Lead the design and development of Data Vault data models while providing architectural guidance and mentoring offshore teams. Ensure data governance and collaborate with stakeholders to improve data quality.
Overview:
We are looking for an experienced Data Modeler at Architect level with deep expertise in Data Vault architecture, data modeling best practices, and hands-on implementation of hubs, links, satellites, bridge tables, and Vault Speed concepts. This position will act as the Lead Data Architect, guiding and mentoring offshore data engineers while providing architectural leadership to client stakeholders.
- Lead the design and development of enterprise-grade Data Vault data models, including hubs, links, satellites, PIT tables, and bridge tables.
- Provide architectural direction and define data modeling standards, guidelines, and best practices.
- Act as a technical lead for offshore data engineering teams—guiding, reviewing work, and ensuring high-quality deliverables.
- Collaborate with business and technical stakeholders to understand requirements and convert them into scalable data models.
- Advise and consult client management on architecture decisions, modernization strategy, and Data Vault best practices.
- Drive data governance, metadata management, and data quality improvements.
- Ensure optimal performance, scalability, and maintainability across data platforms.
- Work closely with ETL/data engineering teams to ensure successful implementation of data models.
- 8–12 years of overall experience in data architecture, data modeling, and data engineering.
- Strong expertise in Data Vault 2.0 methodology and hands-on experience building:
- Hubs
- Links
- Satellites
- Bridge Tables
- PIT and Reference tables
- Experience with VaultSpeed or similar automation tools (advantage).
- Solid understanding of relational modeling, dimensional modeling, and enterprise data warehousing concepts.
- Experience working in cloud data platforms (Azure, AWS, or GCP).
- Strong communication skills with the ability to advise senior client stakeholders.
- Proven leadership experience managing offshore or distributed data teams.
- Ability to drive solutioning, provide technical guidance, and ensure architectural alignment.
- Exposure to Snowflake, Databricks, BigQuery, Redshift, or similar cloud DW platforms.
- Knowledge of ELT/ETL tools and pipeline orchestration.
- Experience in banking or financial services domain is a plus.
Top Skills
AWS
Azure
BigQuery
Data Vault
Data Vault 2.0
Databricks
GCP
Redshift
Snowflake
Vaultspeed
Unison Consulting Singapore Office
1 Changi Business Park Crescent, , Plaza 8 #03-06 Tower A, Singapore, , Singapore, 486025
Unison Consulting Singapore Office
#12-00, 63 Market Street, Bank of Singapore Center, Singapore, , Singapore, 048942
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