daily-stock-analysis
LLM-powered A/H/US stock intelligent analysis system with multi-source data, real-time news, AI decision dashboards, and multi-channel push notifications via GitHub Actions.
How do I install this agent skill?
npx skills add https://github.com/aradotso/trending-skills --skill daily-stock-analysisIs this agent skill safe to install?
- Gen Agent Trust Hubpass
The skill provides a comprehensive framework for automated stock analysis using LLMs and GitHub Actions. It follows established security practices for credential management, advising users to use GitHub Secrets and environment variables. A low-risk surface for indirect prompt injection is present because the system processes real-time financial news and sentiment data from external web sources.
- Socketpass
No alerts
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Risk: MEDIUM · 1 issue
- ZeroLeakspass
Score: 93/100 · 2 sections analyzed
What does this agent skill do?
Daily Stock Analysis (股票智能分析系统)
Skill by ara.so — Daily 2026 Skills collection.
LLM-powered stock analysis system for A-share, Hong Kong, and US markets. Automatically fetches quotes, news, and fundamentals, generates AI decision dashboards with buy/sell targets, and pushes results to WeChat/Feishu/Telegram/Discord/Email on a schedule via GitHub Actions — zero server cost.
What It Does
- AI Decision Dashboard: One-line conclusion + precise buy/sell/stop-loss prices + checklist per stock
- Multi-market: A-shares (CN), HK stocks, US stocks + indices (SPX, DJI, IXIC)
- Data sources: AkShare, Tushare, YFinance for quotes; Tavily/SerpAPI/Brave for news
- LLM backends: Gemini, OpenAI, Claude, DeepSeek, Qwen via LiteLLM (unified)
- Push channels: WeChat Work, Feishu, Telegram, Discord, DingTalk, Email, PushPlus
- Automation: GitHub Actions cron schedule, no server needed
- Web UI: Portfolio management, history, backtesting, Agent Q&A
- Agent: Multi-turn strategy Q&A with 11 built-in strategies (MA crossover, Elliott Wave, etc.)
Installation
Method 1: GitHub Actions (Recommended, Zero Cost)
Step 1: Fork the repository
https://github.com/ZhuLinsen/daily_stock_analysis
Step 2: Configure Secrets (Settings → Secrets and variables → Actions)
Required — at least one LLM key:
GEMINI_API_KEY # Google AI Studio (free tier available)
OPENAI_API_KEY # OpenAI or compatible (DeepSeek, Qwen, etc.)
OPENAI_BASE_URL # e.g. https://api.deepseek.com/v1
OPENAI_MODEL # e.g. deepseek-chat, gpt-4o
AIHUBMIX_KEY # AIHubMix (recommended, covers Gemini+GPT+Claude+DeepSeek)
ANTHROPIC_API_KEY # Claude
Required — stock list:
STOCKS # e.g. 600519,300750,AAPL,TSLA,00700.HK
Required — at least one notification channel:
TELEGRAM_BOT_TOKEN
TELEGRAM_CHAT_ID
FEISHU_WEBHOOK_URL
WECHAT_WEBHOOK_URL
EMAIL_SENDER / EMAIL_PASSWORD / EMAIL_RECEIVERS
DISCORD_WEBHOOK_URL
Step 3: Trigger manually or wait for cron
Go to Actions → stock_analysis → Run workflow
Method 2: Local / Docker
git clone https://github.com/ZhuLinsen/daily_stock_analysis
cd daily_stock_analysis
cp .env.example .env
# Edit .env with your keys
pip install -r requirements.txt
python main.py
Docker:
docker build -t stock-analysis .
docker run --env-file .env stock-analysis
Docker Compose:
docker-compose up -d
Configuration
.env File (Local)
# LLM - pick one or more
GEMINI_API_KEY=your_gemini_key
OPENAI_API_KEY=your_openai_key
OPENAI_BASE_URL=https://api.deepseek.com/v1
OPENAI_MODEL=deepseek-chat
AIHUBMIX_KEY=your_aihubmix_key
# Stock list (comma-separated)
STOCKS=600519,300750,AAPL,TSLA,00700.HK
# Notification
TELEGRAM_BOT_TOKEN=your_bot_token
TELEGRAM_CHAT_ID=your_chat_id
# Optional settings
REPORT_TYPE=full # simple | full | brief
ANALYSIS_DELAY=10 # seconds between stocks (avoid rate limiting)
MAX_WORKERS=3 # concurrent analysis threads
SINGLE_STOCK_NOTIFY=false # push each stock immediately when done
NEWS_MAX_AGE_DAYS=3 # ignore news older than N days
Multi-Channel LLM (Advanced)
LLM_CHANNELS=gemini,deepseek,claude
LLM_GEMINI_PROTOCOL=google
LLM_GEMINI_API_KEY=your_key
LLM_GEMINI_MODELS=gemini-2.0-flash,gemini-1.5-pro
LLM_GEMINI_ENABLED=true
LLM_DEEPSEEK_PROTOCOL=openai
LLM_DEEPSEEK_BASE_URL=https://api.deepseek.com/v1
LLM_DEEPSEEK_API_KEY=your_key
LLM_DEEPSEEK_MODELS=deepseek-chat
LLM_DEEPSEEK_ENABLED=true
Stock Grouping (Send Different Stocks to Different Emails)
STOCK_GROUP_1=600519,300750,000858
EMAIL_GROUP_1=investor1@example.com
STOCK_GROUP_2=AAPL,TSLA,NVDA
EMAIL_GROUP_2=investor2@example.com
Market Review Mode
MARKET_REVIEW=cn # cn | us | both
# cn = A-share three-phase review strategy
# us = US Regime Strategy (risk-on/neutral/risk-off)
# both = both markets
Key Commands (CLI)
# Run full analysis immediately
python main.py
# Analyze specific stocks only
STOCKS=600519,AAPL python main.py
# Run web dashboard
python web_app.py
# Access at http://localhost:5000
# Run with Docker (env file)
docker run --env-file .env stock-analysis python main.py
# Run schedule mode (waits for cron, then runs)
SCHEDULE_RUN_IMMEDIATELY=true python main.py
GitHub Actions Workflow
The workflow file .github/workflows/stock_analysis.yml runs on schedule:
# Default schedule - customize in the workflow file
on:
schedule:
- cron: '30 1 * * 1-5' # 9:30 AM CST (UTC+8) weekdays
workflow_dispatch: # manual trigger
To change schedule: Edit .github/workflows/stock_analysis.yml cron expression.
To add secrets via GitHub CLI:
gh secret set GEMINI_API_KEY --body "$GEMINI_API_KEY"
gh secret set STOCKS --body "600519,300750,AAPL,TSLA"
gh secret set TELEGRAM_BOT_TOKEN --body "$TG_TOKEN"
gh secret set TELEGRAM_CHAT_ID --body "$TG_CHAT_ID"
Code Examples
Programmatic Analysis (Python)
# Run analysis for specific stocks programmatically
import asyncio
from analyzer import StockAnalyzer
async def analyze():
analyzer = StockAnalyzer()
# Analyze a single A-share stock
result = await analyzer.analyze_stock("600519") # Moutai
print(result['conclusion'])
print(result['buy_price'])
print(result['stop_loss'])
print(result['target_price'])
asyncio.run(analyze())
Custom Notification Integration
from notifier import NotificationManager
notifier = NotificationManager()
# Send to Telegram
await notifier.send_telegram(
token=os.environ['TELEGRAM_BOT_TOKEN'],
chat_id=os.environ['TELEGRAM_CHAT_ID'],
message="📈 Analysis complete\n600519: BUY at 1680, SL: 1620, TP: 1800"
)
# Send to Feishu webhook
await notifier.send_feishu(
webhook_url=os.environ['FEISHU_WEBHOOK_URL'],
content=analysis_report
)
Using the Agent API
import requests
# Ask the stock agent a strategy question
response = requests.post('http://localhost:5000/api/agent/chat', json={
"message": "600519现在适合买入吗?用均线金叉策略分析",
"stock_code": "600519",
"strategy": "ma_crossover" # ma_crossover, elliott_wave, chan_theory, etc.
})
print(response.json()['reply'])
Backtest Analysis Accuracy
import requests
# Trigger backtest for a stock
response = requests.post('http://localhost:5000/api/backtest', json={
"stock_code": "600519",
"days": 30 # evaluate last 30 days of AI predictions
})
result = response.json()
print(f"Direction accuracy: {result['direction_accuracy']}%")
print(f"Take-profit hit rate: {result['tp_hit_rate']}%")
print(f"Stop-loss hit rate: {result['sl_hit_rate']}%")
Import Stocks from Image (Vision LLM)
import requests
# Upload screenshot of stock list for AI extraction
with open('watchlist_screenshot.png', 'rb') as f:
response = requests.post(
'http://localhost:5000/api/stocks/import/image',
files={'image': f}
)
stocks = response.json()['extracted_stocks']
# Returns: [{"code": "600519", "name": "贵州茅台", "confidence": 0.98}, ...]
Web Dashboard Features
Start the web app:
python web_app.py
| Route | Feature |
|---|---|
/ | Today's analysis dashboard |
/portfolio | Holdings management, P&L tracking |
/history | Past analysis reports (bulk delete supported) |
/backtest | AI prediction accuracy backtest |
/agent | Multi-turn strategy Q&A |
/settings | LLM channels, notification config |
/import | Import stocks from image/CSV/clipboard |
Supported Stock Formats
# A-shares (6-digit code)
600519 # 贵州茅台
300750 # 宁德时代
000858 # 五粮液
# HK stocks (5-digit + .HK)
00700.HK # 腾讯控股
09988.HK # 阿里巴巴
# US stocks (ticker)
AAPL
TSLA
NVDA
# US indices
SPX # S&P 500
DJI # Dow Jones
IXIC # NASDAQ
Built-in Trading Rules
| Rule | Config |
|---|---|
| No chasing highs | DEVIATION_THRESHOLD=5 (%, auto-relaxed for strong trend) |
| Trend trading | MA5 > MA10 > MA20 bullish alignment required |
| Precise targets | Buy price, stop-loss, take-profit per stock |
| News freshness | NEWS_MAX_AGE_DAYS=3 (skip stale news) |
| Checklist | Each condition marked: ✅ Satisfied / ⚠️ Caution / ❌ Not Met |
Troubleshooting
Analysis runs but no push received:
# Check notification config
python -c "from notifier import test_all_channels; test_all_channels()"
# Verify secrets are set (GitHub Actions)
gh secret list
LLM API errors / rate limiting:
ANALYSIS_DELAY=15 # increase delay between stocks
MAX_WORKERS=1 # reduce concurrency
LITELLM_FALLBACK_MODELS=gemini-1.5-flash,deepseek-chat # add fallbacks
AkShare data fetch fails (A-shares):
pip install akshare --upgrade
# A-share data requires Chinese network or proxy
YFinance US stock data issues:
pip install yfinance --upgrade
# US stocks use YFinance exclusively for consistency
GitHub Actions not triggering:
- Check Actions are enabled:
Settings → Actions → General → Allow all actions - Verify cron syntax at crontab.guru
- Check workflow file exists:
.github/workflows/stock_analysis.yml
Web auth issues (admin password):
# If auth was disabled and re-enabled, current password required
# Reset via environment variable
WEB_ADMIN_PASSWORD=new_password
Multi-worker deployment auth state:
# Auth toggle only applies to current process
# Must restart all workers to sync state
docker-compose restart
Report Types
REPORT_TYPE=simple # Concise: conclusion + key prices only
REPORT_TYPE=full # Complete: all technical + fundamental + news analysis
REPORT_TYPE=brief # 3-5 sentence summary
Full report includes:
- 一句话核心结论 (one-line core conclusion)
- 技术面分析 (technical: MA alignment, chip distribution)
- 基本面 (valuation, growth, earnings, institutional holdings)
- 舆情情报 (news sentiment, social media — US stocks)
- 精确买卖点位 (precise entry/exit levels)
- 操作检查清单 (action checklist)
- 板块涨跌榜 (sector performance boards)
LLM Priority Order
Gemini → Anthropic → OpenAI/AIHubMix/Compatible
AIHubMix is recommended for single-key access to all major models without VPN:
AIHUBMIX_KEY=$AIHUBMIX_KEY # covers Gemini, GPT, Claude, DeepSeek
# No OPENAI_BASE_URL needed — auto-configured
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/aradotso/trending-skills/daily-stock-analysis">View daily-stock-analysis on skillZs</a>