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Home Backend Development Python Tutorial Data Structures in Python -Stack

Data Structures in Python -Stack

Jan 19, 2025 am 02:20 AM

Data Structures in Python -Stack

The stack in Python, like other programming languages, is a linear data structure that follows the last-in-first-out (LIFO) principle. This means that the last element added will be removed first.

Stack scene understanding:

Imagine a stack of plates and you can only add or remove the top plate. Common operations include "push" (adding an element), "pop" (removing the top element), and "peek" (viewing the top element without removing it).

Common operations of stack:

Common operations of the stack are as follows:

  • Push: Add an element to the top of the stack.
  • Pop: Remove and return the top element of the stack.
  • Peek: Return the top element of the stack without removing it.
  • is_empty: Check whether the stack is empty.
  • size: Returns the number of elements in the stack.

How to create a stack:

To create a stack in Python, we can use different methods according to our needs. Here's how to create and use stacks using different methods:

Usage list:

Lists in Python can act as stacks because they support append() for adding elements and pop() for removing the last element.

# 使用列表實現(xiàn)棧
stack = []

# 向棧中壓入元素
stack.append(1)
stack.append(2)
stack.append(3)

print("壓入元素后的棧:", stack)

# 從棧中彈出元素
popped_element = stack.pop()
print("彈出的元素:", popped_element)
print("彈出后的棧:", stack)

# 查看棧頂元素
if stack:
    print("棧頂元素:", stack[-1])
else:
    print("棧為空。")

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