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Auteurs principaux: Gregory, Weintraub
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2510.15445
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author Gregory
Weintraub
author_facet Gregory
Weintraub
contents Cloud data lakes provide a modern solution for managing large volumes of data. The fundamental principle behind these systems is the separation of compute and storage layers. In this architecture, inexpensive cloud storage is utilized for data storage, while compute engines are employed to perform analytics on this data in an "on-demand" mode. However, to execute any calculations on the data, it must be transferred from the storage layer to the compute layer over the network for each query. This transfer can negatively impact calculation performance and requires significant network bandwidth. In this thesis, we examine various strategies to enhance query performance within a cloud data lake architecture. We begin by formalizing the problem and proposing a straightforward yet robust theoretical framework that clearly outlines the associated trade-offs. Central to our framework is the concept of a "query coverage set," which is defined as the collection of files that need to be accessed from storage to fulfill a specific query. Our objective is to identify the minimal coverage set for each query and execute the query exclusively on this subset of files. This approach enables us to significantly improve query performance.
format Preprint
id arxiv_https___arxiv_org_abs_2510_15445
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Optimizing Data Lakes' Queries
Gregory
Weintraub
Databases
Cloud data lakes provide a modern solution for managing large volumes of data. The fundamental principle behind these systems is the separation of compute and storage layers. In this architecture, inexpensive cloud storage is utilized for data storage, while compute engines are employed to perform analytics on this data in an "on-demand" mode. However, to execute any calculations on the data, it must be transferred from the storage layer to the compute layer over the network for each query. This transfer can negatively impact calculation performance and requires significant network bandwidth. In this thesis, we examine various strategies to enhance query performance within a cloud data lake architecture. We begin by formalizing the problem and proposing a straightforward yet robust theoretical framework that clearly outlines the associated trade-offs. Central to our framework is the concept of a "query coverage set," which is defined as the collection of files that need to be accessed from storage to fulfill a specific query. Our objective is to identify the minimal coverage set for each query and execute the query exclusively on this subset of files. This approach enables us to significantly improve query performance.
title Optimizing Data Lakes' Queries
topic Databases
url https://arxiv.org/abs/2510.15445