Key Responsibilities
1. Data Pipeline Development & Data Operations
- Design, build, and maintain robust ETL/ELT pipelines to support analytics, reporting, and product requirements.
- Develop, optimize, and refactor complex SQL queries across large-scale structured and semi-structured datasets.
- Improve data infrastructure performance, reliability, and scalability across data platforms (e.g., Oracle, PostgreSQL, BigQuery, Snowflake).
- Manage, enhance, and optimize the Customer Data Platform (CDP) to support new business use cases.
- Ensure data quality, lineage, and governance compliance across the data ecosystem.
2. Automation & Reporting Infrastructure
- Build automated reporting pipelines to support BI and recurring business processes.
- Enable analysts by developing reusable data models and curated data layers.
- Automate manual data workflows and support deployment of dashboards to internal and external stakeholders.
3. Data Products & Self-Service Enablement
- Develop and maintain a self-service reporting portal to empower cross-functional teams.
- Support data monetisation initiatives by delivering secure, high-accuracy, external-facing data products.
4. Cross-Functional Collaboration
- Partner closely with business analysts to translate analytical needs into scalable data models and pipelines.
- Work with IT teams to resolve data issues and optimize system performance.
- Provide technical support for deep-dive analytical requests requiring advanced querying or data transformation.
Required Qualifications
Technical Skills
- Strong proficiency in SQL with hands-on experience querying large and complex datasets.
- Practical experience with ETL/ELT tools, data warehousing, and modern data stack technologies.
- Experience with at least one scripting language (Python or R) for data processing or automation.
- Familiarity with BI tools (Power BI, Tableau, Looker) and dashboard deployment pipelines.
- Knowledge of relational databases and cloud data platforms (Oracle, PostgreSQL, BigQuery, Snowflake, Redshift).
- Understanding of data modelling methodologies (Star Schema, Data Vault, etc.) is a strong advantage.
Soft & Professional Skills
- Strong problem-solving mindset, with attention to data accuracy and process efficiency.
- Ability to work as the technical counterpart to a business-focused analyst.
- Comfortable working in a fast-moving retail and loyalty data environment.
Background & Education
- Bachelor’s degree in Computer Science, Information Systems, Data Engineering, Statistics, Mathematics, or a related field.
- Minimum 3 years of experience in data engineering or similar technical data roles.
- Fluency in English and Vietnamese.

