Senior DevOps Engineer

Ann Arbor, Michigan
US$100000 - US$120000 per annum

Senior DevOps Engineer
HealthTech
Ann Arbor, Michigan (remote)
$100,000 - $120,000

THE COMPANY:

They are a health tech company that focuses on maximizing health plans for physician practices. They provide health plans, consulting services, and delivery systems to reduce the cost of care and improve overall quality.

THE ROLE - Senior DevOps Engineer

As a Senior DevOps Engineer, you will be a part of the software engineering team building out new products and services. You will manage/develop the software development lifecycle process, data automation tools, train and hire new employees. Your responsibilities will include:

* Sets, follows, and promotes the organization's software development lifecycle processes
* Leads those responding to end-user requests, documenting encounters, needs, and solutions
* Manage software engineering team and work cross-functionally with various teams
* Set team expectations and set delivery deadlines to meet business goals
* Support in training and hiring new employees

YOU WILL NEED:

* Commercial experience in designing/maintaining CI/CD pipelines
* Commercial experience with SQL
* Commercial experience with Azure working with Data Factory
* Strong background in software development methodologies
* Understanding of one of regulation compliance ISO27001/HIPAA/HITRUST/NIST/PCI/GDPR is a plus
* Bachelors or master's in computer science, data science, data engineering, or related

THE BENEFITS:

* $100,000 - $120,000 base salary
* Health benefits
* 401K
* PTO and sick time off

HOW TO APPLY
Please register your interest by sending your resume to Jacob Ragland via the Apply link on this page.

KEYWORDS
CI/CD, DevOps, Software, .NET, Azure, SQL server, data factory, ISO27001, software development lifecycle, testing, PowerBI, React, Redux, SaaS

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Ann Arbor, Michigan
US$100000 - US$120000 per annum
  1. Permanent
  2. Big Data

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