#python #computer_vision #computervision #deep_learning #gimp #gimp_2_10 #gimp_plugin #image_manipulation #machine_learning #machine_learning_algorithms #photo_editing #photography #python27 #pytorch
https://github.com/kritiksoman/GIMP-ML
https://github.com/kritiksoman/GIMP-ML
GitHub
GitHub - kritiksoman/GIMP-ML: AI for GNU Image Manipulation Program
AI for GNU Image Manipulation Program. Contribute to kritiksoman/GIMP-ML development by creating an account on GitHub.
#other #artificial_intelligence #data_mining #data_science #deep_learning #game_theory #hardware #learning_theory #literature #machine_learning #machine_learning_algorithms #neural_network #paper #pattern_recognition #reinforcement_learning #silicon #statistical_learning #statistics
https://github.com/tirthajyoti/Papers-Literature-ML-DL-RL-AI
https://github.com/tirthajyoti/Papers-Literature-ML-DL-RL-AI
GitHub
GitHub - tirthajyoti/Papers-Literature-ML-DL-RL-AI: Highly cited and useful papers related to machine learning, deep learning,…
Highly cited and useful papers related to machine learning, deep learning, AI, game theory, reinforcement learning - tirthajyoti/Papers-Literature-ML-DL-RL-AI
#jupyter_notebook #python #data_science #machine_learning #scikit_learn #machine_learning_algorithms #ml #machinelearning #machinelearning_python #scikit_learn_python
https://github.com/microsoft/ML-For-Beginners
https://github.com/microsoft/ML-For-Beginners
GitHub
GitHub - microsoft/ML-For-Beginners: 12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all
12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all - microsoft/ML-For-Beginners
#kotlin #machine_learning #deep_learning #machine_learning_algorithms #artificial_intelligence #deeplearning #mlops #mlops_environment
https://github.com/MLReef/mlreef
https://github.com/MLReef/mlreef
GitHub
GitHub - MLReef/mlreef: The collaboration workspace for Machine Learning
The collaboration workspace for Machine Learning. Contribute to MLReef/mlreef development by creating an account on GitHub.
#jupyter_notebook #ai #deep_learning #interview #interview_practice #interview_preparation #interviews #machine_learning #machine_learning_algorithms #scalable_applications #system_design
https://github.com/alirezadir/machine-learning-interview-enlightener
https://github.com/alirezadir/machine-learning-interview-enlightener
GitHub
GitHub - alirezadir/Machine-Learning-Interviews: This repo is meant to serve as a guide for Machine Learning/AI technical interviews.
This repo is meant to serve as a guide for Machine Learning/AI technical interviews. - GitHub - alirezadir/Machine-Learning-Interviews: This repo is meant to serve as a guide for Machine Learning/...
#python #batch_processing #kafka #machine_learning_algorithms #pathway #real_time #streaming
https://github.com/pathwaycom/pathway
https://github.com/pathwaycom/pathway
GitHub
GitHub - pathwaycom/pathway: Python ETL framework for stream processing, real-time analytics, LLM pipelines, and RAG.
Python ETL framework for stream processing, real-time analytics, LLM pipelines, and RAG. - pathwaycom/pathway
🔥1
#python #code #machine_learning_algorithms #statistical_learning_method
This resource helps you learn machine learning and AI by providing translated papers, detailed code explanations, and practical implementations. You can read hundreds of papers daily with translations of titles, summaries, and even full texts for some AI papers. The code is well-commented, making it easy to follow along with formulas and examples. There are also blogs and upcoming books to help you understand the concepts better. Additionally, there are plans for offline training sessions in major cities, which can help you quickly get started with ML, MLP, and CV. This makes learning machine learning more accessible and comprehensive.
https://github.com/Dod-o/Statistical-Learning-Method_Code
This resource helps you learn machine learning and AI by providing translated papers, detailed code explanations, and practical implementations. You can read hundreds of papers daily with translations of titles, summaries, and even full texts for some AI papers. The code is well-commented, making it easy to follow along with formulas and examples. There are also blogs and upcoming books to help you understand the concepts better. Additionally, there are plans for offline training sessions in major cities, which can help you quickly get started with ML, MLP, and CV. This makes learning machine learning more accessible and comprehensive.
https://github.com/Dod-o/Statistical-Learning-Method_Code
GitHub
GitHub - Dod-o/Statistical-Learning-Method_Code: 手写实现李航《统计学习方法》书中全部算法
手写实现李航《统计学习方法》书中全部算法. Contribute to Dod-o/Statistical-Learning-Method_Code development by creating an account on GitHub.
#cplusplus #cuda #gpu #machine_learning #machine_learning_algorithms #nvidia
cuML - RAPIDS Machine Learning Library
https://github.com/rapidsai/cuml
cuML - RAPIDS Machine Learning Library
https://github.com/rapidsai/cuml
GitHub
GitHub - rapidsai/cuml: cuML - RAPIDS Machine Learning Library
cuML - RAPIDS Machine Learning Library. Contribute to rapidsai/cuml development by creating an account on GitHub.
#html #data_science #education #machine_learning #machine_learning_algorithms #machinelearning #machinelearning_python #microsoft_for_beginners #ml #python #r #scikit_learn #scikit_learn_python
Microsoft’s "Machine Learning for Beginners" is a free, 12-week course with 26 lessons designed to teach classic machine learning using Python and Scikit-learn. It includes quizzes, projects, and assignments to help you learn by doing, with lessons themed around global cultures to keep it engaging. You can access solutions, videos, and even R language versions. The course is beginner-friendly, flexible, and helps build practical skills step-by-step, making it easier to understand and apply machine learning concepts in real-world scenarios. This structured approach boosts your learning retention and prepares you for further study or career growth in ML[1][5].
https://github.com/microsoft/ML-For-Beginners
Microsoft’s "Machine Learning for Beginners" is a free, 12-week course with 26 lessons designed to teach classic machine learning using Python and Scikit-learn. It includes quizzes, projects, and assignments to help you learn by doing, with lessons themed around global cultures to keep it engaging. You can access solutions, videos, and even R language versions. The course is beginner-friendly, flexible, and helps build practical skills step-by-step, making it easier to understand and apply machine learning concepts in real-world scenarios. This structured approach boosts your learning retention and prepares you for further study or career growth in ML[1][5].
https://github.com/microsoft/ML-For-Beginners
GitHub
GitHub - microsoft/ML-For-Beginners: 12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all
12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all - microsoft/ML-For-Beginners