Loading
Hire.Monster

Senior Data Engineer

Tel Aviv
АналитикаСША

Описание вакансии

  • Key Responsibilities
  • Strategic Data Modeling: Translate complex business requirements into efficient, scalable data models and schemas. You will design the logic that turns raw events into actionable business intelligence.
  • Pipeline Architecture: Design, implement, and maintain resilient data pipelines that serve multiple business domains. You will ensure data flows reliably, securely, and with low latency across our ecosystem.
  • End-to-End Ownership: Own the data development lifecycle completely—from architectural design and testing to deployment, maintenance, and observability.
  • Cross-Functional Partnership: Partner closely with Data Analysts, Data Scientists, and Software Engineers to deliver end-to-end data solutions.
  • What You Bring
  • Your Mindset:
  • Data as a Product: You treat data pipelines and tables with the same rigor as production APIs—reliability, versioning, and uptime matter to you.
  • Business Acumen: You don't just move data; you understand the business questions behind the query and design solutions that provide answers.
  • Builder's Spirit: You work independently to balance functional needs with non-functional requirements (scale, cost, performance).
  • Your Experience & Qualifications:
  • Must Haves:
  • 6+ years of experience as a Data Engineer, BI Developer, or similar role.
  • Modern Data Stack: Strong hands-on experience with DBT , Snowflake , Databricks , and orchestration tools like Airflow .
  • SQL & Modeling: Strong proficiency in SQL and deep understanding of data warehousing concepts (Star schema, Snowflake schema).
  • Data Modeling: Proven experience in data modeling and business logic design for complex domains—building models that are efficient and maintainable.
  • Modern Workflow: Proven experience leveraging AI assistants to accelerate data engineering tasks.
  • Bachelor’s degree in Computer Science, Industrial Engineering, Mathematics, or an equivalent analytical discipline.
  • Preferred / Bonus:
  • Cloud Data Warehouses: Experience with BigQuery or Redshift.
  • Coding Skills: Proficiency in Python for data processing and automation.
  • Big Data Tech: Familiarity with Spark, Kubernetes, Docker.

BI Integration: Experience serving data to BI tools such as Looker, Tableau, or Superset. #LI-Hybrid

Опубликовано: 23.12.2025