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customer-feedback-analysis
Analyze NPS, CSAT, and qualitative customer feedback to extract themes, identify trends, and generate actionable insight reports.
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Analyze NPS, CSAT, and qualitative customer feedback to extract themes, identify trends, and generate actionable insight reports.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
| name | customer-feedback-analysis |
| description | Analyze NPS, CSAT, and qualitative customer feedback to extract themes, identify trends, and generate actionable insight reports. |
| license | MIT |
| metadata | {"author":"community","version":"1.0"} |
Transform raw customer feedback from NPS surveys, CSAT responses, support interactions, and app store reviews into structured insights. This skill extracts recurring themes from open-text responses, calculates quantitative score distributions, identifies emerging trends over time, and produces reports that connect customer sentiment to specific product areas and business outcomes.
Collect feedback data — Aggregate feedback from all available sources: NPS survey responses (score + open text), CSAT ratings from support interactions, in-app feedback widgets, app store reviews, social media mentions, G2/Capterra reviews, and sales call notes. Tag each response with metadata: date, customer segment, plan tier, account tenure, and source channel. Ensure consistent schema across all sources.
Clean and normalize — Deduplicate responses from the same customer across channels. Standardize rating scales (convert 1-5 CSAT to 1-10 for cross-comparison). Strip PII from open-text responses. Handle multilingual responses by detecting language and translating to English while preserving the original. Remove bot/spam responses using pattern detection (identical text, suspicious timing, single-word noise).
Extract themes from open-text responses — Apply topic modeling to cluster open-text feedback into coherent themes. Common theme categories include: product reliability, ease of use, specific feature feedback, pricing/value perception, support quality, onboarding experience, and competitive comparison. Assign each response to one or more themes with a confidence score. Pull representative verbatim quotes for each theme.
Calculate quantitative scores — Compute aggregate metrics: NPS (% Promoters minus % Detractors), CSAT average, and theme frequency distribution. Break scores down by segment (plan tier, industry, account size, tenure) to identify which cohorts are most and least satisfied. Calculate statistical significance for segment differences to avoid acting on noise.
Identify trends — Compare current period metrics against previous periods (month-over-month, quarter-over-quarter). Flag themes with significant volume changes (up or down 20%+ from baseline). Detect emerging themes that appear for the first time or cross a frequency threshold. Correlate sentiment shifts with product releases, pricing changes, or market events.
Generate insight report — Produce a structured report with: executive summary (3-5 key takeaways), quantitative scorecard, theme breakdown with representative quotes, trend analysis, segment comparison, and recommended actions. Each recommendation should be tied to a specific theme and prioritized by frequency and business impact.
Provide feedback data (CSV, JSON, or describe the dataset) and specify the analysis scope. The agent returns a structured insight report.
Analyze our Q4 NPS survey results (850 responses). Break down scores by plan
tier, extract the top themes from detractor comments, and identify any new
themes that weren't present in Q3.
Input: 850 NPS survey responses from Q4, segmented by plan tier.
Output:
Executive Summary:
Score Distribution:
| Segment | Promoters (9-10) | Passives (7-8) | Detractors (0-6) | NPS | Responses |
|---|---|---|---|---|---|
| Enterprise | 68% | 16% | 16% | +52 | 180 |
| Pro | 52% | 27% | 21% | +31 | 420 |
| Starter | 38% | 38% | 24% | +14 | 250 |
| Overall | 51% | 28% | 21% | +32 | 850 |
Theme Breakdown (Detractor Comments, n=179):
| Theme | Frequency | Change vs Q3 | Representative Quotes |
|---|---|---|---|
| Slow reporting | 38% | +16pp | "Dashboards take 20+ seconds to load with large datasets. This is killing our team's productivity." |
| Pricing concerns | 24% | -3pp | "The price jump from Pro to Enterprise is too steep. We need the features but can't justify 3x the cost." |
| Missing integrations | 18% | -5pp | "Still no native Salesforce integration. We've been asking for over a year." |
| Mobile experience | 12% | NEW | "I can't review dashboards on my phone during commute. Competitors have solid mobile apps." |
| Complex setup | 8% | -8pp | "Initial configuration took our team 3 weeks. Onboarding docs are outdated." |
Recommended Actions:
Input: 1,200 app store reviews from the past 6 months (iOS and Android combined).
Output:
Overall Sentiment: 3.8★ average (iOS: 4.1★, Android: 3.4★)
Sentiment by Star Rating:
Feature Request Extraction (from 3★ and above reviews):
| Feature Request | Mentions | Platform | Sample Quote |
|---|---|---|---|
| Offline mode | 87 | Both | "I travel a lot and need to access my data without WiFi." |
| Dark mode | 64 | Both | "Using this at night is blinding. Please add dark mode." |
| Widget support | 43 | iOS | "Would love a home screen widget to see my daily stats." |
| Export to PDF | 38 | Both | "I need to share reports with people who don't have accounts." |
| Android stability | 112 | Android | "Crashes every time I try to edit a dashboard. Pixel 8, Android 14." |
Critical Finding: Android rating (3.4★) drags overall score down. 72% of 1-2★ reviews are from Android users. Top complaint is crash on dashboard edit (Samsung and Pixel devices, Android 14+). Fixing this single bug could lift Android rating by an estimated 0.4 stars.
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