Quality Analyst (AI Platform), Data Solutions & Initiatives
Singapore
February 25, 2026
Apple Custom Ats
Summary
The people here at Apple don't just create products - they create the kind of wonder that's revolutionized entire industries. It's the diversity of those people and their ideas that inspires the innovation that runs through everything we do, from amazing technology to industry-leading environmental efforts.
Apple is looking for a world-class Quality Analyst to join the worldwide business development and strategy team. This is a unique opportunity to help the growth of one of Apple’s global initiatives and contribute to launching ground-breaking new features in support of Apple’s demand generation strategy.
For this position, the individual will need a strong foundation in Quality Assurance, data analysis, and system testing, with the ability to evaluate and support AI-powered and LLM-based features. This role is focused on validating the quality, reliability, and correctness of AI outputs in real production scenarios, not just traditional pass/fail testing.
Are you an individual who possesses the right mix of technical and data analysis skills to successfully assure data quality for strategic initiatives in a fast-paced environment? Come join our team!
Description
Your responsibilities will include:
* Deep dive into various financial & hierarchical data points in different sets of hierarchies, understanding the nuances of how complex data behaves
* Define and implement the test strategy based on Functional Requirements driven by the Product Manager
* Work closely with the Product Managers to define test plans that ensure data quality both on new development and regular data loads
* Drive test coverage across different source systems, transactional applications and reporting environments, taking into account new features and regression
* Execute test scenarios in a repeatable manner, allowing for easy data quality monitoring
* Coordinate release management and hold the final go / no-go in terms of data quality and functional behaviour
* Act as first gate for Production Ops issues, confirm the behavior and makes the call on priority with Product Manager
* Report findings in a clear, structured, and actionable manner
* Collaborate with Engineers to understand implementation logic
* Manage tickets on found data issues and work with the Product Manager to plan out bug fixes
* Communicating status updates to end users and stakeholders concisely in a timely manner
Minimum Qualifications
Strong communicator with the ability to interpret technical concepts and data findings for non-technical end users
Experience applying a data-driven QA approach, including data reconciliation or validation, in business-critical environments
Hands-on experience with SQL and at least one analytics or reporting tool (e.g., Business Objects, Tableau, or similar), with the ability to independently investigate and validate datasets
Hands-on experience designing, implementing, and executing automated test cases using languages or frameworks such as Python, JavaScript, or Selenium
Experience validating backend APIs, data pipelines, or service-based systems using automated approaches
Experience working in cross-functional teams using Agile frameworks such as Scrum or Kanban
Familiarity with LLM-based or AI-powered systems, including hands-on experimentation or professional exposure
Understanding of prompt-based systems and how changes to prompts or inputs affect outputs
Experience using collaboration and tracking tools such as Jira, Confluence, Quip, or similar
Strong problem-solving skills with attention to detail
Self-motivated, proactive, and able to work independently or as part of a team
Ability to learn quickly and adapt in a fast-paced environment
Preferred Qualifications
Professional experience testing LLM-based systems (e.g., chat, summarization, classification, extraction, or RAG workflows)
Experience building or maintaining scalable automated test frameworks beyond test case execution
Strong proficiency in SQL, including complex joins, aggregations, and large dataset validation
Understanding of Dimensional Modeling and Data Warehousing concepts
Experience testing data migration projects, including source-to-target validation
Familiarity with CI/CD pipelines and integrating automated tests into release workflows
Exposure to model behavior evaluation, such as hallucination detection, grounding checks, or consistency analysis
Experience working with observability, logging, or monitoring for data or AI systems
Domain experience in BI, financial, or hierarchical data systems