Caffe is a library written in C++, to facilitate the experimentation with and use of Convolutional Neural Networks (CNN). Caffe has been developed by Berkeley Vision and Learning Center (BVLC).
Caffe is actually an abbreviation referring to "Convolutional Architectures for Fast Feature Extraction". This acronym encapsulates an important scope of the library. Caffe in the form of a library offers a general programming framework/architecture which can be used to perform efficient training and testing of CNNs. "Efficiency" is a major hallmark of caffe, and stands as a major design objective of Caffe.
Caffe is an open-source library released under BSD 2 Clause license.
Caffe is maintained on GitHub
Caffe can be used to :
Caffe has been written following efficient Object Oriented Programming (OOP) principles.
A good starting point to begin an introduction to caffe is to get a bird's eye view of how caffe works through its fundamental objects.
Version | Release Date |
---|---|
1.0 | 2017-04-19 |
Caffe can run on multiple cores. One way is to enable multithreading with Caffe to use OpenBLAS instead of the default ATLAS. To do so, you can follow these three steps:
sudo apt-get install -y libopenblas-dev
Makefile.config
, replace BLAS := atlas
by BLAS := open
export OPENBLAS_NUM_THREADS=4
will cause Caffe to use 4 cores.Below are detailed instructions to install Caffe, pycaffe as well as its dependencies, on Ubuntu 14.04 x64 or 14.10 x64.
Execute the following script, e.g. "bash compile_caffe_ubuntu_14.sh" (~30 to 60 minutes on a new Ubuntu).
# This script installs Caffe and pycaffe.
# CPU only, multi-threaded Caffe.
# Usage:
# 0. Set up here how many cores you want to use during the installation:
# By default Caffe will use all these cores.
NUMBER_OF_CORES=4
sudo apt-get install -y libprotobuf-dev libleveldb-dev libsnappy-dev
sudo apt-get install -y libopencv-dev libhdf5-serial-dev
sudo apt-get install -y --no-install-recommends libboost-all-dev
sudo apt-get install -y libatlas-base-dev
sudo apt-get install -y python-dev
sudo apt-get install -y python-pip git
# For Ubuntu 14.04
sudo apt-get install -y libgflags-dev libgoogle-glog-dev liblmdb-dev protobuf-compiler
# Install LMDB
git clone https://github.com/LMDB/lmdb.git
cd lmdb/libraries/liblmdb
sudo make
sudo make install
# More pre-requisites
sudo apt-get install -y cmake unzip doxygen
sudo apt-get install -y protobuf-compiler
sudo apt-get install -y libffi-dev python-pip python-dev build-essential
sudo pip install lmdb
sudo pip install numpy
sudo apt-get install -y python-numpy
sudo apt-get install -y gfortran # required by scipy
sudo pip install scipy # required by scikit-image
sudo apt-get install -y python-scipy # in case pip failed
sudo apt-get install -y python-nose
sudo pip install scikit-image # to fix https://github.com/BVLC/caffe/issues/50
# Get caffe (http://caffe.berkeleyvision.org/installation.html#compilation)
cd
mkdir caffe
cd caffe
wget https://github.com/BVLC/caffe/archive/master.zip
unzip -o master.zip
cd caffe-master
# Prepare Python binding (pycaffe)
cd python
for req in $(cat requirements.txt); do sudo pip install $req; done
# to be able to call "import caffe" from Python after reboot:
echo "export PYTHONPATH=$(pwd):$PYTHONPATH " >> ~/.bash_profile
source ~/.bash_profile # Update shell
cd ..
# Compile caffe and pycaffe
cp Makefile.config.example Makefile.config
sed -i '8s/.*/CPU_ONLY := 1/' Makefile.config # Line 8: CPU only
sudo apt-get install -y libopenblas-dev
sed -i '33s/.*/BLAS := open/' Makefile.config # Line 33: to use OpenBLAS
# Note that if one day the Makefile.config changes and these line numbers may change
echo "export OPENBLAS_NUM_THREADS=($NUMBER_OF_CORES)" >> ~/.bash_profile
mkdir build
cd build
cmake ..
cd ..
make all -j$NUMBER_OF_CORES # 4 is the number of parallel threads for compilation: typically equal to number of physical cores
make pycaffe -j$NUMBER_OF_CORES
make test
make runtest
#make matcaffe
make distribute
# Afew few more dependencies for pycaffe
sudo pip install pydot
sudo apt-get install -y graphviz
sudo pip install scikit-learn
At the end, you need to run "source ~/.bash_profile" manually or start a new shell to be able to do 'python import caffe'.
In the solver file, we can set a global regularization loss using the weight_decay
and regularization_type
options.
In many cases we want different weight decay rates for different layers. This can be done by setting the decay_mult
option for each layer in the network definition file, where decay_mult
is the multiplier on the global weight decay rate, so the actual weight decay rate applied for one layer is decay_mult*weight_decay
.
For example, the following defines a convolutional layer with NO weight decay regardless of the options in the solver file.
layer {
name: "Convolution1"
type: "Convolution"
bottom: "data"
top: "Convolution1"
param {
decay_mult: 0
}
convolution_param {
num_output: 32
pad: 0
kernel_size: 3
stride: 1
weight_filler {
type: "xavier"
}
}
}
See this thread for more information.