Comprehensive настраиваемые агенты Tools for Every Need

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

настраиваемые агенты

  • Micro-agent is a lightweight JavaScript library enabling developers to build customizable LLM-based agents with tools, memory, and chain-of-thought planning.
    0
    0
    What is micro-agent?
    Micro-agent is a lightweight, unopinionated JavaScript library designed to simplify the creation of sophisticated AI agents using large language models. It exposes core abstractions such as agents, tools, planners, and memory stores, allowing developers to assemble custom conversational flows. Agents can invoke external APIs or internal utilities as tools, enabling dynamic data retrieval and action execution. The library supports both short-term conversational memory and long-term persistent memory to maintain context across sessions. Planners orchestrate chain-of-thought processes, breaking down complex tasks into tool calls or language model queries. With configurable prompt templates and execution strategies, micro-agent adapts seamlessly to frontend web applications, Node.js services, and edge environments, providing a flexible foundation for chatbots, virtual assistants, or autonomous decision-making systems.
  • A framework for deploying collaborative AI agents on Azure Functions using Neon DB and OpenAI APIs.
    0
    0
    What is Multi-Agent AI on Azure with Neon & OpenAI?
    The Multi-Agent AI framework provides an end-to-end solution for orchestrating multiple autonomous agents in cloud environments. It leverages Neon’s Postgres-compatible serverless database to store conversation history and agent state, Azure Functions to run agent logic at scale, and OpenAI APIs to power natural language understanding and generation. Built-in message queues and role-based behaviors allow agents to collaborate on tasks such as research, scheduling, customer support, and data analysis. Developers can customize agent policies, memory rules, and workflows to fit diverse business requirements.
  • A Python-based framework orchestrating dynamic AI agent interactions with customizable roles, message passing, and task coordination.
    0
    0
    What is Multi-Agent-AI-Dynamic-Interaction?
    Multi-Agent-AI-Dynamic-Interaction offers a flexible environment to design, configure, and run systems composed of multiple autonomous AI agents. Each agent can be assigned specific roles, objectives, and communication protocols. The framework manages message passing, conversation context, and sequential or parallel interactions. It supports integration with OpenAI GPT, other LLM APIs, and custom modules. Users define scenarios via YAML or Python scripts, specifying agent details, workflow steps, and stopping criteria. The system logs all interactions for debugging and analysis, allowing fine-grained control over agent behaviors for experiments in collaboration, negotiation, decision-making, and complex problem-solving.
  • Neocortex is an AI-driven personal assistant with memory, task orchestration, and multi-agent collaboration for knowledge work.
    0
    0
    What is Neocortex?
    Neocortex is a web-based AI platform that acts as a personal knowledge hub and task manager. It stores and retrieves information using long-term memory, creates intelligent agents to handle research, summarization, and planning tasks, and integrates with documents, calendars, and APIs. Users can interact via chat to query past insights, generate reports, and delegate workflows to custom agents. Neocortex continually refines context, offers proactive reminders, and supports collaboration across teams.
  • Open-source framework orchestrating autonomous AI agents to decompose goals into tasks, execute actions, and refine outcomes dynamically.
    0
    0
    What is SCOUT-2?
    SCOUT-2 provides a modular architecture for building autonomous agents powered by large language models. It includes goal decomposition, task planning, an execution engine, and a feedback-driven reflection module. Developers define a top-level objective, and SCOUT-2 automatically generates a task tree, dispatches worker agents for execution, monitors progress, and refines tasks based on outcomes. It integrates with OpenAI APIs and can be extended with custom prompts and templates to support a wide range of workflows.
  • A no-code platform to design, train and deploy AI agents with long-term memory and multi-channel integrations.
    0
    0
    What is Strands Agents?
    Strands Agents provides a full-stack environment for creating intelligent assistants. Users can define conversation flows, manage knowledge bases, configure memory settings, and integrate with webhooks or external APIs. The platform offers analytics to measure performance, team collaboration tools for version control, and seamless deployment across web chat, mobile, or embedded widgets. No coding skills are required—customize behaviors via a visual editor and scale agents to handle high volumes of queries.
  • An open-source Python framework to build autonomous AI agents integrating LLMs, memory, planning, and tool orchestration.
    0
    0
    What is Strands Agents?
    Strands Agents offers a modular architecture for creating intelligent agents that combine natural language reasoning, long-term memory, and external API/tool calls. It enables developers to configure planner, executor, and memory components, plug in any LLM (e.g., OpenAI, Hugging Face), define custom action schemas, and manage state across tasks. With built-in logging, error handling, and extensible tool registry, it accelerates prototyping and deployment of agents that can research, analyze data, control devices, or serve as digital assistants. By abstracting common agent patterns, it reduces boilerplate and promotes best practices for reliable, maintainable AI-driven automation.
  • A JavaScript framework for orchestrating multiple AI agents in collaborative workflows, enabling dynamic task distribution and planning.
    0
    0
    What is Super-Agent-Party?
    Super-Agent-Party allows developers to define a Party object where individual AI agents perform distinct roles such as planning, researching, drafting, and reviewing. Each agent can be configured with custom prompts, tools, and model parameters. The framework manages message routing and shared context, enabling agents to collaborate in real time on subtasks. It supports plugin integration for third-party services, flexible agent orchestration strategies, and error handling routines. With an intuitive API, users can dynamically add or remove agents, chain workflows, and visualize agent interactions. Built on Node.js and compatible with major cloud providers, Super-Agent-Party streamlines the development of scalable, maintainable AI multi-agent systems for automation, content generation, data analysis, and more.
  • A customizable swarm intelligence simulator demonstrating agent behaviors like alignment, cohesion, and separation in real-time.
    0
    0
    What is Swarm Simulator?
    Swarm Simulator provides a customizable environment for real-time multi-agent experiments. Users can adjust key behavior parameters—alignment, cohesion, separation—and observe emergent dynamics on a visual canvas. It supports interactive UI sliders, dynamic agent count adjustment, and data export for analysis. Ideal for educational demonstrations, research prototyping, or hobbyist exploration of swarm intelligence principles.
  • xBrain is an open-source AI agent framework enabling multi-agent orchestration, task delegation, workflow automation via Python APIs.
    0
    0
    What is xBrain?
    xBrain provides a modular architecture for creating, configuring, and orchestrating autonomous agents within Python applications. Users define agents with specific capabilities—such as data retrieval, analysis, or generation—and assemble them into workflows where each agent communicates and delegates tasks. The framework includes a scheduler for managing asynchronous execution, a plugin system to integrate external APIs, and a built-in logging mechanism for real-time monitoring and debugging. xBrain’s flexible interface supports custom memory implementations and agent templates, allowing developers to tailor behavior to various domains. From chatbots and data pipelines to research experiments, xBrain accelerates the development of complex multi-agent systems with minimal boilerplate code.
  • AgentSimulation is a Python framework for real-time 2D autonomous agent simulation with customizable steering behaviors.
    0
    0
    What is AgentSimulation?
    AgentSimulation is an open-source Python library built on Pygame for simulating multiple autonomous agents in a 2D environment. It allows users to configure agent properties, steering behaviors (seek, flee, wander), collision detection, pathfinding, and interactive rules. With real-time rendering and modular design, it supports rapid prototyping, teaching simulations, and small-scale research in swarm intelligence or multi-agent interactions.
  • A Java-based interpreter for AgentSpeak(L), enabling developers to build, execute, and manage BDI-enabled intelligent agents.
    0
    0
    What is AgentSpeak?
    AgentSpeak is an open-source Java-based implementation of the AgentSpeak(L) programming language, designed to facilitate the creation and management of BDI (Belief-Desire-Intention) autonomous agents. It features a runtime environment that parses AgentSpeak(L) code, maintains agents’ belief bases, triggers events, and selects and executes plans based on current beliefs and goals. The interpreter supports concurrent agent execution, dynamic plan updates, and customizable semantics. With a modular architecture, programmers can extend core components such as plan selection and belief revision. AgentSpeak enables developers in academia and industry to prototype, simulate, and deploy intelligent agents in simulations, IoT systems, and multi-agent scenarios.
  • An open-source Python framework providing modular memory, planning, and tool integration for building LLM-powered autonomous agents.
    0
    0
    What is CogAgent?
    CogAgent is a research-oriented, open-source Python library designed to streamline the development of AI agents. It provides core modules for memory management, planning and reasoning, tool and API integration, and chain-of-thought execution. With its highly modular architecture, users can define custom tools, memory stores, and agent policies to create conversational chatbots, autonomous task planners, and workflow automation scripts. CogAgent supports integration with popular LLMs such as OpenAI GPT and Meta LLaMA, allowing researchers and developers to experiment, extend, and scale their intelligent agents for a variety of real-world applications.
  • Open-source PyTorch-based framework implementing CommNet architecture for multi-agent reinforcement learning with inter-agent communication enabling collaborative decision-making.
    0
    0
    What is CommNet?
    CommNet is a research-oriented library that implements the CommNet architecture, allowing multiple agents to share hidden states at each timestep and learn to coordinate actions in cooperative environments. It includes PyTorch model definitions, training and evaluation scripts, environment wrappers for OpenAI Gym, and utilities for customizing communication channels, agent counts, and network depths. Researchers and developers can use CommNet to prototype and benchmark inter-agent communication strategies on navigation, pursuit–evasion, and resource-collection tasks.
  • Arakoo.ai empowers businesses with customizable AI Agents to automate customer support, lead generation, and routine workflows seamlessly.
    0
    0
    What is Arakoo.ai?
    Arakoo.ai is an AI Agent platform designed to help businesses automate repetitive tasks and enhance customer interactions through intelligent virtual assistants. Users can select from a library of pre-built agent templates—such as support bots, sales assistants, and scheduling bots—or create custom agents using a visual workflow builder. The platform integrates with CRM systems, messaging apps, and ticketing tools, allowing agents to fetch data, answer queries, and escalate complex issues seamlessly. Arakoo.ai also offers analytics dashboards to track agent performance, conversation metrics, and user satisfaction. Advanced NLP capabilities ensure agents understand context and intent, while iterative training features enable continuous improvement based on real-world interactions.
  • Huginn is an open-source platform to create and manage automated agents that monitor events and perform tasks.
    0
    0
    What is huginn?
    Huginn is a versatile, open-source automation framework that lets users create agents to monitor, gather, and act on data from various sources such as websites, APIs, social media, and email. Each agent can be configured to trigger on events, transform data, and pass it to other agents or external services. With built-in scheduling, logging, and a rich library of agent types—like RSSAgent, EmailAgent, WebhookAgent, and DataOutputAgent—Huginn supports complex workflows and conditional logic. It runs on Linux, macOS, Windows, or Docker, and can be extended with custom Ruby code or Docker containers for specialized tasks and integrations.
  • MASChat is a Python framework orchestrating multiple GPT-based AI agents with dynamic roles to collaboratively solve tasks via chat.
    0
    0
    What is MASChat?
    MASChat provides a flexible framework for orchestrating conversations among multiple AI agents powered by language models. Developers can define agents with specific roles—such as researcher, summarizer, or critic—and specify their prompts, permissions, and communication protocols. MASChat’s central manager handles message routing, ensures context preservation, and logs interactions for traceability. By coordinating specialized agents, MASChat decomposes complex tasks—like research, content creation, or data analysis—into parallel workflows, improving efficiency and insight. It integrates with OpenAI’s GPT APIs or local LLMs and allows plugin extensions for custom behaviors. MASChat is ideal for prototyping multi-agent strategies, simulating collaborative environments, and exploring emergent behaviors in AI systems.
  • A repository of code recipes enabling developers to build autonomous AI agents with tool integration, memory, and task orchestration.
    0
    0
    What is Practical AI Agents?
    Practical AI Agents provides developers with a comprehensive framework and ready-to-use examples to construct autonomous agents powered by large language models. It demonstrates how to integrate API tools (e.g., web browsers, databases, custom functions), implement RAG-style memory, manage conversation context, and perform dynamic planning. You can adapt examples for chatbots, data analysis assistants, task automation scripts, or research tools. The repository includes notebooks, Dockerfiles, and configuration files to streamline setup and deployment across environments.
  • A Python framework for building autonomous AI agents that can interact with APIs, manage memory, tools, and complex workflows.
    0
    0
    What is AI Agents?
    AI Agents offers a structured toolkit for developers to build autonomous agents using large language models. It includes modules for integrating external APIs, managing conversational or long-term memory, orchestrating multi-step workflows, and chaining LLM calls. The framework provides templates for common agent types—data retrieval, question answering, and task automation—while allowing customization of prompts, tool definitions, and memory strategies. With asynchronous support, plugin architecture, and modular design, AI Agents enables scalable, maintainable, and extendable agentic applications.
  • AgentKit is an AI tool for building custom agents and workflows effortlessly.
    0
    0
    What is AgentKit?
    AgentKit is a powerful platform for creating bespoke AI agents tailored to specific business needs. It allows users to design workflows and automate repetitive tasks easily without needing extensive programming knowledge. With its intuitive interface, users can integrate various APIs, streamline processes, and enhance productivity by building agents that act on behalf of users. This innovative tool empowers businesses to leverage AI technology for smoother operations and improved performance.
Featured