Builds scheduled AI agents to scrape public websites/APIs, enrich data with Gemini Flash LLM, store in Notion/Sheets/Supabase, and run free on GitHub Actions.
From everything-claude-codenpx claudepluginhub hatsune1212/claude-code-for-simpleasyThis skill uses the workspace's default tool permissions.
Designs and optimizes AI agent action spaces, tool definitions, observation formats, error recovery, and context for higher task completion rates.
Enables AI agents to execute x402 payments with per-task budgets, spending controls, and non-custodial wallets via MCP tools. Use when agents pay for APIs, services, or other agents.
Compares coding agents like Claude Code and Aider on custom YAML-defined codebase tasks using git worktrees, measuring pass rate, cost, time, and consistency.
Build a production-ready, AI-powered data collection agent for any public data source. Runs on a schedule, enriches results with a free LLM, stores to a database, and improves over time.
Stack: Python · Gemini Flash (free) · GitHub Actions (free) · Notion / Sheets / Supabase
Every data scraper agent has three layers:
COLLECT → ENRICH → STORE
│ │ │
Scraper AI (LLM) Database
runs on scores/ Notion /
schedule summarises Sheets /
& classifies Supabase
| Layer | Tool | Why |
|---|---|---|
| Scraping | requests + BeautifulSoup | No cost, covers 80% of public sites |
| JS-rendered sites | playwright (free) | When HTML scraping fails |
| AI enrichment | Gemini Flash via REST API | 500 req/day, 1M tokens/day — free |
| Storage | Notion API | Free tier, great UI for review |
| Schedule | GitHub Actions cron | Free for public repos |
| Learning | JSON feedback file in repo | Zero infra, persists in git |
Build agents to auto-fallback across Gemini models on quota exhaustion:
gemini-2.0-flash-lite (30 RPM) →
gemini-2.0-flash (15 RPM) →
gemini-2.5-flash (10 RPM) →
gemini-flash-lite-latest (fallback)
Never call the LLM once per item. Always batch:
# BAD: 33 API calls for 33 items
for item in items:
result = call_ai(item) # 33 calls → hits rate limit
# GOOD: 7 API calls for 33 items (batch size 5)
for batch in chunks(items, size=5):
results = call_ai(batch) # 7 calls → stays within free tier
Ask the user:
Common examples to prompt:
Generate this directory structure for the user:
my-agent/
├── config.yaml # User customises this (keywords, filters, preferences)
├── profile/
│ └── context.md # User context the AI uses (resume, interests, criteria)
├── scraper/
│ ├── __init__.py
│ ├── main.py # Orchestrator: scrape → enrich → store
│ ├── filters.py # Rule-based pre-filter (fast, before AI)
│ └── sources/
│ ├── __init__.py
│ └── source_name.py # One file per data source
├── ai/
│ ├── __init__.py
│ ├── client.py # Gemini REST client with model fallback
│ ├── pipeline.py # Batch AI analysis
│ ├── jd_fetcher.py # Fetch full content from URLs (optional)
│ └── memory.py # Learn from user feedback
├── storage/
│ ├── __init__.py
│ └── notion_sync.py # Or sheets_sync.py / supabase_sync.py
├── data/
│ └── feedback.json # User decision history (auto-updated)
├── .env.example
├── setup.py # One-time DB/schema creation
├── enrich_existing.py # Backfill AI scores on old rows
├── requirements.txt
└── .github/
└── workflows/
└── scraper.yml # GitHub Actions schedule
Template for any data source:
# scraper/sources/my_source.py
"""
[Source Name] — scrapes [what] from [where].
Method: [REST API / HTML scraping / RSS feed]
"""
import requests
from bs4 import BeautifulSoup
from datetime import datetime, timezone
from scraper.filters import is_relevant
HEADERS = {
"User-Agent": "Mozilla/5.0 (compatible; research-bot/1.0)",
}
def fetch() -> list[dict]:
"""
Returns a list of items with consistent schema.
Each item must have at minimum: name, url, date_found.
"""
results = []
# ---- REST API source ----
resp = requests.get("https://api.example.com/items", headers=HEADERS, timeout=15)
if resp.status_code == 200:
for item in resp.json().get("results", []):
if not is_relevant(item.get("title", "")):
continue
results.append(_normalise(item))
return results
def _normalise(raw: dict) -> dict:
"""Convert raw API/HTML data to the standard schema."""
return {
"name": raw.get("title", ""),
"url": raw.get("link", ""),
"source": "MySource",
"date_found": datetime.now(timezone.utc).date().isoformat(),
# add domain-specific fields here
}
HTML scraping pattern:
soup = BeautifulSoup(resp.text, "lxml")
for card in soup.select("[class*='listing']"):
title = card.select_one("h2, h3").get_text(strip=True)
link = card.select_one("a")["href"]
if not link.startswith("http"):
link = f"https://example.com{link}"
RSS feed pattern:
import xml.etree.ElementTree as ET
root = ET.fromstring(resp.text)
for item in root.findall(".//item"):
title = item.findtext("title", "")
link = item.findtext("link", "")
# ai/client.py
import os, json, time, requests
_last_call = 0.0
MODEL_FALLBACK = [
"gemini-2.0-flash-lite",
"gemini-2.0-flash",
"gemini-2.5-flash",
"gemini-flash-lite-latest",
]
def generate(prompt: str, model: str = "", rate_limit: float = 7.0) -> dict:
"""Call Gemini with auto-fallback on 429. Returns parsed JSON or {}."""
global _last_call
api_key = os.environ.get("GEMINI_API_KEY", "")
if not api_key:
return {}
elapsed = time.time() - _last_call
if elapsed < rate_limit:
time.sleep(rate_limit - elapsed)
models = [model] + [m for m in MODEL_FALLBACK if m != model] if model else MODEL_FALLBACK
_last_call = time.time()
for m in models:
url = f"https://generativelanguage.googleapis.com/v1beta/models/{m}:generateContent?key={api_key}"
payload = {
"contents": [{"parts": [{"text": prompt}]}],
"generationConfig": {
"responseMimeType": "application/json",
"temperature": 0.3,
"maxOutputTokens": 2048,
},
}
try:
resp = requests.post(url, json=payload, timeout=30)
if resp.status_code == 200:
return _parse(resp)
if resp.status_code in (429, 404):
time.sleep(1)
continue
return {}
except requests.RequestException:
return {}
return {}
def _parse(resp) -> dict:
try:
text = (
resp.json()
.get("candidates", [{}])[0]
.get("content", {})
.get("parts", [{}])[0]
.get("text", "")
.strip()
)
if text.startswith("```"):
text = text.split("\n", 1)[-1].rsplit("```", 1)[0]
return json.loads(text)
except (json.JSONDecodeError, KeyError):
return {}
# ai/pipeline.py
import json
import yaml
from pathlib import Path
from ai.client import generate
def analyse_batch(items: list[dict], context: str = "", preference_prompt: str = "") -> list[dict]:
"""Analyse items in batches. Returns items enriched with AI fields."""
config = yaml.safe_load((Path(__file__).parent.parent / "config.yaml").read_text())
model = config.get("ai", {}).get("model", "gemini-2.5-flash")
rate_limit = config.get("ai", {}).get("rate_limit_seconds", 7.0)
min_score = config.get("ai", {}).get("min_score", 0)
batch_size = config.get("ai", {}).get("batch_size", 5)
batches = [items[i:i + batch_size] for i in range(0, len(items), batch_size)]
print(f" [AI] {len(items)} items → {len(batches)} API calls")
enriched = []
for i, batch in enumerate(batches):
print(f" [AI] Batch {i + 1}/{len(batches)}...")
prompt = _build_prompt(batch, context, preference_prompt, config)
result = generate(prompt, model=model, rate_limit=rate_limit)
analyses = result.get("analyses", [])
for j, item in enumerate(batch):
ai = analyses[j] if j < len(analyses) else {}
if ai:
score = max(0, min(100, int(ai.get("score", 0))))
if min_score and score < min_score:
continue
enriched.append({**item, "ai_score": score, "ai_summary": ai.get("summary", ""), "ai_notes": ai.get("notes", "")})
else:
enriched.append(item)
return enriched
def _build_prompt(batch, context, preference_prompt, config):
priorities = config.get("priorities", [])
items_text = "\n\n".join(
f"Item {i+1}: {json.dumps({k: v for k, v in item.items() if not k.startswith('_')})}"
for i, item in enumerate(batch)
)
return f"""Analyse these {len(batch)} items and return a JSON object.
# Items
{items_text}
# User Context
{context[:800] if context else "Not provided"}
# User Priorities
{chr(10).join(f"- {p}" for p in priorities)}
{preference_prompt}
# Instructions
Return: {{"analyses": [{{"score": <0-100>, "summary": "<2 sentences>", "notes": "<why this matches or doesn't>"}} for each item in order]}}
Be concise. Score 90+=excellent match, 70-89=good, 50-69=ok, <50=weak."""
# ai/memory.py
"""Learn from user decisions to improve future scoring."""
import json
from pathlib import Path
FEEDBACK_PATH = Path(__file__).parent.parent / "data" / "feedback.json"
def load_feedback() -> dict:
if FEEDBACK_PATH.exists():
try:
return json.loads(FEEDBACK_PATH.read_text())
except (json.JSONDecodeError, OSError):
pass
return {"positive": [], "negative": []}
def save_feedback(fb: dict):
FEEDBACK_PATH.parent.mkdir(parents=True, exist_ok=True)
FEEDBACK_PATH.write_text(json.dumps(fb, indent=2))
def build_preference_prompt(feedback: dict, max_examples: int = 15) -> str:
"""Convert feedback history into a prompt bias section."""
lines = []
if feedback.get("positive"):
lines.append("# Items the user LIKED (positive signal):")
for e in feedback["positive"][-max_examples:]:
lines.append(f"- {e}")
if feedback.get("negative"):
lines.append("\n# Items the user SKIPPED/REJECTED (negative signal):")
for e in feedback["negative"][-max_examples:]:
lines.append(f"- {e}")
if lines:
lines.append("\nUse these patterns to bias scoring on new items.")
return "\n".join(lines)
Integration with your storage layer: after each run, query your DB for items with positive/negative status and call save_feedback() with the extracted patterns.
# storage/notion_sync.py
import os
from notion_client import Client
from notion_client.errors import APIResponseError
_client = None
def get_client():
global _client
if _client is None:
_client = Client(auth=os.environ["NOTION_TOKEN"])
return _client
def get_existing_urls(db_id: str) -> set[str]:
"""Fetch all URLs already stored — used for deduplication."""
client, seen, cursor = get_client(), set(), None
while True:
resp = client.databases.query(database_id=db_id, page_size=100, **{"start_cursor": cursor} if cursor else {})
for page in resp["results"]:
url = page["properties"].get("URL", {}).get("url", "")
if url: seen.add(url)
if not resp["has_more"]: break
cursor = resp["next_cursor"]
return seen
def push_item(db_id: str, item: dict) -> bool:
"""Push one item to Notion. Returns True on success."""
props = {
"Name": {"title": [{"text": {"content": item.get("name", "")[:100]}}]},
"URL": {"url": item.get("url")},
"Source": {"select": {"name": item.get("source", "Unknown")}},
"Date Found": {"date": {"start": item.get("date_found")}},
"Status": {"select": {"name": "New"}},
}
# AI fields
if item.get("ai_score") is not None:
props["AI Score"] = {"number": item["ai_score"]}
if item.get("ai_summary"):
props["Summary"] = {"rich_text": [{"text": {"content": item["ai_summary"][:2000]}}]}
if item.get("ai_notes"):
props["Notes"] = {"rich_text": [{"text": {"content": item["ai_notes"][:2000]}}]}
try:
get_client().pages.create(parent={"database_id": db_id}, properties=props)
return True
except APIResponseError as e:
print(f"[notion] Push failed: {e}")
return False
def sync(db_id: str, items: list[dict]) -> tuple[int, int]:
existing = get_existing_urls(db_id)
added = skipped = 0
for item in items:
if item.get("url") in existing:
skipped += 1; continue
if push_item(db_id, item):
added += 1; existing.add(item["url"])
else:
skipped += 1
return added, skipped
# scraper/main.py
import os, sys, yaml
from pathlib import Path
from dotenv import load_dotenv
load_dotenv()
from scraper.sources import my_source # add your sources
# NOTE: This example uses Notion. If storage.provider is "sheets" or "supabase",
# replace this import with storage.sheets_sync or storage.supabase_sync and update
# the env var and sync() call accordingly.
from storage.notion_sync import sync
SOURCES = [
("My Source", my_source.fetch),
]
def ai_enabled():
return bool(os.environ.get("GEMINI_API_KEY"))
def main():
config = yaml.safe_load((Path(__file__).parent.parent / "config.yaml").read_text())
provider = config.get("storage", {}).get("provider", "notion")
# Resolve the storage target identifier from env based on provider
if provider == "notion":
db_id = os.environ.get("NOTION_DATABASE_ID")
if not db_id:
print("ERROR: NOTION_DATABASE_ID not set"); sys.exit(1)
else:
# Extend here for sheets (SHEET_ID) or supabase (SUPABASE_TABLE) etc.
print(f"ERROR: provider '{provider}' not yet wired in main.py"); sys.exit(1)
config = yaml.safe_load((Path(__file__).parent.parent / "config.yaml").read_text())
all_items = []
for name, fetch_fn in SOURCES:
try:
items = fetch_fn()
print(f"[{name}] {len(items)} items")
all_items.extend(items)
except Exception as e:
print(f"[{name}] FAILED: {e}")
# Deduplicate by URL
seen, deduped = set(), []
for item in all_items:
if (url := item.get("url", "")) and url not in seen:
seen.add(url); deduped.append(item)
print(f"Unique items: {len(deduped)}")
if ai_enabled() and deduped:
from ai.memory import load_feedback, build_preference_prompt
from ai.pipeline import analyse_batch
# load_feedback() reads data/feedback.json written by your feedback sync script.
# To keep it current, implement a separate feedback_sync.py that queries your
# storage provider for items with positive/negative statuses and calls save_feedback().
feedback = load_feedback()
preference = build_preference_prompt(feedback)
context_path = Path(__file__).parent.parent / "profile" / "context.md"
context = context_path.read_text() if context_path.exists() else ""
deduped = analyse_batch(deduped, context=context, preference_prompt=preference)
else:
print("[AI] Skipped — GEMINI_API_KEY not set")
added, skipped = sync(db_id, deduped)
print(f"Done — {added} new, {skipped} existing")
if __name__ == "__main__":
main()
# .github/workflows/scraper.yml
name: Data Scraper Agent
on:
schedule:
- cron: "0 */3 * * *" # every 3 hours — adjust to your needs
workflow_dispatch: # allow manual trigger
permissions:
contents: write # required for the feedback-history commit step
jobs:
scrape:
runs-on: ubuntu-latest
timeout-minutes: 20
steps:
- uses: actions/checkout@v4
- uses: actions/setup-python@v5
with:
python-version: "3.11"
cache: "pip"
- run: pip install -r requirements.txt
# Uncomment if Playwright is enabled in requirements.txt
# - name: Install Playwright browsers
# run: python -m playwright install chromium --with-deps
- name: Run agent
env:
NOTION_TOKEN: ${{ secrets.NOTION_TOKEN }}
NOTION_DATABASE_ID: ${{ secrets.NOTION_DATABASE_ID }}
GEMINI_API_KEY: ${{ secrets.GEMINI_API_KEY }}
run: python -m scraper.main
- name: Commit feedback history
run: |
git config user.name "github-actions[bot]"
git config user.email "github-actions[bot]@users.noreply.github.com"
git add data/feedback.json || true
git diff --cached --quiet || git commit -m "chore: update feedback history"
git push
# Customise this file — no code changes needed
# What to collect (pre-filter before AI)
filters:
required_keywords: [] # item must contain at least one
blocked_keywords: [] # item must not contain any
# Your priorities — AI uses these for scoring
priorities:
- "example priority 1"
- "example priority 2"
# Storage
storage:
provider: "notion" # notion | sheets | supabase | sqlite
# Feedback learning
feedback:
positive_statuses: ["Saved", "Applied", "Interested"]
negative_statuses: ["Skip", "Rejected", "Not relevant"]
# AI settings
ai:
enabled: true
model: "gemini-2.5-flash"
min_score: 0 # filter out items below this score
rate_limit_seconds: 7 # seconds between API calls
batch_size: 5 # items per API call
resp = requests.get(url, params={"q": query}, headers=HEADERS, timeout=15)
items = resp.json().get("results", [])
soup = BeautifulSoup(resp.text, "lxml")
for card in soup.select(".listing-card"):
title = card.select_one("h2").get_text(strip=True)
href = card.select_one("a")["href"]
import xml.etree.ElementTree as ET
root = ET.fromstring(resp.text)
for item in root.findall(".//item"):
title = item.findtext("title", "")
link = item.findtext("link", "")
pub_date = item.findtext("pubDate", "")
page = 1
while True:
resp = requests.get(url, params={"page": page, "limit": 50}, timeout=15)
data = resp.json()
items = data.get("results", [])
if not items:
break
for item in items:
results.append(_normalise(item))
if not data.get("has_more"):
break
page += 1
from playwright.sync_api import sync_playwright
with sync_playwright() as p:
browser = p.chromium.launch()
page = browser.new_page()
page.goto(url)
page.wait_for_selector(".listing")
html = page.content()
browser.close()
soup = BeautifulSoup(html, "lxml")
| Anti-pattern | Problem | Fix |
|---|---|---|
| One LLM call per item | Hits rate limits instantly | Batch 5 items per call |
| Hardcoded keywords in code | Not reusable | Move all config to config.yaml |
| Scraping without rate limit | IP ban | Add time.sleep(1) between requests |
| Storing secrets in code | Security risk | Always use .env + GitHub Secrets |
| No deduplication | Duplicate rows pile up | Always check URL before pushing |
Ignoring robots.txt | Legal/ethical risk | Respect crawl rules; use public APIs when available |
JS-rendered sites with requests | Empty response | Use Playwright or look for the underlying API |
maxOutputTokens too low | Truncated JSON, parse error | Use 2048+ for batch responses |
| Service | Free Limit | Typical Usage |
|---|---|---|
| Gemini Flash Lite | 30 RPM, 1500 RPD | ~56 req/day at 3-hr intervals |
| Gemini 2.0 Flash | 15 RPM, 1500 RPD | Good fallback |
| Gemini 2.5 Flash | 10 RPM, 500 RPD | Use sparingly |
| GitHub Actions | Unlimited (public repos) | ~20 min/day |
| Notion API | Unlimited | ~200 writes/day |
| Supabase | 500MB DB, 2GB transfer | Fine for most agents |
| Google Sheets API | 300 req/min | Works for small agents |
requests==2.31.0
beautifulsoup4==4.12.3
lxml==5.1.0
python-dotenv==1.0.1
pyyaml==6.0.2
notion-client==2.2.1 # if using Notion
# playwright==1.40.0 # uncomment for JS-rendered sites
Before marking the agent complete:
config.yaml controls all user-facing settings — no hardcoded valuesprofile/context.md holds user-specific context for AI matchingmaxOutputTokens ≥ 2048.env is in .gitignore.env.example provided for onboardingsetup.py creates DB schema on first runenrich_existing.py backfills AI scores on old rowsfeedback.json after each run"Build me an agent that monitors Hacker News for AI startup funding news"
"Scrape product prices from 3 e-commerce sites and alert when they drop"
"Track new GitHub repos tagged with 'llm' or 'agents' — summarise each one"
"Collect Chief of Staff job listings from LinkedIn and Cutshort into Notion"
"Monitor a subreddit for posts mentioning my company — classify sentiment"
"Scrape new academic papers from arXiv on a topic I care about daily"
"Track sports fixture results and keep a running table in Google Sheets"
"Build a real estate listing watcher — alert on new properties under ₹1 Cr"
A complete working agent built with this exact architecture would scrape 4+ sources, batch Gemini calls, learn from Applied/Rejected decisions stored in Notion, and run 100% free on GitHub Actions. Follow Steps 1–9 above to build your own.