Design and develop data ingestion pipelines, handle structured and unstructured data, and collaborate with global teams to align data solutions with business goals.
Key Highlights
Technical Skills Required
Benefits & Perks
Job Description
- leading insurance companies
- highly skilled and motivated Data Engineer
- a robust data platform in a cloud environment
Join a leading global insurance company as a Data Engineer, where you'll help shape the future of data infrastructure and analytics. This is a high-impact role for engineers who thrive on building scalable, cloud-native data systems and transforming raw data into actionable insights.
If you are interested to learn more, email to Amy. Dao@teksystems.com or apply here.
🔧 Key Responsibilities
- Design and develop data ingestion pipelines for internal and external sources
- Handle structured, semi-structured, and unstructured data across batch and real-time workflows
- Optimize pipelines for performance, reliability, and scalability
- Implement best practices for error handling, logging, and monitoring
- Collaborate with global teams to align data solutions with business goals
- Bachelor’s or Master’s degree in Computer Science, IT, Engineering, or related field
- Proven experience in data engineering and cloud-based data systems, preferably Azure (Azure ML, AKS, Synapse Spark, Synapse Pipeline)
- Strong understanding of data pipeline development, data warehousing, and BI tools
- Excellent problem-solving skills and a proactive, innovative mindset
- Strong communication and collaboration skills in a global team environment
- Preferred technical skills: PySpark, Spark, PL SQL, Transact SQL, Power BI, ETL (Informatica)
- Work with a global insurance leader driving digital transformation
- Hybrid work model with a Tokyo-based team
- Relocation support available for international candidates
- Collaborative, English-speaking environment
- Competitive compensation and benefits
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