Project Description
The purpose of this project is to monitor the state of the virtualization team's machines in the server room. As the team has limited resources of test machines, and there will always be test machine faults during the execution of testing tasks. Such as memory, hard disk damage or network issues, which will directly affect our executing progress of the project. Therefore, in order to detect machine faults automatically and repair them timely, it is necessary to provide a web based visual interface to facilitate real-time monitoring of the machines within the list. And also list the basic information and state of its hardware as much as possible.
I plan to develop the whole system by using Python based technology. The required tools and components include web framework "Flask", WebUI framework "Bootstrap", monitoring system module "Psutil", and dynamic visualization chart module "Pyecharts".
Goal for this Hackweek
- Figure out a solution for machines monitoring
- Familiar with the usage of tools (bootstrap, flask, psutil, pyecharts)
- Use the tools to create a main page
Resources
- https://getbootstrap.com/docs/5.0/getting-started/introduction/
- https://pythonhosted.org/Flask-Bootstrap/
- https://pythonhosted.org/psutil/
- http://pyecharts.org/#/zh-cn/web_flask
- https://v4.bootcss.com
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This project is part of:
Hack Week 20
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