MinIO Object Storage: High-performance deployment under CentOS systems
MinIO is a high-performance distributed object storage system developed based on the Go language, compatible with Amazon S3. It supports a variety of client languages, including Java, Python, JavaScript, and Go. This article will briefly introduce the installation and compatibility of MinIO on CentOS systems.
CentOS version compatibility
MinIO has been verified on multiple CentOS versions, including but not limited to:
- CentOS 7.9: Provides a complete installation guide covering cluster configuration, environment preparation, configuration file settings, disk partitioning, and MinIO installation.
- CentOS 8.5: also provides detailed installation steps, including dependency package installation, MinIO package download, permission settings, installation command execution, data directory and log file creation, and MinIO service startup.
Installation steps summary
The installation process of MinIO on CentOS usually includes the following three stages:
- Preparation: Create an installation directory, set the necessary permissions, and download the MinIO installation package.
- MinIO installation: After the download is completed, give the installation package execution permissions and run the installation command.
- MinIO Start: You can choose to start MinIO directly or background service. The backend startup method usually specifies the port number for easy management and monitoring.
Important Note: The above steps are only an overview, and the actual installation process may vary depending on the CentOS version, network environment and other system configurations. It is strongly recommended that you refer to the official MinIO documentation or find relevant tutorials for more detailed and accurate installation instructions.
The above is the detailed content of MiniOpen Centos compatibility. For more information, please follow other related articles on the PHP Chinese website!

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