Skip to main content

Quantitative Trading Python Library

Project description

QTPyLib, Pythonic Algorithmic Trading

Python version Travis-CI build status PyPi version PyPi status Documentation Status Star this repo Follow me on twitter

QTPyLib (Quantitative Trading Python Library) is a simple, event-driven algorithmic trading system written in Python 3, that supports backtesting and live trading using Interactive Brokers for market data and order execution.

I originally developed QTPyLib because I wanted for a simple (but powerful) trading library that will let me to focus on the trading logic itself and ignore everything else.

Full Documentation »


Features

  • A continuously-running Blotter that lets you capture market data even when your algos aren’t running.

  • Tick, Bar and Trade data is stored in MySQL for later analisys and backtesting.

  • Using pub/sub architecture using ØMQ (ZeroMQ) for communicating between the Algo and the Blotter allows for a single Blotter/multiple Algos running on the same machine.

  • Includes many common indicators that you can seamlessly use in your algorithm.

  • Ability to import any Python library (such as scikit-learn or TensorFlow) to use them in your algorithms.

  • Have orders delivered to your mobile via SMS (requires a Nexmo or Twilio account)

  • Full integration with TA-Lib via dedicated module (see documentation)


Quickstart

There are 5 main components to QTPyLib:

  1. Blotter - handles market data retreival and processing.

  2. Broker - sends and proccess orders/positions (abstracted layer).

  3. Algo - (sub-class of Broker) communicates with the Blotter to pass market data to your strategies, and proccess/positions orders via Broker.

  4. Reports - provides real time monitoring of trades and open opsitions via Web App, as well as a simple REST API for trades, open positions and market data.

  5. Lastly, Your Strategies, which are sub-classes of Algo, handle the trading logic/rules. This is where you’ll write most of your code.

1. Get Market Data

To get started, you need to first create a Blotter script:

# blotter.py
from qtpylib.blotter import Blotter

class MainBlotter(Blotter):
    pass # we just need the name

if __name__ == "__main__":
    blotter = MainBlotter()
    blotter.run()

Then, with IB TWS/GW running, run the Blotter from the command line:

$ python blotter.py

2. Write your Algorithm

While the Blotter running in the background, write and execute your algorithm:

# strategy.py
from qtpylib.algo import Algo

class CrossOver(Algo):

    def on_start(self):
        pass

    def on_tick(self, instrument):
        pass

    def on_bar(self, instrument):
        # get instrument history
        bars = instrument.get_bars(window=100)

        # or get all instruments history
        # bars = self.bars[-20:]

        # skip first 20 days to get full windows
        if len(bars) < 20:
            return

        # compute averages using internal rolling_mean
        bars['short_ma'] = bars['close'].rolling_mean(window=10)
        bars['long_ma']  = bars['close'].rolling_mean(window=20)

        # get current position data
        positions = instrument.get_positions()

        # trading logic - entry signal
        if bars['short_ma'].crossed_above(bars['long_ma'])[-1]:
            if not instrument.pending_orders and positions["position"] == 0:

                # buy one contract
                instrument.buy(1)

                # record values for later analysis
                self.record(ma_cross=1)

        # trading logic - exit signal
        elif bars['short_ma'].crossed_below(bars['long_ma'])[-1]:
            if positions["position"] != 0:

                # exit / flatten position
                instrument.exit()

                # record values for later analysis
                self.record(ma_cross=-1)


if __name__ == "__main__":
    strategy = CrossOver(
        instruments = [ ("ES", "FUT", "GLOBEX", "USD", 201609, 0.0, "") ], # ib tuples
        resolution  = "1T", # Pandas resolution (use "K" for tick bars)
        tick_window = 20, # no. of ticks to keep
        bar_window  = 5, # no. of bars to keep
        preload     = "1D", # preload 1 day history when starting
        timezone    = "US/Central" # convert all ticks/bars to this timezone
    )
    strategy.run()

To run your algo in a live enviroment, from the command line, type:

$ python strategy.py --logpath ~/qtpy/

The resulting trades be saved in ~/qtpy/STRATEGY_YYYYMMDD.csv for later analysis.

3. Viewing Live Trades

While the Blotter running in the background, write the dashboard:

# dashboard.py
from qtpylib.reports import Reports

class Dahboard(Reports):
    pass # we just need the name

if __name__ == "__main__":
    dashboard = Dahboard(port = 5000)
    dashboard.run()

To run your dashboard, run it from the command line:

$ python dashboard.py

>>> Dashboard password is: a0f36d95a9
>>> Running on http://0.0.0.0:5000/ (Press CTRL+C to quit)

Now, point your browser to http://localhost:5000 and use the password generated to access your dashboard.


Installation

First, install IbPy (for some reason I can’t get this installed automatically):

$ pip install git+git://github.com/blampe/IbPy --user

Then, install QTPyLib using pip:

$ pip install qtpylib --upgrade

Requirements

  • Python >=3.4

  • Pandas (tested to work with >=0.18.1)

  • Numpy (tested to work with >=1.11.1)

  • ØMQ (tested to with with >=15.2.1)

  • PyMySQL (tested to with with >=0.7.6)

  • pytz (tested to with with >=2016.6.1)

  • dateutil (tested to with with >=2.5.1)

  • Nexmo for SMS support (tested to with with >=1.2.0)

  • Twilio for SMS support (tested to with with >=5.4.0)

  • Flask for the Dashboard (tested to work with >=0.11)

  • Requests (tested to with with >=2.10.0)

  • Beautiful Soup (tested to work with >=4.3.2)

  • IbPy (tested to work with >=0.7.2-9.00)

  • ezIBpy (IbPy wrapper, tested to with with >=1.12.1)

  • Latest Interactive Brokers’ TWS or IB Gateway installed and running on the machine


Project details


Release history Release notifications | RSS feed

Download files

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

Source Distribution

QTPyLib-1.3.98.tar.gz (99.1 kB view details)

Uploaded Source

File details

Details for the file QTPyLib-1.3.98.tar.gz.

File metadata

  • Download URL: QTPyLib-1.3.98.tar.gz
  • Upload date:
  • Size: 99.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for QTPyLib-1.3.98.tar.gz
Algorithm Hash digest
SHA256 16208454240a65853ad23e6fc1ffafd7c726c78ad5a19b6c8f428d4bd598b931
MD5 6e5a69c70c6a066dd297b186690102e5
BLAKE2b-256 ba617eabdefcacdab7fc050091533f03b6f4c7d08ce162063c212c21da44f922

See more details on using hashes here.

Supported by

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