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Finance Toolkit

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The Finance Toolkit gives AI assistants access to 200+ financial metrics, all calculated transparently from raw financial statements, not pulled from third-part

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The Finance Toolkit gives AI assistants access to 200+ financial metrics, all calculated transparently from raw financial statements, not pulled from third-party endpoints.

README

FinanceToolkit

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While browsing a variety of websites, I repeatedly observed significant fluctuations in the same financial metric among different sources. Similarly, the reported financial statements often didn't line up, and there was limited information on the methodology used to calculate each metric.

For example, Microsoft's Price-to-Earnings (PE) ratio on the 6th of May, 2023 is reported to be 28.93 (Stockopedia), 32.05 (Morningstar), 32.66 (Macrotrends), 33.09 (Finance Charts), 33.66 (Y Charts), 33.67 (Wall Street Journal), 33.80 (Yahoo Finance) and 34.4 (Companies Market Cap). All of these calculations are correct, however the method of calculation varies leading to different results. Therefore, collecting data from multiple sources can lead to wrong interpretation of the results given that one source could apply a different definition than another. And that is, if that definition is even available as often the underlying methods are hidden behind a paid subscription.

This is why I designed the FinanceToolkit, this is an open-source toolkit in which all relevant financial ratios (200+), indicators and performance measurements are written down in the most simplistic way allowing for complete transparency of the method of calculation (proof). This enables you to avoid dependence on metrics from other providers that do not provide their methods. With a large selection of financial statements in hand, it facilitates streamlined calculations, promoting the adoption of a consistent and universally understood methods and formulas.

Beyond Equities, it supports Options, Currencies, Cryptocurrencies, ETFs, Mutual Funds, Indices, Money Markets, Commodities, Key Economic Indicators and more, allowing you to obtain historical data as well as important performance and risk measurements such as the Sharpe Ratio and Value at Risk.

Complementing this is the Finance Database 🌎, a database featuring 300.000+ symbols containing Equities, ETFs, Funds, Indices, Currencies, Cryptocurrencies and Money Markets. By utilising both, it is possible to do a fully-fledged competitive analysis with the tickers found from the FinanceDatabase inputted into the FinanceToolkit.


🔌 The Finance Toolkit is also available as an MCP Server

Query 200+ metrics from Claude, Copilot, Cursor, Windsurf or any MCP-compatible client without writing code.

  • Hosted: connect to https://financetoolkit.jeroenbouma.com/mcp — OAuth handles the rest on first use.
  • Local: uvx --from "financetoolkit[mcp]" financetoolkit-mcp-setup — sets up your client config and API key automatically. See MCP Server Documentation for manual setup.

Also on Smithery, Glama, MCP Servers and more.


Table of Contents

  1. Installation
  2. Functionality
  3. MCP Server
  4. Questions & Answers
  5. Contributing
  6. Mentions
  7. Contact

Installation

Before installation, consider starring the project on GitHub which helps others find the project as well.

image

To install the Finance Toolkit it simply requires the following:

pip install financetoolkit -U

Then within Python use:

from financetoolkit import Toolkit

companies = Toolkit(
    tickers=['AAPL', 'MSFT'],
    api_key="FINANCIAL_MODELING_PREP_KEY",  # replace with your actual API key
)

To be able to get started, you need to obtain an API Key from FinancialModelingPrep. This is used to gain access to 30+ years of financial statement both annually and quarterly. Note that the Free plan is limited to 250 requests each day, 5 years of data and only features companies listed on US exchanges.


Obtain an API Key from FinancialModelingPrep here.


Through the link you are able to subscribe for the free plan and also premium plans at a 15% discount. This is an affiliate link and thus supports the project at the same time. I have chosen FinancialModelingPrep as a source as I find it to be the most transparent, reliable and at an affordable price. I have yet to find a platform offering such low prices for the amount of data offered. When you notice that the data is inaccurate or have any other issue related to the data, note that I simply provide the means to access this data and I am not responsible for the accuracy of the data itself. For this, use their contact form or provide the data yourself.

By default, the Finance Toolkit prioritizes Financial Modeling Prep for data retrieval. If data acquisition from Financial Modeling Prep is unsuccessful (e.g., due to plan restrictions or API key issues), the toolkit automatically switches to Yahoo Finance as a secondary source. To disable this fallback behavior and exclusively use Financial Modeling Prep, set enforce_source="FinancialModelingPrep" during Toolkit initialization. This configuration ensures that an error is raised if Financial Modeling Prep data cannot be accessed. Alternatively, you can set enforce_source="YahooFinance" to exclusively use Yahoo Finance as the data source.

Functionality

This section is an introduction to the Finance Toolkit. Find with the link below fully-fledged code documentation as well as Jupyter Notebooks in which you can see many examples ranging from basic examples to creating custom ratios to working with your own datasets.


Find a variety of How-To Guides including Code Documentation for the FinanceToolkit here.


A basic example of how to use the Finance Toolkit is shown below. Every code snippet in the sections that follow builds on this same companies instance.

from financetoolkit import Toolkit

# Initialize the Toolkit for Apple and Microsoft
companies = Toolkit(["AAPL", "MSFT"], api_key=API_KEY, start_date="2017-12-31")

Each ratio, indicator and metric has a corresponding function that can be called directly, for example ratios.get_return_on_equity or technicals.get_relative_strength_index. Every module also has one or more collect_ functions that return a whole category at once, e.g. ratios.collect_profitability_ratios, useful when you want everything in one call instead of assembling it metric by metric.

Three capabilities cut across nearly the whole toolkit:

  • rolling and trailing windows. Many metrics return one value per reporting period by default. Pass rolling=<n> to compute the metric over a sliding window instead, or trailing=<n> for a trailing sum/average (e.g. a trailing 4-quarter sum to annualize a quarterly flow) — turning a snapshot into a proper time series.
  • growth and lag. Pass growth=True on almost any get_ or collect_ function to return the period-over-period growth instead of the raw value. lag (an int or list of ints, default 1) controls how many periods back that growth is measured against, e.g. lag=4 for year-over-year growth on quarterly data. Combine with trailing (e.g. trailing=4, growth=True) to get TTM growth.
  • standardize (Z-Score). Most get_* methods across Economics, Ratios, Technicals, Risk, Performance, Models, Options and Fixed Income accept standardize=True, converting raw values into standard deviations from their own historical mean/std. Useful for ranking, scoring, or spotting an unusual reading across metrics that otherwise live on incompatible scales.

Every module below also has a How-To Guide notebook and full code documentation (formulas, parameters, worked examples) linked in its own section, see the documentation hub for the complete index.

Discovering Instruments & News

Before analyzing a ticker you often need to find it. The Discovery module is standalone and covers among other things lists of companies, cryptocurrencies, forex, commodities, ETFs and indices.

from financetoolkit import Discovery

# Initialize the standalone Discovery module
discovery = Discovery(api_key="FINANCIAL_MODELING_PREP_KEY")

# Screen for stocks matching a set of criteria
discovery.get_stock_screener(
    market_cap_higher=1000000,
    price_higher=100,
    price_lower=200,
    beta_higher=1,
    beta_lower=1.5,
    dividend_higher=1,
)

Which returns:

Symbol Name Market Cap Sector Industry Beta Price Dividend Exchange Country
NKE NIKE, Inc. 163403295604 Consumer Cyclical Footwear & Accessories 1.079 107.36 1.48 New York Stock Exchange US
SAF.PA Safran SA 66234006559 Industrials Aerospace & Defense 1.339 160.16 1.35 Paris FR
ROST Ross Stores, Inc. 46724188589 Consumer Cyclical Apparel Retail 1.026 138.785 1.34 NASDAQ Global Select US

Furthermore, you can find in this module stock screeners, sector/industry performance and news feeds and more. Find the Notebook here and the full instrument discovery documentation here.

Obtaining Historical Data

Obtain historical data on a daily, weekly, monthly or yearly basis. This includes OHLC, volumes, dividends, returns and cumulative returns for each corresponding period.

# Obtain historical market data for all tickers
historical_data = companies.get_historical_data()

# Select the results for Apple
historical_data.xs('AAPL', axis=1, level=1)

For example, a portion of the historical data for Apple is shown below.

date Open High Low Close Adj Close Volume Dividends Return Cumulative Return
2018-01-02 42.54 43.075 42.315 43.065 40.78 1.02224e+08 0 0 1
2018-01-03 43.1325 43.6375 42.99 43.0575 40.77 1.17982e+08 0 -0.0002 0.9998
2018-01-04 43.135 43.3675 43.02 43.2575 40.96 8.97384e+07 0 0.0047 1.0044
2018-01-05 43.36 43.8425 43.2625 43.75 41.43 9.46401e+07 0 0.0115 1.0159
2018-01-08 43.5875 43.9025 43.4825 43.5875 41.27 8.22711e+07 0 -0.0039 1.012

And below the cumulative returns are plotted which include the S&P 500 as benchmark:

HistoricalData

Metrics such as Volatility, Excess Return and Excess Volatility are calculated as dedicated Risk and Performance methods rather than columns on this table to create more efficient and flexible functionalities. Find the Notebook here and the full historical data documentation here.

Obtaining Financial Statements

Obtain an Income Statement on an annual or quarterly basis. This can also be a balance statement or cash flow statement.

# Obtain the Income Statement for all tickers
income_statement = companies.get_income_statement()

# Select the results for Apple
income_statement.loc['AAPL']

For example, the first 5 rows of the Income Statement for Apple are shown below.

2017 2018 2019 2020 2021 2022 2023
Revenue 2.29234e+11 2.65595e+11 2.60174e+11 2.74515e+11 3.65817e+11 3.94328e+11 3.83285e+11
Cost of Goods Sold 1.41048e+11 1.63756e+11 1.61782e+11 1.69559e+11 2.12981e+11 2.23546e+11 2.14137e+11
Gross Profit 8.8186e+10 1.01839e+11 9.8392e+10 1.04956e+11 1.52836e+11 1.70782e+11 1.69148e+11
Gross Profit Ratio 0.3847 0.3834 0.3782 0.3823 0.4178 0.4331 0.4413
Research and Development Expenses 1.1581e+10 1.4236e+10 1.6217e+10 1.8752e+10 2.1914e+10 2.6251e+10 2.9915e+10

And below the Earnings Before Interest, Taxes, Depreciation and Amortization (EBITDA) are plotted for both Apple and Microsoft. Find the Notebook here and the full financial statement documentation here.

FinancialStatements

Obtaining Financial Ratios

Get Profitability Ratios based on the inputted balance sheet, income and cash flow statements. This can be any of the 80+ ratios within the ratios module.

# Collect all Profitability Ratios for all tickers
profitability_ratios = companies.ratios.collect_profitability_ratios()

# Select the results for Microsoft
profitability_ratios.loc['MSFT']

For example, see some of the profitability ratios of Microsoft below.

2017 2018 2019 2020 2021 2022 2023
Gross Margin 0.6191 0.6525 0.659 0.6778 0.6893 0.684 0.6892
Operating Margin 0.2482 0.3177 0.3414 0.3703 0.4159 0.4206 0.4177
Net Profit Margin 0.2357 0.1502 0.3118 0.3096 0.3645 0.3669 0.3415
Interest Coverage Ratio 13.9982 16.5821 20.3429 25.3782 34.7835 47.4275 52.0244
Income Before Tax Profit Margin 0.2574 0.3305 0.3472 0.3708 0.423 0.4222 0.4214

And below a few of the profitability ratios are plotted for Microsoft.

FinancialRatios

The 80+ ratios are divided into five categories: Efficiency (asset/inventory/receivables turnover, cash conversion cycle, R&D/SG&A/SBC-to-revenue), Liquidity (current, quick and cash ratios, working capital), Profitability (margins, ROE/ROA/ROIC, cash vs. effective tax rate), Solvency (debt-to-equity, debt-to-capital, interest and dividend coverage) and Valuation (P/E, PEG, Forward P/E, EV multiples, buyback and shareholder yield). It's also possible to define fully custom ratios calculated automatically from the balance sheet, income and cash flow statements. Find the Notebook here and the full ratio-by-ratio documentation here.

Obtaining Financial Models

Get an Extended DuPont Analysis based on the inputted balance sheet, income and cash flow statements.

# Get the Extended DuPont Analysis for all tickers
extended_dupont_analysis = companies.models.get_extended_dupont_analysis()

# Select the results for Apple
extended_dupont_analysis.loc['AAPL']

For example, this shows the Extended DuPont Analysis for Apple:

2017 2018 2019 2020 2021 2022 2023
Interest Burden Ratio 0.9572 0.9725 0.9725 0.988 0.9976 1.0028 1.005
Tax Burden Ratio 0.7882 0.8397 0.8643 0.8661 0.869 0.8356 0.8486
Operating Profit Margin 0.2796 0.2745 0.2527 0.2444 0.2985 0.302 0.2967
Asset Turnover nan 0.7168 0.7389 0.8288 1.0841 1.1206 1.0868
Equity Multiplier nan 3.0724 3.5633 4.2509 5.255 6.1862 6.252
Return on Equity nan 0.4936 0.5592 0.7369 1.4744 1.7546 1.7195

And below each component of the Extended Dupont Analysis is plotted including the resulting Return on Equity (ROE).

Models

The models module covers 10+ models in total, for example DuPont Analysis, WACC, Economic Value Added (EVA), Altman Z-Score, Beneish M-Score and the Graham Number. Find the Notebook here and the full model-by-model documentation here.

Obtaining Options and Greeks

Get the Black Scholes Model for both call and put options including the relevant Greeks, in this case Delta, Gamma, Theta and Vega. This can be any of the First, Second or Third Order Greeks.

# Get Delta for all tickers across strikes and expirations
delta = companies.options.get_delta(expiration_time_range=180)

# Select the results for Apple
delta.loc['AAPL']

For example, see the delta of the Call options for Apple for multiple expiration times and strike prices below (Stock Price: 185.92, Volatility: 31.59%, Dividend Yield: 0.49% and Risk Free Rate: 3.95%):

1 Month 2 Months 3 Months 4 Months 5 Months 6 Months
175 0.7686 0.7178 0.6967 0.6857 0.6794 0.6759
180 0.6659 0.64 0.6318 0.629 0.6285 0.6291
185 0.5522 0.5583 0.5648 0.571 0.5767 0.5816
190 0.4371 0.4762 0.4977 0.513 0.5249 0.5342
195 0.3298 0.3971 0.4324 0.4562 0.474 0.4875

Which can also be plotted together with Gamma, Theta and Vega as follows:

Greeks

The options module is divided into four categories: Option Pricing (Black-Scholes, Binomial Model, Implied Volatility), First-Order Greeks (Delta, Vega, Theta, Rho), Second-Order Greeks (Gamma, Vanna, Charm, Vomma) and Third-Order Greeks (Speed, Zomma, Color, Ultima). Find the Notebook here and the full option pricing and Greeks documentation here.

Obtaining Performance Metrics

Get the correlations with the factors as defined by Fama-and-French. These include market, size, value, operating profitability and investment. The beauty of all functionality here is that it can be based on any period as the function accepts the period intraday, weekly, monthly, quarterly and yearly.

# Get the Fama-French factor correlations for all tickers, quarterly
factor_asset_correlations = companies.performance.get_factor_asset_correlations(period="quarterly")

# Select the results for Apple
factor_asset_correlations['AAPL']

For example, this shows the quarterly correlations for Apple:

Mkt-RF SMB HML RMW CMA
2022Q2 0.9177 -0.1248 -0.5077 -0.3202 -0.2624
2022Q3 0.8092 0.1528 -0.5046 -0.1997 -0.5231
2022Q4 0.8998 0.2309 -0.5968 -0.1868 -0.5946
2023Q1 0.7737 0.1606 -0.3775 -0.228 -0.5707
2023Q2 0.7416 -0.1166 -0.2722 0.0093 -0.4745

And below the correlations with each factor are plotted over time for both Apple and Microsoft.

Performance

Beyond Beta, CAPM and the Fama-French factors, the performance module covers around 20+ metrics in total, for example Sharpe Ratio, Sortino Ratio, Calmar Ratio, Omega Ratio and the Correlation Matrix. Most of these also support rolling=<n> for a value that evolves through time instead of one number per period. Find the Notebook here and the full performance metric documentation here.

Obtaining Risk Metrics

Get the Value at Risk for each week. Here, the days within each week are considered for the Value at Risk. This makes it so that you can understand within each period what is the expected Value at Risk (VaR) which can again be any period but also based on distributions such as Historical, Gaussian, Student-t, Cornish-Fisher, or a Peak-over-Threshold Extreme Value Theory (distribution="evt") fit for the tail.

# Get the weekly Value at Risk for all tickers
companies.risk.get_value_at_risk(period="weekly")
AAPL MSFT Benchmark
2023-09-25/2023-10-01 -0.0205 -0.0133 -0.0122
2023-10-02/2023-10-08 -0.0048 -0.0206 -0.0108
2023-10-09/2023-10-15 -0.0089 -0.0092 -0.0059
2023-10-16/2023-10-22 -0.0135 -0.0124 -0.0131
2023-10-23/2023-10-29 -0.0224 -0.0293 -0.0139

And below the Value at Risk (VaR) for Apple, Microsoft and the benchmark (S&P 500) are plotted also demonstrating the impact of COVID-19.

Risk

Beyond VaR/CVaR/Entropic VaR, the risk module covers around 20+ metrics in total, for example Conditional Drawdown at Risk, Maximum Drawdown Duration, EWMA Volatility and the Hurst Exponent. Most of these support rolling=<n> for a value that evolves through time instead of one number per period. Find the Notebook here and the full risk metric documentation here.

Obtaining Technical Indicators

Get the Ichimoku Cloud parameters based on the historical market data. This can be any of the 40+ technical indicators within the technicals module.

# Get the Ichimoku Cloud for all tickers
ichimoku_cloud = companies.technicals.get_ichimoku_cloud()

# Select the results for Apple
ichimoku_cloud.xs('AAPL', axis=1, level=1)

For example, see some of the parameters for Apple below:

Date Base Line Conversion Line Leading Span A Leading Span B
2023-10-30 174.005 171.755 176.245 178.8
2023-10-31 174.005 171.755 176.37 178.8
2023-11-01 174.005 170.545 176.775 178.8
2023-11-02 174.005 171.725 176.235 178.8
2023-11-03 174.005 171.725 175.558 178.8

And below the Ichimoku Cloud parameters are plotted for Apple and Microsoft side-by-side.

Technicals

The 40+ indicators are divided into four categories: Breadth (McClellan Oscillator, Advancers/Decliners, OBV, ADL, Chaikin Oscillator, TRIN, New Highs - New Lows), Momentum (RSI, MACD, Stochastic, Williams %R, Aroon, CCI, ADX and more), Overlap (SMA, EMA, DEMA, TRIX, WMA, Hull MA, VWAP, Parabolic SAR, Pivot Points, Support/Resistance) and Volatility (ATR, Keltner Channels, Bollinger Bands, Donchian Channels, Volatility Cone). Find the Notebook here and the full technical indicator documentation here.

Obtaining Fixed Income Metrics

Get access to the ICE BofA Corporate Bond benchmark indices and a variety of other bond and derivative related valuations within the fixedincome module.

# Get the ICE BofA Effective Yield for each Credit Rating
companies.fixedincome.get_ice_bofa_effective_yield(maturity=False)

For example, see the Effective Yield for the ICE BofA Corporate Bond Index below for each Credit Rating:

Date AAA AA A BBB BB B CCC
2024-04-19 0.0518 0.0532 0.0561 0.0594 0.0678 0.0804 0.1385
2024-04-22 0.0517 0.0532 0.056 0.0593 0.0671 0.0793 0.1377
2024-04-23 0.0514 0.0528 0.0556 0.0589 0.066 0.0777 0.1364
2024-04-24 0.0518 0.0531 0.0559 0.0592 0.0664 0.0778 0.1361
2024-04-25 0.0524 0.0537 0.0564 0.0598 0.0673 0.079 0.1368

And below a variety of Fixed Income metrics are shown all acquired from the Fixed Income module.

Fixed Income

Beyond ICE BofA benchmarks, the fixedincome module covers Bond Valuations (Present Value, Macaulay/Modified Duration, Convexity, Yield to Maturity), Derivative Valuations (Black and Bachelier models for Swaptions), Government Bonds (3-month and 10-year yields) and Central Bank rates (Euribor, ECB and Federal Reserve rates incl. SOFR). It can be called via companies.fixedincome or standalone through from financetoolkit import FixedIncome. Find the Notebook here and the full fixed income documentation here.

Understanding Key Economic Indicators

Get insights for 60+ countries into key economic indicators such as the Consumer Price Index (CPI), Gross Domestic Product (GDP), Unemployment Rates and 3-month and 10-year Government Interest Rates. This is done through the economics module and can be used as a standalone module as well by using from financetoolkit import Economics.

# Get the Unemployment Rate for a selection of countries
companies.economics.get_unemployment_rate()

For example see a selection of the countries below:

Colombia United States Sweden Japan Germany
2017 0.093 0.0435 0.0686 0.0281 0.0357
2018 0.0953 0.039 0.0648 0.0244 0.0321
2019 0.1037 0.0367 0.0691 0.0235 0.0298
2020 0.1586 0.0809 0.0848 0.0278 0.0362
2021 0.1381 0.0537 0.0889 0.0282 0.0358
2022 0.1122 0.0365 0.0748 0.026 0.0307

And below these Unemployment Rates are plotted over time:

Economics

The 40+ indicators are divided into five categories: Government (GDP, government debt/revenue/expenditure/deficit, trust in government), Economy (CPI, inflation, consumer/business confidence, house/rent/share prices), Finance (money supply, central bank policy rate, short/long-term interest rates), Environment (renewable energy, carbon footprint) and Jobs & Society (unemployment, labour productivity, income inequality, population, poverty rate). Find the Notebook here and the full economic indicator documentation here.

Explore your own Portfolio

Through a custom XLSX, XLS or CSV file you are able to load in your own portfolio directly into the Finance Toolkit. This allows you to view your positions and performance (over time) versus a benchmark and other positions as well as your PnL development over time. Furthermore, the portfolio can be directly loaded in the core functionality of the Finance Toolkit as well making it possible to calculate all metrics and ratios for your portfolio (which is a time-weighted sum of all positions). The portfolio module is a standalone module and can be used as such by using from financetoolkit import Portfolio. Find the the full portfolio documentation here.


It is important to note that it requires a specific Excel template to work, see for further instructions the following notebook here.


from financetoolkit import Portfolio

# Initialize the Portfolio module with your own dataset
portfolio = Portfolio(example=True, api_key="FINANCIAL_MODELING_PREP_KEY")

# Get an overview of all positions
portfolio.get_positions_overview()

The table below shows one of the functionalities of the Portfolio module but is purposely shrunken down given the >30 assets.

Identifier Volume Costs Price Invested Latest Price Latest Value Return Return Value Benchmark Return Volatility Benchmark Volatility Alpha Beta Weight
AAPL 137 -28 38.9692 5310.78 241.84 33132.1 5.2386 27821.3 2.2258 0.3858 0.1937 3.0128 1.2027 0.0405
ALGN 81 -34 117.365 9472.53 187.03 15149.4 0.5993 5676.9 2.1413 0.5985 0.1937 -1.542 1.5501 0.0185
AMD 78 -30 11.9075 898.784 99.86 7789.08 7.6662 6890.3 3.7945 0.6159 0.1937 3.8718 1.6551 0.0095
AMZN 116 -28 41.5471 4791.46 212.28 24624.5 4.1392 19833 1.8274 0.4921 0.1937 2.3118 1.1594 0.0301
ASML 129 -25 33.3184 4273.07 709.08 91471.3 20.4065 87198.3 3.8005 0.4524 0.1937 16.606 1.4407 0.1119
VOO 77 -12 238.499 18352.5 546.33 42067.4 1.2922 23715 1.1179 0.1699 0.1937 0.1743 0.9973 0.0515
WMT 92 -18 17.8645 1625.53 98.61 9072.12 4.581 7446.59 2.4787 0.2334 0.1937 2.1024 0.4948 0.0111
Portfolio 2142 -532 59.8406 128710 381.689 817577 5.3521 688867 2.0773 0.4193 0.1937 3.2747 1.2909 1

In which the weights and returns can be depicted as follows:

Portfolio

MCP Server

The Finance Toolkit MCP Server exposes 200+ financial metrics, models, and economic indicators directly to any AI assistant that supports the Model Context Protocol (MCP). Ask questions in plain English — the AI fetches live financial data on your behalf, backed by the transparent, open-source calculation methods of the Finance Toolkit.

See an example of the Finance Toolkit MCP server in action in Claude Desktop below:

https://github.com/user-attachments/assets/96ad5288-d83d-4497-a345-1841c48c29d5

Remote server

Connect directly to the hosted server at https://financetoolkit.jeroenbouma.com/mcp. Nothing needs to be installed locally. On first connection your client opens an OAuth consent page asking for your FMP API key; enter it once and the server handles authentication from there.

Client Steps
Claude Desktop Customize → Connectors → Add custom connector → paste the URL
Claude.ai Customize → Connectors → Add custom connector → paste the URL
Claude Code claude mcp add --transport http finance-toolkit https://financetoolkit.jeroenbouma.com/mcp
VS Code Command Palette → MCP: Add Server → HTTP → paste the URL
Cursor Settings → Features → MCP Servers → Add new → http → paste the URL
Windsurf Settings → MCP Servers → Add Server → Remote/HTTP → paste the URL

Local installation

Run the setup wizard — it locates your client's config file and writes the MCP entry automatically, including the API key:

uvx --from "financetoolkit[mcp]" financetoolkit-mcp-setup

For manual config, add the following to your client's MCP config file (e.g. claude_desktop_config.json, .cursor/mcp.json, .vscode/mcp.json):

{
  "mcpServers": {
    "finance-toolkit": {
      "command": "uvx",
      "args": ["--from", "financetoolkit[mcp]", "financetoolkit-mcp"],
      "env": { "FINANCIAL_MODELING_PREP_API_KEY": "YOUR_API_KEY_HERE" }
    }
  }
}

Alternatively, download the Finance Toolkit MCPB bundle and open it with Claude Desktop. An installation dialog will prompt for your FMP API key.

Questions & Answers

This section includes frequently asked questions and is meant to clear up confusion about certain results and/or deviations from other sources. If you have any questions that are not answered here, feel free to reach out to me via the contact details below.

How do you deal with companies that have different fiscal years?

For any financial statement, I make sure to line it up with the corresponding calendar period. For example, Apple's Q4 2023 relates to July to September of 2023. This corresponds to the calendar period Q3 which is why I normalize Apple's numbers to Q3 2023 instead. This is done to allow for comparison between companies that have different fiscal years.

Why do the numbers in the financial statements sometimes deviate from the data from FinancialModelingPrep?

When looking at a company such as Hyundai Motor Company (ticker: 005380.KS), you will notice that the financial statements are reported in KRW (South Korean won). As this specific ticker is listed on the Korean Exchange, the historical market data will also be reported in KRW. However, if you use the ticker HYMTF, which is listed on the American OTC market, the historical market data will be reported in USD. To deal with this discrepancy, the end of year or end of quarter exchange rate is retrieved which is used to convert the financial statements to USD. This is done to prevent ratio calculations such as the Free Cash Flow Yield (which is based on the market capitalization) or Price Earnings Ratio (which is based on the stock price) from being incorrect. This can be disabled by setting convert_currency=False in the Toolkit initialization. It is recommended to always use the ticker that is listed on the exchange where the company is based.

How can I get TTM (Trailing Twelve Months) and Growth metrics?

Most functions will have the option to define the trailing parameter. This lets you define the number of periods that you want to use to calculate the trailing metrics. For example, if you want to calculate the trailing 12-month (TTM) Price-to-Earnings Ratio, you can set trailing=4 when you have set quarterly=True in the Toolkit initialization. The same goes for growth metrics which can be calculated by setting growth=True. This will calculate the growth for each period based on the previous period. This also includes a lag parameter in which you can define lagged growth. Furthermore, you can also combine the trailing and growth parameters to get trailing growth. For example, set trailing=4 and growth=True for the Price-to-Earnings Ratio which will then calculate the TTM growth.

How can I save the data periodically so that I don't have to retrieve it every single time again?

The Toolkit has the option to work with cached data through use_cached_data=True when initializing the Toolkit class. If you then use any of the functionalities of the Toolkit itself (e.g. get_balance_sheet_statement) it will store the data in a pickle file. When initializing the Toolkit class again with use_cached_data=True, it will load the data from the pickle file including all other previously set parameters (e.g. start_date and quarterly). You are also able to select a specific location to store the cached data by providing a string to the use_cached_data parameter. This will store the data in the provided location (with the assumption the folder exists).

As an example:

image

If I wish to receive this data again, I no longer need an API key or set the tickers and can simply keep use_cached_data=True.

image

Please note that it will force the settings as found in the pickle files so if you wish to use a different time period, you will have to recollect.

image

You can also change the folder by entering a string instead of a boolean for the use_cached_data parameter.

image

What is the "Benchmark" that is automatically obtained when acquiring historical data?

This is related to the benchmark_ticker parameter which is set to "SPY" (S&P 500) by default. This is important when calculating performance metrics such as the Sharpe Ratio or Treynor Ratio that require a market return. This can be disabled by setting benchmark_ticker=None in the Toolkit initialization.

Data collection seems to be slow, what could be the issue?

Generally, it should take less than 15 seconds to retrieve the historical data of 100 tickers. If it takes much longer, this could be due to reaching the API limit (the Starter plan has 250 requests per minute), due to a slow internet connection or due to unoptimized code. As the Finance Toolkit makes use of threading, initializing the Toolkit with a single ticker will result in a slow process. This is because the Toolkit will have to wait for the previous request to finish before it can start the next one. Therefore, it is recommended to initialize the Toolkit with all tickers you want to analyze. If it is taking 10+ minutes consider having a look at this issue that managed to resolve the problem.

Are you part of FinancialModelingPrep?

No, I am not. I've merely picked them as the primary data provider given that they have a generous free tier and fair pricing compared to other providers. Therefore, any questions related to the data should go through their contact form. When it comes to any type of ratios, performance metrics, risk metrics, technical indicators or economic indicators, feel free to reach out to me as this is my own work.

Contributing

First off all, thank you for taking the time to contribute (or at least read the Contributing Guidelines)! 🚀


Find the Contributing Guidelines here.


The goal of the Finance Toolkit is to make any type of financial calculation as transparent and efficient as possible. I want to make these type of calculations as accessible to anyone as possible and seeing how many websites exists that do the same thing (but instead you have to pay) gave me plenty of reasons to work on this.

Mentions

The Finance Toolkit has been mentioned in various blogposts, research papers, newsletters and social media. Below is a list of some of the mentions that I am aware of. If you have any other mentions, feel free to reach out to me so I can add them to this list.

Blogposts

Research

Newsletters & Social Media

Contact

If you have any questions about the Finance Toolkit or would like to share with me what you have been working on, feel free to reach out to me via:

If you'd like to support my efforts, either help me out by contributing to the package or Sponsor Me.

Star History Chart

from github.com/JerBouma/FinanceToolkit

Установка Finance Toolkit

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/JerBouma/FinanceToolkit

FAQ

Finance Toolkit MCP бесплатный?

Да, Finance Toolkit MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Finance Toolkit?

Нет, Finance Toolkit работает без API-ключей и переменных окружения.

Finance Toolkit — hosted или self-hosted?

Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.

Как установить Finance Toolkit в Claude Desktop, Claude Code или Cursor?

Открой Finance Toolkit на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

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