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Bizi Digital logo
Bizi Digital

Paid Traffic Agency

Principal Data and Analytics Engineer

Analytics EngineerAnalytics EngineerOtherRemoteLeadTeam 1-10H1B No SponsorCompany SiteLinkedIn

Location

Colorado

Posted

108 days ago

Salary

$108.1K - $180.1K / year

Seniority

Lead

Bachelor Degree3 yrs expEnglishAirflowBigQueryGCPApache KafkaPythonScalaSQL

Job Description

Principal Data and Analytics Engineer

Bizi Digital

• Help define and evolve enterprise data engineering blueprints, including data mesh, medallion architecture, and hybrid cloud data platforms. • Set strategic direction for data platforms, tools, and services (e.g., Snowflake, GCP BigQuery, dbt, Kafka, Airflow/Prefect) in alignment with future-state architecture and business priorities. • Architect and design highly scalable, resilient, cost optimal and secure data platforms. • Lead the design and implementation of next-generation data platforms, ensuring fault tolerance, high availability, and optimal performance for petabyte-scale data. • Establish and enforce organization-wide best practices for data pipeline development, CI/CD for data workflows, automated deployment playbooks, and robust rollback strategies. • Lead technology evaluation and adoption, proactively researching, evaluating, and championing the integration of cutting-edge data technologies, frameworks, and methodologies. • Define and scale enterprise knowledge management frameworks that ensure consistent documentation, discoverability, and reusability of data assets across domains. • Establish and govern standards for metadata management, data lineage, architectural diagrams, and runbooks. • Lead the design of federated governance models that empower domain-aligned teams to operate autonomously while conforming to centralized policies, frameworks and playbooks. • Collaborate with data governance, compliance, and security teams to operationalize policy-as-code frameworks for data retention, access control, and PII handling. • Advocate for and enable self-service knowledge discovery through tightly integrated cataloging tools (e.g., Alation, Collibra) and automated documentation generators. • Ensure robust documentation and versioning standards are embedded in CI/CD workflows for pipeline code, transformation logic, and schema changes. • Architect implementation of scalable, automated data quality frameworks that evaluate data at rest and in motion spanning completeness, timeliness, consistency, accuracy, and integrity. • Lead integration of data quality rules, metrics, and health indicators directly into orchestration layers (e.g., Prefect, Airflow) and transformation frameworks (e.g., dbt). • Evangelize a culture of data trust and transparency by integrating data quality insights into user-facing dashboards, alerts, and product health reports. • Identify and promote enterprise-wide data opportunities through thought leadership, white papers, reference architectures, and innovation labs. • Act as technical advisor to senior executives on data modernization, AI readiness, and platform consolidation strategies. • Serve as a strategic translator between complex business challenges and modern data architecture by leading domain-level and cross-domain data product strategy engagements. • Lead the design of enterprise-grade data products that align with OKRs, business transformation goals, and operational needs ensuring value realization across functional areas like supply chain, marketing, store ops, or customer satisfaction. • Architect and operationalize a unified enterprise-wide semantic layer, metrics store, and business logic abstraction that powers dashboards, self-service analytics, and machine-readable APIs. • Lead initiatives to unify KPIs, standardize metric definitions, and streamline business logic through reusable models. • Design composable data assets and feature stores that enable real-time and offline access patterns for ML models, AI agents, and decision orchestration systems. • Lead readiness initiatives for integrating data systems with LLM-powered agents and copilots, ensuring robust grounding data, latency optimization, and lineage tracking. • Drive innovation in analytics automation, including anomaly detection, agent-triggered insights. • Serve as champion for complex analytics transformations, ensuring technical feasibility, business value realization, and adoption. • Drive culture change around data stewardship and accountability by embedding governance responsibilities into platform tooling and engineering workflows. • Lead internal communities of practice, workshops, and code reviews to disseminate modern data practices. • Mentor senior engineers across data and analytics engineering, elevating technical acumen and architectural judgment. • Influence hiring and team design decisions, supporting the scaling of high-performing, and collaborative data teams. • Represent the organization in external forums (conferences, meetups, technical alliances) and establish credibility as an industry thought leader.

Job Requirements

  • Proven experience architecting enterprise-scale data platforms and ecosystems, including hybrid and cloud-native environments (e.g., GCP BigQuery, Snowflake, Iceberg, Advanced SQL, Erwin, dbt, Kafka, Alation, Collibra)
  • Deep expertise in designing and scaling highly available, secure, and fault-tolerant batch and streaming pipelines with strong emphasis on cost optimization, observability, and latency control.
  • Advanced proficiency in semantic modeling, reusable data asset design, and cross-functional data product delivery aligned to medallion architecture.
  • Leadership in implementing CI/CD-enabled pipelines, RBAC frameworks, schema evolution strategies, and interoperable data exchange using Iceberg or equivalent table formats.
  • Ownership of organization-wide metrics store and semantic layers, ensuring consistency, governance, and performance across reporting, AI, and ML use cases.
  • Advanced expertise in programming languages such as Python, Scala, with the ability to architect complex data solutions.
  • Demonstrated leadership in designing and overseeing the implementation of scalable, idempotent workflows using orchestration frameworks such as Airflow and Prefect.
  • Demonstrated ability to translate business transformation goals into scalable data solutions and reusable patterns.
  • Deep understanding of business processes, KPIs, and capability maps across functions such as supply chain, customer, store ops, and finance.
  • Proven experience in driving cross-functional data product prioritization, influencing senior stakeholders, and quantifying impact of data initiatives.
  • Experience shaping enterprise-wide data strategy by defining the long-term technical vision and architectural evolution roadmap across platforms, domains, and business units driving adoption of scalable, and governed data products.
  • Experience leading platform modernization, tool evaluation, and architecture standardization across business domains.
  • Expert competency in analytical and problem-solving that is crucial for identifying and resolving issues.
  • Expertise in defining and enforcing enterprise-level data governance, metadata standards, and policy-as-code frameworks.
  • Led the design and deployment of automated data quality management systems across ingestion, transformation, and consumption layers.
  • Drive strategic KPI standardization by partnering with stakeholders, data stewards, and product teams to architect reusable semantic layers and metric definitions that enable trustworthy insights and LLM agent reasoning.

Benefits

  • Competitive Wages & Paid Time Off
  • Stock Purchase Plan & 401k with Employer Contributions Starting Day One
  • Medical, Dental, & Vision Insurance with Optional Flexible Spending Account (FSA)
  • Team Member Health/Wellbeing Programs
  • Tuition Educational Assistance Programs
  • Opportunities for Career Growth

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