Course Outline

Introduction

  • Using mathematical algorithms to extract meaningful information

Using Predictive Analytics Models to Gain Insight on Human Behavior

Collecting Raw Data from Management and Monitoring Technologies

Understanding the Infrastructure Application Stack through Root Cause Analysis

Ranking the Impact of Multiple Root Causes (Service Impact Analysis)

Real-time Application Behavior Learning

Learning Infrastructure Behavior Using Dynamically Baselines Threshold

Determining Which Problems to Go After

Evaluating Analytics Technologies

Carrying Out Machine Learning on Big Data Using an AIOps Platform

Integrating Operations Data Silos

Continuously Fixing and Improving via Automation (CI/CD for core IT functions)

Summary and Conclusion

Requirements

  • Experience with IT operations

Audience

  • IT managers
  • Data analysts
  • Business analysts
 7 Hours

Testimonials (3)

Related Courses

Remedy IT Service Management (ITSM)

21 Hours

Fundamentals of DevOps

21 Hours

DevOps Practical Implementation and Tools

21 Hours

Automated Monitoring with Zabbix

14 Hours

AWS DevOps Engineers

21 Hours

DevOps Security: Creating a DevOps Security Strategy

7 Hours

Practical DevOps

14 Hours

DevSecOps

14 Hours

DevOps with TeamCity

14 Hours

DevOps with Atlassian Bamboo

14 Hours

Ansible and Puppet for Large Infrastructures

14 Hours

Pulumi - Infrastructure as Code

21 Hours

MLOps: CI/CD for Machine Learning

35 Hours

Advanced Automation with Red Hat Ansible

35 Hours

DevOps Automation with Red Hat Ansible Tower

14 Hours

Related Categories