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Posted to commits@inlong.apache.org by do...@apache.org on 2022/06/26 10:20:09 UTC

[inlong-website] branch master updated: [INLONG-455][Doc] Update the Introduction for InLong (#456)

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The following commit(s) were added to refs/heads/master by this push:
     new d9fb26a0a [INLONG-455][Doc] Update the Introduction for InLong (#456)
d9fb26a0a is described below

commit d9fb26a0ae7a01927a70ba9817c2d52b17d21df0
Author: Charles Zhang <do...@apache.org>
AuthorDate: Sun Jun 26 18:20:04 2022 +0800

    [INLONG-455][Doc] Update the Introduction for InLong (#456)
---
 docs/introduction.md                                             | 9 ++++++---
 .../zh-CN/docusaurus-plugin-content-docs/current/introduction.md | 7 ++++---
 .../docusaurus-plugin-content-docs/version-1.2.0/introduction.md | 7 ++++---
 versioned_docs/version-1.2.0/introduction.md                     | 9 ++++++---
 4 files changed, 20 insertions(+), 12 deletions(-)

diff --git a/docs/introduction.md b/docs/introduction.md
index f6e7e87a6..60afad975 100644
--- a/docs/introduction.md
+++ b/docs/introduction.md
@@ -7,9 +7,12 @@ sidebar_position: 1
 > and it is regarded as a metaphor of the InLong system for reporting data streams.
 
 ## About InLong
-[Apache InLong](https://inlong.apache.org) is a one-stop integration framework for massive data donated by Tencent to the Apache community. It provides automatic, safe, reliable, and high-performance data transmission capabilities to facilitate the construction of streaming-based data analysis, modeling, and applications.  
-The Apache InLong project was originally called TubeMQ, focusing on high-performance, low-cost message queuing services. To further release the surrounding ecological capabilities of TubeMQ, the community upgraded the project to InLong, focusing on creating a one-stop integration framework for massive data. 
-Apache InLong relies on trillion-level data ingestion and processing capabilities to integrate the entire process of data collection, aggregation, storage, and sorting data processing. It is simple, flexible, stable, and reliable.
+[Apache InLong](https://inlong.apache.org) is a one-stop integration framework for massive data ,it provides automatic, safe, reliable, and high-performance data transmission capabilities to 
+facilitate the construction of streaming-based data analysis, modeling, and applications. The Apache InLong project was originally called TubeMQ, focusing on high-performance, 
+low-cost message queuing services. To further release the surrounding ecological capabilities of TubeMQ, the community upgraded the project to InLong, focusing on creating a one-stop integration framework for massive data. 
+Apache InLong relies on 10 trillion-level data ingestion and processing capabilities to integrate the entire process of data collection, aggregation, storage, and sorting data processing. It is simple, flexible, stable, and reliable.
+The project was initially donated to the Apache incubator by the Tencent Big Data team in November 2019 and officially graduated as an Apache top-level project in June 2022. Currently, InLong is widely used in various industries such as advertising, 
+payment, social networking, games, artificial intelligence, etc., to provide efficient and convenient customer services in multiple fields.
 
 ## Features
 - Ease of Use
diff --git a/i18n/zh-CN/docusaurus-plugin-content-docs/current/introduction.md b/i18n/zh-CN/docusaurus-plugin-content-docs/current/introduction.md
index 8f5cfbbe6..aadfc62e4 100644
--- a/i18n/zh-CN/docusaurus-plugin-content-docs/current/introduction.md
+++ b/i18n/zh-CN/docusaurus-plugin-content-docs/current/introduction.md
@@ -3,12 +3,13 @@ title: InLong 简介
 sidebar_position: 1
 ---
 
-> InLong(应龙),中国神话故事里的神兽,引流入海,借喻 InLong 系统提供数据接入能力。
+> InLong(应龙),中国神话故事里的神兽,引流入海,借喻 InLong 系统提供数据集成能力。
 
 ## 关于 InLong
-[Apache InLong(应龙)](https://inlong.apache.org)是腾讯捐献给 Apache 社区的一站式海量数据集成框架,提供自动、安全、可靠和高性能的数据传输能力,方便业务构建基于流式的数据分析、建模和应用。
+[Apache InLong(应龙)](https://inlong.apache.org)是一站式的海量数据集成框架,提供自动、安全、可靠和高性能的数据传输能力,方便业务构建基于流式的数据分析、建模和应用。
 InLong 项目原名 TubeMQ ,专注于高性能、低成本的消息队列服务。为了进一步释放 TubeMQ 周边的生态能力,我们将项目升级为 InLong,专注打造一站式海量数据集成框架。
-Apache InLong 依托万亿级别的数据接入和处理能力,整合了数据采集、汇聚、存储、分拣数据处理全流程,拥有简单易用、灵活扩展、稳定可靠等特性。
+Apache InLong 依托 10 万亿级别的数据接入和处理能力,整合了数据采集、汇聚、存储、分拣数据处理全流程,拥有简单易用、灵活扩展、稳定可靠等特性。
+该项目最初于 2019 年 11 月由腾讯大数据团队捐献到 Apache 孵化器,2022 年 6 月正式毕业成为 Apache 顶级项目。目前 InLong 正广泛应用于广告、支付、社交、游戏、人工智能等各个行业领域,为多领域客户提供高效化便捷化服务。
 
 ## 特性
 - 简单易用
diff --git a/i18n/zh-CN/docusaurus-plugin-content-docs/version-1.2.0/introduction.md b/i18n/zh-CN/docusaurus-plugin-content-docs/version-1.2.0/introduction.md
index 8f5cfbbe6..aadfc62e4 100644
--- a/i18n/zh-CN/docusaurus-plugin-content-docs/version-1.2.0/introduction.md
+++ b/i18n/zh-CN/docusaurus-plugin-content-docs/version-1.2.0/introduction.md
@@ -3,12 +3,13 @@ title: InLong 简介
 sidebar_position: 1
 ---
 
-> InLong(应龙),中国神话故事里的神兽,引流入海,借喻 InLong 系统提供数据接入能力。
+> InLong(应龙),中国神话故事里的神兽,引流入海,借喻 InLong 系统提供数据集成能力。
 
 ## 关于 InLong
-[Apache InLong(应龙)](https://inlong.apache.org)是腾讯捐献给 Apache 社区的一站式海量数据集成框架,提供自动、安全、可靠和高性能的数据传输能力,方便业务构建基于流式的数据分析、建模和应用。
+[Apache InLong(应龙)](https://inlong.apache.org)是一站式的海量数据集成框架,提供自动、安全、可靠和高性能的数据传输能力,方便业务构建基于流式的数据分析、建模和应用。
 InLong 项目原名 TubeMQ ,专注于高性能、低成本的消息队列服务。为了进一步释放 TubeMQ 周边的生态能力,我们将项目升级为 InLong,专注打造一站式海量数据集成框架。
-Apache InLong 依托万亿级别的数据接入和处理能力,整合了数据采集、汇聚、存储、分拣数据处理全流程,拥有简单易用、灵活扩展、稳定可靠等特性。
+Apache InLong 依托 10 万亿级别的数据接入和处理能力,整合了数据采集、汇聚、存储、分拣数据处理全流程,拥有简单易用、灵活扩展、稳定可靠等特性。
+该项目最初于 2019 年 11 月由腾讯大数据团队捐献到 Apache 孵化器,2022 年 6 月正式毕业成为 Apache 顶级项目。目前 InLong 正广泛应用于广告、支付、社交、游戏、人工智能等各个行业领域,为多领域客户提供高效化便捷化服务。
 
 ## 特性
 - 简单易用
diff --git a/versioned_docs/version-1.2.0/introduction.md b/versioned_docs/version-1.2.0/introduction.md
index f6e7e87a6..ef63ee320 100644
--- a/versioned_docs/version-1.2.0/introduction.md
+++ b/versioned_docs/version-1.2.0/introduction.md
@@ -7,9 +7,12 @@ sidebar_position: 1
 > and it is regarded as a metaphor of the InLong system for reporting data streams.
 
 ## About InLong
-[Apache InLong](https://inlong.apache.org) is a one-stop integration framework for massive data donated by Tencent to the Apache community. It provides automatic, safe, reliable, and high-performance data transmission capabilities to facilitate the construction of streaming-based data analysis, modeling, and applications.  
-The Apache InLong project was originally called TubeMQ, focusing on high-performance, low-cost message queuing services. To further release the surrounding ecological capabilities of TubeMQ, the community upgraded the project to InLong, focusing on creating a one-stop integration framework for massive data. 
-Apache InLong relies on trillion-level data ingestion and processing capabilities to integrate the entire process of data collection, aggregation, storage, and sorting data processing. It is simple, flexible, stable, and reliable.
+[Apache InLong](https://inlong.apache.org) is a one-stop integration framework for massive data ,it provides automatic, safe, reliable, and high-performance data transmission capabilities to
+facilitate the construction of streaming-based data analysis, modeling, and applications. The Apache InLong project was originally called TubeMQ, focusing on high-performance,
+low-cost message queuing services. To further release the surrounding ecological capabilities of TubeMQ, the community upgraded the project to InLong, focusing on creating a one-stop integration framework for massive data.
+Apache InLong relies on 10 trillion-level data ingestion and processing capabilities to integrate the entire process of data collection, aggregation, storage, and sorting data processing. It is simple, flexible, stable, and reliable.
+The project was initially donated to the Apache incubator by the Tencent Big Data team in November 2019 and officially graduated as an Apache top-level project in June 2022. Currently, InLong is widely used in various industries such as advertising,
+payment, social networking, games, artificial intelligence, etc., to provide efficient and convenient customer services in multiple fields.
 
 ## Features
 - Ease of Use