mirror of
https://github.com/phuryn/pm-skills.git
synced 2026-06-10 21:44:56 +03:00
2.7 KiB
2.7 KiB
description, argument-hint
| description | argument-hint |
|---|---|
| Generate realistic dummy datasets for testing — CSV, JSON, SQL inserts, or Python scripts | <description of the data you need> |
/generate-data -- Test Data Generator
Create realistic dummy datasets for development, testing, demos, or prototyping. Outputs as ready-to-use files in your preferred format.
Invocation
/generate-data 1000 users with names, emails, plan tier, signup date, and activity score
/generate-data E-commerce orders dataset: products, customers, timestamps, amounts
/generate-data Sample data matching this schema: [paste table definition]
Workflow
Step 1: Define the Dataset
Understand:
- What entities? (users, orders, events, products, etc.)
- What columns? (with data types and constraints)
- How many rows?
- Any relationships between tables?
- Any specific distributions? (e.g., "80% should be on the free plan")
- Any realistic constraints? (emails should be unique, dates should be chronological)
Step 2: Generate the Data
Apply the dummy-dataset skill:
- Create a Python script that generates the dataset
- Use realistic-looking data (not random strings): proper names, valid email formats, real-seeming dates
- Respect constraints: unique IDs, foreign key relationships, chronological ordering
- Apply specified distributions
- Execute the script and produce the output file
Step 3: Deliver
Output in the requested format (or ask):
- CSV: Most common, works everywhere
- JSON: For API testing or frontend development
- SQL INSERT: For populating test databases
- Python script: For reproducible generation (user can tweak and re-run)
## Generated Dataset: [Description]
**Rows**: [count]
**Columns**: [list]
**Format**: [CSV / JSON / SQL / Python]
### Schema
| Column | Type | Constraints | Distribution |
|--------|------|-----------|-------------|
### Sample (first 5 rows)
[Preview of the data]
### Files
- [data file]
- [generator script, if applicable]
Save data file and generator script to the user's workspace.
Step 4: Offer Follow-ups
- "Want me to add more columns or increase the dataset size?"
- "Should I create related tables (e.g., orders for these users)?"
- "Want me to write test scenarios that use this data?"
- "Should I create SQL queries to analyze this dataset?"
Notes
- Always provide the generator script so the user can regenerate with different parameters
- For demo datasets, make the data tell a story (e.g., seasonal trends, a retention problem, a power user segment)
- Respect realistic cardinality: 1000 users don't have 1000 unique cities
- For financial data, use realistic price distributions — not uniform random
- Never include real personal data — all names, emails, and identifiers must be fake