IA2 uses the TD3-TD-SWAR model and DRL to optimize index selection, reducing TPC-H workload runtime by 40% via adaptive action masking.IA2 uses the TD3-TD-SWAR model and DRL to optimize index selection, reducing TPC-H workload runtime by 40% via adaptive action masking.

Reducing TPC-H Workload Runtime by 40% with IA2 Deep Reinforcement Learning

Abstract and 1. Introduction

  1. Related Works

    2.1 Traditional Index Selection Approaches

    2.2 RL-based Index Selection Approaches

  2. Index Selection Problem

  3. Methodology

    4.1 Formulation of the DRL Problem

    4.2 Instance-Aware Deep Reinforcement Learning for Efficient Index Selection

  4. System Framework of IA2

    5.1 Preprocessing Phase

    5.2 RL Training and Application Phase

  5. Experiments

    6.1 Experimental Setting

    6.2 Experimental Results

    6.3 End-to-End Performance Comparison

    6.4 Key Insights

  6. Conclusion and Future Work, and References

Abstract

This study introduces the Instance-Aware Index Advisor (IA2), a novel deep reinforcement learning (DRL)-based approach for optimizing index selection in databases facing large action spaces of potential candidates. IA2 introduces the Twin Delayed Deep Deterministic Policy Gradient - Temporal Difference State-Wise Action Refinery (TD3-TD-SWAR) model, enabling efficient index selection by understanding workload-index dependencies and employing adaptive action masking. This method includes a comprehensive workload model, enhancing its ability to adapt to unseen workloads and ensuring robust performance across diverse database environments. Evaluation on benchmarks such as TPCH reveals IA2’s suggested indexes’ performance in enhancing runtime, securing a 40% reduction in runtime for complex TPC-H workloads compared to scenarios without indexes, and delivering a 20% improvement over existing state-of-theart DRL-based index advisors.

1 Introduction

For more than five decades, the pursuit of optimal index selection has been a key focus in database research, leading to significant advancements in index selection methodologies [8]. However, despite these developments, current strategies frequently struggle to provide both high-quality solutions and efficient selection processes [5].

\ The Index Selection Problem (ISP), detailed in Section 3, involves choosing the best subset of index candidates, considering multi-attribute indexes, from a specific workload, dataset, and under given constraints, such as storage capacity or a maximum number of indexes. This task, aimed at enhancing workload performance, is recognized as NP-hard, highlighting the complexities, especially when dealing with multi-attribute indexes, in achieving optimal index configurations [7].

\ Reinforcement Learning (RL) offers a promising solution for navigating the complex decision spaces involved in index selection [6, 7, 10]. Yet, the broad spectrum of index options and the complexity of workload structures complicate the process, leading to prolonged training periods and challenges in achieving optimal configurations. This situation highlights the critical need for advanced solutions adept at efficiently managing the complexities of multi-attribute index selection [6]. Figure 1 illustrates the difficulties encountered with RL in index selection, stemming from the combinatorial complexity and vast action spaces. Our approach improves DRL agent efficiency via adaptive action selection, significantly refining the learning process. This enables rapid identification of advantageous indexes across varied database schemas and workloads, thereby addressing the intricate challenges of database optimization more effectively.

\ Our contributions are threefold: (i) modeling index selection as a reinforcement learning problem, characterized by a thorough system designed to support comprehensive workload representation and implement state-wise action pruning methods, distinguishing our approach from existing literature. (ii) employing TD3-TD-SWAR for efficient training and adaptive action space navigation; (iii) outperforming stateof-the-art methods in selecting optimal index configurations for diverse and even unseen workloads. Evaluated on the TPC-H Benchmark, IA2 demonstrates significant training efficiency, runtime improvements, and adaptability, marking a significant advancement in database optimization for diverse workloads.

\ Figure 1. Unique challenges to RL-based Index Advisors due to diverse and complex workloads

\

:::info This paper is available on arxiv under CC BY-NC-SA 4.0 Deed (Attribution-Noncommercial-Sharelike 4.0 International) license.

:::

\

Market Opportunity
Humanity Logo
Humanity Price(H)
$0.15584
$0.15584$0.15584
-12.02%
USD
Humanity (H) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact [email protected] for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

BitGo expands its presence in Europe

BitGo expands its presence in Europe

The post BitGo expands its presence in Europe appeared on BitcoinEthereumNews.com. BitGo, global leader in digital asset infrastructure, announces a significant expansion of its presence in Europe. The company, through its subsidiary BitGo Europe GmbH, has obtained an extension of the license from BaFin (German Federal Financial Supervisory Authority), allowing it to offer regulated cryptocurrency trading services directly from Frankfurt, Germany. This move marks a decisive step for the European digital asset market, offering institutional investors the opportunity to access secure, regulated cryptocurrency trading integrated with advanced custody and management services. A comprehensive offering for European institutional investors With the extension of the license according to the MiCA (Markets in Crypto-Assets) regulation, initially obtained in May 2025, BitGo Europe expands the range of services available for European investors. Now, in addition to custody, staking, and transfer of digital assets, the platform also offers a spot trading service on thousands of cryptocurrencies and stablecoins. Institutional investors can now leverage BitGo’s OTC desk and a high-performance electronic trading platform, designed to ensure fast, secure, and transparent transactions. Aggregated access to numerous liquidity sources, including leading market makers and exchanges, allows for trading at competitive prices and high-quality executions. Security and Regulation at the Core of BitGo’s Strategy According to Brett Reeves, Head of European Sales and Go Network at BitGo, the goal is clear: “We are excited to strengthen our European platform and enable our clients to operate smoothly, competitively, and securely.§By combining our institutional custody solution with high-performance trading execution, clients will be able to access deep liquidity with the peace of mind that their assets will remain in cold storage, under regulated custody and compliant with MiCA.” The security of digital assets is indeed one of the cornerstones of BitGo’s offering. All services are designed to ensure that investors’ assets remain protected in regulated cold storage, minimizing operational and counterparty risks.…
Share
BitcoinEthereumNews2025/09/18 04:28
Unleashing A New Era Of Seller Empowerment

Unleashing A New Era Of Seller Empowerment

The post Unleashing A New Era Of Seller Empowerment appeared on BitcoinEthereumNews.com. Amazon AI Agent: Unleashing A New Era Of Seller Empowerment Skip to content Home AI News Amazon AI Agent: Unleashing a New Era of Seller Empowerment Source: https://bitcoinworld.co.in/amazon-ai-seller-tools/
Share
BitcoinEthereumNews2025/09/18 00:10
New Crypto Investors Are Backing Layer Brett Over Dogecoin After Topping The Meme Coin Charts This Month

New Crypto Investors Are Backing Layer Brett Over Dogecoin After Topping The Meme Coin Charts This Month

Climbing to the top of the meme coin charts takes more than a viral mascot or celebrity tweets. Hype may spark attention, but only momentum, utility, and adaptability keep it alive. That’s why the latest debate among crypto enthusiasts is catching attention. While Dogecoin remains a household name, a new player has entered the arena […] The post New Crypto Investors Are Backing Layer Brett Over Dogecoin After Topping The Meme Coin Charts This Month appeared first on Live Bitcoin News.
Share
LiveBitcoinNews2025/09/18 00:30