diff --git a/.ops/.gitlab-ci.yml b/.ops/.gitlab-ci.yml index 62a8c7b0..e6e3c9d5 100644 --- a/.ops/.gitlab-ci.yml +++ b/.ops/.gitlab-ci.yml @@ -1,6 +1,6 @@ include: - project: 'basicai/xtreme1/common' - file: '/ci/template/xtreme1-app.yml' + file: '/ops/ci/template/xtreme1-app.yml' variables: APP_NAME: "xtreme1" diff --git a/README.md b/README.md index a3ab0565..cd92ed65 100644 --- a/README.md +++ b/README.md @@ -4,31 +4,24 @@ ![](https://img.shields.io/badge/Release-v0.9.1-green) ![](https://img.shields.io/badge/License-Apache%202.0-blueviolet) [![Twitter](https://img.shields.io/badge/Follow-Twitter-blue)](https://twitter.com/Xtreme1io) -[![Online](https://img.shields.io/badge/Xtreme1_Online-App-yellow)](https://app.basic.ai/#/login) [![Docs](https://img.shields.io/badge/Docs-Stable-success.svg?style=flat&longCache=true)](http://docs.xtreme1.io/) -[![Use Cloud for Free](https://basicai-asset.s3.amazonaws.com/docs/Open-source/Operation/App_Button.png)](https://app.basic.ai/login) +[![Use Cloud for Free](https://basicai-asset.s3.amazonaws.com/docs/Open-source/Operation/App_Button.png)](https://app.basic.ai) -# Intro -Xtreme1 is an all-in-one open-source platform for Multimodal training data. +# Intro -Xtreme1 unlocks efficiency in data annotation, curation, and ontology management for tackling machine learning challenges in computer vision and LLM. The platform's AI-fueled tools elevate your annotation to the next efficiency level, powering your projects in 2D/3D Object Detection, 3D Instance Segmentation, and LiDAR-Camera Fusion like never before. +Xtreme1 is an all-in-one open-source platform for multimodal training data. -A long-term free plan is offered in the Xtreme1 Cloud version. Click to [🎉 Use Cloud for Free](https://app.basic.ai/login). +Xtreme1 unlocks efficiency in data annotation, curation, and ontology management for tackling machine learning challenges in computer vision and LLM. The platform's AI-fueled tools elevate your annotation to the next efficiency level, powering your projects in 2D/3D Object Detection, 2D/3D Semantic/Instance Segmentation, and LiDAR-Camera Fusion like never before. -# Documentation +A long-term free plan is offered in the Xtreme1 Cloud version. Click to [🎉 Use Cloud for Free](https://app.basic.ai). -🎆 Welcome aboard! If you have any questions or doubts about features, installation, development, and deployment, you can always refer to our documentation. +The README document only includes content related to installation, building, and running, if you have any questions or doubts about features, you can always refer to our [Docs Site](https://docs.xtreme1.io/xtreme1-docs/). -[📙 Find our docs here! ](https://docs.xtreme1.io/xtreme1-docs/) +Find us on [Twitter](https://twitter.com/Xtreme1io) | [Medium](https://medium.com/multisensory-data-training) | [Issues](https://github.com/xtreme1-io/xtreme1/issues) - -# Find Us -[Twitter](https://twitter.com/Xtreme1io) | [Medium](https://medium.com/multisensory-data-training) | [Issues](https://github.com/xtreme1-io/xtreme1/issues) - - -# Key features +# Key Features Image Annotation (B-box, Segmentation) - [YOLOR](https://github.com/WongKinYiu/yolor) & [RITM](https://github.com/saic-vul/ritm_interactive_segmentation) | Lidar-camera Fusion Annotation - [OpenPCDet](https://github.com/open-mmlab/OpenPCDet) & [AB3DMOT](https://github.com/xinshuoweng/AB3DMOT) :-------------------------:|:-------------------------: @@ -48,19 +41,46 @@ Image Annotation (B-box, Segmentation) - [YOLOR](https://github.com/WongKinYiu/y :seven: RLHF for Large Language Models :new: (beta version) -Image Data Curation (Visualizing & Debug) - [MobileNetV3](https://github.com/xiaolai-sqlai/mobilenetv3) & [openTSNE](https://github.com/pavlin-policar/openTSNE) | RLHF Annotation tool for LLM (beta version) +Image Data Curation (Visualizing & Debug) - [MobileNetV3](https://github.com/xiaolai-sqlai/mobilenetv3) & [openTSNE](https://github.com/pavlin-policar/openTSNE) | RLHF Annotation Tool for LLM (beta version) :-------------------------:|:-------------------------: ![](/docs/images/2d_v.gif) | -# Quick start +# Install + +## Prerequisites + +*Operating System Requirements* + +Any OS can install the Xtreme1 platform with Docker Compose (installing [Docker Desktop](https://docs.docker.com/desktop/) on Mac, Windows, and Linux devices). On the Linux server, you can install Docker Engine with [Docker Compose Plugin](https://docs.docker.com/compose/install/linux/). + +*Hardware Requirements* + +**CPU**: AMD64 or ARM64 +**RAM**: 2GB or higher +**Hard Drive**: 10GB+ free disk space (depends on data size) + +*Software Requirements* + +For Mac, Windows, and Linux with desktop. + +**Docker Desktop**: 4.1 or newer + +For Linux server. + +**Docker Engine**: 20.10 or newer +**Docker Compose Plugin**: 2.0 or newer -* Get access to [Xtreme1 online version](https://app.basic.ai/#/login/) without any installation :rocket: +*(Built-in) Models Deployment Requirements* -* [Install and Quick start](https://docs.xtreme1.io/xtreme1-docs/get-started/quick-start) :cd: -* [Install with Docker](https://docs.xtreme1.io/xtreme1-docs/get-started/install-with-docker) 🐋 -* [Build Xtreme1 from source code](https://docs.xtreme1.io/xtreme1-docs/get-started/install-from-source) :wrench: +The built-in model containers only can be running on Linux server with [NVIDIA CUDA Driver](https://docs.nvidia.com/cuda/cuda-installation-guide-linux/index.html) and [NVIDIA Container Toolkit](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/index.html). + +**GPU**: NVIDIA T4 or other similar GPU +**RAM**: 4G or higher + +## Install with Docker + +### Download Package -## Download package Download the latest release package and unzip it. ```bash @@ -68,24 +88,48 @@ wget https://github.com/xtreme1-io/xtreme1/releases/download/v0.9.1/xtreme1-v0.9 unzip -d xtreme1-v0.9.1 xtreme1-v0.9.1.zip ``` -## Start all services +### Start Services + +Enter into the release package directory, and execute the following command to start all services. It needs a few minutes to initialize database and prepare a test dataset. ```bash +cd xtreme1-v0.9.1 docker compose up ``` -Visit [http://localhost:8190](http://localhost:8190) in the browser (Google Chrome is recommended) to try out Xtreme1! +Visit [http://localhost:8190](http://localhost:8190) in the browser (Google Chrome is recommended) to try out Xtreme1! You can replace localhost with IP address if you want to access from another machine. + +Docker compose will pull all service images from Docker Hub, including basic services `MySQL`, `Redis`, `MinIO`, and application services `backend`, `frontend`. You can find the username, password, hot binding port to access MySQL, Redis and MinIO in `docker-compose.yml`, for example you can access MinIO console at http://localhost:8194. We use Docker volume to save data, so you won't lose any data between container recreating. + +Docker Compose advanced commands: + +```bash +# Start in the foreground. +docker compose up + +# Or add -d option to run in the background. +docker compose up -d + +# When finished, you can start or stop all or specific services. +docker compose start +docker compose stop + +# Stop all services and delete all containers, but data volumes will be kept. +docker compose down + +# Danger! Delete all volumes. All data in MySQL, Redis and MinIO. +docker compose down -v +``` + +### Start Built-in Models -## ⚠️ Install built-in models You need to explicitly specify a model profile to enable model services. ```bash docker compose --profile model up ``` -## Enable model services - -> Make sure you have installed [NVIDIA Driver](https://docs.nvidia.com/datacenter/tesla/tesla-installation-notes/index.html) and [NVIDIA Container Toolkit](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/install-guide.html#docker). But you do not need to install the CUDA Toolkit, as it already contained in the model image. +Make sure you have installed [NVIDIA CUDA Driver](https://docs.nvidia.com/cuda/cuda-installation-guide-linux/index.html) and [NVIDIA Container Toolkit](https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/latest/index.html) on host machine. ```bash # You need set "default-runtime" as "nvidia" in /etc/docker/daemon.json and restart docker to enable NVIDIA Container Toolkit @@ -99,9 +143,63 @@ docker compose --profile model up "default-runtime": "nvidia" } ``` + If you use **Docker Desktop** + **WSL2.0**, please find this [issue #144](https://github.com/xtreme1-io/xtreme1/issues/144) for your reference. -![](/docs/images/3d_annotation2.png) +### Run on ARM CPU + +Please note that certain Docker images, including `MySQL`, may not be compatible with the ARM architecture. In case your computer is based on an ARM CPU (e.g. Apple M1), you can create a Docker Compose override file called docker-compose.override.yml and include the following content. While this method uses QEMU emulation to enforce the use of the ARM64 image on the ARM64 platform, it may impact performance. + +```yaml +services: + mysql: + platform: linux/amd64 +``` + +## Install from Source + +If you want to build or extend the function, download the source code and run locally. + +### Enable Docker BuildKit + +We are using Docker BuildKit to accelerate the building speed, such as cache Maven and NPM packages between builds. By default BuildKit is not enabled in Docker Desktop, you can enable it as follows. For more details, you can check the official document [Build images with BuildKit](https://docs.docker.com/develop/develop-images/build_enhancements/). + +```bash +# Set the environment variable to enable BuildKit just for once. +DOCKER_BUILDKIT=1 docker build . +DOCKER_BUILDKIT=1 docker compose up + +# Or edit Docker daemon.json to enable BuildKit by default, the content can be something like '{ "features": { "buildkit": true } }'. +vi /etc/docker/daemon.json + +# You can clear the builder cache if you encounter some package version related problem. +docker builder prune +``` + +### Clone Repository + +```bash +git clone https://github.com/basicai/xtreme1.git +cd xtreme1 +``` + +### Build Images and Run Services + +The `docker-compose.yml` default will pull application images from Docker Hub, if you want to build images from source code, you can comment on the service's image line and un-comment build line. + +```yaml +services: + backend: + # image: basicai/xtreme1-backend + build: ./backend + frontend: + # image: basicai/xtreme1-frontend + build: ./frontend +``` + +Then when you run `docker compose up`, it will first build the `backend` and `frontend` image and start these services. Be sure to run `docker compose build` when code changes, as the up command will only build images when it does not exist. + +> You should not commit your change to `docker-compose.yml`, to avoid this, you can copy docker-compose.yml to a new file `docker-compose.develop.yml`, and modify this file as your development needs, as this file is already added into `.gitignore`. And you need to specify this specific file when running Docker Compose commands, such as `docker compose -f docker-compose.develop.yml build`. # License This software is licensed under the Apache 2.0 LICENSE. Xtreme1 is a trademark of LF AI & Data Foundation. diff --git a/frontend/image-tool/src/package/image-editor/utils/data.ts b/frontend/image-tool/src/package/image-editor/utils/data.ts index 3f2c2149..ba212194 100644 --- a/frontend/image-tool/src/package/image-editor/utils/data.ts +++ b/frontend/image-tool/src/package/image-editor/utils/data.ts @@ -70,6 +70,7 @@ export function copyData( updateTrans.transforms.push(copyedAttrs); } else { const newObject = annotate.cloneThisShape(); + newObject.userData.backId = undefined; newObject.userData.resultStatus = Const.Copied; addOption.objects.push(newObject); }