pytorch keras

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"Deep learning" simply uses Keras to make car logos.

The content of a simple experiment lesson. First, the size of the given sample material is 32*32, which can be done in Python batch and OpenCV function resize (), where I do not list the code. List some of the pictures that are well-shrunk. Then in the use of Keras CV convolutional neural network model, before doing this experiment, the computer should be configured Python+theano+keras environment. #生成一个

Install keras (tensorflow is the background) and kerastensorflow in Ubuntu

Install keras (tensorflow is the background) and kerastensorflow in Ubuntu 0 System Version Ubuntu16.04 1. system update (the speed is very slow. You can skip this step to see if it will affect subsequent installation) sudo apt updatesudo apt upgrade 2. Install python Basic Development Kit sudo apt install -y python-dev python-pip python-nose gcc g++ git gfortran vim 3. Download Anaconda and install it on the terminal. ./Anaconda.sh 4. Modify termina

Installing Keras in Conda

Conda create-n Keras python=3.5 IpykernelActivate KerasPython-m ipykernel Install--user--name kerasJupyter NotebookKeras installed using this method can be called by Jupyter Notebook.I found the answer at http://ipython.readthedocs.io/en/stable/install/kernel_install.html# Kernels-for-different-environmentsIpykernel have to is linked to the environment, and then jupyter can use it.The following installation procedure works:conda create -n

Keras LAMBDA Layer

(LambdaX:X * * 2))#add a layer that returns the concatenation# of the positive part of the the input and#The opposite of the negative partdefantirectifier (x): x-= K.mean (x, Axis=1, keepdims=True) x= K.l2_normalize (x, Axis=1) Pos=k.relu (x) Neg= K.relu (-x)returnK.concatenate ([Pos, neg], Axis=1)defAntirectifier_output_shape (input_shape): Shape=list (input_shape)assertLen (shape) = = 2#Only valid for 2D tensorsShape[-1] *= 2returntuple (Shape) model.add (Lambda (antirectifier, Output_shape=a

Keras Learning Environment Configuration-gpu accelerated version (Ubuntu 16.04 + CUDA8.0 + cuDNN6.0 + tensorflow)

Tags: Environment configuration EPO Directory decompression profile logs Ros Nvidia initializationThis article is a personal summary of the Keras deep Learning framework configuration, the shortcomings please point out, thank you! 1. First, we need to install the Ubuntu operating system (under Windows) , which uses the Ubuntu16.04 version: 2. After installing the Ubuntu16.04, the system needs to be initialized and updated:Open Terminal input:System U

Keras+theano+tensorflow+darknet

Keras Installation:It is best to build in the Anaconda virtual environment:Conda create-n Environment Name python=3.6Enter the environment:Source Activate Environment nameInstall Keras:Pip Install KerasPip Install TheanoPip Install tensorflow-gpu==1.2.0If you use Theano as backend, you need to Conda install PYGPU to support parallel and gou operations. If Modulenotfounderror:no module named ' Mkl ' appearsTo demote the MKL in the current environment

The use of Python keras (a very useful neural network framework) and examples __python

Let's spit it out. This is based on the Theano Keras how difficult to install, anyway, I am under Windows toss to not, so I installed a dual system. This just feel the powerful Linux system at the beginning, no wonder big companies are using this to do development, sister, who knows ah ....Let's start by introducing the framework: We all know the depth of the neural network, Python started with Theano this framework to write the neural network, but la

Keras Visual Model Training process

Keras in the construction of neural network model and training neural network, simple and useful, summed up a few Keras API use, continuous updating. Of course, you can also learn through the Keras website. Visualization of https://keras.io/models Save the model map as a picture. From keras.utils import Plot_model Plot_model (model, to_file= ' model.png ') Plot_

Keras Frame Construction under Windows

1. Installing Anacondahttps://mirrors.tuna.tsinghua.edu.cn/anaconda/archive/Conda info to query installation informationConda list can query which libraries you have installed now2. CPU version of TensorFlowPip Install--upgrade--ignore-installed tensorflowWhether the test was successfulPython import tensorflow as TF hello=tf.constant ("hello!") SESS=TF. Session () print (Sess.run (hello))3. Installing Keraspip install keras -U --preTest:import ker

An example of keras sentiment analysis

International-airline-passengers.csv is less, roughly as follows"Month","International airline passengers: monthly totals in thousands. Jan 49 ? Dec 60""1949-01",112"1949-02",118"1949-03",132"1949-04",129"1949-05",121"1949-06",135"1949-07",148"1949-08",148"1949-09",136"1949-10",119"1949-11",104"1949-12",118"1950-01",115"1950-02",126"1950-03",141"1950-04",135"1950-05",125"1950-06",149"1950-07",170"1950-08",170"1950-09",158"1950-10",133"1950-11",114"1950-12",140"1951-01",145"1951-02",150"1951-03"

Python Machine learning Library Keras--autoencoder encoding, feature compression __

Full Stack Engineer Development Manual (author: Shangpeng) Python Tutorial Full Solution Keras uses a depth network to achieve the encoding, that is, the n-dimensional characteristics of each sample, using K as a feature to achieve the function of coding compression. The feature selection function is also realized. For example, the handwriting contains 754 pixels, and it contains 754 features, if you want to represent them with two features. How do yo

Keras Framework Training Model Preservation and onboarding continuation training

Keras Framework Training Model preservation and re-loading Experimental data mnist The Initial training model and save Import NumPy as NP from keras.datasets import mnist from keras.utils import np_utils from keras.models import sequential F Rom keras.layers import dense from keras.optimizers import SGD # Load data (X_train,y_train), (x_test,y_test) = Mnist.load_data () # (60000,28,28) print (' X_shape: ', X_train.shape) # (60000) print (' Y_shape: ',

Keras Depth Training 2: Training analysis

. I've told you before, not to repeat.Try another optimizer (optimizer) before you've talked about it.Keras's callback function earlystopping () has been said before, no more 3.7.5 regularization method Regularization method means that when the objective function or cost function is optimized, a regular term is added after the objective function or the cost function, usually with L1 regular and L2 regular. The code snippet illustrates: From Keras impo

The difference between conv1d and conv2d in Keras

conv2d is: (3,300,1,64), that is, at this time the size of the conv1d reshape to get, both equivalent. In other words, conv1d (kernel_size=3) is actually conv2d (kernel_size= (3,300)), of course, the input must be reshape (600,300,1), you can do conv2d convolution on multiple lines. This can also explain why the use of conv1d in Keras can be done in natural language processing, because in natural language processing, we assume that a sequence is 600

keras--Visualization of VGG16 filters

first, the initialization of variables # for each filter, generate the dimension of the image Img_width = Img_height = + # We want to go to the visual layer name # (see Model definition in keras/applications/vgg16.py ) layer_name = ' block5_conv1 ' convert the tensor to a valid image def deprocess_image (x): # Normalize tensor x-= X.mean () x/= (X.STD () + 1e-5) x *= 0.1 # clip to [0, 1] x + = 0.5 x = np.clip (x, 0, 1)

Detailed instructions to establish the LSTM----The voice direction of training your own data with Keras

Recently in the study of using Keras to implement a lstm to train their own data (lstm the basic principles of self-tuition), the first of their own data with the DNN to train, and then to the LSTM, because the input is not the same, so some burn, DNN input format is input: (Samples,dim), is a two-dimensional data, and the input format of lstm: (Samples,time_step,dim) is three-dimensional, so, first understand how to convert DNN input into lstm input,

Keras Loss Function Summary

Objective function Objectives The objective function, or loss function, is one of the two parameters that must be compiled for a model: Model.compile (loss= ' mean_squared_error ', optimizer= ' SGD ')You can specify a target function by passing a predefined target function name, or you can pass a Theano/tensroflow symbolic function as the target function, which should return only a scalar value for each data point, with the following two parameters as parameters: Y_true: Real data labels, theano

ubuntu16.0 Anaconda3 installation TensorFlow Keras Error Collection

Tags: caff href tps medium mode line DAO use UDAToday use Anaconda3 to install TensorFlow and Caffe, the main reference blogNow the computer environment:ubuntu16.04cuda8.0cudnn6.0Anaconda31. From Scipy.misc import imread,imresize errorHint error importerror:cannot import name ImreadBut import scipy is displayed correctly.Solution: Pip install Pillow. 2. Libcublas.so.9.0:cannot open Shared object file:no such file or directoryCause: The new version of TensorFlow (after 1.5) does not support CUDA8

Ubuntu16.04 under Keras Installation

InstallationBefore installing Keras, install one of its backend engines:tensorflow, Theano, or CNTK. We recommend the TensorFlow backend. TensorFlow installation instructions. (installed) Theano installation instructions. CNTK installation instructions. Also consider installing the following optional dependencies: CuDNN (Recommended if you plan on the running Keras on GPU). (i

Keras parameter Tuning

This article mainly wants to introduce how to use the Scikit-learn grid search function, and gives a set of code examples. You can copy and paste the code into your own project as the start of the project. List of topics covered below: How to use Keras in the Scikit-learn model. How to use Grid search in the Scikit-learn model. How to tune batch size and training epochs. How to tune the optimization algorithm. How to tune the learning rate and momentu

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