
Director of Training and Quality, Catalog Ops Improvement
- 서울시
- 정규직
- 풀타임
- Define and implement quality control processes to ensure the accuracy and reliability of labeled data and operational workflows.
- Establish and monitor key performance indicators (KPIs) related to data labelling accuracy, annotation consistency, and operational efficiency.
- Develop and enforce Standard Operation Procedures (SOPs) to ensure consistency, compliance, and best practices across ML operations.
- Lead root cause analysis and corrective action initiatives to address quality issues and optimize workflow performance.
- Work closely with product and engineering teams to enhance automation and improve data validation processes.
- Design, implement, and continuously improve training programs for ML annotators, reviewers, and operational teams.
- Develop competency frameworks and certification processes to ensure a high level of accuracy and consistency in ML training.
- Collaborate with ML engineers and data scientists to align training content with evolving ML models and workflows.
- Introduce new tools, techniques, and best practices for improving annotation efficiency and decision-making.
- Assess, implement, and optimize tooling solutions for data annotation, quality assurance, and workflow automation.
- Work with engineering teams to refine and enhance annotation platforms
- Oversee integration of quality monitoring tools, dashboards, and analytics to track performance and drive insights.
- Evaluate and implement AI-driven solutions to improve annotation accuracy and reduce manual intervention.
- Ensure the seamless adoption of new tools through structured training and documentation.
- Build and lead a team of quality specialists, trainers, and process analysts to support ML operations at scale.
- Partner with cross-functional teams - including ML engineers, data scientists and operation teams - to align training and quality initiatives with business goals.
- Stay up to date with industry trends, emerging ML technologies, and e-commerce best practices to drive continuous improvement.
- Advocate for a culture of operational excellence, data integrity, and continuous learning.
- Strong understanding of machine learning concepts, data annotation processes, and model evaluation techniques.
- Experience in e-commerce operations, ML ops, or technical operation processes.
- Proven ability to design and implement quality assurance processes that enhance workforce capabilities.
- Analytical mindset with experience using data driven approaches to improve quality and efficiency.
- Proven ability to design and implement training programs that enhance workforce capabilities.
- Excellent leadership, communication, and stakeholder management skills.
- Proficiency in quality management methodologies (Six Sigma, Lean, etc)
- Experience with tooling selection and implementation for annotation, automation and performance monitoring.
- Strong expertise in developing, managing and enforcing Standard Operating Procedures for large-scale operations.
- 7+ years of experience in training, quality assurance, or operational leadership within an ML, AI or data driven environment.
- Experience working with ML annotation platforms (Scale AI, Labelbox, Amazon SageMaker Ground Truth)
- Familiarity with automation tools, workflow optimization, and AI-assisted quality assurance.
- Knowledge of compliance and ethical considerations in data labelling and ML training.
- Proficiency in scripting or dashboarding tools (SQL, Python, Tableau, Looker) to support quality tracking and analytics