• 安装caffe


    (1)安装所需组件

        经过安装了caffe的依赖,终于可以编译安装caffe了。

        前面安装的有nvidia驱动,cuda, OpenCV,MKL,cudnn,python,boost,glog等,终于可以安装caffe了。

         安装caffe需要下面这些组件。这些组件都可以通过apt-get获得。

    • libgoogle-glog-dev # glog
    • libgflags-dev # gflags
    • libhdf5-dev # hdf5
    • liblmdb-dev # lmdb
    • libleveldb-dev # leveldb
    • libsnappy-dev # snappy
    • libopencv-dev # opencv
    • liblapack-dev libblas-dev libatlas-dev libatlas-base-dev libopenblas-dev # blas
    • Intel MKL或者OpenBLAS,(按照欧老师的教程,我安装的是MKL,用学生邮箱申请的免费版,可免费用一年)

    (2)安装

        安装过程比较简单,只要前面的依赖都安好。只需要下载caffe-master,然后配置下Makefile文件即可。首先将Makefile.config.example复制一份并改名为Makefile.config,然后修改如下:

    修改前:

    ## Refer to http://caffe.berkeleyvision.org/installation.html
    # Contributions simplifying and improving our build system are welcome!
    # cuDNN acceleration switch (uncomment to build with cuDNN).
    # USE_CUDNN := 1
    # CPU-only switch (uncomment to build without GPU support).
    # CPU_ONLY := 1
    # uncomment to disable IO dependencies and corresponding data layers
    # USE_OPENCV := 0
    # USE_LEVELDB := 0
    # USE_LMDB := 0
    # uncomment to allow MDB_NOLOCK when reading LMDB files (only if necessary)
    #    You should not set this flag if you will be reading LMDBs with any
    #    possibility of simultaneous read and write
    # ALLOW_LMDB_NOLOCK := 1
    # Uncomment if you're using OpenCV 3
    # OPENCV_VERSION := 3
    # To customize your choice of compiler, uncomment and set the following.
    # N.B. the default for Linux is g++ and the default for OSX is clang++
    # CUSTOM_CXX := g++
    # CUDA directory contains bin/ and lib/ directories that we need.
    CUDA_DIR :=/usr/local/cuda
    # On Ubuntu 14.04, if cuda tools are installed via
    # "sudo apt-get install nvidia-cuda-toolkit" then use this instead:
    # CUDA_DIR := /usr
    # CUDA architecture setting: going with all of them.
    # For CUDA < 6.0, comment the *_50 lines for compatibility.
    CUDA_ARCH :=-gencode arch=compute_20,code=sm_20 
    -gencode arch=compute_20,code=sm_21 
    -gencode arch=compute_30,code=sm_30 
    -gencode arch=compute_35,code=sm_35 
    -gencode arch=compute_50,code=sm_50 
    -gencode arch=compute_50,code=compute_50
    # BLAS choice:
    # atlas for ATLAS (default)
    # mkl for MKL
    # open for OpenBlas
    BLAS := atlas
    # Custom (MKL/ATLAS/OpenBLAS) include and lib directories.
    # Leave commented to accept the defaults for your choice of BLAS
    # (which should work)!
    # BLAS_INCLUDE := /path/to/your/blas
    # BLAS_LIB := /path/to/your/blas
    # Homebrew puts openblas in a directory that is not on the standard search path
    # BLAS_INCLUDE := $(shell brew --prefix openblas)/include
    # BLAS_LIB := $(shell brew --prefix openblas)/lib
    # This is required only if you will compile the matlab interface.
    # MATLAB directory should contain the mex binary in /bin.
    # MATLAB_DIR := /usr/local
    # MATLAB_DIR := /Applications/MATLAB_R2012b.app
    # NOTE: this is required only if you will compile the python interface.
    # We need to be able to find Python.h and numpy/arrayobject.h.
    PYTHON_INCLUDE :=/usr/include/python2.7 
    /usr/lib/python2.7/dist-packages/numpy/core/include
    # Anaconda Python distribution is quite popular. Include path:
    # Verify anaconda location, sometimes it's in root.
    # ANACONDA_HOME := $(HOME)/anaconda
    # PYTHON_INCLUDE := $(ANACONDA_HOME)/include 
    # $(ANACONDA_HOME)/include/python2.7 
    # $(ANACONDA_HOME)/lib/python2.7/site-packages/numpy/core/include 
    # Uncomment to use Python 3 (default is Python 2)
    # PYTHON_LIBRARIES := boost_python3 python3.5m
    # PYTHON_INCLUDE := /usr/include/python3.5m 
    #                 /usr/lib/python3.5/dist-packages/numpy/core/include
    # We need to be able to find libpythonX.X.so or .dylib.
    PYTHON_LIB :=/usr/lib
    # PYTHON_LIB := $(ANACONDA_HOME)/lib
    # Homebrew installs numpy in a non standard path (keg only)
    # PYTHON_INCLUDE += $(dir $(shell python -c 'import numpy.core; print(numpy.core.__file__)'))/include
    # PYTHON_LIB += $(shell brew --prefix numpy)/lib
    # Uncomment to support layers written in Python (will link against Python libs)
    # WITH_PYTHON_LAYER := 1
    # Whatever else you find you need goes here.
    INCLUDE_DIRS := $(PYTHON_INCLUDE)/usr/local/include
    LIBRARY_DIRS := $(PYTHON_LIB)/usr/local/lib /usr/lib
    # If Homebrew is installed at a non standard location (for example your home directory) and you use it for general dependencies
    # INCLUDE_DIRS += $(shell brew --prefix)/include
    # LIBRARY_DIRS += $(shell brew --prefix)/lib
    # Uncomment to use `pkg-config` to specify OpenCV library paths.
    # (Usually not necessary -- OpenCV libraries are normally installed in one of the above $LIBRARY_DIRS.)
    # USE_PKG_CONFIG := 1
    BUILD_DIR := build
    DISTRIBUTE_DIR := distribute
    # Uncomment for debugging. Does not work on OSX due to https://github.com/BVLC/caffe/issues/171
    # DEBUG := 1
    # The ID of the GPU that 'make runtest' will use to run unit tests.
    TEST_GPUID :=0
    # enable pretty build (comment to see full commands)
    Q ?=@

    修改后:

    ## Refer to http://caffe.berkeleyvision.org/installation.html
    # Contributions simplifying and improving our build system are welcome!
    # cuDNN acceleration switch (uncomment to build with cuDNN).
    USE_CUDNN := 1
    # CPU-only switch (uncomment to build without GPU support).
    # CPU_ONLY := 1
    # uncomment to disable IO dependencies and corresponding data layers
    # USE_OPENCV := 0
    # USE_LEVELDB := 0
    # USE_LMDB := 0
    # uncomment to allow MDB_NOLOCK when reading LMDB files (only if necessary)
    #    You should not set this flag if you will be reading LMDBs with any
    #    possibility of simultaneous read and write
    # ALLOW_LMDB_NOLOCK := 1
    # Uncomment if you're using OpenCV 3
    OPENCV_VERSION := 3
    # To customize your choice of compiler, uncomment and set the following.
    # N.B. the default for Linux is g++ and the default for OSX is clang++
    # CUSTOM_CXX := g++
    # CUDA directory contains bin/ and lib/ directories that we need.
    CUDA_DIR :=/usr/local/cuda
    # On Ubuntu 14.04, if cuda tools are installed via
    # "sudo apt-get install nvidia-cuda-toolkit" then use this instead:
    # CUDA_DIR := /usr
    # CUDA architecture setting: going with all of them.
    # For CUDA < 6.0, comment the *_50 lines for compatibility.
    CUDA_ARCH :=-gencode arch=compute_20,code=sm_20 
    -gencode arch=compute_20,code=sm_21 
    -gencode arch=compute_30,code=sm_30 
    -gencode arch=compute_35,code=sm_35 
    -gencode arch=compute_50,code=sm_50 
    -gencode arch=compute_52,code=compute_52
    # BLAS choice:
    # atlas for ATLAS (default)
    # mkl for MKL
    # open for OpenBlas
    BLAS := mkl
    # Custom (MKL/ATLAS/OpenBLAS) include and lib directories.
    # Leave commented to accept the defaults for your choice of BLAS
    # (which should work)!
    # BLAS_INCLUDE := /path/to/your/blas
    # BLAS_LIB := /path/to/your/blas
    # Homebrew puts openblas in a directory that is not on the standard search path
    # BLAS_INCLUDE := $(shell brew --prefix openblas)/include
    # BLAS_LIB := $(shell brew --prefix openblas)/lib
    # This is required only if you will compile the matlab interface.
    # MATLAB directory should contain the mex binary in /bin.
    # MATLAB_DIR := /usr/local
    # MATLAB_DIR := /Applications/MATLAB_R2012b.app
    # NOTE: this is required only if you will compile the python interface.
    # We need to be able to find Python.h and numpy/arrayobject.h.
    PYTHON_INCLUDE :=/usr/include/python2.7 
    /usr/local/lib/python2.7/dist-packages/numpy/core/include
    # Anaconda Python distribution is quite popular. Include path:
    # Verify anaconda location, sometimes it's in root.
    # ANACONDA_HOME := $(HOME)/anaconda
    # PYTHON_INCLUDE := $(ANACONDA_HOME)/include 
    # $(ANACONDA_HOME)/include/python2.7 
    # $(ANACONDA_HOME)/lib/python2.7/site-packages/numpy/core/include 
    # Uncomment to use Python 3 (default is Python 2)
    # PYTHON_LIBRARIES := boost_python3 python3.5m
    # PYTHON_INCLUDE := /usr/include/python3.5m 
    #                 /usr/lib/python3.5/dist-packages/numpy/core/include
    # We need to be able to find libpythonX.X.so or .dylib.
    PYTHON_LIB :=/usr/lib
    # PYTHON_LIB := $(ANACONDA_HOME)/lib
    # Homebrew installs numpy in a non standard path (keg only)
    # PYTHON_INCLUDE += $(dir $(shell python -c 'import numpy.core; print(numpy.core.__file__)'))/include
    # PYTHON_LIB += $(shell brew --prefix numpy)/lib
    # Uncomment to support layers written in Python (will link against Python libs)
    # WITH_PYTHON_LAYER := 1
    # Whatever else you find you need goes here.
    INCLUDE_DIRS := $(PYTHON_INCLUDE)/usr/local/include
    LIBRARY_DIRS := $(PYTHON_LIB)/usr/local/lib /usr/lib
    # If Homebrew is installed at a non standard location (for example your home directory) and you use it for general dependencies
    # INCLUDE_DIRS += $(shell brew --prefix)/include
    # LIBRARY_DIRS += $(shell brew --prefix)/lib
    # Uncomment to use `pkg-config` to specify OpenCV library paths.
    # (Usually not necessary -- OpenCV libraries are normally installed in one of the above $LIBRARY_DIRS.)
    # USE_PKG_CONFIG := 1
    BUILD_DIR := build
    DISTRIBUTE_DIR := distribute
    # Uncomment for debugging. Does not work on OSX due to https://github.com/BVLC/caffe/issues/171
    # DEBUG := 1
    # The ID of the GPU that 'make runtest' will use to run unit tests.
    TEST_GPUID :=0
    # enable pretty build (comment to see full commands)
    Q ?=@

    然后是:-j8据说可以调动多核cpu进行计算,效率更高。

    make all -j8
    make test -j8
    make runtest -j8

    参考文献:

    1. http://ouxinyu.github.io/Blogs/20140723001.html

    2.http://dirtysalt.info/caffe.html

    3. http://developer.download.nvidia.com/compute/cuda/7.5/Prod/docs/sidebar/CUDA_Quick_Start_Guide.pdf

    4. http://www.linuxidc.com/Linux/2015-07/120449.htm



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  • 原文地址:https://www.cnblogs.com/anmengcv/p/5368846.html
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