Skip to content

Classification of 3 species of flowers (versicolor, virginica, setosa) belonging to the Iris family, using a Fully Connected Neural Network for Data Processing (Tensorflow 1.12.0 and Python 3.6.6)

License

Notifications You must be signed in to change notification settings

Saswata6019/Iris-Classification

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

15 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Iris Classification

Classification of 3 species of flowers (versicolor, virginica, setosa) belonging to the Iris family, using a Fully Connected Neural Network for Data Processing (Tensorflow 1.12.0 and Python 3.6.6)

  • Editor used: Sublime Text 3
  • Shell used to run the code: Git Bash
  • Libraries used: Pandas, Numpy & Tensorflow
  • iris.csv is the main dataset, which is used for the training and testing stages of the model
  • iris_predict.csv is the prediction dataset, which is used as input for the prediction stage of the model after the training and testing stages are completed

Insight on iris.csv

  • There are a total of 5 columns of data
  • The first 4 columns serve as the features for the model
  • The last (5th) column serves as the result, which the model predicts and trains itself on during the prediction and training+testing stages respectively. The iris_predict.csv file does not contain the 5th/result column since the model is supposed to predict that result and generate the same as it's output.
  • Column 1: Represents the sepal length of an individual flower
  • Coumn 2: Represents the sepal width of an individual flower
  • Column 3: Represents the petal length of an individual flower
  • Column 4: Represents the petal width of an individual flower
  • Column 5: Represents the species of an individual flower

About

Classification of 3 species of flowers (versicolor, virginica, setosa) belonging to the Iris family, using a Fully Connected Neural Network for Data Processing (Tensorflow 1.12.0 and Python 3.6.6)

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages