Position Overview
As a client-facing Data Engineer at CBTS, you are the architect behind the data infrastructure that enables AI-powered business transformation. You will be responsible for designing, building, and maintaining scalable and secure data pipelines that directly support client delivery. At the same time, your work also contributes to CBTS’s financial performance through billable implementations.
What You’ll Do
Why It Matters at CBTS
Your engineering expertise forms the foundation of every AI and analytics initiative—ensuring that CBTS delivers clean, trusted, and scalable data ecosystems. By combining delivery excellence with billable accountability, you enable CBTS to meet client expectations and uphold its reputation for strategic, client-first technology transformation.
Qualifications
Required | Preferred |
3–5 years of hands-on data engineering experience with data pipeline architecture and implementation | Experience with MLOps, model-serving integration, and AI-focused data infrastructure |
Proficiency in SQL, Python, and modern ETL/ELT frameworks (e.g., Spark, Airflow) | Familiarity with cloud data platforms (e.g., AWS Glue/Redshift, Azure Synapse, Google BigQuery) |
Strong understanding of data governance, security, and performance optimization | Background in building reusable data delivery tools or internal accelerators |
Demonstrated ability to collaborate with cross-functional teams in a delivery context | Experience in automated monitoring, logging, and infrastructure-as-code for pipeline environments |
Due to U.S. Government requirements applicable to foreign-owned telecommunications providers, non-US citizens may be required to submit to an extensive government agency background check which will necessitate disclosure of sensitive Personally Identifiable Information.