Skip to content

madrover/pyscaler

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

48 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

PyScaler

A Django based application that is able to monitor remote hosts via SSH scripts or connecting to JVMs via JMX.

Complete documentation can be found at https://pyscaler.readthedocs.org <https://pyscaler.readthedocs.org>_

Features

  • Monitoring PyScaler is able to monitor remote hosts and store the performance data for further analysis and business logic.

  • SSH monitoring

    PyScaler can connect to remote hosts via SSH, execute scripts to gather performance data and index its output.

  • JMX monitoring

    PyScaler can connect to remote JVMs via JMX and gather performance data via the exposed mbeans.

  • Interactive counter graphs

    The performance data can be easily visualized using available graphs. There are different graphs per monitored target and counters that can be zoomed.

  • Control

    PySCaler can be execute actions against its managed nodes. These action can be execute manually or triggered automatically when defined performance thresholds are hit.

  • Remote command execution

    It can execute command locally on specific nodes or on all the nodes from a cluster.

  • Fabric scripts execution

    It can execute Fabric scripts that can be used to execute local or remote shell commands (normally or via sudo) and uploading/downloading files, as well as auxiliary functionality such as prompting the running user for input, or aborting execution.

  • Triggers

    PyScaler can analyze available performance data and automatically trigger defined actions when a performance threshold is reached during a certain amount of time.

  • Provisioning

    PyScaler can be used to provision new servers.

  • EC2 node deployment

    PyScaler can launch new Amazon EC2 instances with defined parameters.

  • Operating system configuration

    PyScaler can provision nodes using Puppet.

  • Deployment scaling

    The previously explained features (monitoring, control and provisioning) can be used together to automatically scale a cloud based cluster. PyScaler will monitor the cluster and when a defined performance threshold is reached then the necessary actions to deploy a new cluster node will
    be executed, thus scaling it.

  • Task based engine

    PyScaler makes uses of Celery to launch all lengthy or periodic tasks in the backend. Celery can be used to handle retries and distribution of the tasks.

  • Restful urls and API

    PyScaler urls are cleanly designed to be understood by human beings. Most available objects are exposed via a restful API and JSON

  • Ajax based interface

    The usage of a task based backend along the jquery and json enables the development of a fluid ajax based interface.

  • High availability

    Each component of PyScaler is designed to be highly available.

About

No description, website, or topics provided.

Resources

License

Security policy

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published