Metadata-Version: 2.4
Name: qis
Version: 4.0.1
Summary: Quantitative Investment Strategies (QIS) package implements Python analytics for visualisation of financial data, performance reporting, analysis of quantitative strategies
Author-email: Artur Sepp <artursepp@gmail.com>
Maintainer-email: Artur Sepp <artursepp@gmail.com>
License: MIT
Project-URL: Homepage, https://github.com/ArturSepp/QuantInvestStrats
Project-URL: Documentation, https://github.com/ArturSepp/QuantInvestStrats/blob/master/README.md
Project-URL: Repository, https://github.com/ArturSepp/QuantInvestStrats.git
Project-URL: Issues, https://github.com/ArturSepp/QuantInvestStrats/issues
Keywords: quantitative finance,investment strategies,portfolio analytics,financial data visualization,backtesting,performance attribution,risk analysis,financial statistics,trading strategies,portfolio optimization,systematic strategies,volatility
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: Intended Audience :: Financial and Insurance Industry
Classifier: Intended Audience :: Science/Research
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Programming Language :: Python :: 3.12
Classifier: Programming Language :: Python :: 3.13
Classifier: Topic :: Office/Business :: Financial :: Investment
Classifier: Topic :: Scientific/Engineering :: Mathematics
Classifier: Topic :: Scientific/Engineering :: Information Analysis
Classifier: Topic :: Software Development :: Libraries :: Python Modules
Requires-Python: >=3.9
Description-Content-Type: text/markdown
License-File: LICENSE.txt
Requires-Dist: numba>=0.60.0
Requires-Dist: numpy>=2.0
Requires-Dist: scipy>=1.12.0
Requires-Dist: statsmodels>=0.14.0
Requires-Dist: pandas>=2.2.0
Requires-Dist: matplotlib>=3.8.0
Requires-Dist: seaborn>=0.13.0
Requires-Dist: openpyxl>=3.1.0
Requires-Dist: tabulate>=0.9.0
Requires-Dist: PyYAML>=6.0
Requires-Dist: yfinance>=0.2.40
Requires-Dist: pandas-datareader>=0.10.0
Provides-Extra: reports
Requires-Dist: pybloqs>=1.2.13; extra == "reports"
Requires-Dist: jinja2>=3.0.0; extra == "reports"
Provides-Extra: visualization
Requires-Dist: plotly>=5.0.0; extra == "visualization"
Provides-Extra: io
Requires-Dist: pyarrow>=14.0.0; extra == "io"
Requires-Dist: fsspec>=2024.2.0; extra == "io"
Provides-Extra: database
Requires-Dist: psycopg2>=2.9.5; extra == "database"
Requires-Dist: SQLAlchemy>=2.0.0; extra == "database"
Provides-Extra: jupyter
Requires-Dist: jupyter>=1.0.0; extra == "jupyter"
Requires-Dist: notebook>=6.5.0; extra == "jupyter"
Requires-Dist: jupyterlab>=3.0.0; extra == "jupyter"
Requires-Dist: ipykernel>=6.0.0; extra == "jupyter"
Requires-Dist: ipywidgets>=8.0.0; extra == "jupyter"
Provides-Extra: dev
Requires-Dist: pytest>=7.0.0; extra == "dev"
Requires-Dist: pytest-cov>=4.0.0; extra == "dev"
Requires-Dist: pytest-mock>=3.10.0; extra == "dev"
Requires-Dist: ruff>=0.4; extra == "dev"
Provides-Extra: all
Requires-Dist: qis[database,io,jupyter,reports,visualization]; extra == "all"
Dynamic: license-file

# 🚀 **Quantitative Investment Strategies: QIS**

> qis package implements analytics for visualisation of financial data, performance
reporting, factsheets and analysis of quantitative strategies.

---

| 📊 Metric | 🔢 Value |
|-----------|----------|
| PyPI Version | ![PyPI](https://img.shields.io/pypi/v/qis?style=flat-square) |
| Python Versions | ![Python](https://img.shields.io/pypi/pyversions/qis?style=flat-square) |
| License | ![License](https://img.shields.io/github/license/ArturSepp/QuantInvestStrats.svg?style=flat-square)|
| CI Status | [![CI](https://github.com/ArturSepp/QuantInvestStrats/actions/workflows/ci.yml/badge.svg)](https://github.com/ArturSepp/QuantInvestStrats/actions) |



### 📈 Package Statistics

| 📊 Metric | 🔢 Value |
|-----------|----------|
| Total Downloads | [![Total](https://pepy.tech/badge/qis)](https://pepy.tech/project/qis) |
| Monthly | ![Monthly](https://pepy.tech/badge/qis/month) |
| Weekly | ![Weekly](https://pepy.tech/badge/qis/week) |
| GitHub Stars | ![GitHub stars](https://img.shields.io/github/stars/ArturSepp/QuantInvestStrats?style=flat-square&logo=github) |
| GitHub Forks | ![GitHub forks](https://img.shields.io/github/forks/ArturSepp/QuantInvestStrats?style=flat-square&logo=github) |



## **Quantitative Investment Strategies: QIS** <a name="analytics"></a>
 

The package is split into 5 main modules with the 
dependency path increasing sequentially as follows.

1. ```qis.utils``` is module containing low level utilities for operations with pandas, numpy, and datetimes.

2. ```qis.perfstats``` is module for computing performance statistics and performance attribution including returns, volatilities, etc.

3. ```qis.plots``` is module for plotting and visualization apis.

4. ```qis.models``` is module containing statistical models including filtering and regressions.

5. ```qis.portfolio``` is high level module for analysis, simulation, backtesting, and reporting of quant strategies.
Function ```backtest_model_portfolio()```  in ```qis.portfolio.backtester.py``` takes instrument prices 
and simulated weights from a generic strategy and compute the total return, performance attribution, and risk analysis

```qis.examples``` contains scripts with illustrations of QIS analytics.

```qis.examples.factheets``` contains scripts with examples of factsheets for simulated and actual strategies,
and cross-sectional analysis of backtests.


# Table of contents
1. [Analytics](#analytics)
2. [Installation](#installation)
3. [Examples](#examples)
   1. [Visualization of price data](#price)
   2. [Multi assets factsheet](#multiassets)
   3. [Strategy factsheet](#strategy)
   4. [Strategy benchmark factsheet](#strategybenchmark)
   5. [Multi strategy factsheet](#multistrategy)
   6. [Notebooks](#notebooks)
4. [Contributions](#contributions)
5. [Updates](#updates)
6. [ToDos](#todos)
7. [Disclaimer](#disclaimer)


## **Installation** <a name="installation"></a>
Install using
```python 
pip install qis
```
Upgrade using
```python 
pip install --upgrade qis
```

Close using
```python 
git clone https://github.com/ArturSepp/QuantInvestStrats.git
```

Core dependencies:
    python = ">=3.8",
    numba = ">=0.56.4",
    numpy = ">=1.22.4",
    scipy = ">=1.10",
    statsmodels = ">=0.13.5",
    pandas = ">=2.2.0",
    matplotlib = ">=3.2.2",
    seaborn = ">=0.12.2"

Optional dependencies:
    yfinance ">=0.1.38" (for getting test price data),
    pybloqs ">=1.2.13" (for producing html and pdf factsheets)


## **Examples** <a name="examples"></a>

### 1. Visualization of price data <a name="price"></a>

The script is located in ```qis.examples.performances``` (https://github.com/ArturSepp/QuantInvestStrats/blob/master/qis/examples/performances.py)

```python 
import matplotlib.pyplot as plt
import seaborn as sns
import yfinance as yf
import qis

# define tickers and fetch price data
tickers = ['SPY', 'QQQ', 'EEM', 'TLT', 'IEF', 'SHY', 'LQD', 'HYG', 'GLD']
prices = yf.download(tickers, start="2003-12-31", end=None, ignore_tz=True, auto_adjust=True)['Close'][tickers].dropna()

# plotting price data with minimum usage
with sns.axes_style("darkgrid"):
    fig, ax = plt.subplots(1, 1, figsize=(10, 7))
    qis.plot_prices(prices=prices, x_date_freq='YE', ax=ax)
```
![image info](qis/examples/figures/perf1.PNG)
```python 
# 2-axis plot with drawdowns using sns styles
with sns.axes_style("darkgrid"):
    fig, axs = plt.subplots(2, 1, figsize=(10, 7), tight_layout=True)
    qis.plot_prices_with_dd(prices=prices, x_date_freq='YE', axs=axs)
```
![image info](qis/examples/figures/perf2.PNG)

```python 
# plot risk-adjusted performance table with excess Sharpe ratio
ust_3m_rate = yf.download('^IRX', start="2003-12-31", end=None, ignore_tz=True, auto_adjust=True)['Close'].dropna() / 100.0
# set parameters for computing performance stats including returns vols and regressions
perf_params = qis.PerfParams(freq='ME', freq_reg='QE', rates_data=ust_3m_rate)
# perf_columns is list to display different perfomance metrics from enumeration PerfStat
fig = qis.plot_ra_perf_table(prices=prices,
                             perf_columns=[PerfStat.TOTAL_RETURN, PerfStat.PA_RETURN, PerfStat.PA_EXCESS_RETURN,
                                           PerfStat.VOL, PerfStat.SHARPE_RF0,
                                           PerfStat.SHARPE_EXCESS, PerfStat.SORTINO_RATIO, PerfStat.CALMAR_RATIO,
                                           PerfStat.MAX_DD, PerfStat.MAX_DD_VOL,
                                           PerfStat.SKEWNESS, PerfStat.KURTOSIS],
                             title=f"Risk-adjusted performance: {qis.get_time_period_label(prices, date_separator='-')}",
                             perf_params=perf_params)
```
![image info](qis/examples/figures/perf3.PNG)



```python 
# add benchmark regression using excess returns for linear beta
# regression frequency is specified using perf_params.freq_reg
# regression alpha is multiplied using alpha_an_factor
fig, _ = qis.plot_ra_perf_table_benchmark(prices=prices,
                                          benchmark='SPY',
                                          perf_columns=[PerfStat.TOTAL_RETURN, PerfStat.PA_RETURN, PerfStat.PA_EXCESS_RETURN,
                                                        PerfStat.VOL, PerfStat.SHARPE_RF0,
                                                        PerfStat.SHARPE_EXCESS, PerfStat.SORTINO_RATIO, PerfStat.CALMAR_RATIO,
                                                        PerfStat.MAX_DD, PerfStat.MAX_DD_VOL,
                                                        PerfStat.SKEWNESS, PerfStat.KURTOSIS,
                                                        PerfStat.ALPHA_AN, PerfStat.BETA, PerfStat.R2],
                                          title=f"Risk-adjusted performance: {qis.get_time_period_label(prices, date_separator='-')} benchmarked with SPY",
                                          perf_params=perf_params)
```
![image info](qis/examples/figures/perf4.PNG)



### 2. Multi assets factsheet <a name="multiassets"></a>
This report is adopted for reporting the risk-adjusted performance 
of several assets with the goal
of cross-sectional comparision

Run example in ```qis.examples.factsheets.multi_assets.py``` https://github.com/ArturSepp/QuantInvestStrats/blob/master/qis/examples/factsheets/multi_assets.py

![image info](qis/examples/figures/multiassets.PNG)


### 3. Strategy factsheet <a name="strategy"></a>
This report is adopted for report performance, risk, and trading statistics
for either backtested or actual strategy
    with strategy data passed as PortfolioData object

Run example in ```qis.examples.factsheets.strategy.py``` https://github.com/ArturSepp/QuantInvestStrats/blob/master/qis/examples/factsheets/strategy.py

![image info](qis/examples/figures/strategy1.PNG)
![image info](qis/examples/figures/strategy2.PNG)
![image info](qis/examples/figures/strategy3.PNG)

### 4. Strategy benchmark factsheet <a name="strategybenchmark"></a>
This report is adopted for report performance and marginal comparison
  of strategy vs a benchmark strategy 
(data for both are passed using individual PortfolioData object)

Run example in ```qis.examples.factsheets.strategy_benchmark.py``` https://github.com/ArturSepp/QuantInvestStrats/blob/master/qis/examples/factsheets/strategy_benchmark.py

![image info](qis/examples/figures/strategy_benchmark.PNG)

Brinson-Fachler performance attribution (https://en.wikipedia.org/wiki/Performance_attribution)
![image info](qis/examples/figures/brinson_attribution.PNG)


### 5. Multi strategy factsheet <a name="multistrategy"></a>
This report is adopted to examine the sensitivity of 
backtested strategy to a parameter or set of parameters:

Run example in ```qis.examples.factsheets.multi_strategy.py``` https://github.com/ArturSepp/QuantInvestStrats/blob/master/qis/examples/factsheets/multi_strategy.py

![image info](qis/examples/figures/multi_strategy.PNG)


### 6. Notebooks <a name="notebooks"></a>

Recommended package to work with notebooks:  
```python 
pip install notebook
```
Starting local server
```python 
jupyter notebook
```

Examples of using qis analytics jupyter notebooks are located here
https://github.com/ArturSepp/QuantInvestStrats/blob/master/qis/examples/notebooks


## **Contributions** <a name="contributions"></a>
If you are interested in extending and improving QIS analytics, 
please consider contributing to the library.

I have found it is a good practice to isolate general purpose and low level analytics and visualizations, which can be outsourced and shared, while keeping 
the focus on developing high level commercial applications.

There are a number of requirements:

- The code is [Pep 8 compliant](https://peps.python.org/pep-0008/)

- Reliance on common Python data types including numpy arrays, pandas, and dataclasses.

- Transparent naming of functions and data types with enough comments. Type annotations of functions and arguments is a must.

- Each submodule has a unit test for core functions and a localised entry point to core functions.

- Avoid "super" pythonic constructions. Readability is the priority.



## **Updates** <a name="updates"></a>

#### 30 December 2022,  Version 1.0.1 released

#### 08 July 2023, Version 2.0.1 released

Core Changes

1. Portfolio optimization (qis.portfolio.optimisation) layer is removed with core
functionality moved to a stand-alone Python package: Backtesting Optimal Portfolio (bop)
    
* This allows to remove the dependency from cvxpy and sklearn packages and 
thus to simplify the dependency management for qis

2.	Added factsheet reporting using pybloqs package https://github.com/man-group/PyBloqs
* Pybloqs is a versatile tool to create customised reporting using Matplotlib figures and table
and thus leveraging QIS visualisation analytics

3. New factsheets are added
* Examples are added for the four type of reports:
    1. multi assets: report performance of several assets with goal of cross-sectional comparision:
    see qis.examples.factsheets.multi_asset.py
  2. strategy: report performance, risk, and trading statictics for either backtested or actual strategy
    with strategy data passed as PortfolioData object: see qis.examples.factsheets.strategy.py
  3. strategy vs benchmark: report performance and marginal comparison
  of strategy vs a benchmark strategy (data for both are passed using individual PortfolioData object): 
  see qis.examples.factsheets.strategy_benchmark.py
  4. multi_strategy: report for a list of strategies with individual PortfolioData. This report is 
  useful to examine the sensetivity of backtested strategy to a parameter or set of parameters: 
  see qis.examples.factsheets.multi_strategy


## **ToDos** <a name="todos"></a>

1. Enhanced documentation and readme examples.

2. Docstrings for key functions.

3. Reporting analytics and factsheets generation enhancing to matplotlib.



## **Disclaimer** <a name="disclaimer"></a>

QIS package is distributed FREE & WITHOUT ANY WARRANTY under the GNU GENERAL PUBLIC LICENSE.

See the [LICENSE.txt](https://github.com/ArturSepp/QuantInvestStrats/blob/master/LICENSE.txt) in the release for details.

Please report any bugs or suggestions by opening an [issue](https://github.com/ArturSepp/QuantInvestStrats/issues).

.
## BibTeX Citation

If you use BloombergFetch in your research, please cite it as:

```bibtex
@software{sepp2024qis,
  author={Sepp, Artur},
  title={Qua: A Python Package for Bloomberg Terminal Data Access},
  year={2024},
  url={https://github.com/ArturSepp/BloombergFetch},
  version={1.0.27}
}
```

## BibTeX Citations for QIS (Quantitative Investment Strategies) Package

If you use QIS in your research, please cite it as:

```bibtex
@software{sepp2024qis,
  title={qis: Implementation of visualisation and reporting analytics for Quantitative Investment Strategies},
  author={Sepp, Artur},
  year={2024},
  url={https://github.com/ArturSepp/QuantInvestStrats}
}
```
