Ultimate 実践的な演習 Solutions for Everyone

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実践的な演習

  • Lernmi enhances communication via role play and personalized feedback.
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    What is Lernmi?
    Lernmi is a cutting-edge application that focuses on enhancing communication abilities by incorporating role play exercises based on real-life scenarios. It combines theoretical learning with practical training, backed by personalized feedback from specialized mentors. This approach ensures that users can relate to real-world situations, practicing and refining their soft skills to become more effective communicators.
    Lernmi Core Features
    • Real-life scenario role plays
    • Personalized mentor feedback
    • Theoretical and practical training
    • Progress tracking
    Lernmi Pro & Cons

    The Cons

    No visible open-source or GitHub repository.
    No mobile apps or extensions found.
    Pricing details are not explicitly provided on the website.

    The Pros

    Utilizes AI to provide personalized training and feedback.
    Focuses on practical role-playing exercises based on real scenarios.
    Helps increase confidence and improve sales performance.
    Accelerates onboarding for new team members.
    Combines mentoring with AI for comprehensive skill development.
  • Hands-on Python-based workshop for building AI Agents with OpenAI API and custom tools integrations.
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    What is AI Agent Workshop?
    AI Agent Workshop is a comprehensive repository offering practical examples and templates for developing AI Agents with Python. The workshop includes Jupyter notebooks demonstrating agent frameworks, tool integrations (e.g., web search, file operations, database queries), memory mechanisms, and multi-step reasoning. Users learn to configure custom agent planners, define tool schemas, and implement loop-based conversational workflows. Each module presents exercises on handling failures, optimizing prompts, and evaluating agent outputs. The codebase supports OpenAI’s function calling and LangChain connectors, allowing seamless extension for domain-specific tasks. Ideal for developers seeking to prototype autonomous assistants, task automation bots, or question-answering agents, it provides a step-by-step path from basic agents to advanced workflows.
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