tiktok-research
Research high-performing TikTok videos from tracked accounts using Apify's TikTok Scraper. Identifies outlier content, analyzes top 5 videos with AI, and generates reports with actionable hook formulas. Use when asked to: - Find trending TikTok content in a niche - Research what's performing on TikTok - Identify high-performing video patterns - Analyze competitors' TikTok content - Generate content ideas from TikTok trends - Run TikTok research - Find viral TikToks - Analyze hooks and content structure Triggers: "tiktok research", "tt research", "find trending tiktoks", "analyze tiktok accounts", "what's working on tiktok", "content research tiktok", "tiktok analysis", "tiktok trends"
How do I install this agent skill?
npx skills add https://github.com/bradautomates/head-of-content --skill tiktok-researchIs this agent skill safe to install?
- Gen Agent Trust Hubpass
The skill is a legitimate research tool that uses the Apify API to fetch and analyze TikTok data. It follows security best practices by utilizing environment variables for API keys. The only identified risk is a low-severity indirect prompt injection surface, which is inherent to skills that process external social media content using AI models.
- Socketpass
No alerts
- Snykwarn
Risk: MEDIUM · No issues
- Runlayerwarn
2/3 files flagged
- ZeroLeakspass
Score: 93/100 · 2 sections analyzed
What does this agent skill do?
TikTok Research
Research high-performing TikTok videos, identify outliers, and analyze top video content for hooks and structure.
Prerequisites
APIFY_TOKENenvironment variable or in.envGEMINI_API_KEYenvironment variable or in.envapify-clientandgoogle-genaiPython packages- Accounts configured in
.claude/context/tiktok-accounts.md
Verify setup:
python3 -c "
import os
try:
from dotenv import load_dotenv
load_dotenv()
except ImportError:
pass
from apify_client import ApifyClient
from google import genai
assert os.environ.get('APIFY_TOKEN'), 'APIFY_TOKEN not set'
assert os.environ.get('GEMINI_API_KEY'), 'GEMINI_API_KEY not set'
" && echo "Prerequisites OK"
Workflow
1. Create Run Folder
RUN_FOLDER="tiktok-research/$(date +%Y-%m-%d_%H%M%S)" && mkdir -p "$RUN_FOLDER" && echo "$RUN_FOLDER"
2. Fetch Content
python3 .claude/skills/tiktok-research/scripts/fetch_tiktok.py \
--days 30 \
--limit 50 \
--sorting latest \
--output {RUN_FOLDER}/raw.json
Parameters:
--days: Days back to search (default: 30)--limit: Max videos per account (default: 50)--sorting: "latest", "popular", or "oldest" (default: latest)--usernames: Override accounts file with specific usernames
3. Identify Outliers
python3 .claude/skills/tiktok-research/scripts/analyze_posts.py \
--input {RUN_FOLDER}/raw.json \
--output {RUN_FOLDER}/outliers.json \
--threshold 2.0
Output JSON contains:
total_videos: Number of videos analyzedoutlier_count: Number of outliers foundtopics: Top hashtags, sounds, and keywordsaccounts: List of accounts analyzedoutliers: Array of outlier videos with engagement metrics
4. Analyze Top Videos with AI
python3 .claude/skills/video-content-analyzer/scripts/analyze_videos.py \
--input {RUN_FOLDER}/outliers.json \
--output {RUN_FOLDER}/video-analysis.json \
--platform tiktok \
--max-videos 5
Extracts from each video:
- Hook technique and replicable formula
- Content structure and sections
- Retention techniques
- CTA strategy
See the video-content-analyzer skill for full output schema and hook/format types.
5. Generate Report
Read {RUN_FOLDER}/outliers.json and {RUN_FOLDER}/video-analysis.json, then generate {RUN_FOLDER}/report.md.
Report Structure:
# TikTok Research Report
Generated: {date}
## Top Performing Hooks
Ranked by engagement. Use these formulas for your content.
### Hook 1: {technique} - @{username}
- **Opening**: "{opening_line}"
- **Why it works**: {attention_grab}
- **Replicable Formula**: {replicable_formula}
- **Engagement**: {diggCount} likes, {commentCount} comments, {playCount} views
- [Watch Video]({webVideoUrl})
[Repeat for each analyzed video]
## Content Structure Patterns
| Video | Format | Pacing | Key Retention Techniques |
|-------|--------|--------|--------------------------|
| @username | {format} | {pacing} | {techniques} |
## CTA Strategies
| Video | CTA Type | CTA Text | Placement |
|-------|----------|----------|-----------|
| @username | {type} | "{cta_text}" | {placement} |
## All Outliers
| Rank | Username | Likes | Comments | Shares | Views | Engagement Rate |
|------|----------|-------|----------|--------|-------|-----------------|
[List all outliers with metrics and links]
## Trending Topics
### Top Hashtags
[From outliers.json topics.hashtags]
### Top Sounds
[From outliers.json topics.sounds]
### Top Keywords
[From outliers.json topics.keywords]
## Actionable Takeaways
[Synthesize patterns into 4-6 specific recommendations]
## Accounts Analyzed
[List accounts]
Focus on actionable insights. The "Top Performing Hooks" section with replicable formulas should be prominent.
Quick Reference
Full pipeline:
RUN_FOLDER="tiktok-research/$(date +%Y-%m-%d_%H%M%S)" && mkdir -p "$RUN_FOLDER" && \
python3 .claude/skills/tiktok-research/scripts/fetch_tiktok.py -o "$RUN_FOLDER/raw.json" && \
python3 .claude/skills/tiktok-research/scripts/analyze_posts.py -i "$RUN_FOLDER/raw.json" -o "$RUN_FOLDER/outliers.json" && \
python3 .claude/skills/video-content-analyzer/scripts/analyze_videos.py -i "$RUN_FOLDER/outliers.json" -o "$RUN_FOLDER/video-analysis.json" -p tiktok
Then read both JSON files and generate the report.
Engagement Metrics
Engagement Score: likes + (3 x comments) + (2 x shares) + (2 x saves) + (0.05 x views)
Outlier Detection: Videos with engagement rate > mean + (threshold x std_dev)
Engagement Rate: (score / followers) x 100
TikTok-Specific Fields
diggCount: Likes/heartsshareCount: SharesplayCount: Video viewscommentCount: CommentscollectCount: Saves/bookmarksauthorFollowers: Creator's follower countmusicName: Sound used in videomusicOriginal: Whether sound is original
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/bradautomates/head-of-content/tiktok-research">View tiktok-research on skillZs</a>