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Using social networks to connect to WebSphere MQ: Twitter notifications for Queue manager and MQ applications

Today, social networks are ubiquitous-to connect with friends, to keep up with the times, or to keep people informed of the latest developments in topics of common interest. Social networking is also useful in businesses. This article will show you how to quickly and easily use social networking software (such as Twitter) in your WebSphere MQ application to send status and problem information to a wide range of system administrators or end users, or e

Understanding Lstm Network (Understanding Lstm Networks by Colah)

@ Translation: Huangyongye Original link: Understanding Lstm Networks Foreword : Actually before already used lstm, is in the depth study frame Keras to use directly, but to the present to LSTM detailed network structure still does not understand, the heart is worried about is uncomfortable. Today, read the TensorFlow document recommended this blog, after reading this, beginnings Dawu, the structure of lstm understanding is basically not a big problem

Memory networks principle and its Code analysis

http://blog.csdn.net/u011274209/article/details/53384232 principle: article Source: Memory Networks, answering Reading comprehension Using Memory For many neural network models, there is a lack of a long memory component for easy reading and writing. As Rnn,lstm and its variants GRU used a certain memory mechanism. These memories are too small for the authors of memory networks, because the state, the ou

Circular neural Network (RNN, recurrent neural Networks) entry must be learned articles

http://colah.github.io/posts/2015-08-Understanding-LSTMs/ http://www.csdn.net/article/2015-11-25/2826323 Cyclic neural networks (recurrent neural networks,rnns) have been successful and widely used in many natural language processing (Natural Language processing, NLP). However, there are few learning materials related to Rnns online, so this series is to introduce the principle of rnns and how to achieve i

New technology greatly improves the efficiency of multi-hop wireless networks

Multi-hop wireless networks provide data access to large and unconventional hard-line areas, but because of the complexity of routing, suboptimal Path management, and delays caused by multi-hop relaying, they have long faced significant constraints on the amount of data they can transmit. Now researchers from North Carolina State State University have developed a more efficient way of transmitting data, called core-based power controls, which can sig

Six measures to protect wireless networks

The purpose of reasonable protection of wireless access points is to isolate the wireless network from outsiders who are not authorized to use the service. It is often easier said than done. In terms of security, wireless networks are often more difficult to protect than fixed wired networks because of the limited number of fixed physical access points in the wired network and the use of wireless

Technical features of a new generation of intelligent optical networks

The new generation of intelligent optical network as a future transmission network development direction has been recognized by the industry. As a Ciena company with a history of more than 10 years, there are many unique research results and leading technologies in this field. They have more mature ideas in the composition and technology of the new generation of intelligent optical networks. ——— Editor 1. Single-Machine integrated multiple SDH device

Visual Question answering with memory-augmented Networks

Visual Question answering with memory-augmented Networks2018-05-15 20:15:03Motivation:Although VQA has made great progress, this method still has a poor performance for the full General,freeform VQA, the author thinks it is because of the following two points:1. Deep models trained with gradient based methods learn to respond to the majority of training data rather than speci FIC scarce exemplars ;The depth model trained by gradient descent method has good corresponding to the main training dat

Poj-3538-domestic Networks

First on the topic:Domestic Networks Time Limit: 2000MS Memory Limit: 65536K Total Submissions: 732 Accepted: 204 Special Judge DescriptionAlex is a system administrator of domestic Networks Inc. He network connects apartments and spans over multiple buildings.The network expands and Alex have to design a new network segment. He has

All of recurrent neural Networks (RNN)

-notes for the "Deep Learning book, Chapter Sequence modeling:recurrent and recursive Nets. Meta Info:i ' d to thank the authors's original book for their great work. For brevity, the figures and text from the original book are used without. Also, many to Colan and Shi for their excellent blog posts on Lstm, from which we use some figures. Introduction Recurrent neural Networks (RNN) are for handling data. Rnns share parameters across different positi

Watch out! 10 Linux networks and monitoring commands you need to know

in multiple adapters or interfacesEthtool-s Displaying network statisticsEthtool Speed netstatDiscover the most useful and common Linux commands for host connections. You can use "netstat-g" to query all multicast groups (networks) that the host subscribes toNetstat-nap | grep Port will show the process ID of the application using that portNetstat-a or Netstat–all will display all connections that include TCP and UDPNetstat–tcp or netstat–t will disp

Paper notes: 3D Graph neural Networks for RGBD Semantic segmentation

3D Graph Neural Networks for RGBD Semantic segmentation2018-04-13 19:19:481. Introduction:With the development of depth sensors, RGBD semantic segmentation is applied to many problems, such as virtual reality, robot, human-computer interaction and so on. Compared with the existing 2D semantic segmentation, RGBD semantic segmentation can use real-world geometric information to assist segmentation by exploring depth information. As shown in the normal 2

Note_automatic water-body segmentation from high-resolution satellite Images via deep Networks

Basic informationSection Two, Water divisionAutomatic water-body segmentation from high-resolution satellite Images via deep NetworksNotes starting point Water Division is the basic task of remote sensing. The traditional method relies on spectra and can only handle low resolution images. And the resolution of the picture, contains more details. The robustness of the method is tested by the data obtained from different data sensors. The main innovation point Propos

deeplearning-Wunda-Convolution neural network-first week job 01-convolution Networks (python)

! Each function you'll implement'll have detailed instructions that'll walk you through the steps needed:convolution Functions, Including:zero Padding convolve window convolution forward convolution backward (optional) pooling functions, Including:pooling forward Create Mask distribute value pooling backward (optional) This notebook would ask you for implement these functions from scratch in numpy. In the next notebook, you'll use the TensorFlow equivalents of this functions to build the followi

Visual tracking with fully convolutional Networks notes

follows: The first step is to perform feature map selection for the conv4-3 and conv5-3 layers of the Vgg network for a given target, which is to select the most relevant feature maps, the specific reason being to construct a regular objective function of the L1 norm. In the second step, based on the feature maps of Conv5-3, a universal network gnet is constructed to capture the category information of the target. The third step, based on the conv4-3 feature maps, constructs a specific network

Introduction to Neural networks (serial one)

. The artificial intelligence technology in game programming (serial one) Introducing neural networks in normal language(Neural Networks in Plain 中文版) Because we do not have a good understanding of the brain, we often try to use the latest technology as a model to explain it. When I was a child, we all believed that the brain was a telephone switch. (Otherwise, what else could it be?) I also saw

Examples of application of cyclic neural networks

Application examples of RNN--a language model based on RNN Now, let's introduce a model based on the RNN language. We first input the word into the recurrent neural network, each input word, the recurrent neural network output so far, the next most likely word. For example, when we enter in turn: I was late for school yesterday. The output of the neural network is shown in the following figure: where S and e are two special words that represent the beginning and the end of a sequence, resp

Google Translate integrates neural networks: machine translation for disruptive breakthroughs

machine translation) system, which uses current state-of-the-art training techniques to achieve the greatest increase in machine translation quality so far. For details of all our findings, please refer to our paper "Google's neural machine translation system:bridging the Gap between Human and machine translation" (see end) [1]. A few years ago, we started using recurrent neural networks (rnn:recurrent neural Ne

Connect two LAN networks with FreeBSD IPSEC tunnel mode

In actual work, we often encounter the requirement to connect two local area networks in different locations. The use of FreeBSD IPSec tunnel method can easily connect two local area networks, and has good security. Here's a case to tell how to connect two local area networks in this way. Assume the following network structure: The two FreeBSD machines are co

Visual comprehension of convolutional neural networks

visual comprehension of convolutional neural networks The first to suggest a visual understanding of convolutional neural Networks is Matthew D. Zeiler in the visualizing and understanding convolutional Networks. The following two blog posts can help you understand this article better, the first article is the translation of the above paper, the second article

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