
Machine Learning Engineer (After-sales Experience) - TikTok E-commerce Governance
TikTok
Posted 11 days ago
About the Team
The E-commerce After-sales Algorithm Team is dedicated to building intelligent, fair, and efficient post-purchase service systems. We leverage advanced AI technologies to improve refund and return processing, dispute resolution, merchant responsibility attribution, customer service automation, and overall buyer experience.
We focus on balancing user experience, merchant ecosystem health, and platform risk control, ensuring sustainable e-commerce growth.
Responsibilities
- Develop and optimize machine learning / deep learning models for after-sales scenarios such as refunds, returns, cancellations, disputes, and compensation.
- Build intelligent decision-making systems for responsibility attribution and dispute resolution between buyers and sellers.
- Develop NLP and multimodal models to analyze customer service conversations, complaint texts, product descriptions, and evidence materials.
- Build predictive models to proactively identify high-risk transactions and reduce after-sales disputes.
- Optimize real-time and offline feature engineering pipelines for large-scale transactional and behavioral data.
- Design and run A/B experiments to improve resolution efficiency, fairness, and user satisfaction.
- Collaborate closely with product, operations, and engineering teams to translate algorithmic capabilities into scalable production systems.
The E-commerce After-sales Algorithm Team is dedicated to building intelligent, fair, and efficient post-purchase service systems. We leverage advanced AI technologies to improve refund and return processing, dispute resolution, merchant responsibility attribution, customer service automation, and overall buyer experience.
We focus on balancing user experience, merchant ecosystem health, and platform risk control, ensuring sustainable e-commerce growth.
Responsibilities
- Develop and optimize machine learning / deep learning models for after-sales scenarios such as refunds, returns, cancellations, disputes, and compensation.
- Build intelligent decision-making systems for responsibility attribution and dispute resolution between buyers and sellers.
- Develop NLP and multimodal models to analyze customer service conversations, complaint texts, product descriptions, and evidence materials.
- Build predictive models to proactively identify high-risk transactions and reduce after-sales disputes.
- Optimize real-time and offline feature engineering pipelines for large-scale transactional and behavioral data.
- Design and run A/B experiments to improve resolution efficiency, fairness, and user satisfaction.
- Collaborate closely with product, operations, and engineering teams to translate algorithmic capabilities into scalable production systems.
Job details
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