Comprehensive многопользовательские системы Tools for Every Need

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

многопользовательские системы

  • LinkAgent orchestrates multiple language models, retrieval systems, and external tools to automate complex AI-driven workflows.
    0
    0
    What is LinkAgent?
    LinkAgent provides a lightweight microkernel for building AI agents with pluggable components. Users can register language model backends, retrieval modules, and external APIs as tools, then assemble them into workflows using built-in planners and routers. LinkAgent supports memory handlers for context persistence, dynamic tool invocation, and configurable decision logic for complex multi-step reasoning. With minimal code, teams can automate tasks like QA, data extraction, process orchestration, and report generation.
  • Agenite is a Python-based modular framework for building and orchestrating autonomous AI agents with memory, scheduling, and API integration.
    0
    0
    What is Agenite?
    Agenite is a Python-centric AI agent framework designed to streamline the creation, orchestration, and management of autonomous agents. It offers modular components such as memory stores, task schedulers, and event-driven communication channels, enabling developers to build agents capable of stateful interactions, multi-step reasoning, and asynchronous workflows. The platform provides adapters for connecting to external APIs, databases, and message queues, while its pluggable architecture supports custom modules for natural language processing, data retrieval, and decision-making. With built-in storage backends for Redis, SQL, and in-memory caches, Agenite ensures persistent agent state and enables scalable deployments. It also includes a command-line interface and JSON-RPC server for remote control, facilitating integration into CI/CD pipelines and real-time monitoring dashboards.
  • Agentic-Systems is an open-source Python framework for building modular AI agents with tools, memory, and orchestration features.
    0
    0
    What is Agentic-Systems?
    Agentic-Systems is designed to streamline the development of sophisticated autonomous AI applications by offering a modular architecture composed of agent, tool, and memory components. Developers can define custom tools that encapsulate external APIs or internal functions, while memory modules retain contextual information across agent iterations. The built-in orchestration engine schedules tasks, resolves dependencies, and manages multi-agent interactions for collaborative workflows. By decoupling agent logic from execution details, the framework enables rapid experimentation, easy scaling, and fine-grained control over agent behavior. Whether prototyping research assistants, automating data pipelines, or deploying decision-support agents, Agentic-Systems provides the necessary abstractions and templates to accelerate end-to-end AI solution development.
  • AIPE is an open-source AI agent framework providing memory management, tool integration, and multi-agent workflow orchestration.
    0
    0
    What is AIPE?
    AIPE centralizes AI agent orchestration with pluggable modules for memory, planning, tool use, and multi-agent collaboration. Developers can define agent personas, incorporate context via vector stores, and integrate external APIs or databases. The framework offers a built-in web dashboard and CLI for testing prompts, monitoring agent state, and chaining tasks. AIPE supports multiple memory backends like Redis, SQLite, and in-memory stores. Its multi-agent setups allow assigning specialized roles—data extractor, analyst, summarizer—to tackle complex queries collaboratively. By abstracting prompt engineering, API wrappers, and error handling, AIPE speeds up deployment of AI-driven assistants for document QA, customer support and automated workflows.
  • Benchmark suite measuring throughput, latency, and scalability for Java-based LightJason multi-agent framework across diverse test scenarios.
    0
    0
    What is LightJason Benchmark?
    LightJason Benchmark offers a comprehensive set of predefined and customizable scenarios to stress-test and evaluate multi-agent applications built on the LightJason framework. Users can configure agent counts, communication patterns, and environmental parameters to simulate real-world workloads and assess system behavior. Benchmarks gather metrics such as message throughput, agent response times, CPU and memory consumption, logging results to CSV and graphical formats. Its integration with JUnit allows seamless inclusion in automated testing pipelines, enabling regression and performance testing as part of CI/CD workflows. With adjustable settings and extensible scenario templates, the suite helps pinpoint performance bottlenecks, validate scalability claims, and guide architectural optimizations for high-performance, resilient multi-agent systems.
  • MARFT is an open-source multi-agent RL fine-tuning toolkit for collaborative AI workflows and language model optimization.
    0
    0
    What is MARFT?
    MARFT is a Python-based LLMs, enabling reproducible experiments and rapid prototyping of collaborative AI systems.
  • Maxun.dev lets you design, train, and deploy custom AI agents to automate workflows, manage tasks, and integrate APIs.
    0
    0
    What is Maxun.dev?
    Maxun.dev is a no-code/low-code AI agent framework that allows developers and businesses to create intelligent agents tailored to specific tasks. Users can define agent workflows via a visual interface, integrate data sources and external APIs, and configure memory modules for contextual understanding. The platform supports multi-agent orchestration, real-time monitoring, and performance analytics to optimize agent behaviors. With built-in collaboration tools, version control, and one-click deployment options, Maxun.dev simplifies the entire lifecycle from prototype to production, accelerating AI-driven automation across customer support, document management, and business processes.
  • Open-source Python framework orchestrating multiple AI agents to debate topics, analyze arguments, and reach conclusions collaboratively.
    0
    0
    What is Multi-Agent Debate?
    Multi-Agent Debate provides a comprehensive toolkit for orchestrating interactive debates among AI agents. Developers clone the repository and install dependencies, then define roles such as Pro, Con, and Moderator in a configuration file. The framework leverages OpenAI or compatible LLM APIs to generate structured debate rounds: opening statements, rebuttals, and closing remarks. After each round, the Moderator agent synthesizes key points and records logs. Users can adjust debate length, agent personalities, and scoring metrics. The modular design allows integration with custom LLMs, plugin architectures, and visualization tools for analysis. This setup accelerates research into AI-driven argumentation, collaborative decision-making, and automated content generation based on debate outcomes.
  • An open-source multi-agent reinforcement learning framework enabling raw-level agent control and coordination in StarCraft II via PySC2.
    0
    0
    What is MultiAgent-Systems-StarCraft2-PySC2-Raw?
    MultiAgent-Systems-StarCraft2-PySC2-Raw offers a complete toolkit for developing, training, and evaluating multiple AI agents in StarCraft II. It exposes low-level controls for unit movement, targeting, and abilities, while allowing flexible reward design and scenario configuration. Users can easily plug in custom neural network architectures, define team-based coordination strategies, and record metrics. Built on top of PySC2, it supports parallel training, checkpointing, and visualization, making it ideal for advancing research in cooperative and adversarial multi-agent reinforcement learning.
  • OpenSpiel provides a library of environments and algorithms for research in reinforcement learning and game theoretic planning.
    0
    0
    What is OpenSpiel?
    OpenSpiel is a research framework that provides a wide range of environments (from simple matrix games to complex board games such as Chess, Go, and Poker) and implements various reinforcement learning and search algorithms (e.g., value iteration, policy gradient methods, MCTS). Its modular C++ core and Python bindings allow users to plug in custom algorithms, define new games, and compare performance across standard benchmarks. Designed for extensibility, it supports single and multi-agent settings, enabling study of cooperative and competitive scenarios. Researchers leverage OpenSpiel to prototype algorithms quickly, run large-scale experiments, and share reproducible code.
Featured