PyPI package for scaffolding out code for decision tree models that can learn to find relationships between the attributes of an object.

Overview

Decision Tree Writer

This package allows you to train a binary classification decision tree on a list of labeled dictionaries or class instances, and then writes a new .py file with the code for the new decision tree model.

Installation

Simply run py -m pip install decision-tree-writer from the command line (Windows) or python3 -m pip install decision-tree-writer (Unix/macOS) and you're ready to go!

Usage

1) Train the model

Use the DecisionTreeWriter class to train a model on a data set and write the code to a new file in a specified fie folder (default folder is the same as your code):

from decision_tree_writer import DecisionTreeWriter

# Here we're using some of the famous iris data set for an example.
# You could alternatively make an Iris class with the same 
# attributes as the keys of each of these dictionaries.
iris_data = [
    { "species": "setosa", "sepal_length": 5.2, "sepal_width": 3.5, 
                            "petal_length": 1.5, "petal_width": 0.2},
    { "species": "setosa", "sepal_length": 5.2, "sepal_width": 4.1, 
                            "petal_length": 1.5, "petal_width": 0.1},
    { "species": "setosa", "sepal_length": 5.4, "sepal_width": 3.7, 
                            "petal_length": 1.5, "petal_width": 0.2},
    { "species": "versicolor", "sepal_length": 6.2, "sepal_width": 2.2, 
                            "petal_length": 4.5, "petal_width": 1.5},
    { "species": "versicolor", "sepal_length": 5.7, "sepal_width": 2.9, 
                            "petal_length": 4.2, "petal_width": 1.3},
    { "species": "versicolor", "sepal_length": 5.6, "sepal_width": 2.9, 
                            "petal_length": 3.6, "petal_width": 1.3},
    { "species": "virginica", "sepal_length": 7.2, "sepal_width": 3.2, 
                            "petal_length": 6.0, "petal_width": 1.8},
    { "species": "virginica", "sepal_length": 6.1, "sepal_width": 2.6, 
                            "petal_length": 5.6, "petal_width": 1.4},
    { "species": "virginica", "sepal_length": 6.8, "sepal_width": 3.0, 
                            "petal_length": 5.5, "petal_width": 2.1}
    ]

# Create the writer. 
# You must specify which attribute or key is the label of the data items.
# You can also specify the max branching depth of the tree (default [and max] is 998)
# or how many data items there must be to make a new branch (default is 1).
writer = DecisionTreeWriter(label_name="species")

# Trains a new model and saves it to a new .py file
writer.create_tree(iris_data, True, "Iris Classifier")

2) Using the new decision tree

In the specified file folder a new python file with one function will appear. It will have the name you gave your decision tree model plus a uuid to ensure it has a unique name. The generated code will look something like this:

from decision_tree_writer.BaseDecisionTree import *

# class-like syntax because it acts like it's instantiating a class.
def IrisClassifier__0c609d3a_741e_4770_8bce_df246bad054d() -> 'BaseDecisionTree':
    """
    IrisClassifier__0c609d3a_741e_4770_8bce_df246bad054d 
    has been trained to identify the species of a given object.
    """
    tree = BaseDecisionTree(None, dict,
            'IrisClassifier__0c609d3a_741e_4770_8bce_df246bad054d')
    tree.root = Branch(lambda x: x['sepal_length'] <= 5.5)
    tree.root.l = Leaf('setosa')
    tree.root.r = Branch(lambda x: x['petal_length'] <= 5.0)
    tree.root.r.l = Leaf('versicolor')
    tree.root.r.r = Leaf('virginica')
    
    return tree

Important note: if you train your model with class instance data you will have to import that class in the new file. That might look like:

from decision_tree_writer.BaseDecisionTree import *

from wherever import Iris

def IrisClassifier__0c609d3a_741e_4770_8bce_df246bad054d() -> 'BaseDecisionTree':
    tree = BaseDecisionTree(None, Iris, 
                'IrisClassifier__0c609d3a_741e_4770_8bce_df246bad054d')

Now just use the factory function to create an instance of the model. The model has two important methods, classify_one, which takes a data item of the same type as you trained the model with and returns what it thinks is the correct label for it, and classify_many, which does the same as the first but with a list of data and returns a list of labels.

Example:

tree = IrisClassifier__0c609d3a_741e_4770_8bce_df246bad054d()
print(tree.classify_one(
            { "sepal_length": 5.4, "sepal_width": 3.2, 
                "petal_length": 1.6, "petal_width": 0.3})) # output: 'setosa'

Bugs or questions

If you find any problems with this package of have any questions, please create an issue on this package's GitHub repo

You might also like...
Automatically give thanks to Pypi packages you use in your project!

Automatically give thanks to Pypi packages you use in your project!

Implements a polyglot REPL which supports multiple languages and shared meta-object protocol scope between REPLs.
Implements a polyglot REPL which supports multiple languages and shared meta-object protocol scope between REPLs.

MetaCall Polyglot REPL Description This repository implements a Polyglot REPL which shares the state of the meta-object protocol between the REPLs. Us

This program can calculate the Aerial Distance between two cities.
This program can calculate the Aerial Distance between two cities.

Aerial_Distance_Calculator This program can calculate the Aerial Distance between two cities. This repository include both Jupyter notebook and Python

The blancmange curve can be visually built up out of triangle wave functions if the infinite sum is approximated by finite sums of the first few terms.

Blancmange-curve The blancmange curve can be visually built up out of triangle wave functions if the infinite sum is approximated by finite sums of th

Hexa is an advanced browser.It can carry out all the functions present in a browser.

Hexa is an advanced browser.It can carry out all the functions present in a browser.It is coded in the language Python using the modules PyQt5 and sys mainly.It is gonna get developed more in the future.It is made specially for the students.Only 1 tab can be used while using it so that the students cant missuse the pandemic situation :)

A simple python project that can find Tangkeke in a given image.

A simple python project that can find Tangkeke in a given image. Make the real Tangkeke image as a kernel to convolute the target image. The area wher

Return-Parity-MDP - Towards Return Parity in Markov Decision Processes

Towards Return Parity in Markov Decision Processes Code for the AISTATS 2022 pap

This is an online course where you can learn and master the skill of low-level performance analysis and tuning.
This is an online course where you can learn and master the skill of low-level performance analysis and tuning.

Performance Ninja Class This is an online course where you can learn to find and fix low-level performance issues, for example CPU cache misses and br

Wisdom Tree is a concentration app i am working on.
Wisdom Tree is a concentration app i am working on.

Wisdom Tree Wisdom Tree is a tui concentration app I am working on. Inspired by the wisdom tree in Plants vs. Zombies which gives in-game tips when it

Releases(v0.5.1)
  • v0.5.1(May 23, 2022)

  • v0.4.1(Mar 27, 2022)

  • v0.3.1(Feb 24, 2022)

  • v0.2.4(Feb 1, 2022)

    The DecisionTreeWriter package as deployed on PyPI. Edit after v0.3.1: a better study of version naming revealed that this release should have been called v0.3.0, since it added a backwards-compatible API change.

    Full Changelog: https://github.com/AndreBacic/DecisionTreeWriter/compare/v0.2.3...v0.2.4

    Source code(tar.gz)
    Source code(zip)
  • v0.2.3(Dec 15, 2021)

  • v0.2.1(Dec 1, 2021)

WorldsCollide - Final Fantasy VI Randomizer

FFVI Worlds Collide Worlds Collide is an open worlds randomizer for Final Fantas

8 Jun 13, 2022
VCM EE1.2 P-layer feature map anchor generation 137th MPEG-VCM

VCM EE1.2 P-layer feature map anchor generation 137th MPEG-VCM

IPSL 6 Oct 18, 2022
Albert launcher extension for rolling dice.

dice-roll-albert-ext Extension for rolling dice in Albert launcher Installation Locate the modules directory in the Python extension data directory. T

Jonah Lawrence 1 Nov 18, 2021
Simple Python API for the Ergo Platform Explorer

Ergo is a "Resilient Platform for Contractual Money." It is designed to be a platform for applications with the main focus to provide an efficient, se

7 Jul 06, 2021
A dog facts python module

A dog facts python module

Fayas Noushad 3 Nov 28, 2021
Reference management solution using Python and Notion.

notion-scholar Reference management solution using Python and Notion. The main idea of this app is to allow to furnish a Notion database using a BibTe

Thomas Hirtz 69 Dec 21, 2022
A simple, light-weight and highly maintainable online judge system for secondary education

y³OJ a simple, light-weight and highly maintainable online judge system for secondary education 一个简单、轻量化、易于维护的、为中学信息技术学科课业教学设计的 Online Judge 系统。 Onlin

20 Oct 04, 2022
firefox session recovery

firefox session recovery

Ahmad Sadraei 5 Nov 29, 2022
A code base for python programs the goal is to integrate all the useful and essential functions

Base Dev EN This GitHub will be available in French and English FR Ce GitHub sera disponible en français et en anglais Author License Screen EN 🇬🇧 D

Pikatsuto 1 Mar 07, 2022
An animal facts python module

An animal facts python module

Fayas Noushad 3 Dec 19, 2021
An example repository for how to generate results using PyBaMM

PyBaMM results This repository provides a template for generating results (for example, for a paper) using PyBaMM Installation Install PyBaMM using a

PyBaMM Team 7 Oct 09, 2022
Inverted-pendulum-with-fuzzy-control - Inverted pendulum with fuzzy control

Fuzzy Inverted Pendulum Basically, this project consists of an inverted pendulum

Mahan Ahmadvand 1 Aug 25, 2022
Tracking development of the Class Schedule Siri Shortcut, an iOS program that checks the type of school day and tells you class scheduling.

Class Schedule Shortcut Tracking development of the Class Schedule Siri Shortcut, an iOS program that checks the type of school day and tells you clas

3 Jun 28, 2022
Shared utility scripts for AI for Earth projects and team members

Overview Shared utilities developed by the Microsoft AI for Earth team The general convention in this repo is that users who want to consume these uti

Microsoft 38 Dec 30, 2022
Statically typed BNF with semantic actions; A frontend of frontend frameworks; Use your grammar everywhere.

Statically typed BNF with semantic actions; A frontend of frontend frameworks; Use your grammar everywhere.

Taine Zhao 56 Dec 14, 2022
Advanced Developing of Python Apps Final Exercise

Advanced-Developing-of-Python-Apps-Final-Exercise This is an exercise that I did for a python advanced learning course. The exercise is divided into t

Alejandro Méndez Fernández 1 Dec 04, 2021
This Open-Source project is great for sensor capture and storage solutions.

Phase 1 This project helps developers in the creation of extended realities that communicate with Arduino and require the security of blockchain stora

Wolfberry, LLC 10 Dec 28, 2022
Very efficient backup system based on the git packfile format, providing fast incremental saves and global deduplication

Very efficient backup system based on the git packfile format, providing fast incremental saves and global deduplication (among and within files, including virtual machine images). Current release is

bup 6.9k Dec 27, 2022
A notebook explaining the principle of adversarial attacks and their defences

TL;DR: A notebook explaining the principle of adversarial attacks and their defences Abstract: Deep neural networks models have been wildly successful

1 Jan 22, 2022
Is a util for xferring skinning from one mesh to another

maya_pythonplugins skinTo: Is a util for xferring skinning from one mesh to another args: :param maxInfluences: is the number of max influences on the

James Dunlop 2 Jan 24, 2022