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Data Accelerator Goose FileSystem

Release Notes and Announcements
Release Notes
Product Selection Guide
GooseFSx
Product Introduction
Quick Start
Purchase Guide
Console Guide
Tool Guide
Practical Tutorial
Service Level Agreement
Glossary
GooseFS
Product Introduction
Billing Overview
Quick Start
Core Features
Console Guide
Developer Guide
Client Tools
Cluster Configuration Practice
Data Security
Service Level Agreement
GooseFS-Lite
GooseFS-Lite Tool
Practical Tutorial
Use GooseFS in Kubernetes to Speed Up Spark Data
Access Bucket Natively with POSIX Semantics Using GooseFS
GooseFS Distributedload Tuning Practice
FAQs
GooseFS Policy
Privacy Policy
Data Processing And Security Agreement

FAQs

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마지막 업데이트 시간: 2025-07-17 17:50:49

What Is a Data Accelerator?

The Data Accelerator (Data Accelerator Goose File System, GooseFS) can leverage the cost advantage of using Cloud Object Storage (COS) as the Storage base for the Data ecosystem. It provides a unified Data entry point for computing applications, accelerating massive Data analysis, machine learning, and artificial intelligence, as well as improving the performance of business accessing Storage. Compared with directly reading and writing Data on COS, GooseFS can bring more than ten times the performance improvement for upper-layer computing applications, significantly enhancing production efficiency. In addition, GooseFS adopts a distributed cluster architecture, featuring elasticity, high reliability, and high availability. It provides a unified namespace and access protocol for upper-layer computing applications, making it convenient for users to manage and transfer Data across different Storage systems.

How to Get Started with a Data Accelerator?

You can refer to Getting Started with Console to quickly use the data accelerator.

Core Features of a Data Accelerator?

The data accelerator features transparent acceleration, unified namespace, Table management, and GooseFS-FUSE capabilities. For details, see Core Features.


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