🎯 What You’ll Actually Do
Build and run scalable pipelines (batch + streaming) that power gameplay, wallet, and promo analytics.
Model data for decisions (star schemas, marts) that Product, BI, and Finance use daily.
Make things reliable: tests, lineage, alerts, SLAs. Fewer surprises, faster fixes.
Optimize ETL/ELT for speed and cost (partitioning, clustering, late arrivals, idempotency).
Keep promo data clean and compliant (PII, GDPR, access controls).
Partner with POs and analysts on bets/wins/turnover KPIs, experiment readouts, and ROI.
Evaluate tools, migrate or deprecate with clear trade-offs and docs.
Handle prod issues without drama, then prevent the next one.
🧠 What You Bring
4+ years building production data systems. You’ve shipped, broken, and fixed pipelines at scale.
SQL that sings and Python you’re proud of.
Real experience with OLAP and BI (Power BI / Tableau / Redash — impact > logo).
ETL/ELT orchestration (Airflow/Prefect or similar) and CI/CD for data.
Strong grasp of warehouses & lakes: incremental loads, SCDs, partitioning.
Data quality mindset: contracts, tests, lineage, monitoring.
Product sense: you care about player impact, not just rows processed.
✨ Nice to Have (tell us if you’ve got it)
Kafka (or similar streaming), ClickHouse (we like it), dbt (modular ELT).
AWS data stack (S3, IAM, MSK/Glue/Lambda/Redshift) or equivalents.
Containers & orchestration (Docker/K8s), IaC (Terraform).
Familiarity with AI/ML data workflows (feature stores, reproducibility).
iGaming context: provider metrics bets / wins / turnover, regulated markets, promo events.
🔧 How We Work
Speed > perfection. Iterate, test, ship.
Impact > output. One rock-solid dataset beats five flaky ones.
Behavior > titles. Ownership matters more than hierarchy.
Direct > polite. Say what matters, early.
🔥 What We Offer
Fully remote (EU-friendly time zones) or Bratislava if you like offices.
Unlimited vacation + paid sick leave.
Quarterly performance bonuses.
No micromanagement. Real ownership, real impact.
Budget for conferences and growth.
Product-led culture with sharp people who care.
🧰 Our Day-to-Day Stack (representative)
Python, SQL, Airflow/Prefect, Kafka, ClickHouse/OLAP DBs, AWS (S3 + friends), dbt, Redash/Tableau, Docker/K8s, GitHub Actions.
👉 If you know how to make data boringly reliable and blisteringly fast — hit apply and let’s talk.
Please mention you found this job on AI Jobs. It helps us get more startups to hire on our site. Thanks and good luck!
Be the first to apply. Receive an email whenever similar jobs are posted.
Understand the required skills and qualifications, anticipate the questions you may be asked, and study well-prepared answers using our sample responses.
Data Engineer Q&A's