💬 Networkx
networkxは、人やモノの関係性
📺 まず動画で見る(YouTube)
▶ 【最新版】Claude(クロード)完全解説!20以上の便利機能をこの動画1本で全て解説 ↗
※ jpskill.com 編集部が参考用に選んだ動画です。動画の内容と Skill の挙動は厳密には一致しないことがあります。
📜 元の英語説明(参考)
NetworkX is a Python package for creating, manipulating, and analyzing complex networks and graphs.
🇯🇵 日本人クリエイター向け解説
networkxは、人やモノの関係性
※ jpskill.com 編集部が日本のビジネス現場向けに補足した解説です。Skill本体の挙動とは独立した参考情報です。
下記のコマンドをコピーしてターミナル(Mac/Linux)または PowerShell(Windows)に貼り付けてください。 ダウンロード → 解凍 → 配置まで全自動。
mkdir -p ~/.claude/skills && cd ~/.claude/skills && curl -L -o networkx.zip https://jpskill.com/download/3205.zip && unzip -o networkx.zip && rm networkx.zip
$d = "$env:USERPROFILE\.claude\skills"; ni -Force -ItemType Directory $d | Out-Null; iwr https://jpskill.com/download/3205.zip -OutFile "$d\networkx.zip"; Expand-Archive "$d\networkx.zip" -DestinationPath $d -Force; ri "$d\networkx.zip"
完了後、Claude Code を再起動 → 普通に「動画プロンプト作って」のように話しかけるだけで自動発動します。
💾 手動でダウンロードしたい(コマンドが難しい人向け)
- 1. 下の青いボタンを押して
networkx.zipをダウンロード - 2. ZIPファイルをダブルクリックで解凍 →
networkxフォルダができる - 3. そのフォルダを
C:\Users\あなたの名前\.claude\skills\(Win)または~/.claude/skills/(Mac)へ移動 - 4. Claude Code を再起動
⚠️ ダウンロード・利用は自己責任でお願いします。当サイトは内容・動作・安全性について責任を負いません。
🎯 このSkillでできること
下記の説明文を読むと、このSkillがあなたに何をしてくれるかが分かります。Claudeにこの分野の依頼をすると、自動で発動します。
📦 インストール方法 (3ステップ)
- 1. 上の「ダウンロード」ボタンを押して .skill ファイルを取得
- 2. ファイル名の拡張子を .skill から .zip に変えて展開(macは自動展開可)
- 3. 展開してできたフォルダを、ホームフォルダの
.claude/skills/に置く- · macOS / Linux:
~/.claude/skills/ - · Windows:
%USERPROFILE%\.claude\skills\
- · macOS / Linux:
Claude Code を再起動すれば完了。「このSkillを使って…」と話しかけなくても、関連する依頼で自動的に呼び出されます。
詳しい使い方ガイドを見る →- 最終更新
- 2026-05-17
- 取得日時
- 2026-05-17
- 同梱ファイル
- 1
💬 こう話しかけるだけ — サンプルプロンプト
- › Networkx で、お客様への返信文を作って
- › Networkx を使って、社内向けアナウンスを書いて
- › Networkx で、メールテンプレートを整備して
これをClaude Code に貼るだけで、このSkillが自動発動します。
📖 Claude が読む原文 SKILL.md(中身を展開)
この本文は AI(Claude)が読むための原文(英語または中国語)です。日本語訳は順次追加中。
NetworkX
Overview
NetworkX is a Python package for creating, manipulating, and analyzing complex networks and graphs. Use this skill when working with network or graph data structures, including social networks, biological networks, transportation systems, citation networks, knowledge graphs, or any system involving relationships between entities.
When to Use This Skill
Invoke this skill when tasks involve:
- Creating graphs: Building network structures from data, adding nodes and edges with attributes
- Graph analysis: Computing centrality measures, finding shortest paths, detecting communities, measuring clustering
- Graph algorithms: Running standard algorithms like Dijkstra's, PageRank, minimum spanning trees, maximum flow
- Network generation: Creating synthetic networks (random, scale-free, small-world models) for testing or simulation
- Graph I/O: Reading from or writing to various formats (edge lists, GraphML, JSON, CSV, adjacency matrices)
- Visualization: Drawing and customizing network visualizations with matplotlib or interactive libraries
- Network comparison: Checking isomorphism, computing graph metrics, analyzing structural properties
Core Capabilities
1. Graph Creation and Manipulation
NetworkX supports four main graph types:
- Graph: Undirected graphs with single edges
- DiGraph: Directed graphs with one-way connections
- MultiGraph: Undirected graphs allowing multiple edges between nodes
- MultiDiGraph: Directed graphs with multiple edges
Create graphs by:
import networkx as nx
# Create empty graph
G = nx.Graph()
# Add nodes (can be any hashable type)
G.add_node(1)
G.add_nodes_from([2, 3, 4])
G.add_node("protein_A", type='enzyme', weight=1.5)
# Add edges
G.add_edge(1, 2)
G.add_edges_from([(1, 3), (2, 4)])
G.add_edge(1, 4, weight=0.8, relation='interacts')
Reference: See references/graph-basics.md for comprehensive guidance on creating, modifying, examining, and managing graph structures, including working with attributes and subgraphs.
2. Graph Algorithms
NetworkX provides extensive algorithms for network analysis:
Shortest Paths:
# Find shortest path
path = nx.shortest_path(G, source=1, target=5)
length = nx.shortest_path_length(G, source=1, target=5, weight='weight')
Centrality Measures:
# Degree centrality
degree_cent = nx.degree_centrality(G)
# Betweenness centrality
betweenness = nx.betweenness_centrality(G)
# PageRank
pagerank = nx.pagerank(G)
Community Detection:
from networkx.algorithms import community
# Detect communities
communities = community.greedy_modularity_communities(G)
Connectivity:
# Check connectivity
is_connected = nx.is_connected(G)
# Find connected components
components = list(nx.connected_components(G))
Reference: See references/algorithms.md for detailed documentation on all available algorithms including shortest paths, centrality measures, clustering, community detection, flows, matching, tree algorithms, and graph traversal.
3. Graph Generators
Create synthetic networks for testing, simulation, or modeling:
Classic Graphs:
# Complete graph
G = nx.complete_graph(n=10)
# Cycle graph
G = nx.cycle_graph(n=20)
# Known graphs
G = nx.karate_club_graph()
G = nx.petersen_graph()
Random Networks:
# Erdős-Rényi random graph
G = nx.erdos_renyi_graph(n=100, p=0.1, seed=42)
# Barabási-Albert scale-free network
G = nx.barabasi_albert_graph(n=100, m=3, seed=42)
# Watts-Strogatz small-world network
G = nx.watts_strogatz_graph(n=100, k=6, p=0.1, seed=42)
Structured Networks:
# Grid graph
G = nx.grid_2d_graph(m=5, n=7)
# Random tree
G = nx.random_tree(n=100, seed=42)
Reference: See references/generators.md for comprehensive coverage of all graph generators including classic, random, lattice, bipartite, and specialized network models with detailed parameters and use cases.
4. Reading and Writing Graphs
NetworkX supports numerous file formats and data sources:
File Formats:
# Edge list
G = nx.read_edgelist('graph.edgelist')
nx.write_edgelist(G, 'graph.edgelist')
# GraphML (preserves attributes)
G = nx.read_graphml('graph.graphml')
nx.write_graphml(G, 'graph.graphml')
# GML
G = nx.read_gml('graph.gml')
nx.write_gml(G, 'graph.gml')
# JSON
data = nx.node_link_data(G)
G = nx.node_link_graph(data)
Pandas Integration:
import pandas as pd
# From DataFrame
df = pd.DataFrame({'source': [1, 2, 3], 'target': [2, 3, 4], 'weight': [0.5, 1.0, 0.75]})
G = nx.from_pandas_edgelist(df, 'source', 'target', edge_attr='weight')
# To DataFrame
df = nx.to_pandas_edgelist(G)
Matrix Formats:
import numpy as np
# Adjacency matrix
A = nx.to_numpy_array(G)
G = nx.from_numpy_array(A)
# Sparse matrix
A = nx.to_scipy_sparse_array(G)
G = nx.from_scipy_sparse_array(A)
Reference: See references/io.md for complete documentation on all I/O formats including CSV, SQL databases, Cytoscape, DOT, and guidance on format selection for different use cases.
5. Visualization
Create clear and informative network visualizations:
Basic Visualization:
import matplotlib.pyplot as plt
# Simple draw
nx.draw(G, with_labels=True)
plt.show()
# With layout
pos = nx.spring_layout(G, seed=42)
nx.draw(G, pos=pos, with_labels=True, node_color='lightblue', node_size=500)
plt.show()
Customization:
# Color by degree
node_colors = [G.degree(n) for n in G.nodes()]
nx.draw(G, node_color=node_colors, cmap=plt.cm.viridis)
# Size by centrality
centrality = nx.betweenness_centrality(G)
node_sizes = [3000 * centrality[n] for n in G.nodes()]
nx.draw(G, node_size=node_sizes)
# Edge weights
edge_widths = [3 * G[u][v].get('weight', 1) for u, v in G.edges()]
nx.draw(G, width=edge_widths)
Layout Algorithms:
# Spring layout (force-directed)
pos = nx.spring_layout(G, seed=42)
# Circular layout
pos = nx.circular_layout(G)
# Kamada-Kawai layout
pos = nx.kamada_kawai_layout(G)
# Spectral layout
pos = nx.spectral_layout(G)
Publication Quality:
plt.figure(figsize=(12, 8))
pos = nx.spring_layout(G, seed=42)
nx.draw(G, pos=pos, node_color='lightblue', node_size=500,
edge_color='gray', with_labels=True, font_size=10)
plt.title('Network Visualization', fontsize=16)
plt.axis('off')
plt.tight_layout()
plt.savefig('network.png', dpi=300, bbox_inches='tight')
plt.savefig('network.pdf', bbox_inches='tight') # Vector format
Reference: See references/visualization.md for extensive documentation on visualization techniques including layout algorithms, customization options, interactive visualizations with Plotly and PyVis, 3D networks, and publication-quality figure creation.
Working with NetworkX
Installation
Ensure NetworkX is installed:
# Check if installed
import networkx as nx
print(nx.__version__)
# Install if needed (via bash)
# uv pip install networkx
# uv pip install networkx[default] # With optional dependencies
Common Workflow Pattern
Most NetworkX tasks follow this pattern:
-
Create or Load Graph:
# From scratch G = nx.Graph() G.add_edges_from([(1, 2), (2, 3), (3, 4)]) # Or load from file/data G = nx.read_edgelist('data.txt') -
Examine Structure:
print(f"Nodes: {G.number_of_nodes()}") print(f"Edges: {G.number_of_edges()}") print(f"Density: {nx.density(G)}") print(f"Connected: {nx.is_connected(G)}") -
Analyze:
# Compute metrics degree_cent = nx.degree_centrality(G) avg_clustering = nx.average_clustering(G) # Find paths path = nx.shortest_path(G, source=1, target=4) # Detect communities communities = community.greedy_modularity_communities(G) -
Visualize:
pos = nx.spring_layout(G, seed=42) nx.draw(G, pos=pos, with_labels=True) plt.show() -
Export Results:
# Save graph nx.write_graphml(G, 'analyzed_network.graphml') # Save metrics df = pd.DataFrame({ 'node': list(degree_cent.keys()), 'centrality': list(degree_cent.values()) }) df.to_csv('centrality_results.csv', index=False)
Important Considerations
Floating Point Precision: When graphs contain floating-point numbers, all results are inherently approximate due to precision limitations. This can affect algorithm outcomes, particularly in minimum/maximum computations.
Memory and Performance: Each time a script runs, graph data must be loaded into memory. For large networks:
- Use appropriate data structures (sparse matrices for large sparse graphs)
- Consider loading only necessary subgraphs
- Use efficient file formats (pickle for Python objects, compressed formats)
- Leverage approximate algorithms for very large networks (e.g.,
kparameter in centrality calculations)
Node and Edge Types:
- Nodes can be any hashable Python object (numbers, strings, tuples, custom objects)
- Use meaningful identifiers for clarity
- When removing nodes, all incident edges are automatically removed
Random Seeds: Always set random seeds for reproducibility in random graph generation and force-directed layouts:
G = nx.erdos_renyi_graph(n=100, p=0.1, seed=42)
pos = nx.spring_layout(G, seed=42)
Quick Reference
Basic Operations
# Create
G = nx.Graph()
G.add_edge(1, 2)
# Query
G.number_of_nodes()
G.number_of_edges()
G.degree(1)
list(G.neighbors(1))
# Check
G.has_node(1)
G.has_edge(1, 2)
nx.is_connected(G)
# Modify
G.remove_node(1)
G.remove_edge(1, 2)
G.clear()
Essential Algorithms
# Paths
nx.shortest_path(G, source, target)
nx.all_pairs_shortest_path(G)
# Centrality
nx.degree_centrality(G)
nx.betweenness_centrality(G)
nx.closeness_centrality(G)
nx.pagerank(G)
# Clustering
nx.clustering(G)
nx.average_clustering(G)
# Components
nx.connected_components(G)
nx.strongly_connected_components(G) # Directed
# Community
community.greedy_modularity_communities(G)
File I/O Quick Reference
# Read
nx.read_edgelist('file.txt')
nx.read_graphml('file.graphml')
nx.read_gml('file.gml')
# Write
nx.write_edgelist(G, 'file.txt')
nx.write_graphml(G, 'file.graphml')
nx.write_gml(G, 'file.gml')
# Pandas
nx.from_pandas_edgelist(df, 'source', 'target')
nx.to_pandas_edgelist(G)
Resources
This skill includes comprehensive reference documentation:
references/graph-basics.md
Detailed guide on graph types, creating and modifying graphs, adding nodes and edges, managing attributes, examining structure, and working with subgraphs.
references/algorithms.md
Complete coverage of NetworkX algorithms including shortest paths, centrality measures, connectivity, clustering, community detection, flow algorithms, tree algorithms, matching, coloring, isomorphism, and graph traversal.
references/generators.md
Comprehensive documentation on graph generators including classic graphs, random models (Erdős-Rényi, Barabási-Albert, Watts-Strogatz), lattices, trees, social network models, and specialized generators.
references/io.md
Complete guide to reading and writing graphs in various formats: edge lists, adjacency lists, GraphML, GML, JSON, CSV, Pandas DataFrames, NumPy arrays, SciPy sparse matrices, database integration, and format selection guidelines.
references/visualization.md
Extensive documentation on visualization techniques including layout algorithms, customizing node and edge appearance, labels, interactive visualizations with Plotly and PyVis, 3D networks, bipartite layouts, and creating publication-quality figures.
Additional Resources
- Official Documentation: https://networkx.org/documentation/latest/
- Tutorial: https://networkx.org/documentation/latest/tutorial.html
- Gallery: https://networkx.org/documentation/latest/auto_examples/index.html
- GitHub: https://github.com/networkx/networkx
Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.