Showing 1 - 10 results of 10 for search 'table new network (cnn)*', query time: 0.11s Refine Results
  1. 1

    WHOIS running the Internet : protocol, policy, and privacy by Bruen, Garth O.

    Published 2015
    Table of Contents: “…27 -- 1.5.1 Elizabeth “Jake” Feinler 27 -- 1.5.2 The ARPANET Directory as Proto‐WHOIS 27 -- 1.5.3 The Site Status List 28 -- 1.5.4 Distribution of the HOSTS Table 30 -- 1.5.5 Finger 30 -- 1.5.6 Sockets 31 -- 1.5.7 Into the VOID with NLS IDENTFILE 32 -- 1.5.8 NAME/FINGER RFC 742 (1977) 33 -- 1.5.9 Other Early Models 35 -- 1.6 1980s: WHOIS Gets Its Own RFC 36 -- 1.6.1 The DNS 37 -- 1.6.2 WHOIS Updated for Domains (1985) 38 -- 1.6.3 Oops! …”
    Full text (MCPHS users only)
    Electronic eBook
  2. 2

    Hands-On Convolutional Neural Networks with TensorFlow : Solve Computer Vision Problems with Modeling in TensorFlow and Python. by Zafar, Iffat

    Published 2018
    Table of Contents: “…The sessionSummary; Chapter 2: Deep Learning and Convolutional Neural Networks; AI and ML; Types of ML; Old versus new ML; Artificial neural networks; Activation functions; The XOR problem; Training neural networks; Backpropagation and the chain rule; Batches; Loss functions; The optimizer and its hyperparameters; Underfitting versus overfitting; Feature scaling; Fully connected layers; A TensorFlow example for the XOR problem; Convolutional neural networks; Convolution; Input padding; Calculating the number of parameters (weights); Calculating the number of operations…”
    Full text (MCPHS users only)
    Electronic eBook
  3. 3

    Deep Learning with Theano. by Bourez, Christopher

    Published 2017
    Full text (MCPHS users only)
    Electronic eBook
  4. 4

    R Deep Learning Projects : Master the techniques to design and develop neural network models in R. by Liu, Yuxi (Hayden)

    Published 2018
    Table of Contents: “…; Traffic sign recognition using CNN; Getting started with exploring GTSRB; First solution â#x80;#x93; convolutional neural networks using MXNet; Trying something new â#x80;#x93; CNNs using Keras with TensorFlow; Reducing overfitting with dropout; Dealing with a small training set â#x80;#x93; data augmentation; Reviewing methods to prevent overfitting in CNNs; Summary; Chapter 3: Fraud Detection with Autoencoders; Getting ready.…”
    Full text (MCPHS users only)
    Electronic eBook
  5. 5

    Hands-On Deep Learning with TensorFlow. by Boxel, Dan Van

    Published 2017
    Full text (MCPHS users only)
    Electronic eBook
  6. 6

    American Television News : the Media Marketplace and the Public Interest. by Barkin, Steve M.

    Published 2002
    Table of Contents: “…Local News; 11. Network News and the New Environment.…”
    Full text (MCPHS users only)
    Electronic eBook
  7. 7

    Deep Learning with TensorFlow. by Zaccone, Giancarlo

    Published 2017
    Table of Contents: “…Multilayer perceptronDNNs architectures; Convolutional Neural Networks; Restricted Boltzmann Machines; Autoencoders; Recurrent Neural Networks; Deep learning framework comparisons; Summary; Chapter 2: First Look at TensorFlow; General overview; What's new with TensorFlow 1.x?…”
    Full text (MCPHS users only)
    Electronic eBook
  8. 8

    Advanced Machine Learning with Python. by Hearty, John

    Published 2016
    Full text (MCPHS users only)
    Electronic eBook
  9. 9

    Generative AI with Python and TensorFlow 2 : harness the power of generative models to create images, text, and music by Babcock, Joseph

    Published 2021
    Table of Contents: “…-- The promise of deep learning -- Building a better digit classifier -- Generating images -- Style transfer and image transformation -- Fake news and chatbots -- Sound composition -- The rules of the game -- Unique challenges of generative models -- Summary -- References -- Chapter 2: Setting Up a TensorFlow Lab -- Deep neural network development and TensorFlow -- TensorFlow 2.0 -- VSCode -- Docker: A lightweight virtualization solution -- Important Docker commands and syntax -- Connecting Docker containers with docker-compose -- Kubernetes: Robust management of multi-container applications -- Important Kubernetes commands -- Kustomize for configuration management -- Kubeflow: an end-to-end machine learning lab -- Running Kubeflow locally with MiniKF -- Installing Kubeflow in AWS -- Installing Kubeflow in GCP -- Installing Kubeflow on Azure -- Installing Kubeflow using Terraform -- A brief tour of Kubeflow's components -- Kubeflow notebook servers -- Kubeflow pipelines -- Using Kubeflow Katib to optimize model hyperparameters -- Summary -- References -- Chapter 3: Building Blocks of Deep Neural Networks -- Perceptrons -- a brain in a function -- From tissues to TLUs -- From TLUs to tuning perceptrons -- Multi-layer perceptrons and backpropagation -- Backpropagation in practice -- The shortfalls of backpropagation -- Varieties of networks: Convolution and recursive -- Networks for seeing: Convolutional architectures -- Early CNNs -- AlexNet and other CNN innovations -- AlexNet architecture.…”
    Full text (MCPHS users only)
    Electronic eBook
  10. 10

    Machine learning methods for signal, image and speech processing by Jabbar, M. A.

    Published 2021
    Full text (MCPHS users only)
    Electronic eBook