Principal Data Architect
St. Louis, Missouri / $150000 - $160000
INFO
$150000 - $160000
LOCATION
St. Louis, Missouri
Permanent
Principal Data Architect
$150,000-160,000 Base
Healthcare
Fully remote, USA
The Company:
One of the top five largest U.S. health systems organization is looking to add a seasoned Principal Data Architect to its rapidly growing team.
The Role:
As a Principal Data Architect, you will be tasked with working cross-functionally and leading multiple individuals within the organization overseeing technical projects whilst being hands-on
You will be responsible for:
- Working directly with the VP and Director of Enterprise Engineering
- Leading a team of 5-10 on multiple projects in the engineering space
- Work cross-functionally in the progress of a cloud to cloud platform
Skills and Experience:
- 8+ years in the engineering space
- In-depth knowledge of Azure and previous hands-on experience in the cloud space
- Experience with Azure, Python/SQL
- Leadership and project lead experience
- A healthcare background is a plus
- Bachelor's degree in business, computer science, economics, mathematics, statistics, or related field; Masters or MBA preferred
The Benefits:
As a Principal Data Architect, you can earn up to $160,000 in basic salary and industry-leading benefits.
How to Apply:
Please register your interest by sending your resume to Louis Collins via the apply link

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