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 RepositoriesCustom Trigger API Builders

Frameworks for wrapping pipeline execution logic within custom web servers.

Distinct from Custom Logic Triggers: Distinct from Custom Logic Triggers: focuses on the API server construction for external triggering rather than just the internal trigger logic.

Explore 2 awesome GitHub repositories matching devops & infrastructure · Custom Trigger API Builders. Refine with filters or upvote what's useful.

Awesome Custom Trigger API Builders GitHub Repositories

AI के साथ बेहतरीन रिपॉजिटरी खोजें।हम AI का उपयोग करके सबसे सटीक रिपॉजिटरी खोजेंगे।
  • maiot-io/zenmlmaiot-io का अवतार

    maiot-io/zenml

    5,452GitHub पर देखें↗

    ZenML is an extensible machine learning orchestration framework designed to manage the end-to-end lifecycle of data pipelines and AI agent workflows. It functions as a durable orchestrator that executes machine learning tasks as directed acyclic graphs, ensuring that every step is containerized for consistent performance across local, cloud, and hybrid infrastructure. By decoupling pipeline code from underlying compute and storage backends, the platform allows developers to define infrastructure-agnostic stacks that remain portable across diverse environments. The project distinguishes itself

    Wraps pipeline execution logic within a custom web server to implement specialized routing, authentication, or integration requirements.

    Python
    GitHub पर देखें↗5,452
  • zenml-io/zenmlzenml-io का अवतार

    zenml-io/zenml

    5,451GitHub पर देखें↗

    ZenML is an orchestration platform designed for building, deploying, and monitoring reproducible machine learning pipelines and agentic workflows. It provides a unified framework that manages the entire lifecycle of machine learning assets, from data processing and model training to the deployment of persistent inference services. By decoupling pipeline logic from underlying compute and storage, the platform enables teams to transition workflows seamlessly from local development environments to production-grade cloud infrastructure. The platform distinguishes itself through a service-oriented

    Provides bespoke HTTP interfaces to trigger pipeline executions on demand with custom routing and security logic.

    Pythonagentopsagentsai
    GitHub पर देखें↗5,451
  1. Home
  2. DevOps & Infrastructure
  3. Cloud Function Invocation Tools
  4. Custom Logic Triggers
  5. Custom Trigger API Builders