ready data services, APIs, and reusable data assets for business and engineering teams.
- Implement data quality, validation, and integrity controls through testing, monitoring, and automation.
- Support migration and optimisation of legacy data processes into scalable, enterprise-grade solutions.
- Embed quality assurance practices throughout the data engineering lifecycle, ensuring all deliverables meet Definition of Done standards.
- Contribute to data observability, troubleshooting, incident resolution, and continuous platform improvement.
- Partner with Platform, Full Stack, AI, and business teams to deliver integrated data capabilities.
- Support Agile and sprint-based delivery models, contributing to iterative product development.
- Promote reusable data engineering patterns and engineering best practices across projects.
- Maintain technical documentation and contribute to data governance and operational processes.
- Proven experience designing, building, and maintaining enterprise data platforms and data pipelines.
- Strong expertise in ETL/ELT processes, data integration, and data modelling techniques.
- Advanced SQL and Python programming skills.
- Experience with Azure data services, including Azure SQL, Blob Storage, Microsoft Fabric, or equivalent cloud data technologies.
- Experience working with modern data processing frameworks and scalable data architectures.
- Strong understanding of data governance, validation, versioning, and quality management principles.
- Experience delivering production-ready, scalable data solutions.
- Familiarity with APIs and data services integration.
- Knowledge of monitoring, observability, and operational support for data platforms.
- Strong analytical and problem-solving capabilities.
- Experience working within Agile delivery frameworks and sprint-based environments.
- Ability to collaborate effectively across engineering, AI, platform, and business teams.
- Excellent communication and technical documentation skills.
- Commitment to continuous learning and adoption of emerging data and AI technologies.
Create a free Caio profile to unlock more results and save your role and location preferences.
Unlock free search
Want help applying to roles like this?
Search Caio for free. If CV tailoring and application tracking get heavy, Full Caio Agent adds a human specialist.
View Full Agent