Richard Wan is an ACLP-certified lecturer and software consultant with over 40 years of experience in software and hardware development, spanning AI, computer vision, and machine learning. He began his programming career with 8-bit computing in the late 1970s and went on to earn his M.Sc. in Electrical Engineering (Computer Vision) from the University of Wisconsin–Madison. His professional contributions include co-founding multiple high-tech companies, pioneering digital publishing technologies, and leading AI-driven software development in healthcare, defense, and manufacturing.
Richard has taught a wide range of technical courses, including machine learning with Scikit-Learn, deep learning with TensorFlow and PyTorch, and computer vision with OpenCV. In predictive analytics, he emphasizes the use of PyTorch for building deep learning models that can forecast trends, detect anomalies, and classify outcomes. His teaching approach blends decades of hands-on development with structured, beginner-friendly instruction, equipping learners with practical skills to transform data into prediction.
Course Details
Course Details
What You'll Learn
Topic 1 Introduction to Deep Learning
Machine Learning vs Deep Learning
Deep Learning Methodology
Overview of Tensorflow Keras
Install and Run Tensorflow Keras
Basic Tensorflow Keras Operations
Topic 2 Neural Network for Regression
What is Neural Network (NN)?
Loss Function and Optimizer
Build a Neural Network Model for Regression
Topic 3 Neural Network for Classification
One Hot Encoding and SoftMax
Cross Entropy Loss Function
Build a Neural Network Model for Classification
Topic 4 Convolutional Neural Network (CNN)
Introduction to Convolutional Neural Network?
ImageDataGenerator
Image Classification Model with CNN
Data Augmentation and Dropout
Topic 5 Transfer Learning
Introduction to Transfer Learning
Applications of Pre-Trained Models
Fine Tuning Pre-Trained Models
Topic 6 Recurrent Neural Network (RNN)
Introduction to Recurrent Neural Network (RNN)
LSTM and GRU
Build a RNN Model for Time Series Forecasting
Build a RNN Model for Sentiment Analysis
Course Info
Promotion Code
Your will get 10% discount voucher for 2nd course onwards if you write us a Google review.
Minimum Entry Requirement
Knowledge and Skills
- Able to operate using computer functions
- Minimum 3 GCE ‘O’ Levels Passes including English or WPL Level 5 (Average of Reading, Listening, Speaking & Writing Scores)
Attitude
- Positive Learning Attitude
- Enthusiastic Learner
Experience
- Minimum of 1 year of working experience.
Target Age Group: 21-65 years old
Minimum Software/Hardware Requirement
Software:
You can download and install the following software:
Hardware: Windows and Mac Laptops
Job Roles
Job Roles
- Machine Learning Engineer
- Data Scientist
- Deep Learning Researcher
- AI Developer
- Neural Network Designer
- Computer Vision Engineer
- NLP Engineer (branching into deep learning)
- AI Product Manager (technical understanding)
- Robotics Engineer (with AI components)
- Bioinformatics Scientist (deep learning applications)
- Medical Imaging Specialist (AI-focused)
- Game Developer (AI-driven features)
- Predictive Analytics Specialist
- AI/ML Educator or Trainer
- Autonomous Systems Developer.
Trainers
Trainers
Review
Customer Reviews (105)
- The trainer teach very well, easy to follow. Review by Course Participant/Trainee
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Already Good (Posted on 9/19/2021)1. Do you find the course meet your expectation? 2. Do you find the trainer knowledgeable in this subject? 3. How do you find the training environment - will recommend Review by Course Participant/Trainee
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Will give a rating of 4.5 to the course, and to the trainer Chee Yong. He is qualified to teach. The initial morning was slow, but, on 2nd day, good that we have gone the concepts again.1. Do you find the course meet your expectation? 2. Do you find the trainer knowledgeable in this subject? 3. How do you find the training environment
Will be good if there are hands-on session that we are expected to do ourselves during the session as throughout, the trainer hand-on us (Posted on 8/24/2021) - will recommend Review by Course Participant/Trainee
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How to apply it in real life e.g. how does real world deep learning works differenly from the provided codes.1. Do you find the course meet your expectation? 2. Do you find the trainer knowledgeable in this subject? 3. How do you find the training environment
The starting part was slow with theories. After lunch, momentum was there and learning was much interesting with more practical hands on. (Posted on 8/23/2021) - will recommend Review by Course Participant/Trainee
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More examples in Jupiter notebook (Posted on 8/19/2021)1. Do you find the course meet your expectation? 2. Do you find the trainer knowledgeable in this subject? 3. How do you find the training environment - will recommend Review by Course Participant/Trainee
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For Day 2 as the info get more complicated, kindly provide more guidelines and emphasis on the important points for effective learning. i would also like to feedback that such courses try to avoid zoom as it may affect the delivery of the course.1. Do you find the course meet your expectation? 2. Do you find the trainer knowledgeable in this subject? 3. How do you find the training environment
Richard Wan is a patience and experience trainer and i learnt a lot from him. (Posted on 7/30/2021)
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