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Deployment Tutorials · Awesome GitHub Repositories

2 repos

Awesome GitHub RepositoriesDeployment Tutorials

Guides and documentation for deploying software systems and infrastructure components.

Distinguishing note: Focuses on educational deployment guides rather than the deployment tools themselves.

Explore 2 awesome GitHub repositories matching education & learning resources · Deployment Tutorials. Refine with filters or upvote what's useful.

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  • Dokploy/dokploy

    Dokploy/dokploy

    30,653View on GitHub↗

    Dokploy is a self-hosted platform-as-a-service designed to simplify the deployment and management of containerized applications and databases. It provides a centralized control plane that decouples administrative management from application workloads, allowing users to oversee infrastructure across multiple server nodes through a unified web interface or a command-line tool. The platform distinguishes itself through an extensive library of pre-configured application templates, enabling the rapid deployment of databases, identity providers, and various productivity or development tools. It sup

    Provides video tutorials demonstrating installation and deployment best practices.

    TypeScriptbackendbackupsdatabases
    30,653View on GitHub↗
  • QwenLM/Qwen3

    QwenLM/Qwen3

    26,635View on GitHub↗

    Qwen3 is a transformer-based large language model designed as a generative AI foundation for understanding, reasoning, and generating human language. It functions as a comprehensive ecosystem for model training, fine-tuning, and production-ready inference, providing the underlying architecture and weights necessary to build diverse artificial intelligence applications. The project distinguishes itself through extensive support for model quantization and distributed inference, enabling efficient execution across a wide range of hardware from consumer-grade devices to scalable cloud infrastruct

    Dstack Deployment — a named example documented in this learning resource.

    Python
    26,635View on GitHub↗