Ai-Driven Design & Innovation In Learning
Published 9/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.73 GB | Duration: 3h 10m
Published 9/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.73 GB | Duration: 3h 10m
Practical AI implementation in Learning & Development with measurable outcomes
What you'll learn
Strategic AI Implementation
Executive Buy-in & ROI Justification
AI-Powered Content Creation Revolution
Personalized Learning Design
Ethical AI Implementation & Risk Management
Requirements
Students should have foundational knowledge of Learning & Development processes, training design principles, and organizational learning challenges to apply AI solutions effectively.
The course is designed for non-technical professionals, with AI concepts explained in business terms and practical applications rather than programming or technical implementation.
Students should have experience with or access to existing LMS platforms, training tools, or organizational learning systems to practice integration concepts.
Understanding of their organization's structure, decision-making processes, and budget approval workflows to effectively implement the executive buy-in strategies taught.
Students should be prepared to complete practical assignments, pilot programs, and apply course concepts in real-world scenarios rather than consuming theoretical content only.
Description
Organizations worldwide are facing unprecedented pressure to modernize their learning and development approaches. Manual content creation, one-size-fits-all training, and static assessment methods no longer meet the demands of today's workforce or business objectives.This course addresses the critical gap between AI potential and practical implementation in L&D. Designed for professionals who need actionable strategies rather than theoretical concepts, it provides the framework, tools, and risk management approaches necessary for successful AI integration.Essential Skills You'll DevelopStrategic AI Implementation Framework - Complete methodology for assessing organizational readiness and executing phased rollouts from pilot programs to enterprise-wide deployment.Executive Communication and Budget Justification - Quantified ROI models, cost-benefit analysis frameworks, and presentation tools required to secure organizational support and funding.AI-Enhanced Content Operations - Systematic approach to transforming manual content creation processes using prompt engineering, quality assurance protocols, and automated workflow design.Personalized Learning Systems - Methods for implementing adaptive learning pathways, competency-based progression, and predictive analytics to improve learning outcomes.Compliance and Risk Management - Essential frameworks for navigating data privacy regulations, preventing algorithmic bias, and establishing audit trails for organizational protection.Structured Learning ApproachFoundation Level: Comprehensive guidance for professionals new to AI implementation, focusing on core concepts and confidence building through practical application.Strategic Level: Implementation-focused content for those with basic AI exposure, emphasizing integration strategies and organizational change management.Advanced Level: Systems-thinking approach for experienced practitioners, covering enterprise-scale optimization and future-proofing strategies.Target ProfessionalsLearning and Development Leaders responsible for organizational training strategy and modernization initiatives.HR Managers overseeing employee development programs and seeking to improve training effectiveness and efficiency.Training Specialists who design and deliver learning content and need practical tools for AI integration.Technology and Operations Leaders managing learning systems and seeking to optimize existing infrastructure with AI capabilities.Comprehensive Resource PackageThe course includes tools and application guides. These resources are designed for immediate application in real organizational contexts. A dedicated section as AI primer with detailed research reports to kick start you AI ecosystem navigation from L&D perspective.Address the growing gap between traditional L&D methods and modern workforce needs through systematic AI implementation that delivers sustainable organizational value.
Overview
Section 1: Introduction
Lecture 1 Introduction
Section 2: AI in Learning and Development ( A Quick Overview from Beginner's Perspective)
Lecture 2 Section Overview
Lecture 3 AI you already know and use
Lecture 4 AI vs. Automation
Lecture 5 Myth Busting before diving Deeper
Lecture 6 Practical AI adoption in Learning and Development
Lecture 7 Strategic AI Ecosystem
Lecture 8 LMS Integration Strategy from a Technology Maturity Perspective
Lecture 9 Leadership in AI Transformation
Lecture 10 Infrastructure and Change Management Overview for AI Transformation in L&D
Section 3: Managing the Dynamic Knowledge Ecosystem
Lecture 11 Problems of Information Big Bang
Lecture 12 The Iceberg Model
Lecture 13 Strategic Framework to Manage Knowledge in Iceberg for Learning and Development
Lecture 14 Learning and Development Compass
Lecture 15 AI a double edged sword?
Lecture 16 AI Governance Implementation Strategy
Section 4: Content Creation and Curation Revolution
Lecture 17 Content Creation Struggles
Lecture 18 AI Content Creation Capabilties
Lecture 19 Simple Prompt Engineering Framework for Quality Outcomes
Lecture 20 Overcoming common fears while creating content
Lecture 21 Content Scaling Challenges and Solutions
Lecture 22 Content Versioning and Brand Consistency
Lecture 23 Automating Content creation Workflows
Lecture 24 Governance compliance frameworks
Section 5: Personalized Learning Experiences
Lecture 25 Why personalization matters and catering to different types of learners
Lecture 26 Getting Started with Personalization
Lecture 27 Dynamic Learning Pathways
Lecture 28 Predictive Learning Analytics
Section 6: Assessment and Analytics Excellence
Lecture 29 Automated Grading and Instant Feedback
Lecture 30 Assessment Innovation
Lecture 31 Predictive Analytics and Reporting
Section 7: Interactive Learning Technologies
Lecture 32 Chatbots and Virtual Assistants
Lecture 33 Immersive Learning Environments
Lecture 34 Advanced Interactive Technology Integration
Section 8: Ethical and Global Compliance Considerations
Lecture 35 Fundamental Ethics considerations when using AI systems in any capacity
Lecture 36 Implementing Safeguards to ensure compliance
Section 9: Implementation Strategy and Risk Management
Lecture 37 Pilot Programs
Lecture 38 Scaling Strategies
Lecture 39 Change Management
Lecture 40 Enterprise Transformation
Section 10: AI Primer - Foundational Research Reports to help build a AI Knowledge Base
Lecture 41 Search Technology Evolution: A comprehensive Timeline
Lecture 42 Neural Networks Simplified using an L&D relevant example
Lecture 43 Transformer Revolution: AI's New Era
Lecture 44 LLM Architectures, Training and Costs
Lecture 45 API Integration Guide for Non-Technical Professionals
Lecture 46 Advanced Prompt Engineering for L&D
Lecture 47 SaaS L&D Integration and Challenges
Lecture 48 Cloud AI Infrastructure for L&D
Lecture 49 L&D Economic Analysis Framework
Lecture 50 No-Code AI development Guide for L&D
Lecture 51 AI L&D Data Architecture Guide
Lecture 52 LLM framework for L&D Applications
Lecture 53 AI Security and Compliance Guide for L&D
Lecture 54 AI Integration Pattern Analysis for L&D
Lecture 55 Vibe Coding Guide
Lecture 56 LLM Landscape Analysis for L&D
Lecture 57 AI Workflow Automation for L&D
Lecture 58 L&D Performance Monitoring Framework
Lecture 59 Future-Proofing AI in L&D
Lecture 60 A Comprehensive Workshop on System Architecture for AI-Powered L&D
HR Managers & Learning Leaders - Mid-to-senior level professionals responsible for organizational training programs, employee development, and learning strategy who need to modernize their approach with AI technologies.,Training & Development Specialists - Practitioners who design, deliver, and manage training programs and want to leverage AI for content creation, personalization, and improved learning outcomes while maintaining quality standards.,Organizational Change Champions - Leaders driving digital transformation initiatives who need to understand AI's impact on learning, build stakeholder buy-in, and implement technology solutions that deliver measurable business value.,Learning Technology Professionals - Individuals managing LMS platforms, educational technology stack, or learning analytics who want to integrate AI capabilities and optimize their existing systems for enhanced performance.,Executive Decision Makers - C-suite leaders, department heads, and budget holders who need comprehensive understanding of AI L&D investments, ROI projections, and strategic implementation approaches to make informed technology decisions.