

Lead Data Engineer
β - Featured Role | Apply direct with Data Freelance Hub
This role is for a Lead Data Engineer in Houston, TX, offering a hybrid schedule. Contract length is unspecified, with a pay rate of "unknown." Requires 6-8 years of Data Engineering experience, including 2-3 years in Snowflake, and proficiency in SQL and Python.
π - Country
United States
π± - Currency
$ USD
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π° - Day rate
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ποΈ - Date discovered
August 28, 2025
π - Project duration
Unknown
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ποΈ - Location type
Hybrid
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π - Contract type
Unknown
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π - Security clearance
Unknown
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π - Location detailed
Houston, TX
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π§ - Skills detailed
#Automation #Scala #Data Warehouse #AI (Artificial Intelligence) #Data Quality #Data Lake #ML (Machine Learning) #SQL (Structured Query Language) #Scripting #Data Management #"ETL (Extract #Transform #Load)" #Storage #Data Storage #Snowflake #Data Engineering #GitHub #Data Science #Observability #Jenkins #Metadata #Data Pipeline #Python
Role description
Designation β Lead Data Engineer / Sr. Data Engineer
Hybrid - 3 days per week between Mon to Thursday. And every month first week it will be 4 or 5 days
Work Location: Houston, TX (Houston locals only)
Experience: 6-8 + years in Data Engineering, with 2 or 3 years in Snowflake
Core Skills: Strong proficiency in Snowflake, SQL and Python Scripting
Key Responsibilities:
β’ Designing and implementing scalable data pipelines
β’ Building and managing data warehouses and data lakes
β’ Ensuring data quality and implementing data management best practices
β’ Optimizing data storage and retrieval processes
β’ Collaborate closely with data scientists, analysts, and product teams to support analytics and machine learning initiatives.
β’ CI/CD orchestration and automation tools: Experience with tools such as Jenkins, GitHub etc.
β’ Monitor and tune Snowflake query performance, warehouse usage, and credit consumption.
β’ Collaborate closely with data scientists, analysts, and product teams to support analytics and machine learning initiatives.
β’ Design and enforce row-level access policies and dynamic masking in Snowflake for sensitive data fields (PII, financials).
β’ Enabled data sharing with external teams using secure shares and reader accounts while maintaining strict RBAC controls.
β’ Experience with ETL /Scheduler tools.
β’ Strong interpersonal, written, and verbal communication skills to interact effectively across teams and stakeholders.
β’ Designing semantic layers, aggregate tables, and data models (Star/Snowflake) to support scalable, governed, and business-friendly analytics architecture.
Good to have:
β’ Machine Learning and AI/LLM model training / implementation.
β’ Background in data observability, lineage tracking, or metadata management tools.
Designation β Lead Data Engineer / Sr. Data Engineer
Hybrid - 3 days per week between Mon to Thursday. And every month first week it will be 4 or 5 days
Work Location: Houston, TX (Houston locals only)
Experience: 6-8 + years in Data Engineering, with 2 or 3 years in Snowflake
Core Skills: Strong proficiency in Snowflake, SQL and Python Scripting
Key Responsibilities:
β’ Designing and implementing scalable data pipelines
β’ Building and managing data warehouses and data lakes
β’ Ensuring data quality and implementing data management best practices
β’ Optimizing data storage and retrieval processes
β’ Collaborate closely with data scientists, analysts, and product teams to support analytics and machine learning initiatives.
β’ CI/CD orchestration and automation tools: Experience with tools such as Jenkins, GitHub etc.
β’ Monitor and tune Snowflake query performance, warehouse usage, and credit consumption.
β’ Collaborate closely with data scientists, analysts, and product teams to support analytics and machine learning initiatives.
β’ Design and enforce row-level access policies and dynamic masking in Snowflake for sensitive data fields (PII, financials).
β’ Enabled data sharing with external teams using secure shares and reader accounts while maintaining strict RBAC controls.
β’ Experience with ETL /Scheduler tools.
β’ Strong interpersonal, written, and verbal communication skills to interact effectively across teams and stakeholders.
β’ Designing semantic layers, aggregate tables, and data models (Star/Snowflake) to support scalable, governed, and business-friendly analytics architecture.
Good to have:
β’ Machine Learning and AI/LLM model training / implementation.
β’ Background in data observability, lineage tracking, or metadata management tools.