Libraries tagged by php ml

mll-lab/slate-php

0 Favers
18112 Downloads

PHP implementation of the [Slate Rich Text Editor](https://slatejs.org) data model

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arsengoian/commerce-ml

5 Favers
8063 Downloads

Easy-peasy CommerceML 2.10 PHP library

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rubix/server

61 Favers
1937 Downloads

Deploy your Rubix ML models to production with scalable stand-alone inference servers.

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rubix/sentiment

100 Favers
489 Downloads

An example project using a multi layer feed forward neural network for text sentiment classification trained with 25,000 movie reviews from IMDB.

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mll-lab/rector-config

0 Favers
13203 Downloads

Shared rules for rector

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mll-lab/laravel-db-ready

4 Favers
21318 Downloads

An artisan command to check if a database connection is ready

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mlocati/countrynames

3 Favers
2206 Downloads

A PHP library to work with localized country names

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mlevent/fatura

79 Favers
634 Downloads

PHP için GİB eArşiv/eFatura entegrasyonu.

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mll-lab/microplate

1 Favers
18874 Downloads

PHP package to easily work with microplate data

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nepster-web/php-mlm-matrix

58 Favers
707 Downloads

Library for working with mlm matrices

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torian257x/ai-php-rubix-wrap

15 Favers
92 Downloads

AI PHP is a wrapper for rubix ml

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codewithkyrian/jinja-php

2 Favers
215 Downloads

A minimalistic PHP implementation of the Jinja templating engine, specifically designed for parsing and rendering ML chat templates.

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rubix/mnist

34 Favers
147 Downloads

Handwritten digit recognizer using a feed forward neural network and the MNIST dataset of 70,000 human-labeled handwritten digits.

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rubix/iris

30 Favers
337 Downloads

An introduction to machine learning in Rubix ML using the famous Iris dataset and the K Nearest Neighbors classifier.

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rubix/housing

46 Favers
382 Downloads

An example project that predicts house prices for a Kaggle competition using a Gradient Boosted Machine.

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