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

PostgreSQL & HypoPG: The Experimental Foundation of IA2 Index Selection

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

6 Experiments

Our experiments are designed to evaluate the IA2 on several critical aspects of database optimization and index selection. Specifically, we aim to (1) analyze the performance of IA2’s core algorithm, TD3-TD-SWAR, against other reinforcement learning algorithms, showcasing its unique strengths and contributions; (2) assess the efficiency of the action masking technique in IA2 for action space reduction and learning process acceleration; and (3) measure the end-to-end (E2E) workload runtime improvements achieved with IA2, highlighting its practical impact on database performance.

6.1 Experimental Setting

Implementation and Environment: Our prototype is implemented in Python, utilizing PyTorch for model development. Interfaced with PostgreSQL 15.6, it integrates HypoPG for what-if analysis, aiding in query cost estimation. Experiments are conducted on a virtual machine powered by a shared Nvidia Quadro RTX8000 GPU and equipped with 8 CPU cores, within a single-threaded SQL-DB environment.

\ Benchmark Workloads: TPC-H (SF1) forms the basis for seven workloads (W1 - W7), derived from its 22 query templates plus additional queries for a broad evaluation scope. Each workload contains 50 queries, with complexity reflected in the diversity of tables and attributes. W7, uniquely, serves as a test for IA2’s ability to generalize, being unseen during training. W1-W6 are used for standard training and evaluation, while W7 undergoes slight fine-tuning on a subset of the training set for performance assessment on novel queries. Workload outlines are depicted in Figure 4.

\ Figure 4. Workloads’ Outline, W1-W7 with the increasing complexity and diverse patterns

\ Competitors: Our evaluation includes comparisons with SWIRL, DRLinda, Extend, and Lan et al., as discussed in Section 2, to benchmark IA2 against the state-of-the-art in index selection. Comparison of these selected RL-based index advisors is shown in Tabel 1

\ Evaluation Metrics: The primary metric for assessing IA2 and its competitors is the end-to-end runtime of workloads, using the performance gain ratio for direct optimization comparisons across index advising methods. The evaluation covers trends in Storage Budget (2-8), Workloads, and Training Episodes (50-400), with storage quantified in units where 1 unit equals 128MB.

\

:::info Authors:

(1) Taiyi Wang, University of Cambridge, Cambridge, United Kingdom (Taiyi.Wang@cl.cam.ac.uk);

(2) Eiko Yoneki, University of Cambridge, Cambridge, United Kingdom (eiko.yoneki@cl.cam.ac.uk).

:::


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

:::

\

Market Opportunity
Index Cooperative Logo
Index Cooperative Price(INDEX)
$0.517
$0.517$0.517
-0.51%
USD
Index Cooperative (INDEX) 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 service@support.mexc.com 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

Real Estate Tokenization: Why Legal Architecture Matters More Than Technology

Real Estate Tokenization: Why Legal Architecture Matters More Than Technology

Oleg Lebedev on How Corporate Law Determines the Success or Failure of Digital Asset Projects. Real estate tokenization is gaining momentum worldwide.Visit Website
Share
Coinstats2026/01/10 02:00
Fed Makes First Rate Cut of the Year, Lowers Rates by 25 Bps

Fed Makes First Rate Cut of the Year, Lowers Rates by 25 Bps

The post Fed Makes First Rate Cut of the Year, Lowers Rates by 25 Bps appeared on BitcoinEthereumNews.com. The Federal Reserve has made its first Fed rate cut this year following today’s FOMC meeting, lowering interest rates by 25 basis points (bps). This comes in line with expectations, while the crypto market awaits Fed Chair Jerome Powell’s speech for guidance on the committee’s stance moving forward. FOMC Makes First Fed Rate Cut This Year With 25 Bps Cut In a press release, the committee announced that it has decided to lower the target range for the federal funds rate by 25 bps from between 4.25% and 4.5% to 4% and 4.25%. This comes in line with expectations as market participants were pricing in a 25 bps cut, as against a 50 bps cut. This marks the first Fed rate cut this year, with the last cut before this coming last year in December. Notably, the Fed also made the first cut last year in September, although it was a 50 bps cut back then. All Fed officials voted in favor of a 25 bps cut except Stephen Miran, who dissented in favor of a 50 bps cut. This rate cut decision comes amid concerns that the labor market may be softening, with recent U.S. jobs data pointing to a weak labor market. The committee noted in the release that job gains have slowed, and that the unemployment rate has edged up but remains low. They added that inflation has moved up and remains somewhat elevated. Fed Chair Jerome Powell had also already signaled at the Jackson Hole Conference that they were likely to lower interest rates with the downside risk in the labor market rising. The committee reiterated this in the release that downside risks to employment have risen. Before the Fed rate cut decision, experts weighed in on whether the FOMC should make a 25 bps cut or…
Share
BitcoinEthereumNews2025/09/18 04:36
Why Altcoins Could Be Primed for 5–10x Gains After Years of Consolidation

Why Altcoins Could Be Primed for 5–10x Gains After Years of Consolidation

Altcoins are poised for a potential 5-10x surge after long consolidation, with dominance set to rise in 2025 based on historical trends. The cryptocurrency market
Share
LiveBitcoinNews2026/01/10 02:32