• Home
    /
  • Resources
    /
  • Webinar
    /
  • Autonomous Incident and Root Cause Detection
PagerDuty image

Autonomous Incident and Root Cause Detection

Autonomous Incident and Root Cause Detection

Focusing on using ML to catch and characterize incidents faster with zero configuration. Zebrium will look into solving the monitoring space problem of what is happening in productions. We all want to reduce MTTR in a complex environment. Zebrium’s solution will help teams recognize important incidents to focus on by ingesting data.

Zebrium and PagerDuty in this webinar as we explore and demonstrate:

  • Current state of monitoring and logging tools
  • Machine learning techniques for anomaly detection in logs and metrics
  • Deep dive on the Zebrium implementation of multi-layer ML for Incident and root cause detection
  • Live demo of the technology showing two use cases:
  • a) Zebrium ML detects and finds root cause of a problem using logs and metrics
    b) A third-party tool detects a problem and Zebrium ML finds the root cause


Get the Webinar!

"The PagerDuty Operations Cloud is critical for TUI. This is what is actually going to help us grow as a business when it comes to making sure that we provide quality services for our customers."

- Yasin Quareshy, Head of Technology at TUI

Top 50 Best Products for Mid-Market 2023 Top 50 Best IT Management Products 2023 Top 100 Best Software Products 2023