Work-Life Benefits
- Unlimited PTO
- Medical benefit contributions in congruence with local laws and type of employment agreement
What you'll do:
- Building Data LakeHouse: In the Senior Data Engineer II role, you will design, build, and operate robust data lakehouse solutions utilizing open table formats like Apache Iceberg. Your focus will be on delivering a scalable, reliable data lakehouse with optimized query performance for a wide range of analytical workloads and emerging data applications.
- Pipeline and Transformation: Integrate with diverse source systems and construct scalable data pipelines. Implement efficient data transformation logic for both batch and streaming data, accommodating various data formats and structures.
- Data Modeling: Analyze business requirements and profile source data to design, develop, and implement robust data models and curated data products that power reporting, analytics, and machine learning applications.
- Data Infrastructure: Develop and manage a scalable AWS cloud infrastructure for the data platform, employing Infrastructure as Code (IaC) to reliably support diverse data workloads. Implement CI/CD pipelines for automated, consistent, and scalable infrastructure deployments across all environments, adhering to best practices and company standards.
- Monitoring and Maintenance: Monitor data workloads for performance and errors, and troubleshoot issues to maintain high levels of data quality, freshness, and adherence to defined SLAs.
- Collaboration: Collaborate closely with Data Services and Data Science colleagues to drive the evolution of our data platform, focusing on delivering solutions that empower data users and satisfy stakeholder needs throughout the organization.
A successful candidate will have:
- Bachelor's degree in Computer Science, Engineering, or a related technical field (Master's degree is a plus).
- 5+ years of hands-on engineering experience (software or data), with a strong emphasis on 3+ years in data-focused roles.
- Experience implementing data lake and data warehousing platforms.
- Strong Python and SQL skills applied to data engineering tasks.
- Proficiency with the AWS data ecosystem, including services like S3, Glue Catalog, IAM, and Secrets Manager.
- Experience with Terraform and Kubernetes.
- Track record of successfully building and operationalizing data pipelines.
- Experience working with diverse data stores, particularly relational databases.
You might also have:
- Experience with Airflow, DBT, and Snowflake.
- Certification in relevant technologies or methodologies.
- Experience with streaming processing technology, e.g., Flink, Spark Streaming.
- Familiarity with Domain-Driven Design principles and event-driven architectures.
- Certification in relevant technologies or methodologies.
Top Skills
What We Do
TrueML makes financial technology that prioritizes customer experience and revolutionizes the experience of consumers seeking financial health. We’re a team of inspired data scientists, financial services industry experts, and customer experience fanatics creating experiences that serve people in a way that recognizes their unique needs and preferences as human beings and endeavoring to ensure nobody gets locked out of the financial system.
After more than 10 years in business, TrueML is excited to be expanding its footprint internationally. We are a growing, geographically diverse team with employees in 30 U.S. states and 7 different countries, with our key talent hub in LATAM. If you’re looking for an opportunity to do impactful work, join TrueML and make a difference alongside hundreds of other inspired individuals.
Why Work With Us
Our functional teams are a diverse mix of employees from different backgrounds and geographies, with each individual bringing unique perspectives and experiences that encourage increased innovation in our products and services. Join TrueML and make a difference alongside hundreds of other inspired individuals doing impactful work.
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TrueML Offices
Remote Workspace
Employees work remotely.
TrueML is excited to be a remote-first company and expanding its footprint internationally. We are a growing, geographically diverse team with employees in 30 U.S. states and 7 different countries, with our key talent hub in LATAM.