Chapter 12: Regular expressions | Python for Everybody 讲义笔记_En

这篇具有很好参考价值的文章主要介绍了Chapter 12: Regular expressions | Python for Everybody 讲义笔记_En。希望对大家有所帮助。如果存在错误或未考虑完全的地方,请大家不吝赐教,您也可以点击"举报违法"按钮提交疑问。


Python for Everybody

Exploring Data Using Python 3
Dr. Charles R. Severance


课程简介

Python for Everybody 零基础程序设计(Python 入门)

  • This course aims to teach everyone the basics of programming computers using Python. 本课程旨在向所有人传授使用 Python 进行计算机编程的基础知识。
  • We cover the basics of how one constructs a program from a series of simple instructions in Python. 我们介绍了如何通过 Python 中的一系列简单指令构建程序的基础知识。
  • The course has no pre-requisites and avoids all but the simplest mathematics. Anyone with moderate computer experience should be able to master the materials in this course. 该课程没有任何先决条件,除了最简单的数学之外,避免了所有内容。任何具有中等计算机经验的人都应该能够掌握本课程中的材料。
  • This course will cover Chapters 1-5 of the textbook “Python for Everybody”. Once a student completes this course, they will be ready to take more advanced programming courses. 本课程将涵盖《Python for Everyday》教科书的第 1-5 章。学生完成本课程后,他们将准备好学习更高级的编程课程。
  • This course covers Python 3.

Chapter 12: Regular expressions | Python for Everybody 讲义笔记_En,# Python for Everybody,python,笔记,学习

coursera

Python for Everybody 零基础程序设计(Python 入门)

Charles Russell Severance
Clinical Professor

Chapter 12: Regular expressions | Python for Everybody 讲义笔记_En,# Python for Everybody,python,笔记,学习

个人主页
Twitter

Chapter 12: Regular expressions | Python for Everybody 讲义笔记_En,# Python for Everybody,python,笔记,学习

University of Michigan


课程资源

coursera原版课程视频
coursera原版视频-中英文精校字幕-B站
Dr. Chuck官方翻录版视频-机器翻译字幕-B站

PY4E-课程配套练习
Dr. Chuck Online - 系列课程开源官网



Regular Expressions

Regular Expressions allow us to search for patterns in strings and extract data from strings using the regular expression programming language.


Regular Expressions

So far we have been reading through files, looking for patterns and extracting various bits of lines that we find interesting. We have been using string methods like split and find and using lists and string slicing to extract portions of the lines.

This task of searching and extracting is so common that Python has a very powerful module called regular expressions that handles many of these tasks quite elegantly. The reason we have not introduced regular expressions earlier in the book is because while they are very powerful, they are a little complicated and their syntax takes some getting used to.

Regular expressions are almost their own little programming language for searching and parsing strings. As a matter of fact, entire books have been written on the topic of regular expressions. In this chapter, we will only cover the basics of regular expressions. For more detail on regular expressions, see:
https://en.wikipedia.org/wiki/Regular_expression
https://docs.python.org/library/re.html

The regular expression module re must be imported into your program before you can use it. The simplest use of the regular expression module is the search() function. The following program demonstrates a trivial use of the search function.

# Search for lines that contain 'From'
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    if re.search('From:', line):
        print(line)

# Code: http://www.py4e.com/code3/re01.py

We open the file, loop through each line, and use the regular expression search() to only print out lines that contain the string “From:”. This program does not use the real power of regular expressions, since we could have just as easily used line.find() to accomplish the same result.

The power of the regular expressions comes when we add special characters to the search string that allow us to more precisely control which lines match the string. Adding these special characters to our regular expression allow us to do sophisticated matching and extraction while writing very little code.

For example, the caret character is used in regular expressions to match “the beginning” of a line. We could change our program to only match lines where “From:” was at the beginning of the line as follows:

# Search for lines that start with 'From'
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    if re.search('^From:', line):
        print(line)

# Code: http://www.py4e.com/code3/re02.py

Now we will only match lines that start with the string “From:”. This is still a very simple example that we could have done equivalently with the startswith() method from the string module. But it serves to introduce the notion that regular expressions contain special action characters that give us more control as to what will match the regular expression.


Character matching in regular expressions

There are a number of other special characters that let us build even more powerful regular expressions. The most commonly used special character is the period or full stop, which matches any character.

In the following example, the regular expression F..m: would match any of the strings “From:”, “Fxxm:”, “F12m:”, or “F!@m:” since the period characters in the regular expression match any character.

# Search for lines that start with 'F', followed by
# 2 characters, followed by 'm:'
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    if re.search('^F..m:', line):
        print(line)

# Code: http://www.py4e.com/code3/re03.py

This is particularly powerful when combined with the ability to indicate that a character can be repeated any number of times using the * or + characters in your regular expression. These special characters mean that instead of matching a single character in the search string, they match zero-or-more characters (in the case of the asterisk) or one-or-more of the characters (in the case of the plus sign).

We can further narrow down the lines that we match using a repeated wild card character in the following example:

# Search for lines that start with From and have an at sign
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    if re.search('^From:.+@', line):
        print(line)

# Code: http://www.py4e.com/code3/re04.py

The search string ^From:.+@ will successfully match lines that start with “From:”, followed by one or more characters (.+), followed by an at-sign. So this will match the following line:

From: stephen.marquard@uct.ac.za

You can think of the .+ wildcard as expanding to match all the characters between the colon character and the at-sign.

From:.+@

It is good to think of the plus and asterisk characters as “pushy”. For example, the following string would match the last at-sign in the string as the .+ pushes outwards, as shown below:

From: stephen.marquard@uct.ac.za, csev@umich.edu, and cwen @iupui.edu

It is possible to tell an asterisk or plus sign not to be so “greedy” by adding another character. See the detailed documentation for information on turning off the greedy behavior.


Extracting data using regular expressions

If we want to extract data from a string in Python we can use the findall() method to extract all of the substrings which match a regular expression. Let’s use the example of wanting to extract anything that looks like an email address from any line regardless of format. For example, we want to pull the email addresses from each of the following lines:

From stephen.marquard@uct.ac.za Sat Jan  5 09:14:16 2008
Return-Path: <postmaster@collab.sakaiproject.org>
          for <source@collab.sakaiproject.org>;
Received: (from apache@localhost)
Author: stephen.marquard@uct.ac.za

We don’t want to write code for each of the types of lines, splitting and slicing differently for each line. This following program uses findall() to find the lines with email addresses in them and extract one or more addresses from each of those lines.

import re
s = 'A message from csev@umich.edu to cwen@iupui.edu about meeting @2PM'
lst = re.findall('\S+@\S+', s)
print(lst)

# Code: http://www.py4e.com/code3/re05.py

The findall() method searches the string in the second argument and returns a list of all of the strings that look like email addresses. We are using a two-character sequence that matches a non-whitespace character (\S).

The output of the program would be:

['csev@umich.edu', 'cwen@iupui.edu']

Translating the regular expression, we are looking for substrings that have at least one non-whitespace character, followed by an at-sign, followed by at least one more non-whitespace character. The \S+ matches as many non-whitespace characters as possible.

The regular expression would match twice (csev@umich.edu and cwen@iupui.edu), but it would not match the string “@2PM” because there are no non-blank characters before the at-sign. We can use this regular expression in a program to read all the lines in a file and print out anything that looks like an email address as follows:

# Search for lines that have an at sign between characters
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    x = re.findall('\S+@\S+', line)
    if len(x) > 0:
        print(x)

# Code: http://www.py4e.com/code3/re06.py

We read each line and then extract all the substrings that match our regular expression. Since findall() returns a list, we simply check if the number of elements in our returned list is more than zero to print only lines where we found at least one substring that looks like an email address.

If we run the program on mbox-short.txt we get the following output:

...
['<source@collab.sakaiproject.org>;']
['<source@collab.sakaiproject.org>;']
['apache@localhost)']
['source@collab.sakaiproject.org;']
['cwen@iupui.edu']
['source@collab.sakaiproject.org']
['cwen@iupui.edu']
['cwen@iupui.edu']
['wagnermr@iupui.edu']

Some of our email addresses have incorrect characters like “<” or “;” at the beginning or end. Let’s declare that we are only interested in the portion of the string that starts and ends with a letter or a number.

To do this, we use another feature of regular expressions. Square brackets are used to indicate a set of multiple acceptable characters we are willing to consider matching. In a sense, the \S is asking to match the set of “non-whitespace characters”. Now we will be a little more explicit in terms of the characters we will match.

Here is our new regular expression:

[a-zA-Z0-9]\S*@\S*[a-zA-Z]

This is getting a little complicated and you can begin to see why regular expressions are their own little language unto themselves. Translating this regular expression, we are looking for substrings that start with a single lowercase letter, uppercase letter, or number “[a-zA-Z0-9]”, followed by zero or more non-blank characters (\S*), followed by an at-sign, followed by zero or more non-blank characters (\S*), followed by an uppercase or lowercase letter. Note that we switched from + to * to indicate zero or more non-blank characters since [a-zA-Z0-9] is already one non-blank character. Remember that the * or + applies to the single character immediately to the left of the plus or asterisk.

If we use this expression in our program, our data is much cleaner:

# Search for lines that have an at sign between characters
# The characters must be a letter or number
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    x = re.findall('[a-zA-Z0-9]\S*@\S*[a-zA-Z]', line)
    if len(x) > 0:
        print(x)

# Code: http://www.py4e.com/code3/re07.py
...
['wagnermr@iupui.edu']
['cwen@iupui.edu']
['postmaster@collab.sakaiproject.org']
['200801032122.m03LMFo4005148@nakamura.uits.iupui.edu']
['source@collab.sakaiproject.org']
['source@collab.sakaiproject.org']
['source@collab.sakaiproject.org']
['apache@localhost']

Notice that on the source@collab.sakaiproject.org lines, our regular expression eliminated two letters at the end of the string (“>;”). This is because when we append [a-zA-Z] to the end of our regular expression, we are demanding that whatever string the regular expression parser finds must end with a letter. So when it sees the “>” at the end of “sakaiproject.org>;” it simply stops at the last “matching” letter it found (i.e., the “g” was the last good match).

Also note that the output of the program is a Python list that has a string as the single element in the list.


Combining searching and extracting

If we want to find numbers on lines that start with the string “X-” such as:

X-DSPAM-Confidence: 0.8475
X-DSPAM-Probability: 0.0000

we don’t just want any floating-point numbers from any lines. We only want to extract numbers from lines that have the above syntax.

We can construct the following regular expression to select the lines:

^X-.*: [0-9.]+

Translating this, we are saying, we want lines that start with X-, followed by zero or more characters (.*), followed by a colon (:) and then a space. After the space we are looking for one or more characters that are either a digit (0-9) or a period [0-9.]+. Note that inside the square brackets, the period matches an actual period (i.e., it is not a wildcard between the square brackets).

This is a very tight expression that will pretty much match only the lines we are interested in as follows:

# Search for lines that start with 'X' followed by any non
# whitespace characters and ':'
# followed by a space and any number.
# The number can include a decimal.
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    if re.search('^X\S*: [0-9.]+', line):
        print(line)

# Code: http://www.py4e.com/code3/re10.py

When we run the program, we see the data nicely filtered to show only the lines we are looking for.

X-DSPAM-Confidence: 0.8475
X-DSPAM-Probability: 0.0000
X-DSPAM-Confidence: 0.6178
X-DSPAM-Probability: 0.0000
...

But now we have to solve the problem of extracting the numbers. While it would be simple enough to use split, we can use another feature of regular expressions to both search and parse the line at the same time.

Parentheses are another special character in regular expressions. When you add parentheses to a regular expression, they are ignored when matching the string. But when you are using findall(), parentheses indicate that while you want the whole expression to match, you only are interested in extracting a portion of the substring that matches the regular expression.

So we make the following change to our program:

# Search for lines that start with 'X' followed by any
# non whitespace characters and ':' followed by a space
# and any number. The number can include a decimal.
# Then print the number if it is greater than zero.
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    x = re.findall('^X\S*: ([0-9.]+)', line)
    if len(x) > 0:
        print(x)

# Code: http://www.py4e.com/code3/re11.py

Instead of calling search(), we add parentheses around the part of the regular expression that represents the floating-point number to indicate we only want findall() to give us back the floating-point number portion of the matching string.

The output from this program is as follows:

['0.8475']
['0.0000']
['0.6178']
['0.0000']
['0.6961']
['0.0000']
...

The numbers are still in a list and need to be converted from strings to floating point, but we have used the power of regular expressions to both search and extract the information we found interesting.

As another example of this technique, if you look at the file there are a number of lines of the form:

Details: http://source.sakaiproject.org/viewsvn/?view=rev&rev=39772

If we wanted to extract all of the revision numbers (the integer number at the end of these lines) using the same technique as above, we could write the following program:

# Search for lines that start with 'Details: rev='
# followed by numbers
# Then print the number if one is found
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    x = re.findall('^Details:.*rev=([0-9]+)', line)
    if len(x) > 0:
        print(x)

# Code: http://www.py4e.com/code3/re12.py

Translating our regular expression, we are looking for lines that start with Details:, followed by any number of characters (.*), followed by rev=, and then by one or more digits. We want to find lines that match the entire expression but we only want to extract the integer number at the end of the line, so we surround [0-9]+ with parentheses.

When we run the program, we get the following output:

['39772']
['39771']
['39770']
['39769']
...

Remember that the [0-9]+ is “greedy” and it tries to make as large a string of digits as possible before extracting those digits. This “greedy” behavior is why we get all five digits for each number. The regular expression module expands in both directions until it encounters a non-digit, or the beginning or the end of a line.

Now we can use regular expressions to redo an exercise from earlier in the book where we were interested in the time of day of each mail message. We looked for lines of the form:

From stephen.marquard@uct.ac.za Sat Jan  5 09:14:16 2008

and wanted to extract the hour of the day for each line. Previously we did this with two calls to split. First the line was split into words and then we pulled out the fifth word and split it again on the colon character to pull out the two characters we were interested in.

While this worked, it actually results in pretty brittle code that is assuming the lines are nicely formatted. If you were to add enough error checking (or a big try/except block) to insure that your program never failed when presented with incorrectly formatted lines, the code would balloon to 10-15 lines of code that was pretty hard to read.

We can do this in a far simpler way with the following regular expression:

^From .* [0-9][0-9]:

The translation of this regular expression is that we are looking for lines that start with From (note the space), followed by any number of characters (.*), followed by a space, followed by two digits [0-9][0-9], followed by a colon character. This is the definition of the kinds of lines we are looking for.

In order to pull out only the hour using findall(), we add parentheses around the two digits as follows:

^From .* ([0-9][0-9]):

This results in the following program:

# Search for lines that start with From and a character
# followed by a two digit number between 00 and 99 followed by ':'
# Then print the number if one is found
import re
hand = open('mbox-short.txt')
for line in hand:
    line = line.rstrip()
    x = re.findall('^From .* ([0-9][0-9]):', line)
    if len(x) > 0: print(x)

# Code: http://www.py4e.com/code3/re13.py

When the program runs, it produces the following output:

['09']
['18']
['16']
['15']
...

Escape character

Since we use special characters in regular expressions to match the beginning or end of a line or specify wild cards, we need a way to indicate that these characters are “normal” and we want to match the actual character such as a dollar sign or caret.

We can indicate that we want to simply match a character by prefixing that character with a backslash. For example, we can find money amounts with the following regular expression.

import re
x = 'We just received $10.00 for cookies.'
y = re.findall('\$[0-9.]+',x)

Since we prefix the dollar sign with a backslash, it actually matches the dollar sign in the input string instead of matching the “end of line”, and the rest of the regular expression matches one or more digits or the period character. Note: Inside square brackets, characters are not “special”. So when we say [0-9.], it really means digits or a period. Outside of square brackets, a period is the “wild-card” character and matches any character. Inside square brackets, the period is a period.


Summary

While this only scratched the surface of regular expressions, we have learned a bit about the language of regular expressions. They are search strings with special characters in them that communicate your wishes to the regular expression system as to what defines “matching” and what is extracted from the matched strings. Here are some of those special characters and character sequences:
^ Matches the beginning of the line.

$ Matches the end of the line.

. Matches any character (a wildcard).

\s Matches a whitespace character.

\S Matches a non-whitespace character (opposite of \s).

* Applies to the immediately preceding character(s) and indicates to match zero or more times.

*? Applies to the immediately preceding character(s) and indicates to match zero or more times in “non-greedy mode”.

+ Applies to the immediately preceding character(s) and indicates to match one or more times.

+? Applies to the immediately preceding character(s) and indicates to match one or more times in “non-greedy mode”.

? Applies to the immediately preceding character(s) and indicates to match zero or one time.

?? Applies to the immediately preceding character(s) and indicates to match zero or one time in “non-greedy mode”.

[aeiou] Matches a single character as long as that character is in the specified set. In this example, it would match “a”, “e”, “i”, “o”, or “u”, but no other characters.

[a-z0-9] You can specify ranges of characters using the minus sign. This example is a single character that must be a lowercase letter or a digit.

[^A-Za-z] When the first character in the set notation is a caret, it inverts the logic. This example matches a single character that is anything other than an uppercase or lowercase letter.

( ) When parentheses are added to a regular expression, they are ignored for the purpose of matching, but allow you to extract a particular subset of the matched string rather than the whole string when using findall().

\b Matches the empty string, but only at the start or end of a word.

\B Matches the empty string, but not at the start or end of a word.

\d Matches any decimal digit; equivalent to the set [0-9].

\D Matches any non-digit character; equivalent to the set [^0-9].

Bonus section for Unix / Linux users

Support for searching files using regular expressions was built into the Unix operating system since the 1960s and it is available in nearly all programming languages in one form or another.

As a matter of fact, there is a command-line program built into Unix called grep (Generalized Regular Expression Parser) that does pretty much the same as the search() examples in this chapter. So if you have a Macintosh or Linux system, you can try the following commands in your command-line window.

$ grep '^From:' mbox-short.txt
From: stephen.marquard@uct.ac.za
From: louis@media.berkeley.edu
From: zqian@umich.edu
From: rjlowe@iupui.edu

This tells grep to show you lines that start with the string “From:” in the file mbox-short.txt. If you experiment with the grep command a bit and read the documentation for grep, you will find some subtle differences between the regular expression support in Python and the regular expression support in grep. As an example, grep does not support the non-blank character \S so you will need to use the slightly more complex set notation [^ ], which simply means match a character that is anything other than a space.


Debugging

Python has some simple and rudimentary built-in documentation that can be quite helpful if you need a quick refresher to trigger your memory about the exact name of a particular method. This documentation can be viewed in the Python interpreter in interactive mode.

You can bring up an interactive help system using help().

>>> help()

help> modules

If you know what module you want to use, you can use the dir() command to find the methods in the module as follows:

>>> import re
>>> dir(re)
[.. 'compile', 'copy_reg', 'error', 'escape', 'findall',
'finditer', 'match', 'purge', 'search', 'split', 'sre_compile',
'sre_parse', 'sub', 'subn', 'sys', 'template']

You can also get a small amount of documentation on a particular method using the help command combined with the desired method.

>>> help (re.search)
Help on function search in module re:

search(pattern, string, flags=0)
    Scan through string looking for a match to the pattern, returning
    a match object, or None if no match was found.
>>>

The built-in documentation is not very extensive, but it can be helpful when you are in a hurry or don’t have access to a web browser or search engine.


Python Regular Expression Quick Guide

Python Regular Expression Quick Guide

Python Regular Expression Quick Guide

^        Matches the beginning of a line
$        Matches the end of the line
.        Matches any character
\s       Matches whitespace
\S       Matches any non-whitespace character
*        Repeats a character zero or more times
*?       Repeats a character zero or more times 
         (non-greedy)
+        Repeats a character one or more times
+?       Repeats a character one or more times 
         (non-greedy)
[aeiou]  Matches a single character in the listed set
[^XYZ]   Matches a single character not in the listed set
[a-z0-9] The set of characters can include a range
(        Indicates where string extraction is to start
)        Indicates where string extraction is to end

Glossary

brittle code
Code that works when the input data is in a particular format but is prone to breakage if there is some deviation from the correct format. We call this “brittle code” because it is easily broken.
greedy matching
The notion that the + and * characters in a regular expression expand outward to match the largest possible string.
grep
A command available in most Unix systems that searches through text files looking for lines that match regular expressions. The command name stands for “Generalized Regular Expression Parser”.
regular expression
A language for expressing more complex search strings. A regular expression may contain special characters that indicate that a search only matches at the beginning or end of a line or many other similar capabilities.
wild card
A special character that matches any character. In regular expressions the wild-card character is the period.


Exercises

Exercise 1:
Write a simple program to simulate the operation of the grep command on Unix. Ask the user to enter a regular expression and count the number of lines that matched the regular expression:

$ python grep.py
Enter a regular expression: ^Author
mbox.txt had 1798 lines that matched ^Author

$ python grep.py
Enter a regular expression: ^X-
mbox.txt had 14368 lines that matched ^X-

$ python grep.py
Enter a regular expression: java$
mbox.txt had 4175 lines that matched java$

Exercise 2:
Write a program to look for lines of the form:

New Revision: 39772

Extract the number from each of the lines using a regular expression and the findall() method. Compute the average of the numbers and print out the average as an integer.文章来源地址https://www.toymoban.com/news/detail-641866.html

Enter file:mbox.txt
38549

Enter file:mbox-short.txt
39756

到了这里,关于Chapter 12: Regular expressions | Python for Everybody 讲义笔记_En的文章就介绍完了。如果您还想了解更多内容,请在右上角搜索TOY模板网以前的文章或继续浏览下面的相关文章,希望大家以后多多支持TOY模板网!

本文来自互联网用户投稿,该文观点仅代表作者本人,不代表本站立场。本站仅提供信息存储空间服务,不拥有所有权,不承担相关法律责任。如若转载,请注明出处: 如若内容造成侵权/违法违规/事实不符,请点击违法举报进行投诉反馈,一经查实,立即删除!

领支付宝红包 赞助服务器费用

相关文章

  • 《Python数据分析技术栈》第03章 01 正则表达式(Regular expressions)

    《Python数据分析技术栈》第03章 01 正则表达式(Regular expressions) A regular expression is a pattern containing both characters (like letters and digits) and metacharacters (like the * and $ symbols). Regular expressions can be used whenever we want to search, replace, or extract data with an identifiable pattern, for example, dates, posta

    2024年01月20日
    浏览(53)
  • 【学习笔记】CF576D Flights for Regular Customers

    不同于传统的最短路,当我们走到一个节点的时候,还要记录此时经过的边数才能完成转移。但是第二维太大了,太抽象了! 看到 m m m 这么小,很难不想到离散化。那么设 f i , j f_{i,j} f i , j ​ 表示当第 i i i 条边出现时,在节点 j j j 是否可行,注意这是 01 01 01 状态。转移非

    2024年02月12日
    浏览(31)
  • oracle的正则表达式(regular expression)

    当前,正则表达式已经在很多软件中得到广泛的应用,包括Linux, Unix,HP等操作系统,PHP,C#,Java等开发环境,ORACLE则在10G中推出了自己的正则表达式。 Oracle 10g正则表达式提高了SQL灵活性,有效的解决了数据有效性, 重复词的辨认, 无关的空白检测,或者分解多个正则组成的

    2024年02月07日
    浏览(44)
  • C#Regex正则表达式(Regular Expression)

    在C#中,Regex是正则表达式(Regular Expression)的缩写,它是一种强大的文本匹配和处理工具。正则表达式是一种用于描述模式的字符串,它可以用来在文本中查找、替换和提取满足特定模式的内容。 在C#中,你可以使用System.Text.RegularExpressions命名空间下的Regex类来操作正则表达

    2024年02月05日
    浏览(37)
  • 开发安全之:Dangerous Function: Unsafe Regular Expression

    Overview 无法安全地使用函数 split()。不应该使用此函数。 Details 某些函数不论如何使用都有危险性。这一类函数通常是在没有考虑安全问题的情况下就执行了。 在这种情况下,您正在使用的危险函数为 dingdan_pc_list.php 的第 65 行中的 split()。 split() 函数不安全,因为它是已弃用

    2024年01月18日
    浏览(28)
  • 【P15】JMeter 正则表达式提取器(Regular Expression Extractor)

    接口需要关联时,可以通过正则表达式提取所需要的值 右键 添加 后置处理器 正则表达式提取器(Regular Expression Extractor) Apply to Main sample and sub-samples:匹配范围包括当前父取样器并覆盖子取样器 Main sample only:默认;匹配范围是当前父取样器 Sub-samples only :仅匹配子取样器

    2024年02月07日
    浏览(44)
  • ABAP SQL & CDSView Entity中使用正则RegEx表达式(Regular Expressions)

    DEMO_REGEX DEMO_REGEX_TOY SQL函数 语法 作用 执行逻辑 返回类型 CDS   View Entities ABAP   SQL LIKE_REGEXPR LIKE_REGEXPR(            PCRE = pcre,            VALUE = sql_exp1[,            CASE_SENSITIVE = case]) 检查字符串是否包含任何 PCRE命中 检查sql_exp是否包含任何   PCRE命中,是则返

    2024年01月24日
    浏览(37)
  • 《斯坦福数据挖掘教程·第三版》读书笔记(英文版)Chapter 12 Large-Scale Machine Learning

    来源:《斯坦福数据挖掘教程·第三版》对应的公开英文书和PPT Algorithms called “machine learning” not only summarize our data; they are perceived as learning a model or classifier from the data, and thus discover something about data that will be seen in the future. The term unsupervised refers to the fact that the input data does

    2024年02月10日
    浏览(54)
  • CMNet:Contrastive Magnification Network for Micro-Expression Recognition 阅读笔记

    AAAI 2023的一篇文章,东南大学几位老师的工作,用于做微表情识别中的运动增强工作, 以下是阅读时记录的笔记。 摘要: However,existing magnification strategies tend to use the features offacial images that include not only intensity clues as inten-sity features,leading to the intensity representation deficientof c

    2024年02月20日
    浏览(42)
  • chapter12:SpringBoot与检索

    Spring Boot与检索视频 我们的应用经常需要添加检索功能,开源的ElasticSearch是目前全文搜索引擎的首选。 他可以快速的存储、搜索和分析海量数据。SpringBoot通过整合Spring Data ElasticSearch为我们提供了非常便捷的检索功能支持。 ElasticSearch是一个分布式搜索服务,提供Restful API,

    2024年02月16日
    浏览(32)

觉得文章有用就打赏一下文章作者

支付宝扫一扫打赏

博客赞助

微信扫一扫打赏

请作者喝杯咖啡吧~博客赞助

支付宝扫一扫领取红包,优惠每天领

二维码1

领取红包

二维码2

领红包