Sr. Data Architect
Role details
Job location
Tech stack
Job description
The Senior Data Architect is a strategic and hands-on leader responsible for designing and delivering YETI's next-generation data and AI architecture across retail, eCommerce, supply chain, and operations. This role will define scalable modern data platforms, domain-driven data models, and agentic AI capabilities leveraging cloud-native technologies (Azure and/or GCP), Databricks (including Agent Bricks), Google BigQuery, Google Vertex AI, SAP S/4HANA, SAP Datasphere, and Power BI., Enterprise Data & AI Architecture
- Define and lead enterprise data architecture aligned to YETI business priorities.
- Design modern Lakehouse and analytical architectures leveraging Databricks and/or Google BigQuery.
- Establish reusable architecture patterns (Medallion layers: Bronze/Silver/Gold, semantic layers, and data products).
- Create reference architectures and standards for batch, streaming, and near-real-time analytics and AI workloads.
Retail Domain Data Modeling
- Design and govern enterprise domain data models for key retail domains: Customer 360, Product & Merchandising, Orders & Fulfillment, Inventory, Supply Chain, and Finance.
- Apply domain-driven design (DDD) and data product concepts to improve reuse, ownership, and scalability.
- Align SAP and non-SAP canonical models and definitions to drive consistent KPIs and interoperable analytics.
Cloud & Platform Architecture (Azure and/or GCP)
- Architect secure, scalable data platform solutions on Azure and/or GCP (storage, compute, networking, and identity).
- Define cross-platform patterns for coexistence and integration between Databricks and BigQuery where applicable.
- Partner with security and infrastructure teams to implement network isolation, secrets management, and compliance controls.
Data Ingestion & Integration Frameworks
- Design ingestion frameworks for batch, CDC, and streaming/event-driven integration.
- Establish integration patterns for SAP S/4HANA and SAP BDC Datasphere into data platform.
- Define standards for API ingestion, file ingestion, incremental loads, schema evolution, and observability.
AI Strategy & Agentic AI (Agent Bricks / AI Agents)
- Partner with leadership to define data strategy and AI strategy, including the roadmap for scalable GenAI and agentic capabilities.
- Architect and support the development of AI agents using Databricks Agent Bricks, including RAG patterns and tool orchestration.
- Define governance patterns for AI agents (identity, permissions, auditing, cost attribution, and guardrails) aligned with enterprise policies.
Data Governance & Data Quality
- Implement enterprise data governance frameworks (e.g., Unity Catalog and complementary tooling) for access control, lineage, and auditability.
- Define and operationalize data quality frameworks: validation rules, monitoring, alerting, and SLA-driven pipelines.
- Establish standards for metadata management, data contracts, and stewardship across domains.
Analytics & BI Enablement (Power BI)
- Lead the architectural enablement of self-service analytics using Power BI and curated semantic models.
- Standardize KPI definitions and calculation logic to ensure consistent reporting across regions and functions.
- Partner with business stakeholders to deliver executive dashboards and operational reporting with trusted metrics.
Leadership & Collaboration
- Influence and align cross-functional teams (IT, Data Engineering, Analytics, Security, and Business) on architecture standards and priorities.
- Mentor engineers and analysts; raise platform maturity through best practices, design reviews, and documentation.
- Drive adoption of platform capabilities through enablement, patterns, and reusable accelerators.
Requirements
Do you have experience in Systems integration?, * 10+ years of experience in data architecture, data engineering, and analytics.
- Strong hands-on architecture experience with cloud platforms (Azure and/or GCP).
- Deep experience designing and implementing Databricks Lakehouse architectures.
- Experience with Google BigQuery enterprise warehouse technologies.
- SAP S/4 integration experience with Databricks and BigQuery.
- Proven ability to create retail-specific enterprise domain data models and canonical data definitions.
- Expertise in ingestion frameworks (batch/CDC/streaming), data pipeline observability, and performance optimization.
- Strong experience with data governance and data quality frameworks (policies, controls, stewardship, monitoring).
- Experience with enterprise BI tools, including Power BI.
- Demonstrated experience contributing to data strategy and/or AI strategy, including delivery roadmaps and measurable outcomes., * Experience with Databricks Agent Bricks AI capabilities.
- Experience with retail/eCommerce analytics (Customer 360, omnichannel metrics, merchandising, fulfillment, inventory optimization).
- Experience with data product or data mesh operating models.
- Experience with event-driven architectures and modern integration patterns for SaaS ecosystems.
- Experience building or architecting AI agents (LLM-based workflows), including RAG and tool integration patterns.