Visual Goodies in Falkonry’s Learning

The learning capabilities of Falkonry can be pretty addictive because they are so visually gratifying. Now to round out that Learning & Monitor interface, we added a few nifty features.

Improved Condition Summary

Increased visual capabilities

 

You can now quickly find out which elements are in a given condition(s) in a given period of time, so that you can navigate directly to those events. A dog-eared pull-out is available on all summary blocks so that you can see which conditions occur in that block of time and which events are in that condition, and for how much of the time. You can select the events you want to investigate further so that you can quickly assess the findings of a condition in a period of time.

This new feature will enable you to evaluate how conditions arise across your data set and what patterns are discovered by Falkonry in that data. When dealing with large numbers of things this feature will improve your ability to inspect Falkonry’s findings without losing context of the overall problem.

Improved Condition Buttons

This works in combination with the condition selections, which we have further simplified by reducing all unlabeled conditions to a circular buttons and user-named conditions to rounded corner rectangular buttons. Additionally, you only see buttons for conditions you are currently looking at. You can always bring in additional condition timelines from the selection panel by choosing old classifications or new verification, etc.

There are other usability improvements that provide you the information you are looking for, removing delays such as:

  • Increased the amount of vertical screen space available for viewing by removing the fixed navigation bar
  • Reduced the lag between creating a pipeline and being able to access the pipeline for learning
  • Added the ability to inspect your data just before starting the learning process
  • Auto-updating of the histories of flow segments and learning in the Configuration view

Analytics Performance Improvement

On top of all these visual improvements, the speed of the analytics was improved so that your model revisions complete faster and with fewer and more understandable errors.

These improvements are iterative steps we’ve taken to increase performance and interoperability. We’ll continue to work on increasing connections to a variety of data sources, providing greater manageability of pipelines, as well as improving the learning and monitoring interfaces. All of this is to improve reliability, performance and intelligence.

This post was originally written March 6, 2016