Skip to main content

RiskOptima is a powerful Python toolkit for financial risk analysis, portfolio optimization, and advanced quantitative modeling. It integrates state-of-the-art methodologies, including Monte Carlo simulations, Value at Risk (VaR), Conditional VaR (CVaR), Black-Scholes, Heston, and Merton Jump Diffusion models, to aid investors in making data-driven investment decisions.

Project description

RiskOptima

image

RiskOptima is a comprehensive Python toolkit for evaluating, managing, and optimizing investment portfolios. This package is designed to empower investors and data scientists by combining financial risk analysis, backtesting, mean-variance optimization, and machine learning capabilities into a single, cohesive package.

Stats

https://pypistats.org/packages/riskoptima

Key Features

  • Portfolio Optimization: Includes mean-variance optimization, efficient frontier calculation, and maximum Sharpe ratio portfolio construction.
  • Risk Management: Compute key financial risk metrics such as Value at Risk (VaR), Conditional Value at Risk (CVaR), volatility, and drawdowns.
  • Backtesting Framework: Simulate historical performance of investment strategies and analyze portfolio dynamics over time.
  • Machine Learning Integration: Future-ready for implementing machine learning models for predictive analytics and advanced portfolio insights.
  • Monte Carlo Simulations: Perform extensive simulations to analyze potential portfolio outcomes. See example here https://github.com/JordiCorbilla/efficient-frontier-monte-carlo-portfolio-optimization
  • Comprehensive Financial Metrics: Calculate returns, Sharpe ratios, covariance matrices, and more.

Installation

See the project here: https://pypi.org/project/riskoptima/

pip install riskoptima

Usage

Example 1: Setting up your portfolio

Create your portfolio table similar to the below:

Asset Weight Label MarketCap
MO 0.04 Altria Group Inc. 110.0e9
NWN 0.14 Northwest Natural Gas 1.8e9
BKH 0.01 Black Hills Corp. 4.5e9
ED 0.01 Con Edison 30.0e9
PEP 0.09 PepsiCo Inc. 255.0e9
NFG 0.16 National Fuel Gas 5.6e9
KO 0.06 Coca-Cola Company 275.0e9
FRT 0.28 Federal Realty Inv. Trust 9.8e9
GPC 0.16 Genuine Parts Co. 25.3e9
MSEX 0.05 Middlesex Water Co. 2.4e9
import pandas as pd
from riskoptima import RiskOptima

import warnings
warnings.filterwarnings(
    "ignore", 
    category=FutureWarning, 
    message=".*DataFrame.std with axis=None is deprecated.*"
)

# Define your current porfolio with your weights and company names
asset_data = [
    {"Asset": "MO",    "Weight": 0.04, "Label": "Altria Group Inc.",       "MarketCap": 110.0e9},
    {"Asset": "NWN",   "Weight": 0.14, "Label": "Northwest Natural Gas",   "MarketCap": 1.8e9},
    {"Asset": "BKH",   "Weight": 0.01, "Label": "Black Hills Corp.",         "MarketCap": 4.5e9},
    {"Asset": "ED",    "Weight": 0.01, "Label": "Con Edison",                "MarketCap": 30.0e9},
    {"Asset": "PEP",   "Weight": 0.09, "Label": "PepsiCo Inc.",              "MarketCap": 255.0e9},
    {"Asset": "NFG",   "Weight": 0.16, "Label": "National Fuel Gas",         "MarketCap": 5.6e9},
    {"Asset": "KO",    "Weight": 0.06, "Label": "Coca-Cola Company",         "MarketCap": 275.0e9},
    {"Asset": "FRT",   "Weight": 0.28, "Label": "Federal Realty Inv. Trust", "MarketCap": 9.8e9},
    {"Asset": "GPC",   "Weight": 0.16, "Label": "Genuine Parts Co.",         "MarketCap": 25.3e9},
    {"Asset": "MSEX",  "Weight": 0.05, "Label": "Middlesex Water Co.",       "MarketCap": 2.4e9}
]
asset_table = pd.DataFrame(asset_data)

capital = 100_000

asset_table['Portfolio'] = asset_table['Weight'] * capital

ANALYSIS_START_DATE = RiskOptima.get_previous_year_date(RiskOptima.get_previous_working_day(), 1)
ANALYSIS_END_DATE   = RiskOptima.get_previous_working_day()
BENCHMARK_INDEX     = 'SPY'
RISK_FREE_RATE      = 0.05
NUMBER_OF_WEIGHTS   = 10_000
NUMBER_OF_MC_RUNS   = 1_000

Example 1: Creating a Portfolio Area Chart

If you want to know visually how's your portfolio doing right now

RiskOptima.create_portfolio_area_chart(
    asset_table,
    end_date=ANALYSIS_END_DATE,
    lookback_days=2,
    title="Portfolio Area Chart"
)

portfolio_area_chart_20250212_095626

Example 2: Efficient Frontier - Monte Carlo Portfolio Optimization

RiskOptima.plot_efficient_frontier_monte_carlo(
    asset_table,
    start_date=ANALYSIS_START_DATE,
    end_date=ANALYSIS_END_DATE,
    risk_free_rate=RISK_FREE_RATE,
    num_portfolios=NUMBER_OF_WEIGHTS,
    market_benchmark=BENCHMARK_INDEX,
    set_ticks=False,
    x_pos_table=1.15,    # Position for the weight table on the plot
    y_pos_table=0.52,    # Position for the weight table on the plot
    title=f'Efficient Frontier - Monte Carlo Simulation {ANALYSIS_START_DATE} to {ANALYSIS_END_DATE}'
)

efficient_frontier_monter_carlo_20250203_205339

Example 3: Portfolio Optimization using Mean Variance and Machine Learning

RiskOptima.run_portfolio_optimization_mv_ml(
    asset_table=asset_table,
    training_start_date='2022-01-01',
    training_end_date='2023-11-27',
    model_type='Linear Regression',    
    risk_free_rate=RISK_FREE_RATE,
    num_portfolios=100000,
    market_benchmark=[BENCHMARK_INDEX],
    max_volatility=0.25,
    min_weight=0.03,
    max_weight=0.2
)

machine_learning_optimization_20250203_210953

Example 4: Portfolio Optimization using Probability Analysis

RiskOptima.run_portfolio_probability_analysis(
    asset_table=asset_table,
    analysis_start_date=ANALYSIS_START_DATE,
    analysis_end_date=ANALYSIS_END_DATE,
    benchmark_index=BENCHMARK_INDEX,
    risk_free_rate=RISK_FREE_RATE,
    number_of_portfolio_weights=NUMBER_OF_WEIGHTS,
    trading_days_per_year=RiskOptima.get_trading_days(),
    number_of_monte_carlo_runs=NUMBER_OF_MC_RUNS
)

probability_distributions_of_final_fund_returns20250205_212501

Example 5: Macaulay Duration

from riskoptima import RiskOptima
cf = RiskOptima.bond_cash_flows_v2(4, 1000, 0.06, 2)  # 2 years, semi-annual, hence 4 periods
md_2 = RiskOptima.macaulay_duration_v3(cf, 0.05, 2)
md_2

image

Example 6: Market Turns with SPY & VIX Divergence

ANALYSIS_START_DATE = RiskOptima.get_previous_year_date(RiskOptima.get_previous_working_day(), 1)
ANALYSIS_END_DATE   = RiskOptima.get_previous_working_day()

df_signals, df_exits, returns = RiskOptima.run_index_vol_divergence_signals(start_date=ANALYSIS_START_DATE, 
                                                                            end_date=ANALYSIS_END_DATE)

riskoptima_index_vol_divergence_signals_entry_20250316_200414

Documentation

For complete documentation and usage examples, visit the GitHub repository:

RiskOptima GitHub

Contributing

We welcome contributions! If you'd like to improve the package or report issues, please visit the GitHub repository.

License

RiskOptima is licensed under the MIT License.

Support me

Buy Me A Coffee

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

riskoptima-1.44.0.tar.gz (43.7 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

riskoptima-1.44.0-py3-none-any.whl (41.7 kB view details)

Uploaded Python 3

File details

Details for the file riskoptima-1.44.0.tar.gz.

File metadata

  • Download URL: riskoptima-1.44.0.tar.gz
  • Upload date:
  • Size: 43.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.5 CPython/3.12.7 Windows/10

File hashes

Hashes for riskoptima-1.44.0.tar.gz
Algorithm Hash digest
SHA256 b1064f6cad362fbb36cd38bc040e4e89325b1d040bad8a4716780df9bd661784
MD5 f3eeedbd8cb3ddc0f5350964c17a9287
BLAKE2b-256 d9542a8af515e67c524afd1e848dc27781da7b87cd5c3dcd336a19be175ea763

See more details on using hashes here.

File details

Details for the file riskoptima-1.44.0-py3-none-any.whl.

File metadata

  • Download URL: riskoptima-1.44.0-py3-none-any.whl
  • Upload date:
  • Size: 41.7 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.5 CPython/3.12.7 Windows/10

File hashes

Hashes for riskoptima-1.44.0-py3-none-any.whl
Algorithm Hash digest
SHA256 47f3116afde3e72b54da1498cbf4bc987e18998803162115cfcae53192d1540d
MD5 2395663b46ae8e07cad2d8c084a3c1b6
BLAKE2b-256 c83c39b9916e6590df6b0c15e9ace81178296cecdb0fe2ff3e3978d8dcb63700

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page