What can you expect in an AI Data Quality Analyst role :
Data Analysis
Quality Audits
- Perform quality audits on annotated datasets to ensure that they meet established guidelines and quality benchmarks.
Statistical Reporting
- Leverage statistical based quality metrics such as F1 score and inter-annotator agreement to evaluate data quality.
Root Cause Analysis
- Analyse annotation errors, trends, project processes, and project documentation to identify and understand the root cause of errors and propose remediation strategies.
Edge-Case Management
- Resolve and analyse edge-case annotations to ensure quality and identify areas for improvement.
Tooling
- Become proficient in using annotation and quality control tools to perform reviews and track quality metrics.
Guidelines
- Become an expert in the project specific guidelines and provide feedback for potential clarifications or improvements.
Continuous Improvement
Automation
- Identify opportunities to use automation to help enhance analytics, provide deeper insights, and improve efficiency.
Documentation
- Develop and maintain up-to-date documentation on quality standards, annotation guidelines, and quality control procedures.
Feedback
- Provide regular feedback that identifies areas for improvement across the annotation pipeline.
Collaboration & Communication
- Cross-Functional Teamwork
- Work closely with key project stakeholders and clients to understand project requirements and improve annotation pipelines.
- Training
- Assist with training annotators, providing guidance, feedback, and support to ensure data quality.
- Reporting
- Provide regular updates that highlight data quality metrics, key findings, and actionable insights for continuous process improvements.
Required Qualifications
- 1+ years of experience as a data analyst with exposure to data quality and/or data annotation - ideally within an AI/ML context.
- Familiarity with the basic concepts of AI/ML pipelines and data.
- Strong analytical and problem-solving skills with an exceptional eye for detail.
- Excellent written and verbal communication skills, with the ability to clearly articulate quality issues and collaborate with diverse teams.
- Ability to work independently and manage time effectively to meet deadlines.
- A strong problem-solver who thinks critically and drives innovation and continuous optimization.
- A quick learner with the ability to work independently in a fast-paced environment.
- A strong focus on detail, balanced against strategic priorities.
- A positive can-do attitude and the ability to easily adapt to new environments.
- Not afraid to speak up.
Preferred Qualifications
- Familiarity with data annotation tools (e.g. Labelbox, Dataloop, LabelStudio etc.).
- Experience working with multi-modal AI/ML datasets (images, videos, text, audio).
- Prior experience in an agile or fast-paced tech environment with exposure to AI/ML pipelines.
- Knowledge of programming languages (e.g. Python).
- Knowledge of the concepts and principles of data quality for AI/ML models and the impacts it can have on model performance.
- Working understanding of common quality metrics and statistical methods used in AI/ML data quality.
- Knowledge of AI/ML concepts and experience with data for AI/ML models.
- Experience in prompt engineering and leveraging LLMs in your day-to-day work.
Education / Certifications
- Bachelor’s degree in a technical field (e.g. Computer Science, Data Science) or equivalent professional experience.
Why you’ll love this role:
- Remote-first flexibility: Work from anywhere you’re most productive!
- Every challenge is new: Work on first‐of‐their‐kind problems at the frontier of AI safety.
- Visible impact: Your architectures directly influence how the world’s leading AI teams mitigate risk.
- Room to grow: Build the solutions function from scratch and scale into leadership as revenue follows.
- Mission‐driven team: Join sellers, researchers, and engineers united by a passion for safer AI.
Work Location / Work Schedule / Travel:
- Open to any PH office (site tagging)
- WFH setup, office on a needs basis only
- Morning or Mid Shift PHT (could change depending on business needs)