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Beyond TPC-H: Scaling IA2 for Real-World Database Optimization

10 Jan 2026

IA2 sets a new standard for database optimization using the TD3-TD-SWAR model, offering superior efficiency and unseen workload generalization.

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Adaptive Action Pruning: Scaling Index Selection for Unseen Workloads

10 Jan 2026

IA2 revolutionizes index selection with rapid training, reducing SQL runtime by 61% via adaptive action pruning and workload modeling

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Beyond SWIRL: Scalable Database Indexing for Dynamic Workloads

10 Jan 2026

IA2 outperforms SWIRL and other methods by 15-20%, achieving a 61% runtime improvement through storage-aware RL and rapid training efficiency.

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Adaptive Action Pruning: Scaling Databases with Intelligent Action Masking

9 Jan 2026

IA2 outpaces SWIRL and Lan et al. in training efficiency using TD3-TD-SWAR and adaptive action masking for faster SQL index selection.

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PostgreSQL & HypoPG: The Experimental Foundation of IA2 Index Selection

7 Jan 2026

IA2 demonstrates significant database optimization on TPC-H benchmarks using PostgreSQL and HypoPG, achieving superior end-to-end runtime gains.

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Beyond Preprocessing: Sequential Indexing and Temporal Consistency in IA2

7 Jan 2026

IA2 uses the TD3-TD-SWAR algorithm to adaptively mask irrelevant indexes, ensuring robust performance optimization for both familiar and unseen workloads.

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IA2 Preprocessing: Establishing the Foundation for Index Selection

6 Jan 2026

The IA2 preprocessing phase uses a workload model and index candidates enumerator to create accurate state representations and action spaces.

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Unseen Workload Optimization: The Two-Phase IA2 Approach

6 Jan 2026

IA2 uses a two-phase framework to generate states and action pools from workloads, enabling RL agents to make sequential index selection decisions.

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Minimizing TD Error: Optimizing Computational Efficiency in ISP

24 Dec 2025

The TD3-TD-SWAR model uses a selector network to mask actions, minimizing Temporal Difference (TD) error for faster, high-impact index selection.