- NumPy Tutorial
- NumPy - Home
- NumPy - Introduction
- NumPy - Environment
- NumPy - Ndarray Object
- NumPy - Data Types
- NumPy - Array Attributes
- NumPy - Array Creation Routines
- NumPy - Array from Existing Data
- Array From Numerical Ranges
- NumPy - Indexing & Slicing
- NumPy - Advanced Indexing
- NumPy - Broadcasting
- NumPy - Iterating Over Array
- NumPy - Array Manipulation
- NumPy - Binary Operators
- NumPy - String Functions
- NumPy - Mathematical Functions
- NumPy - Arithmetic Operations
- NumPy - Statistical Functions
- Sort, Search & Counting Functions
- NumPy - Byte Swapping
- NumPy - Copies & Views
- NumPy - Matrix Library
- NumPy - Linear Algebra
- NumPy - Matplotlib
- NumPy - Histogram Using Matplotlib
- NumPy - I/O with NumPy
- NumPy Useful Resources
- NumPy Compiler
- NumPy - Quick Guide
- NumPy - Useful Resources
- NumPy - Discussion
I/O with NumPy
The ndarray objects can be saved to and loaded from the disk files. The IO functions available are −
load() and save() functions handle /numPy binary files (with npy extension)
loadtxt() and savetxt() functions handle normal text files
NumPy introduces a simple file format for ndarray objects. This .npy file stores data, shape, dtype and other information required to reconstruct the ndarray in a disk file such that the array is correctly retrieved even if the file is on another machine with different architecture.
numpy.save()
The numpy.save() file stores the input array in a disk file with npy extension.
import numpy as np a = np.array([1,2,3,4,5]) np.save('outfile',a)
To reconstruct array from outfile.npy, use load() function.
import numpy as np b = np.load('outfile.npy') print b
It will produce the following output −
array([1, 2, 3, 4, 5])
The save() and load() functions accept an additional Boolean parameter allow_pickles. A pickle in Python is used to serialize and de-serialize objects before saving to or reading from a disk file.
savetxt()
The storage and retrieval of array data in simple text file format is done with savetxt() and loadtxt() functions.
Example
import numpy as np a = np.array([1,2,3,4,5]) np.savetxt('out.txt',a) b = np.loadtxt('out.txt') print b
It will produce the following output −
[ 1. 2. 3. 4. 5.]
The savetxt() and loadtxt() functions accept additional optional parameters such as header, footer, and delimiter.