We Work Remotely
home_work
Remote
Senior Data Engineer (Python)
We Work Remotely Listing
location_on
Remote / Worldwide
calendar_today
15 hours ago
bolt
Apply & Run AI Match
We’ll save this job to your dashboard and score how well your resume matches.
description Job Description
The Role:
We are looking for a Senior Data Engineer to architect and scale the data foundations for one of our high-growth client products. The ideal candidate is a Python expert who treats data infrastructure as software, implementing CI/CD, unit testing, and observability into every layer of the modern data stack. You are a perfect candidate if you are growth-oriented, you love what you do, and you enjoy working on new ideas to develop exciting products.
What we’re looking for:
•
5+ years of experience building complex data processing applications using Python (Pandas, PySpark, or Dask).
•
Advanced SQL skills for complex transformations, window functions, and query optimization in cloud warehouses.
•
Deep experience with dbt (data build tool) for managing the T in ELT, including documentation and testing.
•
Proven experience with Apache Airflow, Prefect, or Dagster for managing complex dependency graphs.
•
Hands-on experience with Snowflake, BigQuery, or AWS Redshift.
•
Strong understanding of Dimensional Modeling (Star/Snowflake schema) and Data Vault 2.0.
•
Experience with Git, Docker, and implementing CI/CD for data pipelines.
Nice-to-Have:
•
Experience building Real-time Pipelines using Kafka or Flink.
•
Familiarity with Data Contracts and Data Quality frameworks (Great Expectations, Monte Carlo).
•
Knowledge of Vector Databases (Pinecone, Milvus) for AI/LLM applications.
•
Infrastructure as Code (Terraform) experience.
Responsibilities:
•
Build and maintain scalable, automated ELT/ETL pipelines that provide a 'single source of truth' for the organization.
•
Implement rigorous automated testing and monitoring to ensure data integrity and reliability.
•
Optimize warehouse storage and compute costs while reducing pipeline latency.
•
Partner with Data Scientists and Product Managers to translate business requirements into technical data models.
•
Promote a 'DataOps' culture within the team, conducting code reviews and sharing best practices.
What we offer:
Get paid, not played
No more unreliable clients. Enjoy on-time monthly payments with flexible withdrawal options.
Predictable project hours
Enjoy a harmonious work-life balance with consistent 8-hour working days with clients.
Flex days, so you can recharge
Enjoy up to 24 flex days off per year without losing pay, for full-time positions found through Proxify.
Career-accelerating positions at cutting-edge companies
Discover exclusive long-term remote positions at the world's most exciting companies.
Hand-picked opportunities just for you
Skip the typical recruitment roadblocks and biases with personally matched positions.
One seamless process, multiple opportunities
A one-time contracting process for endless opportunities, with no extra assessments.
Compensation
Enjoy the same pay, every month with positions landed through Proxify.
To apply:
We are looking for a Senior Data Engineer to architect and scale the data foundations for one of our high-growth client products. The ideal candidate is a Python expert who treats data infrastructure as software, implementing CI/CD, unit testing, and observability into every layer of the modern data stack. You are a perfect candidate if you are growth-oriented, you love what you do, and you enjoy working on new ideas to develop exciting products.
What we’re looking for:
•
5+ years of experience building complex data processing applications using Python (Pandas, PySpark, or Dask).
•
Advanced SQL skills for complex transformations, window functions, and query optimization in cloud warehouses.
•
Deep experience with dbt (data build tool) for managing the T in ELT, including documentation and testing.
•
Proven experience with Apache Airflow, Prefect, or Dagster for managing complex dependency graphs.
•
Hands-on experience with Snowflake, BigQuery, or AWS Redshift.
•
Strong understanding of Dimensional Modeling (Star/Snowflake schema) and Data Vault 2.0.
•
Experience with Git, Docker, and implementing CI/CD for data pipelines.
Nice-to-Have:
•
Experience building Real-time Pipelines using Kafka or Flink.
•
Familiarity with Data Contracts and Data Quality frameworks (Great Expectations, Monte Carlo).
•
Knowledge of Vector Databases (Pinecone, Milvus) for AI/LLM applications.
•
Infrastructure as Code (Terraform) experience.
Responsibilities:
•
Build and maintain scalable, automated ELT/ETL pipelines that provide a 'single source of truth' for the organization.
•
Implement rigorous automated testing and monitoring to ensure data integrity and reliability.
•
Optimize warehouse storage and compute costs while reducing pipeline latency.
•
Partner with Data Scientists and Product Managers to translate business requirements into technical data models.
•
Promote a 'DataOps' culture within the team, conducting code reviews and sharing best practices.
What we offer:
Get paid, not played
No more unreliable clients. Enjoy on-time monthly payments with flexible withdrawal options.
Predictable project hours
Enjoy a harmonious work-life balance with consistent 8-hour working days with clients.
Flex days, so you can recharge
Enjoy up to 24 flex days off per year without losing pay, for full-time positions found through Proxify.
Career-accelerating positions at cutting-edge companies
Discover exclusive long-term remote positions at the world's most exciting companies.
Hand-picked opportunities just for you
Skip the typical recruitment roadblocks and biases with personally matched positions.
One seamless process, multiple opportunities
A one-time contracting process for endless opportunities, with no extra assessments.
Compensation
Enjoy the same pay, every month with positions landed through Proxify.
To apply:
Ready to apply?
Create a free account to apply with an AI-tailored resume.