Comprehensive branchements conditionnels Tools for Every Need

Get access to branchements conditionnels solutions that address multiple requirements. One-stop resources for streamlined workflows.

branchements conditionnels

  • Wizard Language is a declarative TypeScript DSL to define multi-step AI agents with prompt orchestration and tool integration.
    0
    0
    What is Wizard Language?
    Wizard Language is a declarative domain-specific language built on TypeScript for authoring AI assistants as wizards. Developers define intent-driven steps, prompts, tool invocations, memory stores, and branching logic in a concise DSL. Under the hood, Wizard Language compiles these definitions into orchestrated LLM calls, managing context, asynchronous flows, and error handling. It accelerates prototyping of chatbots, data retrieval assistants, and automated workflows by abstracting prompt engineering and state management into reusable components.
    Wizard Language Core Features
    • Declarative wizard DSL for agent workflows
    • LLM call orchestration and prompt management
    • External tool and API integration
    • State and memory management
    • Conditional branching and error handling
    • Plugin architecture for extensions
    • Asynchronous flow control
  • LangGraph MCP orchestrates multi-step LLM prompt chains, visualizes directed workflows, and manages data flows in AI applications.
    0
    0
    What is LangGraph MCP?
    LangGraph MCP leverages directed acyclic graphs to represent sequences of LLM calls, allowing developers to break down tasks into nodes with configurable prompts, inputs, and outputs. Each node corresponds to an LLM invocation or a data transformation, facilitating parameterized execution, conditional branching, and iterative loops. Users can serialize graphs in JSON/YAML format, version control workflows, and visualize execution paths. The framework supports integration with multiple LLM providers, custom prompt templates, and plugin hooks for preprocessing, postprocessing, and error handling. LangGraph MCP provides CLI tools and a Python SDK to load, execute, and monitor graph-based agent pipelines, ideal for automation, report generation, conversational flows, and decision support systems.
Featured