Builds and maintains backend services and REST APIs serving data from Snowflake and other sources to internal teams, primarily in Python. Supports data pipelines using Airflow, Airbyte, and dbt, partnering with Analytics Engineering.
Salary not listed
RemoteData Engineering
About the role
Job Responsibilities
Software Engineering (~80%)
Design, build, and maintain backend services and REST APIs that serve data from various SQL subsystems and other data sources
Develop well-tested, production-grade Python services with clean API contracts, proper authentication, versioning, and error handling
Work closely with the Analytics Engineering team to expose modeled data (billing, settlement, finance) through APIs that downstream consumers can rely on
Build internal tooling and services that enable the broader organization to self-serve their data needs without writing SQL
Participate in code reviews, system design discussions, and engineering best practices across the Infrastructure org
Contribute to service observability: logging, metrics, alerting, and on-call practices for the services you own
Data Engineering (~20%)
Maintain and improve existing data pipelines that move data from source systems into Snowflake (Airflow, Airbyte)
Contribute to the dbt project alongside the Analytics Engineering team — model improvements, test coverage, and data quality
Support data governance practices including access controls, lineage documentation, and data quality standards
Qualifications
Required
Strong Python proficiency with experience building backend services and REST APIs
Experience with web frameworks such as FastAPI, Flask, Django, or similar
Solid SQL skills and hands-on experience with modern cloud data warehouses (Snowflake strongly preferred)
Experience designing and building production APIs with proper authentication, versioning, and error handling
Familiarity with CI/CD, automated testing, and operational reliability practices
A track record of shipping reliable, well-tested services in production environments
Comfort navigating ambiguity and driving projects forward with minimal oversight
Preferred
Experience with data pipeline development using tools like Airflow, Airbyte, Dagster, or similar
Familiarity with dbt or similar transformation frameworks
Experience in fintech, payments, or other financial services environments
Familiarity with AWS services (Lambda, S3, RDS, API Gateway, ECS/Fargate)
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