Data Engineer Apply
Job Description
Job Description
Salary:
We have an immediate opportunity for an Entry to Mid-level Data Engineer to join our technology team. In this role, you will collaborate with other engineers, our internal product committee, and end-users to deliver high quality data solutions for large-scale property tax management. This position, and KE Andrews as a company, is geared towards individuals with a long-term outlook that want to turn a role into a career, not just work a job.
Responsibilities:
- Design, build, and maintain Python-based ETL pipelines to ingest, transform, and load data from a variety of sources.
- Write and optimize SQL-based ETL workflows and data transformations to support downstream analytics and reporting.
- Develop and manage data workflows within Databricks, including notebooks, jobs, and cluster configurations.
- Support and maintain data models and datasets consumed by Tableau, Alteryx, Hex and other BI tools.
- Monitor pipeline performance, troubleshoot data quality issues, and implement fixes as needed.
- Collaborate with analysts and business stakeholders to understand data needs and translate them into engineering solutions.
- Participate in requirements discussions and design sessions with senior engineers and product stakeholders.
- Occasionally serve as support lead, rotating through the team to handle production-related data requests.
- Document pipelines, data models, and processes to support team knowledge sharing.
- Collaborate with teammates during standups, demos, pull request reviews, sprint planning, and retrospectives.
Preferred Qualifications:
- 05 years of experience in data engineering or a related role.
- Familiarity or hands-on experience with technologies such as:
- ETL & Transformation: Python, SQL
- Data Platform: Databricks, Snowflake, Synapse/Fabric
- Analytics & BI: Tableau, and other BI tools
- Strong problem-solving skills and attention to detail.
- Effective communicator who enjoys working in a collaborative team environment.
- A passion for continuous learning and growing as a data engineer.
Our Current Technology Landscape:
- ETL & Pipelines: Python, SQL
- Data Platform: Databricks (notebooks, jobs, cluster management)
- Analytics & BI: Tableau, Hex.tech, Alteryx, additional BI tooling
- Additional Tools: GitHub, Jira,
Perks:
- 9/80 and 4.5/40 schedule options
- Hybrid work schedule
- Full health benefits
- 401(k) with 4% automatic contribution

