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User Personas

Skill Active

Create refined user personas from research data — 3 personas with JTBD, pains, gains, and unexpected insights. Use when building personas from survey data, creating user profiles from research, or segmenting users for product decisions.

Purpose

To generate refined, actionable user personas from research data that capture user diversity and guide product decisions.

Features

  • Creates 3 distinct user personas
  • Extracts jobs-to-be-done, pains, gains, and insights
  • Analyzes diverse research data formats (CSV, transcripts)
  • Grounds personas in actual research findings

Use Cases

  • Building personas from survey data
  • Creating user profiles from research
  • Segmenting users for product decisions
  • Guiding product development with user insights

Non-Goals

  • Making assumptions not grounded in data
  • Creating overlapping or purely demographic personas
  • Conducting primary user interviews (though it can prepare scripts)

Maintenance

  • warning:Commit recencyThe last commit was over 3 months ago (April 22, 2026), indicating potential unmaintained status.

Trust

  • warning:Issues AttentionThere are 8 open issues and 0 closed issues in the last 90 days, indicating slow or no maintainer response to opened issues.

Versioning

  • warning:Release ManagementNo version is declared in the SKILL.md frontmatter or manifest, and the installation instructions for Claude Code reference 'main', making version pinning impossible.

Compliance

  • info:GDPRThe skill processes user-provided research data. While it doesn't explicitly handle personal data, it's important to ensure data submitted is appropriately anonymized or consent is obtained.

Installation

First, add the marketplace

/plugin marketplace add phuryn/pm-skills
/plugin install pm-market-research@pm-skills

Quality Score

79 /100
Analyzed 1 day ago

Trust Signals

Last commit22 days ago
Stars11.2k
LicenseMIT
Status
View Source

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