Senior Data Engineer (Snowflake and DBT)
Location
United States
Posted
2 days ago
Salary
Not specified
Seniority
Senior
Job Description
PROJECT OVERVIEW
Our client, a leading global provider of high-quality food products, including well-known brands and value-added premium products, is seeking a Data Engineer to support the development and evolution of a modern cloud data platform built on Snowflake. The role will focus on building scalable data pipelines, supporting platform migration from Dataiku to DBT, and enabling high-quality data for analytics and business intelligence.
IN THIS ROLE, YOU WILL
Design and develop data pipelines and transformation workflows using DBT.
Build and optimize data models within Snowflake to support analytics and reporting.
Support the migration of orchestration and transformation processes from Dataiku to DBT.
Develop integrations between enterprise systems including CRM platforms and analytics environments.
Ensure data quality, consistency, and reliability across the data platform.
Implement and maintain data transformation best practices and coding standards.
Produce clear technical documentation for pipelines, models, and processes.
Collaborate with BI engineers, PM/BA, and Data Architects on platform design and improvements.
Proactively identify performance issues and optimize data pipelines.
IF YOU ARE
4+ years of experience in data engineering or data platform development.
Strong experience with Snowflake.
Hands-on experience with DBT for data transformations.
Advanced SQL skills and experience designing data models.
Experience building ETL/ELT pipelines in modern data platforms.
Familiarity with data integration patterns and enterprise system integrations.
Experience working in collaborative analytics engineering environments.
Ability to work with distributed teams with at least 4 hours overlap with US time zones.
AS AN OPINOV8R, YOU WILL HAVE
Digital-First Approach: Great talent knows no borders! You can work from wherever you are — we hire and collaborate with professionals worldwide.
Remote Work Model: Balance your professional and personal life with our flexible working conditions, empowering you to deliver your best from anywhere.
Exciting Projects: Dive into impactful projects across industries that challenge and spark creativity.
Boost Your Expertise: Grow your career with continuous learning, development opportunities, and hands-on experience.
Join the Best Team Ever: Collaborate with our diverse and cross-cultural team of passionate technologists and creative thinkers.
HOW’S THE HIRING PROCESS GOING
We strive to make our hiring process smooth and transparent to find the perfect match for both sides. Steps may differ depending on the role, but here’s what to expect:
Initial Interview: If your background fits the role, we’ll invite you for an interview with a Talent Acquisition Specialist.
Technical Interview: Depending on the position, you may complete a technical assessment or test task.
Client Interview
Final Decision: After all steps, we’ll get back to you with the result and next steps.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
The role involves partnering with leaders to translate requirements into secure, scalable cloud architectures, defining target-state designs for governed data movement from OT networks into Databricks. Responsibilities include architecting data pipelines, designing data layers aligned with Databricks governance, and defining AWS security controls.
Data Engineer II – Real-Time Behavioral Analytics
DICK'S Sporting GoodsYOU LIVE AND BREATHE SPORTS. SO DO WE.
Data Engineer II responsible for delivering real-time behavioral analytics at DICK'S Sporting Goods
Senior Data Engineer
QuantiphiPioneering AI-first solutions, solving complex business challenges through expertise, cloud, data engineering, and AI.
Senior Data Engineer designing scalable data pipelines for AI-driven company
Data Engineer (Job ID #225)
Cascade Financial ServicesServing the American Dream through Attainable Home Ownership
The role involves applying an in-depth understanding of data structures to select, deploy, and manage systems for data processing pipelines, focusing on enterprise Master Data integration. Responsibilities also include designing data models and architecture for new data platforms to support analytics, data science, and machine learning initiatives.



