awesome-repositories.com
博客
awesome-repositories.com

通过 AI 驱动的搜索,发现最优秀的开源仓库。

探索精选搜索开源替代品自托管软件博客网站地图
项目关于排名机制媒体报道MCP 服务器
法律隐私政策服务条款
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·

25 个仓库

Awesome GitHub RepositoriesData Source Connections

Interfaces for establishing links to external databases or services.

Explore 25 awesome GitHub repositories matching data & databases · Data Source Connections. Refine with filters or upvote what's useful.

Awesome Data Source Connections GitHub Repositories

用 AI 发现最棒的仓库。我们将通过 AI 为您搜索最匹配的仓库。
  • nocodb/nocodbnocodb 的头像

    nocodb/nocodb

    63,466在 GitHub 上查看↗

    NocoDB is a visual platform that transforms relational databases into collaborative, spreadsheet-style workspaces. By acting as a headless database backend, it provides a unified environment for designing database structures, managing record relationships, and interacting with data without requiring manual SQL queries. The platform normalizes interactions across various SQL and NoSQL data sources, allowing users to manage complex datasets through a centralized interface. The project distinguishes itself by automatically generating RESTful and GraphQL APIs from existing database schemas, enabl

    Establishes seamless connections to external database systems to unify disparate data sources within a single interface.

    TypeScriptairtableairtable-alternativeautomatic-api
    在 GitHub 上查看↗63,466
  • getredash/redashgetredash 的头像

    getredash/redash

    28,653在 GitHub 上查看↗

    Redash is a self-hosted analytics platform and SQL data visualization tool. It provides a web-based SQL query editor for writing, executing, and scheduling database queries, and functions as a business intelligence dashboard for monitoring metrics via visual widgets. The platform distinguishes itself through its data source connectors, which integrate with various SQL, NoSQL, and API-based stores to retrieve information for analysis. It enables self-service analytics by allowing users to run queries with dynamic parameters and supports shared data reporting via public links or embedded dashbo

    Provides interfaces for establishing connections to a wide variety of external SQL, NoSQL, and API-based data sources.

    Pythonanalyticsathenabi
    在 GitHub 上查看↗28,653
  • dataease/dataeasedataease 的头像

    dataease/dataease

    23,420在 GitHub 上查看↗

    DataEase is an open-source, self-hosted business intelligence platform designed for building interactive data visualizations and managing analytical reporting. It provides a centralized environment where users can construct dashboards through a drag-and-drop interface, connecting to diverse data sources including relational databases, data warehouses, and external APIs. The platform distinguishes itself through its focus on embedded analytics and enterprise-grade governance. It allows for the seamless integration of charts, dashboards, and management modules into third-party web applications

    Integrates with a wide range of relational databases, data warehouses, data lakes, flat files, and API endpoints.

    Javaapache-dorisbusiness-intelligencedata-analysis
    在 GitHub 上查看↗23,420
  • sinaptik-ai/pandas-aisinaptik-ai 的头像

    sinaptik-ai/pandas-ai

    23,197在 GitHub 上查看↗

    This project is a Python-based framework that functions as a generative AI agent for programmatic data analysis. It enables users to interact with structured data sources through natural language prompts, translating these requests into executable code to perform analysis, data cleaning, and visualization. By maintaining conversational context across multi-turn interactions, the system allows for iterative exploration and the building of complex data narratives. The framework distinguishes itself through a robust semantic layer and secure execution model. It maps raw datasets to descriptive m

    Connects to local files, relational databases, and cloud platforms to unify data for analysis.

    Pythonaicsvdata
    在 GitHub 上查看↗23,197
  • letta-ai/lettaletta-ai 的头像

    letta-ai/letta

    21,168在 GitHub 上查看↗

    Letta is a framework for building, deploying, and managing autonomous AI agents that maintain persistent state across long-term interactions. It provides a comprehensive suite of primitives for defining agents with configurable personas, modular memory blocks, and tool-use capabilities, enabling them to retain user preferences and conversation history over extended sessions. The platform distinguishes itself through its advanced memory management and orchestration capabilities. It allows agents to autonomously update their own memory, perform retrieval-augmented generation, and coordinate com

    Connects external data sources and document folders to agents for information retrieval.

    Pythonaiai-agentsllm
    在 GitHub 上查看↗21,168
  • cube-js/cubecube-js 的头像

    cube-js/cube

    20,251在 GitHub 上查看↗

    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 Trino query engines with custom request routing.

    Rustagentic-analyticsagentsai
    在 GitHub 上查看↗20,251
  • plotly/plotly.pyplotly 的头像

    plotly/plotly.py

    18,270在 GitHub 上查看↗

    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

    Facilitates pulling live information from cloud warehouses, SQL databases, and local files for deeper analysis.

    Pythond3dashboarddeclarative
    在 GitHub 上查看↗18,270
  • prestodb/prestoprestodb 的头像

    prestodb/presto

    16,711在 GitHub 上查看↗

    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

    Enables the development of custom connectors to integrate and join external data sources.

    Javabig-datadatahadoop
    在 GitHub 上查看↗16,711
  • victoriametrics/victoriametricsVictoriaMetrics 的头像

    VictoriaMetrics/VictoriaMetrics

    16,343在 GitHub 上查看↗

    VictoriaMetrics is a high-performance, scalable time series database and observability platform designed for long-term storage and analysis of metric, log, and trace data. It functions as a unified backend for monitoring ecosystems, offering full compatibility with industry-standard protocols and query languages. The system is built to handle massive data volumes through a distributed architecture that supports horizontal scaling and efficient data lifecycle management. The platform distinguishes itself through a storage engine that utilizes consistent hashing for data sharding and log-struct

    Establishes a connection to a log storage instance to enable data retrieval and visualization within a centralized dashboard.

    Godatabasegrafanagraphite
    在 GitHub 上查看↗16,343
  • quarkusio/quarkusquarkusio 的头像

    quarkusio/quarkus

    15,479在 GitHub 上查看↗

    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

    Registers JDBC drivers and manages database connection pools, including support for XA transactions and schema migration.

    Javacloud-nativehacktoberfestjava
    在 GitHub 上查看↗15,479
  • microsoft/data-formulatormicrosoft 的头像

    microsoft/data-formulator

    14,907在 GitHub 上查看↗

    Data Formulator is an automated data analysis and visualization platform that uses large language models to interpret natural language instructions for data preparation and reporting. It functions as an interactive workbench where users can clean, filter, and aggregate datasets while simultaneously generating visual representations. By combining conversational interfaces with automated transformation tools, the system enables users to explore data patterns and refine schemas without manual coding. The platform distinguishes itself through an agentic architecture that translates natural langua

    Establishes reusable connections to databases, warehouses, cloud storage, and local files to ingest structured data for analysis.

    TypeScript
    在 GitHub 上查看↗14,907
  • unstructured-io/unstructuredUnstructured-IO 的头像

    Unstructured-IO/unstructured

    14,019在 GitHub 上查看↗

    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

    Establishes connections to external storage systems to enable automated retrieval of unstructured data.

    HTMLdata-pipelinesdeep-learningdocument-image-analysis
    在 GitHub 上查看↗14,019
  • strongloop/loopbackstrongloop 的头像

    strongloop/loopback

    13,159在 GitHub 上查看↗

    LoopBack is a Node.js API framework used to build RESTful services and backend applications. It functions as a model-driven API generator that automatically maps predefined data models to network endpoints to create standardized web interfaces. The project features a database abstraction layer that unifies access across diverse SQL databases, NoSQL stores, and remote data sources. It includes a backend application scaffolder using command-line generators to automate the creation of project structures and data connectors. Additionally, it provides an API authentication system to manage applica

    Provides interfaces for establishing connections to a wide variety of SQL, NoSQL, and external data services.

    JavaScript
    在 GitHub 上查看↗13,159
  • illacloud/illa-builderillacloud 的头像

    illacloud/illa-builder

    12,268在 GitHub 上查看↗

    Illa-builder is a low-code internal tool builder and API integration platform used to create business applications and admin panels. It functions as a database GUI dashboard and visual workflow automator, allowing users to connect to databases and external APIs to manage data and automate business processes. The platform provides a self-hosted app framework that can be deployed on private infrastructure via Docker. It enables the creation of custom dashboards and CRMs while maintaining full control over data and hosting. The system includes a visual drag-and-drop canvas for designing user in

    Provides a visual interface to establish links to external databases and APIs for data management.

    TypeScriptaiagentapp-buildercrud-application
    在 GitHub 上查看↗12,268
  • redpanda-data/redpandaredpanda-data 的头像

    redpanda-data/redpanda

    12,248在 GitHub 上查看↗

    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

    Offers connectors to integrate external data sources and destinations for unified information flow.

    C++containerscppevent-driven
    在 GitHub 上查看↗12,248
  • great-expectations/great_expectationsgreat-expectations 的头像

    great-expectations/great_expectations

    11,558在 GitHub 上查看↗

    Great Expectations is a data quality testing framework and observability platform designed to monitor the reliability of data pipelines. It provides a structured environment for defining, documenting, and automating data quality assertions, allowing teams to validate datasets against expected structure and content before they move through downstream processes. The project distinguishes itself through a declarative domain-specific language that stores quality rules as version-controlled configuration files. It utilizes an execution engine abstraction to translate these high-level assertions in

    Connects to various cloud storage and database platforms to validate data consistency across environments.

    Pythoncleandatadata-engineeringdata-profilers
    在 GitHub 上查看↗11,558
  • keen/dashboardskeen 的头像

    keen/dashboards

    11,038在 GitHub 上查看↗

    This project is a collection of responsive CSS Grid dashboard templates and a data visualization UI kit. It provides a set of HTML layouts designed for building analytics interfaces and monitoring views for KPIs and business metrics that adapt to different screen sizes. The toolkit is library-agnostic, allowing the connection of static HTML templates to any external data source or third-party charting library without requiring custom adapter code. It uses a template-driven approach to separate the visual structure of the dashboard from the underlying data. The capabilities cover the assembly

    Provides mechanisms to link dashboard templates to external data sources or charting libraries.

    HTMLanalyticsanalytics-dashboardcharts
    在 GitHub 上查看↗11,038
  • modelcontextprotocol/modelcontextprotocolmodelcontextprotocol 的头像

    modelcontextprotocol/modelcontextprotocol

    8,458在 GitHub 上查看↗

    Model Context Protocol is a standardized framework for connecting large language models to external data sources and executable tools. It enables the creation of a universal interface where servers expose tools, resources, and prompts that can be discovered and utilized by various AI clients. The protocol utilizes a JSON-RPC message system that is transport-agnostic, supporting both standard input/output for local processes and HTTP with server-sent events for remote connections. It emphasizes security and control by delegating model sampling to the client to keep API keys secure from servers

    Provides a standardized interface for establishing secure connections between AI applications and local machine resources.

    TypeScript
    在 GitHub 上查看↗8,458
  • airweave-ai/airweaveairweave-ai 的头像

    airweave-ai/airweave

    6,453在 GitHub 上查看↗

    Airweave is a unified AI knowledge base platform that syncs data from external APIs into a searchable layer for retrieval-augmented generation. It provides a pre-built data connector library and a framework for building custom connectors, enabling the extraction, transformation, and synchronization of structured and unstructured data from SaaS applications. The platform includes a hybrid vector retrieval system that combines semantic, neural, and keyword search strategies to deliver grounded context for AI agents. The platform distinguishes itself through an agentic search engine that iterati

    Creates connections to external APIs using credentials, OAuth tokens, or auth providers.

    Pythonagent-infrastructureaiai-agents
    在 GitHub 上查看↗6,453
  • apache/pinotapache 的头像

    apache/pinot

    6,098在 GitHub 上查看↗

    Pinot is a distributed, columnar analytical database designed for high-concurrency, low-latency query processing. It functions as a real-time OLAP datastore, enabling interactive, user-facing analytics by ingesting and querying massive datasets from both streaming and batch sources. The system architecture relies on a centralized controller for cluster coordination and a distributed segment-based storage model to ensure horizontal scalability. The platform distinguishes itself through a hybrid ingestion pipeline that unifies real-time event streams and historical batch data into a single quer

    Connects a distributed query engine to the datastore to enable complex SQL analytics and federated querying.

    Java
    在 GitHub 上查看↗6,098
上一个12下一个
  1. Home
  2. Data & Databases
  3. Data Integration & Synchronization
  4. Data Integration
  5. Data Source Connections

探索子标签

  • Metadata UnificationProvides a single access point to metadata for diverse catalogs within a specific query engine environment. **Distinct from Trino Connectors:** Distinct from Trino Connectors: focuses on the unification of metadata rather than the connection driver.
  • Source Connection RemovalsPermanently deletes a source connection and its synced data, cancelling any running sync and cleaning up storage asynchronously. **Distinct from Data Source Connections:** Distinct from Data Source Connections: focuses on the deletion and cleanup lifecycle of a connection, not just establishing links.
  • Trino ConnectorsDrivers for establishing secure connections to Trino query engines. **Distinct from Data Source Connections:** Distinct from Data Source Connections: focuses on Trino-specific protocol and authentication requirements.