Comprehensive zuverlässige Automatisierung Tools for Every Need

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zuverlässige Automatisierung

  • A Python library enabling developers to build robust AI agents with state machines managing LLM-driven workflows.
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    What is Robocorp LLM State Machine?
    LLM State Machine is an open-source Python framework designed to construct AI agents using explicit state machines. Developers define states as discrete steps—each invoking a large language model or custom logic—and transitions based on outputs. This approach provides clarity, maintainability, and robust error handling for multi-step, LLM-powered workflows, such as document processing, conversational bots, or automation pipelines.
    Robocorp LLM State Machine Core Features
    • State-driven workflow definition
    • Pluggable LLM integrations (OpenAI, Hugging Face)
    • Customizable transition logic
    • Built-in error handling and retries
    • Logging and monitoring support
    • Modular architecture for extensibility
  • Open-source Python framework that builds modular autonomous AI agents to plan, integrate tools, and execute multi-step tasks.
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    What is Autonomais?
    Autonomais is a modular AI agent framework designed for full autonomy in task planning and execution. It integrates large language models to generate plans, orchestrates actions via a customizable pipeline, and stores context in memory modules for coherent multi-step reasoning. Developers can plug in external tools like web scrapers, databases, and APIs, define custom action handlers, and fine-tune agent behavior through configurable skills. The framework supports logging, error handling, and step-by-step debugging, ensuring reliable automation of research tasks, data analysis, and web interactions. With its extensible plugin architecture, Autonomais enables rapid development of specialized agents capable of complex decision-making and dynamic tool usage.
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