Pideya Learning Academy

AI for Upskilling and Training Management Systems

Upcoming Schedules

  • Schedule

Date Venue Duration Fee (USD)
20 Jan - 24 Jan 2025 Live Online 5 Day 3250
31 Mar - 04 Apr 2025 Live Online 5 Day 3250
14 Apr - 18 Apr 2025 Live Online 5 Day 3250
30 Jun - 04 Jul 2025 Live Online 5 Day 3250
21 Jul - 25 Jul 2025 Live Online 5 Day 3250
29 Sep - 03 Oct 2025 Live Online 5 Day 3250
10 Nov - 14 Nov 2025 Live Online 5 Day 3250
24 Nov - 28 Nov 2025 Live Online 5 Day 3250

Course Overview

In the current era of rapid digitization and workforce transformation, organizations are under immense pressure to evolve their learning and development strategies. The conventional approaches to training—static modules, fixed schedules, and one-size-fits-all frameworks—are no longer adequate in addressing the multifaceted needs of a modern, multigenerational workforce. To stay competitive and build agile, resilient talent pipelines, enterprises are increasingly integrating Artificial Intelligence (AI) into their training and upskilling ecosystems. The AI for Upskilling and Training Management Systems course by Pideya Learning Academy is designed to empower professionals with the critical capabilities needed to implement, manage, and optimize AI-enabled learning infrastructures across a wide range of industries.
A recent report by the World Economic Forum forecasts that by 2025, 85 million jobs may be displaced by automation, while 97 million new roles may emerge, more adapted to the new division of labor between humans, machines, and algorithms. Furthermore, a global study by PwC shows that 74% of CEOs are concerned about the availability of key skills, and Gartner indicates that AI-enabled training systems can reduce time-to-competency by up to 40%. These statistics underscore the urgency for organizations to adopt AI-driven learning models that are not only responsive but also anticipatory in nature—models that use real-time data to map skills, personalize learning journeys, and track training outcomes with precision.
This course equips participants with the strategic vision and operational toolkit to harness AI in transforming corporate learning. Participants will explore the full spectrum of AI-powered training management systems, from workforce readiness assessments and dynamic skill gap analysis to automated learning path creation and performance forecasting. One of the core strengths of the program is its deep dive into intelligent learning ecosystems—platforms that leverage AI to continually refine learning content based on user interaction, skill acquisition trends, and business objectives.
Key highlights of this training include:
Real-time training insights through AI-based dashboards and analytics
Integration of machine learning to predict upskilling needs before they arise
Use of AI algorithms to recommend tailored content based on individual learner profiles
Application of sentiment analysis to interpret feedback and improve engagement
Deployment of generative AI in instructional content creation and learning design
Strategies for compliance management and ethical AI use in training governance
By combining academic insights with real-world use cases, the training provides a holistic understanding of how AI can be applied to not just deliver content but to intelligently manage the entire training lifecycle. From identifying competency gaps to recommending learning paths and measuring effectiveness, every component is covered through the lens of AI optimization. The curriculum further introduces participants to innovations such as AI-driven coaching systems, adaptive assessments, and automated learning progression tracking, ensuring they are prepared to drive measurable results in any organizational context.
Delivered by experts in AI, talent development, and digital learning, this course empowers attendees to critically evaluate and select the right AI tools and platforms for their organization’s needs. Whether building new AI-integrated upskilling frameworks or transforming legacy LMS into predictive learning ecosystems, participants will be equipped with both the insight and foresight required for sustainable impact.
Pideya Learning Academy positions this training not only as a response to current workforce challenges but as a strategic investment in future-readiness. As organizations continue to pivot towards digital capability-building, those equipped with the skills from this course will be at the forefront of transforming training into a competitive differentiator.

Key Takeaways:

  • Real-time training insights through AI-based dashboards and analytics
  • Integration of machine learning to predict upskilling needs before they arise
  • Use of AI algorithms to recommend tailored content based on individual learner profiles
  • Application of sentiment analysis to interpret feedback and improve engagement
  • Deployment of generative AI in instructional content creation and learning design
  • Strategies for compliance management and ethical AI use in training governance
  • Real-time training insights through AI-based dashboards and analytics
  • Integration of machine learning to predict upskilling needs before they arise
  • Use of AI algorithms to recommend tailored content based on individual learner profiles
  • Application of sentiment analysis to interpret feedback and improve engagement
  • Deployment of generative AI in instructional content creation and learning design
  • Strategies for compliance management and ethical AI use in training governance

Course Objectives

After completing this Pideya Learning Academy training, the participants will learn to:
Understand the evolving role of AI in training and upskilling ecosystems
Evaluate and implement AI-powered learning experience platforms (LXPs)
Identify and close skill gaps through predictive and prescriptive analytics
Design adaptive learning frameworks based on employee performance data
Integrate AI tools into existing learning management systems (LMS)
Leverage AI to personalize content delivery and optimize learning impact
Develop organizational strategies for scalable AI-enabled upskilling
Explore ethical, privacy, and compliance considerations in AI-based training
Analyze the ROI of AI-driven workforce development initiatives

Personal Benefits

Develops technical fluency in AI-powered learning technologies
Strengthens career pathways in L&D, digital HR, and transformation domains
Enables mastery of tools and models used by top global training platforms
Equips participants with strategic and operational know-how for managing AI in L&D
Enhances analytical capabilities to interpret skill metrics and training KPIs
Builds confidence in implementing enterprise-wide learning automation

Organisational Benefits

Aligns training and upskilling strategies with long-term digital transformation goals
Reduces training inefficiencies through automation and targeted content delivery
Enhances employee engagement and retention through personalized learning
Enables agile workforce development in response to emerging business needs
Improves training ROI through data-driven insights and real-time metrics
Strengthens the organization’s ability to maintain future-ready competencies

Who Should Attend

Learning and Development (L&D) Managers and Officers
HR Leaders and Talent Development Professionals
Digital Transformation Specialists
Instructional Designers and Learning Architects
AI Solution Developers in EdTech and HRTech
Organizational Development Consultants
Public Sector Training Directors and Curriculum Planners
Course

Course Outline

Module 1: Foundations of AI in Workforce Development
Evolution of training systems Role of AI in modern L&D Overview of AI technologies in HR and learning Challenges in traditional upskilling programs Case studies: AI in Fortune 500 training strategies Key terminology: LXP, LMS, NLP, machine learning
Module 2: AI-Powered Learning Experience Platforms (LXPs)
Architecture of LXPs Content recommendation engines Real-time learner analytics Personalization algorithms Integration with existing LMS Content tagging and skill graph mapping
Module 3: Intelligent Skills Gap Analysis and Prediction
Skill taxonomies and ontologies AI for workforce skills mapping Gap identification models Predictive upskilling recommendations Training prioritization algorithms Role of data lakes and APIs
Module 4: AI in Personalized Learning Pathways
Behavioral learning insights Learner profiling and clustering Adaptive content sequencing Learning path automation Reinforcement learning in training systems Feedback loop mechanisms
Module 5: AI in Performance and Engagement Tracking
Employee sentiment analysis in learning Engagement monitoring algorithms Dropout prediction models Micro-moment learning tracking Training effectiveness metrics AI-enhanced post-training assessments
Module 6: Designing AI-Driven Training Strategies
Enterprise learning architecture Aligning AI with learning objectives Policy and governance in AI-led training AI tools for competency-based training Workflow automation and role-based access Model evaluation and validation
Module 7: Ethical and Compliance Considerations
AI governance frameworks Data privacy regulations (GDPR, etc.) Bias detection and mitigation Transparency and explainability Security of learning data Compliance in EdTech procurement
Module 8: Conversational and Generative AI in Training
AI chatbots and virtual coaches Use of generative AI in curriculum development Natural language processing for learner support Intelligent tutoring systems Language modeling and question generation Voice-enabled learning solutions
Module 9: Measuring ROI and Scaling AI in L&D
Metrics for training success ROI models for AI-based learning investments Scaling strategies for global training initiatives Stakeholder alignment and executive buy-in Vendor selection and technology partnerships Long-term roadmap for AI in training strategy

Have Any Question?

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