The Leaders in Real-Time Care Intelligence™
Staff Data Engineer
Location
United States
Posted
97 days ago
Salary
0
Seniority
Lead
Job Description
Staff Data Engineer
Bamboo Health
• Develop, debug and support ETL processes utilizing AWS services • Lead ideation and development of data models used for data science and analytics • Meet the delivery expectations of the Agile Project Management methodology • Maintain and optimize reports and extracts that serve as lifesaving information sources to customers • Create clear and concise documentation regarding technical solutions, while sharing knowledge and documentation with teammates via “Lunch and Learns” • Collaborate with internal and external customers to deliver modern data products • Explore opportunities to enhance workflows through AI or automation tools (e.g., document summarization, task routing, or data parsing) • Identify repetitive tasks and partner with team leads to implement scalable automation solutions
Job Requirements
- Bachelor’s degree in computer science, Analytics, a related field, or equivalent experience
- 8+ years total software and relational database development experience
- 3+ years with a strong demonstrated ability to develop and maintain ETL solutions, ideally using Python and various Application Programming Interfaces (API)
- 3+ years’ experience with AWS Cloud Solutions/Services
- Experience working in an Agile environment include using ticketing software such as JIRA
- Strong technical problem-solving abilities
- Hands on experience maintaining databases on Redshift, PostgreSQL, MySQL or Oracle relational database systems
- Experience with software development using Python, Ruby, or other modern scripting languages, ideally in container solutions such as Docker or Kubernetes
- Proficiency with modern data stack tools such as dbt, Starburst, AWS Glue
- Healthcare experience is a plus, but not mandatory
- Comfort using or learning AI-supported tools (e.g., ChatGPT, CoPilot, or role-specific tools) to improve daily workflows
- A forward-thinking, curious mindset with an openness to experimenting with new technologies
- Strong analytical and problem-solving skills, with sound judgment and creativity in designing solutions
- Proven ability to thrive in fast-paced, high-growth, and rapidly evolving environments
- Ability to work effectively in a remote-first environment, ensuring high-quality virtual interactions with minimal distractions
- The ability to travel periodically for work.
Benefits
- Competitive compensation, including health, dental, vision and other benefits
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