‹ 首页

dummy-dataset

@phuryn · 收录于 1 周前 · 上游提交 1 周前★ 社区精选

Generate realistic dummy datasets for testing with customizable columns, constraints, and output formats (CSV, JSON, SQL, Python script). Use when creating test data, building mock datasets, or generating sample data for development and demos.

适合你,如果需要快速生成结构化的测试数据用于开发或演示

/ 通过 npx 安装 校验哈希
npx oh-my-skill add phuryn/pm-skills/dummy-dataset
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- phuryn/pm-skills/dummy-dataset
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify phuryn/pm-skills/dummy-dataset
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
23265GitHub stars
~777上下文体积 · 单文件
索引托管

怎么用

商店整理自技能原文 · 版本 18468a9 · 表述以原文为准
它做什么

装上后,Claude 能根据你指定的列、行数和业务规则,生成逼真的测试数据,并输出为 CSV、JSON、SQL 或 Python 脚本文件。

什么时候触发

当你需要创建测试数据、构建模拟数据集或为开发演示生成样本数据时,可以要求 Claude 生成虚拟数据集。

装好后可以这样说
Claude 会按你的要求生成 CSV 文件。
Claude 会输出 JSON 格式的数据。
Claude 会生成可直接运行的 SQL 脚本。
技能原文 SKILL.md作者撰写 · MIT · 18468a9

Dummy Dataset Generation

Generate realistic dummy datasets for testing with customizable columns, constraints, and output formats (CSV, JSON, SQL, Python script). Creates executable scripts or direct data files for immediate use.

Use when: Creating test data, generating sample datasets, building realistic mock data for development, or populating test environments.

Arguments:

  • $PRODUCT: The product or system name
  • $DATASET_TYPE: Type of data (e.g., customer feedback, transactions, user profiles)
  • $ROWS: Number of rows to generate (default: 100)
  • $COLUMNS: Specific columns or fields to include
  • $FORMAT: Output format (CSV, JSON, SQL, Python script)
  • $CONSTRAINTS: Additional constraints or business rules
Step-by-Step Process
  1. Identify dataset type - Understand the data domain
  2. Define column specifications - Names, data types, and value ranges
  3. Determine row count - How many sample records needed
  4. Select output format - CSV, JSON, SQL INSERT, or Python script
  5. Apply realistic patterns - Ensure data looks authentic and valid
  6. Add business constraints - Respect business logic and relationships
  7. Generate or script data - Create executable output
  8. Validate output - Ensure data quality and completeness
Template: Python Script Output
import csv
import json
from datetime import datetime, timedelta
import random

# Configuration
ROWS = $ROWS
FILENAME = "$DATASET_TYPE.csv"

# Column definitions with realistic value generators
columns = {
    "id": "auto-increment",
    "name": "first_last_name",
    "email": "email",
    "created_at": "timestamp",
    # Add more columns...
}

def generate_dataset():
    """Generate realistic dummy dataset"""
    data = []
    for i in range(1, ROWS + 1):
        record = {
            "id": f"U{i:06d}",
            # Generate values based on column definitions
        }
        data.append(record)
    return data

def save_as_csv(data, filename):
    """Save dataset as CSV"""
    with open(filename, 'w', newline='') as f:
        writer = csv.DictWriter(f, fieldnames=data[0].keys())
        writer.writeheader()
        writer.writerows(data)

if __name__ == "__main__":
    dataset = generate_dataset()
    save_as_csv(dataset, FILENAME)
    print(f"Generated {len(dataset)} records in {FILENAME}")
Example Dataset Specification

Dataset Type: Customer Feedback

Columns:

  • feedback_id (auto-increment, U001, U002...)
  • customer_name (realistic names)
  • email (valid email format)
  • feedback_date (dates last 90 days)
  • rating (1-5 stars)
  • category (Bug, Feature Request, Complaint, Praise)
  • text (realistic feedback)
  • product (electronics, clothing, home)

Constraints:

  • Ratings skewed: 40% 5-star, 30% 4-star, 20% 3-star, 10% 1-2 star
  • Bug category only with ratings 1-3
  • Feature requests only with ratings 3-5
  • Email domains realistic (gmail, yahoo, company.com)
Output Deliverables
  • Ready-to-execute Python script OR direct data file
  • CSV file with proper headers and formatting
  • JSON file with valid structure and types
  • SQL INSERT statements for database population
  • Data validation and constraint compliance
  • Realistic, business-appropriate values
  • Documentation of data generation logic
  • Quick-start instructions for using the dataset
Output Formats

CSV: Flat tabular format, easy to import into spreadsheets and databases

JSON: Nested structure, ideal for APIs and NoSQL databases

SQL: INSERT statements, directly executable on relational databases

Python Script: Executable generator for custom or large datasets

按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

评论

登录即可评论;带「已验证安装」的,是发布者名下有本店的安装或持有记录。