Run Your Load Test.
Get an AI-driven Analysis — Instantly

PFLB turns your load test into a complete, AI-written load testing report with real analysis, live graphs, and full team sharing
AI-Generated Performance Report for JMeter Load Tests

No manual report writing
ai performance test report benefit

Test results analysis
ai performance test report benefit

Interactive visualization
ai performance test report benefit

Fully editable and shareable

See the Report for Yourself

This report was generated by our AI after a single JMeter test run — no scripting, no editing.
What you see is what engineers get:

How Does it Work

No guesswork. Just execute your load test and get a comprehensive AI-written report

Step 1
Import Your Test

Start with the test you already built — we support JMeter, Postman, Insomnia, and HAR files.
arrow right white in black

Step 2
Configure and Run

Set up virtual users, configure optional monitoring — then start your load test.
arrow right white in black

Step 3
Generate Your AI Report

After the test completes, launch the AI Report to view live graphs, key metrics, and structured insights. The report is easy to edit and share with your team.

Request Free Trial

Fill out the form below and we’ll review your request shortly.

What Else Makes PFLB Stand Out?

Cloud Execution
for JMeter

Skip the infrastructure hassle. Run large-scale distributed tests in the cloud from day one — no setup needed.

AI-Powered Real-Time
Anomaly Detection

No more babysitting test runs. Our AI watches system behavior live and alerts you to unusual patterns or early signs of failure — so you can act fast.

Grafana Dashboards
for Real-Time Monitoring

Leverage advanced AI analytics to quickly identify and resolve performance bottlenecks. Our AI-powered insights help you optimize your applications for peak performance, ensuring they run smoothly under any load.

CI/CD Integration

Automate load testing right from your pipeline. Validate performance continuously and catch regressions before they reach production.

Trusted by

teams at Chainguard, NOV, QA Mentor, and others.
-ribbon-0-ribbon-1-ribbon-2-ribbon-3-ribbon-4-ribbon-5-ribbon-6-ribbon-7-ribbon-8-ribbon-9-ribbon-10-ribbon-11-ribbon-12
-ribbon-0-ribbon-1-ribbon-2-ribbon-3-ribbon-4-ribbon-5-ribbon-6-ribbon-7-ribbon-8-ribbon-9-ribbon-10-ribbon-11-ribbon-12
-ribbon-0-ribbon-1-ribbon-2-ribbon-3-ribbon-4-ribbon-5-ribbon-6-ribbon-7-ribbon-8-ribbon-9-ribbon-10-ribbon-11-ribbon-12

Learn How Teams Use PFLB to Validate Performance at Scale