

Xinova Group
Principle Data Engineer
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Principal Data Engineer with a contract length of "Unknown" and a pay rate of "$10 billion in revenue." Key skills include AWS/Azure/GCP, Spark, Python, SQL, and leadership. Experience in consumer goods and data architecture is required.
🌎 - Country
United States
💱 - Currency
$ USD
-
💰 - Day rate
80
-
🗓️ - Date
December 5, 2025
🕒 - Duration
Unknown
-
🏝️ - Location
Unknown
-
📄 - Contract
Unknown
-
🔒 - Security
Unknown
-
📍 - Location detailed
New York City Metropolitan Area
-
🧠 - Skills detailed
#Snowflake #Data Engineering #Scala #DevOps #Data Storage #Kubernetes #Monitoring #Spark (Apache Spark) #Cloud #Azure #R #SQL (Structured Query Language) #Data Strategy #Storage #Strategy #Datadog #Delta Lake #Prometheus #AWS (Amazon Web Services) #Airflow #GitHub #Grafana #Forecasting #Databricks #Data Quality #Data Pipeline #Python #Leadership #"ETL (Extract #Transform #Load)" #GCP (Google Cloud Platform) #Observability #Code Reviews #GitLab #Terraform #Docker #Data Architecture
Role description
Job Title: Principal Data Engineer
Fortune 500 Consumer Goods Business
$10 Billion in Revenue / 10k Employees
Stock prices rising
Summary
The Principal Data Engineer shapes the data backbone that drives innovation in the consumer goods industry. This role leads the design of scalable data platforms that power everything from supply chain optimisation to demand forecasting, digital commerce, and consumer insights. As a strategic technical leader, you’ll enable the organisation to unlock smarter decision-making, faster product innovation, and a deeper understanding of consumer behaviour.
Key Responsibilities
• Lead the architecture and delivery of modern data platforms that support end-to-end consumer goods operations.
• Establish high-impact engineering standards for data quality, governance, performance, and experimentation.
• Collaborate with supply chain, marketing, sales, R&D, and analytics teams to translate business goals into scalable data solutions.
• Inspire, mentor, and elevate data engineering teams, fostering a culture of curiosity, craftsmanship, and continuous improvement.
• Drive adoption of cutting-edge data technologies enabling real-time insights, demand forecasting, route optimisation, and omnichannel analytics.
• Ensure secure, reliable, and high-performing data ecosystems critical to manufacturing, logistics, and consumer engagement.
• Champion data as a strategic asset and influence long-term data strategy across the organisation.
Role Functions
• Provide visionary technical leadership in data architecture, modern lakehouse design, and data platform strategy.
• Design and oversee complex data models spanning products, inventory, marketing, consumers, e-commerce, and retail partners.
• Evaluate, select, and roll out tools that accelerate experimentation and insight generation across the business.
• Guide engineering decisions, code reviews, and solution design across multiple squads.
• Partner with cross-functional leaders to build resilient, automated, and insight-rich data flows.
• Own standards for CI/CD, observability, and high-scale data pipeline reliability across global operations.
Typical Tech Stack
• Cloud: AWS / Azure / GCP
• Compute/ETL: Spark, Databricks,
• Orchestration: Airflow, Prefect,
• Data Storage: Delta Lake, Snowflake, Lakehouse architectures
• Languages: Python, SQL, Scala
• DevOps: Docker, Kubernetes, Terraform, CI/CD (GitHub Actions, GitLab CI)
• Monitoring: Prometheus, Grafana, CloudWatch, Datadog
Job Title: Principal Data Engineer
Fortune 500 Consumer Goods Business
$10 Billion in Revenue / 10k Employees
Stock prices rising
Summary
The Principal Data Engineer shapes the data backbone that drives innovation in the consumer goods industry. This role leads the design of scalable data platforms that power everything from supply chain optimisation to demand forecasting, digital commerce, and consumer insights. As a strategic technical leader, you’ll enable the organisation to unlock smarter decision-making, faster product innovation, and a deeper understanding of consumer behaviour.
Key Responsibilities
• Lead the architecture and delivery of modern data platforms that support end-to-end consumer goods operations.
• Establish high-impact engineering standards for data quality, governance, performance, and experimentation.
• Collaborate with supply chain, marketing, sales, R&D, and analytics teams to translate business goals into scalable data solutions.
• Inspire, mentor, and elevate data engineering teams, fostering a culture of curiosity, craftsmanship, and continuous improvement.
• Drive adoption of cutting-edge data technologies enabling real-time insights, demand forecasting, route optimisation, and omnichannel analytics.
• Ensure secure, reliable, and high-performing data ecosystems critical to manufacturing, logistics, and consumer engagement.
• Champion data as a strategic asset and influence long-term data strategy across the organisation.
Role Functions
• Provide visionary technical leadership in data architecture, modern lakehouse design, and data platform strategy.
• Design and oversee complex data models spanning products, inventory, marketing, consumers, e-commerce, and retail partners.
• Evaluate, select, and roll out tools that accelerate experimentation and insight generation across the business.
• Guide engineering decisions, code reviews, and solution design across multiple squads.
• Partner with cross-functional leaders to build resilient, automated, and insight-rich data flows.
• Own standards for CI/CD, observability, and high-scale data pipeline reliability across global operations.
Typical Tech Stack
• Cloud: AWS / Azure / GCP
• Compute/ETL: Spark, Databricks,
• Orchestration: Airflow, Prefect,
• Data Storage: Delta Lake, Snowflake, Lakehouse architectures
• Languages: Python, SQL, Scala
• DevOps: Docker, Kubernetes, Terraform, CI/CD (GitHub Actions, GitLab CI)
• Monitoring: Prometheus, Grafana, CloudWatch, Datadog






