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UcretsizAI/Machine Learningbeginner

Deep Learning

Grasp the fundamentals of deep learning: the key concepts, popular frameworks like TensorFlow and Keras, with practical applications

2 haftaEN25 ders602 kayitli
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Deep Learning

Kurs Icerigi

1 modul · 5 konu · 25 ders
01
Tensor Flow 2.0Introduction to deep learning with tensor flow
5 konu
Foundations of Neural NetworksThis subject provides the fundamental knowledge needed to understand deep learning, covering the core concepts of neural networks and the necessary mathematical and software tools.
7 ders
  • IntroductionThis lesson introduces the basics of deep learning and its growing popularity
  • The Core Components of a Neural NetworkThis lesson explores the fundamental building blocks of neural networks.
  • Environment SetupThis lesson will prepare your environment for deep learning projects
  • The Math Behind Neural NetworksThis lesson covers the essential mathematical concepts for understanding how neural networks work
  • Key Functions and Their RolesThis lesson focuses on activation and loss functions, two critical components of a neural network
  • The Learning ProcessThis lesson explains how a neural network learns to make predictions.
  • Gradient Descent VariantsThis lesson explores different variations of the gradient descent algorithm.
Building Blocks and OptimizationThis subject covers more practical aspects of building and optimizing deep learning models.
6 ders
  • Practical Model BuildingThis lesson focuses on building a practical neural network model for a real-world task.
  • Model Evaluation MetricsThis lesson teaches how to evaluate the performance of a deep learning model
  • RegularizationThis lesson explores techniques to prevent overfitting in deep learning models.
  • Handling Common Dataset IssuesThis lesson addresses the challenge of working with imbalanced datasets.
  • Visualizing and DebuggingThis lesson shows how to use TensorBoard for visualizing and debugging models.
  • Input Pipeline and OptimizationThis lesson focuses on optimizing data loading and training.
Computer Vision with CNNsThis subject is dedicated to convolutional neural networks (CNNs) and their applications in computer vision.
5 ders
  • Introduction to Computer VisionThis lesson introduces the field of computer vision and its applications.
  • Building a CNNThis lesson provides a hands-on guide to building your first Convolutional Neural Network. It walks you through a practical image classification problem using the CIFAR-10 dataset
  • Preventing OverfittingThis lesson covers data augmentation, a key technique for improving model generalization.
  • Transfer LearningThis lesson introduces transfer learning and its benefits.
  • Object DetectionThis lesson focuses on object detection, a specific computer vision task.
Sequence Models and NLPThis subject covers recurrent neural networks (RNNs) and their applications in natural language processing (NLP).
4 ders
  • Introduction to Sequence ModelsThis lesson introduces Recurrent Neural Networks (RNNs), which are specifically designed to handle sequential data like text, audio, and time series.
  • Tackling RNN ChallengesThis lesson addresses common problems faced when training RNNs.
  • Natural Language Processing (NLP)This lesson introduces the basics of NLP.
  • Word EmbeddingsThis lesson focuses on the concept of word embeddings.
Projects and DeploymentThis subject provides hands-on experience through projects and covers model deployment.
3 ders
  • Customer Churn Prediction ProjectThis project applies deep learning to predict customer churn.
  • Potato Disease Classification ProjectThis project is an end-to-end deep learning project to classify diseases in potato plants.
  • Advanced NLPThis lesson introduces BERT, a powerful model for NLP.

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AI/Machine Learning

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