Senior IT Data Engineer - Python/SQL (Onsite)

Tyson Foods, Inc.Springdale, AR
Onsite

About The Position

The Senior IT Data Engineers are experts in data streaming, building data pipelines that support real-time data refreshes and are cost-optimized for computing resources. They deeply understand data security, implementing row-level and column-level security measures. This role typically involves leading the implementation of complex projects, using advanced big data technologies, and ensuring robust data pipeline orchestration across multiple systems.

Requirements

  • Bachelor's Degree or relevant experience.
  • 3+ years of relevant and practical experience.
  • Expert proficiency in Python and SQL for data engineering at scale.
  • Expertise in modern data platforms (Databricks, Snowflake, BigQuery), lakehouse architectures (Delta Lake, Iceberg), and streaming (Kafka, Flink, Pub/Sub).
  • Deep expertise in at least one major cloud platform with cross-cloud awareness.
  • Mastery of orchestration, transformation (dbt), containerization (Docker, K8s), and IaC (Terraform).
  • Advanced enterprise data modeling, warehousing, data contracts, and API design.
  • Expertise in CI/CD, data observability, governance, data mesh, and platform reliability.
  • Experience in technical roadmap ownership, build-vs-buy evaluation, and budget/capacity planning.
  • Expert-level knowledge of agentic AI architectures, LLMOps, RAG, knowledge graphs, and AI governance/safety/security.
  • Leadership: Owning and driving data and AI strategy across the organization.
  • Strategic Vision: Translating business objectives into actionable technical roadmaps.
  • Stakeholder Management: Building relationships with partners and executive leadership.
  • Communication: Presenting complex data and AI concepts to board-level audiences.
  • Mentorship: Developing the data engineering team's data and AI competencies.
  • Decision-Making: Making high-impact choices on architecture, platforms, and investments.
  • Change Management: Guiding the organization through data and AI transformations.
  • Innovation & Thought Leadership: Driving industry best practices in data engineering, modeling, and agentic AI.
  • Negotiation: Balancing technical requirements with business needs and resource constraints.
  • The successful candidate(s) must be willing and able to perform the physical requirements of the job with or without a reasonable accommodation.

Nice To Haves

  • AWS Solutions Architect Professional, Google Professional Data Engineer, Azure Solutions Architect Expert, Databricks Certified Data Engineer Professional, or equivalent.

Responsibilities

  • Own and drive the overall data strategy, including the multi-quarter technical roadmap, platform architecture, and data engineering standards.
  • Architect end-to-end data solutions across cloud platforms (AWS, GCP, or Azure), setting standards for orchestration (Airflow, Dagster), transformation (dbt), streaming (Kafka, Flink), and storage (Delta Lake, Iceberg, Snowflake, BigQuery).
  • Own the enterprise data modeling strategy — crafting scalable models using dimensional, multi-dimensional, and advanced normalization techniques, with enterprise-wide documentation and metadata governance.
  • Define API design standards and data contracts to ensure reliable, well-governed interfaces between data producers and consumers.
  • Establish enterprise-level data governance, security, and compliance frameworks across all data and AI systems, including access controls, cataloging, and lineage.
  • Define and enforce CI/CD standards for data pipelines, containerized architectures (Docker, K8s), and infrastructure as code (Terraform).
  • Drive data observability practices and platform reliability at enterprise scale.
  • Drive build-vs-buy evaluations for data and AI tools, considering TCO, vendor lock-in, scalability, and organizational fit; manage vendor relationships.
  • Own or co-own infrastructure budget and capacity planning for data platform resources; optimize cloud costs at the organizational level.
  • Define and drive the organization's agentic AI strategy, architecting enterprise- scale multi-agent systems, autonomous data pipelines, and RAG/knowledge graph platforms.
  • Establish AI governance frameworks, including ethics policies, bias detection, safety guardrails, security standards (prompt injection, data exfiltration, PII), and compliance with emerging regulations (e.g., EU AI Act).
  • Establish LLMOps practices at scale — model deployment, prompt versioning, A/B testing, performance monitoring, drift detection, and cost optimization.
  • Design human-in-the-loop escalation paths for critical AI-driven decisions, ensuring appropriate oversight.
  • Lead AI platform evaluation and integration, including TCO analysis, data residency, and SLA requirements for agentic frameworks.
  • Set software engineering best practices — code review standards, design patterns, technical debt management, and documentation.
  • Advocate for and lead adoption of data mesh and data-as-a-product principles.
  • Mentor the engineering team on data engineering, data modeling, and AI best practices.
  • Perform other assigned job-related duties that align with our organization's vision, mission, and values and fall within your scope of practice.

Benefits

  • paid time off
  • 401(k) plans
  • affordable health, life, dental, vision and prescription drug benefits
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