I've been developing an add-on for Splunk to manage and report on data being generated from the DA NET module.
I have a couple of goals here:
1) Track stability of metrics, the assumption is that reef tanks thrive on stability, having these metrics will help me see how things are moving over time.
2) Use machine learning to detect faults before they become serious, using the predict command we detect a fault like a stuck heater before it becomes terminal.
I'm not a data scientist so I'm open to feedback or criticism. If you have any ideas on how to use the machine data for being analytics, reporting and fault management please let me know.
I have a couple of goals here:
1) Track stability of metrics, the assumption is that reef tanks thrive on stability, having these metrics will help me see how things are moving over time.
2) Use machine learning to detect faults before they become serious, using the predict command we detect a fault like a stuck heater before it becomes terminal.
I'm not a data scientist so I'm open to feedback or criticism. If you have any ideas on how to use the machine data for being analytics, reporting and fault management please let me know.