Future-Proof Your Mainframes With Ai/Ml
Published 1/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.56 GB | Duration: 5h 58m
Published 1/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.56 GB | Duration: 5h 58m
Introduction to AI/ML for Mainframe Professionals: Basics of AI/ML and Their Relevance to Mainframe Environments
What you'll learn
Foundational Understanding of AI/ML Concepts
Awareness of AI/ML’s Relevance to Mainframes
Practical Knowledge of Tools and Frameworks
Data Preparation Skills
Strategic Implementation Framework
Business Communication and Stakeholder Alignment
Common Challenges and Best Practices
Foundations for Continuous Learning
Requirements
This course is not for beginners. This course is for a specific audience, including IT professionals responsible for overseeing and maintaining large-scale mainframe environments in industries like finance, government, and telecommunications.
Description
Future-Proof Your Mainframes with AI/MLUnlock the transformative potential of Artificial Intelligence (AI) and Machine Learning (ML) in mainframe environments with our comprehensive online course, Future-Proof Your Mainframes with AI/ML. This course is designed for IT professionals, mainframe managers, and data scientists eager to modernize enterprise systems by integrating cutting-edge AI/ML solutions.Mainframes are the backbone of critical operations in industries like banking, healthcare, and logistics. However, as organizations strive to harness the power of AI/ML, bridging the gap between legacy systems and modern technologies is crucial. This course equips you with the knowledge and practical skills to make this transition seamless.What You’ll Learn:The Foundations of AI/ML in Mainframes: Understand the role of AI/ML in enhancing mainframe operations, from predictive maintenance to real-time fraud detection.Building AI/ML Models: Learn step-by-step how to design, train, and validate models tailored for mainframe data.Hybrid Cloud Integration: Explore hybrid cloud architectures to scale AI/ML solutions while maintaining the reliability of mainframes.Automation and Optimization: Discover how AI/ML automates workflows, improves efficiency, and drives innovation.Best Practices for Deployment and Maintenance: Ensure smooth implementation with robust monitoring, retraining, and continuous improvement strategies.Course Highlights:This course combines interactive video lectures, real-world case studies, and practical exercises to help you master the integration of AI/ML with mainframe systems. You’ll also gain exclusive access to companion materials from our book, Future-Proof Your Mainframes with AI/ML. This book complements the course by providing in-depth explanations, additional resources, and step-by-step guides for hands-on projects.
Overview
Section 1: Introduction
Lecture 1 Introduction
Section 2: Module 1: Understanding AI/ML Fundamentals
Lecture 2 Lesson 1: What is Artificial Intelligence?
Lecture 3 Lesson 2: What is Machine Learning?
Lecture 4 Lesson 3: Types of Machine Learning: An Overview
Lecture 5 Lesson 4: The AI/ML Workflow: How It Works
Section 3: Module 2: Exploring the Role of AI/ML in Mainframes
Lecture 6 Lesson 1: AI/ML Applications in Enterprise Systems
Lecture 7 Lesson 2: AI/ML Use Cases for Mainframes
Lecture 8 Lesson 3: Business Benefits of AI/ML Integration
Section 4: Module 3: Assessing Your Mainframe Environment
Lecture 9 Lesson 1: Conducting a Mainframe System Audit
Lecture 10 Lesson 2: Defining Your Modernization Goals
Lecture 11 Lesson 3: Creating a Strategic Roadmap
Section 5: Module 4: Preparing Data for AI/ML Integration
Lecture 12 Lesson 1: Understanding Mainframe Data
Lecture 13 Lesson 2: Data Extraction and Transformation
Lecture 14 Lesson 3: Ensuring Data Security and Compliance
Lecture 15 Lesson 4: Addressing Data Quality Issues
Section 6: Module 5: Selecting Tools and Frameworks for Integration
Lecture 16 Lesson 1: Overview of AI/ML Tools for Mainframes
Lecture 17 Lesson 2: Using APIs and Middleware for Integration
Lecture 18 Lesson 3: Hybrid Cloud Options for AI/ML
Section 7: Module 6: Building and Testing AI/ML Models
Lecture 19 Lesson 1: Developing Your First AI/ML Model
Lecture 20 Lesson 2: Training and Validating the Model
Lecture 21 Lesson 3: Testing AI/ML Models in a Controlled Environment
Section 8: Module 7: Implementing AI/ML in Mainframe Operations
Lecture 22 Lesson 1: Scaling AI/ML Solutions
Lecture 23 Lesson 2: Automating Workflows with AI/ML
Lecture 24 Lesson 3: Best Practices for Deployment
Section 9: Module 8: Monitoring, Maintenance, and Continuous Improvement
Lecture 25 Lesson 1: Monitoring AI/ML-Integrated Systems
Lecture 26 Lesson 2: Retraining AI/ML Models
Lecture 27 Lesson 3: Continuous Optimization
Lecture 28 Lesson 4: Looking Ahead: The Future of Mainframes and AI/ML
Target audience would include: Mainframe Systems Managers, IT Infrastructure Directors/Leads, Cloud & DevOps Managers, Technical Support Engineers, and Developers & Programmers.