Test run considerations for using Machine Learning capabilities
Before you configure a Performance Test or Schedule run to use Machine Learning (ML) capabilities, you must first read the considerations that you need to take into account.
When you want HCL OneTest™ Server to analyze
Performance tests or Schedules by using ML capabilities, you must ensure that
Performance tests or Schedules conform to the following criteria:
- Must contain HTML tests.
- Must contain stress or performance user profiles.
- Must contain the following minimum stress test requirements:
- 20 users or more.
- A minimum of three different user groups and each group has an activity of more than two minutes.
- Stages that have a reasonably high number of samples within each stage.
- Stages do not have an increasing number of users.
- Tests run for longer durations so that a trend can be observed.
You can refer to the following table to view the criteria for analysis of the
parameters:
Parameter analyzed | Criteria for analysis |
---|---|
Response Time Lock-Step Pattern | The analyzer identifies the
Response Time Lock-Step Pattern
parameter in the overall page response time observed against the
user count based on the following criteria:
|
Response Time Standard Deviation Pattern | The analyzer attempts to detect the response time of pages that are more than thrice the value of the standard deviation calculated for the page response time as the Response Time Standard Deviation Pattern parameter. |
Throughput Drop Pattern | The analyzer attempts to detect
sudden drops in network throughput as the Throughput Drop Pattern parameter
that is based on the following criteria: Note: Sudden drops in throughput might be
related to the performance tool itself, issues with network
connectivity, or issues with signal-scalability of the
system under test.
|