Artificial Intelligence – AI 6 Projects Course
This hands-on course dives into the world of Artificial Intelligence through project-based learning. Covering foundational AI concepts, machine learning algorithms, and deep learning applications, students will work on six diverse projects that apply AI in practical, real-world scenarios. By the end of the course, students will have a strong portfolio showcasing their AI skills.
What you’ll learn
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Deploy Emotion AI-based model using Tensorflow 2.0 Serving and use the model to make inferences.
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Understand the concept of Explainable AI and uncover the black nature of Artificial Neural Networks and visualize their hidden layers using the GradCam technique
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Develop a Deep Learning model to automate and optimize the brain tumor detection processes at a hospital.
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Build and train AI model to detect and localize brain tumors using ResNets and ResUnet networks (Healthcare applications).
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Understand the theory and intuition behind Segmentation models and state-of-the-art ResUnet networks.
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Build, train, deploy AI models in business to predict customer default on credit cards using AWS SageMaker XGBoost algorithm.
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Optimize XGBoost model parameters using hyperparameters optimization search.
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Apply AI in business applications by performing customer market segmentation to optimize marketing strategy.
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Understand the underlying theory and mathematics behind the DeepDream algorithm for Art generation.
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Develop, train, and test State-of-the art DeepDream algorithm to create AI-based art masterpieces using Keras API in TF 2.0.
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Develop ANN models and train them in Google Colab while leveraging the power of GPUs and TPUs.
Course Content:
Module 1: Introduction to AI:
- Overview of Artificial Intelligence, Machine Learning (ML), and Deep Learning (DL)
- Real-world AI applications and trends
Module2: Emotional AI
- Task #1 – Understand the Problem Statement & Business Case
- Task #2 – Import Libraries and Datasets
- Task #3 – Perform Image Visualization
- Task #4 – Perform Images Augmentation
- Task #5 – Perform Data Normalization and Scaling
- Task #6 – Understand Artificial Neural Networks (ANNs) Theory & Intuition
- Task #7 – Understand ANNs Training & Gradient Descent Algorithm
- Task #8 – Understand Convolutional Neural Networks and ResNets
- Task #9 – Build ResNet to Detect Key Facial Points
- Task #10 – Compile and Train Facial Key Points Detector Model
- Task #11 – Assess Trained ResNet Model Performance
- Task #12 – Import and Explore Facial Expressions (Emotions) Datasets
- Task #13 – Visualize Images for Facial Expression Detection
- Task #14 – Perform Image Augmentation
- Task #15 – Build & Train a Facial Expression Classifier Model
- Task #16 – Understand Classifiers Key Performance Indicators (KPIs)\
- Task #17 – Assess Facial Expression Classifier Model
- Task #18 – Make Predictions from Both Models: 1. Key Facial Points & 2. Emotion
- Task #19 – Save Trained Model for Deployment
- Task #20 – Serve Trained Model in TensorFlow 2.0 Serving
- Task #21 – Deploy Both Models and Make Inference
Module3: AI in HealthCare
- Task #1 – Understand the Problem Statement and Business Case
- Task #2 – Import Libraries and Datasets
- Task #3 – Visualize and Explore Datasets
- Task #4 – Understand the Intuition behind ResNet and CNNs
- Task #5 – Understand Theory and Intuition Behind Transfer Learning
- Task #6 – Train a Classifier Model To Detect Brain Tumor
- Task #7 – Assess Trained Classifier Model Performance
- Task #8 – Understand ResUnet Segmentation Models Intuition
- Task #9 – Build a Segmentation Model to Localize Brain Tumors
- Task #10 – Train ResUnet Segmentation Mod
- Task #11 – Assess Trained ResUNet Segmentation Model Performance
Module4: AI In Business Marketing
- Task #1 – Understand AI Applications in Marketing
- Task #2 – Import Libraries and Datasets
- Task #3 – Perform Exploratory Data Analysis (Part #1)
- Task #4 – Perform Exploratory Data Analysis (Part #2)
- Task #5 – Understand Theory and Intuition Behind K-Means Clustering Algorit
- Task #6 – Apply the Elbow Method to Find the Optimal Number of Cluster
- Task #7 – Apply K-Means Clustering Algorithm
- Task #8 – Understand Intuition Behind Principal Component Analysis (PCA
- Task #9 – Understand the Theory and Intuition Behind Auto-encoders
- Task #10 – Apply Auto-encoders and Perform Clustering
Module5: AI In Business (Finance) AutoML
- Notes on Amazon Web Services (AWS
- Task #1 – Understand the Problem Statement & Business Case
- Task #2 – Import Libraries and Datasets
- Task #3 – Visualize and Explore Dataset
- Task #4 – Clean Up the Data
- Task #5 – Understand the Theory & Intuition Behind XG-Boost Algorithm
- Task #6 – Understand XG-Boost Algorithm Key Steps
- Task #7 – Train XG-Boost Algorithm Using Scikit-Learn
- Task #8 – Perform Grid Search and Hyper-parameters Optimization
- Task #9 – Understand XG-Boost in AWS SageMaker
- Task #10 – Train XG-Boost in AWS SageMaker
- Task #11 – Deploy Model and Make Inference
- Task #12 – Train and Deploy Model Using AWS AutoPilot (Minimal Coding Required!)
Module6: Creative AI
- Task #1 – Understand the Problem Statement & Business Case
- Task #2 – Import Model with Pre-trained Weights
- Task #3 – Import and Merge Images
- Task #4 – Run the Pre-trained Model and Explore the Activation
- Task #5 – Understand the Theory & Intuition Behind Deep Dream Algorithm
- Task #6 – Understand The Gradient Operations in TF 2.0
- Task #7 – Implement Deep Dream Algorithm Part #1
- Task #8 – Implement Deep Dream Algorithm Part #2
- Task #9 – Apply DeepDream Algorithm to Generate Image
- Task #10 – Generate DeepDream Video
Module7: Explainable AI With Zero Coding
- Explainable AI Dataset Download & Link to DataRobot
- Project Overview on Food Recognition with A
- DataRobot Demo 1 – Upload and Explore Datase
- DataRobot Demo 2 – Train AI/ML Model
- DataRobot Demo 3 – Explainable AI
Module8: Crash Course on AWS, S3, SageMaker
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What is AWS and Cloud Computing
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Key Machine Learning Components and AWS Tou
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Regions and Availability Zone
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Amazon S3
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EC2 and Identity and Access Management (IAM)
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AWS Free Tier Account Setup and Overview
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AWS SageMaker Overview
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AWS SageMaker Walk-through
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AWS SageMaker Studio Overview
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AWS SageMaker Studio Walk-through
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AWS SageMaker Model Deployment
Who this course is for:
- Seasoned consultants wanting to transform industries by leveraging AI.
- AI Practitioners want to advance their careers and build their portfolio.
- Visionary business owners who want to harness the power of AI to maximize revenue, reduce costs, and optimize their business.
- Visionary business owners who want to harness the power of AI to maximize revenue, reduce costs, and optimize their business.
CareerPath:
After completing this course, students will be well-prepared for various entry-level to intermediate roles in artificial intelligence and machine learning, such as:
- Data Scientist
- Machine Learning Engineer
- AI/ML Developer
- Data Analyst/Junior Data Scientist
- AI Research Assistant
International Student Fees: USD650
Job Interview Preparation (Soft Skills Questions & Answers)
Tough Open-Ended Job Interview Questions
What to Wear for Best Job Interview Attire
Job Interview Question- What are You Passionate About?
How to Prepare for a Job Promotion Interview
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Flexible Class Options
Week End Classes For Professionals SAT | SUN
Corporate Group Training Available
Online Classes – Live Virtual Class (L.V.C), Online Training
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