Simple machine learning library / 簡單易用的機器學習套件
-
Updated
Jun 21, 2022 - Python
Simple machine learning library / 簡單易用的機器學習套件
经典机器学习算法的极简实现
Essential NLP & ML, short & fast pure Python code
Computer code collated for use with Artificial Intelligence Engines book by JV Stone
Python&機械学習ライブラリ TensorFlow の使い方の練習コード集。特にニューラルネットワークを重点的に取り扱い。
Aviation grade news article metadata extraction
zeta-lean: minimalistic python machine learning library built on top of numpy and matplotlib
Minimalistic Multiple Layer Neural Network from Scratch in Python.
🔍 Character Recognition Using Single-layer Perceptron Neural Network.
Hand Gesture Recognition using CNNs and Perceptrons in realtime (OpenCV)
Creating Logic Functions [AND, OR, NOT, XNOR, XOR, NAND, etc] using Neural Network
Basic implementation of a Perceptron in Python. The Perceptron is trained with input data, adjusting weights and bias to predict outputs based on new values.
This project involves recognising handwritten digits from MNIST Dataset from UCI ML repository by implementing perceptron learning algorithm on 10 perceptrons(single layer Neural Network) and multilayer Neural Network.
1. Perceptron: The very basic entity in Machine Learning. It's training and weights update in code. 2. Image Aesthetic Assessment: Determining the aesthetic content of an image. The network defined use Spatial Pyramid Pooling. 3. Image Classification: Alexnet architecture in Keras for image classification. Find more here
Gender classification by name
Here are some programs made with Python and JavaScript (p5.js) related to artificial intelligence.
Implementation of Artificial Intelligence models without using any blackbox or libraries 😎
A multilayer perceptron (MLP) is a feedforward artificial neural network model that maps sets of input data onto a set of appropriate outputs. An MLP consists of multiple layers of nodes in a directed graph, with each layer fully connected to the next one.
Add a description, image, and links to the perceptron topic page so that developers can more easily learn about it.
To associate your repository with the perceptron topic, visit your repo's landing page and select "manage topics."