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инструменты логирования

  • Esquilax is a TypeScript framework for orchestrating multi-agent AI workflows, managing memory, context, and plugin integrations.
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    What is Esquilax?
    Esquilax is a lightweight TypeScript framework designed for building and orchestrating complex AI agent workflows. It provides developers with a clear API to declaratively define agents, assign memory modules, and integrate custom plugin actions such as API calls or database queries. With built-in support for context handling and multi-agent coordination, Esquilax streamlines the creation of chatbots, digital assistants, and automated processes. Its event-driven architecture allows tasks to be chained or triggered dynamically, while logging and debugging tools offer full visibility into agent interactions. By abstracting away boilerplate code, Esquilax helps teams rapidly prototype scalable AI-driven applications.
  • RL Shooter provides a customizable Doom-based reinforcement learning environment for training AI agents to navigate and shoot targets.
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    What is RL Shooter?
    RL Shooter is a Python-based framework that integrates ViZDoom with OpenAI Gym APIs to create a flexible reinforcement learning environment for FPS games. Users can define custom scenarios, maps, and reward structures to train agents on navigation, target detection, and shooting tasks. With configurable observation frames, action spaces, and logging facilities, it supports popular deep RL libraries such as Stable Baselines and RLlib, enabling clear performance tracking and reproducibility across experiments.
  • Lightweight Python framework for orchestrating multiple LLM-driven agents with memory, role profiles, and plugin integration.
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    What is LiteMultiAgent?
    LiteMultiAgent offers a modular SDK for building and running multiple AI agents in parallel or sequence, each assigned unique roles and responsibilities. It provides out-of-the-box memory stores, messaging pipelines, plugin adapters, and execution loops to manage complex inter-agent communication. Users can customize agent behaviors, plug in external tools or APIs, and monitor conversations through logs. The framework’s lightweight design and dependency management make it ideal for rapid prototyping and production deployment of collaborative AI workflows.
  • Open-source PyTorch library providing modular implementations of reinforcement learning agents like DQN, PPO, SAC, and more.
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    What is RL-Agents?
    RL-Agents is a research-grade reinforcement learning framework built on PyTorch that bundles popular RL algorithms across value-based, policy-based, and actor-critic methods. The library features a modular agent API, GPU acceleration, seamless integration with OpenAI Gym, and built-in logging and visualization tools. Users can configure hyperparameters, customize training loops, and benchmark performance with a few lines of code, making RL-Agents ideal for academic research, prototyping, and industrial experimentation.
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