9 dépôts
Configuration parameters for adjusting thread counts and parallel processing behavior.
Distinguishing note: Focuses on performance tuning via concurrency, distinct from infrastructure provisioning.
Explore 9 awesome GitHub repositories matching devops & infrastructure · Parallel Execution Settings. Refine with filters or upvote what's useful.
Trufflehog is a security tool designed to continuously monitor code repositories and cloud environments to detect, verify, and remediate exposed sensitive credentials and API keys. It functions as a comprehensive secret scanning engine that integrates directly into deployment pipelines and version control systems to intercept sensitive data before it is committed or pushed. By utilizing read-only operations and volatile memory processing, the system ensures that discovered credentials are never stored persistently, maintaining strict data privacy throughout the scanning lifecycle. The platfor
Adjusts parallel worker threads to balance scan speed against system resource usage.
This project is a deep learning framework designed for constructing, training, and deploying neural networks across diverse hardware environments. It functions as a high-performance tensor computation library that provides both imperative and symbolic programming interfaces, allowing developers to balance flexible, step-by-step model building with the efficiency of compiled computation graphs. The framework distinguishes itself through a hybrid execution engine that integrates declarative graph compilation with imperative runtime logic. It supports scalable, distributed training across multip
Provides configuration parameters for adjusting thread counts and parallel processing behavior to optimize performance.
This project is a collection of educational resources and reference implementations for the Apache Flink stream processing framework. It provides a learning resource focused on mastering distributed stream processing through implementation guides, performance tuning tutorials, and practical examples. The repository features detailed walkthroughs for building real-time data pipelines using the DataStream and Table APIs. It includes specific integration examples for connecting Apache Flink with Kafka brokers and Elasticsearch indices, as well as reference implementations for real-time deduplica
Provides guides for configuring parallel execution settings to optimize stream processing speed.
100 Go Mistakes is a reference book and code review companion that catalogues frequent Go programming anti-patterns and provides corrected implementations for each one. It covers a wide range of common pitfalls, from range loop variable capture and interface nil handling to error wrapping and map iteration randomization, helping developers recognize and avoid these issues in their own code. The project distinguishes itself by offering a structured, example-driven approach to learning idiomatic Go. It covers core design decisions such as when to use pointer versus value receivers, how to apply
Defines a minimum workload size below which goroutine creation overhead outweighs parallel speed gains, preventing slowdowns.
Hazelcast is a distributed data platform that combines an in-memory data grid with a stream processing engine to support real-time analytics and event-driven applications. It functions as a partitioned, distributed key-value store that replicates data across cluster nodes to provide low-latency access and high availability. The platform also serves as a distributed SQL query engine, allowing users to execute standard SQL statements against both in-memory datasets and external data sources. What distinguishes Hazelcast is its use of a distributed consensus subsystem to maintain strongly consis
Tunes thread counts for query processing and data aggregation to maximize throughput.
Pueue is a task queue manager for shell commands, built as a daemon and command-line interface. It accepts shell commands into a managed queue and executes them with configurable parallel execution limits, supporting both global and per-group concurrency controls. The daemon persists its entire state—task queue, logs, and configuration—to disk, ensuring survival across crashes and system restarts. The project distinguishes itself through a dependency graph that lets tasks declare prerequisites, forming a directed acyclic graph that controls execution order. Tasks can be organized into named g
Adjust the maximum number of tasks that run concurrently at runtime without restarting the daemon.
hnswlib est une bibliothèque C++ header-only et un moteur d'indexation vectorielle conçu pour la recherche approximative de plus proches voisins en haute dimension. Il organise de grandes collections d'embeddings dans une structure de graphe interrogeable pour permettre des requêtes de proximité rapides et des calculs de distance. Le système utilise des graphes Hierarchical Navigable Small World pour obtenir une recherche de similarité vectorielle rapide. Il se distingue en permettant la définition de métriques de distance et de fonctions de similarité personnalisées pour adapter les calculs à des exigences de données spécifiques. Le moteur couvre tout le cycle de vie de l'indexation, incluant la construction incrémentale de l'index et la gestion des points de données via des ajouts et des suppressions d'éléments. Les capacités de requête incluent à la fois la recherche approximative et exacte des plus proches voisins, complétées par un filtrage de recherche booléen pour exclure des candidats basés sur des étiquettes d'éléments. La bibliothèque prend en charge la persistance de l'index via la sérialisation de fichiers binaires et fournit des configurations pour l'exécution parallèle afin de distribuer les tâches de requête et d'indexation sur plusieurs cœurs CPU.
Provides configurations to tune the number of CPU threads used for indexing and querying to optimize throughput.
This project is a Rust interface for the PyTorch C++ library, serving as a deep learning framework and tensor computing library. It functions as a C++ API wrapper that enables the manipulation of multi-dimensional arrays and the execution of neural network architectures across CPU and GPU hardware accelerators. The library provides a TorchScript inference engine to load and execute just-in-time compiled models. It also supports Rust and Python interoperability, allowing for the creation of Python extensions that share tensor data through a common interface. The system covers deep learning mo
Allows configuration of processing thread counts to optimize hardware utilization.
Ce projet est un framework de traitement de données tabulaires haute performance pour R, conçu pour gérer des jeux de données massifs avec efficacité mémoire et vitesse. Il fournit une structure de données améliorée qui utilise la sémantique de référence et la modification sur place pour effectuer des transformations complexes sans la surcharge de copies d'objets inutiles. La bibliothèque se distingue par ses optimisations architecturales de bas niveau, incluant le traitement parallèle multi-threadé, le tri basé sur radix et l'analyse de fichiers mappés en mémoire. En déchargeant les routines critiques de manipulation et d'agrégation de données vers du code C compilé, elle permet une exécution rapide des tâches qui seraient autrement coûteuses en calcul. Son moteur principal prend en charge des opérations relationnelles avancées, telles que les jointures non-équi, glissantes et à intervalles chevauchants, parallèlement à l'indexation secondaire automatique pour accélérer l'accès répété aux données. Au-delà de ses capacités de traitement principales, le projet offre une suite complète d'outils pour la gestion du cycle de vie des données. Cela inclut des utilitaires d'ingestion et de sérialisation à haute vitesse avec détection automatique de type, ainsi qu'un support spécialisé pour l'analyse de séries temporelles et l'agrégation multidimensionnelle. Le framework est conçu pour évoluer, permettant aux utilisateurs d'effectuer des opérations complexes de regroupement, de filtrage et de remodelage sur des jeux de données contenant des milliards de lignes tout en maintenant la stabilité et les performances du système.
Allows configuration of the number of CPU threads used for parallel data processing tasks.