apify-brand-reputation-monitoring
Original:🇺🇸 English
Not Translated
1 scripts
Track reviews, ratings, sentiment, and brand mentions across Google Maps, Booking.com, TripAdvisor, Facebook, Instagram, YouTube, and TikTok. Use when user asks to monitor brand reputation, analyze...
2installs
Added on
NPX Install
npx skill4agent add sickn33/antigravity-awesome-skills apify-brand-reputation-monitoringSKILL.md Content
Brand Reputation Monitoring
Scrape reviews, ratings, and brand mentions from multiple platforms using Apify Actors.
Prerequisites
(No need to check it upfront)
- file with
.envAPIFY_TOKEN - Node.js 20.6+ (for native support)
--env-file - CLI tool:
mcpcnpm install -g @apify/mcpc
Workflow
Copy this checklist and track progress:
Task Progress:
- [ ] Step 1: Determine data source (select Actor)
- [ ] Step 2: Fetch Actor schema via mcpc
- [ ] Step 3: Ask user preferences (format, filename)
- [ ] Step 4: Run the monitoring script
- [ ] Step 5: Summarize resultsStep 1: Determine Data Source
Select the appropriate Actor based on user needs:
| User Need | Actor ID | Best For |
|---|---|---|
| Google Maps reviews | | Business reviews, ratings |
| Google Maps review export | | Dedicated review scraping |
| Booking.com hotels | | Hotel data, scores |
| Booking.com reviews | | Detailed hotel reviews |
| TripAdvisor reviews | | Attraction/restaurant reviews |
| Facebook reviews | | Page reviews |
| Facebook comments | | Post comment monitoring |
| Facebook page metrics | | Page ratings overview |
| Facebook reactions | | Reaction type analysis |
| Instagram comments | | Comment sentiment |
| Instagram hashtags | | Brand hashtag monitoring |
| Instagram search | | Brand mention discovery |
| Instagram tagged posts | | Brand tag tracking |
| Instagram export | | Bulk comment export |
| Instagram comprehensive | | Full Instagram monitoring |
| Instagram API | | API-based monitoring |
| YouTube comments | | Video comment sentiment |
| TikTok comments | | TikTok sentiment |
Step 2: Fetch Actor Schema
Fetch the Actor's input schema and details dynamically using mcpc:
bash
export $(grep APIFY_TOKEN .env | xargs) && mcpc --json mcp.apify.com --header "Authorization: Bearer $APIFY_TOKEN" tools-call fetch-actor-details actor:="ACTOR_ID" | jq -r ".content"Replace with the selected Actor (e.g., ).
ACTOR_IDcompass/crawler-google-placesThis returns:
- Actor description and README
- Required and optional input parameters
- Output fields (if available)
Step 3: Ask User Preferences
Before running, ask:
- Output format:
- Quick answer - Display top few results in chat (no file saved)
- CSV - Full export with all fields
- JSON - Full export in JSON format
- Number of results: Based on character of use case
Step 4: Run the Script
Quick answer (display in chat, no file):
bash
node --env-file=.env ${CLAUDE_PLUGIN_ROOT}/reference/scripts/run_actor.js \
--actor "ACTOR_ID" \
--input 'JSON_INPUT'CSV:
bash
node --env-file=.env ${CLAUDE_PLUGIN_ROOT}/reference/scripts/run_actor.js \
--actor "ACTOR_ID" \
--input 'JSON_INPUT' \
--output YYYY-MM-DD_OUTPUT_FILE.csv \
--format csvJSON:
bash
node --env-file=.env ${CLAUDE_PLUGIN_ROOT}/reference/scripts/run_actor.js \
--actor "ACTOR_ID" \
--input 'JSON_INPUT' \
--output YYYY-MM-DD_OUTPUT_FILE.json \
--format jsonStep 5: Summarize Results
After completion, report:
- Number of reviews/mentions found
- File location and name
- Key fields available
- Suggested next steps (sentiment analysis, filtering)
Error Handling
APIFY_TOKEN not found.envAPIFY_TOKEN=your_tokenmcpc not foundnpm install -g @apify/mcpcActor not foundRun FAILEDTimeout--timeout