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All Lessons
Free Lessons (4)
Introduction to the Course
Course Overview
Who Can Take This Course?
Getting Started
Overview of AI, ML, DL, and Supervised/Unsupervised Learning
Image Classification
Image Classification Using Python Programming
Data Types
The Model-Centric Approach vs. the Data-Centric Approach
Quiz: Artificial Intelligence Basics
Understanding Noisy Data, Label Noise, and Its Types
Noisy Data and Label Noise
Simulating Unbiased Mislabeling Using Python Programming
Simulating Biased Mislabeling Using Python Programming
Quiz: The Fundamentals of Noisy Data, Label Noise, and Its Types
Introduction to Convolutional Neural Network (CNN)
Image Classification Using Convolutional Neural Networks
Input Layer and Convolution Layer
Implementation of Pooling Layers Using Python Programming
Hyperparameter Tuning
Quiz: Fundamental Concepts of CNN Architecture
Project
Cats vs Dogs Classification with Convolutional Neural Networks
Performance Comparison of Mislabeled and Clean Dataset
Implementing CNNs for Image Classification in Python
Unbiased Mislabeling in Image Classification Using CNNs
Biased Mislabeling in Image Classification Using CNNs
Dealing with Mislabeled Datasets Using Pretrained Models
Quiz: Evaluating the Performance of Mislabeled and Clean Datasets
Dealing with Imbalance Dataset
Imbalanced Datasets
Methods for Transforming Imbalanced Data into Balanced Data
Dealing with Imbalanced Datasets in Python Programming
Quiz: Essential Concepts for Dealing with Imbalanced Datasets
Mini Project
Gauge the Impact of Imbalanced and Mislabeled Datasets
Course Assessment
Comprehensive Quiz
Wrap Up
Conclusion
Appendix
References
Project
Dealing With Small Datasets In ML
Deal with Mislabeled and Imbalanced Machine Learning Datasets
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References
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