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social-sentiment

Sentiment analysis for brands and products across Twitter, Reddit, and Instagram. Monitor public opinion, track brand reputation, detect PR crises, surface complaints and praise at scale — analyze 70K+ posts with bulk CSV export and Python/pandas. Social listening and brand monitoring powered by 1.5B+ indexed posts.

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安装方式

直接复制以下提示词,发送给你的 AI 助手即可完成安装。

请先检查是否已安装 SkillHub 商店,若未安装,请根据 https://skillhub-1388575217.cos.ap-guangzhou.myqcloud.com/install/skillhub.md 安装 SkillHub 商店,然后安装 social-sentiment 技能。 若已安装,则直接安装 social-sentiment 技能。

Overview

Skill Key
atyachin/social-sentiment
Author
atyachin
Source Repo
openclaw/skills
Version
-
Source Path
skills/atyachin/social-sentiment
Latest Commit SHA
1e860babe45ac01357d0261fc7f0ad5956a2b177

Extracted Content

SKILL.md excerpt

# Social Sentiment

**Analyze brand sentiment from live social conversations at scale.**

Surfaces themes, flags viral complaints, compares competitors. Analyzes 1K-70K posts via bulk CSV + Python.

## Setup

Run `xpoz-setup` skill. Verify: `mcporter call xpoz.checkAccessKeyStatus`

## 4-Step Process

### Step 1: Search Platforms

Queries: (1) `"Brand"` (2) `"Brand" AND (slow OR buggy)` (3) `"Brand" AND (love OR amazing)`

```bash
mcporter call xpoz.getTwitterPostsByKeywords query='"Notion"' startDate="YYYY-MM-DD"
mcporter call xpoz.checkOperationStatus operationId="op_..." # Poll 5s
```

Repeat for Reddit/Instagram. Default: 30 days.

### Step 2: Download CSVs

Use `dataDumpExportOperationId`, poll with `checkOperationStatus` for download URL (up to 64K rows).

### Step 3: Analyze

Python/pandas:

```python
import pandas as pd
df = pd.read_csv('/tmp/twitter-sentiment.csv')

POSITIVE = ['love', 'amazing', 'best', 'recommend']
NEGATIVE = ['hate', 'terrible', 'worst', 'broken']

def classify(text):
    t = str(text).lower()
    pos = sum(1 for k in POSITIVE if k in t)
    neg = sum(1 for k in NEGATIVE if k in t)
    return 'positive' if pos>neg else ('negative' if neg>pos else 'neutral')

df['sentiment'] = df['text'].apply(classify)
```

Extract themes, find viral by engagement. Customize keywords.

### Step 4: Report

```
Sentiment: 72/100 | Posts: 14,832
😊 58% | 😠 24% | 😐 18%

Themes: Performance (2K, 81% neg), UX (1.8K, 72% pos)
Viral: [Top 10]
```

Score: Engagement-weighted, 0-100. Include insights.

## Tips

Download full CSVs | Reddit = honest | Store `data/social-sentiment/` for trends

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