Course 7 : Conv nets, PTMs, Transfer Learning
Course Curriculum
CNN
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Image classification using MLP
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Drawbacks of MLPs for processing images
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CNN architecture – The big picture
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A closer look at feature extraction
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Basic components of a CNN
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Use case : Image classification using CNNs
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Adding dropout layers to avoid overfitting
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Use case : Object Detection
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Use case : Image Segmentation:
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Use case : Facial Recognition
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Use case : Video Analysis:
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Use case : Generative Models:
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Pre-trained models using Convolutional Neural Networks (CNNs)
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VGGNet
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ResNet
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Inception and GoogLeNet
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DenseNet
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MobileNet
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Transfer learning
Transfer learning is a machine learning technique that leverages pre-trained models to solve new tasks or improve performance on related tasks.
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Introduction to Transfer Learning:
00:00 -
Pre-trained Models:
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Transfer Learning Approaches
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Feature Extraction:
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Fine-tuning:
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Domain Adaptation:
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Data Augmentation
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One-shot and Few-shot Learning
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Use case : Transfer Learning in Computer Vision
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Use case : Transfer Learning in Natural Language Processing
00:00
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₹9,900
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LevelIntermediate
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Last UpdatedApril 15, 2024
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