Machine Learning with TensorFlow on Google Cloud
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- Curriculum
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If you’re a budding data enthusiast, developer, or even an experienced professional wanting to make the leap into the ever-growing world of machine learning, have you often wondered how to integrate the power of TensorFlow with the vast scalability of Google Cloud? Do you dream of deploying robust ML models seamlessly without the fuss of infrastructure management?
Delve deep into the realms of machine learning with our structured guide on “Machine Learning with TensorFlow on Google Cloud.” This course isn’t just about theory; it’s a hands-on journey, uniquely tailored to help you utilize TensorFlow’s prowess on the expansive infrastructure that Google Cloud offers.
In this course, you will:
- Develop foundational models such as Linear and Logistic Regression using TensorFlow.
- Master advanced architectures like Artificial Neural Networks (ANN) and Convolutional Neural Networks (CNN) for intricate tasks.
- Harness the power and convenience of Google Cloud’s Colab to run Python code effortlessly.
- Construct sophisticated Jupyter notebooks with real-world datasets on Google Colab and Vertex.
But why dive into TensorFlow on Google Cloud? As machine learning solutions become increasingly critical in decision-making, predicting trends, and understanding vast datasets, TensorFlow’s integration with Google Cloud is the key to rapid prototyping, scalable computations, and cost-effective solutions.
Throughout your learning journey, you’ll immerse yourself in a series of projects and exercises, from constructing your very first ML model to deploying intricate deep learning networks on the cloud.
This course stands apart because it bridges the gap between theory and practical deployment, ensuring that once you’ve completed it, you’re not just knowledgeable but are genuinely ready to apply these skills in real-world scenarios.
Take the next step in your machine learning adventure. Join us, and let’s build, deploy, and scale together.
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6Introduction to ANNVideo lesson
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7Single Neural CellVideo lesson
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8Example of a PerceptronVideo lesson
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9What are Activation FunctionsVideo lesson
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10Sigmoid Activation FunctionVideo lesson
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11Linear regression case studyVideo lesson
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12Linear regression case study - demonstrationVideo lesson
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13Logistic regression case studyVideo lesson
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14Logistic regression case study - demonstrationVideo lesson
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15Parallel vs Sequential StackingVideo lesson
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16Important termsVideo lesson
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17How Neural Networks workVideo lesson
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18Finding the optima using Gradient DescentVideo lesson
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19Concept Behind Using Gradient DescentVideo lesson
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20Back Propagation in neural networkVideo lesson
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21Types and Uses of Activation FunctionsVideo lesson
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22Multiclass ClassificationVideo lesson
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23Difference Between Gradient Descent and Stochastic Gradient DescentVideo lesson
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24EpochsVideo lesson
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25Information on Keras and TensorflowVideo lesson
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26Dataset for classificationVideo lesson
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27Normalization and Test-Train splitVideo lesson
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28Different ways to create ANNVideo lesson
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29Building the Neural NetworkVideo lesson
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30Compiling and Training the Neural Network modelVideo lesson
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31Evaluating performance and PredictingVideo lesson
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32Building Neural Network for Regression ProblemVideo lesson
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33Complex ANN Architectures using Functional APIVideo lesson
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34Understanding Checkpoints and Callbacks in KerasVideo lesson
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35CNN - IntroductionVideo lesson
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36CNN - ImplementationVideo lesson
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37Stride in CNNVideo lesson
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38Padding in CNNVideo lesson
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39Filters in CNNVideo lesson
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40Example of Filters and Feature maps in CNNVideo lesson
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41Channels in CNNVideo lesson
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42RGB Channels IllustrationVideo lesson
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43Pooling layer in CNNVideo lesson
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