ium_444507/script_prepare.py

61 lines
1.9 KiB
Python
Executable File

import subprocess
import sys
import pandas as pd
import os
import numpy as np
try:
dataset_path = sys.argv[1]
except Exception as e:
print("Exception while retrieving dataset path")
print(e)
def divide_dataset(dataset, path):
"""Split dataset to dev, train, test datasets. """
print('Shuffle dataset...')
shuf_path = 'data/Car_Prices_Poland_Kaggle_shuf.csv'
os.system(f'tail -n +2 {path} | shuf > {shuf_path}')
len1 = len(dataset) // 6
len2 = (len1 * 2) + 1
print('Dividing dataset...')
os.system(f'head -n {len1} {shuf_path} > data/Car_Prices_Poland_Kaggle_dev.csv')
os.system(f'head -n {len1} {shuf_path} | tail -n {len1} > data/Car_Prices_Poland_Kaggle_test.csv')
os.system(f'tail -n +{len2} {shuf_path} > data/Car_Prices_Poland_Kaggle_train.csv')
os.system(f'rm {shuf_path}')
print("Len match: " + str(sum([len1 * 2, len2]) == len(dataset)))
os.system('cat Car_Prices_Poland_Kaggle_train.csv | wc -l')
os.system('cat Car_Prices_Poland_Kaggle_dev.csv | wc -l')
os.system('cat Car_Prices_Poland_Kaggle_test.csv | wc -l')
print('Dataset devided')
def normalize_dataset(dataset):
"""Drop unnecessary columns and set numeric values to [0,1] range"""
print(f'--------------- Initial dataset length ---------------')
print(len(dataset))
# drop columns
dataset.drop(columns=["Unnamed: 0", "generation_name"], inplace=True)
dataset = dataset.dropna()
# normalize numbers to [0, 1]
for column in dataset.columns:
if isinstance(dataset.iloc[1][column], np.int64) or isinstance(dataset.iloc[1][column], np.float64):
dataset[column] = (dataset[column] - dataset[column].min()) / (dataset[column].max() - dataset[column].min())
return dataset
cars = pd.read_csv(dataset_path)
df = pd.DataFrame(cars)
df = normalize_dataset(df)
divide_dataset(df, dataset_path)