ICode9

精准搜索请尝试: 精确搜索
首页 > 其他分享> 文章详细

Clion 使用 armadillo 配置方法

2021-01-09 12:30:24  阅读:267  来源: 互联网

标签:matrix 配置 armadillo print include Clion row


Clion 使用 armadillo 配置方法

jetbrains 全家桶是我的最爱 但是C++的编写网上都是visual studio 的教程,尤其是对于库文件的引用,Clion很少有指导,最近需要将python的程序转为C++,用到了armadillo 矩阵库, 但是网上对于armadillo的使用再Clion中都是胡说八道。下面我来介绍一下正确的做法

第一步 下载 Clion

		来这里的应该都下好了,不多赘述

第二步 下载 armadillo

		百度搜索 armadillo 选择稳定版下载(这种东西,不是越新越好)

第三步 解压文件 在Clion中创建项目

  • 注意我这里创建了一个文件夹 include 放包含的文件
    在这里插入图片描述
    下面是cmake list 编写
cmake_minimum_required(VERSION 3.17)
project({xxx})

set(CMAKE_CXX_STANDARD 14)
include_directories(include/armadillo/include) # 引用头文件
link_directories(include/armadillo/examples/lib_win64) #添加依赖
add_executable({xxx} main.cpp) 
target_link_libraries({xxx} libopenblas.lib) #添加库文件

第四步 最重要的一步

在这里插入图片描述
在lib_win64的文件夹中把 libopenblas.dill 复制到 \cmake-build-debug 的目录下

第五步 运行示例文件

#include <iostream>
#include <armadillo>

using namespace std;
using namespace arma;

// Armadillo documentation is available at:
// http://arma.sourceforge.net/docs.html

// NOTE: the C++11 "auto" keyword is not recommended for use with Armadillo objects and functions

int
main(int argc, char** argv)
  {
  cout << "Armadillo version: " << arma_version::as_string() << endl;
  
  mat A(2,3);  // directly specify the matrix size (elements are uninitialised)
  
  cout << "A.n_rows: " << A.n_rows << endl;  // .n_rows and .n_cols are read only
  cout << "A.n_cols: " << A.n_cols << endl;
  
  A(1,2) = 456.0;  // directly access an element (indexing starts at 0)
  A.print("A:");
  
  A = 5.0;         // scalars are treated as a 1x1 matrix
  A.print("A:");
  
  A.set_size(4,5); // change the size (data is not preserved)
  
  A.fill(5.0);     // set all elements to a particular value
  A.print("A:");
  
  A = { { 0.165300, 0.454037, 0.995795, 0.124098, 0.047084 },
        { 0.688782, 0.036549, 0.552848, 0.937664, 0.866401 },
        { 0.348740, 0.479388, 0.506228, 0.145673, 0.491547 },
        { 0.148678, 0.682258, 0.571154, 0.874724, 0.444632 },
        { 0.245726, 0.595218, 0.409327, 0.367827, 0.385736 } };
        
  A.print("A:");
  
  // determinant
  cout << "det(A): " << det(A) << endl;
  
  // inverse
  cout << "inv(A): " << endl << inv(A) << endl;
  
  // save matrix as a text file
  A.save("A.txt", raw_ascii);
  
  // load from file
  mat B;
  B.load("A.txt");
  
  // submatrices
  cout << "B( span(0,2), span(3,4) ):" << endl << B( span(0,2), span(3,4) ) << endl;
  
  cout << "B( 0,3, size(3,2) ):" << endl << B( 0,3, size(3,2) ) << endl;
  
  cout << "B.row(0): " << endl << B.row(0) << endl;
  
  cout << "B.col(1): " << endl << B.col(1) << endl;
  
  // transpose
  cout << "B.t(): " << endl << B.t() << endl;
  
  // maximum from each column (traverse along rows)
  cout << "max(B): " << endl << max(B) << endl;
  
  // maximum from each row (traverse along columns)
  cout << "max(B,1): " << endl << max(B,1) << endl;
  
  // maximum value in B
  cout << "max(max(B)) = " << max(max(B)) << endl;
  
  // sum of each column (traverse along rows)
  cout << "sum(B): " << endl << sum(B) << endl;
  
  // sum of each row (traverse along columns)
  cout << "sum(B,1) =" << endl << sum(B,1) << endl;
  
  // sum of all elements
  cout << "accu(B): " << accu(B) << endl;
  
  // trace = sum along diagonal
  cout << "trace(B): " << trace(B) << endl;
  
  // generate the identity matrix
  mat C = eye<mat>(4,4);
  
  // random matrix with values uniformly distributed in the [0,1] interval
  mat D = randu<mat>(4,4);
  D.print("D:");
  
  // row vectors are treated like a matrix with one row
  rowvec r = { 0.59119, 0.77321, 0.60275, 0.35887, 0.51683 };
  r.print("r:");
  
  // column vectors are treated like a matrix with one column
  vec q = { 0.14333, 0.59478, 0.14481, 0.58558, 0.60809 };
  q.print("q:");
  
  // convert matrix to vector; data in matrices is stored column-by-column
  vec v = vectorise(A);
  v.print("v:");
  
  // dot or inner product
  cout << "as_scalar(r*q): " << as_scalar(r*q) << endl;
  
  // outer product
  cout << "q*r: " << endl << q*r << endl;
  
  // multiply-and-accumulate operation (no temporary matrices are created)
  cout << "accu(A % B) = " << accu(A % B) << endl;
  
  // example of a compound operation
  B += 2.0 * A.t();
  B.print("B:");
  
  // imat specifies an integer matrix
  imat AA = { { 1, 2, 3 },
              { 4, 5, 6 },
              { 7, 8, 9 } };
  
  imat BB = { { 3, 2, 1 }, 
              { 6, 5, 4 },
              { 9, 8, 7 } };
  
  // comparison of matrices (element-wise); output of a relational operator is a umat
  umat ZZ = (AA >= BB);
  ZZ.print("ZZ:");
  
  // cubes ("3D matrices")
  cube Q( B.n_rows, B.n_cols, 2 );
  
  Q.slice(0) = B;
  Q.slice(1) = 2.0 * B;
  
  Q.print("Q:");
  
  // 2D field of matrices; 3D fields are also supported
  field<mat> F(4,3); 
  
  for(uword col=0; col < F.n_cols; ++col)
  for(uword row=0; row < F.n_rows; ++row)
    {
    F(row,col) = randu<mat>(2,3);  // each element in field<mat> is a matrix
    }
  
  F.print("F:");
  
  return 0;
  }


标签:matrix,配置,armadillo,print,include,Clion,row
来源: https://blog.csdn.net/weixin_45615831/article/details/112389934

本站声明: 1. iCode9 技术分享网(下文简称本站)提供的所有内容,仅供技术学习、探讨和分享;
2. 关于本站的所有留言、评论、转载及引用,纯属内容发起人的个人观点,与本站观点和立场无关;
3. 关于本站的所有言论和文字,纯属内容发起人的个人观点,与本站观点和立场无关;
4. 本站文章均是网友提供,不完全保证技术分享内容的完整性、准确性、时效性、风险性和版权归属;如您发现该文章侵犯了您的权益,可联系我们第一时间进行删除;
5. 本站为非盈利性的个人网站,所有内容不会用来进行牟利,也不会利用任何形式的广告来间接获益,纯粹是为了广大技术爱好者提供技术内容和技术思想的分享性交流网站。

专注分享技术,共同学习,共同进步。侵权联系[81616952@qq.com]

Copyright (C)ICode9.com, All Rights Reserved.

ICode9版权所有