Certified Applied Artificial Intelligence Professional (CAAI) @ Singapore

Thu, 05 Dec, 2024 at 09:30 am to Fri, 06 Dec, 2024 at 05:30 pm

61 Robinson Rd | Singapore

CASUGOL
Publisher/HostCASUGOL
Certified Applied Artificial Intelligence Professional (CAAI) @ Singapore
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Learn how to use Gen AI tools x Python to design simple Machine Learning Models to uncover insights, predict trends, and make decisions
About this Event

For more information: https://casugol.com/course/caai

International Acclaimed Certification. 5-Star Reviews

Suitable for everyone. Learn in an Interactive, Supportive, and Encouraging Environment.


  • Duration: 16 Hours
  • Certification: Participants will receive a Certificate of Competency upon completing the course and passing the examination


Course Objective

  • Acquire advanced knowledge and skills on developing Artificial Intelligence (AI) models in Artificial Intelligence (AI) technologies and its application beyond just operating GEN AI tools.
  • Learn how to use Python Programming x GEN AI for Machine Learning, Deep Learning, Natural Language Processing (NLP) and basic computer vision.


Examination

NA



  • MODULE 1 - Introduction to Applied Artificial Intelligence



    What is Applied Artificial Intelligence?
  • Understanding the Concepts of Artificial Intelligence
  • Real World Applications of Applied Artificial Intelligence
  • Relationship Between Data Science and Artificial Intelligence
  • Introduction to Machine Learning, Deep Learning, and Neural Networks
  • Data Management and Governance for Artificial Intelligence


MODULE 2 - Deep Dive into Python Programming


  • Introduction to Python Editors and IDE
  • Basic Programming Rules in Python
  • Understanding Variables in Python – Integers, Float, and Strings
  • Conditional Operators and Control Loops in Python – If, Else if, For, While
  • Packages / Libraries in Python for Artificial Intelligence – NumPy, Pandas, SciPy, Scikit-Learn, MatPlotLib


MODULE 3 - Data Pre-processing and Cleaning for Applied Artificial Intelligence


  • Understanding the Different Types of Data
  • Reading and Writing Data from Various Sources
  • Data Preparation for Pre-processing and Cleaning
  • Techniques for Data Manipulation using Python Tools
  • Data Formatting, Normalization, and Data Encoding


MODULE 4 - Machine Learning Regression, Classification, and Clustering Techniques


  • Introduction to Regression Modelling
  • What is a Linear Regression Model, Multiple Linear Regression Model and Logistic Regression Model
  • Model Validation, Prediction and Refining of Regression Models
  • Key Components of Classification Models in Machine Learning
  • Difference Between Supervised vs. Unsupervised Classification
  • Classification Techniques – Decision Tree Classification, Random Forest Classification, and Naïve Bayes Classification
  • What is Clustering Analysis
  • Introduction to K-Means Clustering and Hierarchical Clustering


MODULE 5 - Deep Learning Techniques in Applied Intelligence


  • Introduction to Deep Learning
  • Common Deep Learning Algorithms – MLP, BM, RBM, DBN, Autoencoders
  • Neural Networks in Deep Learning
  • The main characteristics of Neural Networks
  • Introduction to Python TensorFlow and KERAS for Deep Learning
  • Developing a Multilayer Perceptron (MLP), Convolutional Neural Network (CNN), and Recurrent Neural Network (RNN)


MODULE 6 - Natural Language Processing (NLP) in Applied Artificial Intelligence


  • What is Natural Language Processing (NLP)?
  • Text Pre-processing for Natural Language Processing (NLP)
  • Understanding Recurrent Neural Networks
  • Using Recurrent Dropout to Fight Overfitting
  • Stacking Recurrent Layers
  • Using Bidirectional RNNs
  • Understanding 1D Convolution for Sequence Data
  • Combing CNNs and RNNs to Process Long Sequences


MODULE 7 - Computer Vision (CV) in Applied Artificial Intelligence


  • Introduction to Computer Vision in Applied Artificial Intelligence
  • What is Convnets in Computer Vision
  • Understanding Convolution Operation and Max Pooling Operation
  • Training a Convnet on a Small Dataset
  • Understanding the Relevance of Deep Learning for Small-Data Problems
  • Downloading the Data and Building the Network
  • Data Pre-processing and Data Augmentation
  • Visualizing Intermediate Activations
  • Visualizing Convnet Filters
  • Visualizing Convnet Filters

Be Recognized as a CASUGOL Certified Professional

Add Value to your already prolific portfolio with a Certificate of Competency from CASUGOL.

Awarded upon completing and meeting all requirements of the course.


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Event Venue & Nearby Stays

61 Robinson Rd, 61 Robinson Road, Singapore, Singapore

Tickets

SGD 697.99

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