About the Role:
Ryt Bank is seeking a highly motivated and enthusiastic a Senior Data Engineer, Analytics to bridge the gap between data engineering and analytics, focusing on building and maintaining scalable data models while enabling stakeholders to make data-driven decisions. You will be operating with a high level of autonomy, collaborating directly with product, business partners, and peer engineering teams to align on requirements and execute effectively in a fast-paced environment. You will work closely with experienced professionals, contribute to real-world projects, and develop essential skills for a successful career in the data engineering team.
Our engineering team thrives on collaboration, innovation, and a shared commitment to excellence. You will also have the opportunity to implement robust data, mentor junior engineers, and contribute to a culture of continuous learning and technical excellence.
If you're a passionate analytics engineer eager to make a difference, join us as we shape the future of technology together.
Key Responsibilities:
- Design, implement and maintain robust data models to support analytics, dashboards, and self-serve tools
- Architect and develop high quality data assets for business, analytics and regulatory reporting use cases
- Collaborate with stakeholders to understand business requirements and translate them to technical solutions
- Establish data modelling best practices, tooling, documentation and testing methodologies - ensuring models are highly maintainable and scales with complexity
- Lead technical design discussions and contribute to data architecture decisions - spotting opportunities to reduce complexity and cost
- Lead, guide and mentor team members on best practices - You will review the designs and work of engineers on the team and set a high bar for quality.
Qualifications:
- Strong passion for data modelling - SQL and data modelling are second nature to you
- Proven experience with dbt and modern data warehouse platforms (Snowflake, Redshift) - you are comfortable with general warehousing concepts
- Strong understanding of software engineering best practices and data engineering principles
- Experience implementing data quality monitoring and testing frameworks
- Ability to tackle complex problems from both technical and business perspectives
- Excellence in stakeholder communication and leading technical initiatives in a fast-paced environment
- Background in implementing metrics frameworks and data governance is a bonus
- Familiarity with AI/ML and their applications in analytics is a bonus
- Ability to think strategically about banking products / operations and how our underlying data models will unlock more insights and value for our customers is a bonus
Technology Stack We Use:
- Language: SQL, Python
- Orchestration: Airflow
- Transformation: dbt
- Warehousing: Greenplum
- Deployment: Docker, Kubernetes
Impact & Growth Opportunities:
- Lead critical data modelling initiatives that power company-wide analytics
- Shape data engineering practices and tooling decisions
- Mentor and grow other team members' technical capabilities
- Drive adoption of modern data solutions
- Influence data architecture and governance strategies
JR00000329