TiCard: Enhancing Database Query Optimization with Explainable Residual Learning
Published:Dec 16, 2025 12:35
•1 min read
•ArXiv
Analysis
This research explores cardinality estimation in database systems using a novel approach called TiCard, which leverages explainable residual learning. The paper's focus on explainability and deployment-readiness is crucial for practical adoption of AI-driven database optimization.
Key Takeaways
- •TiCard introduces a novel approach to cardinality estimation using explainable residual learning.
- •The 'EXPLAIN-only' design suggests a focus on practical deployment and interpretability.
- •This work likely aims to improve query performance by optimizing database execution plans.
Reference
“TiCard employs 'EXPLAIN-only' residual learning, highlighting a focus on explainability.”