Implementation of an Automated Learning System for Non-experts
- URL: http://arxiv.org/abs/2203.15784v1
- Date: Sat, 26 Mar 2022 00:28:29 GMT
- Title: Implementation of an Automated Learning System for Non-experts
- Authors: Phoenix X. Huang, Zhiwei Zhao, Chao Liu, Jingyi Liu, Wenze Hu, Xiaoyu
Wang
- Abstract summary: This paper detailed the engineering system implementation of an automated machine learning system called YMIR.
After importing training/validation data into the system, a user without AI knowledge can label the data, train models, perform data mining and evaluation by simply clicking buttons.
The code of the system has already been released to GitHub.
- Score: 26.776682627968476
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Automated machine learning systems for non-experts could be critical for
industries to adopt artificial intelligence to their own applications. This
paper detailed the engineering system implementation of an automated machine
learning system called YMIR, which completely relies on graphical interface to
interact with users. After importing training/validation data into the system,
a user without AI knowledge can label the data, train models, perform data
mining and evaluation by simply clicking buttons. The paper described: 1) Open
implementation of model training and inference through docker containers. 2)
Implementation of task and resource management. 3) Integration of Labeling
software. 4) Implementation of HCI (Human Computer Interaction) with a rebuilt
collaborative development paradigm. We also provide subsequent case study on
training models with the system. We hope this paper can facilitate the
prosperity of our automated machine learning community from industry
application perspective. The code of the system has already been released to
GitHub (https://github.com/industryessentials/ymir).
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