joblet.ai
Find JobsNearby JobsJobs for you
Sign inEmployers / Post a Job
joblet.ai

AI-powered job search connecting talent with opportunity.

ELEVEN AI, Inc.
200 Continental Drive, Suite 401
Newark, DE 19713

Product

  • Browse Jobs
  • Job Locations
  • Browse by Companies
  • Post a Job
  • Blog
  • FAQ
  • Jobs Near Me

Company

  • About Us
  • Contact
  • Refer & Earn
  • Explore all pages

Legal

  • Privacy Policy
  • Cookie Policy
  • Terms of Service

Browse jobs by industry

  • AI
  • IT Services
  • Healthcare
  • Manufacturing & Production
  • Supply Chain
  • Infrastructure
  • Transport & Logistics
  • Real Estate
  • Finance & Accounting
  • Consulting
  • Sales & Marketing
  • Hospitality
  • Media & Entertainment
  • Education

© 2026 ELEVEN AI, Inc. joblet.ai is a product of ELEVEN AI, Inc. All rights reserved.

Overview

Company
Airwallex
Location
all cities, KY 18
Employment type
On-site
  • Accessibility Lead (18)
  • Remote Portfolio Management Expert ($100/hr) at Vineburg, California (31)
  • Director, Product Management- Capital One Software (Remote) (48)
  • Director of Engineering - Hosting Pantheon - United States of America Remote (51)
  • Medical Claims Review Medical Director - Surgeon - Remote (32)
  • Corporate Tax Manager (USA - Remote) (14)
Back to Jobs
A
AirwallexVerified Employer

Business Services & Consulting • all cities, KY 18

Director, Data Platform Engineering (18)

all cities, KY 18On-sitePosted 1 day ago
Business Services & Consulting

About the Role

Director, Data Platform Engineering

We're hiring a Director, Data Platform Engineering (based in Singapore) to own the architecture, delivery, and adoption of a governed, reusable Data → Knowledge → Skills stack that powers analytics, AI agents, and real-time decisioning across the company. This is a product-facing platform leadership role. The successful leader will design and scale the semantic and operational layers on top of our Data Lakehouse (Databricks), enforce strong governance and lineage, and productize capabilities so both human analysts and machine agents reason and act consistently.

Our platform is evolving beyond raw data storage into a structured, scalable system comprising three tightly integrated layers:

  • Data – Governed, well-modeled, structured datasets including transactional records, event streams, dimensional models, and feature tables. This foundation must deliver high quality, strong lineage, and built-in regional compliance. It should be clean, trusted, and fully queryable.
  • Knowledge – A semantic layer that makes data meaningful to both humans and machines. This includes standardized business metric definitions, entity relationships, contextual documentation, and company-specific domain knowledge. It enables analysts and AI agents alike to ask questions such as "What is our net revenue retention in SEA?" and receive consistent, trustworthy answers without having to reverse-engineer underlying schemas.
  • Skills – Operationalized capabilities that act on data and knowledge. These include reusable analytical workflows, agent-callable tools, automated pipelines, API endpoints, and transformation primitives. Together, they form the building blocks that allow AI agents and internal teams not only to query information but to reason, automate, and execute reliably.

We are looking for a leader who can architect and scale this governed stack across regions and use cases, while ensuring it remains accessible and intuitive for Data Science, AI engineering, and technical business stakeholders. The objective is to create a shared foundation that enables both human analysts and AI agents to reason consistently and act confidently.

A critical component of this role is ownership of the regional and global data localization strategy within our Databricks environment. This includes designing architectural patterns that satisfy regulatory requirements while preserving a unified global data model across priority markets. The platform must reconcile local compliance constraints with global consistency in definitions, metrics, and knowledge artifacts.

You will partner closely with Data Science, AI engineering, Product, and Risk teams to ensure the platform supports rapid experimentation, intelligent automation, and high-quality decision-making, transforming raw data into durable knowledge and deployable skills across the organization.

Director, Data Platform Engineering

We're hiring a Director, Data Platform Engineering (based in Singapore) to own the architecture, delivery, and adoption of a governed, reusable Data → Knowledge → Skills stack that powers analytics, AI agents, and real-time decisioning across the company. This is a product-facing platform leadership role. The successful leader will design and scale the semantic and operational layers on top of our Data Lakehouse (Databricks), enforce strong governance and lineage, and productize capabilities so both human analysts and machine agents reason and act consistently.

Our platform is evolving beyond raw data storage into a structured, scalable system comprising three tightly integrated layers:

  • Data – Governed, well-modeled, structured datasets including transactional records, event streams, dimensional models, and feature tables. This foundation must deliver high quality, strong lineage, and built-in regional compliance. It should be clean, trusted, and fully queryable.
  • Knowledge – A semantic layer that makes data meaningful to both humans and machines. This includes standardized business metric definitions, entity relationships, contextual documentation, and company-specific domain knowledge. It enables analysts and AI agents alike to ask questions such as "What is our net revenue retention in SEA?" and receive consistent, trustworthy answers without having to reverse-engineer underlying schemas.
  • Skills – Operationalized capabilities that act on data and knowledge. These include reusable analytical workflows, agent-callable tools, automated pipelines, API endpoints, and transformation primitives. Together, they form the building blocks that allow AI agents and internal teams not only to query information but to reason, automate, and execute reliably.

We are looking for a leader who can architect and scale this governed stack across regions and use cases, while ensuring it remains accessible and intuitive for Data Science, AI engineering, and technical business stakeholders. The objective is to create a shared foundation that enables both human analysts and AI agents to reason consistently and act confidently.

A critical component of this role is ownership of the regional and global data localization strategy within our Databricks environment. This includes designing architectural patterns that satisfy regulatory requirements while preserving a unified global data model across priority markets. The platform must reconcile local compliance constraints with global consistency in definitions, metrics, and knowledge artifacts.

You will partner closely with Data Science, AI engineering, Product, and Risk teams to ensure the platform supports rapid experimentation, intelligent automation, and high-quality decision-making, transforming raw data into durable knowledge and deployable skills across the organization.

What You'll Do

Data – Governed, well-modeled, structured datasets including transactional records, event streams, dimensional models, and feature tables. This foundation must deliver high quality, strong lineage, and built-in regional compliance. It should be clean, trusted, and fully queryable.
Knowledge – A semantic layer that makes data meaningful to both humans and machines. This includes standardized business metric definitions, entity relationships, contextual documentation, and company-specific domain knowledge. It enables analysts and AI agents alike to ask questions such as "What is our net revenue retention in SEA?" and receive consistent, trustworthy answers without having to reverse-engineer underlying schemas.
Skills – Operationalized capabilities that act on data and knowledge. These include reusable analytical workflows, agent-callable tools, automated pipelines, API endpoints, and transformation primitives. Together, they form the building blocks that allow AI agents and internal teams not only to query information but to reason, automate, and execute reliably.

Skills & Technologies

Business Services & Consulting

Similar jobs

Accessibility Lead (18)
Jobgether
all cities, KY 18Posted 6 hours ago
Remote Portfolio Management Expert ($100/hr) at Vineburg, California (31)
disABLEDperson
all cities, NH 31Posted 6 hours ago
Director, Product Management- Capital One Software (Remote) (48)
Capital One
all cities, WA 48Posted 7 hours ago
Director of Engineering - Hosting Pantheon - United States of America Remote (51)
SoftBank Investment Advisers
all cities, WY 51Posted 6 hours ago
Medical Claims Review Medical Director - Surgeon - Remote (32)
UnitedHealth Group
all cities, NJ 32Posted 7 hours ago
Corporate Tax Manager (USA - Remote) (14)
Gurobi Optimization
all cities, ID 14Posted 7 hours ago
A
Airwallex
Business Services & Consulting
View all jobs at Airwallex