Build scalable data pipelines across AWS PySpark and Snowflake that directly power customer-facing decisioning
Work with production-grade ML systems operationalising segmentation propensity and value models at scale
Join a cross-functional engineering team modernising customer intelligence capabilities across digital and marketing channels
Develop robust automated solutions reducing manual intervention and improving data quality across critical use cases
Contribute to infrastructure-as-code and DevOps practices using GitHub Actions and Terraform
Company Overview
Our client is a leading financial services organisation based in Warsaw specialising in customer intelligence and decisioning platforms. They build sophisticated systems that enable personalised pricing targeted offers and campaign execution across digital CRM and marketing channels. The organisation is committed to engineering excellence data quality and maintaining the highest standards of information security and governance. Theyre investing in modernising their data infrastructure and expanding their engineering capabilities to support continued growth and innovation.
Our client is seeking an experienced Data Engineer to join their customer intelligence team. If you have strong expertise in AWS data engineering PySpark and Snowflake and youre looking to advance your career building production-grade data systems that impact millions of customer interactions this role offers a genuine opportunity to make a significant contribution.
Position Overview
As a Data Engineer youll design and maintain production-grade data pipelines that operationalise customer models into resilient decisioning flows. Youll work across the full data stack - from ingestion through transformation to deployment - ensuring data quality pipeline robustness and operational reliability. Your work will directly support critical customer-facing use cases including personalised pricing recommendations and campaign execution. Youll collaborate with product data science and engineering teams to evolve platforms in line with the organisations modernisation programme whilst ensuring all solutions meet rigorous information security and governance standards.
Responsibilities
Design build and maintain production-grade data pipelines and services across AWS PySpark Snowflake and SQL transformation frameworks
Operationalise customer-level models such as segmentation propensity and value models into scalable decisioning flows for downstream consumption
Develop modular testable and high-quality data models and transformation pipelines using DBT or equivalent structured SQL frameworks
Improve pipeline robustness through automation monitoring validation and dependency management to reduce manual intervention and production failures
Diagnose and resolve pipeline failures support reruns and validations and address data quality issues maintaining continuity of critical use cases
Contribute to CICD and DevOps practices including GitHub Actions version control testing disciplines and Infrastructure-as-Code approaches such as Terraform
Collaborate with product data science and engineering teams to operationalise new use cases and evolve platforms
Ensure all solutions align with information security data protection governance standards and auditability requirements for customer data and model processing
Requirements
6-8 years of hands-on experience with data engineering cloud platforms or related roles
Strong experience with AWS data stack including S3 EMR EC2 and related cloud-native data engineering services
Advanced PySpark expertise including development of production-grade pipelines performance optimisation and large-scale data processing
Strong Snowflake experience including data modelling preferably using RDV BDV or similar patterns and query performance tuning
Proven experience using DBT or equivalent SQL transformation frameworks to develop modular testable and well-structured data models
Hands-on experience with CICD and DevOps practices including GitHub Actions or similar tooling
Exposure to Infrastructure-as-Code approaches such as Terraform
Experience with machine learning pipelines and operationalising ML models in production environments
Strong understanding of data quality testing disciplines and engineering best practices
Knowledge of information security data protection and governance standards
Benefits
Competitive salary package commensurate with experience
Opportunity to work with cutting-edge data technologies and cloud infrastructure
Professional development and training in emerging data engineering practices
Exposure to machine learning and advanced analytics at scale
Collaborative environment with experienced data science and engineering teams
Alongside a competitive benefits package youll join a forward-thinking organisation that values technical excellence continuous learning and collaborative problem-solving. Youll work with talented engineers and data scientists contributing to systems that directly impact customer experience and business outcomes.
How to Apply
To apply for this role please submit your CV using the form below or email
Required Experience:
IC
Data Engineer - Customer Intelligence PlatformLocation: WarsawContract Type: ContractBuild scalable data pipelines across AWS PySpark and Snowflake that directly power customer-facing decisioningWork with production-grade ML systems operationalising segmentation propensity and value models at scaleJ...
Data Engineer - Customer Intelligence Platform
Location: Warsaw Contract Type: Contract
Build scalable data pipelines across AWS PySpark and Snowflake that directly power customer-facing decisioning
Work with production-grade ML systems operationalising segmentation propensity and value models at scale
Join a cross-functional engineering team modernising customer intelligence capabilities across digital and marketing channels
Develop robust automated solutions reducing manual intervention and improving data quality across critical use cases
Contribute to infrastructure-as-code and DevOps practices using GitHub Actions and Terraform
Company Overview
Our client is a leading financial services organisation based in Warsaw specialising in customer intelligence and decisioning platforms. They build sophisticated systems that enable personalised pricing targeted offers and campaign execution across digital CRM and marketing channels. The organisation is committed to engineering excellence data quality and maintaining the highest standards of information security and governance. Theyre investing in modernising their data infrastructure and expanding their engineering capabilities to support continued growth and innovation.
Our client is seeking an experienced Data Engineer to join their customer intelligence team. If you have strong expertise in AWS data engineering PySpark and Snowflake and youre looking to advance your career building production-grade data systems that impact millions of customer interactions this role offers a genuine opportunity to make a significant contribution.
Position Overview
As a Data Engineer youll design and maintain production-grade data pipelines that operationalise customer models into resilient decisioning flows. Youll work across the full data stack - from ingestion through transformation to deployment - ensuring data quality pipeline robustness and operational reliability. Your work will directly support critical customer-facing use cases including personalised pricing recommendations and campaign execution. Youll collaborate with product data science and engineering teams to evolve platforms in line with the organisations modernisation programme whilst ensuring all solutions meet rigorous information security and governance standards.
Responsibilities
Design build and maintain production-grade data pipelines and services across AWS PySpark Snowflake and SQL transformation frameworks
Operationalise customer-level models such as segmentation propensity and value models into scalable decisioning flows for downstream consumption
Develop modular testable and high-quality data models and transformation pipelines using DBT or equivalent structured SQL frameworks
Improve pipeline robustness through automation monitoring validation and dependency management to reduce manual intervention and production failures
Diagnose and resolve pipeline failures support reruns and validations and address data quality issues maintaining continuity of critical use cases
Contribute to CICD and DevOps practices including GitHub Actions version control testing disciplines and Infrastructure-as-Code approaches such as Terraform
Collaborate with product data science and engineering teams to operationalise new use cases and evolve platforms
Ensure all solutions align with information security data protection governance standards and auditability requirements for customer data and model processing
Requirements
6-8 years of hands-on experience with data engineering cloud platforms or related roles
Strong experience with AWS data stack including S3 EMR EC2 and related cloud-native data engineering services
Advanced PySpark expertise including development of production-grade pipelines performance optimisation and large-scale data processing
Strong Snowflake experience including data modelling preferably using RDV BDV or similar patterns and query performance tuning
Proven experience using DBT or equivalent SQL transformation frameworks to develop modular testable and well-structured data models
Hands-on experience with CICD and DevOps practices including GitHub Actions or similar tooling
Exposure to Infrastructure-as-Code approaches such as Terraform
Experience with machine learning pipelines and operationalising ML models in production environments
Strong understanding of data quality testing disciplines and engineering best practices
Knowledge of information security data protection and governance standards
Benefits
Competitive salary package commensurate with experience
Opportunity to work with cutting-edge data technologies and cloud infrastructure
Professional development and training in emerging data engineering practices
Exposure to machine learning and advanced analytics at scale
Collaborative environment with experienced data science and engineering teams
Alongside a competitive benefits package youll join a forward-thinking organisation that values technical excellence continuous learning and collaborative problem-solving. Youll work with talented engineers and data scientists contributing to systems that directly impact customer experience and business outcomes.
How to Apply
To apply for this role please submit your CV using the form below or email