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AI-powered stock analysis package combining data, technical indicators, and multi-provider AI analysis

Project description

Screenshot 2025-06-25 at 7 43 49 PM

InvestorMate 🤖📈

Python 3.9+ License: MIT PyPI - Downloads

AI-Powered Stock Analysis in Python — Valuation (DCF, comps), correlation, sentiment, backtesting & custom strategies (v0.2.8)

InvestorMate is the only Python package you need for comprehensive stock analysis - from data fetching to AI-powered insights, portfolio diversification, news sentiment, strategy backtesting, and custom screening.

"Ask any question about any stock and get instant AI-powered insights"

✨ Features

  • AI-Powered Analysis - Ask natural language questions about any stock using OpenAI, Claude, or Gemini
  • Comprehensive Stock Data - Real-time prices, financials, news, and SEC filings via yfinance
  • 20+ Technical Indicators - SMA, EMA, RSI, MACD, Bollinger Bands, ATR, ADX, Ichimoku, and more (native, no extra deps)
  • Advanced Financial Ratios - 40+ ratios including ROIC, WACC, Equity Multiplier, and TTM metrics
  • Valuation - DCF (Discounted Cash Flow), comparable companies (P/E, EV/EBITDA, P/S), fair value summary & sensitivity table
  • Earnings Call Transcripts - Access earnings dates and transcript infrastructure (expandable)
  • Stock Screening - Value, growth, dividend, custom filters, and Magic Formula (ROIC + EBIT/EV ranks)
  • Portfolio Analysis - Value-weighted performance, Sharpe/Sortino, Calmar, max drawdown, beta vs benchmark, sector mix
  • Beneish M-Score - Full eight-variable model when multi-period statements are available (manipulation risk)
  • Batch & peers - Stock.batch([...]) for many tickers; stock.peers and stock.compare_with() for peer tables
  • Market Summaries - Real-time data for US, Asian, European, crypto, and commodity markets
  • Pretty Formatting - Beautiful CLI output for financial statements and ratios

🚀 Quick Start

pip install investormate
from investormate import Investor, Stock

# AI-powered analysis
investor = Investor(openai_api_key="sk-...")
result = investor.ask("AAPL", "Is Apple undervalued compared to its peers?")
print(result)

# Stock data and analysis
stock = Stock("AAPL")
print(f"Price: ${stock.price}")
print(f"P/E Ratio: {stock.ratios.pe}")
print(f"ROIC: {stock.ratios.roic}")  # Advanced ratios
print(f"TTM EPS: {stock.ratios.ttm_eps}")  # Trailing metrics
print(f"RSI: {stock.indicators.rsi()}")

# Batch load tickers (skips bad symbols with a warning)
stocks = Stock.batch(["AAPL", "MSFT", "GOOGL"], skip_invalid=True)

# Beneish detail (8 indices when statements allow)
detail = stock.scores.beneish_m_score_detail()
print(detail.get("indices"), detail.get("score"))

📦 Installation

# Basic installation
pip install investormate

# With development dependencies
pip install investormate[dev]

🔑 API Keys

InvestorMate supports multiple AI providers:

You only need one API key to use the AI features.

📚 Documentation

🗺️ Roadmap & Contributing

  • ROADMAP.md — Our vision to build a Bloomberg Terminal–grade package. See planned features, phases, and priorities.
  • CONTRIBUTING.md — Want to contribute? Start here for development setup, your first PR, and guidelines.

New to open source? Check CONTRIBUTING.md for step-by-step guidance on making your first contribution.

🎯 Why InvestorMate?

Feature InvestorMate Other Solutions
Simplicity One package, simple API Need 5+ packages
AI-Powered Built-in AI analysis Manual analysis only
Provider Choice OpenAI, Claude, Gemini Locked to one provider
Setup Time 2 lines of code Hours of configuration
Data Format JSON-ready Raw pandas DataFrames
Target Users Everyone Enterprise only

💡 Examples

Stock Analysis

from investormate import Stock
from investormate.utils import print_ratios_table

stock = Stock("TSLA")

# Basic info
print(stock.price)
print(stock.market_cap)
print(stock.sector)

# Financial statements
income_stmt = stock.income_statement
balance_sheet = stock.balance_sheet
cash_flow = stock.cash_flow

# Advanced ratios and TTM metrics
print(f"ROIC: {stock.ratios.roic}")
print(f"WACC: {stock.ratios.wacc}")
print(f"TTM Revenue: {stock.ratios.ttm_revenue}")
print(f"TTM EPS: {stock.ratios.ttm_eps}")

# Valuation (DCF, comps, fair value summary)
dcf = stock.valuation.dcf(growth_rate=0.05)
comps = stock.valuation.comps(peers=["MSFT", "GOOGL"])
summary = stock.valuation.summary(peers=["MSFT", "GOOGL"])
print(f"DCF fair value: ${dcf.get('fair_value_per_share')}")
print(f"Summary: {summary.get('recommendation')}")

# Pretty print all ratios
print_ratios_table(stock.ratios.all())

# DuPont ROE Analysis
dupont = stock.ratios.dupont_roe
print(dupont)

# Earnings transcripts (infrastructure ready)
transcripts_list = stock.earnings_transcripts.get_transcripts_list()

# Historical data
df = stock.history(period="1y", interval="1d")

AI-Powered Insights

from investormate import Investor

investor = Investor(openai_api_key="sk-...")

# Ask questions
result = investor.ask("NVDA", "What are the key revenue drivers?")

# Compare stocks
comparison = investor.compare(
    ["AAPL", "GOOGL", "MSFT"],
    "Which has the best growth prospects?"
)

# Analyze documents
result = investor.analyze_document(
    ticker="TSLA",
    url="https://example.com/earnings-report.pdf",
    question="Summarize Q4 earnings highlights"
)

Technical Analysis

from investormate import Stock

stock = Stock("AAPL")
df = stock.history(period="6mo")

# Add indicators
df = stock.add_indicators(df, [
    "sma_20", "sma_50", "rsi_14", "macd", "bbands"
])

# Or use individual methods
sma_20 = stock.indicators.sma(20)
rsi = stock.indicators.rsi(14)
macd = stock.indicators.macd()

Stock Screening

from investormate import Screener

screener = Screener()

# Pre-built screens
value_stocks = screener.value_stocks(pe_max=15, pb_max=1.5)
growth_stocks = screener.growth_stocks(revenue_growth_min=20)
dividend_stocks = screener.dividend_stocks(yield_min=3.0)

# Custom screening
results = screener.filter(
    market_cap_min=1_000_000_000,
    pe_ratio=(10, 25),
    roe_min=15,
    sector="Technology"
)

# Magic Formula (ROIC + earnings yield ranks) — set your own universe
magic = screener.magic_formula(top_n=20, min_market_cap=300_000_000)
print(magic)

Portfolio Analysis

from investormate import Portfolio

portfolio = Portfolio({
    "AAPL": 10,
    "GOOGL": 5,
    "MSFT": 15,
    "TSLA": 8
})

print(f"Total Value: ${portfolio.value:,.2f}")
print(f"Sharpe Ratio: {portfolio.sharpe_ratio:.2f}")
print(f"Sortino: {portfolio.sortino_ratio}, Calmar: {portfolio.calmar_ratio}")
print(f"Max drawdown %: {portfolio.max_drawdown}, Beta vs SPY: {portfolio.beta()}")
print(f"Allocation: {portfolio.allocation}")

Peer comparison

from investormate import Stock

stock = Stock("AAPL")
print(stock.peers[:5])
table = stock.compare_with(peers=["MSFT", "GOOGL", "META"])
print(table["metrics"])

Valuation (DCF & Comps)

from investormate import Stock

stock = Stock("AAPL")

# DCF with terminal value
dcf = stock.valuation.dcf(growth_rate=0.05, terminal_growth=0.02, years=5)
print(f"DCF fair value: ${dcf.get('fair_value_per_share')}")

# Comparable companies (peer multiples)
comps = stock.valuation.comps(peers=["MSFT", "GOOGL", "META"])
print(f"Median P/E: {comps.get('median_pe')}")
print(f"Implied value (P/E): ${comps.get('implied_value_pe')}")

# Combined fair value summary
summary = stock.valuation.summary(peers=["MSFT", "GOOGL"])
print(f"Range: ${summary['fair_value_low']} - ${summary['fair_value_high']}")
print(f"Verdict: {summary['recommendation']}")

# Sensitivity table (growth vs WACC)
sens = stock.valuation.sensitivity()
print(sens["table"])

🤝 Contributing

Contributions are welcome! See CONTRIBUTING.md for:

  • Development setup and first-time contributor guide
  • How to find work (roadmap, good first issues)
  • Code style, testing, and PR process

📄 License

This project is licensed under the MIT License - see the LICENSE file for details.

⚠️ Disclaimer

InvestorMate is for educational and research purposes only. It is not financial advice. AI-generated insights may contain errors or hallucinations. Always verify information and consult with a qualified financial advisor before making investment decisions.

🌟 Support

If you find InvestorMate useful, please give it a star on GitHub!


Made with ❤️ by the InvestorMate community

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