A high-level machine learning and deep learning library for the PHP language.
-
Updated
Nov 9, 2024 - PHP
A high-level machine learning and deep learning library for the PHP language.
An example project using a feed-forward neural network for text sentiment classification trained with 25,000 movie reviews from the IMDB website.
Simple stock & cryptocurrency price forecasting console application, using PHP Machine Learning library (https://github.com/php-ai/php-ml)
naive bayes in php
A standalone inference server for trained Rubix ML estimators.
Use the famous CIFAR-10 dataset to train a multi-layer neural network to recognize images of cats, dogs, and other things.
An example project that predicts house prices for a Kaggle competition using a Gradient Boosted Machine.
Handwritten digit recognizer using a feed-forward neural network and the MNIST dataset of 70,000 human-labeled handwritten digits.
The original lightweight introduction to machine learning in Rubix ML using the famous Iris dataset and the K Nearest Neighbors classifier.
An example project that predicts risk of credit card default using a Logistic Regression classifier and a 30,000 sample dataset.
Recognize one of six human activities such as standing, sitting, and walking using a Softmax Classifier trained on mobile phone sensor data.
Demonstrating unsupervised clustering using the K Means algorithm and synthetic color data.
Build a classifier to predict the outcome of Dota 2 games with the Naive Bayes algorithm and results from 102,944 sample games.
Use the K Nearest Neighbors algorithm to predict the probability of a divorce with high accuracy.
Sistem Pendukung Keputusan untuk menentukan layak dan tidaknya seseorang mendapatkan bantuan PKH dengan menggunakan machine learning yaitu C4.5 dan K-Means
HelloAI - A cloud based artificial intelligence platform
Example Machine Learning with MySQL via PHP with Apache2
Add a description, image, and links to the php-ml topic page so that developers can more easily learn about it.
To associate your repository with the php-ml topic, visit your repo's landing page and select "manage topics."