Job Description
Full-time, Direct Hire
Remote - East Coast Preferred
Our client is an established logistics and industrial services company seeking a
Mid-Level Data Engineer
. In this role, you will modernize and scale data infrastructure across operations, finance, and business intelligence, converting raw operational data into trusted, scalable analytics assets.
Ideal candidates will have a background in industrial environments as an individual contributor and are passionate about flawless data.
- Role Type: Mid-Level Data Engineer (3–6 years experience)
- Core Tech Stack: Azure (Data Factory, Data Lake, Databricks), SQL, Power BI
- Domain: Fleet maintenance, supply chain, and field service operations
Core Responsibilities
- Data Pipelines \& ETL: Design, build, and maintain production-grade pipelines (ADF, Databricks, SQL) to ingest data from ERP, CRM, and financial systems.
- Data Modeling: Build optimized dimensional models, star schemas, and data marts within Azure Data Lake and data warehouses.
- BI Integration: Prepare and optimize trusted datasets, semantic models, and queries for high-performing Power BI dashboards.
- Data Quality \& Governance: Implement validation checks, resolve data integrity issues, and fully document pipelines and business logic.
- Performance Tuning: Monitor and optimize SQL queries, pipeline processing times, and report responsiveness.
Required Qualifications
- Experience: 3–6 years of data engineering, ETL development, or BI engineering experience.
- Education: Bachelor’s degree in CS, IT, Data Analytics, Engineering, or equivalent experience.
- SQL Mastery: Advanced proficiency in SQL (query optimization, stored procedures, joins, and indexing).
- Cloud \& Pipeline Tools: Hands-on experience building production pipelines using Azure Data Factory, Azure Databricks, SSIS, or Python.
- Data Modeling: Solid understanding of dimensional modeling and data warehouse architecture.
- Power BI: Experience preparing datasets, managing refresh schedules, and supporting dashboards.
- Soft Skills: Ability to gather requirements from business stakeholders and translate them into data solutions.
Preferred Qualifications
- Industry Experience: Background in transport, logistics, fleet maintenance, distribution, or field/industrial services.
- Advanced Tech: Experience with Python, PySpark, Spark SQL, Delta Lake, Synapse, Fabric, or Snowflake.
- Business Systems: Experience integrating data from Microsoft Dynamics 365 or specialized industrial ERP platforms.
- Data Types: Familiarity with operational data (work orders, asset tracking, inventory, labor, billing, and customer contracts).
- Integrations: Experience with APIs, SFTP, and flat-file ingestion.
Technical Environment Summary
- Cloud/Data Platforms: Azure Data Lake, Azure Data Factory, Azure Databricks, Azure Synapse, Microsoft Fabric, Snowflake
- Languages \& BI: SQL, Python, PySpark, Power BI (DAX, semantic models)
- Target Systems: Microsoft Dynamics 365, specialized industrial ERPs, CRM, and APIs
- Workflows: Git, DevOps, automated monitoring, and alerting tools
Looking for more opportunities?
Browse thousands of graduate jobs and entry-level positions.