​
UK Only: Tracked Evri Next-Day delivery for Guidance Manual orders placed before 11:30am Monday - Friday.
​
Free Postage & Packing to the UK on all Guidance Manuals.
​
Prices on this site refer to Region 2 and are exclusive of VAT where applicable. Email us for other region prices.
​
We can provide courses and exam vouchers for all regions and published languages.
​
Chat or email us if you have any queries.
AIOps Foundation (AIOF)®
Course with Official Exam
Course Description
DURATION - 16 Hours
Introduces the history, background, technologies, organizational challenges and strategies towards applying artificial intelligence for IT Operations, or AIOps, a rapidly growing industry driven by the rapidly evolving IT operational environments of cloud native applications. Tailored for those focused on understanding basic concepts, implementations, use cases and benefits.
OVERVIEW
This AIOps Foundation course aims to cover the origins of AIOps including the history behind the term, patterns that preceded it and the technology context in which it has evolved. Learners will gain an understanding of the processes of combining big data analytics, machine learning algorithms, automation, and optimization into a single platform.
​
This course introduces key principles and foundational concepts along with the core technologies of AIOps: big data and machine learning. The course will provide students with an understanding of how and why digital transformation, together with the evolution of machine learning, have brought about the rise of AIOps as an indispensable tool in today’s IT Operational landscape.
​
Core technologies of machine learning and big data will be discussed, as well as the basic concepts of artificial intelligence, different types of machine learning models that can be implemented, and the relationship between AIOps and MLOps, DevOps and Site Reliability.
This foundation course will also provide the student with a solid understanding of the benefits of implementing AIOps in the organization, including common challenges and key steps in ensuring valuable and successful integration of artificial intelligence in the day to day operations of information technology solutions.
Unique and exciting exercises will be used to apply the concepts covered in the course and sample documents, templates, tools, and techniques will be provided to use after the class.
This course positions learners to successfully complete the AIOps Foundation certification exam.
COURSE OBJECTIVES
At the end of the course, the following learning objectives are expected to be achieved:
-
Clear understanding of the history, origins and current developments of AIOps
-
Define and comprehend basic concepts and key principles within AIOps
-
Understand general concepts of big data and artificial intelligence, and how they relate to AIOps
-
Recognize the relationship between AIOps and MLOps
-
Understand the effectiveness of AIOps deployment and possible benefits
-
Understand the changes in mindset, collaboration and skills for AIOps to be applied in the organization
-
Quantify outcomes of an AIOps implementation leveraging industry standard metrics
-
Understand usual challenges and opportunities of applying AIOps in the organization
-
Visualize the challenges, trends and ethical considerations organizations might face while deploying an AIOps initiative
AUDIENCE
The target audience for the AIOps Foundation course are professionals including:
-
Anyone focused on IT Operations
-
Anyone interested in software in today’s IT landscape
-
AIOps Architects and Engineers
-
Business Managers, Stakeholders
-
Cloud Engineers
-
Data Engineers and Scientists
-
DevOps Engineers and Practitioners
-
IT Directors
-
IT Managers
-
IT Security Analysts
-
IT Team Leaders
-
Product Owners
-
Scrum Masters
-
Software Engineers
-
Site Reliability Engineers
-
System Integrators
-
AIOps Platform and Tool Providers
LEARNER MATERIALS
-
Sixteen (16) hours of instructor-led training and discussion facilitation
-
Participation in unique exercises designed to apply concepts
-
Sample documents, templates, tools and techniques
-
Sample exam
-
Glossary
-
Access to additional value-added resources and communities
PREREQUISITES
Familiarity with IT terminology and IT related work experience are recommended.
CERTIFICATION EXAM
Successfully passing (65%) the 60-minute examination, consisting of 40 multiple-choice questions, leads to the AIOps Foundation certificate. The certification is governed and maintained by DevOps Institute, a member of the PeopleCert Group.
COURSE OUTLINE
Course Introduction
Module 1: AIOps Foundation
-
History and Predecessors
-
Meaning of AIOps
-
Differences between AIOps and IT Operations Analytics
-
Core Technologies and Basic Concepts
-
Stages of an AIOps System
-
Overlapping Practices
Module 2: AIOps in the Organization
-
Drivers and Influences
-
AIOps and DevOps
-
AIOps and Site Reliability
-
AIOps and Security
-
Data, Telemetry and Systems Complexity
-
A New Paradigm to Understand System State
Module 3: Core Technologies: Data
-
What is Big Data?
-
The Five V’s of Big Data
-
Characteristics of Big Data
-
AIOps Data Sources and Types
-
Diverse Data
Module 4: Core Technologies: Machine Learning (ML)
-
AI and Machine Learning
-
Supervised vs Unsupervised
-
Machine Learning vs Analytics
-
Machine Learning and Training Models
-
AIOps and the Future of AI
-
AIOps vs. Analytics Similarities and Differences
Module 5: AIOPs and Operations Metrics
-
Metrics and Operations
-
Key Metrics to Track Across Systems
-
Agreements, Objectives and Indicators
-
Incident Related Metrics
-
Quantifying Incidents (MTTD, MTBF, MTTA, MTTR)
-
Service Level Agreements
Module 6: AIOps Use Cases and Organizational Mindset
-
Shifting from Reactive to Proactive
-
Characteristics of a Reactive Approach to Operations
-
Deterministic to Probabilistic
-
Deep Dive Into Use Cases
-
AIOps and Shifts in the Organization
-
Understanding the Past and Predicting the Future
Module 7: Evaluating AIOps Impact
-
AIOps and Operations Metrics
-
AIOps, DevOps and SRE
-
Improving AI Accuracy
-
AIOps System Visibility
-
Tracking Impact of AIOps
-
Impact to Incident Related Metrics
-
AIOps and DORA Metrics
Module 8: Implementing AIOps in the Organization
-
Avoiding Common Challenges
-
Ethics and Machine Learning
-
Paths to Implementation
-
Data Quality and Processes
-
Culture and Organizational Practices
-
Data and Regulation
-
Machine Learning Bias
-
Privacy and User Data