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1. Introduction to networks of networks [2022]
- Gao, Jianxi (Ph. D. in automation), author.
- Bristol [England] (Temple Circus, Temple Way, Bristol BS1 6HG, UK) : IOP Publishing, [2022]
- Description
- Book — 1 online resource (various pagings) : illustrations (some color)
- Summary
-
- 1. Basic concepts of single networks
- 1.1. Introduction
- 1.2. Degree distribution--how networks are structured?
- 1.3. Percolation transition--how a network collapses?
- 1.4. Further network properties
- 1.5. Spatial networks
- 2. From single networks to networks of networks
- 2.1. Introduction
- 2.2. How networks network?
- 2.3. Key phenomena in network of networks
- 3. A pair of interdependent networks
- 3.1. Introduction
- 3.2. Different types of dependency between networks
- 3.3. Random failures
- 3.4. Targeted attack on partially interdependent networks
- 4. Robustness of networks composed of interdependent networks
- 4.1. Introduction
- 4.2. Structures of networks of networks (NON)
- 4.3. Cascading failures in a network of networks
- 4.4. Percolation of network of networks
- 4.5. Comparing feedback and no-feedback conditions
- 4.6. Vulnerability of network of networks for a large number of networks
- 5. Spatially embedded interdependent networks
- 5.1. Introduction
- 5.2. The extreme vulnerability of semi-spatial interdependent networks
- 5.3. Semi-spatial model of network of networks
- 5.4. Fully-spatial interdependent networks : propagation of cascading failures
- 5.5. Effect of dependency link length, the r-model
- 5.6. Effect of connectivity link length, the [zeta]-model
- 5.7. Localized attacks
- 6. Further features in networks of networks
- 6.1. Synchronization and dynamics on networks of networks
- 6.2. Different network structures in networks of networks
- 6.3. Overlap and intersimilarity in networks of networks
- 6.4. Different percolation processes in networks of networks
- 6.5. Multimodal transportation
- 6.6. Games on networks of networks
- 6.7. Controllability of a network of networks
- 6.8. Interdependent superconducting networks
- Fandango, Armando, author.
- Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations Digital: data file.
- Summary
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- Table of Contents Tensorflow 101 High-Level Libraries for TensorFlow Keras 101 Classical Machine Learning with TensorFlow Neural Networks and MLP with TensorFlow and Keras RNN with TensorFlow and Keras RNN for Time Series Data with TensorFlow and Keras RNN for Text Data with TensorFlow and Keras CNN with TensorFlow and Keras Autoencoder with TensorFlow and Keras TensorFlow Models in Production with TF Serving Transfer Learning and Pre-Trained Models Deep Reinforcement Learning Generative Adversarial Networks Distributed Models with TensorFlow Clusters TensorFlow Models on Mobile and Embedded Platforms TensorFlow and Keras in R Debugging TensorFlow Models TensorFlow Processing Units.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Grigorev, Alexey.
- Birmingham : Packt Publishing, 2018.
- Description
- Book — 1 online resource (310 pages)
- Summary
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- Table of Contents Recognizing traffic signs using Convnets Annotating Images with Object Detection API Caption generation for images Building GANs for Conditional Image Creation Stock Price Prediction with LSTM Create & Train Machine Translation Systems Train and set up a Chatbot, able to discuss like a human Detecting Duplicate Quora Questions Building a TensorFlow Recommender Systems Video Games by Reinforcement learning.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Menshawy, Ahmed, author.
- Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations Digital: data file.
- Summary
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- Table of Contents Data science: Bird's-eye view Data Modeling in Action - The Titanic Example Feature Engineering and Model Complexity - The Titanic Example Revisited Get Up and Running with TensorFlow Tensorflow in Action - Some Basic Examples Deep Feed-forward Neural Networks - Implementing Digit Classification Introduction to Convolutional Neural Networks Object Detection - CIFAR-10 Example Object Detection - Transfer Learning with CNNs Recurrent-Type Neural Networks - Language modeling Representation Learning - Implementing Word Embeddings Neural sentiment Analysis Autoencoders - Feature Extraction and Denoising Generative Adversarial Networks in Action - Generating New Images Face Generation and Handling Missing Labels Appendix - Implementing Fish Recognition.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Di, Wei author.
- Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations Digital: data file.
- Summary
-
- Table of Contents Why Deep Learning? Getting Yourself Ready for Deep Learning Getting Started with Neural Networks Deep Learning in Computer Vision NLP - Vector Representation Advanced Natural Language Processing Multimodality Deep Reinforcement Learning Deep Learning Hacks Deep Learning Trends.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Hu, Zhengbing, author.
- First edition. - Bingley, UK : Emerald Publishing, 2019.
- Description
- Book — 1 online resource
- Summary
-
- Introduction
- 1. Review of the Problem Area
- 2. Adaptive Methods of Fuzzy Clustering
- 3. Kohonen Maps and their Ensembles for Fuzzy Clustering Tasks
- 4. Simulation Results and Solutions for Practical Tasks Conclusion.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Ganegedara, Thushan, author.
- Birmingham, UK : Packt, [2018]
- Description
- Book — 1 online resource (472 pages)
- Summary
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- Table of Contents Introduction How to Get TensorFlow to Work Producing Word Embeddings with Word2Vec Advanced Word2Vec Sentence Classification with CNNs Language Modelling with RNNs What is LSTM? Applying LSTM to Text Generation Applications of LSTM: Image Caption Generation Neural Machine Translation NLP developments and Trends
- Appendix I Linear Algebra and Statistics.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Sosnovshchenko, Alexander, author.
- Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations Digital: data file.
- Summary
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- Table of Contents Getting started with Machine Learning Decision Tree Learning K-Neares Neighbor Classifier Clustering Rule learning Linear Regression and Gradient Descent Logistic Regression Neural Networks Convolutional Neural Networks and Computer Vision Word Embeddings and Natural Language Processing Machine Learning Libraries Optimizing neural networks for mobile devices Best Practices.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Fandango, Armando, author.
- Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations Digital: data file.
- Summary
-
- Table of Contents Tensorflow 101 High-Level Libraries for TensorFlow Keras 101 Classical Machine Learning with TensorFlow Neural Networks and MLP with TensorFlow and Keras RNN with TensorFlow and Keras RNN for Time Series Data with TensorFlow and Keras RNN for Text Data with TensorFlow and Keras CNN with TensorFlow and Keras Autoencoder with TensorFlow and Keras TensorFlow Models in Production with TF Serving Transfer Learning and Pre-Trained Models Deep Reinforcement Learning Generative Adversarial Networks Distributed Models with TensorFlow Clusters TensorFlow Models on Mobile and Embedded Platforms TensorFlow and Keras in R Debugging TensorFlow Models TensorFlow Processing Units.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
10. Deep learning with PyTorch : a practical approach to building neural network models using PyTorch [2018]
- Subramanian, Vishnu, author.
- Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations Digital: data file.
- Summary
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- Table of Contents Getting Started with Pytorch for Deep Learning Mathematical building blocks of Neural Networks Getting Started with Neural Networks Fundamentals of Machine Learning Deep Learning for Computer Vision Natural Language Processing for PyTorch Advanced neural network architectures Generative networks Conclusion.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Massaron, Luca, author.
- Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations Digital: data file.
- Summary
-
- Table of Contents Recognizing traffic signs using Convnets Annotating Images with Object Detection API Caption generation for images Building GANs for Conditional Image Creation Stock Price Prediction with LSTM Create & Train Machine Translation Systems Train and set up a Chatbot, able to discuss like a human Detecting Duplicate Quora Questions Building a TensorFlow Recommender Systems Video Games by Reinforcement learning.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Lesmeister, Cory, author.
- Birmingham : Packt, [2019]
- Description
- Book — 1 online resource (652 pages)
- Summary
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- Table of Contents Preparing and Understanding Data Linear Regression Logistic Regression Advanced Feature Selection in Linear Models K-Nearest Neighbors and Support Vector Machines Tree-Based Classification Neural Networks and Deep Learning Creating Ensembles and Multiclass Methods Cluster Analysis Principal Component Analysis Association Analysis Time Series and Causality Text Mining Exploring the Machine Learning Landscape Predicting Employee Attrition Using Ensemble Models Implementing a Joke Recommendation Engine Sentiment Analysis of Amazon Reviews with NLP Customer Segmentation Using Wholesale Data Image Recognition Using Deep Neural Networks Credit Card Fraud Detection Using Autoencoders Automatic Prose Generation with Recurrent Neural Networks Winning the Casino Slot Machines with Reinforcement Learning.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Rothman, Denis, author.
- Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations Digital: data file.
- Summary
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- Table of Contents Become an Adaptive Thinker Think like a Machine Apply Machine Thinking to a Human Problem Become an Unconventional Innovator Manage the Power of Machine Learning and Deep Learning Don't Get Lost in Techniques - Focus on Optimizing Your Solutions When and How to Use Artificial Intelligence Revolutions Designed for Some Corporations and Disruptive Innovations for Small to Large Companies Getting Your Neurons to Work Applying Biomimicking to Artificial Intelligence Conceptual Representation Learning Automated Planning and Scheduling AI and the Internet of Things (IoT) Optimizing Blockchains with AI Cognitive NLP Chatbots Improve the Emotional Intelligence Deficiencies of Chatbots Quantum Computers That Think Appendix - Answers to the Questions.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Kumble, Ganesh Prasad, author.
- Birmingham, UK : Packt Publishing Ltd., 2020.
- Description
- Book — 1 online resource (1 volume) : illustrations
- Summary
-
- Table of Contents Getting Started with Blockchain Introduction to the AI landscape Domain-Specific Applications of AI and Blockchain AI- and Blockchain-Driven Databases Empowering Blockchain using AI Cryptocurrency and Artificial Intelligence Development lifecycle of a DiApp Implementing DiApps Future of AI with Blockchain Appendix: Moving Forward - Resources for you.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Babcock, Joseph, author.
- Birmingham : Packt Publishing, Limited, 2021.
- Description
- Book — 1 online resource (489 pages)
- Summary
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- Table of Contents An Introduction to Generative AI: "Drawing" Data from Models Setting Up a TensorFlow Lab Building Blocks of Deep Neural Networks Teaching Networks to Generate Digits Painting Pictures with Neural Networks Using VAEs Image Generation with GANs Style Transfer with GANs Deepfakes with GANs The Rise of Methods for Text Generation NLP 2
- .0: Using Transformers to Generate Text Composing Music with Generative Models Play Video Games with Generative AI: GAIL Emerging Applications in Generative AI.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Palmas, Alessandro.
- Birmingham : Packt Publishing, Limited, 2020.
- Description
- Book — 1 online resource (821 p.)
- Summary
-
- Cover
- FM
- Copyright
- Table of Contents
- Preface
- Chapter 1: Introduction to Reinforcement Learning
- Introduction
- Learning Paradigms
- Introduction to Learning Paradigms
- Supervised versus Unsupervised versus RL
- Classifying Common Problems into Learning Scenarios
- Predicting Whether an Image Contains a Dog or a Cat
- Detecting and Classifying All Dogs and Cats in an Image
- Playing Chess
- Fundamentals of Reinforcement Learning
- Elements of RL
- Agent
- Actions
- Environment
- Policy
- An Example of an Autonomous Driving Environment
- Exercise 1.01: Implementing a Toy Environment Using Python
- The Agent-Environment Interface
- What's the Agent? What's in the Environment?
- Environment Types
- Finite versus Continuous
- Deterministic versus Stochastic
- Fully Observable versus Partially Observable
- POMDP versus MDP
- Single Agents versus Multiple Agents
- An Action and Its Types
- Policy
- Stochastic Policies
- Policy Parameterizations
- Exercise 1.02: Implementing a Linear Policy
- Goals and Rewards
- Why Discount?
- Reinforcement Learning Frameworks
- OpenAI Gym
- Getting Started with Gym
- CartPole
- Gym Spaces
- Exercise 1.03: Creating a Space for Image Observations
- Rendering an Environment
- Rendering CartPole
- A Reinforcement Learning Loop with Gym
- Exercise 1.04: Implementing the Reinforcement Learning Loop with Gym
- Activity 1.01: Measuring the Performance of a Random Agent
- OpenAI Baselines
- Getting Started with Baselines
- DQN on CartPole
- Applications of Reinforcement Learning
- Games
- Go
- Dota 2
- StarCraft
- Robot Control
- Autonomous Driving
- Summary
- Chapter 2: Markov Decision Processes and Bellman Equations
- Introduction
- Markov Processes
- The Markov Property
- Markov Chains
- Markov Reward Processes
- Value Functions and Bellman Equations for MRPs
- Solving Linear Systems of an Equation Using SciPy
- Exercise 2.01: Finding the Value Function in an MRP
- Markov Decision Processes
- The State-Value Function and the Action-Value Function
- Bellman Optimality Equation
- Solving the Bellman Optimality Equation
- Solving MDPs
- Algorithm Categorization
- Value-Based Algorithms
- Policy Search Algorithms
- Linear Programming
- Exercise 2.02: Determining the Best Policy for an MDP Using Linear Programming
- Gridworld
- Activity 2.01: Solving Gridworld
- Summary
- Chapter 3: Deep Learning in Practice with TensorFlow 2
- Introduction
- An Introduction to TensorFlow and Keras
- TensorFlow
- Keras
- Exercise 3.01: Building a Sequential Model with the Keras High-Level API
- How to Implement a Neural Network Using TensorFlow
- Model Creation
- Model Training
- Loss Function Definition
- Optimizer Choice
- Learning Rate Scheduling
- Feature Normalization
- Model Validation
- Performance Metrics
- Model Improvement
- Overfitting
- Regularization
- Early Stopping
- Dropout
- Data Augmentation
- Natingga, Dávid, author.
- Second edition. - Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations
- Summary
-
- Table of Contents Classification using K Nearest Neighbors Naive Bayes Decision Trees Random Forests Clustering into K clusters Regression Time Series Analysis Python Reference Statistics Glossary of Algorithms and Methods in Data Science.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Natingga, Dávid, author.
- Second edition. - Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations
- Summary
-
- Table of Contents Classification using K Nearest Neighbors Naive Bayes Decision Trees Random Forests Clustering into K clusters Regression Time Series Analysis Python Reference Statistics Glossary of Algorithms and Methods in Data Science.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Rothman, Denis.
- Birmingham : Packt Publishing, Limited, 2021.
- Description
- Book — 1 online resource (385 p.)
- Summary
-
- Table of Contents Getting Started with the Model Architecture of the Transformer Fine-Tuning BERT Models Pretraining a RoBERTa Model from Scratch Downstream NLP Tasks with Transformers Machine Translation with the Transformer Text Generation with OpenAI GPT-2 and GPT-3 Models Applying Transformers to Legal and Financial Documents for AI Text Summarization Matching Tokenizers and Datasets Semantic Role Labeling with BERT-Based Transformers Let Your Data Do the Talking: Story, Questions, and Answers Detecting Customer Emotions to Make Predictions Analyzing Fake News with Transformers Appendix: Answers to the Questions.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Di, Wei author.
- Birmingham, UK : Packt Publishing, 2018.
- Description
- Book — 1 online resource (1 volume) : illustrations Digital: data file.
- Summary
-
- Table of Contents Why Deep Learning? Getting Yourself Ready for Deep Learning Getting Started with Neural Networks Deep Learning in Computer Vision NLP - Vector Representation Advanced Natural Language Processing Multimodality Deep Reinforcement Learning Deep Learning Hacks Deep Learning Trends.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
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