vega-scatterplot

Description

Scatter plots are ideal for visualizing the relationship between two quantitative variables. This download contains a prebuilt scatter plot using a simple data set. To use it you just need to change the index and the fields you would like to display.

Source

Originally found at https://www.timroes.de/kibana-vega-scatterplot

Tested versions 7.x
ECS compliant No

You must log in to submit a review.

Related downloads

CMDB dependency in Kibana Dashboard

Kibana vega example to show how to load visualize relationships between different infrastructure and network components in vega.

Resource Optimization Dashboard

Elastic Resource Optimization Dashboard to seamlessly integrate APM insights with cloud cost data for actionable resource management and cost-saving strategies

Threat detection Kibana dashboard

Kibana dashboard example visualizing the results of the Elastic SIEM detection engine

Filebeat Log analysis canvas example

This is a simple canvas dashboard example that analyzes logs created by Filebeat.

Ingest Pipeline Monitoring

This Kibana dashboard can be used monitor your ingest pipelines

Kibana Enhanced Table plugin

Data Table visualization with enhanced features like computed columns, pivot table or filter bar

These downloads could be also interesting for you

Playable Pacman

This is a playable version of pacman made with Vega.

Kubernetes architecture overview

Vega visualization to show the dependencies between the different Kubernetes components in a single visualization

Vega Clock UTC

This is a working clock visualization in UTC time.

Sankey visualization example

This is an example of how to build an sankey visualization using the vega visualization in Kibana.

Vega Compound Gauge

This is a compund gauge visualization made with Vega. Its very helpful for visualization of percentage values.

Azure billing data network

A vega visualization that shows the connection between resource group, resource type and the resource itself based on Elastic agent azure billing data integration.