

Ahura Workforce Solutions
GCP Lead Data Engineer
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a GCP Lead Data Engineer, remote, with a contract length of unspecified duration. It requires 8–10 years of experience in data engineering, expertise in GCP, Python, SQL, and data governance, particularly in life sciences and insurance sectors. Pay rate is unspecified.
🌎 - Country
United States
💱 - Currency
$ USD
-
💰 - Day rate
Unknown
-
🗓️ - Date
July 18, 2026
🕒 - Duration
Unknown
-
🏝️ - Location
Remote
-
📄 - Contract
Unknown
-
🔒 - Security
Unknown
-
📍 - Location detailed
United States
-
🧠 - Skills detailed
#Data Science #Data Architecture #Compliance #Terraform #Data Vault #Data Modeling #Data Engineering #Infrastructure as Code (IaC) #Computer Science #AI (Artificial Intelligence) #Data Integration #Scala #Distributed Computing #Strategy #Monitoring #Python #Vault #Code Reviews #GCP (Google Cloud Platform) #VPC (Virtual Private Cloud) #Snowflake #Security #Data Governance #Apache Beam #Data Ingestion #IAM (Identity and Access Management) #Libraries #Dataflow #Cloud #Logging #Observability #SQL (Structured Query Language) #SaaS (Software as a Service) #Clustering #BI (Business Intelligence) #Batch #Leadership #Data Security #GDPR (General Data Protection Regulation)
Role description
Role – GCP Lead Data Engineer
Location -Remote
Customer - Our customer is a leader in AI enabled SaaS products and solutions with focus in the life sciences and insurance domai
n
Role Overvi
ewWe are seeking a Senior Data Engineer with a distinguished background in Google Cloud Platform (GCP) to spearhead the evolution of our enterprise data ecosystem. With 8–10 years of professional experience, the successful candidate will operate as a technical authority, designing and deploying sophisticated data architectures that bridge the gap between complex raw data and strategic business intelligence. This role demands a mastery of distributed computing, advanced Python development, and expert-level SQL optimization to ensure the integrity, scalability, and cost-efficiency of our global data asset
s.
Core Responsibiliti
es
1. Architectural Strategy & System De
signEnterprise Framework Design: Conceptualize and implement end-to-end data architectures utilizing GCP’s Modern Data Stack (Big Query, Dataflow, Pub/S
ub).Scalable Data Modeling: Lead the development of high-performance data models (Star, Snowflake, Data Vault) optimized for multi-petabyte scale and high-concurrency analy
ticsHybrid & Multi-Cloud Strategy: Provide technical leadership on data integration strategies spanning GCP, on-premise systems, and third-party SaaS environm
ents2. Advanced Engineering & Pipeline Automa
tionDistributed Processing: Engineer highly resilient, low-latency streaming and batch pipelines using Apache Beam (Dataflow) and Cloud Composer (Airf
low)Software Engineering Excellence: Develop reusable Python libraries and frameworks to standardize data ingestion, logging, and error-handling across the engineering
teamInfrastructure as Code (IaC): Drive operational maturity by managing cloud resources exclusively through Terraform, ensuring robust versioning and environment par
ity.3. Data Governance, Security & Perform
anceSystem Optimization: Conduct deep-dive performance tuning of Big Query environments, implementing partitioning, clustering, and slot management to optimize
ROI.Security & Compliance: Architect data security protocols including VPC Service Controls, IAM Least Privilege, and data masking/encryption to meet global compliance standards (GDPR,
SOCObservability: Establish comprehensive monitoring and alerting frameworks for data health, ensuring high availability and meeting stringent Service Level Objectives
(SLO4. Technical Leadership & Collabora
tionStrategic Mentorship: Serve as a mentor to mid-level and junior engineers, conducting rigorous code reviews and promoting best practices in Data
Ops.Stakeholder Alignment: Act as a primary technical liaison between Data Science, Business Intelligence, and Executive leadership to translate business goals into technical roadm
aps.
Educa
• tion:Bachelors or Masters in Information Technology, Computer Science or relevant f
ield.
Role – GCP Lead Data Engineer
Location -Remote
Customer - Our customer is a leader in AI enabled SaaS products and solutions with focus in the life sciences and insurance domai
n
Role Overvi
ewWe are seeking a Senior Data Engineer with a distinguished background in Google Cloud Platform (GCP) to spearhead the evolution of our enterprise data ecosystem. With 8–10 years of professional experience, the successful candidate will operate as a technical authority, designing and deploying sophisticated data architectures that bridge the gap between complex raw data and strategic business intelligence. This role demands a mastery of distributed computing, advanced Python development, and expert-level SQL optimization to ensure the integrity, scalability, and cost-efficiency of our global data asset
s.
Core Responsibiliti
es
1. Architectural Strategy & System De
signEnterprise Framework Design: Conceptualize and implement end-to-end data architectures utilizing GCP’s Modern Data Stack (Big Query, Dataflow, Pub/S
ub).Scalable Data Modeling: Lead the development of high-performance data models (Star, Snowflake, Data Vault) optimized for multi-petabyte scale and high-concurrency analy
ticsHybrid & Multi-Cloud Strategy: Provide technical leadership on data integration strategies spanning GCP, on-premise systems, and third-party SaaS environm
ents2. Advanced Engineering & Pipeline Automa
tionDistributed Processing: Engineer highly resilient, low-latency streaming and batch pipelines using Apache Beam (Dataflow) and Cloud Composer (Airf
low)Software Engineering Excellence: Develop reusable Python libraries and frameworks to standardize data ingestion, logging, and error-handling across the engineering
teamInfrastructure as Code (IaC): Drive operational maturity by managing cloud resources exclusively through Terraform, ensuring robust versioning and environment par
ity.3. Data Governance, Security & Perform
anceSystem Optimization: Conduct deep-dive performance tuning of Big Query environments, implementing partitioning, clustering, and slot management to optimize
ROI.Security & Compliance: Architect data security protocols including VPC Service Controls, IAM Least Privilege, and data masking/encryption to meet global compliance standards (GDPR,
SOCObservability: Establish comprehensive monitoring and alerting frameworks for data health, ensuring high availability and meeting stringent Service Level Objectives
(SLO4. Technical Leadership & Collabora
tionStrategic Mentorship: Serve as a mentor to mid-level and junior engineers, conducting rigorous code reviews and promoting best practices in Data
Ops.Stakeholder Alignment: Act as a primary technical liaison between Data Science, Business Intelligence, and Executive leadership to translate business goals into technical roadm
aps.
Educa
• tion:Bachelors or Masters in Information Technology, Computer Science or relevant f
ield.





