Architect, Data & Analytics Engineering

Little Caesars PizzaDetroit, MI
Remote

About The Position

Build a Bigger, Better, Bolder Future: Imagine working for a company that measures its success based off the growth of its colleagues, a company that invests in its future by investing in you. Little Caesars is a company where our colleagues make an impact. Your Mission: Little Caesars is seeking a forward-thinking Data & Analytics Architect to define and lead the evolution of our enterprise Data & AI Platform. This role sits at the intersection of business strategy and technology, responsible for enabling scalable, governed, and AI-ready data capabilities across the enterprise. You will architect a modern, cloud-based data platform, establish data-as-a-product practices, and enable self-service analytics and AI/ML use cases for both internal stakeholders and franchise partners. This role goes beyond traditional data architecture, focusing on building a platform that powers real-time insights, advanced analytics, and next-generation AI experiences.

Requirements

  • Bachelor’s degree in computer science, data analytics, data science or related field. Relevant experience may be considered in lieu of formal degree.
  • 8+ years of experience in data architecture, data engineering, or analytics engineering, with increasing scope and ownership.
  • Proven experience designing and implementing modern cloud-based data platforms (AWS, Azure, or Google Cloud).
  • Deep expertise in data modeling (dimensional, normalized, and domain-driven design).
  • Strong experience with SQL and modern data transformation frameworks (e.g., dbt or equivalent).
  • Hands-on experience with Lakehouse technologies (e.g., Databricks, Snowflake, BigQuery).
  • Experience implementing semantic/metrics layers and enabling consistent business definitions.
  • Strong understanding of data governance, cataloging, lineage, and data quality frameworks.
  • Experience with data observability and monitoring tools.

Nice To Haves

  • Masters degree in information technology, computer science, data analytics, data science or related field.
  • Familiarity with AI/ML data requirements, feature engineering, and enabling data for GenAI/LLM use cases.
  • Proven ability to translate business needs into scalable, reusable, and high-impact data solutions.
  • Strong communication and leadership skills, with experience influencing senior stakeholders.
  • Curious, innovative, and passionate about building next-generation data and AI capabilities.

Responsibilities

  • Define and evolve the enterprise Data & AI Platform architecture, spanning ingestion, transformation, storage, semantic modeling, and consumption layers.
  • Establish and scale Lakehouse architecture patterns (e.g., medallion, domain-oriented design).
  • Architect for AI/ML readiness, ensuring high-quality, well-governed data pipelines that support predictive analytics and generative AI use cases.
  • Design for real-time and event-driven data processing to support operational decision-making.
  • Be an evangelist for Dimensional Modeling best practices, ensuring assets in the consumption layer are intuitive, performant, at the appropriate grain, and scalable.
  • Lead the adoption of a data product operating model, enabling teams to own, publish, and manage trusted datasets.
  • Partner with business domains (e.g., operations, finance, franchisees) to define domain-driven data models and reusable data assets.
  • Establish standards for data discoverability, documentation, and usability across the organization.
  • Define and implement a scalable semantic / metrics layer to ensure consistent business definitions across BI, analytics, and AI use cases.
  • Enable self-service analytics by delivering curated, trusted datasets and scalable access patterns.
  • Partner with BI and analytics teams to optimize data consumption experiences across tools and platforms.
  • Establish and mature enterprise data governance frameworks, including data quality, lineage, cataloging, and stewardship.
  • Implement proactive data observability and monitoring to ensure reliability and trust in data products.
  • Design solutions with security standards at the forefront (e.g. principle of least privilege) to ensure data access reflects user needs.
  • Lead root cause analysis and resolution of data quality and integrity issues.
  • Define best practices for data pipeline development, including CI/CD, automated testing, and deployment.
  • Architect scalable batch and streaming data pipelines.
  • Optimize platform performance, reliability, and cloud cost efficiency.
  • Define standards for data sharing, including APIs, external data products, and partner integrations.
  • Stay ahead of emerging trends in data, analytics, and AI, including GenAI and LLM-powered applications.
  • Lead proof-of-concepts and technology evaluations, making recommendations on tools and platforms.
  • Play a key role in vendor/platform selection and ecosystem strategy.
  • Develop, maintain, and document customer data management processes and strategies, models and designs.
  • Act as a trusted advisor to technology and business leadership on data strategy and architecture.
  • Communicate complex technical concepts clearly to non-technical stakeholders.
  • Lead cross-functional initiatives and influence teams without direct authority.
  • Champion a culture of data-driven decision-making and continuous improvement.

Benefits

  • medical, dental, and vision insurance
  • 401(k) with company match
  • paid holidays
  • paid time off
  • legal and counseling services
  • flexible spending accounts
  • disability and adoption benefits
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