Dylan  Iqbal

Dylan Iqbal

1624593924

Node Serialport: Access Serial Ports with JavaScript

Node Serialport

Access serial ports with JavaScript. Linux, OSX and Windows. Welcome your robotic JavaScript overlords. Better yet, program them!

Go to https://serialport.io/ to learn more, find guides and api documentation.

Quick Links

Serialport

  • serialport Chances are you’re looking for the serialport package which provides a good set of defaults for most projects. However it is quite easy to mix and match the parts of serialport you need.

Bindings

The Bindings provide a low level interface to work with your serialport. It is possible to use them alone but it’s usually easier to use them with an interface.

Interfaces

Interfaces take a binding object and provide a different API on top of it. Currently we only ship a Node Stream Interface.

Parsers

Parsers are used to take raw binary data and transform them into usable messages. This may include tasks such as converting the data to text, emitting useful chunks of data when they have been fully received, or even validating protocols.

Parsers are traditionally Transform streams, but Duplex streams and other non stream interfaces are acceptable.

Developing

Developing node serialport projects

  1. Clone this repo git clone git@github.com:serialport/node-serialport.git
  2. Run npm install to setup local package dependencies (run this any time you depend on a package local to this repo)
  3. Run npm test to ensure everything is working properly
  4. Run npm run generate to generate a new project
  5. Add dev dependencies to the root package.json and package dependencies to the package’s one.

Developing Docs

See https://github.com/node-serialport/website

License

SerialPort packages are all MIT licensed and all it’s dependencies are MIT licensed.

Code of Conduct

SerialPort follows the Nodebots Code of Conduct. While the code is MIT licensed participation in the community has some rules to make this a good place to work and learn.

TLDR

  • Be respectful.
  • Abusive behavior is never tolerated.
  • Data published to NodeBots is hosted at the discretion of the service administrators, and may be removed.
  • Don’t build evil robots.
  • Violations of this code may result in swift and permanent expulsion from the NodeBots community.

Governance and Community

SerialPort is currently employees a governance with a group of maintainers, committers and contributors, all fixing bugs and adding features and improving documentation. You need not apply to work on SerialPort, all are welcome to join, build, and maintain this project.

  • A Contributor is any individual creating or commenting on an issue or pull request. By participating, this is you.
  • Committers are contributors who have been given write access to the repository. They can review and merge pull requests.
  • Maintainers are committers representing the required technical expertise to resolve rare disputes.

If you have a PR that improves the project people in any or all of the above people will help you land it.

Maintainers

Contributors

This project exists thanks to all the people who contribute. [Contribute].

Backers

Thank you to all our backers! 🙏 [Become a backer]

Sponsors

Support this project by becoming a sponsor. Your logo will show up here with a link to your website. [Become a sponsor]

Download Details:

Author: serialport
The Demo/Documentation: View The Demo/Documentation
Download Link: Download The Source Code
Official Website: https://github.com/serialport/node-serialport
License: MIT

#javascript #node #web-development

What is GEEK

Buddha Community

Node Serialport: Access Serial Ports with JavaScript
Vincent Lab

Vincent Lab

1605177320

How to Communicate With the Serial Port in Node.js

In this video, I will show you how to communicate with the serial port in Node.js

#serialport #arduino #nodejs #serial port #communicate with serial port #hardware javascript

Dylan  Iqbal

Dylan Iqbal

1624593924

Node Serialport: Access Serial Ports with JavaScript

Node Serialport

Access serial ports with JavaScript. Linux, OSX and Windows. Welcome your robotic JavaScript overlords. Better yet, program them!

Go to https://serialport.io/ to learn more, find guides and api documentation.

Quick Links

Serialport

  • serialport Chances are you’re looking for the serialport package which provides a good set of defaults for most projects. However it is quite easy to mix and match the parts of serialport you need.

Bindings

The Bindings provide a low level interface to work with your serialport. It is possible to use them alone but it’s usually easier to use them with an interface.

Interfaces

Interfaces take a binding object and provide a different API on top of it. Currently we only ship a Node Stream Interface.

Parsers

Parsers are used to take raw binary data and transform them into usable messages. This may include tasks such as converting the data to text, emitting useful chunks of data when they have been fully received, or even validating protocols.

Parsers are traditionally Transform streams, but Duplex streams and other non stream interfaces are acceptable.

Developing

Developing node serialport projects

  1. Clone this repo git clone git@github.com:serialport/node-serialport.git
  2. Run npm install to setup local package dependencies (run this any time you depend on a package local to this repo)
  3. Run npm test to ensure everything is working properly
  4. Run npm run generate to generate a new project
  5. Add dev dependencies to the root package.json and package dependencies to the package’s one.

Developing Docs

See https://github.com/node-serialport/website

License

SerialPort packages are all MIT licensed and all it’s dependencies are MIT licensed.

Code of Conduct

SerialPort follows the Nodebots Code of Conduct. While the code is MIT licensed participation in the community has some rules to make this a good place to work and learn.

TLDR

  • Be respectful.
  • Abusive behavior is never tolerated.
  • Data published to NodeBots is hosted at the discretion of the service administrators, and may be removed.
  • Don’t build evil robots.
  • Violations of this code may result in swift and permanent expulsion from the NodeBots community.

Governance and Community

SerialPort is currently employees a governance with a group of maintainers, committers and contributors, all fixing bugs and adding features and improving documentation. You need not apply to work on SerialPort, all are welcome to join, build, and maintain this project.

  • A Contributor is any individual creating or commenting on an issue or pull request. By participating, this is you.
  • Committers are contributors who have been given write access to the repository. They can review and merge pull requests.
  • Maintainers are committers representing the required technical expertise to resolve rare disputes.

If you have a PR that improves the project people in any or all of the above people will help you land it.

Maintainers

Contributors

This project exists thanks to all the people who contribute. [Contribute].

Backers

Thank you to all our backers! 🙏 [Become a backer]

Sponsors

Support this project by becoming a sponsor. Your logo will show up here with a link to your website. [Become a sponsor]

Download Details:

Author: serialport
The Demo/Documentation: View The Demo/Documentation
Download Link: Download The Source Code
Official Website: https://github.com/serialport/node-serialport
License: MIT

#javascript #node #web-development

田辺  亮介

田辺 亮介

1662351030

Python中最常用的數據結構

在任何編程語言中,我們都需要處理數據。現在,我們需要處理數據的最基本的事情之一就是以有組織的方式有效地存儲、管理和訪問它,以便我們可以在需要時將其用於我們的目的。數據結構用於滿足我們所有的需求。

什麼是數據結構?

數據結構是編程語言的基本構建塊。它旨在提供一種系統的方法來滿足本文前面提到的所有要求。Python 中的數據結構是List、Tuple、Dictionary 和 Set。它們被視為Python 中的隱式或內置數據結構。我們可以使用這些數據結構並對它們應用多種方法來管理、關聯、操作和利用我們的數據。

我們還有用戶定義的自定義數據結構,即StackQueueTreeLinked ListGraph。它們允許用戶完全控制其功能並將其用於高級編程目的。但是,我們將專注於本文的內置數據結構。

隱式數據結構 Python

隱式數據結構 Python

列表

列表幫助我們以多種數據類型順序存儲數據。它們類似於數組,除了它們可以同時存儲不同的數據類型,如字符串和數字。列表中的每個項目或元素都有一個指定的索引。由於Python 使用基於 0 的索引,因此第一個元素的索引為 0,並且繼續計數。列表的最後一個元素以 -1 開頭,可用於訪問從最後一個到第一個的元素。要創建一個列表,我們必須將項目寫在方括號內

關於列表要記住的最重要的事情之一是它們是可變的。這僅僅意味著我們可以通過使用索引運算符直接訪問它作為賦值語句的一部分來更改列表中的元素。我們還可以對列表執行操作以獲得所需的輸出。讓我們通過代碼來更好地理解列表和列表操作。

1. 創建列表

#creating the list
my_list = ['p', 'r', 'o', 'b', 'e']
print(my_list)

輸出

['p', 'r', 'o', 'b', 'e']

2. 訪問列表中的項目

#accessing the list 
 
#accessing the first item of the list
my_list[0]

輸出

'p'
#accessing the third item of the list
my_list[2]
'o'

3. 向列表中添加新項目

#adding item to the list
my_list + ['k']

輸出

['p', 'r', 'o', 'b', 'e', 'k']

4. 移除物品

#removing item from the list
#Method 1:
 
#Deleting list items
my_list = ['p', 'r', 'o', 'b', 'l', 'e', 'm']
 
# delete one item
del my_list[2]
 
print(my_list)
 
# delete multiple items
del my_list[1:5]
 
print(my_list)

輸出

['p', 'r', 'b', 'l', 'e', 'm']
['p', 'm']
#Method 2:
 
#with remove fucntion
my_list = ['p','r','o','k','l','y','m']
my_list.remove('p')
 
 
print(my_list)
 
#Method 3:
 
#with pop function
print(my_list.pop(1))
 
# Output: ['r', 'k', 'l', 'y', 'm']
print(my_list)

輸出

['r', 'o', 'k', 'l', 'y', 'm']
o
['r', 'k', 'l', 'y', 'm']

5.排序列表

#sorting of list in ascending order
 
my_list.sort()
print(my_list)

輸出

['k', 'l', 'm', 'r', 'y']
#sorting of list in descending order
 
my_list.sort(reverse=True)
print(my_list)

輸出

['y', 'r', 'm', 'l', 'k']

6. 查找列表的長度

#finding the length of list
 
len(my_list)

輸出

5

元組

元組與列表非常相似,關鍵區別在於元組是 IMMUTABLE,與列表不同。一旦我們創建了一個元組或有一個元組,我們就不能改變它裡面的元素。但是,如果我們在元組中有一個元素,它本身就是一個列表,那麼我們只能在該列表中訪問或更改。要創建一個元組,我們必須在括號內寫入項目。像列表一樣,我們有類似的方法可以用於元組。讓我們通過一些代碼片段來理解使用元組。

1. 創建一個元組

#creating of tuple
 
my_tuple = ("apple", "banana", "guava")
print(my_tuple)

輸出

('apple', 'banana', 'guava')

2. 從元組訪問項目

#accessing first element in tuple
 
my_tuple[1]

輸出

'banana'

3. 元組的長度

#for finding the lenght of tuple
 
len(my_tuple)

輸出

3

4. 將元組轉換為列表

#converting tuple into a list
 
my_tuple_list = list(my_tuple)
type(my_tuple_list)

輸出

list

5. 反轉元組

#Reversing a tuple
 
tuple(sorted(my_tuple, reverse=True)) 

輸出

('guava', 'banana', 'apple')

6. 對元組進行排序

#sorting tuple in ascending order
 
tuple(sorted(my_tuple)) 

輸出

('apple', 'banana', 'guava')

7. 從元組中刪除元素

為了從元組中刪除元素,我們首先將元組轉換為列表,就像我們在上面的方法之一(第 4 點)中所做的那樣,然後遵循列表的相同過程,並顯式刪除整個元組,只需使用del聲明

字典

字典是一個集合,它只是意味著它用於存儲帶有某個鍵的值並提取給定鍵的值。我們可以將其視為一組鍵:值對 和字典中的每個都應該是唯一的,以便我們可以相應地訪問相應的

字典由包含鍵:值對的花括號 { }表示。字典中的每一對都以逗號分隔。字典中的元素是無序的,當我們訪問或存儲它們時,序列並不重要。

它們是可變的,這意味著我們可以在字典中添加、刪除或更新元素。以下是一些代碼示例,可以更好地理解 python 中的字典。

需要注意的重要一點是,我們不能將可變對像用作字典中的鍵。因此,列表不允許作為字典中的鍵。

1. 創建字典

#creating a dictionary
 
my_dict = {
    1:'Delhi',
    2:'Patna',
    3:'Bangalore'
}
print(my_dict)

輸出

{1: 'Delhi', 2: 'Patna', 3: 'Bangalore'}

這裡,整數是字典的鍵,與整數相關的城市名稱是字典的值。

2. 從字典中訪問項目

#access an item
 
print(my_dict[1])

輸出

'Delhi'

3. 字典的長度

#length of the dictionary
 
len(my_dict)

輸出

3

4. 對字典進行排序

#sorting based on the key 
 
Print(sorted(my_dict.items()))
 
 
#sorting based on the values of dictionary
 
print(sorted(my_dict.values()))

輸出

[(1, 'Delhi'), (2, 'Bangalore'), (3, 'Patna')]
 
['Bangalore', 'Delhi', 'Patna']

5. 在字典中添加元素

#adding a new item in dictionary 
 
my_dict[4] = 'Lucknow'
print(my_dict)

輸出

{1: 'Delhi', 2: 'Patna', 3: 'Bangalore', 4: 'Lucknow'}

6.從字典中刪除元素

#for deleting an item from dict using the specific key
 
my_dict.pop(4)
print(my_dict)
 
#for deleting last item from the list
 
my_dict.popitem()
 
#for clearing the dictionary
 
my_dict.clear()
print(my_dict)

輸出

{1: 'Delhi', 2: 'Patna', 3: 'Bangalore'}
(3, 'Bangalore')
{}

Set 是 python 中的另一種數據類型,它是一個沒有重複元素的無序集合。集合的常見用例是刪除重複值並執行成員資格測試。花括號set()函數可用於創建集合。要記住的一件事是,在創建空集時,我們必須使用set(),。後者創建一個空字典。 not { }

以下是一些代碼示例,可幫助您更好地理解 Python 中的集合。

1. 創建一個 集合

#creating set
 
my_set = {"apple", "mango", "strawberry", "apple"}
print(my_set)

輸出

{'apple', 'strawberry', 'mango'}

2. 訪問集合中的項目

#to test for an element inside the set
 
"apple" in my_set

輸出

True

3. 集合的長度

print(len(my_set))

輸出

3

4. 對集合進行排序

print(sorted(my_set))

輸出

['apple', 'mango', 'strawberry']

5. 在Set中添加元素

my_set.add("guava")
print(my_set)

輸出

{'apple', 'guava', 'mango', 'strawberry'}

6. 從 Set 中移除元素

my_set.remove("mango")
print(my_set)

輸出

{'apple', 'guava', 'strawberry'}

結論

在本文中,我們瀏覽了 Python 中最常用的數據結構,並了解了與它們相關的各種方法。

鏈接:https ://www.askpython.com/python/data

#python #datastructures

August  Larson

August Larson

1662480600

The Most Commonly Used Data Structures in Python

In any programming language, we need to deal with data.  Now, one of the most fundamental things that we need to work with the data is to store, manage, and access it efficiently in an organized way so it can be utilized whenever required for our purposes. Data Structures are used to take care of all our needs.

What are Data Structures?

Data Structures are fundamental building blocks of a programming language. It aims to provide a systematic approach to fulfill all the requirements mentioned previously in the article. The data structures in Python are List, Tuple, Dictionary, and Set. They are regarded as implicit or built-in Data Structures in Python. We can use these data structures and apply numerous methods to them to manage, relate, manipulate and utilize our data.

We also have custom Data Structures that are user-defined namely Stack, Queue, Tree, Linked List, and Graph. They allow users to have full control over their functionality and use them for advanced programming purposes. However, we will be focussing on the built-in Data Structures for this article.

Implicit Data Structures Python

Implicit Data Structures Python

LIST

Lists help us to store our data sequentially with multiple data types. They are comparable to arrays with the exception that they can store different data types like strings and numbers at the same time. Every item or element in a list has an assigned index. Since Python uses 0-based indexing, the first element has an index of 0 and the counting goes on. The last element of a list starts with -1 which can be used to access the elements from the last to the first. To create a list we have to write the items inside the square brackets.

One of the most important things to remember about lists is that they are Mutable. This simply means that we can change an element in a list by accessing it directly as part of the assignment statement using the indexing operator.  We can also perform operations on our list to get desired output. Let’s go through the code to gain a better understanding of list and list operations.

1. Creating a List

#creating the list
my_list = ['p', 'r', 'o', 'b', 'e']
print(my_list)

Output

['p', 'r', 'o', 'b', 'e']

2. Accessing items from the List

#accessing the list 
 
#accessing the first item of the list
my_list[0]

Output

'p'
#accessing the third item of the list
my_list[2]
'o'

3. Adding new items to the list

#adding item to the list
my_list + ['k']

Output

['p', 'r', 'o', 'b', 'e', 'k']

4. Removing Items

#removing item from the list
#Method 1:
 
#Deleting list items
my_list = ['p', 'r', 'o', 'b', 'l', 'e', 'm']
 
# delete one item
del my_list[2]
 
print(my_list)
 
# delete multiple items
del my_list[1:5]
 
print(my_list)

Output

['p', 'r', 'b', 'l', 'e', 'm']
['p', 'm']
#Method 2:
 
#with remove fucntion
my_list = ['p','r','o','k','l','y','m']
my_list.remove('p')
 
 
print(my_list)
 
#Method 3:
 
#with pop function
print(my_list.pop(1))
 
# Output: ['r', 'k', 'l', 'y', 'm']
print(my_list)

Output

['r', 'o', 'k', 'l', 'y', 'm']
o
['r', 'k', 'l', 'y', 'm']

5. Sorting List

#sorting of list in ascending order
 
my_list.sort()
print(my_list)

Output

['k', 'l', 'm', 'r', 'y']
#sorting of list in descending order
 
my_list.sort(reverse=True)
print(my_list)

Output

['y', 'r', 'm', 'l', 'k']

6. Finding the length of a List

#finding the length of list
 
len(my_list)

Output

5

TUPLE

Tuples are very similar to lists with a key difference that a tuple is IMMUTABLE, unlike a list. Once we create a tuple or have a tuple, we are not allowed to change the elements inside it. However, if we have an element inside a tuple, which is a list itself, only then we can access or change within that list. To create a tuple, we have to write the items inside the parenthesis. Like the lists, we have similar methods which can be used with tuples. Let’s go through some code snippets to understand using tuples.

1. Creating a Tuple

#creating of tuple
 
my_tuple = ("apple", "banana", "guava")
print(my_tuple)

Output

('apple', 'banana', 'guava')

2. Accessing items from a Tuple

#accessing first element in tuple
 
my_tuple[1]

Output

'banana'

3. Length of a Tuple

#for finding the lenght of tuple
 
len(my_tuple)

Output

3

4. Converting a Tuple to List

#converting tuple into a list
 
my_tuple_list = list(my_tuple)
type(my_tuple_list)

Output

list

5. Reversing a Tuple

#Reversing a tuple
 
tuple(sorted(my_tuple, reverse=True)) 

Output

('guava', 'banana', 'apple')

6. Sorting a Tuple

#sorting tuple in ascending order
 
tuple(sorted(my_tuple)) 

Output

('apple', 'banana', 'guava')

7. Removing elements from Tuple

For removing elements from the tuple, we first converted the tuple into a list as we did in one of our methods above( Point No. 4) then followed the same process of the list, and explicitly removed an entire tuple, just using the del statement.

DICTIONARY

Dictionary is a collection which simply means that it is used to store a value with some key and extract the value given the key. We can think of it as a set of key: value pairs and every key in a dictionary is supposed to be unique so that we can access the corresponding values accordingly.

A dictionary is denoted by the use of curly braces { } containing the key: value pairs. Each of the pairs in a dictionary is comma separated. The elements in a dictionary are un-ordered the sequence does not matter while we are accessing or storing them.

They are MUTABLE which means that we can add, delete or update elements in a dictionary. Here are some code examples to get a better understanding of a dictionary in python.

An important point to note is that we can’t use a mutable object as a key in the dictionary. So, a list is not allowed as a key in the dictionary.

1. Creating a Dictionary

#creating a dictionary
 
my_dict = {
    1:'Delhi',
    2:'Patna',
    3:'Bangalore'
}
print(my_dict)

Output

{1: 'Delhi', 2: 'Patna', 3: 'Bangalore'}

Here, integers are the keys of the dictionary and the city name associated with integers are the values of the dictionary.

2. Accessing items from a Dictionary

#access an item
 
print(my_dict[1])

Output

'Delhi'

3. Length of a Dictionary

#length of the dictionary
 
len(my_dict)

Output

3

4. Sorting a Dictionary

#sorting based on the key 
 
Print(sorted(my_dict.items()))
 
 
#sorting based on the values of dictionary
 
print(sorted(my_dict.values()))

Output

[(1, 'Delhi'), (2, 'Bangalore'), (3, 'Patna')]
 
['Bangalore', 'Delhi', 'Patna']

5. Adding elements in Dictionary

#adding a new item in dictionary 
 
my_dict[4] = 'Lucknow'
print(my_dict)

Output

{1: 'Delhi', 2: 'Patna', 3: 'Bangalore', 4: 'Lucknow'}

6. Removing elements from Dictionary

#for deleting an item from dict using the specific key
 
my_dict.pop(4)
print(my_dict)
 
#for deleting last item from the list
 
my_dict.popitem()
 
#for clearing the dictionary
 
my_dict.clear()
print(my_dict)

Output

{1: 'Delhi', 2: 'Patna', 3: 'Bangalore'}
(3, 'Bangalore')
{}

SET

Set is another data type in python which is an unordered collection with no duplicate elements. Common use cases for a set are to remove duplicate values and to perform membership testing. Curly braces or the set() function can be used to create sets. One thing to keep in mind is that while creating an empty set, we have to use set(), and not { }. The latter creates an empty dictionary.

Here are some code examples to get a better understanding of sets in python.

1. Creating a Set

#creating set
 
my_set = {"apple", "mango", "strawberry", "apple"}
print(my_set)

Output

{'apple', 'strawberry', 'mango'}

2. Accessing items from a Set

#to test for an element inside the set
 
"apple" in my_set

Output

True

3. Length of a Set

print(len(my_set))

Output

3

4. Sorting a Set

print(sorted(my_set))

Output

['apple', 'mango', 'strawberry']

5. Adding elements in Set

my_set.add("guava")
print(my_set)

Output

{'apple', 'guava', 'mango', 'strawberry'}

6. Removing elements from Set

my_set.remove("mango")
print(my_set)

Output

{'apple', 'guava', 'strawberry'}

Conclusion

In this article, we went through the most commonly used data structures in python and also saw various methods associated with them.

Link: https://www.askpython.com/python/data

#python #datastructures

Thierry  Perret

Thierry Perret

1662365538

Les Structures De Données Les Plus Couramment Utilisées En Python

Dans tout langage de programmation, nous devons traiter des données. Maintenant, l'une des choses les plus fondamentales dont nous avons besoin pour travailler avec les données est de les stocker, de les gérer et d'y accéder efficacement de manière organisée afin qu'elles puissent être utilisées chaque fois que cela est nécessaire pour nos besoins. Les structures de données sont utilisées pour répondre à tous nos besoins.

Que sont les Structures de Données ?

Les structures de données sont les blocs de construction fondamentaux d'un langage de programmation. Il vise à fournir une approche systématique pour répondre à toutes les exigences mentionnées précédemment dans l'article. Les structures de données en Python sont List, Tuple, Dictionary et Set . Ils sont considérés comme des structures de données implicites ou intégrées dans Python . Nous pouvons utiliser ces structures de données et leur appliquer de nombreuses méthodes pour gérer, relier, manipuler et utiliser nos données.

Nous avons également des structures de données personnalisées définies par l'utilisateur, à savoir Stack , Queue , Tree , Linked List et Graph . Ils permettent aux utilisateurs d'avoir un contrôle total sur leurs fonctionnalités et de les utiliser à des fins de programmation avancées. Cependant, nous nous concentrerons sur les structures de données intégrées pour cet article.

Structures de données implicites Python

Structures de données implicites Python

LISTE

Les listes nous aident à stocker nos données de manière séquentielle avec plusieurs types de données. Ils sont comparables aux tableaux à l'exception qu'ils peuvent stocker différents types de données comme des chaînes et des nombres en même temps. Chaque élément ou élément d'une liste a un index attribué. Étant donné que Python utilise l' indexation basée sur 0 , le premier élément a un index de 0 et le comptage continue. Le dernier élément d'une liste commence par -1 qui peut être utilisé pour accéder aux éléments du dernier au premier. Pour créer une liste, nous devons écrire les éléments à l'intérieur des crochets .

L'une des choses les plus importantes à retenir à propos des listes est qu'elles sont Mutable . Cela signifie simplement que nous pouvons modifier un élément dans une liste en y accédant directement dans le cadre de l'instruction d'affectation à l'aide de l'opérateur d'indexation. Nous pouvons également effectuer des opérations sur notre liste pour obtenir la sortie souhaitée. Passons en revue le code pour mieux comprendre les opérations de liste et de liste.

1. Créer une liste

#creating the list
my_list = ['p', 'r', 'o', 'b', 'e']
print(my_list)

Production

['p', 'r', 'o', 'b', 'e']

2. Accéder aux éléments de la liste

#accessing the list 
 
#accessing the first item of the list
my_list[0]

Production

'p'
#accessing the third item of the list
my_list[2]
'o'

3. Ajouter de nouveaux éléments à la liste

#adding item to the list
my_list + ['k']

Production

['p', 'r', 'o', 'b', 'e', 'k']

4. Suppression d'éléments

#removing item from the list
#Method 1:
 
#Deleting list items
my_list = ['p', 'r', 'o', 'b', 'l', 'e', 'm']
 
# delete one item
del my_list[2]
 
print(my_list)
 
# delete multiple items
del my_list[1:5]
 
print(my_list)

Production

['p', 'r', 'b', 'l', 'e', 'm']
['p', 'm']
#Method 2:
 
#with remove fucntion
my_list = ['p','r','o','k','l','y','m']
my_list.remove('p')
 
 
print(my_list)
 
#Method 3:
 
#with pop function
print(my_list.pop(1))
 
# Output: ['r', 'k', 'l', 'y', 'm']
print(my_list)

Production

['r', 'o', 'k', 'l', 'y', 'm']
o
['r', 'k', 'l', 'y', 'm']

5. Liste de tri

#sorting of list in ascending order
 
my_list.sort()
print(my_list)

Production

['k', 'l', 'm', 'r', 'y']
#sorting of list in descending order
 
my_list.sort(reverse=True)
print(my_list)

Production

['y', 'r', 'm', 'l', 'k']

6. Trouver la longueur d'une liste

#finding the length of list
 
len(my_list)

Production

5

TUPLE

Les tuples sont très similaires aux listes avec une différence clé qu'un tuple est IMMUTABLE , contrairement à une liste. Une fois que nous avons créé un tuple ou que nous avons un tuple, nous ne sommes pas autorisés à modifier les éléments qu'il contient. Cependant, si nous avons un élément à l'intérieur d'un tuple, qui est une liste elle-même, alors seulement nous pouvons accéder ou changer dans cette liste. Pour créer un tuple, nous devons écrire les éléments entre parenthèses . Comme les listes, nous avons des méthodes similaires qui peuvent être utilisées avec des tuples. Passons en revue quelques extraits de code pour comprendre l'utilisation des tuples.

1. Créer un tuple

#creating of tuple
 
my_tuple = ("apple", "banana", "guava")
print(my_tuple)

Production

('apple', 'banana', 'guava')

2. Accéder aux éléments d'un Tuple

#accessing first element in tuple
 
my_tuple[1]

Production

'banana'

3. Longueur d'un tuple

#for finding the lenght of tuple
 
len(my_tuple)

Production

3

4. Conversion d'un tuple en liste

#converting tuple into a list
 
my_tuple_list = list(my_tuple)
type(my_tuple_list)

Production

list

5. Inverser un tuple

#Reversing a tuple
 
tuple(sorted(my_tuple, reverse=True)) 

Production

('guava', 'banana', 'apple')

6. Trier un tuple

#sorting tuple in ascending order
 
tuple(sorted(my_tuple)) 

Production

('apple', 'banana', 'guava')

7. Supprimer des éléments de Tuple

Pour supprimer des éléments du tuple, nous avons d'abord converti le tuple en une liste comme nous l'avons fait dans l'une de nos méthodes ci-dessus (point n ° 4), puis avons suivi le même processus de la liste et avons explicitement supprimé un tuple entier, juste en utilisant le del déclaration .

DICTIONNAIRE

Dictionary est une collection, ce qui signifie simplement qu'il est utilisé pour stocker une valeur avec une clé et extraire la valeur donnée à la clé. Nous pouvons le considérer comme un ensemble de clés : des paires de valeurs et chaque clé d'un dictionnaire est supposée être unique afin que nous puissions accéder aux valeurs correspondantes en conséquence.

Un dictionnaire est indiqué par l'utilisation d' accolades { } contenant les paires clé : valeur. Chacune des paires d'un dictionnaire est séparée par des virgules. Les éléments d'un dictionnaire ne sont pas ordonnés , la séquence n'a pas d'importance pendant que nous y accédons ou que nous les stockons.

Ils sont MUTABLES ce qui signifie que nous pouvons ajouter, supprimer ou mettre à jour des éléments dans un dictionnaire. Voici quelques exemples de code pour mieux comprendre un dictionnaire en python.

Un point important à noter est que nous ne pouvons pas utiliser un objet mutable comme clé dans le dictionnaire. Ainsi, une liste n'est pas autorisée comme clé dans le dictionnaire.

1. Création d'un dictionnaire

#creating a dictionary
 
my_dict = {
    1:'Delhi',
    2:'Patna',
    3:'Bangalore'
}
print(my_dict)

Production

{1: 'Delhi', 2: 'Patna', 3: 'Bangalore'}

Ici, les entiers sont les clés du dictionnaire et le nom de ville associé aux entiers sont les valeurs du dictionnaire.

2. Accéder aux éléments d'un dictionnaire

#access an item
 
print(my_dict[1])

Production

'Delhi'

3. Longueur d'un dictionnaire

#length of the dictionary
 
len(my_dict)

Production

3

4. Trier un dictionnaire

#sorting based on the key 
 
Print(sorted(my_dict.items()))
 
 
#sorting based on the values of dictionary
 
print(sorted(my_dict.values()))

Production

[(1, 'Delhi'), (2, 'Bangalore'), (3, 'Patna')]
 
['Bangalore', 'Delhi', 'Patna']

5. Ajout d'éléments dans le dictionnaire

#adding a new item in dictionary 
 
my_dict[4] = 'Lucknow'
print(my_dict)

Production

{1: 'Delhi', 2: 'Patna', 3: 'Bangalore', 4: 'Lucknow'}

6. Suppression d'éléments du dictionnaire

#for deleting an item from dict using the specific key
 
my_dict.pop(4)
print(my_dict)
 
#for deleting last item from the list
 
my_dict.popitem()
 
#for clearing the dictionary
 
my_dict.clear()
print(my_dict)

Production

{1: 'Delhi', 2: 'Patna', 3: 'Bangalore'}
(3, 'Bangalore')
{}

POSITIONNER

Set est un autre type de données en python qui est une collection non ordonnée sans éléments en double. Les cas d'utilisation courants d'un ensemble consistent à supprimer les valeurs en double et à effectuer des tests d'appartenance. Les accolades ou la set()fonction peuvent être utilisées pour créer des ensembles. Une chose à garder à l'esprit est que lors de la création d'un ensemble vide, nous devons utiliser set(), et . Ce dernier crée un dictionnaire vide. not { }

Voici quelques exemples de code pour mieux comprendre les ensembles en python.

1. Créer un ensemble

#creating set
 
my_set = {"apple", "mango", "strawberry", "apple"}
print(my_set)

Production

{'apple', 'strawberry', 'mango'}

2. Accéder aux éléments d'un ensemble

#to test for an element inside the set
 
"apple" in my_set

Production

True

3. Longueur d'un ensemble

print(len(my_set))

Production

3

4. Trier un ensemble

print(sorted(my_set))

Production

['apple', 'mango', 'strawberry']

5. Ajout d'éléments dans Set

my_set.add("guava")
print(my_set)

Production

{'apple', 'guava', 'mango', 'strawberry'}

6. Suppression d'éléments de Set

my_set.remove("mango")
print(my_set)

Production

{'apple', 'guava', 'strawberry'}

Conclusion

Dans cet article, nous avons passé en revue les structures de données les plus couramment utilisées en python et avons également vu diverses méthodes qui leur sont associées.

Lien : https://www.askpython.com/python/data

#python #datastructures