Job Closed
This listing is no longer active.
Enhancing the pharmacy experience for telehealth providers and their patients.
Data Engineer
Location
United States
Posted
134 days ago
Salary
0
Seniority
Senior
Job Description
Data Engineer
TelyRx
• Design, build, and maintain scalable ETL/ELT pipelines to ingest data from multiple sources including advertising platforms (Google Ads, Facebook Ads, Bing Ads), CRM systems, and operational databases • Manage and optimize our Snowflake data warehouse, including schema design, query performance tuning, and cost optimization • Configure and maintain Fivetran connectors and data integrations, ensuring data quality and timely syncs across all platforms • Develop and maintain data transformation layers using SQL and dbt to create clean, reliable datasets for analytics consumption • Build and manage automated workflows and Snowflake tasks for scheduled data refreshes and reporting • Partner with the analytics team to understand data requirements and translate them into robust technical solutions • Implement data quality monitoring, alerting, and validation frameworks to ensure accuracy and completeness • Document data models, pipelines, and processes to maintain institutional knowledge • Support HIPAA-compliant data handling practices and maintain appropriate access controls • Troubleshoot data issues and perform root cause analysis when discrepancies arise
Job Requirements
- B.S. in Computer Science, Data Engineering, Information Systems, or related technical field
- 5+ years of experience in data engineering, analytics engineering, or related roles
- Expert-level SQL skills with experience writing complex queries and optimizing performance
- Hands-on experience with cloud data warehouses, preferably Snowflake
- Experience with ETL/ELT tools and data integration platforms (Fivetran, Stitch, Airbyte, or similar)
- Proficiency in Python for data processing and automation
- Experience with data transformation tools such as dbt
- Strong understanding of data modeling concepts (dimensional modeling, star schemas)
- Familiarity with version control (Git) and CI/CD practices for data pipelines
- Experience working with marketing and advertising data (Google Ads, Facebook Ads APIs) is a plus
- Strong problem-solving skills and attention to detail
- Excellent communication skills and ability to collaborate with non-technical stakeholders.
Benefits
- Health Coverage: Comprehensive health, dental, and vision insurance
- Retirement: 401(k) plan
- Time Off: Generous paid time off policy
- Career Growth: Opportunities to grow within a rapidly expanding company
- Mission-Driven Work: Be part of an organization focused on healthcare accessibility and innovation
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Analyse and maintain RDF/TTL data models and vocabularies; • Develop, optimise, and maintain SPARQL queries; • Support data ingestion, transformation, and validation workflows; • Ensure consistency and correctness of semantic data across the platform; • Collaborate with backend engineers to integrate semantic logic into application flows; • Assist in documenting semantic models, assumptions, and constraints; • Participate in troubleshooting data quality and reasoning issues.
• Build and maintain data pipelines using Azure Synapse and Spark notebooks • Perform data ingestion, transformation, and incremental loading from multiple sources • Support background processing and automation using Azure Functions • Work with relational and NoSQL databases to model and manage data • Monitor and troubleshoot data pipeline issues and performance bottlenecks
• Cloud Development: Develop and implement cloud-based backend applications and architectures. • API Integration: Build REST APIs and manage integrations with third-party service providers. • Data Pipelines: Design and deploy robust ETL/ELT pipelines using Python and Node.js. • AWS Management: Optimize data infrastructure and workflows within AWS. • Quality Assurance: Ensure high standards through rigorous testing, code versioning, and CI/CD best practices. • Continuous Improvement: Implement industry-standard tools and "value-added" best practices to enhance system performance.
• Deliver data solution architecture for clients (data lakes, cloud data warehouses, data enhancement via machine learning APIs) • Be part of a team on larger scale deployment and deployments • Lead in the development and implementations of the company’s data engineering solutions on Azure • Undertake hands-on development for client projects • Provide guidance and demonstrate best practices when delivering solutions • Understand and utilise modern data platforms (cloud or on-premises) • Create and design compelling architectural blueprints to deliver value to our clients • Implement data engineering and machine learning solutions on the Azure technology stack • Identify and propose development and architectural improvements to existing systems • Participate in planning meetings as required




