4 مستودعات
Educational content and practical implementations of machine learning models.
Distinguishing note: Focuses on learning and implementation rather than production ML frameworks.
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Ai-Learn is an educational repository and technical reference designed to facilitate the mastery of artificial intelligence and data science workflows. It provides a structured curriculum that combines theoretical mathematical foundations with practical coding exercises, enabling users to build predictive models, neural networks, and analytical pipelines using Python. The project distinguishes itself by emphasizing a first-principles approach to machine learning. Rather than relying solely on high-level abstractions, it guides users through the reconstruction of core algorithms from scratch,
Offers structured tutorials and code implementations for learning machine learning and deep learning.
This repository is a comprehensive collection of instructional guides and practical examples for Python development, focusing on machine learning, data science, and web scraping. It provides implementations for neural networks, reinforcement learning algorithms, and deep learning architectures using PyTorch, alongside detailed manuals for scientific computing and data visualization. The project distinguishes itself by offering specialized tutorials on concurrent programming to optimize CPU performance and guides for setting up Linux development environments. It covers the implementation of ad
Provides educational content and practical implementations of neural networks and reinforcement learning algorithms.
pyprobml is a collection of notebook-based implementations of probabilistic machine learning models and algorithms. It uses scientific computing and data analysis libraries to execute mathematical concepts and theories for practical application and research. The project focuses on the programmatic generation of scientific figures and visualizations to recreate results from a technical text. It employs a system of branch-based asset storage to isolate these generated images from the source code. The repository covers a wide range of probabilistic modeling and machine learning tasks, including
Provides pedagogical notebooks that guide users through the implementation of machine learning models using scientific libraries.
This project is a collection of TensorFlow 2.x machine learning tutorials and practical code examples. It serves as a deep learning implementation guide for constructing diverse neural network architectures, including convolutional, recurrent, and generative networks. The repository provides templates and examples for several specialized domains, including computer vision for image classification and object detection, natural language processing for text generation and language understanding, and generative AI for synthesizing data using adversarial networks and autoencoders. It also includes
Provides educational content and practical implementations of machine learning models using TensorFlow 2.x.