From xiaohongshu-complete-skills
Analyzes Xiaohongshu content and account metrics including exposure, engagement, conversion, growth, and audience insights to optimize performance and inform strategy using Creator Center and Qiangua data.
npx claudepluginhub vivy-yi/xiaohongshu-skills --plugin xiaohongshu-complete-skillsThis skill uses the workspace's default tool permissions.
Data analytics is the systematic analysis of Xiaohongshu account and content metrics to understand performance, identify patterns, and make informed decisions that optimize growth and engagement.
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Data analytics is the systematic analysis of Xiaohongshu account and content metrics to understand performance, identify patterns, and make informed decisions that optimize growth and engagement.
Use when:
Do NOT use when:
Before (guessing without data):
❌ "I think my audience likes fashion content"
❌ "This post should do well because I worked hard on it"
❌ "Let me try this topic and see what happens"
After (data-driven decisions):
✅ "My top 5 posts are all skincare tutorials - audience prefers educational content"
✅ "Posts published at 8pm get 3x more engagement than 2pm"
✅ "Before-and-after format averages 15% engagement vs 8% for other formats"
5 Core Metrics Framework:
| Metric | What It Measures | Good Benchmark | Analysis Tool |
|---|---|---|---|
| Views/Exposure | Content reach | 500+ for new accounts | Xiaohongshu Creator Center |
| Engagement Rate | (Likes+Comments+Shares)/Views | 8-12% average | Excel / Qiangua |
| Save Rate | Content value | 3-5% is good | Creator Center |
| Follower Growth | Account growth | 5-10% monthly | Creator Center |
| Peak Hours | Best posting time | 7-9pm for most | Qiangua / Huitun |
Export data from:
Xiaohongshu Creator Center (native, free)
Qiangua Data (recommended, freemium)
Create Excel/Google Sheets with tabs:
Tab 1: Content Performance
| Date | Title | Views | Likes | Comments | Shares | Saves | Followers | Engagement Rate |
|------|-------|-------|-------|----------|--------|-------|-----------|----------------|
Tab 2: Weekly Summary
| Week | Total Posts | Avg Views | Avg Engagement | New Followers | Top Performing Post |
|------|-------------|-----------|----------------|---------------|-------------------|
Tab 3: Audience Insights
| Date | Age Group | Gender | Location | Active Hours | Top Interests |
|------|------------|--------|----------|---------------|----------------|
Content Analysis:
Audience Analysis:
Transform data into decisions:
Question → Data → Action:
Q: Why did engagement drop this week?
A: Views stable but engagement rate fell from 10% to 6%
→ Check: Content type shift? Topics changed? Timing different?
→ Action: Return to top-performing content topics next week
Q: Which content brings most followers?
A: Skincare tutorials average 12 new followers per post
→ Action: Create 3 more tutorial posts this month
Q: When should I post for maximum reach?
A: 7-9pm gets 3x more views than 2-5pm
→ Action: Schedule all posts for 7-9pm timeframe
Update content strategy based on findings:
| Mistake | Why Happens | Fix |
|---|---|---|
| Analyzing too frequently | Impatience | Weekly data collection, monthly analysis |
| Focusing on vanity metrics | Views are visible | Engagement rate and followers matter more |
| Not acting on insights | Analysis paralysis | Create 3 action items from each analysis |
| Ignoring audience data | Focus on content | User demographics reveal WHY content works |
| Comparing to mega-accounts | Unrealistic benchmarks | Compare to similar-sized accounts in niche |
Data-driven optimization results (real examples):
Key insight: Accounts using weekly data analysis grow 3-5x faster than those posting blindly.
Related Skills: