61 dépôts
Implementations of neural networks and statistical models.
Explore 61 awesome GitHub repositories matching artificial intelligence & ml · Algorithms. Refine with filters or upvote what's useful.
Developer Roadmap est une plateforme pilotée par la communauté qui fournit des parcours d'apprentissage structurés basés sur des graphes pour le génie logiciel. Elle sert de dépôt de connaissances complet où les domaines techniques sont organisés en séquences visuelles pour guider l'acquisition de compétences professionnelles et la croissance de carrière. Le projet se distingue par un écosystème collaboratif qui permet aux utilisateurs de contribuer à des roadmaps, d'organiser les meilleures pratiques de l'industrie et de maintenir des profils professionnels. Il intègre des cadres d'évaluation diagnostique pour évaluer la compétence technique, aidant les développeurs à identifier les lacunes en matière de connaissances et à se préparer aux entretiens professionnels grâce à des séquences d'apprentissage ciblées. Au-delà de ses capacités de cartographie de base, la plateforme propose des idées de projets pratiques et du tutorat interactif pour renforcer les concepts d'ingénierie. Elle offre un espace centralisé pour que la communauté puisse partager des ressources, suivre le développement progressif des compétences et naviguer dans des paysages techniques complexes.
Applies machine learning techniques to derive insights from complex datasets.
Ce projet est un dépôt complet d'implémentations computationnelles vérifiées conçu pour servir de ressource éducative pour l'informatique et la résolution de problèmes algorithmiques. Il fournit une collection structurée d'exemples de code qui couvrent les structures de données fondamentales, les opérations mathématiques et les concepts de programmation de base, permettant aux utilisateurs d'étudier la logique et la complexité derrière diverses méthodes computationnelles. Le dépôt se distingue par un modèle d'implémentation modulaire basé sur des références qui organise le code dans des espaces de noms logiques. Cette approche facilite l'exécution indépendante et la clarté éducative, permettant aux utilisateurs d'explorer l'évolution des stratégies computationnelles, des approches naïves par force brute aux solutions optimisées haute performance. En découplant les abstractions de structures de données des opérations algorithmiques, le projet garantit que les implémentations restent interchangeables et faciles à analyser. La surface de capacités couvre un large éventail de domaines techniques, notamment l'apprentissage automatique, la cryptographie, le calcul scientifique et la vision par ordinateur. Il inclut des implémentations pour la modélisation prédictive, les réseaux de neurones et l'analyse statistique, aux côtés d'outils pour le traitement du signal numérique, la gestion des flux réseau et la modélisation financière. La collection répond également à des besoins mathématiques spécialisés, tels que l'algèbre linéaire, les calculs géométriques et la manipulation de bits, fournissant une base large pour la recherche et les applications d'ingénierie.
Build and experiment with predictive models, neural networks, and statistical algorithms to extract patterns from large datasets.
This project is a community-driven educational repository that serves as a comprehensive directory of university-level computer science video lectures. It provides a structured learning path for students and professionals, aggregating high-quality academic resources to facilitate self-paced study across a wide range of technical disciplines. The repository distinguishes itself through a collaborative maintenance model, utilizing version control workflows to allow contributors to expand and update the collection. Content is organized within a single, version-controlled document that leverages
Curates university-level lecture content specifically targeting probabilistic graphical models and related statistical frameworks.
Netdata is a distributed observability platform designed for real-time infrastructure monitoring and performance tracking. It functions as a high-frequency agent that collects system, container, and application metrics with per-second precision, providing both local visualization and centralized aggregation across complex, multi-cloud environments. The platform distinguishes itself through edge-based intelligence, utilizing local machine learning models to automatically detect performance anomalies without requiring manual configuration or external query engines. Its architecture prioritizes
Employs edge-based machine learning to automatically detect irregularities in data streams without requiring manual configuration.
This project is an open-source, interactive educational platform designed to teach deep learning through a comprehensive, code-first curriculum. It provides a structured learning path that covers foundational mathematics, modern neural network architectures, and practical optimization techniques, enabling practitioners to master complex artificial intelligence concepts through hands-on experimentation. The platform distinguishes itself by integrating technical explanations with executable Jupyter notebooks. This design allows readers to modify code and hyperparameters in real-time, facilitati
Builds foundational knowledge by implementing linear regression models from scratch using code-first examples.
Elasticsearch is a distributed search engine and document store designed for the high-performance indexing and retrieval of massive volumes of unstructured data. It functions as a centralized analytics platform, providing a schema-flexible architecture that organizes information into searchable indices while maintaining global cluster state through a distributed consensus mechanism. The platform distinguishes itself through its integrated approach to observability, security, and advanced analytics. It combines full-text, vector, and hybrid search capabilities with machine learning-driven insi
Identifies irregularities in high-volume data streams using built-in machine learning models that forecast trends and flag unusual behavior.
Scikit-learn is a machine learning library for predictive data analysis that provides a collection of algorithms for supervised and unsupervised learning. It functions as a comprehensive toolkit for data preprocessing, dimensionality reduction, and model selection, allowing users to classify data objects, predict continuous values, and cluster similar items based on historical patterns. The project is defined by a unified interface design where objects either learn from data, transform data, or chain these operations into sequential workflows. To ensure performance on large or high-dimensiona
Executes a broad array of classification and regression techniques to build predictive models from structured datasets.
This project is a comprehensive Chinese translation of a technical deep learning textbook, providing an educational resource on the theory and implementation of neural networks. It functions as a collaborative technical translation project designed to make complex academic AI literature accessible to non-English speakers. The project utilizes a community-driven translation model that integrates external suggestions and pull requests to refine linguistic accuracy and reduce bias. It employs standardized terminology mapping to ensure a uniform vocabulary throughout the translated content. To i
Explains the use of L1 regularization to promote sparse solutions by penalizing the absolute value of weights.
This project is a collection of educational examples and code for implementing deep learning architectures using the PyTorch framework. It serves as a tutorial and implementation guide for building various neural network architectures for machine learning tasks. The project provides practical implementations for computer vision, including image classification and neural style transfer, as well as natural language processing examples for building sequence models and language predictors. It also covers generative models using adversarial and variational networks to synthesize or transform visua
Provides educational implementations of linear regression models built from scratch.
This project is a collection of interactive Python notebooks and educational resources designed for mastering data science, machine learning, and numerical computing. It provides a series of practical guides and tutorials covering deep learning, big data processing, and statistical analysis. The repository features specialized instructional suites for implementing classical machine learning algorithms, building deep learning model architectures, and managing AWS cloud infrastructure. It includes dedicated notebooks for data visualization and numerical computing exercises. The project covers
Implements predictive modeling and data cleaning to analyze business datasets such as customer churn.
This project provides a collection of machine learning algorithms implemented from scratch in Python. It serves as an educational resource using interactive notebooks that combine code with mathematical explanations to demonstrate the first principles of data science. The repository includes reference implementations for neural networks, such as multilayer perceptrons with backpropagation, and supervised learning models including linear and logistic regression. It also covers unsupervised learning through k-means clustering and Gaussian anomaly detection. The codebase covers a broad range of
Provides an educational from-scratch implementation of linear regression using gradient descent.
100-Days-Of-ML-Code is a machine learning curriculum and instructional resource designed as a structured 100-day learning path. It provides a sequence of daily milestones that cover the mathematical foundations and practical implementations of machine learning algorithms. The project is organized into specialized courses for supervised and unsupervised learning. Supervised learning materials cover the implementation of predictive models such as linear regression, decision trees, and support vector machines. Unsupervised learning materials focus on clustering models, including K-Means and hier
Implements clustering algorithms like K-Means to identify hidden patterns and structures within unlabeled datasets.
This project provides a framework for managing multi-agent systems, designed to automate complex software development, infrastructure, and business workflows. It functions as a multi-agent workflow orchestrator that routes tasks to domain-specific workers while maintaining state persistence and infrastructure automation. By leveraging large language models, the system decomposes high-level objectives into actionable plans, ensuring that complex operations are executed with consistency and reliability. The framework distinguishes itself through its hierarchical agent registry and policy-driven
Applies machine learning and statistical expertise to solve complex data problems.
This project is a comprehensive deep learning framework and educational platform designed for constructing, training, and evaluating neural network architectures. It provides a modular environment for building models through tensor operations and automatic differentiation, supporting a wide range of tasks from image classification and object detection to sequential data processing. Beyond its core technical capabilities, the project distinguishes itself by integrating professional career development resources directly into its learning ecosystem. It offers structured guidance, resume reviews,
Trains neural networks to predict continuous numerical values via regression.
Prophet is a predictive analytics framework and time series regression library designed for forecasting future values. It uses additive models to fit non-linear growth and periodic seasonal patterns, providing tools for producing forecasts with integrated error measurement. The project handles multiple seasonalities and holiday effects to improve accuracy for periodic data. It supports the integration of external regressors and manages data irregularities, such as missing data and outliers, to maintain prediction stability. The framework covers a broad range of analysis capabilities, includi
Provides an integrated statistical framework for forecasting trends and recognizing patterns in time series data.
This project is a machine learning algorithm reference and implementation guide that provides theoretical foundations and code for supervised learning, deep learning, and natural language processing. It serves as a comprehensive toolkit for implementing predictive models and a technical reference for algorithm engineering. The project focuses on ensemble learning frameworks, including the construction of decision trees, random forests, and gradient boosting models. It also functions as a probabilistic graphical model library and an NLP algorithm reference, with specific implementations for se
Implements L1 regularization (Lasso) to shrink unimportant feature coefficients to zero for sparse feature selection.
This project is a multi-model database system designed to store and manage information as documents, graphs, and key-value pairs within a single engine. It functions as a graph database and knowledge graph platform, providing the infrastructure to build, query, and visualize structured data models. By integrating vector search capabilities, the system serves as a vector database that supports retrieval-augmented generation for artificial intelligence applications. The platform distinguishes itself through a unified query language that allows users to perform document lookups, graph traversals
Applies advanced modeling to stored relationship data to classify elements and forecast connections.
This project is an educational resource providing practical code examples and implementations of machine learning algorithms using the Python language. It serves as a guide for constructing predictive pipelines, clustering models, and dimensionality reduction within the Scikit-Learn ecosystem. The repository includes comprehensive demonstrations for supervised and unsupervised learning, as well as detailed examples for implementing neural networks and deep architectures. It also provides practical guidance on exporting model parameters to JSON and wrapping trained models in web APIs for produ
Demonstrates regularization techniques, such as penalty terms, to prevent overfitting in regression models.
MySQL Server is a relational database management system designed to organize and store structured information. It functions as a comprehensive SQL server platform that provides reliable transactional integrity and high-performance query execution for enterprise data management. The system distinguishes itself through a pluggable storage engine architecture that decouples logical query processing from physical data storage, allowing for specialized handling of diverse workloads. It maintains data consistency and high concurrency through multi-version concurrency control and write-ahead logging
Integrates machine learning pipelines directly into database environments to perform model training and predictive analysis on stored data.
This project is an agnostic model interpretability framework and explainability tool designed to provide local interpretable explanations for individual predictions. It functions as a local surrogate model that approximates the behavior of any machine learning classifier or regression model to identify the most influential features for a specific instance. The framework is designed to be model-agnostic, meaning it can explain predictions across tabular, text, and image data regardless of the underlying architecture. It employs local linear approximations and feature importance visualization t
Generates local explanations for continuous value predictions to understand the drivers of regression outputs.