Embark on a comprehensive journey into deep learning with Keras through this meticulously crafted course. The course begins with an engaging introduction to creating a multiclass classification model for assessing red wine quality. You'll learn to fetch, load, and prepare data, followed by exploratory data analysis (EDA) and visualization to uncover insights and patterns. As you progress, you'll delve into defining, compiling, fitting, and optimizing your model, ultimately using it for accurate wine quality predictions.
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Deep Learning with Keras and Practical Applications
Ce cours fait partie de Spécialisation Keras Deep Learning & Generative Adversarial Networks (GAN)
Instructeur : Packt - Course Instructors
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Ce que vous apprendrez
Identify the key features and functions of the Keras deep learning library
Explain the process and importance of exploratory data analysis (EDA) and data visualization
Distinguish between different types of Convolutional Neural Networks (CNNs) and their applications in image classification
Develop and deploy optimized deep learning models using cloud-based resources
Compétences que vous acquerrez
- Catégorie : Keras (Neural Network Library)
- Catégorie : Deep Learning
- Catégorie : Convolutional Neural Networks
- Catégorie : Machine Learning
- Catégorie : Image Augmentation
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Il y a 33 modules dans ce cours
In this module, we will introduce you to the concept of multiclass classification for red wine quality assessment. You will gain insights into the project's goals, the methodologies employed, and an overview of the steps we will follow throughout this engaging machine learning journey.
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In this module, we will guide you through the crucial first step of fetching and loading data. You will learn how to acquire and prepare your dataset, setting a solid foundation for the machine learning process ahead.
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In this module, we will dive into Exploratory Data Analysis (EDA) and data visualization. By leveraging visual tools and techniques, you will gain a deeper understanding of your dataset, uncovering crucial insights before proceeding to model creation.
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In this module, we will define the model's architecture. You will witness the construction of layers, activation functions, and connections, understanding how each component contributes to the overall machine learning journey.
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In this module, we will guide you through the compilation, fitting, and plotting of the model. You will learn how to optimize model training and visualize performance metrics, ensuring a well-tuned classification model.
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In this module, we will demonstrate how to use the trained model for predicting wine quality. You will see the model in action, applying it to real-world data and analyzing the results to understand its predictive power.
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In this module, you will learn how to serialize and save your trained model. This essential process will ensure that your model's weights, architecture, and configuration are preserved for future use and deployment.
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In this module, we will cover the basics of digital images. You will gain a solid grasp of pixel representation, color channels, resolution, and image formats, forming the foundation for more advanced image processing tasks.
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In this module, we will introduce basic image processing using Keras functions. You will learn how to manipulate images, convert between formats, and handle color channels using Keras preprocessing utilities.
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In this module, we will delve into image augmentation using Keras. You will learn how to enhance single images using the ImageDataGenerator class, a crucial step in improving model generalization and accuracy.
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In this module, we will explore directory-based image augmentation with Keras. You will learn how to enhance your entire image dataset, a vital skill for improving model generalization and accuracy.
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In this module, we will delve into data frame augmentation using Keras. You will discover how to amplify your dataset's diversity using advanced augmentation techniques, improving your model's training and performance.
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In this module, we will demystify the basics of Convolutional Neural Networks (CNNs). You will explore their architecture, layers, and the fundamental principles that power image recognition and classification.
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In this module, we will unravel the core concepts of stride, padding, and flattening in CNNs. You will understand how these elements shape convolutions and feature extraction, enhancing your deep learning models.
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In this module, we will dive into building a CNN model for flower image classification. You will learn how to fetch, load, and meticulously prepare your data, ensuring robust model training and accuracy.
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In this module, we will address the fundamental step of creating dedicated test and train folders for flower classification using CNNs. You will learn how to organize your dataset meticulously, enhancing the training and testing process.
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In this module, we will define the CNN model for flower classification. You will learn how to design a baseline model using the Sequential class, building the architecture layer by layer for effective image classification.
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In this module, we will delve into the training and visualization of the CNN model for flower classification. You will learn the intricate steps that transform data into predictions, enhancing your understanding of model training.
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In this module, you will learn how to save your trained CNN model for future use in flower classification tasks. Master the essential skill of model persistence and serialization, ensuring seamless deployment whenever needed.
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In this module, we will dive into loading a pre-trained CNN model for flower classification. You will learn how to harness the power of saved models to make precise predictions, elevating your understanding of model deployment.
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In this module, we will lay the foundation for optimization techniques in flower classification using CNNs. You will understand the importance of optimization and learn about various methods to enhance your model's performance.
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In this module, we will delve into the world of dropout regularization in flower classification using CNNs. You will learn how to implement dropout to prevent overfitting and enhance your model's performance and generalization.
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In this module, we will explore padding and filter optimization techniques in flower classification using CNNs. You will learn how to optimize these elements to improve model accuracy and performance.
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In this module, we will delve into the optimization of data augmentation techniques in flower classification using CNNs. You will learn how to enhance your model's performance by implementing effective augmentation strategies.
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In this module, we will embark on the journey of hyperparameter tuning for your CNN model. You will learn how to manually adjust parameters and implement strategies to enhance model performance and accuracy.
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In this module, we will introduce you to transfer learning using pre-trained models, focusing on the VGG architecture. You will understand the benefits and applications of transfer learning in enhancing your flower classification tasks.
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In this module, we will explore predictions using the pre-trained VGG16 and VGG19 models. You will learn how to use these state-of-the-art models to achieve reliable predictions and interpret the results for flower classification.
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In this module, we will dive into the world of AI prediction using the ResNet50 model. You will learn how to apply ResNet50 to achieve reliable predictions and evaluate its performance in flower classification tasks.
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In this module, we will focus on transfer learning using the VGG16 model for training on a flower dataset. You will learn how to harness the power of pre-trained models to enhance your flower classification tasks.
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In this module, we will delve into transfer learning with the VGG16 model, focusing on flower prediction. You will learn how to apply transfer learning to make precise predictions and evaluate its effectiveness in improving model performance.
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In this module, we will guide you through utilizing transfer learning with the VGG16 model on Google Colab's GPU. You will learn the essential procedures for preparing and uploading your dataset, harnessing the power of pre-trained models for efficient image classification tasks.
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In this module, we will guide you through transfer learning using the VGG16 model on Google Colab's GPU. You will learn how to train the model and make predictions, leveraging the power of pre-trained models for your image classification tasks.
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In this module, we will walk you through utilizing transfer learning with the VGG19 model on Google Colab's GPU. You will learn the step-by-step procedure for leveraging pre-trained models to tackle image classification tasks, ensuring enhanced model performance and accuracy.
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Instructeur
Offert par
Recommandé si vous êtes intéressé(e) par Machine Learning
University of Colorado Boulder
DeepLearning.AI
Sungkyunkwan University
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