AI Neural Insights: Deep Learning with Python
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Welcome to “Deep Learning Mastery with Python,” a transformative course designed to empower you with the knowledge and skills required to navigate the intricate world of deep learning using Python. This course is meticulously crafted to provide a comprehensive understanding of various deep learning concepts and practical applications, ensuring that you not only grasp the theoretical foundations but also gain hands-on experience through engaging projects.
Section 1: Deep Learning: Convolutional Neural Network CNN using Python
In this section, participants embark on a comprehensive exploration of Convolutional Neural Networks (CNN) using Python. The initial lectures introduce the project, providing a sneak peek into the objectives. Subsequent sessions delve into the essential elements, covering the installation process, dataset structure, and the intricacies of coding the CNN model and its layers. The focus expands to vital components like data preprocessing, augmentation, and understanding data generators, creating a solid foundation for practical implementation.
Section 2: Deep Learning: Artificial Neural Network ANN using Python
Transitioning to Artificial Neural Networks (ANN), this section initiates with an introduction to the project, followed by the setup of the environment for ANN development. The course proceeds to guide participants through the installation of necessary libraries and data preprocessing steps. Key topics include data exploration, encoding, and the meticulous preparation of datasets for training. The step-by-step construction of the ANN, spanning multiple lectures, ensures a comprehensive understanding, culminating in prediction processes and addressing data imbalance through resampling.
Section 3: Deep Learning: RNN, LSTM, Stock Price Prognostics using Python
This section commences with an introduction to a project centered on Stock Price Prognostics using Deep Learning. It covers the installation of required components and explores libraries vital for the task. Lectures then guide participants through dataset exploration, data preprocessing, and exploratory data analysis. The focus expands to feature scaling, building Recurrent Neural Networks (RNN), and the training and prediction processes. The section concludes with visualizing the final results, providing a holistic view of applying deep learning to stock price predictions.
Section 4: Deep Learning: Project using Convolutional Neural Network CNN in Python
The final section introduces a hands-on project utilizing Convolutional Neural Networks (CNN) in Python. Participants begin by understanding the project’s scope, followed by leveraging Google Colab for collaborative work. Lectures guide through importing packages and data, preprocessing steps, model creation, training, and prediction. The emphasis on visualization enhances the practicality of the project, ensuring participants gain a comprehensive understanding of applying CNN in a real-world scenario.
This course structure ensures a progressive and comprehensive journey through different facets of deep learning, providing participants with practical skills applicable to diverse applications. Whether you’re a novice exploring the fascinating field of deep learning or a seasoned professional aiming to enhance your skills, “Deep Learning Mastery with Python” promises to be your guide to mastering the complexities of deep learning and unleashing your potential in the world of artificial intelligence. Let’s dive in and unlock the power of deep learning together!
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1Introduction of ProjectVideo lesson
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2Overview of CNNVideo lesson
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3Installations and Dataset StructureVideo lesson
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4Import librariesVideo lesson
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5CNN Model and Layers CodingVideo lesson
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6Data Preprocessing and AugmentationVideo lesson
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7Understanding Data generatorVideo lesson
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8Prediction on Single ImageVideo lesson
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9Understanding Different Models and AccuracyVideo lesson
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10Introduction of ProjectVideo lesson
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11Setup Environment for ANNVideo lesson
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12ANN InstallationVideo lesson
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13Import Libraries and Data PreprocessingVideo lesson
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14Data PreprocessingVideo lesson
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15Data Preprocessing ContinueVideo lesson
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16Data ExplorationVideo lesson
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17EncodingVideo lesson
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18Encoding ContinueVideo lesson
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19Preparation of Dataset for TrainingVideo lesson
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20Steps to Build ANN Part 1Video lesson
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21Steps to Build ANN Part 2Video lesson
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22Steps to Build ANN Part 3Video lesson
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23Steps to Build ANN Part 4Video lesson
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24PredictionsVideo lesson
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25Predictions ContinueVideo lesson
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26Resampling Data with Imbalance-LearnVideo lesson
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27Resampling Data with Imbalance-Learn ContinueVideo lesson
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28Introduction of ProjectVideo lesson
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29InstallationVideo lesson
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30LibrariesVideo lesson
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31Dataset ExploreVideo lesson
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32Import LibrariesVideo lesson
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33Data PreprocessingVideo lesson
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34Exploratory Data AnalysisVideo lesson
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35Exploratory Data Analysis ContinueVideo lesson
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36Feature ScalingVideo lesson
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37Feature Scaling ContinueVideo lesson
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38More on Feature ScalingVideo lesson
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39Building RNNVideo lesson
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40Building RNN ContinueVideo lesson
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41Training of NetworkVideo lesson
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42Prediction on Test DataVideo lesson
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43Prediction on Test Data ContinueVideo lesson
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44Final Result VisualizationVideo lesson

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