awesome-repositories.com
Blog
awesome-repositories.com

Descoperă cele mai bune repository-uri open source cu căutare AI.

ExploreazăCăutări recomandateAlternative open-sourceSoftware self-hostedBlogHartă site
ProiectDespreCum realizăm clasamentulPresăServer MCP
LegalConfidențialitateTermeni
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·

2 repository-uri

Awesome GitHub RepositoriesData Streaming Platforms

Infrastructure for moving and processing high volumes of real-time event data.

Distinguishing note: Focuses on the platform capability rather than the underlying log storage.

Explore 2 awesome GitHub repositories matching data & databases · Data Streaming Platforms. Refine with filters or upvote what's useful.

Awesome Data Streaming Platforms GitHub Repositories

Găsește cele mai bune repo-uri cu AI.Vom căuta cele mai potrivite repository-uri folosind AI.
  • apache/kafkaAvatar apache

    apache/kafka

    32,846Vezi pe GitHub↗

    Kafka is a distributed event streaming platform designed for capturing, storing, and processing real-time data streams across interconnected nodes. It functions as a distributed commit log, providing a fault-tolerant storage mechanism that records state changes sequentially to ensure data consistency and durability across distributed environments. The platform distinguishes itself through a partitioned commit log architecture that enables horizontal scaling and parallel processing of data streams. It integrates a stream processing engine for continuous transformations and aggregations, while

    Facilitates high-throughput movement of real-time event data between distributed systems.

    Javakafkascala
    Vezi pe GitHub↗32,846
  • redpanda-data/redpandaAvatar redpanda-data

    redpanda-data/redpanda

    12,248Vezi pe GitHub↗

    Redpanda is a distributed event streaming engine designed to serve as a high-performance, drop-in replacement for existing event-driven architectures. It provides a foundation for building and scaling applications that require reliable data movement, analytical querying, and strict operational compliance across both cloud and self-managed environments. The platform distinguishes itself through a shared-nothing architecture that utilizes thread-per-core execution and a non-blocking asynchronous input/output engine to maximize throughput. It maintains data consistency through a consensus-based

    Acts as a high-performance, drop-in replacement for Kafka to simplify event-driven operations.

    C++containerscppevent-driven
    Vezi pe GitHub↗12,248
  1. Home
  2. Data & Databases
  3. Data Streaming Platforms