What are the responsibilities and job description for the Snowflake Data Engineer position at VeeRteq Solutions LLC?
Role: Snowflake Data Engineer
Experience: - 10 Years
Location: - Remote
Healthcare or payer domain experience, especially with member, claims, provider, quality, or reference data.
Experience in evaluating / troubleshooting and measuring agent performance, identifying issues, and optimizing it
Experience with dbt, semantic view design, or governed self-service analytics patterns.
Python experience for automation, metadata processing, data validation, or AI-assisted engineering workflows.
Exposure to agentic AI, natural language analytics, or Snowflake Cortex Analyst / Cortex Search use cases.
Specific technologies to be used and level of proficiency?
Snowflake SQL: Highly skilled to expert level.
Snowflake: Strong hands-on experience with performance tuning, secure data design, and curated data modeling.
Semantic Modeling / Semantic Views: Strong proficiency in defining business metrics, dimensions, relationships, grain, and reusable semantic abstractions.
Python: Some experience desired, with preference for intermediate or higher skill for automation and validation use cases.
dbt: Preferred real-world experience developing modular transformations, tests, and deployment patterns.
Snowflake Cortex: Preferred experience with Cortex-enabled analytics, semantic intelligence, or agent-supporting workflows.
Day to Day Activities: -
Experience: - 10 Years
Location: - Remote
Healthcare or payer domain experience, especially with member, claims, provider, quality, or reference data.
- Snowflake SQL: Highly skilled. Must be able to develop complex transformations, optimize performance, and work confidently with CTEs, advanced joins, and analytic/window functions.
- Snowflake Data Engineering: Strong real-world experience building curated data layers using medallion architecture principles across bronze, silver, and gold datasets.
- Semantic Modeling / Semantic Layer Engineering: Must be able to define business-friendly metrics, dimensions, grain, relationships, and reusable semantic views on top of Snowflake data.
- Snowflake Cortex / AI-Enabled Analytics: Experience supporting Snowflake Cortex-based analytics workflows, semantic intelligence, or agentic analytics use cases is strongly preferred.
- Data Quality, Profiling, and Validation: Must be able to identify natural and surrogate keys, assess cardinality and distribution, validate transformations, and ensure trustworthy semantic outputs.
- Strong communication and ownership: Able to work across engineering, product, and analytics partners, clarify requirements, and proactively drive work with limited direction.
- Engineering Degree BE/ME/BTech/MTech/BSc/MSc.
- Technical certification in multiple technologies is desirable.
Experience in evaluating / troubleshooting and measuring agent performance, identifying issues, and optimizing it
Experience with dbt, semantic view design, or governed self-service analytics patterns.
Python experience for automation, metadata processing, data validation, or AI-assisted engineering workflows.
Exposure to agentic AI, natural language analytics, or Snowflake Cortex Analyst / Cortex Search use cases.
Specific technologies to be used and level of proficiency?
Snowflake SQL: Highly skilled to expert level.
Snowflake: Strong hands-on experience with performance tuning, secure data design, and curated data modeling.
Semantic Modeling / Semantic Views: Strong proficiency in defining business metrics, dimensions, relationships, grain, and reusable semantic abstractions.
Python: Some experience desired, with preference for intermediate or higher skill for automation and validation use cases.
dbt: Preferred real-world experience developing modular transformations, tests, and deployment patterns.
Snowflake Cortex: Preferred experience with Cortex-enabled analytics, semantic intelligence, or agent-supporting workflows.
Day to Day Activities: -
- Design and implement scalable Snowflake data models and pipelines that align with business objectives and agentic AI use cases.
- Build curated bronze, silver, and gold data layers and reusable semantic assets that support trusted analytics and natural-language data access.
- Collaborate with product, analytics, and engineering partners to translate complex requirements into governed data products and semantic models.
- Optimize Snowflake queries, warehouse configurations, and transformation performance for reliability, scalability, and cost efficiency.
- Design and implement data quality validation, profiling, and testing strategies to improve trust in downstream semantic outputs.
- Contribute to lineage-aware transformation patterns, documentation, and engineering standards for reusable data assets.
- Use dbt where applicable to develop modular transformations, tests, and deployment patterns; prior hands-on dbt experience is preferred.
- Support Snowflake Cortex-enabled analytics, semantic intelligence, and agent-assisting workflows where applicable.
- Troubleshoot production issues and implement durable long-term solutions.
- Document architectural decisions, semantic definitions, and data lineage.