Senior Data Engineer
Listed on 2026-01-12
-
IT/Tech
Data Engineer, Data Analyst, Data Science Manager, Cloud Computing
Overview
Job Description: The Senior Data Engineer will support the development, maintenance, optimization, and use of the Company’s data infrastructure. This role is looking for a collaborative, well-rounded professional with expertise in building scalable data solutions and enabling data-driven insights. As a key member of the growing data team, the Senior Data Engineer will have significant opportunities to shape the Company’s data platform, drive innovation, and support advanced analytics and AI/ML initiatives.
This role will require 3–5 years of experience in data engineering, with a strong preference for expertise in Snowflake. Experience with SQL Server, Azure-based cloud environments, and integrating data across custom in-house systems and third-party SaaS applications is highly valued.
Primary Responsibilities- Data Architecture and Modeling:
Design, build, and maintain scalable data models, pipelines, and integrations to ensure data reliability and availability. - Data Pipeline Development:
Develop, optimize, and automate pipelines in Snowflake on Azure; maintain and enhance existing SSIS-based ETL processes where needed. - Data Warehouse Management:
Manage and optimize Snowflake environments, ensuring performance, scalability, and cost efficiency. - Snowflake Advanced Capabilities:
Leverage the full suite of Snowflake tools (e.g., semantic modeling, data sharing, Snowpark, and integration with AI/ML platforms) to support advanced analytics, predictive modeling, and enterprise reporting. - Cloud & Infrastructure Support:
Deploy, monitor, and maintain data systems in Azure, including integrations with Data Factory, Data Lake, and related services. - Application Integration:
Develop and maintain data flows across custom-built applications and SaaS platforms to ensure data consistency and usability. - Data Governance & Quality:
Establish and enforce standards for data quality, security, compliance, and lineage; support development and use of comprehensive semantic models. - Cross-Team
Collaboration:
Partner with business stakeholders, analysts, and data scientists to deliver accessible, reliable data for decision-making. - Innovation & Best Practices:
Research and recommend adoption of emerging tools (e.g., dbt, Airflow) to strengthen our data ecosystem.
- 5+ years of experience in data engineering or a closely related field.
- Expertise with Snowflake (design, development, and performance optimization).
- Expertise in data modeling, governance, and quality best practices.
- Hands-on experience with Azure services (Data Factory, Data Lake, Synapse, etc.).
- Advanced proficiency in SQL, Python, and Power BI.
- Familiarity with SQL Server/SSIS for developing and maintaining ETL processes.
- Experience integrating custom applications and third-party SaaS platforms into enterprise data environments.
- Excellent communication and collaboration skills across technical and business teams.
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).