Head of Data Warehousing | Financial + Trading Domain | Susquehanna Sports
SIG Susquehanna View all jobs
- Dublin
- Permanent
- Full-time
- Data architecture + engineering: own the full lifecycle of data after ingestion - from raw storage to curated, analytics-ready datasets
- Pipelines + processing: build and manage data pipelines (batch and streaming) that transform event and trading data into structured, meaningful outputs
- Storage + persistence: design scalable and cost-efficient data storage strategies (data lakes, warehouses)
- Scale + performance: proven experience operating in large-scale, high-throughput environments
- Ecosystem leadership: build the ecosystem - governance, tooling, standards, and team practices - around enterprise data management
- Programming: Python, SQL, and sometimes Scala or Java (for big data pipelines)
- Data engineering tools: Hadoop, Spark, Kafka, Airflow, and ETL frameworks
- Cloud platforms: AWS, Azure, or GCP (esp. services like EMR, Databricks, BigQuery, Synapse)
- Databases: Both relational (PostgreSQL, Oracle) and NoSQL (Cassandra, MongoDB)
- Data management + governance: data modelling, data warehousing (e.g., Snowflake, Redshift), metadata management, and strong understanding of data quality, lineage, and compliance (critical in finance)
- Analytics + visualization: familiarity with tools like Power BI, Tableau, or Looker
- Understanding of applied statistics, machine learning basics, and time series analysis (especially for market or risk data)
- Domain knowledge: ideally familiar with financial markets or sports trading data (time-based, event-driven, high-volume), risk management, or regulatory reporting (MiFID II, Basel, etc.)
- Soft skills: Cross-functional collaboration with data scientists, engineers, and compliance teams
- Ability to translate technical insights into business terms for finance stakeholders