companydirectorylist.com  全球商業目錄和公司目錄
搜索業務,公司,産業 :


國家名單
美國公司目錄
加拿大企業名單
澳洲商業目錄
法國公司名單
意大利公司名單
西班牙公司目錄
瑞士商業列表
奧地利公司目錄
比利時商業目錄
香港公司列表
中國企業名單
台灣公司列表
阿拉伯聯合酋長國公司目錄


行業目錄
美國產業目錄












Canada-504507-Data Processing Equipment (Wholesale) 公司名錄

企業名單和公司名單:
CANADIAN AUTOMATED MANAGEMENT
公司地址:  4240 Manor St #200,BURNABY,BC,Canada
郵政編碼:  V5G1B2
電話號碼:  6044305677
傳真號碼:  6044302861
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  504507
美國的SIC目錄:  Data Processing Equipment (Wholesale)
銷售收入:  $20 to 50 million
員工人數:  20 to 49
信用報告:  Excellent
聯繫人:  Robert Johnson

COMPAC CANADA INC
公司地址:  13571 Commerce Pky #150,RICHMOND,BC,Canada
郵政編碼:  V6V2L1
電話號碼:  6042766900
傳真號碼:  6042766993
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  504507
美國的SIC目錄:  Data Processing Equipment (Wholesale)
銷售收入:  $50 to 100 million
員工人數:  50 to 99
信用報告:  Good
聯繫人:  Phil Soper

DAMIL CANADA CORP
公司地址:  2071 Kingsway Ave #506,PORT COQUITLAM,BC,Canada
郵政編碼:  V3C6N2
電話號碼:  6049418100
傳真號碼:  6049418852
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  504507
美國的SIC目錄:  Data Processing Equipment (Wholesale)
銷售收入:  $2.5 to 5 million
員工人數:  1 to 4
信用報告:  Good
聯繫人:  Jim Brown

STORAGETEK CANADA INC
公司地址:  125 Garry St #720,WINNIPEG,MB,Canada
郵政編碼:  R3C3P2
電話號碼:  2049561512
傳真號碼:  2049430444
免費電話號碼:  
手機號碼:  
網址:  
電子郵件:  
美國SIC代碼:  504507
美國的SIC目錄:  Data Processing Equipment (Wholesale)
銷售收入:  $1 to 2.5 million
員工人數:  1 to 4
信用報告:  Very Good
聯繫人:  Russell Dabreau

Show 1-4 record,Total 4 record










公司新聞:
  • What is the difference between a convolutional neural network and a . . .
    A CNN, in specific, has one or more layers of convolution units A convolution unit receives its input from multiple units from the previous layer which together create a proximity Therefore, the input units (that form a small neighborhood) share their weights The convolution units (as well as pooling units) are especially beneficial as:
  • machine learning - What is a fully convolution network? - Artificial . . .
    A fully convolutional network is achieved by replacing the parameter-rich fully connected layers in standard CNN architectures by convolutional layers with $1 \times 1$ kernels I have two questions What is meant by parameter-rich? Is it called parameter rich because the fully connected layers pass on parameters without any kind of "spatial
  • What are the features get from a feature extraction using a CNN?
    By accessing these high-level features, you essentially have a more compact and meaningful representation of what the image represents (based always on the classes that the CNN has been trained on) By visualizing the activations of these layers we can take a look on what these high-level features look like
  • What is the fundamental difference between CNN and RNN?
    A CNN will learn to recognize patterns across space while RNN is useful for solving temporal data problems CNNs have become the go-to method for solving any image data challenge while RNN is used for ideal for text and speech analysis
  • Extract features with CNN and pass as sequence to RNN
    $\begingroup$ But if you have separate CNN to extract features, you can extract features for last 5 frames and then pass these features to RNN And then you do CNN part for 6th frame and you pass the features from 2,3,4,5,6 frames to RNN which is better The task I want to do is autonomous driving using sequences of images
  • How to handle rectangular images in convolutional neural networks . . .
    Almost all the convolutional neural network architecture I have come across have a square input size of an image, like $32 \\times 32$, $64 \\times 64$ or $128 \\times 128$ Ideally, we might not have a
  • In a CNN, does each new filter have different weights for each input . . .
    Typically for a CNN architecture, in a single filter as described by your number_of_filters parameter, there is one 2D kernel per input channel There are input_channels * number_of_filters sets of weights, each of which describe a convolution kernel So the diagrams showing one set of weights per input channel for each filter are correct
  • Reduce receptive field size of CNN while keeping its capacity?
    One way to keep the capacity while reducing the receptive field size is to add 1x1 conv layers instead of 3x3 (I did so within the DenseBlocks, there the first layer is a 3x3 conv and now followed by 4 times a 1x1 conv layer instead of the original 3x3 convs (which increase the receptive field))
  • convolutional neural networks - When to use Multi-class CNN vs. one . . .
    I'm building an object detection model with convolutional neural networks (CNN) and I started to wonder when should one use either multi-class CNN or a single-class CNN That is, if I'm making e g a




企業名錄,公司名錄
企業名錄,公司名錄 copyright ©2005-2012 
disclaimer