Includes top ten must know machine learning methods with R.
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Updated
Mar 6, 2024
Includes top ten must know machine learning methods with R.
Scikit-Learn compatible HMM and DTW based sequence machine learning algorithms in Python.
This repository contains the Iris Classification Machine Learning Project. Which is a comprehensive exploration of machine learning techniques applied to the classification of iris flowers into different species based on their physical characteristics.
A data driven trade-bot, running on an ensemble of 3 different ML algorithms, generates buy/sell signals of a given asset and timeframe using technical indicators.
Fault diagnosis of some critical and non-critical faults in electric drives using anomaly detection.
Just a simple implementation of K-Nearest Neighbour algorithm.
PCA(Principle Component Analysis) For Seed Dataset in Machine Learning
This project is using Strava's API to download and process my workout data.
Syracuse University, Masters of Applied Data Science - IST 707 Data Analytics
An Open MPI implementation of the well known K-Nearest Neighbors (Machine Learning) classifier.
This project focuses on predicting heart disease using the K-Nearest Neighbors (KNN) classification algorithm implemented in a Jupyter Notebook. It aims to provide a tool that can assist in early detection and diagnosis of heart disease based on given input features.
Fraud detection
This is a Python - based application that predicts diseases based on the symptoms inputted by the user using machine learning (KNN classifier algorithm).
Static and Dynamic Analysis of android malware using various different machine learning algorithms
Portfolio
Collection of some classical Machine learning Algorithms.
This project involves detecting iris species using the k-nearest neighbors (KNN) algorithm in Jupyter Notebook. The iris species detection task is a classic problem in machine learning, where the goal is to classify iris flowers into different species based on their measurements.
This project was made as a report for a Big Data Challenge at Satria Data 2020 by IPB University.
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