Hiquant is a quatitative trading framework and out-of-box toolset for assisting stock/fund investment.
- Data acquisition: fetch data from financial websites, including indices, stocks, funds, financial reports, history data, realtime data, etc.
- Valuation analysis: extract key abstract info from financial reports like ROE, calculate PE/PB percentiles, find “cheap valuation” stocks, export to stock pool
- Plot stock with indicators: plot k-line diagram of stocks with indicators, comparing earning curve of multiple indices or even multiple stocks
- Strategy framework: implemented a strategy framework for backtesting, with sample code for demo purposes, and provides a command to create a new strategy from the template, which is convenient for users to write their own strategies
- Simulated backtesting: Use historical market data, to simulate backtesting of one or more portfolio strategies, output data analysis of investment returns, and draw yield curves for comparison
- Simulated realtime trading: Synchronize real-time market data, calculate trading decisions based on strategies, and send email notifications to remind users to trade
- Multi markets: currently supports China, Hong Kong and United States market, will add support for markets in other countries if requested and data available
- TODO: Automated trading: call the quantitative trading interface to realize automated trading (not yet implemented, planned)
Other features:
- Evaluate funds: search and filter funds, calculate sharpe ratio and max drawdown, evaluate funds, comparing earning curve of multiple funds, comparing investment performance of fund managers
Please make sure your Python is v3.7 or above, as it's required by Matplotlib 3.4 for plottting.
python3 --version
python3 -m pip install hiquant
Or, clone from GitHub:
git clone https://github.com/floatinghotpot/hiquant.git
cd hiquant
python3 -m pip install -e .
- Draw stock indicators and yield curve
hiquant stock AAPL -ma -macd
- Draw trade signal of mixed indicators, holding time, and yield curve
hiquant stock AAPL -ma -macd -mix
- Compare ROI of multiple stocks
hiquant stock plot AAPL GOOG AMZN -years=5 "-base=^IXIC,^GSPC"
hiquant create myProj
cd myProj
hiquant index list us
hiquant stock list us
hiquant stock plot AAPL -ma -macd -kdj
hiquant stock plot AAPL -all
hiquant stock plot AAPL -wr -bias -mix
hiquant stock pool AAPL GOOG AMZN TSLA MSFT -out=stockpool/mystocks.csv
hiquant strategy create strategy/mystrategy.py
hiquant backtest strategy/mystrategy.py
hiquant trade create etc/myfund.conf
hiquant backtrade etc/myfund.conf
hiquant run etc/myfund.conf
import pandas as pd
import hiquant as hq
class MyStrategy( hq.BasicStrategy ):
def __init__(self, fund):
super().__init__(fund, __file__)
self.max_stocks = 10
self.max_weight = 1.2
self.stop_loss = 1 + (-0.10)
self.stop_earn = 1 + (+0.20)
def select_targets(self):
return ['AAPL', 'MSFT', 'AMZN', 'TSLA', '0700.HK']
def gen_trade_signal(self, symbol, init_data = False):
market = self.fund.market
if init_data:
df = market.get_daily(symbol)
else:
df = market.get_daily(symbol, end = market.current_date, count = 26+9)
dif, dea, macd_hist = hq.MACD(df.close, fast=12, slow=26, signal=9)
return pd.Series( hq.CROSS(dif, dea), index=df.index )
def get_signal_comment(self, symbol, signal):
return 'MACD golden cross' if (signal > 0) else 'MACD dead cross'
def init(fund):
strategy = MyStrategy(fund)
if __name__ == '__main__':
backtest_args = dict(
#start_cash= 1000000.00,
#date_start= hq.date_from_str('3 years ago'),
#date_end= hq.date_from_str('yesterday'),
#out_file= 'output/demo.png',
#parallel= True,
compare_index= '^GSPC',
)
hq.backtest_strategy( MyStrategy, **backtest_args )
Read following docs for more details:
Read this document on how to develop with Hiquant:
Great appreciate developers of following projects. This project is based on their great works: Pandas, Matplotlib, Mplfinance, Akshare, etc.
Thanks folloowing websites for providing data service: Sina, Legu, Yahoo, Nasdaq, etc.
Thanks the warm-hearted knowledge sharing on Zhihu and Baidu websites.
This software and related codes are for research purposes only and do not constitute any investment advice.
If anyone invests money in actual investment based on this, please bear all risks by yourself.
This software is developed on Mac, and the examples in this document are written with Mac environment. They are similiar for Linux, but might be a little difference on Windows.