/// /// Copyright (c) 2017-2018 ARM Limited. /// /// SPDX-License-Identifier: MIT /// /// Permission is hereby granted, free of charge, to any person obtaining a copy /// of this software and associated documentation files (the "Software"), to /// deal in the Software without restriction, including without limitation the /// rights to use, copy, modify, merge, publish, distribute, sublicense, and/or /// sell copies of the Software, and to permit persons to whom the Software is /// furnished to do so, subject to the following conditions: /// /// The above copyright notice and this permission notice shall be included in all /// copies or substantial portions of the Software. /// /// THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR /// IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, /// FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE /// AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER /// LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, /// OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE /// SOFTWARE. /// namespace arm_compute { /** @page data_import Importing data from existing models @tableofcontents @section caffe_data_extractor Extract data from pre-trained caffe model One can find caffe pre-trained models on caffe's official github repository. The caffe_data_extractor.py provided in the scripts folder is an example script that shows how to extract the parameter values from a trained model. @note complex networks might require altering the script to properly work. @subsection caffe_how_to How to use the script Install caffe following caffe's document. Make sure the pycaffe has been added into the PYTHONPATH. Download the pre-trained caffe model. Run the caffe_data_extractor.py script by python caffe_data_extractor.py -m -n For example, to extract the data from pre-trained caffe Alex model to binary file: python caffe_data_extractor.py -m /path/to/bvlc_alexnet.caffemodel -n /path/to/caffe/models/bvlc_alexnet/deploy.prototxt The script has been tested under Python2.7. @subsection caffe_result What is the expected output from the script If the script runs successfully, it prints the names and shapes of each layer onto the standard output and generates *.npy files containing the weights and biases of each layer. The arm_compute::utils::load_trained_data shows how one could load the weights and biases into tensor from the .npy file by the help of Accessor. @section tensorflow_data_extractor Extract data from pre-trained tensorflow model The script tensorflow_data_extractor.py extracts trainable parameters (e.g. values of weights and biases) from a trained tensorflow model. A tensorflow model consists of the following two files: {model_name}.data-{step}-{global_step}: A binary file containing values of each variable. {model_name}.meta: A binary file containing a MetaGraph struct which defines the graph structure of the neural network. @note Since Tensorflow version 0.11 the binary checkpoint file which contains the values for each parameter has the format of: {model_name}.data-{step}-of-{max_step} instead of: {model_name}.ckpt When dealing with binary files with version >= 0.11, only pass {model_name} to -m option; when dealing with binary files with version < 0.11, pass the whole file name {model_name}.ckpt to -m option. @note This script relies on the parameters to be extracted being in the 'trainable_variables' tensor collection. By default all variables are automatically added to this collection unless specified otherwise by the user. Thus should a user alter this default behavior and/or want to extract parameters from other collections, tf.GraphKeys.TRAINABLE_VARIABLES should be replaced accordingly. @subsection tensorflow_how_to How to use the script Install tensorflow and numpy. Download the pre-trained tensorflow model. Run tensorflow_data_extractor.py with python tensorflow_data_extractor -m -n For example, to extract the data from pre-trained tensorflow Alex model to binary files: python tensorflow_data_extractor -m /path/to/bvlc_alexnet -n /path/to/bvlc_alexnet.meta Or for binary checkpoint files before Tensorflow 0.11: python tensorflow_data_extractor -m /path/to/bvlc_alexnet.ckpt -n /path/to/bvlc_alexnet.meta @note with versions >= Tensorflow 0.11 only model name is passed to the -m option The script has been tested with Tensorflow 1.2, 1.3 on Python 2.7.6 and Python 3.4.3. @subsection tensorflow_result What is the expected output from the script If the script runs successfully, it prints the names and shapes of each parameter onto the standard output and generates *.npy files containing the weights and biases of each layer. The arm_compute::utils::load_trained_data shows how one could load the weights and biases into tensor from the .npy file by the help of Accessor. @section tf_frozen_model_extractor Extract data from pre-trained frozen tensorflow model The script tf_frozen_model_extractor.py extracts trainable parameters (e.g. values of weights and biases) from a frozen trained Tensorflow model. @subsection tensorflow_frozen_how_to How to use the script Install Tensorflow and NumPy. Download the pre-trained Tensorflow model and freeze the model using the architecture and the checkpoint file. Run tf_frozen_model_extractor.py with python tf_frozen_model_extractor -m -d For example, to extract the data from pre-trained Tensorflow model to binary files: python tf_frozen_model_extractor -m /path/to/inceptionv3.pb -d ./data @subsection tensorflow_frozen_result What is the expected output from the script If the script runs successfully, it prints the names and shapes of each parameter onto the standard output and generates *.npy files containing the weights and biases of each layer. The arm_compute::utils::load_trained_data shows how one could load the weights and biases into tensor from the .npy file by the help of Accessor. @section validate_examples Validating examples Using one of the provided scripts will generate files containing the trainable parameters. You can validate a given graph example on a list of inputs by running: LD_LIBRARY_PATH=lib ./ --validation-range='' --validation-file='' --validation-path='/path/to/test/images/' --data='/path/to/weights/' e.g: LD_LIBRARY_PATH=lib ./bin/graph_alexnet --target=CL --layout=NHWC --type=F32 --threads=4 --validation-range='16666,24998' --validation-file='val.txt' --validation-path='images/' --data='data/' where: validation file is a plain document containing a list of images along with their expected label value. e.g: val_00000001.JPEG 65 val_00000002.JPEG 970 val_00000003.JPEG 230 val_00000004.JPEG 809 val_00000005.JPEG 516 --validation-range is the index range of the images within the validation file you want to check: e.g: --validation-range='100,200' will validate 100 images starting from 100th one in the validation file. This can be useful when parallelizing the validation process is needed. */ }