Job Closed
This listing is no longer active.
Inspiren offers the most complete and connected ecosystem in senior living. Founded by Michael Wang, a former Green Beret turned cardiothoracic nurse, Inspiren proves that compassionate care and technology can coexist - bringing peace of mind to residents, families, and staff. Our integrated solutions seamlessly fit into existing workflows, capturing everything happening within a community. Backed by nurse specialists and powerful analytics, we provide the data operators need to make informed clinical and operational decisions - driving efficiency, profitability, and better care outcomes.
Senior Data Engineer
Location
New York
Posted
108 days ago
Salary
$180K - $200K / year
Seniority
Senior
Job Description
Senior Data Engineer
Inspiren
• Collaborate with engineering, data science, ML, and product analytics teams to develop data models and pipelines for customer-facing applications, research, reporting and machine learning. • Develop, implement and optimize ETL processes for ingesting, processing and transforming large volumes of structured and unstructured data into our data ecosystem • Optimize data models to support efficient data storage and retrieval processes for performance and scalability. • Evaluate and implement a variety of data storage solutions, including RDS, NoSQL, data lakes and cloud storage services. • Work in close partnership with Platform Engineering to influence the direction and needs of the data platform.
Job Requirements
- 5+ years of full stack or backend development experience
- Fluency in building and maintaining ETL processes
- Outstanding analytical skills and the ability to address problems in real-world settings
- A demonstrated ability to work in a team, with excellent skills-sharing capabilities.
- Expertise in modern ETL technologies and building and supporting data pipelines at scale
- Proven experience in evaluating and optimizing data architectures to increase performance, data discovery, and reduce cost.
- Proven experience with cloud-based data engineering pipeline design at scale. AWS and Databricks experience are plusses.
- Proven proficiency in one or more programming languages such as Python or Java, as well as SQL.
- Well-versed in the development lifecycle and software engineering best practices.
- Excellent verbal and written communication skills, with the ability to convey complex ideas clearly.
- Comfortable working in a fast-paced, dynamic environment and adapting to changing priorities.
- Start-up experience is a plus.
- Health-tech experience is a plus.
Benefits
- Health insurance
- dental
- vision
- Flexible PTO
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Senior Data Engineer
ZigsawOn a mission to help people find the Job of their choice. Fill this: https://forms.gle/fWsXYfgAfEorQZgaA
• Implement robust data infrastructure in AWS, using Spark with Scala • Evolve our core data pipelines to efficiently scale for our massive growth • Store data in optimal engines and formats • Collaborate with our cross-functional teams to design data solutions that meet business needs • Built out fault-tolerant batch and streaming pipelines • Leverage and optimize AWS resources while designing for scale • Collaborate closely with our Data Science and Product teams
Staff Data Engineer
ZigsawOn a mission to help people find the Job of their choice. Fill this: https://forms.gle/fWsXYfgAfEorQZgaA
• Design and implement robust data infrastructure in AWS, using Spark with Scala • Evolve our core data pipelines to efficiently scale for our massive growth • Store data in optimal engines and formats, matching your designs to our performance needs and cost factors • Collaborate with our cross-functional teams to design data solutions that meet business needs • Design and implement knowledge graphs, exposing their functionality both via Batch Processing and APIs • Leverage and optimize AWS resources while designing for scale • Collaborate closely with our Data Science and Product teams
• Assist with connecting systems to data sources • Help manage and maintain data connections in Azure • Build and maintain ETL pipelines (Extract, Transform, Load) • Help automate manual data processes • Work with large, enterprise-level datasets • Document data sources, pipelines, and processes
• Supervise junior members of the data engineering team. Guiding, planning, and reviewing the team's work • Create and maintain optimal data pipeline architecture • Assemble large, complex data sets that meet functional / non-functional business requirements • Extend our machine learning platform by designing tools that interface with cloud services, our current code base, and provide new flexibility in model building • Build the infrastructure required for optimal extraction, transformation, and loading of data from a wide variety of data sources using SQL, Python, and AWS • Build analytics tools to provide actionable insights into key business performance metrics, as well as supporting the needs of the analytics team • Create data-handling tools for analytics and data scientist team members that assist them in building and optimizing our decision-making process



