2 مستودعات
Tools for persisting datasets to storage backends.
Distinguishing note: Focuses on URI-based persistence for distributed datasets.
Explore 2 awesome GitHub repositories matching data & databases · Data Writers. Refine with filters or upvote what's useful.
Ray is a distributed computing framework designed to scale Python and Java applications across clusters by abstracting task scheduling and resource management. It functions as a resource-aware execution engine that manages task dependencies, placement, and fault tolerance across networked compute nodes. At its core, the system provides a stateful actor model, allowing developers to define classes that run in dedicated processes to maintain and mutate internal state across remote method calls. The framework distinguishes itself through a robust cross-language interoperability layer, enabling f
Persists datasets to local or cloud storage using standard URI schemes to ensure data availability across nodes.
Beads is a versioned, dependency-aware graph database designed for distributed issue tracking and project management. It functions as an agentic workflow orchestrator, providing a structured environment where tasks, dependencies, and project metadata are linked through relational hierarchies. By maintaining a persistent, version-controlled record of project state, the system enables teams to manage complex work items across multiple repositories and environments. The platform distinguishes itself through its deep integration with automated coding agents, acting as a Model Context Protocol ser
Hosts a persistent database server allowing multiple agents or users to concurrently read and write task data.