Encoding: converting categorical data into a numerical data
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Updated
Mar 8, 2023 - Jupyter Notebook
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Encoding: converting categorical data into a numerical data
Feature Engineering with Python
Feature Engineering
This repository is totally focused on Feature Engineering Concepts in detail, I hope you'll find it helpful.
Showcasing data science skills for a dataset provided by State Farm for a coding interview.
Machine Learning Project
A machine learning model to accurately predict house prices based on various features such as quality, size, and location, utilizing Random Forest and XGBoost algorithms (Python) (Done alongside Kaggle ML courses)
Data Cleaning and Data Visualization with python libraries like numpy , pandas, sklean,seaborn, matplotlib-pyplot
Book price dataset analysis and modeling
Kaggle Project
Machine Learning Models
Focus on selecting datasets suitable for a machine learning experiment, with an emphasis on data cleaning, encoding, and transformation steps necessary to prepare the data.
Data preprocessing is a data mining technique that is used to transform the raw data into a useful and efficient format.
Прогнозирование рыночной стоимости автомобилей
Supervised Learning project from TripleTen
Students Placement based on some characteristics.
Classification of an imbalanced dataset using SMOTE oversampling technique and ML Algorithms - KNN , XGBoost and Naive Bayes classifier
Job-A-thon ML challenge
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