PaddleScience is SDK and library for developing AI-driven scientific computing applications based on PaddlePaddle.
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Updated
Jun 12, 2024 - Python
PaddleScience is SDK and library for developing AI-driven scientific computing applications based on PaddlePaddle.
Exercises on Machine Learning
Using Linear Algebra Techniques to accelerate Gaussian Process Regression
Predicting Baseball Statistics: Classification and Regression Applications in Python Using scikit-learn and TensorFlow-Keras
Hello everyone this repo will contain my journey of machine learning and DeepLearning with some exciting projects
Lua-Based Machine, Deep And Reinforcement Learning Library (For Roblox And Pure Lua). Contains 34 Models!
This is an academic final year individual project, published by Liew Jun Yen - Data Analyst
An R package pipelining omics-based cancer survival analysis
Classifying Criminal Offenses: Classification Application in Python Using scikit-learn and TensorFlow-Keras
This are the Machine Learning notes by leading AI website named Deeplearning.AI. This notes will help you to be a machine learner from beginner to advanced level. Welcome Everyone!!
Group Project using Supervised Learning and Neural Network Models
XCSF learning classifier system: rule-based online evolutionary machine learning
MLPro - The Integrative Middleware Framework for Standardized Machine Learning in Python
Smarter Manual Annotation for Resource-constrained collection of Training data
mlr3shiny: Machine Learning in Shiny with mlr3
Probabilistic Learning for mlr3
This is a web application built with Flask for detecting malaria in microscopic images of blood samples. It uses a deep learning model trained on TensorFlow/Keras to classify images as either infected (parasitized) or uninfected.
A curated list of classic artificial intelligence paper
ML/DL Life Cycle utilities with support for BingImageCreator and Discord
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