Company
Technology
DataEngineer,Product
Neural analysis suggests this role is
optimal for Senior candidates.
“Data Engineer, Product. Skills: Data Engineering, ETL/ELT pipelines, Machine Learning data. Design scalable ETL/ELT data pipelines. Build scalable ETL/ELT data pipelines”
Industry & Context.
Problem-solving mindset
What They're Looking For.
Must Have
5+ years of experience in Data Engineering, Hands-on experience with Apache Spark, Python for large-scale data processing, Solid knowledge of SQL, Experience designing and working with data models, Experience building and maintaining ETL/ELT pipelines, End-to-end ownership of data pipelines, Experience working with high-volume data systems, Batch and/or near real-time processing pipelines, Ability to collaborate with Machine Learning and product teams
Nice to Have
Familiarity with Databricks is a plus, Experience with streaming technologies is highly desirable, Feature stores is highly desirable, ML data workflows is highly desirable
What You'll Do.
Design scalable ETL/ELT data pipelines
Build scalable ETL/ELT data pipelines
Maintain scalable ETL/ELT data pipelines
Transform raw data into high-quality datasets
Develop data transformation workflows
Optimize data transformation workflows
Understand data requirements
Deliver reliable inputs for recommendation systems
Deliver reliable inputs for predictive models
Ensure data quality across all pipelines
Ensure data governance across all pipelines
Ensure data monitoring across all pipelines
Own data pipelines end-to-end
Improve performance of data processing systems
Improve scalability of data processing systems
Improve efficiency of data processing systems
Contribute to building robust data foundations
Enable experimentation
Enable personalization
Enable ML-driven product innovation
How You'll Work.
Team & Collaboration
ML Engineers; Product teams
Full Job Description
## Accountabilities Design, build, and maintain scalable ETL/ELT data pipelines that transform raw data into high-quality datasets for machine learning and product use cases. Develop and optimize data transformation workflows supporting feature engineering for both offline model training and online inference systems. Collaborate closely with ML Engineers to understand data requirements and deliver reliable inputs for recommendation systems and predictive models. Ensure strong data quality, governance, and monitoring across all pipelines to guarantee accuracy, reliability, and consistency of datasets. Own data pipelines end-to-end, including design, implementation, deployment, monitoring, and continuous improvement. Improve performance, scalability, and efficiency of large-scale data processing systems, including batch and near real-time workloads. Contribute to building robust data foundations that enable experimentation, personalization, and ML-driven product innovation. Requirements: 5+ years of experience in Data Engineering or a similar role within data-intensive or product-driven environments. Strong hands-on experience with Apache Spark and Python for large-scale data processing and transformation. Solid knowledge of SQL and experience designing and working with data models and transformation logic. Proven experience building and maintaining ETL/ELT pipelines with end-to-end ownership. Experience working with high-volume data systems, including batch and/or near real-time processing pipelines. Strong ability to collaborate with Machine Learning and product teams in ML-driven environments. Familiarity with Databricks is a plus. Experience with streaming technologies (e.g., Kafka, Flink), feature stores, or ML data workflows is highly desirable. Strong problem-solving mindset with attention to scalability, performance, and data reliability. Benefits: Competitive salary aligned with senior data engineering market standards (€64,800–€74,400 annually referenced in
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