Log Visualizations

Overview

Visualizations define how the outcome of filter and aggregates are displayed. Using the logs query editor, select the relevant visualizations to surface crucial information.

Lists

Lists are paginated results of logs or aggregates. They are valuable when individual results matter, but you have no prior or clear knowledge on what defines a matching result. Lists allow you examine a group of results.

Lists displaying individual logs and lists displaying aggregates of logs have slightly different capabilities.

List of logs

For a list of individual logs, choose which information of interest to display as columns. Manage the columns of the table using either:

  • The table, with interactions available in the first row. This is the preferred method to sort, rearrange, or remove columns.
  • The facet panel on the left, or the log side panel on the right. This is the preferred option to add a column for a field.

With the Options button, control the number of lines displayed in the table per log.

The default sort for logs in the list visualization is by timestamp, with the most recent logs on top. This is the fastest and therefore recommended sorting method for general purposes. Surface logs with lowest or highest value for a measure first, or sort your logs lexicographically for the unique value of facet, ordering a column according to that facet.

Note: Although any attributes or tags can be added as a column, sorting your table is most reliable if you declare a facet beforehand. Non-faceted attributes can be added as columns, but it does not produce reliable sorting.

The configuration of the log table is stored alongside other elements of your troubleshooting context in Saved Views.

List aggregates of logs

The columns displayed in list of aggregates are columns derived from the aggregation.

Results are sorted according to:

  • Number of matching events per aggregate for pattern aggregation (default to descending: more to less)
  • Lexicographic order of the transaction id for transaction aggregation (default to ascending: A to Z)

Timeseries

Visualize the evolution of a single measure (or a facet unique count of values) over a selected time frame, and (optionally) split by up to three available facets.

The following Timeseries log analytics shows the evolution of the top 50 URL Paths according to the 95th percentile of duration over the last 15 minutes.

Timeseries example

Choose additional display options for timeseries: the roll-up interval, whether you display results as bars (recommended for counts and unique counts), lines (recommended for statistical aggregations) or areas, and the colorset.

Top list

Visualize the top values from a facet according to the chosen measure.

For example, the following top list shows the top 15 Customers on a merchant website according to the number of unique sessions they had over the last day.

Top list example

Nested tables

Visualize the top values from up to three facets according to a chosen measure (the first measure you choose in the list), and display the value of additional measures for elements appearing in this table. Update a search query or examine the logs corresponding to either dimension.

  • When there are multiple measures, the top or bottom list is determined according to the first measure.
  • The subtotal may differ from the actual sum of values in a group, since only a subset (top or bottom) is displayed. Events with a null or empty value for this dimension are not displayed as a sub-group.

Note: A table visualization used for one single measure and one single dimension is the same as a Toplist, just with a different display.

The following table log analytics show the evolution of the Top 10 Availability zones, and for each Availability Zone the Top 10 Versions according to their number or error logs, along with the number of unique count of Hosts and Container ID for each.

Table example

Pie chart

A pie chart helps you organize and show data as a percentage of a whole. It is useful when comparing the relationship between different dimensions such as services, users, hosts, countries, etc. within your log data.

The following pie chart shows the percentage breakdown by service.

Pie chart example showing percentage breakdown by service

Tree map

A tree map helps you organize and show data as a percentage of a whole in a visually appealing format. Tree maps display data in nested rectangles. Compare different dimensions using both size and colors of the rectangles. You can also select multiple attributes to view a hierarchy of rectangles.

The following tree map shows the percentage breakdown by service.

Tree map example showing percentage breakdown by service
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