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    -50%

    Machine Learning and Artificial Intelligence in Business – Driving Business Innovation with AI and Machine Learning

    20 hours
    Beginner

    “Machine Learning and Artificial Intelligence in Business – Driving Business …

    What you'll learn
    Week 1: Introduction to AI and Machine Learning (4 Hours)
    Session 1 (2 Hours): Introduction to AI and Machine Learning in Business
    Overview of AI and Machine Learning
    Historical Context and Evolution of AI
    Key Concepts and Terminology
    Session 2 (2 Hours): Understanding Machine Learning Models
    Types of Machine Learning: Supervised, Unsupervised, Reinforcement
    Introduction to Algorithms and Model Selection
    Basic Tools and Software Overview (e.g., Python, TensorFlow)
    Week 2: Data Management and Preprocessing (6 Hours)
    Session 3 (2 Hours): Data Collection and Management
    Understanding Data Types and Sources
    Data Collection and Storage Strategies
    Ethics and Privacy in Data Handling
    Session 4 (2 Hours): Data Preprocessing and Feature Engineering
    Data Cleaning and Transformation
    Feature Selection and Engineering Techniques
    Introduction to Data Visualization Tools
    Session 5 (2 Hours): Exploratory Data Analysis (EDA)
    Techniques for EDA
    Identifying Patterns and Anomalies in Data
    Using EDA Tools and Libraries
    Week 3: Building and Evaluating Models (6 Hours)
    Session 6 (2 Hours): Supervised Learning Techniques
    Introduction to Regression and Classification Models
    Building and Training Models
    Case Studies in Business Applications
    Session 7 (2 Hours): Unsupervised Learning and Clustering
    Overview of Clustering Techniques
    Dimensionality Reduction Methods
    Practical Applications in Market Segmentation
    Session 8 (2 Hours): Model Evaluation and Tuning
    Techniques for Evaluating Model Performance
    Overfitting, Underfitting, and Model Tuning
    Cross-Validation and Hyperparameter Tuning
    Week 4: Advanced Topics and Business Applications (4 Hours)
    Session 9 (2 Hours): Advanced Topics in AI and ML
    Introduction to Neural Networks and Deep Learning
    AI in Natural Language Processing and Computer Vision
    Emerging Trends and Future of AI in Business
    Session 10 (2 Hours): Strategic Implementation and Capstone Project
    Strategies for Implementing AI and ML in Business
    Ethical Considerations and AI Governance
    Capstone Project Presentation and Course Wrap-Up
    The course would ideally blend lectures with hands-on exercises, case studies, and project work. The capstone project should involve applying AI and ML concepts to a real-world business problem, encouraging students to think critically about the strategic application of these technologies in a corporate setting. This structure ensures that MBA students gain not only the technical knowledge of AI and ML but also understand how to leverage these technologies for strategic advantage in various business sectors.
    -64%

    Supply Chain Analytics – Unlocking Efficiency with Supply Chain Analytics

    20 hours
    Beginner

    Supply Chain Analytics – Unlocking Efficiency with Supply Chain Analytics …

    What you'll learn
    Week 1: Introduction to Supply Chain Management and Analytics (4 Hours)
    Session 1 (2 Hours): Fundamentals of Supply Chain Management
    Overview of Supply Chain Concepts and Components
    Role of Analytics in Supply Chain Management
    Introduction to Supply Chain Models
    Session 2 (2 Hours): Introduction to Supply Chain Analytics Tools and Techniques
    Overview of Analytical Tools Used in Supply Chain (e.g., Excel, R, Python)
    Basic Data Analysis Techniques for Supply Chain Data
    Case Studies Highlighting the Importance of Analytics in Supply Chain
    Week 2: Data Management and Descriptive Analytics (6 Hours)
    Session 3 (2 Hours): Data Management in Supply Chains
    Data Collection and Management Strategies in Supply Chains
    Data Quality and Governance in Supply Chain Analytics
    Introduction to Data Warehousing and Data Lakes
    Session 4 (2 Hours): Descriptive Analytics in Supply Chain
    Using Descriptive Analytics to Understand Historical Performance
    Key Performance Indicators (KPIs) in Supply Chain Management
    Visualization Techniques for Supply Chain Data
    Session 5 (2 Hours): Practical Exercise on Descriptive Analytics
    Hands-on Exercise with a Supply Chain Dataset
    Creating Dashboards and Reports for Supply Chain Performance
    Week 3: Predictive Analytics and Optimization Techniques (6 Hours)
    Session 6 (2 Hours): Introduction to Predictive Analytics in Supply Chain
    Overview of Predictive Modeling Techniques
    Forecasting Demand and Inventory Requirements
    Predictive Maintenance in Supply Chain Operations
    Session 7 (2 Hours): Supply Chain Optimization Techniques
    Linear Programming and Network Optimization Models
    Optimization of Logistics and Distribution Networks
    Case Study on Supply Chain Optimization
    Session 8 (2 Hours): Advanced Topics in Predictive Analytics
    Machine Learning Applications in Supply Chain
    Scenario Planning and Risk Analysis in Supply Chain
    Real-time Analytics and IoT in Supply Chain Management
    Week 4: Strategic Applications and Capstone Project (4 Hours)
    Session 9 (2 Hours): Integrating Analytics into Supply Chain Strategy
    Building Data-Driven Supply Chain Strategies
    Sustainability and Ethics in Supply Chain Analytics
    Future Trends in Supply Chain Analytics
    Session 10 (2 Hours): Capstone Project and Course Wrap-Up
    Group Project: Developing an Analytical Solution for a Supply Chain Problem
    Presentations of Capstone Projects
    Course Summary and Pathways for Further Learning
    The course should be a mix of lectures, case studies, and practical exercises, ideally using real-world supply chain data. The capstone project in the final week would allow students to apply the concepts and techniques learned to a real or simulated supply chain problem, reinforcing their understanding and practical skills in supply chain analytics. This structure ensures that MBA students are not only knowledgeable about analytical techniques but also understand how to apply these skills effectively in the context of supply chain management.