


Tutorial on how to operate byte streams/binary streams using the struct module in Python
Recently, I have been learning python network programming. When writing simple socket communication code, I encountered the use of the struct module. At the time, I was not sure what it did and what it does. Later, I checked the relevant information and roughly understood it. This article The article mainly introduces the operation of byte stream/binary stream by the struct module in Python. Friends in need can refer to it.
Preface
Recently using Python to parse the MNIST data set in IDX file format, I need to read the binary file, in which I use is the struct module. I checked a lot of tutorials on the Internet and they were all very good, but not very friendly to novices, so I reorganized some notes to help you get started quickly.
Note: The following four nouns in the tutorial are synonymous: binary stream, binary array, byte stream, byte array
Get started quickly
In the struct module, convert an integer number, floating point number or character stream (character array) into a byte stream (word section array), you need to use the format string fmt to tell the struct module what type of object to be converted, for example, an integer number is 'i', a floating point number is 'f', and an ascii code character is 's'.
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 |
|
The output results are as follows:
demo1 output results
Detailed explanation of struct module
Main functions
The three most important functions in the struct module arepack()
, unpack()
, calcsize()
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Format string in struct
The supported formats in struct are as follows:
float | float | 4 | |
double | float | 8 | |
char[] | string | 1 | |
Note 2: There can be a number before each format to indicate the individual Number
Note 3: The s format represents a string of a certain length, 4s represents a string of length 4, but p represents a pascal string
Note 4 :P is used to convert a pointer, its length is related to the machine word length
Note 5: The last one can be used to represent the pointer type, occupying 4 bytes
In order to exchange data with the structure in c, it is also necessary to consider that some c or c++ compilers use byte alignment, usually 32-bit systems with 4 bytes, so the struct is converted according to the local machine byte order .You can use the first character in the format to change the alignment. It is defined as follows:
Size and alignment | ||
---|---|---|
native Make up enough 4 bytes | = | |
standard according to the original number of bytes | ||
standard According to the original number of bytes | > | |
standard According to the original number of bytes Number | ||
The method of use is to put it in the first position of fmt, just like '@5s6sif' |

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