awesome-repositories.com
Blog
awesome-repositories.com

Descubre los mejores repositorios open-source con nuestra búsqueda potenciada por IA.

ExplorarBúsquedas curadasOpen-source alternativesSelf-hosted softwareBlogMapa del sitio
ProyectoAcerca deHow we rankPrensaServidor MCP
Aviso legalPrivacidadTérminos
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·

41 repositorios

Awesome GitHub RepositoriesData Warehouse Integrations

Tools for synchronizing analytics metrics into centralized data warehouses.

Distinguishing note: Focuses on long-term storage and warehouse synchronization rather than real-time reporting.

Explore 41 awesome GitHub repositories matching data & databases · Data Warehouse Integrations. Refine with filters or upvote what's useful.

Awesome Data Warehouse Integrations GitHub Repositories

Encuentra los mejores repositorios con IA.Buscaremos los repositorios que mejor coincidan usando IA.
  • plausible/analyticsAvatar de plausible

    plausible/analytics

    24,245Ver en GitHub↗

    This project is an open-source, privacy-focused web analytics platform designed for high-throughput data ingestion and multi-tenant data management. It provides a cookie-less tracking engine that captures visitor interactions using ephemeral request metadata, ensuring comprehensive traffic visibility while maintaining strict privacy standards. The architecture utilizes an event-driven ingestion pipeline and aggregated metric storage to decouple data collection from processing, enabling efficient long-term retrieval and responsive dashboard performance. What distinguishes this platform is its

    Pipes analytics information into external data storage systems to support long-term data warehousing and complex analytical pipelines.

    Elixiranalyticschartsclickhouse
    Ver en GitHub↗24,245
  • beekeeper-studio/beekeeper-studioAvatar de beekeeper-studio

    beekeeper-studio/beekeeper-studio

    22,030Ver en GitHub↗

    Beekeeper Studio is a cross-platform desktop application designed for database management and SQL development. It provides a unified graphical interface to connect to, query, and modify data across a wide range of relational and NoSQL database systems. The application functions as a comprehensive workspace, integrating tools for schema design, record editing, and data visualization. The project distinguishes itself through a focus on secure, flexible connectivity and AI-assisted workflows. It supports advanced authentication methods, including enterprise single sign-on, multi-factor authentic

    Establishes secure connections to managed cloud database services and data warehouses using enterprise authentication.

    TypeScriptbigquerycassandracockroachdb
    Ver en GitHub↗22,030
  • prefecthq/prefectAvatar de PrefectHQ

    PrefectHQ/prefect

    21,640Ver en GitHub↗

    Prefect is a workflow orchestration platform designed to define, schedule, and monitor complex data pipelines as Python code. It functions as a container-native engine that wraps individual tasks in isolated environments, ensuring consistent dependencies and resource allocation across diverse infrastructure. By utilizing a state-machine-based orchestration model, the system tracks execution progress through discrete transitions and persistent event logs to maintain reliable and observable task processing. The platform distinguishes itself through a decoupled worker-API architecture, which sep

    Provides secure connectivity for executing SQL queries and managing datasets in cloud data warehouses.

    Pythonautomationdatadata-engineering
    Ver en GitHub↗21,640
  • cube-js/cubeAvatar de cube-js

    cube-js/cube

    20,251Ver en GitHub↗

    Cube is a semantic data layer that provides a unified framework for defining business metrics, dimensions, and relationships across diverse data sources. By acting as a headless business intelligence engine, it transforms raw data into a governed model that can be queried via SQL, REST, and GraphQL interfaces. This architecture ensures consistent data definitions and logic across all downstream analytical applications and reporting tools. The platform distinguishes itself through its integrated conversational AI capabilities, which allow users to explore data using natural language. It orches

    Provides secure connectivity to enterprise data warehouses for consistent analytics.

    Rustagentic-analyticsagentsai
    Ver en GitHub↗20,251
  • plotly/plotly.pyAvatar de plotly

    plotly/plotly.py

    18,270Ver en GitHub↗

    Plotly.py is a comprehensive framework for building production-ready data applications and interactive dashboards directly from Python code. It functions as both a high-performance visualization library for browser-based charts and a full-stack tool for transforming analytical scripts into responsive, web-based interfaces. By abstracting away the need for manual HTML or JavaScript, it allows developers to define complex layouts and functional logic using modular, reusable components. The framework distinguishes itself through a robust architecture that handles event orchestration and state sy

    Links analytical applications to external data warehouses to enable automated processing and reporting across infrastructure.

    Pythond3dashboarddeclarative
    Ver en GitHub↗18,270
  • prestodb/prestoAvatar de prestodb

    prestodb/presto

    16,711Ver en GitHub↗

    Presto is a distributed SQL query engine designed for high-performance analytical processing across heterogeneous data sources. It functions as a data federation platform and massively parallel processing engine, allowing users to execute interactive queries against diverse storage systems without requiring data migration. By mapping remote metadata and structures to a unified relational namespace, it enables seamless cross-platform analysis through a standard SQL interface. The engine distinguishes itself through a pluggable connector architecture and a shared-nothing distributed processing

    Provides secure, real-time interactive connectivity to cloud-hosted data warehouse clusters for SQL analysis.

    Javabig-datadatahadoop
    Ver en GitHub↗16,711
  • quarkusio/quarkusAvatar de quarkusio

    quarkusio/quarkus

    15,479Ver en GitHub↗

    Quarkus is a Kubernetes-native Java framework designed for building high-performance, memory-efficient applications. It utilizes ahead-of-time native compilation to transform Java code into standalone, optimized binaries that eliminate the need for a virtual machine, enabling rapid startup and reduced memory consumption. By performing code augmentation during the build phase, it shifts heavy processing tasks away from runtime, ensuring that applications are optimized for cloud-native environments. The framework distinguishes itself through a unified approach to reactive and imperative program

    Integrates managed relational database services like MySQL and PostgreSQL for persistent data storage.

    Javacloud-nativehacktoberfestjava
    Ver en GitHub↗15,479
  • unstructured-io/unstructuredAvatar de Unstructured-IO

    Unstructured-IO/unstructured

    14,019Ver en GitHub↗

    Unstructured is an enterprise-grade data orchestration engine designed to transform raw, unstructured files into structured, machine-readable formats. It functions as a comprehensive platform for document ingestion, partitioning, and enrichment, specifically engineered to prepare complex data for retrieval-augmented generation and agentic AI workflows. The platform distinguishes itself through its sophisticated document processing strategies, which combine rule-based extraction with vision-language models to handle diverse file layouts, tables, and images. It provides a modular architecture t

    Transfers processed document data into specified databases, schemas, and tables within cloud-based data warehouses.

    HTMLdata-pipelinesdeep-learningdocument-image-analysis
    Ver en GitHub↗14,019
  • dbt-labs/dbt-coreAvatar de dbt-labs

    dbt-labs/dbt-core

    13,051Ver en GitHub↗

    dbt-core is a command-line framework for transforming data within a warehouse using modular SQL and version control. It functions as a data transformation engine that enables users to define data structures and business logic through declarative configuration files, which the system then compiles into executable code. By managing complex data dependencies through a directed acyclic graph, it ensures that transformation tasks execute in the correct order while maintaining a manifest-driven state to track lineage and execution history. The project distinguishes itself through an adapter-based d

    Establishes secure connectivity between the transformation engine and various cloud-hosted data warehouse platforms.

    Rustanalyticsbusiness-intelligencedata-modeling
    Ver en GitHub↗13,051
  • heroiclabs/nakamaAvatar de heroiclabs

    heroiclabs/nakama

    12,754Ver en GitHub↗

    Nakama is a distributed server framework designed for real-time multiplayer games and social applications. It provides an authoritative runtime environment for executing game logic, ensuring consistent state and cheat-resistant gameplay across diverse client platforms. The system acts as a centralized backend, managing persistent player identities, social graphs, and real-time communication channels to support complex multiplayer interactions. The platform distinguishes itself through an integrated suite of LiveOps tools that allow developers to manage game economies, schedule time-bound even

    Streams raw player and system event data to external data warehouses for analytics.

    Gobackendbackend-as-a-servicechat-server
    Ver en GitHub↗12,754
  • debezium/debeziumAvatar de debezium

    debezium/debezium

    12,421Ver en GitHub↗

    Debezium is a distributed change data capture platform that streams row-level database modifications as real-time events. By parsing database transaction logs, the system broadcasts structural and data changes to message brokers, enabling reactive processing and data integration across distributed architectures. The platform utilizes log-based capture to extract modifications directly from transaction logs, ensuring minimal impact on source system performance while maintaining the original commit order of operations. It employs database-specific connector adapters to translate proprietary bin

    Maintains analytical stores by streaming live database updates into data warehouses for real-time intelligence.

    Javaapache-kafkacdcchange-data-capture
    Ver en GitHub↗12,421
  • datahub-project/datahubAvatar de datahub-project

    datahub-project/datahub

    12,141Ver en GitHub↗

    DataHub is a metadata management platform designed to unify technical, operational, and business context across diverse data ecosystems. By utilizing a graph-based metadata model and an event-driven ingestion architecture, it creates a centralized source of truth that maps complex data relationships, lineage, and ownership. This foundational framework enables organizations to maintain a synchronized view of their data landscape, supporting both human-led discovery and automated data operations. The platform distinguishes itself through its focus on grounding artificial intelligence and autono

    Executes generated queries across multiple warehouse types using standard drivers while maintaining a unified interface.

    Pythondata-catalogdata-discoverydata-governance
    Ver en GitHub↗12,141
  • google/go-cloudAvatar de google

    google/go-cloud

    9,891Ver en GitHub↗

    go-cloud es un kit de herramientas de bibliotecas agnósticas a la nube que proporcionan interfaces portátiles en Go para interactuar con servicios comunes en la nube. Permite el desarrollo de aplicaciones multi-cloud al desacoplar la lógica de negocio de las implementaciones de API de proveedores específicos. El proyecto utiliza un sistema basado en drivers para mapear llamadas de interfaz genéricas a solicitudes específicas del proveedor. Esto permite a las aplicaciones cambiar entre diferentes backends de nube para almacenamiento de blobs, bases de datos relacionales y mensajería asíncrona de publicación-suscripción sin cambiar el código central de la aplicación. Más allá del almacenamiento y la mensajería, el kit de herramientas incluye un gestor para rastrear y actualizar variables de configuración dinámicas en tiempo de ejecución sin requerir el reinicio del proceso. También proporciona una capa de observabilidad estandarizada para trazado distribuido, registro de solicitudes y verificación de estado.

    Integrates relational database services using portable connectors that prevent vendor lock-in.

    Go
    Ver en GitHub↗9,891
  • pycaret/pycaretAvatar de pycaret

    pycaret/pycaret

    9,811Ver en GitHub↗

    PyCaret is a Python AutoML platform and MLOps lifecycle manager designed to automate machine learning workflows. It functions as a low-code environment that leverages a scikit-learn native engine to execute preprocessing, training, and evaluation for tabular data. The platform distinguishes itself as an LLM-powered ML copilot, using large language model agents to analyze datasets, design experiment configurations, and explain model results. It also serves as a Kubernetes ML orchestrator and model registry, enabling the versioning of trained pipelines and their promotion to production API endp

    Provides secure connectivity to cloud-hosted data warehouses and managed database services for importing experimentation data.

    Pythonanomaly-detectionautomlclassification
    Ver en GitHub↗9,811
  • netflix/metaflowAvatar de Netflix

    Netflix/metaflow

    9,764Ver en GitHub↗

    Metaflow is a Python machine learning framework and MLOps workflow orchestrator designed to manage the lifecycle of data pipelines from local prototyping to production. It serves as a distributed compute manager and an experiment tracking system, enabling the creation of reproducible pipelines that transition between development and high-availability production environments. The framework distinguishes itself through an integrated checkpointing system that automatically persists intermediate data artifacts to remote storage, allowing failed runs to be resumed from the last successful step. It

    Writes predictions and computation outputs to data warehouses or caches to power downstream systems.

    Pythonagentsaiaws
    Ver en GitHub↗9,764
  • jeecgboot/jimureportAvatar de jeecgboot

    jeecgboot/jimureport

    8,059Ver en GitHub↗

    JimuReport is an open-source reporting and dashboard engine designed to be embedded directly into Spring Boot applications. Its core identity centers on generating data reports and full-screen dashboards from natural language descriptions, eliminating the need for manual design. The platform also provides a conversational query interface that translates plain-language questions into database queries, returning results as tables and charts without requiring SQL knowledge. What distinguishes JimuReport is its integration of AI skills that can be installed with a single command, enabling report

    Connects to Apache Doris data warehouse as a data source for reports and dashboards.

    Javaaibibigscreen
    Ver en GitHub↗8,059
  • anthropics/knowledge-work-pluginsAvatar de anthropics

    anthropics/knowledge-work-plugins

    7,583Ver en GitHub↗

    This project is a plugin framework and agentic workflow library designed to connect large language models to professional toolstacks. It provides a system for integrating language models with external data warehouses, CRMs, and other enterprise software to retrieve and manipulate real-time business data. The framework enables the automation of specialized professional tasks through a file-based plugin definition system. It allows for the customization of domain expertise and plugin behavior to align with internal company processes, supported by an enterprise data connector that links models t

    Provides secure connectivity modules for linking language models to cloud-hosted data warehouses and BI tools.

    Python
    Ver en GitHub↗7,583
  • supabase/realtimeAvatar de supabase

    supabase/realtime

    7,488Ver en GitHub↗

    Realtime is a real-time data distribution and synchronization engine that enables applications to stream database changes and coordinate state between clients. It functions as a synchronization layer that monitors database write-ahead logs to provide change data capture and pushes updates to authorized clients via WebSockets. The project features a real-time presence server for tracking the online status of active users and a broadcast service for sending ephemeral messages without database persistence. It organizes communication through channel-based message routing and uses a structured JSO

    Streams database changes to external data warehouses in real time without manual pipelines.

    Elixircdcchange-data-capturecrdt
    Ver en GitHub↗7,488
  • growthbook/growthbookAvatar de growthbook

    growthbook/growthbook

    7,351Ver en GitHub↗

    GrowthBook is a feature flagging and experimentation platform that utilizes a warehouse-native approach to data analysis. It serves as a system for managing feature rollouts and conducting A/B tests by executing SQL queries directly against existing data warehouses to calculate experiment results. The platform is distinguished by its integration of a Model Context Protocol server, which allows AI coding assistants and IDEs to manage flags and query analytics using natural language. It also provides specialized capabilities for AI model optimization, enabling the testing of prompts and models

    Provides secure connectivity to external data warehouses to enable warehouse-native analysis and experimentation.

    TypeScriptab-testingabtestabtesting
    Ver en GitHub↗7,351
  • feast-dev/feastAvatar de feast-dev

    feast-dev/feast

    6,727Ver en GitHub↗

    Feast is an open-source feature store for machine learning that provides a central platform for defining, storing, and serving features across both training and inference workflows. It operates as a declarative system where feature definitions are written as code in Python files, synchronized to a central registry, and made available for low-latency online retrieval or point-in-time correct historical joins for training datasets. The project abstracts storage behind a pluggable architecture, allowing offline and online backends to be swapped without changing retrieval logic, and coordinates ma

    Converts retrieved feature data into dataframes, Arrow tables, SQL, data lakes, or data warehouses for downstream use.

    Pythonbig-datadata-engineeringdata-quality
    Ver en GitHub↗6,727
Ant.123Siguiente
  1. Home
  2. Data & Databases
  3. Data Warehouse Integrations

Explorar subetiquetas

  • Cloud Data Warehouse Connectivity5 sub-etiquetasSecure connectivity modules for cloud-hosted data warehouses and managed database services. **Distinct from Data Warehouse Integrations:** Distinct from general data warehouse synchronization: focuses on real-time interactive connectivity and authentication.
  • Cross-Warehouse JoinsCapabilities for executing queries and joins across multiple distinct database instances and schemas. **Distinct from Data Warehouse Integrations:** Distinct from Data Warehouse Integrations: focuses on multi-instance querying and joining rather than metric synchronization.
  • Event Data Ingestion2 sub-etiquetasProcesses for collecting user interaction events and persisting them into a data warehouse. **Distinct from Data Warehouse Integrations:** Focuses specifically on the ingestion of event data for analysis, rather than general warehouse synchronization.
  • Reverse ETL SynchronizationsProcesses that extract data from warehouses to activate user segments in operational tools. **Distinct from Data Warehouse Integrations:** Distinct from Data Warehouse Integrations: focuses on the egress from the warehouse back to tools, rather than ingestion into the warehouse.