Experience
Hands-on Big Data experience using common open-source components (Hadoop, Hive, Spark, Presto, NiFi, MinIO, K8S, Kafka).
Experience in stakeholder management in heterogeneous business/technology organizations.
Experience in banking or financial business, with handling sensitive data across regions.
Experience in large data migration projects with on-prem Data Lakes.
Hands-on experience in integrating Data Science Workbench platforms (e.g., KNIME, Cloudera, Dataiku).
Track record in Agile project management and methods (e.g., Scrum, SAFe).
Skills
Knowledge of reference architectures, especially concerning integrated, data-driven landscapes and solutions.
Expert SQL skills, preferably in mixed environments (i.e., classic DWH and distributed).
Working automation and troubleshooting experience in Python using Jupyter Notebooks or common IDEs.
Data preparation for reporting/analytics and visualization tools (e.g., Tableau, Power BI or Python-based).
Applying a data quality framework within the architecture.
Role description
Datasets and data pipelines preparation, support for Business, data troubleshooting.
Closely collaborate with the Data \& Analytics Program Management and stakeholders to co-design Enterprise Data Strategy and Common Data Model.
Implementation and promotion of Data Platform, transformative data processes, and services.
Develop data pipelines and structures for Data Scientists, testing such to ensure that they are fit for use.
Maintain and model JSON-based schemas and metadata to re-use it across the organization (with central tools).
Resolving and troubleshooting data-related issues and queries.
Covering all processes from enterprise reporting to data science (incl. ML Ops).