Comprehensive custom scenarios Tools for Every Need

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

custom scenarios

  • 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.
    CybMASDE Core Features
    • Customizable multi-agent environment scenarios
    • Integration with PyTorch and TensorFlow
    • Parallel training and distributed execution
    • Built-in visualization and logging tools
    • Modular reward and observation configuration
    • Checkpointing and metric tracking
  • A benchmarking framework to evaluate AI agents' continuous learning capabilities across diverse tasks with memory, adaptation modules.
    0
    0
    What is LifelongAgentBench?
    LifelongAgentBench is designed to simulate real-world continuous learning environments, enabling developers to test AI agents across a sequence of evolving tasks. The framework offers a plug-and-play API to define new scenarios, load datasets, and configure memory management policies. Built-in evaluation modules compute metrics like forward transfer, backward transfer, forgetting rate, and cumulative performance. Users can deploy baseline implementations or integrate proprietary agents, facilitating direct comparison under identical settings. Results are exported as standardized reports, featuring interactive plots and tables. The modular architecture supports extensions with custom dataloaders, metrics, and visualization plugins, ensuring researchers and engineers can adapt the platform to varied application domains.
Featured