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Python application to show AI functionality based on Keras and TensorFlow

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Trader AI

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Abstract

Python application to show AI functionality based on Keras and TensorFlow.

Table Of Content

Overview

This Python application simulates a computer-based stock trading program. Its goal is to demonstrate the basic functionality of neural networks trained by supervised learning and reinforcement learning (deep Q-learning).

The application consists of a stock exchange and serveral connected traders. The stock exchange asks each trader once per day for its orders, and executes any received ones. Each trader computes its orders using stock market information provided by the stock exchange. A trader consists of two components: A neural network for predicting future stock prices, and a neural network for computing orders based on these predictions. Thereby, the first neural network can be trained using supervised learning, and the latter neural network can be trained using reinforcement learning (deep Q-learning).

The following resources provide some basic introductions into the topic of Neural Networks:

Components

Stock Exchange

The Innovation Lab Stock Exchange ("ILSE") represents the central 'metronome' of the application. It is implemented by a class 'StockExchange'. ILSE maintains both the stock prices and the trader's portfolios. This means that all traders connected to ILSE are assigned one portfolio which ILSE manages to prevent fraud. A portfolios comprises not only the inventory of all stocks and their quantity, but also the available cash amount.

ILSE emulates trading days by calling the connected traders. To keep it simple the traders are only called on day's end. ILSE then provides each trader with both the latest close prices and its respective portfolio. A trader is supposed to reply with a list of orders which ILSE has to execute. An order is one of the following actions for all stocks that are traded at ILSE: Buy or sell. After obtaining all orders for all connected traders ILSE executes the orders one by one. This is only limited by checks whether the specific order is valid for a given portfolio. That means, for buying stocks the portfolio's cash reserve must suffice. For selling stocks, the corresponding quantity of stocks must reside in the portfolio.

After executing all orders for all connected traders the current trading day has ended and the next one begins.

Trader

Each trader is implemented by a separate trader class (e.g., 'SimpleTrader' or 'DqlTrader') and responsible to tell ILSE which orders should be executed. Traders are provided with both the latest close prices and their current portfolio. Based on these informatiosn one of the following actions with the wished quantity can be selected: Buy or sell.

Most times the traders' decisions are not based on their own algorithms but rather get those information by one or more connected predictors in the background.

Predictor

A predictor (implemented by separate predictor classes like 'PerfectPredictor') works behind a trader and provides - if applicable - a price estimation for a specific stock. Among other ways, providing a price estimate can be accomplished by using a neural network that has been trained on a set of past stock prices. To receive an estimated stock price the trader calls its specific predictor with the latest stock prices and the predictor in turn replies with the estimated future stock price.

Required Tools

Trader AI's codebase relies on Python 3. To run Trader AI the following tools are required:

  • Python 3
  • pip (may come with your Python installation)
  • virtualenv (optional)

Details on how to install these tools are listed below.

Installing Python 3 and pip on Mac

On Mac there are two ways to install Python 3:

Check if pip is installed with running $ pip --version. In case it is not already installed:

  • When using the installer: Install pip separately by running $ python get-pip.py after downloading get-pip.py
  • When using Homebrew: Execute $ brew install pip

Installing Python 3 and pip on Windows

A good tutorial can be found here: http://docs.python-guide.org/en/latest/starting/install3/win/. To ease running Python in the Command Line you should consider adding the Python installation directory to the PATH environment variable.

Check if pip is installed with running $ pip --version. In case it is not already installed run $ python get-pip.py after downloading get-pip.py.

Optional: Installing virtualenv

The easiest and cleanest way to install all required dependencies is virtualenv. This keeps all dependencies in a specific directory which in turn will not interfere with your system's configuration. This also allows for easier version switching and shipping.

To install virtualenv run $ pip install virtualenv

Run the Application

After installing all required tools (Python, pip, [virtualenv]) execute the following commands:

Clone the Repository

$ git clone https://github.com/senacor/Trader.AI.git
$ cd Trader.AI

Create a Virtual Environment (optional)

If you want to use virtualenv, create a virtual environment. The directory virtual_env is already added to .gitignore.

On Mac

$ virtualenv -p python3 virtual_env
$ source virtual_env/bin/activate

On Windows

$ virtualenv -p [path\to\python3\installation\dir\]python virtual_env
$ virtual_env/Scripts/activate

Install All Dependencies

This installs all required dependencies by Trader.AI.

$ pip install -r requirements.txt

Run

$ python stock_exchange.py

After some Terminal action this should show a diagram depicting the course of different portfolios which use different Trader implementations respectively.

Furthermore you can execute the test suite to see if all works well:

$ python test_suite_all.py

Development

IDE

To start developing Python applications, there are not any huge requirements actually. You could open your favorite text editor (notepad.exe, TextEdit, vim, Notepad++, sublime, Atom, emacs, ...), type in some code and run it with $ python your-file.py. However, there are some IDEs which make developing and running Python applications more convenient. We worked with the following:

In your IDE you may have to select the correct Python environment. Mostly the IDEs can detect the correct environment automatically. To check and - if needed - select the correct Python installation directory or the virtual_env directory inside your repository do as follows:

  • PyCharm: Visit "Preferences" > "Project: Traider.AI" > "Project Interpreter" and check if the correct environment is selected. If not, select the gear symbol in the upper right
  • PyDev: Visit "Window" > "Preferences" > "PyDev" > "Interpreters" > "Python Interpreter" and check if the correct environment is selected. If not, select "New..."

Overview Of This Repository

This repository contains a number of packages and files. Following a short overview:

  • datasets - CSV dumps of stock prices
  • evaluating - Python package which contains all evaluating/ILSE logic
  • model - Python package which contains all shared model classes
  • predicting - Python package which contains all predicting logic
  • trading - Python package which contains all trading logic
  • .travis.yml - Configuration for Travis CI. See https://travis-ci.org/senacor/Trader.AI/
  • definitions.py - Contains some project-wide Python constants
  • dependency_injection_containers.py - Contains all configured dependencies for dependency injection
  • logger.py - Contains project-wide logger configuration
  • README.md - This file
  • requirements.txt - Contains an export of all project dependencies (by running $ pip freeze > requirements.txt)
  • stock_exchange.py - Contains the central main method. This starts ILSE
  • utils.py - Contains utility methods that are needed project-wide

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