Cargill

Principal, Data Engineering

Cargill$120K — $160K *
Information Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • 6+ years of relevant work experience; typically reflects 10+ years.
  • Expertise in defining technical direction and establishing best practices.
  • Strong operational excellence mindset focused on reliability and performance.
  • Proficient in strategic decision-making regarding technical and architectural choices.
  • Deep knowledge of cloud-based data warehouses and data lakes, particularly with Snowflake and AWS.
  • Experienced in data ingestion tools like Kafka and AWS Glue, and storage formats like Iceberg.
  • Hands-on experience with streaming architectures and tools like Flink and Kafka.

Responsibilities

  • Lead design and development of data pipelines for efficient data movement.
  • Influence construction and optimization of scalable data infrastructure.
  • Identify improvement opportunities for data format usability and accessibility.
  • Cultivate stakeholder relationships to align data solutions with organizational needs.
  • Develop and implement advanced data products using cloud technologies.
  • Drive standards and prototypes for data frameworks to enhance processing efficiency.
  • Build automated reporting systems for timely insights and data-driven decisions.

Benefits

  • Opportunities for professional development and training.
  • Collaborative work environment with cross-functional teams.
  • Access to cutting-edge technology and tools in data engineering.
  • Flexible work arrangements to promote work-life balance.
Full Job Description
Job Summary

The Principal, Data Engineering job provides thought leadership in the execution of strategic plans related to design, development and maintenance of robust data systems. As a recognized subject matter expert in the field, this job leads the development of efficient processing and availability of data for analysis and reporting.

Essential Functions

  • DATA PIPELINES: Provides thought leadership on the design and development of data pipelines that facilitate the movement of data from various sources to internal databases.
  • DATA INFRASTRUCTURE: Influences the construction and optimization of data infrastructure, providing appropriate data formats to ensure data readiness for analysis.
  • DATA FORMATS: Examines and sees improvement opportunities for appropriate data formats to optimize data usability and accessibility across the organization.
  • STAKEHOLDER MANAGEMENT: Cultivates positive relationships and partners to understand data needs and encourage alignment with organizational objectives.
  • DATA SYSTEMS: Develops and guides the implementation of data products and solutions using advanced engineering and cloud-based technologies, ensuring they are designed and built to be scalable, sustainable, and robust.
  • SOLUTIONS DEVELOPMENT: Leads efforts to improve the development of technical products and solutions driving big data and cloud-based technologies, ensuring they are designed and built to be scalable, sustainable, and robust.
  • DATA FRAMEWORKS: Drives development standards and brings forward prototypes to test new data framework concepts and architecture patterns supporting efficient data processing and analysis and promoting standard methodologies in data management.
  • AUTOMATED REPORTING SYSTEMS: Builds automated reporting systems that provide timely insights and facilitate data driven decision making.
  • DATA MODELING: Provides thought leadership on data modeling and preparation of data in databases for use in various analytics tools and to develop data pipelines to move and improve data assets.


Qualifications

  • Minimum requirement of 6 years of relevant work experience. Typically reflects 10 years or more of relevant experience.


Preferred Qualifications:
  • ARCHITECTURAL LEADERSHIP: Defines long-term technical direction, establishes best practices, and ensures solutions are scalable, maintainable, and aligned with enterprise strategy.
  • OPERATIONAL EXCELLENCE MINDSET: Champions reliability, observability, and performance, ensuring data systems meet high standards for availability and quality.
  • STRATEGIC DECISION MAKING: Evaluates competing priorities such as speed, cost, risk, and flexibility to make sound technical and architectural decisions.
  • CLOUD DATA PLATFORMS: deep expertise implementing cloud-based data warehouses, data lakes, and open table formats in large-scale production environments. Has hands-on experience with technologies such as Snowflake, AWS, and open lake house ecosystems.
  • DATA INGESTION: Demonstrated proficiency in data collection, ingestion tools (Kafka, AWS Glue), and storage formats (Iceberg, Parquet)
  • DATA STREAMING: Experience developing data pipelines with streaming architectures and tools (Kafka, Flink).
  • DATA TRANSFORMATION: Strong background with using Spark for data transformation, including streaming, performance tuning, and debugging with Spark UI.
  • DEVOPS: Extensive experience in DevOps practices, including code management, CI/CD, and deployment strategies.


This role is located in our Atlanta, GA office. The business will not sponsor applicants for work visas for this position.

#LI_NS7

About Cargill

Industry
Founded
1865

Similar Jobs

More Jobs at Cargill

More Information Technology Jobs

Find similar Principal, Data Engineering jobs: