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 RepositoriesAnalytics Engines

Systems designed for high-performance aggregation and querying of large-scale datasets.

Distinguishing note: Focuses on columnar storage for performance metrics rather than general-purpose database management.

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

Awesome Analytics Engines GitHub Repositories

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

    getsentry/sentry

    44,108Vezi pe GitHub↗

    This project is a comprehensive software observability suite and application performance monitoring platform designed to track runtime errors, performance bottlenecks, and system health. It functions as a centralized diagnostic service that aggregates and categorizes exceptions, providing the infrastructure necessary to visualize complex execution paths across distributed systems and microservices. The platform distinguishes itself through a high-throughput distributed event ingestion pipeline and a columnar storage analytics engine that enables rapid aggregation of large-scale performance me

    Provides a columnar storage engine for rapid aggregation and filtering of large-scale performance metrics.

    Pythonapmcrash-reportingcrash-reports
    Vezi pe GitHub↗44,108
  • taosdata/tdengineAvatar taosdata

    taosdata/TDengine

    24,734Vezi pe GitHub↗

    TDengine is a distributed time-series database designed for the high-speed ingestion, compression, and retrieval of timestamped metrics and sensor data. It functions as a SQL-compatible analytics engine, allowing users to perform complex operations on massive volumes of time-ordered information using standard relational syntax. The platform is built to serve as a backend foundation for industrial IoT environments, managing real-time data streams and device metadata through a cluster-based architecture. The system distinguishes itself through a distributed sharding architecture that uses consi

    Provides a SQL-compatible query layer for performing complex operations on massive volumes of time-ordered data.

    Cbigdatacloud-nativecluster
    Vezi pe GitHub↗24,734
  1. Home
  2. Data & Databases
  3. Analytics Engines