Skip to content
← Back to job listings

Senior Data Engineer, Virtual Insurance

AIFT · Taiwan

Data Science / AI / Machine LearningSenior LevelQuick applyfull-time1 day ago

About The Role

[Job Overview]

We are looking for an experienced Senior Data Engineer to join our engineering team and play a key role in building and scaling our enterprise data platform. You will design, develop, and maintain high-quality data warehouses and data-driven applications that power analytics, reconciliation, and business decision-making across the organization.

This role requires strong expertise in modern data architectures, pipeline engineering, and data quality management. The ideal candidate combines hands-on technical capability with a deep commitment to reliability, scalability, and governance in a regulated environment.

[Responsibilities]

  • Data operations: own day-to-day operations of data platforms/pipelines capacity, stability, upgrades, deployments, and recovery drills to sustain high availability and low latency.
  • Data collection: design/manage multi-source ingestion (exchanges, internal and external systems), protocol parsing, and robust retry mechanisms.
  • Develop rule-based and statistical data quality checks (completeness, uniqueness, time alignment, anomaly detection, error handling).
  • Implement automated remediation, reconciliation workflows, and historical backfilling.
  • Establish monitoring and alerting frameworks to ensure trusted, production-grade datasets.
  • End-to-End pipelines: plan and maintain scalable ETL/ELT including scheduling, caching, partitioning, modelling, schema evolution, and lineage to support both batch and real-time streaming.
  • Enforce data access controls, encryption, auditing, and classification to comply with internal policies and external regulatory requirements (including PII management).
  • Apply Infrastructure-as-Code, data versioning, data tests, and CI/CD to improve predictability and reduce manual risk.
  • Contribute to embedded GenAI and LLM-powered data applications for enterprise analytics, reconciliation, and internal productivity use cases.
  • Partner with analytics and product teams to operationalize AI-driven data solutions.

[Requirements]

  • Bachelor’s degree in Computer Science, Engineering, Information Technology, or a related field.
  • 5+ years of experience in data engineering, data platform architecture, or AI/ML engineering.
  • Strong experience with modern cloud data platforms (e.g., Snowflake, Databricks, BigQuery, Redshift).
  • Hands-on experience building BI data foundations and supporting GenAI / LLM architectures.
  • Proficiency in SQL and workflow orchestration tools (e.g., Airflow), streaming platforms (e.g., Kafka), and pipeline design best practices.
  • Solid understanding of data warehouse development lifecycles and dimensional modeling concepts.
  • Familiarity with GitLab and CI/CD pipelines.
  • Strong debugging, performance tuning, and problem-solving skills.
  • Working knowledge of data governance, lineage, privacy, and security frameworks.

This listing was posted by a verified recruiter at AIFT. Report this listing