| name | twitter-intel |
| description | Twitter keyword intelligence — search, monitor, and analyze tweet trends over time. Triggers on 'twitter intel', 'tweet search', 'monitor keyword', 'twitter trend', '/twitter-intel', 'track topic on twitter'. |
| tags | ["twitter","intelligence","search","monitoring","trends"] |
Twitter Intel — Keyword Search & Trend Monitor
Search Twitter by keyword, collect high-engagement tweets, analyze trends over time, and generate structured reports. Powered by rnet_twitter.py GraphQL search (no browser automation needed).
Architecture
Phase 1: On-demand Search (user-triggered)
User says "search OpenAI on twitter" -> search -> filter -> report
Phase 2: Keyword Monitoring (cron-driven)
Config defines keywords -> scheduled search -> diff with last run -> alert on new high-engagement tweets
Phase 3: Trend Analysis (on-demand or weekly)
Aggregate saved searches -> group by week -> detect topic shifts -> generate narrative
Prerequisites
pip install "rnet>=3.0.0rc20" --pre
Cookie refresh: When search returns 403, cookies need refresh. Get new auth_token + ct0 from Chrome DevTools -> Application -> Cookies -> x.com.
Phase 1: On-demand Search
When user says "search [keyword] on twitter", "twitter intel [topic]", "find tweets about [X]":
Step 1 — Run Search
import asyncio
from rnet_twitter import RnetTwitterClient
async def search(query, count=200):
client = RnetTwitterClient()
client.load_cookies("twitter_cookies.json")
tweets = await client.search_tweets(query, count=count, product="Top")
return tweets
Search modes:
| Mode | product= | Use case |
|---|
| High-engagement | "Top" | Find influential tweets, content analysis |
| Real-time | "Latest" | Monitor breaking discussions, live tracking |
Useful Twitter search operators:
| Operator | Example | Effect |
|---|
lang:en | OpenAI lang:en | English only |
since: / until: | since:2026-01-24 until:2026-02-24 | Date range |
-filter:replies | OpenAI -filter:replies | Original tweets only |
min_faves:N | min_faves:50 | Minimum likes (only works with Latest) |
from: | from:karpathy | Specific author |
"exact" | "AI agent" | Exact phrase |
Step 2 — Filter & Enrich
After raw search, filter for quality:
filtered = [
t for t in tweets
if keyword.lower() in t["text"].lower()
and (t["favorite_count"] >= 10 or t["retweet_count"] >= 5)
and not t["is_reply"]
]
Step 3 — Report
Output a structured summary:
## Twitter Intel: [keyword]
**Period:** [date range] | **Tweets found:** N | **After filter:** N
### Top Tweets (by engagement)
1. @author (X likes, Y RTs, Z views) — date
"tweet text..."
[link]
2. ...
### Key Themes
- Theme 1: [description] (N tweets)
- Theme 2: [description] (N tweets)
### Notable Authors
| Author | Followers | Tweets in set | Total engagement |
|--------|-----------|---------------|-----------------|
Phase 2: Keyword Monitoring (Cron)
Config File
{
"monitors": [
{
"id": "my-product-en",
"query": "MyProduct lang:en -filter:replies",
"product": "Top",
"count": 100,
"min_likes": 10,
"alert_threshold": 100,
"enabled": true
},
{
"id": "competitor-mentions",
"query": "CompetitorName OR \"brand consistency\" lang:en",
"product": "Latest",
"count": 50,
"min_likes": 5,
"alert_threshold": 50,
"enabled": true
}
]
}
State File
{
"my-product-en": {
"last_run": "2026-02-24T12:00:00Z",
"last_tweet_ids": ["id1", "id2", "..."],
"total_collected": 450
}
}
Cron Workflow
- Read config -> iterate enabled monitors
- For each monitor:
- Run
search_tweets(query, count, product)
- Filter by
min_likes
- Diff against
last_tweet_ids -> find NEW tweets only
- If any new tweet has
favorite_count >= alert_threshold -> immediate alert
- Save all new tweets to daily file
{monitor_id}/YYYY-MM-DD.json
- Update state file
- Send summary notification (if there are new notable tweets)
Phase 3: Trend Analysis
When user says "analyze twitter trend for [keyword]", "twitter trend report":
Workflow
- Load all saved daily files from
{monitor_id}/
- Group tweets by week
- For each week, extract:
- Total tweet count + total engagement
- Top 5 tweets by likes
- Dominant themes (use LLM to categorize)
- New authors that appeared
- Sentiment shift
- Generate a week-by-week narrative
Output Format
## Trend Report: [keyword]
**Period:** Week 1 (Jan 24-26) to Week 5 (Feb 17-23)
**Total tweets:** N | **Total engagement:** X likes, Y RTs
### Week-by-Week Evolution
#### Week 1 (Jan 24-26): [Theme title]
- Dominant narrative: ...
- Top tweet: @author — "..."
- Key signal: ...
#### Week 2 (Jan 27-Feb 2): [Theme title]
...
### Trend Shifts Detected
1. [Shift description] — happened in Week X
2. ...
### Top Authors Across Period
| Author | Appearances | Total Likes | First seen |
Commands
| User Says | Agent Does |
|---|
/twitter-intel [keyword] | Search + filter + report (Top, 200 tweets) |
/twitter-intel "[phrase]" --latest | Search Latest mode |
monitor "[keyword]" on twitter | Add to monitoring config |
twitter intel status | Show all active monitors + last run |
twitter trend report [keyword] | Analyze saved data, generate trend narrative |
refresh twitter cookies | Guide user through cookie refresh |
Technical Notes
- SearchTimeline requires POST (GET returns 404) — this is handled by
rnet_twitter.py
- GraphQL query IDs rotate — if search returns 404, re-extract the SearchTimeline ID from
https://abs.twimg.com/responsive-web/client-web/main.*.js
- User data path (2026-02):
screen_name is now at core.user_results.result.core.screen_name (not .legacy)
- Rate limits: ~300 requests/15min window. With 20 tweets per page, 200 tweets = 10 requests. Safe for cron every 4 hours.
- Cookie lifetime:
auth_token expires after ~2 weeks. Monitor for 403 errors.