Swiggy Improves Search Autocomplete Using Real Time Machine Learning Ranking
📰 InfoQ AI/ML
Learn how Swiggy improved search autocomplete using real-time machine learning ranking, enabling continuous model updates and strict latency constraints
Action Steps
- Build a candidate generation system using OpenSearch
- Implement a feature store for real-time signals
- Apply learning to rank models for improved relevance
- Configure the system to maintain strict latency constraints
- Test the system with continuous model updates
Who Needs to Know This
Data scientists and engineers on a team can benefit from this approach to improve search autocomplete functionality, while product managers can understand the potential impact on user experience
Key Insight
💡 Separating candidate generation and ranking, and using feature stores for real-time signals, can improve search autocomplete relevance while maintaining low latency
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🚀 Swiggy improves search autocomplete with real-time ML ranking! 🤖
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