Skip to content
/ cnpy Public
forked from rogersce/cnpy

library to read/write .npy and .npz files in C/C++

License

Notifications You must be signed in to change notification settings

chaloz/cnpy

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

20 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Purpose:

Numpy offers the save method for easy saving of arrays into .npy and savez for zipping multiple .npy arrays together into a .npz file. cnpy lets you read and write to these formats in C++. The motivation comes from scientific programming where large amounts of data are generated in C++ and analyzed in Python. Writing to .npy has the advantage of using low-level C++ I/O (fread and fwrite) for speed and binary format for size. The .npy file header takes care of specifying the size, shape, and data type of the array, so specifying the format of the data is unnecessary. Loading data written in numpy formats into C++ is equally simple, but requires you to type-cast the loaded data to the type of your choice.

Installation:

Default installation directory is /usr/local. To specify a different directory, add -DCMAKE_INSTALL_PREFIX=/path/to/install/dir to the cmake invocation in step 4.

1. get cmake at www.cmake.org
2. create a build directory, say $HOME/build
3. cd $HOME/build
4. cmake /path/to/cnpy
5. make
6. make install

Using:

To use, #include"cnpy.h" in your source code. Compile the source code mycode.cpp as

g++ -o mycode mycode.cpp -L/path/to/install/dir -lcnpy

Description:

There are two functions for writing data: npy_save, npz_save.

There are 3 functions for reading. npy_load will load a .npy file. npz_load(fname) will load a .npz and return a dictionary of NpyArray structues. npz_load(fname,varname) will load and return the NpyArray for data varname from the specified .npz file.
Note that NpyArray allocates char* data using new[] and *will not* delete the data upon the NpyArray destruction. You are responsible for delete the data yourself.

The data structure for loaded data is below. Data is loaded into a a raw byte array. The array shape and word size are read from the npy header. You are responsible for casting/copying the data to its intended data type.

struct NpyArray {
    char* data;
    std::vector<unsigned int> shape;
    unsigned int word_size;
};

See example1.cpp for examples of how to use the library. example1 will also be build during cmake installation.

About

library to read/write .npy and .npz files in C/C++

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • C++ 92.1%
  • CMake 4.1%
  • Python 3.8%