Data Engineer

OrderYOYO
Manchester
6 days ago
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Mission

Scale OrderYOYO’s data ecosystem into a true single source of truth that supports executive reporting, merchant insights, finance automation, and AI/ML use cases — built on our Azure-centric stack and evolving toward a Lakehouse and semantic layer direction.


Your Core Impact

  • Design the Lakehouse: Build and own our unified data lake foundations, focusing on scalable ingestion, lifecycle management, and optimised access patterns.
  • Build the Semantic Layer: Implement “metrics-as-code” so KPIs like GMV and CAC are defined once and trusted everywhere.
  • Engineer Robust Pipelines: Develop high-availability ETL/ELT flows across microservices, PSP/payment gateways, and CRM/Finance tools.
  • Enable Product Innovation: Partner with AI/ML engineers to deliver clean, feature-grade datasets powering merchant-facing insight products.
  • Operational Excellence: Retire redundant layers, optimise Azure costs, and implement rigorous data quality SLAs and lineage.

Who We Are

At OrderYOYO, company culture comes first.


We create a positive, inclusive environment where people are trusted to take ownership and do their best work. Personal development is central to how we operate — engineers are encouraged to grow technically, take responsibility, and help shape how our platforms evolve.


Passion

  • Action
  • Compassion
  • One Team

We help restaurants succeed online by providing branded websites, mobile apps, and tailored marketing solutions — giving them full control of their business and removing high third‑party commission fees.


Who You Are
The Technical Essentials

  • The Azure Specialist: Deep experience with Azure Data Lake, Azure SQL, Data Factory, and Power BI.
  • The DataOps & DevOps Advocate: Proficient with Git, CI/CD (Azure DevOps/GitHub Actions), and Infrastructure as Code (Terraform/Bicep).
  • The Agile Practitioner: Comfortable working in sprints; “done” means tested, documented, and deployed.
  • The Modeler: Strong SQL and dimensional modelling expertise (facts/dimensions, behavioural/event data).
  • The Coder: Proficient in Python for complex transformations, automation, and tooling.

Nice to Have

  • Experience with dbt or similar semantic layer tooling
  • FinTech / Payments background (reconciliation, PSP datasets)
  • Familiarity with event‑driven architectures and streaming data


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