11 chapters · 55 lessons
1.1 Introduction to Project Management 1.2 Project Management Lifecycle 1.3 Advanced Project Management Tasks 1.4 Project Management Frameworks 1.5 Project Manager’s Roles and Responsibilities
2.1 Introduction to Artificial Intelligence (AI) 2.2 Introduction to Machine Learning (ML) 2.3 Neural Networks 2.4 AI and ML Applications and Trends 2.5 Case Studies on AI and ML Projects
3.1 The Importance of Data in Artificial Intelligence 3.2 Data Analysis Techniques 3.4 Applying Data Insights to Project Decisions 3.5 Tools for Data Visualization and Reporting 3.6 Challenges and Best Practices
4.1 AI in Risk Management – An Introduction 4.2 AI for Risk Mitigation and Response 4.3 AI for Financial and Resource Risk Management 4.4 AI in Risk Management: The Future Scope 4.5 Case Study – AI-based Project Risk Management
5.1 Introduction to Work Breakdown Structure (WBS) 5.2 AI for WBS Creation 5.3 AI in Project Scheduling 5.4 AI for Resource-Constrained Scheduling 5.5 Case Studies: AI-based WBS and AI Algorithms for Project Scheduling
6.1 Introduction to AI in Budgeting 6.2 AI for Estimating Costs and Budget Allocation 6.3 AI for Budget Optimization 6.4 Future of AI in Project Budgeting 6.5 Case Study: AI Algorithms for Project Scheduling, AI- Based Model for Estimating Costs and Budget Allocation
7.1 Introduction to AI in Human Resource Planning 7.2 AI for Workforce Allocation 7.3 AI in Skill Matching and Employee Performance Analysis 7.4 The Future of AI in Human Resource Planning 7.5 Case Studies: Designing AI-Based Models for HR Planning
8.1 Introduction to Stakeholder Management and AI 8.2 Identifying and Categorizing Stakeholders Using AI 8.3 Stakeholder Conflicts Management with AI 8.4 Ethics and Future Prospects in AI-based Stakeholder Management 8.5 Case Studies: AI Tools for Stakeholder Management
9.1 Introduction to Project Monitoring and AI 9.2 AI-based Tools for Monitoring Project Progress 9.3 AI for Risk Monitoring 9.4 Case Studies: AI Tools for Project Monitoring
10.1 Current State of AI in Project Management 10.2 Ethical Considerations in AI-Based Project Management 10.3 Technical Challenges in AI Integration
1. Understanding AI Agents 2. How Does an AI Agent Work 3. Applications and Trends of AI Agents in Project Management 4. Core Characteristics of AI Agents 5. Significance of AI Agents in Project Management 6. Types of AI Agents 7. Case Study-AI Agents for Agile Project Delivery – Atlassian in Action 8. Hands-On Activity
Python for Project Analytics
Machine Learning Libraries for Project Insights (Scikit-learn, TensorFlow)
Project Data Handling Tools (Pandas, NumPy)
Visualization Platforms for Project Dashboards (Power BI, Tableau)
Project Data Storage using SQL & NoSQL Databases
APIs for Project and Workflow Integration
Cloud Platforms for AI-Enabled Project Management (AWS & Azure Services)
OpenAI & LangChain for AI-Assisted Project Tools
Delivery: SelfPaced