awesome-repositories.com
ब्लॉग
awesome-repositories.com

AI-संचालित खोज के साथ बेहतरीन ओपन-सोर्स रिपॉजिटरी खोजें।

एक्सप्लोर करेंक्यूरेटेड खोजेंओपन-सोर्स विकल्पसेल्फ-होस्टेड सॉफ्टवेयरब्लॉगसाइटमैप
प्रोजेक्टहमारे बारे मेंहम रैंकिंग कैसे करते हैंप्रेसMCP सर्वर
कानूनीगोपनीयताशर्तें
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·

2 रिपॉजिटरी

Awesome GitHub RepositoriesMemory Formats

Standardized memory layouts for efficient data interchange.

Distinguishing note: Focuses on memory representation standards rather than database storage engines.

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

Awesome Memory Formats GitHub Repositories

AI के साथ बेहतरीन रिपॉजिटरी खोजें।हम AI का उपयोग करके सबसे सटीक रिपॉजिटरी खोजेंगे।
  • pola-rs/polarspola-rs का अवतार

    pola-rs/polars

    38,855GitHub पर देखें↗

    Polars is a high-performance columnar data processing library designed for efficient analytical workflows. It functions as a structured data library that organizes information into typed columns, utilizing the Apache Arrow memory format to enable zero-copy data sharing and cache-friendly, vectorized operations. The engine is built to handle large-scale tabular datasets, providing both local and distributed analytical runtimes that scale from single-machine environments to multi-node clusters. The project distinguishes itself through a sophisticated lazy query engine that constructs abstract e

    Implements the Apache Arrow memory format for zero-copy data sharing and high-performance interoperability.

    Rustarrowdataframedataframe-library
    GitHub पर देखें↗38,855
  • apache/arrowapache का अवतार

    apache/arrow

    16,529GitHub पर देखें↗

    Arrow is a cross-language development platform for in-memory data. It provides a standardized, language-independent columnar memory format designed to accelerate analytical operations and improve memory efficiency on modern computing hardware. By utilizing a schema-driven approach, the framework enables the efficient organization of both flat and nested data structures. The project functions as an analytical data processing engine that facilitates high-performance computation directly on memory-resident datasets. It distinguishes itself through a zero-copy architecture, which allows multiple

    Structures data into a language-independent columnar format to accelerate analytical operations and improve memory efficiency.

    C++arrowparquet
    GitHub पर देखें↗16,529
  1. Home
  2. Data & Databases
  3. Memory Formats