Expoint – all jobs in one place
מציאת משרת הייטק בחברות הטובות ביותר מעולם לא הייתה קלה יותר
Limitless High-tech career opportunities - Expoint

Microsoft Data Engineering Lead 
Taiwan, Taoyuan City 
799896951

02.09.2025

Required:

  • Bachelor’s or Master’s Degree in Computer Science, Mathematics, Software Engineering, Computer Engineering, or a related field, OR equivalent experience, with 8+ years of experience in business analytics, data science, software development, data modeling, or data engineering.

  • Experience working with cloud-based technologies, including relational databases, data warehouse, big data (e.g., Hadoop, Spark), orchestration/data pipeline tools, data lakes.

  • Self-motivated and organized to deliver results

Preferred:

  • 1+ year(s) people management experience
  • Experience with Azure Analytics stack, e.g., Azure Data Lake, Azure Data Factory, Azure Synapse, Azure Data Explorer (Kusto), Azure Cosmos DB, Azure logic apps, Fabric/Power BI
  • Experience in modern DevOps practices (including Git, CI/CD)
  • Good interpersonal and communications (verbal and written) skills, including the ability to effectively communicate with both business and technical teams.
  • Ability to use judgement and rating schemes to turn qualitative information into quantitative estimates
  • Proficiency in scenario analytics, mining for insights
Responsibilities

Responsibilities

  • Work within and across teams to solve complex technical challenges
  • Develop engineering best-practices – continuously evaluate our processes and reporting to identify opportunities to improve, enhance, and automate existing and new capabilities with a fundamental understanding of the end-to-end scenario
  • Measure the success and usage patterns of the product / feature at various levels as well as key engineering metrics
  • Provide thought leadership, creation, and execution on data platform capabilities
  • Grow & foster an inclusive, creative, high-performance team culture
  • Coach & mentor other team members
  • Contribute to a data-driven culture as well as a culture of experimentation across theorganization.