Data Engineer managing and expanding enterprise business intelligence and data platform. Focusing on Tableau development and administration with a strong engineering background.
Responsibilities
manage and expand our enterprise business intelligence and data platform
run and enhance the full BI stack with a primary focus on Tableau development and administration
own solutions end to end—from data ingestion through presentation
work independently within a small, agile technology team
collaborate effectively with both technical and non-technical stakeholders, including executives
Requirements
Bachelor’s degree in Computer Science, Data Science, Information Technology, or a related field, or equivalent practical experience
Minimum 2 years of experience in data modeling and report building, specifically using Tableau for dashboard and report creation
Relevant certifications in cloud platforms, data analytics, or business intelligence are a plus (e.g., Microsoft Certified: Azure Data Engineer Associate, Tableau Desktop Specialist)
Must have experience with Tableau (dashboard creation, report development, data modeling)
Proficiency in SQL for querying relational and non-relational data sources
Experience with cloud-based data environments, preferably Microsoft Azure
Experience in developing, maintaining, and enhancing ETL/ELT processes for data transformation and loading in cloud-based environments
Strong understanding of data warehousing concepts, data modeling techniques, and best practices for cloud data architecture
Proficiency in scripting languages like Python or R is preferred, particularly for data manipulation and analysis
Ability to work independently and manage projects from start to finish
Strong communication skills with both technical and non-technical audiences
The candidate must have a car, as this position requires travel between location and the transportation of equipment
A valid driver’s license and proof of vehicle insurance will be required
Legally authorized to work in the US without sponsorship
Must demonstrate a “can-do” attitude
We focus on candidates that display our “ACE” factor – Attitude, Compassion, and Enthusiasm to deliver quality solutions with exceptional customer service.
Technical Lead for data engineering and reporting in healthcare technology at Dedalus. Shaping innovative software solutions and leading cross - functional technical teams in Australia.
Senior ML Data Engineer working on data pipeline curation for Mobileye's autonomous vehicle dataset. Collaborating across teams to enhance ML engineering and vision model applications.
Data Engineer managing customer datasets to enhance industrial research and development. Responsible for ETL pipelines and data ingestion for the Uncountable Web Platform.
Data Engineer designing and maintaining scalable data solutions on Databricks for clinical trials. Collaborating with teams to overcome data challenges and ensure the smooth logistics of clinical supplies.
Senior Manager leading a team of database engineers to manage CCC's data platform. Overseeing mission - critical applications and collaborating with cross - functional teams in a hybrid environment.
As a Principal Data Architect at Solstice, lead the design and implementation of data architecture solutions. Ensure data integrity, security, and accessibility to meet strategic organizational goals.
Data Platform Specialist overseeing data workflows and enhancing data quality for Stackgini's AI - driven IT solutions. Collaborating with teams to drive improvements and stakeholder support.
Data Engineer designing data pipelines in Python for a major railway industry client. Collaborate with Data Scientists and ensure code quality with agile methodologies.
Senior Data Engineer responsible for building and optimizing data pipelines for banking analytics initiatives. Collaborating with data teams to ensure data quality and readiness for enterprise use.
Senior Data Engineer developing scalable data solutions on Databricks for analytics and operational workloads. Collaborating with cross - functional teams to modernize the data ecosystem.