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Deep Learning with TensorFlow and Keras - 3rd Edition : Build and Deploy Supervised, Unsupervised, Deep, and Reinforcement Learning Models.
Published 2022Table of Contents: “…-- Introduction to neural networks -- Perceptron -- Our first example of TensorFlow code -- Multi-layer perceptron: our first example of a network -- Problems in training the perceptron and solution -- Activation function: sigmoid -- Activation function: tanh -- Activation function: ReLU -- Two additional activation functions: ELU and Leaky ReLU -- Activation functions -- In short: what are neural networks after all? …”
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2
Deep Learning with Python, Second Edition.
Published 2021Table of Contents: “…-- 3.3 Keras and TensorFlow: A brief history -- 3.4 Setting up a deep learning workspace -- 3.4.1 Jupyter notebooks: The preferred way to run deep learning experiments -- 3.4.2 Using Colaboratory -- 3.5 First steps with TensorFlow -- 3.5.1 Constant tensors and variables -- 3.5.2 Tensor operations: Doing math in TensorFlow -- 3.5.3 A second look at the GradientTape API -- 3.5.4 An end-to-end example: A linear classifier in pure TensorFlow -- 3.6 Anatomy of a neural network: Understanding core Keras APIs -- 3.6.1 Layers: The building blocks of deep learning -- 3.6.2 From layers to models -- 3.6.3 The "compile" step: Configuring the learning process -- 3.6.4 Picking a loss function -- 3.6.5 Understanding the fit() method -- 3.6.6 Monitoring loss and metrics on validation data -- 3.6.7 Inference: Using a model after training -- Summary -- 4 Getting started with neural networks: Classification and regression -- 4.1 Classifying movie reviews: A binary classification example -- 4.1.1 The IMDB dataset -- 4.1.2 Preparing the data -- 4.1.3 Building your model -- 4.1.4 Validating your approach.…”
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3
Neural Network Computer Vision with OpenCV 5.
Published 2023Table of Contents: “…OpenCV DNN Module -- Introduction -- Structure -- Objectives -- Deep learning frameworks -- TensorFlow -- PyTorch -- Keras -- Inference for computer vision -- Local inferencing -- Local CPUs -- Local GPUs -- Cloud -- Edge computing -- OpenCV DNN module -- History -- Features and limitations -- Capabilities -- Limitations -- Considerations -- Supported layers -- Unsupported layers and operations -- Important classes -- Conclusion -- Exercises -- 7. …”
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4
Deep Learning : Foundations and Concepts.
Published 2023Table of Contents: “…The Bias-Variance Trade-off -- Exercises -- 5 Single-layer Networks: Classification -- 5.1. Discriminant Functions -- 5.1.1 Two classes -- 5.1.2 Multiple classes -- 5.1.3 1-of-K coding -- 5.1.4 Least squares for classification -- 5.2. …”
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Proceedings of the 5th International Conference on Frontiers in Intelligent Computing: Theory and Applications FICTA 2016, Volume 1 /
Published 2017Table of Contents: “…Text Document Classification with PCA and One-Class SVM -- Chapter 12. Data Mining Approach to Predict and Analyze the Cardiovascular Disease -- Chapter 13. …”
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7
Advances in Informatics and Computing in Civil and Construction Engineering Proceedings of the 35th CIB W78 2018 Conference: IT in Design, Construction, and Management /
Published 2019Table of Contents: “…Education, Training, and Learning with Technologies -- BIM4VET, towards BIM training recommendation for AEC professionals -- Teaching effective collaborative information delivery and management in response to a BIM mandate -- A Story of Online Construction Masters' Project: Is An Active Online Independent Study Course Possible? …”
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8
Proceedings of the Second International Conference on Computer and Communication Technologies IC3T 2015, Volume 2 /
Published 2016Table of Contents: “…An Intelligent Packet Filtering Based on Bi-Layer Particle Swarm Optimization with Reduced Search Space -- Chapter 63. …”
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9
Intelligent and Fuzzy Techniques : Proceedings of the INFUS 2020 Conference, Istanbul, Turkey, July 21-23 2020.
Published 2020Table of Contents: “…Intro -- Preface -- Contents -- Invited Speakers' Papers -- Fuzzy Meets Privacy: A Short Overview -- 1 Introduction -- 2 Data Protection Methods Based on Fuzzy Techniques -- 3 Information Loss Measures Based on Fuzzy Techniques -- 4 Disclosure Risk Measures Based on Aggregation Functions: WM, OWA and the Choquet Integral -- 5 Conclusion and Future Work -- References -- Intelligent Planning of Spatial Analysis Process Based on Contexts -- Abstract -- 1 Introduction -- 2 Review of Related Publications -- 3 Management of Analysis Process -- 4 Conceptual Model of Knowledge -- 5 Optimal Number of Contexts -- 6 Conclusion -- Acknowledgments -- References -- The Method of Finding the Base Set of Intuitionistic Fuzzy Graph -- Abstract -- 1 Introduction -- 2 Basic Concepts and Definitions of Intuitionistic Fuzzy Graphs -- 3 Base Set of Intuitionistic Fuzzy Graph -- 4 The Method for Finding Base Set -- 5 Conclusion -- Acknowledgments -- References -- Intuitionistic Fuzzy Assessments of the Abdominal Aorta and Its Branches -- Abstract -- 1 Introduction -- 2 Proposed Assessment Model -- 2.1 Intuitionistic Fuzzy Estimations -- 2.2 Intuitionistic Fuzzy Threshold Values -- 3 Conclusion -- Acknowledgment -- References -- Mathematical Philosophy and Fuzzy Logic -- Abstract -- 1 Mathematical Philosophy and Mathematics in General -- 2 Probability and Fuzzy Logic in Industrial Engineering -- 3 Conclusion -- References -- Clustering -- Segmentation of Retail Consumers with Soft Clustering Approach -- 1 Introduction -- 2 Methodology -- 3 Results -- 4 Managerial Implications -- 5 Conclusion and Limitations -- References -- Segmentation Analysis of Companies' Natural Gas Consumption by Soft Clustering -- 1 Introduction -- 2 Fuzzy C-Means Clustering -- 3 Case Study -- 4 Conclusions and Future Directions -- References.…”
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