Ultimate 사용자 정의 시나리오 Solutions for Everyone

Discover all-in-one 사용자 정의 시나리오 tools that adapt to your needs. Reach new heights of productivity with ease.

사용자 정의 시나리오

  • Provides customizable multi-agent patrolling environments in Python with various maps, agent configurations, and reinforcement learning interfaces.
    0
    0
    What is Patrolling-Zoo?
    Patrolling-Zoo offers a flexible framework enabling users to create and experiment with multi-agent patrolling tasks in Python. The library includes a variety of grid-based and graph-based environments, each simulating surveillance, monitoring, and coverage scenarios. Users can configure the number of agents, map size, topology, reward functions, and observation spaces. Through compatibility with PettingZoo and Gym APIs, it supports seamless integration with popular reinforcement learning algorithms. This environment facilitates benchmarking and comparing MARL techniques under consistent settings. By providing standard scenarios and tools to customize new ones, Patrolling-Zoo accelerates research in autonomous robotics, security surveillance, search-and-rescue operations, and efficient area coverage using multi-agent coordination strategies.
  • CybMASDE provides a customizable Python framework for simulating and training cooperative multi-agent deep reinforcement learning scenarios.
    0
    0
    What is CybMASDE?
    CybMASDE enables researchers and developers to build, configure, and execute multi-agent simulations with deep reinforcement learning. Users can author custom scenarios, define agent roles and reward functions, and plug in standard or custom RL algorithms. The framework includes environment servers, networked agent interfaces, data collectors, and rendering utilities. It supports parallel training, real-time monitoring, and model checkpointing. CybMASDE’s modular architecture allows seamless integration of new agents, observation spaces, and training strategies, accelerating experimentation in cooperative control, swarm behavior, resource allocation, and other multi-agent use cases.
  • An open-source Python framework to build, test and evolve modular LLM-based agents with integrated tool support.
    0
    0
    What is llm-lab?
    llm-lab provides a flexible toolkit for creating intelligent agents using large language models. It includes an agent orchestration engine, support for custom prompt templates, memory and state tracking, and seamless integration with external APIs and plugins. Users can write scenarios, define toolchains, simulate interactions, and collect performance logs. The framework also offers a built-in testing suite to validate agent behavior against expected outcomes. Extensible by design, llm-lab enables developers to swap LLM providers, add new tools, and evolve agent logic through iterative experimentation.
  • AI-powered virtual coach for interviews and meetings.
    0
    0
    What is MoqMeetings?
    MoqMeetings is an AI-powered tool tailored to prepare individuals for interviews and meetings. It provides a realistic simulation environment where users can practice various scenarios. Post-session, users receive detailed feedback and insights to improve their performance. With customizable scenarios, users can simulate specific situations relevant to their needs, making it a versatile tool for professional development.
Featured