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目錄
1. Using Dictionaries to Model Graphs
2. Using Classes for More Complex Graphs
3. Using External Libraries Like NetworkX
4. Choosing the Right Representation
首頁 後端開發(fā) Python教學(xué) Python中的圖是什麼?我如何代表它們?

Python中的圖是什麼?我如何代表它們?

Jun 23, 2025 am 12:54 AM
Python圖 圖表示

Python中表示圖的方法有三種:使用字典、使用類以及使用NetworkX庫。第一,使用字典可靈活表示圖,適用於中小型圖,例如graph = {'A': ['B', 'C'], 'B': ['A', 'D'], ...};第二,使用類能組織更複雜的功能,如添加邊、權(quán)重或元數(shù)據(jù),適合大型應(yīng)用如路徑查找;第三,使用NetworkX庫支持複雜操作和可視化,內(nèi)置多種算法,適合研究和數(shù)據(jù)分析項(xiàng)目。選擇時(shí)應(yīng)根據(jù)需求權(quán)衡簡單性、結(jié)構(gòu)化與功能性。

What are graphs in Python, and how do I represent them?

Graphs in Python are used to represent relationships between objects — like connections in a network, links between web pages, or even friendships in a social media platform. They're made up of nodes (or vertices) and edges that connect those nodes. Representing graphs in Python isn't built-in like lists or dictionaries, but there are several straightforward ways to do it depending on what you need.


1. Using Dictionaries to Model Graphs

A common and flexible way to represent graphs is with a dictionary , where each key is a node, and the value is a list of connected nodes.

For example:

 graph = {
    'A': ['B', 'C'],
    'B': ['A', 'D'],
    'C': ['A', 'D'],
    'D': ['B', 'C']
}

This represents an undirected graph — if A is connected to B, then B is also connected to A.
If you want a directed graph , just make sure the connections aren't necessarily mutual.

This method works well for small to medium-sized graphs and is easy to read and debug.


2. Using Classes for More Complex Graphs

If your graph needs more features — like weighted edges, direction, or additional metadata — using a class-based approach makes things more organized.

Here's a simple example:

 class Graph:
    def __init__(self):
        self.graph = {}

    def add_edge(self, node, neighbor):
        self.graph.setdefault(node, []).append(neighbor)

    def show_graph(self):
        print(self.graph)

You can expand this class to support weights, directions, or even visualization tools later on. This is useful when building larger applications like pathfinding algorithms or recommendation systems.


3. Using External Libraries Like NetworkX

For more advanced use cases — like finding shortest paths, checking connectivity, or drawing graphs visually — NetworkX is a popular Python library designed specifically for working with graphs.

To install:

 pip install networkx

Then create and visualize a graph like this:

 import networkx as nx
import matplotlib.pyplot as plt

G = nx.Graph()
G.add_edge('A', 'B')
G.add_edge('B', 'C')

nx.draw(G, with_labels=True)
plt.show()
  • It supports directed, undirected, and multi-edge graphs.
  • Comes with many built-in algorithms.
  • Great for research, data analysis, or visual-heavy projects.

4. Choosing the Right Representation

Which method should you pick?

  • ? Use a dictionary if you're learning or working on a simple project.
  • ? Go with a custom class if you need structure and flexibility.
  • ? Reach for NetworkX if you're doing complex operations or visualizations.

Each has its place. For example, if you're solving a maze or modeling a social network, the right choice depends on whether you need speed, simplicity, or extra functionality.


That's basically how you work with graphs in Python. The core idea is simple — nodes and edges — but how you model them can vary based on your needs.

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