RandomSearch CV vs Grid Search
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Updated
Sep 23, 2020 - Jupyter Notebook
RandomSearch CV vs Grid Search
This project aims to develop a machine learning model to predict bike-sharing demand based on various factors such as weather conditions, time of day, and historical usage patterns. The dataset used for this project consists of 8760 records and 14 attributes.
Enhancing The Performance Of Classifiers In Detecting Abnormalities In Medical Data Using Nature Inspired Optimization Techniques
Analyzing a dataset of bank transactions and using gradient boosting classifier to capture as many fraudulent transactions as possible while minimizing false positives.
Algorithms used to confirm whether a celestial body is a planet or not.
The business objective was to predict the present the price of the car Year,based on features such as selling price, present price, kilometers driven, fuel type, seller type, transmission, owner.
Implementation of Hyper-parameter tuning of ML models
Credit score prediction using classification models (Multi-class prediction)
This is an End-to-End Data Science Project built in order to help an International E-commerce Company to predict whether their product will be delivered on the committed Delivery Time or not
GridSearchCV, RandomSearchCV For Model optimization and Saving/Loading the model
Exploratory data analysis exercises to understand the main characteristics of a given data set before performing more advanced analysis or further modeling
List of completed academic projects
Machine Learning with Sklearn
This project explores the working of various Boosting algorithms and analyzes the results across different algorithms. Algorithms Used are: Random Forest, Ada Boost, Gradient Boost and XG Boost
A simple random forest model to predict car prices. The purpose of this repo was to showcase the use of flask for deployment.
Developed a predictive model for heart disease using Decision Tree Algorithm to provide early diagnosis, performed Exploratory Data Analysis to find out the exact affecting symptom , visualized the data set using Matplolib, seaborn libraries For improving performance of Decision tree model, Got the accuracy of 84.6% by performing depth up to 15
This repository has the implementation of hyperparameter tuning techniques (GridSearchCV and RandomSearchCV) on K-Nearest Neighbour (KNN) algorithm, from scratch.
End to End Machine Learning Projects Examples
Proyecto de Datacamp sobre predicción de dias en que un cliente alquilará un DVD basandose en algunas caracteristicas
machine learning regression
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