Capital market asset valuation engine.
Project description
Aegis
Multi-dimensional asset valuation engine for capital market securities.
What is Aegis?
Aegis
is an open source asset valuation engine that uses many dimensions to create a price profile for an asset. A dimension is a general category of evaluation. This evaluation may or may not be a valuation as it could just relate to a general fact/figure such as employment statistics.
Dimensions are further broken down into components. For example "charts" is a dimension which is comprised of components: technical indicators, trading psychology, boundaries, and patterns.
In terms of package hierarchy: Aegis > Dimension > Component > Class > Function
E.g. Aegis > Equity > Risk > Risk > Sharpe()
Dimensions exist as sub-packages within the Aegis package and can/should be combined by the developer with various other dimensions/components to create hollistic asset valuation. The dimensions and their components are broken down as follows:
- Charts (incomplete)
- Bounds (e.g. all_time_high, all_time_low))
- Indicators (e.g. RSI, OBV, SMA)
- Shapes (e.g. square_consolidating, head_and_shoulders)
- Trend (e.g. strength, forecast)
- Debt
- Utilities
- Equity
- Accounting (e.g. asset_composition, liquidity)
- Growth (e.g. plowback, roe, growth)
- Risk (e.g. beta, cost_of_capital, wacc)
- Statistics (e.g. var, covariance, correlation)
- Valuation (e.g. div_yield, ddm, fixed_div, gordons, PVGO)
- Macroeconomic (incomplete)
- GDP (e.g. GDP, gov_consum, investment)
- Labour (e.g. employment, unemployment, labour_force)
- Price (e.g. cpi, ppi)
- Trade
- Rates (incomplete)
- Sentiment (incomplete)
These dimensions and their relevant components allow Aegis
to evaluate most assets not only according to their accounting book value, but also in accordance with the market, similar-risk products, macro conditions, and more.
Getting Started
Aegis
uses common data science libraries such as pandas
for most of its needs.
Installation
- To get started with
aegis
:
pip install git+ttps://github.com/itchysnake/aegis
If this is giving you errors you can alternatively try:
python -m pip install git+ttps://github.com/itchysnake/aegis
- Check your installation directory
Usage
Once installed you can get started by calling the package:
import aegis
# Using 'charts' dimension
amzn_ath = aegis.charts.bounds.Bounds.ath("AMZN","6mo")
nflx_rsi = aegis.charts.indicators.Indicators.rsi(
ticker = "NFLX",
period =" 6mo",
window = 14
)
# Using 'equity' dimension
aapl_roe = aegis.equity.growth.Growth.roe("AAPL")
msft_risk = aegis.equity.risk.Risk.sharpe("MSFT")
# Using 'macro' dimension
spain_labour = aegis.macro.labour.Labour.unemployment("Spain")
jpn_gdp = aegis.macro.gdp.GDP.gdp("Japan", type = "real")
Feel free to experiment and combine indicators to create valuable insights into the markets.
Data Procurement
Data procurement is not included in Aegis natively. I am currently building a package to integrate Aegis with the existing Alpaca Markets API. At this time you must use whatever is comfortable for you.
License
Aegis is released under the MIT License.
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