# Cube Studio
English | [简体中文](README_CN.md)
### Infra
cube-studio is a one-stop cloud-native machine learning platform open sourced by Tencent Music, Currently mainly includes the following functions
- 1、data management: feature store, online and offline features; dataset management, structure data and media data, data label platform
- 2、develop: notebook(vscode/jupyter); docker image management; image build online
- 3、train: pipeline drag and drop online; open template market; distributed computing/training tasks, example tf/pytorch/mxnet/spark/ray/horovod/kaldi/volcano; batch priority scheduling; resource monitoring/alarm/balancing; cron scheduling
- 4、automl: nni, ray
- 5、inference: model manager; serverless traffic control; tf/pytorch/onnx/tensorrt model deploy, tfserving/torchserver/onnxruntime/triton inference; VGPU; load balancing、high availability、elastic scaling
- 6、infra: multi-user; multi-project; multi-cluster; edge cluster mode; blockchain sharing;
# Doc
https://github.com/tencentmusic/cube-studio/wiki
# WeChat group
learning、deploy、consult、contribution、cooperation, join group, wechart id luanpeng1234 remark``, [construction guide](https://github.com/tencentmusic/cube-studio/blob/master/CONTRIBUTING.md)
# Job Template
tips:
- 1、You can develop your own template, Easy to develop and more suitable for your own scenarios
| template | type | describe |
| :----- | :---- | :---- |
| linux | base | Custom stand-alone operating environment, free to implement all custom stand-alone functions |
| datax | import export | Import and export of heterogeneous data sources |
| hadoop | data processing | hdfs,hbase,sqoop,spark client |
| sparkjob | data processing | spark serverless |
| volcanojob | data processing | volcano multi-machine distributed framework |
| ray | data processing | python ray multi-machine distributed framework |
| ray-sklearn | machine learning | sklearn based on ray framework supports multi-machine distributed parallel computing |
| xgb | machine learning | xgb model training and inference |
| tfjob | deep learning | Multi-machine distributed training of tensorflow |
| pytorchjob | deep learning | Multi-machine distributed training of pytorch |
| horovod | deep learning | Multi-machine distributed training of horovod |
| paddle | deep learning | Multi-machine distributed training of paddle |
| mxnet | deep learning | Multi-machine distributed training of mxnet |
| kaldi | deep learning | Multi-machine distributed training of kaldi |
| tfjob-train | model train | distributed training of tensorflow: plain and runner |
| tfjob-runner | model train | distributed training of tensorflow: runner method |
| tfjob-plain | model train | distributed training of tensorflow: plain method |
| tf-model-evaluation | model evaluate | distributed model evaluation of tensorflow2.3 |
| tf-offline-predict | model inference | distributed offline model inference of tensorflow2.3 |
| model-register | model service | register model to platform |
| model-offline-predict | model service | distributed offline model inference of framework |
| deploy-service | model service | deploy inference service |
| media-download | multimedia data processing | Distributed download of media files |
| video-audio | multimedia data processing | Distributed extraction of audio from video |
| video-img | multimedia data processing | Distributed extraction of pictures from video |
| object-detection-on-darknet | machine vision | object-detection with darknet yolov3 |
# Deploy
[wiki](https://github.com/tencentmusic/cube-studio/wiki/%E5%B9%B3%E5%8F%B0%E5%8D%95%E6%9C%BA%E9%83%A8%E7%BD%B2)
![cube](https://user-images.githubusercontent.com/20157705/174762561-29b18237-7d45-417e-b7c0-14f5ef96a0e6.gif)
# Company
![图片 1](https://user-images.githubusercontent.com/20157705/223387901-1b922d96-0a79-4542-b53b-e70938404b2e.png)