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Iris

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General info

This Jupyter Notebook is running different ML models on the well known Iris dataset.

Technologies

Project is created with:

  • Python 3.6
  • Anaconda 4.6.12
  • jupyter 1.0.0
  • jupyter-client 5.2.4
  • jupyter-console 6.0.0
  • jupyter-core 4.4.0
  • Markdown 3.0.1
  • matplotlib 3.0.3
  • notebook 5.7.8
  • numpy 1.16.2
  • pandas 0.24.2
  • pip 19.0.3
  • scikit-learn 0.20.3
  • sklearn 0.0

Setup

To run this project:

  • 1.) Download the Iris.ipynb
  • 2.) Start your Jupyter Notebook using anaconda prompt and 'Jupyter notebook'
  • 3.) Load Iris.ipynb into Jupyter Notebook
  • 4.) Run and execute code block by block or entire file, it will access dataset within the notebook

Motivations

I wanted to learn more about Sklearn and how to further my ability to do exploratory data analysis. This would also be a great time to learn how to implement several models to determine their viability for the given business problem. The tururial I followed was from Jason Brownlee (https://machinelearningmastery.com/machine-learning-in-python-step-by-step/) and gave me great insight into how some machine learning specialists are exploring data and how I can use this in my future projects when I go to explore different datasets.

Contributing

Contributions are welcome on how to improve accurazy outside of the standard sklearn models.

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Deep Learning on the well known iris dataset

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