Senior Data Engineer - Azure Fabric & PySpark Remote
About the Role
We are seeking a Senior Data Engineer to join our team remotely. In this role, you will be pivotal in our data transformation initiative, migrating from SQL Server to Microsoft Fabric while building advanced BI dashboards powered by ML models. This Senior Data Engineer remote position offers the chance to work in a fully remote environment with a collaborative team.
What You'll Do
- Support the migration of data from SQL Server to Microsoft Fabric (Lakehouse/Warehouse).
- Build and maintain data pipelines using PySpark.
- Assist in designing data models for analytics and reporting.
- Develop Power BI dashboards and reports to visualize data insights.
- Work with ML models to enable predictive analytics and improve decision-making.
- Ensure data quality and performance of pipelines to meet business needs.
Requirements
- 3–6 years of experience in data engineering.
- 2–3 years of experience with Microsoft Fabric / Azure Data Platform (or Synapse).
- 2–4 years of hands-on experience with PySpark.
- Strong SQL skills and experience with SQL Server.
- Experience with Power BI for data visualization.
- Basic exposure to ML concepts (Python, etc.).
Nice to Have
- Experience in cloud data warehousing solutions.
- Knowledge of data governance and data quality best practices.
- Familiarity with Agile methodologies.
What We Offer
- Opportunity to work on a modern Fabric + AI data platform.
- Potential for career growth into senior or architect roles.
- Fully remote, flexible work environment.
- Collaborative team culture with a focus on innovation.
- Competitive salary with performance-based bonuses.
This Senior Data Engineer role offers a unique opportunity to work with cutting-edge technologies in a fully remote environment, promoting both personal and professional growth.
Generating success profile...
Analyzing job requirements and market data
Loading market overview...
Analyzing market trends and skill demands
Industry News
Loading latest industry news...
Finding relevant articles from the last 6 months