Data Science in Manufacturing Optimization Training Course.

Data Science in Manufacturing Optimization Training Course.

Introduction

The manufacturing industry is undergoing a digital revolution, driven by data science, IoT, and AI. This 5-day course equips professionals with advanced techniques to optimize production processes, reduce costs, and enhance quality through data-driven decision-making. Participants will learn to leverage machine learning, predictive analytics, and real-time data streams to address challenges like equipment downtime, supply chain inefficiencies, and quality control. The course emphasizes Industry 4.0 trends, including digital twins, AI-driven automation, and ethical AI practices, preparing attendees to lead innovation in smart manufacturing.


Objectives

By the end of this course, participants will:

  1. Understand the role of data science in modern manufacturing and its impact on operational efficiency.

  2. Gain hands-on experience with industrial datasets (IoT sensors, production logs, quality control data).

  3. Apply machine learning for predictive maintenance, defect detection, and process optimization.

  4. Develop strategies to optimize supply chains, inventory, and energy consumption using analytics.

  5. Design interactive dashboards to monitor key performance indicators (KPIs) in real time.

  6. Complete a capstone project addressing a real-world manufacturing challenge.


Who Should Attend?

  • Manufacturing engineers and process optimization specialists.

  • Data scientists and analysts working in industrial settings.

  • Supply chain managers and operations leaders.

  • Quality assurance professionals and lean manufacturing practitioners.

  • Researchers and academics focused on smart manufacturing.

  • Tech entrepreneurs developing Industry 4.0 solutions.


5-Day Course Outline


Day 1: Foundations of Data Science in Manufacturing

  • Morning Session:

    • Introduction to Smart Manufacturing: Trends, Challenges, and Industry 4.0 Technologies

    • Data Ecosystems in Manufacturing: IoT Sensors, SCADA Systems, and ERP Data

    • Ethical Considerations: Data Privacy, Bias in AI Models, and GDPR Compliance

  • Afternoon Session:

    • Hands-on: Data Preprocessing for Manufacturing Datasets (missing values, outliers, time-series alignment)

    • Tools: Python (Pandas, NumPy), SQL, and Apache Spark

    • Case Study: Cleaning Sensor Data from a CNC Machining Line


Day 2: Predictive Maintenance and Equipment Optimization

  • Morning Session:

    • Predictive Maintenance Fundamentals: Failure Prediction and Root Cause Analysis

    • Machine Learning Models: Survival Analysis, Random Forests, and LSTM Networks

    • Tools: Scikit-Learn, TensorFlow, and PyTorch

  • Afternoon Session:

    • Hands-on: Building a Predictive Maintenance Model for Hydraulic Systems

    • Case Study: Reducing Downtime in Automotive Assembly Lines

    • Tools: MLflow for Model Tracking and Deployment


Day 3: Quality Control and Defect Detection

  • Morning Session:

    • Computer Vision for Defect Detection: CNNs, Transfer Learning, and Edge AI

    • Statistical Process Control (SPC) and Six Sigma Integration

    • Tools: OpenCV, TensorFlow, and Azure Custom Vision

  • Afternoon Session:

    • Hands-on: Training a CNN Model to Detect Surface Defects in Electronics Manufacturing

    • Case Study: Real-Time Quality Inspection in Semiconductor Production

    • Tools: Roboflow for Dataset Annotation and Model Training


Day 4: Supply Chain and Energy Optimization

  • Morning Session:

    • Supply Chain Analytics: Demand Forecasting, Inventory Optimization, and Supplier Risk Analysis

    • Energy Consumption Analytics: Identifying Waste and Reducing Carbon Footprint

    • Tools: Python (Prophet, XGBoost), Power BI, and AnyLogic

  • Afternoon Session:

    • Hands-on: Building a Digital Twin for a Smart Factory Supply Chain

    • Case Study: Optimizing Just-in-Time (JIT) Inventory for Aerospace Manufacturing

    • Tools: Siemens Plant Simulation and Tableau


Day 5: Capstone Project and Future Trends

  • Morning Session:

    • Capstone Project: Solve a Manufacturing Challenge (e.g., Minimizing Downtime, Reducing Defects, Energy Optimization)

    • Teams integrate IoT data, ML models, and dashboards to propose solutions.

  • Afternoon Session:

    • Presentations and Expert Feedback

    • Future Trends:

      • AI-Driven Autonomous Factories

      • Blockchain for Transparent Supply Chains

      • Quantum Computing for Complex Optimization

    • Course Wrap-Up and Certification


Key Features of the Course

  • Practical Learning: Real-world datasets from automotive, electronics, and heavy machinery sectors.

  • Industry 4.0 Focus: Tools like digital twins, edge AI, and IoT integration.

  • Ethical AI: Frameworks for responsible data usage and model transparency.

  • Expert Instructors: Industry leaders from manufacturing giants (e.g., Siemens, GE, Bosch).

  • Capstone Project: Collaborative problem-solving with mentorship.

  • Future-Ready Skills: Exposure to AI, blockchain, and quantum computing applications.