tree: 2caa2ec523bb08388683d0866a32efce0d1f6498 [path history] [tgz]
  1. .vuepress/
  2. Community/
  3. Development/
  4. Download/
  5. stage/
  6. UserGuide/
  7. zh/
  8. README.md
src/README.md

home: true icon: home title: Apache TsFile heroImage: home_icon.svg bgImage: bg.svg bgImageDark: bg.svg bgImageStyle: background-attachment: fixed

background-repeat: repeat

background-size: initial

heroText: Open-source File Format for Industrial Time-Series Datasets tagline: TsFile is a high-performance columnar storage file format designed for industrial time-series data, featuring multi-language interfaces, high compression ratios, high read/write throughput, and fast random access capabilities. It is ideal for scenarios such as building high-quality datasets, managing data assets, conducting data analytics, and training AI models. heroFullScreen: true actions:

  • text: Download link: ./Download/ type: primary

  • text: QuickStart link: ./UserGuide/latest/QuickStart/QuickStart type: primary

highlights:

  • header: Main Features

    description:

    image:

    bgImage: https://theme-hope-assets.vuejs.press/bg/2-light.svg

    bgImageDark: https://theme-hope-assets.vuejs.press/bg/2-dark.svg

    bgImage: bg.svg bgImageDark: bg.svg bgImageStyle: background-attachment: fixed features:
    • title: Efficient Storage and Compression details: TsFile employs advanced compression techniques to minimize storage requirements, resulting in reduced disk space consumption and improved system efficiency.

    • title: Flexible Schema and Metadata Management details: TsFile allows for directly write data without pre defining the schema, which is flexible for data aquisition.

    • title: High Query Performance with time range details: TsFile has indexed devices, sensors and time dimensions to accelerate query performance, enabling fast filtering and retrieval of time series data.

    • title: Seamless Integration details: TsFile is designed to seamlessly integrate with existing time series databases such as IoTDB, data processing frameworks, such as Spark and Flink.

copyright: false