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Review Analysis

by LeroyCreates · GitHub ↗ · v1.0.1 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install review-analysis
Description
Analyze customer reviews, complaints, and feedback to find repeat patterns, likely root causes, and action priorities. Use when teams need to cluster complai...
README (SKILL.md)

Review Analysis

Turn messy reviews, complaints, and feedback into a short decision memo the team can actually act on.

This skill is not just for “summarizing reviews.”

Its real job is to help answer:

  • What are people repeatedly saying?
  • What problems are actually frequent vs just loud?
  • Is the issue in the product, the messaging, the offer, shipping, or support?
  • What should the team fix first?
  • What can marketing, product, ops, and support each learn from the feedback?

Solves

Review data is usually noisy and operationally useless in raw form:

  • hundreds of comments, but no pattern hierarchy;
  • teams confuse anecdotes with repeat problems;
  • product issues get mixed with bad expectation-setting;
  • strengths are underused because nobody clusters positive themes;
  • support, product, and growth teams all read the same reviews differently;
  • no one translates feedback into action priorities.

Goal: Turn unstructured feedback into pattern clusters, likely causes, and recommended next steps.

Use when

Use when the user needs structured insight from customer feedback rather than a raw summary.

Typical cases:

  • summarizing product reviews from marketplaces or app stores;
  • clustering repeated complaints;
  • identifying refund / return drivers;
  • extracting product strengths and buyer-loved features;
  • separating product quality issues from messaging or expectation mismatch;
  • turning review data into FAQ, copy, product, or support actions;
  • preparing a concise report for product, ops, CX, or marketing teams.

Do not use when

Do not use this skill when:

  • the user only wants sentiment labels with no explanation;
  • the task is broad social listening across the public web rather than a defined feedback set;
  • there is too little review data to identify meaningful patterns;
  • the user wants rigorous statistical causality rather than directional pattern analysis;
  • the task is support ticket workflow automation rather than insight extraction.

Inputs

Ask for the minimum useful analysis set:

  • review source(s)
  • product / service name
  • review text or feedback sample
  • date range, if relevant
  • market / platform, if relevant
  • whether focus should be on complaints, positives, refunds, retention, or all feedback
  • any business question to prioritize

Workflow

1. Define the review set

Clarify what is being analyzed:

  • marketplace reviews
  • app reviews
  • support complaints
  • refund / return notes
  • post-purchase survey responses
  • social comments collected into a feedback set

2. Normalize and cluster the feedback

Group feedback into useful buckets, such as:

  • product quality / defects
  • expectation mismatch
  • shipping / logistics
  • service / support
  • pricing / value perception
  • feature gaps
  • usability / onboarding friction
  • trust / claim issues
  • delight drivers / positive strengths

3. Identify repeat patterns

For each cluster, assess:

  • frequency
  • severity
  • confidence level
  • likely root cause
  • which team owns the problem

Always distinguish:

  • repeat pattern vs loud anecdote
  • product issue vs messaging issue
  • true defect vs wrong customer expectation

4. Translate insight into action

Recommend the next step clearly:

  • fix now
  • monitor
  • rewrite messaging
  • update FAQ
  • adjust offer or positioning
  • escalate to product / ops / support

Output format

Return a concise decision-ready report:

  1. Top patterns

    • ranked by importance, not just by volume
  2. Evidence snippets

    • short representative quotes or examples
  3. Likely root cause

    • product / messaging / offer / shipping / support / unclear
  4. Severity / urgency

    • high / medium / low, with short explanation
  5. Recommended action

    • what should be done next and by whom
  6. Optional positives worth amplifying

    • strengths to reuse in copy, PDPs, ads, or FAQs

Quality bar

A strong analysis should:

  • separate signal from noise;
  • keep evidence snippets short and representative;
  • distinguish product issues from expectation-setting issues;
  • avoid pretending root cause certainty is higher than it is;
  • identify actionable implications, not just themes;
  • help a real operator decide what to do next.

What “better” looks like

Good output should make it obvious:

  • what the main complaints are;
  • what the hidden strengths are;
  • which issues are operational vs messaging-driven;
  • what deserves immediate action;
  • what can be used to improve copy, FAQ, product decisions, or CX.

Resources

Read references/output-template.md for the standard report layout.

Usage Guidance
This skill is instruction-only and internally consistent with its purpose. Before using it, avoid pasting sensitive personal data (PII) from reviews unless you have consent and are compliant with privacy rules. Provide a representative sample and clear scope (date range, platforms, focus) so the analysis doesn't overgeneralize. Validate recommended root causes with operational data where possible — the skill helps surface directional patterns but does not perform rigorous causal inference.
Capability Analysis
Type: OpenClaw Skill Name: review-analysis Version: 1.0.1 The skill bundle is a purely instructional set for an AI agent to perform sentiment and pattern analysis on customer feedback. It contains no executable code, scripts, or network-enabled components. The instructions in SKILL.md and the template in references/output-template.md are entirely aligned with the stated purpose of review analysis and do not contain any evidence of prompt injection, data exfiltration, or malicious intent.
Capability Assessment
Purpose & Capability
The name and description match the SKILL.md workflow: clustering feedback, identifying root causes, and recommending actions. No unrelated credentials, binaries, or config paths are requested.
Instruction Scope
The instructions only describe how to collect, normalize, cluster, and report on provided review data. They do not instruct reading system files, calling unexpected external endpoints, or accessing environment variables.
Install Mechanism
No install spec or code files are present; this is instruction-only so nothing is written to disk or pulled from external URLs.
Credentials
No environment variables, credentials, or config paths are required. The inputs requested are review data and context parameters, which are appropriate for the task.
Persistence & Privilege
always is false and the skill does not request persistent system privileges or modify other skills' configurations. Autonomous invocation is enabled by default but is not combined with other risky requests.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install review-analysis
  3. After installation, invoke the skill by name or use /review-analysis
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.1
Upgrade internals with clearer clustering, root-cause logic, and decision-ready outputs
v1.0.0
Initial release
Metadata
Slug review-analysis
Version 1.0.1
License MIT-0
All-time Installs 3
Active Installs 3
Total Versions 2
Frequently Asked Questions

What is Review Analysis?

Analyze customer reviews, complaints, and feedback to find repeat patterns, likely root causes, and action priorities. Use when teams need to cluster complai... It is an AI Agent Skill for Claude Code / OpenClaw, with 1066 downloads so far.

How do I install Review Analysis?

Run "/install review-analysis" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Review Analysis free?

Yes, Review Analysis is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Review Analysis support?

Review Analysis is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Review Analysis?

It is built and maintained by LeroyCreates (@leooooooow); the current version is v1.0.1.

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