課程編號: CPD0828/2025
類別
GPM: General and Professional Matters
H&S: Health and Safety including Occupational Safety and Health
OTM: Environment, Information Technology, Quality and Other Technical Matters not directly related to a Trainee's own discipline
課程名稱
Machine Learning in Engineering Practices
類別
GPM
日期
10 August 2025 (Sun)
時間
2:00 pm-6:00 pm
主辦單位
Social Enterprise Limited
地點
1A, 60 King’s Road, Northpoint
費用
$3,000
簡介

Machine learning empowers engineers by enhancing decision-making capabilities, automating repetitive tasks, enabling predictive maintenance, optimizing design processes, improving quality control, reducing costs, enhancing customer experience, and providing scalability. These benefits enable engineers to tackle complex challenges more effectively and innovate. Engineering examples of data acquisition by measurements and simulations and subsequent machine learning are illustrated step-by-step in detail.

目標
  • Understand fundamental concepts of machine learning and its applications in
  • Familiarize with tools and frameworks relevant to machine learning.
  • Analyze case studies to recognize the impact of machine learning in engineering
  • Discuss ethical considerations and best practices for using machine
  • Gain hands-on experience in developing a machine learning model.
內容
  1. Introduction to Machine Learning
  • Definition and Overview
  • What is Machine Learning (ML)?
  • Key concepts: supervised, unsupervised, and reinforcement learning
  • Importance in Engineering
    • Applications across different branches of engineering (e.g., civil, mechanical, electrical)
  • Current Trends
    • Emerging technologies and their relevance to the engineering sector

 

  1. Machine Learning Tools and Frameworks
  • Popular Tools and Libraries
  • Overview of platforms (e.g., TensorFlow, Scikit-learn, PyTorch)
  • Software for Engineers
    • Industry-specific tools (e.g., MATLAB, COMSOL)
  • Demonstration
  • Quick demo of a simple machine learning model using a popular tool

 

  1. Case Studies in Engineering Applications
  • Real-World Examples
  • Case Study 1: Predictive maintenance in manufacturing
  • Case Study 2: Structural health monitoring using ML
  • Case Study 3: Energy consumption optimization in buildings
  • Discussion
  • Analysis of outcomes and lessons learned from each case study

 

  1. Ethical Considerations and Challenges
  • Ethical Implications
  • Data privacy concerns and responsible data usage
  • Bias in machine learning models and its consequences
  • Regulatory Framework
    • Overview of relevant regulations and standards
  • Best Practices
  • Guidelines for implementing machine learning ethically in engineering

 

  1. Hands-On Workshop
  • Interactive Session
  • Participants work in small groups to develop a simple machine learning model
  • Task: Use a dataset to create predictions or classifications
  • Group Presentations
    • Each group presents their findings and discusses their approach

 

  1. Conclusion and Q&A
  • Summary of Key Points
  • Future of Machine Learning in Engineering
    • Emerging trends and potential future applications
  • Open Floor for Questions
  • Address any remaining queries from participants
語言

Cantonese supplemented with English terminology

註冊
查詢

Bobo Ngai, 21110835, plandd@gmail.com

本網站採用Cookies工具來改善使用者體驗及確保網站有效運行。閱讀更多 Cookie 相關資訊