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2 repositorios

Awesome GitHub RepositoriesRelational Model Extensions

Extensibility points for adding custom catalogs, data formats, and connectors to a relational processing engine.

Distinct from Custom Retrieval Extensions: Focuses on extending data models and connectors rather than UI components or RAG retrieval

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

Awesome Relational Model Extensions GitHub Repositories

Encuentra los mejores repositorios con IA.Buscaremos los repositorios que mejor coincidan usando IA.
  • apache/flinkAvatar de apache

    apache/flink

    26,086Ver en GitHub↗

    Apache Flink is a distributed processing engine designed for both high-throughput, low-latency data streams and finite batch workloads. It functions as a stateful stream processor and a SQL stream processing engine, providing a unified runtime to execute relational queries and event-based transformations. The system is distinguished by its ability to manage persistent operator state to ensure exactly-once processing guarantees and consistency during failures. It features specialized capabilities for complex event processing to detect temporal patterns and handles out-of-order events using eve

    Allows extending the relational model through custom catalogs, formats, connectors, and user-defined functions.

    Java
    Ver en GitHub↗26,086
  • osm-search/nominatimAvatar de osm-search

    osm-search/Nominatim

    4,334Ver en GitHub↗

    Nominatim is a self-hosted geospatial search engine and geocoding server that utilizes OpenStreetMap data. It provides a complete infrastructure for forward geocoding, converting addresses or place names into geographic coordinates, and reverse geocoding, translating coordinates into human-readable physical addresses. The project features a dedicated data importer that parses raw map data into a PostgreSQL geospatial database. It distinguishes itself through a configurable import pipeline that uses style files to filter map features and an importance-based ranking system to prioritize search

    Specifies how non-standard relation types are converted into multipolygons or multiline geometries during import.

    Pythongeocodingopenstreetmaposm
    Ver en GitHub↗4,334
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  • Geospatial Relation ConvertersLogic for converting non-standard map relation types into multipolygons or multiline geometries. **Distinct from Relational Model Extensions:** Specifically handles geospatial relation-to-geometry conversion, whereas the parent refers to general relational engine extensions.