A project for creating an algorithm and possibly a front-end for turning an image into a multicolor, multilayer 3d mesh for 3d printing
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Updated
Aug 5, 2024 - HTML
A project for creating an algorithm and possibly a front-end for turning an image into a multicolor, multilayer 3d mesh for 3d printing
The K-Means Visualizer is an interactive web application designed to help users understand and visualize the K-Means clustering algorithm. Through an intuitive interface, users can experiment with different numbers of data points and clusters, and observe how the algorithm iteratively updates centroids and assigns data points to clusters.
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Fast implementations of various clustering algorithms, trajectory processing, and binary similarity metrics with Python SWIG bindings for select algorithms.
It is a Simple flask framework based Personality Prediction app using Kmean Model
Python implementation of K-Means Clustering algorithm for unsupervised learning. Efficiently groups data points into clusters based on similarity. Simple yet powerful tool for data exploration, segmentation, and pattern recognition tasks in various fields.
Language: R. Study, Exploratory Data Analytics and Data Visualizations about stationarity in data scientists roles applying the following techniques: PCA, Factor Analysis, Clustering, KMeans and Hierarchical Clustering.
This project showcases how to use the KMeans clustering algorithm to suggest similar songs to a user using real-time pipelines with Kafka and Spark Streaming.
This dataset from "ShufersalML" captures customer order history, aiming to predict future purchases using Python. It involves interconnected files that detail customer orders over time. The goal is to build a predictive model leveraging past order patterns to anticipate which products a user is likely to include in their next order.
This repository contains code and analysis for performing RFM (Recency, Frequency, Monetary) analysis on retail store customer data. The analysis is followed by customer segmentation using the KMeans clustering algorithm to gain insights into customer behavior and enable data-driven marketing strategies.
Customers RFM Clustering (Market Segmentation based on Behavioral Approach)
Customers RFM Clustering (Market Segmentation based on Behavioral Approach)
Go K-Means Image Color Separation Dominant Color Finder written in Go
Modelling road to victory in Pokémon Unite 🏆 with statistical learning methods in R 🧪
This is a repository with exercises extracted from the book "Introduction to machine learning with R" from Scott V. Burger. It will help you gain a solid foundation in machine learning principles. Using the R programming and then move into more advanced topics such as neural networks and tree-based methods.
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