Implementation of simple content-based image retrieval
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Updated
Apr 9, 2018 - Python
Implementation of simple content-based image retrieval
An implementation of the K-Nearest Neighbors algorithm from scratch using the Python programming language.
Computer Vision Based System to read the numbers in an Ishihara Plate test
Machine learning model which uses Linear Regression and K Nearest neighbours (KNN) algorithms to predict heart failure based on parameters .
Machine Learning Course Assignment Solutions.
MachineLearning
Machine Learning ve Python: A'dan Z'ye Makine Öğrenmesi
Using MLT to predict the risk profile of farmers and suggestive measures based on it.
This repository contains the implementation of some machine learning algorithms without using the libraries available for them. Although the basic functions of some libraries are used.
This repository is a implementation of one of the task in e-Yantra Robotics Competition (eYRC) 2015-16
This python program helps you kickstart with digits recognition using OpenCV and k-nearest-neighbor algorithm
Esse pequeno projeto tem como objetivo fazer testes de acurácia com rede neural com apenas um neurônio sem classificadores e com 2 (dois) classificadores, sendo eles KNN e 1R.
This is a Movie Recommendation System made by me on Google Colab.
Fashion Recommendation Engine using Deep Learning.
It is facial recognition based security system which is based on K-Nearest Neighbours
Property listings recommender for Dubai Marina. (The website might take 10 seconds to load the first time it is launched).
This repository will include files of the face recognition project.
Trying to code machine learning model from scratch in python
A classifier that uses the scikit-learn library to predict whether the given measurements belong to a polar bear or a gray wolf.
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