Advanced Agents IA Tools for Professionals

Discover cutting-edge Agents IA tools built for intricate workflows. Perfect for experienced users and complex projects.

Agents IA

  • A Python framework that evolves modular AI agents via genetic programming for customizable simulation and performance optimization.
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    What is Evolving Agents?
    Evolving Agents provides a genetic programming–based framework for constructing and evolving modular AI agents. Users assemble agent architectures from interchangeable components, define environment simulations and fitness metrics, then run evolutionary cycles to automatically generate improved agent behaviors. The library includes tools for mutation, crossover, population management, and evolution monitoring, allowing researchers and developers to prototype, test, and refine autonomous agents in diverse simulated environments.
  • Fin-Sight Agents Suite is an open-source AI agent framework automating financial data retrieval, analysis and insight generation for investment decisions.
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    What is Fin-Sight Agents Suite?
    Fin-Sight Agents Suite orchestrates a collection of specialized AI agents tailored to the finance domain. Each agent handles discrete tasks: data ingestion from multiple sources, time-series analysis, sentiment extraction from news, and predictive modeling. A coordinating agent manages workflow, chaining tasks and ensuring data consistency. Through simple configuration files, users define agent roles, input parameters, and output formats. The system supports customization of analysis pipelines, from automated earnings summaries to risk exposure dashboards. By combining LLM-based natural language queries with quantitative modules, Fin-Sight Agents Suite accelerates research, reduces manual effort, and enhances decision accuracy across trading, portfolio management, and market intelligence applications.
  • Goat is a Go SDK for building modular AI agents with integrated LLMs, tools management, memory, and publisher components.
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    What is Goat?
    Goat SDK is designed to simplify the creation and orchestration of AI agents in Go. It provides pluggable LLM integrations (OpenAI, Anthropic, Azure, local models), a tool registry for custom actions, and memory stores for stateful conversations. Developers can define chains, representer strategies, and publishers to output interactions via CLI, WebSocket, REST endpoints, or a built-in Web UI. Goat supports streaming responses, customizable logging, and easy error handling. By combining these components, you can develop chatbots, automation workflows, and decision-support systems in Go with minimal boilerplate, while maintaining flexibility to swap or extend providers and tools as needed.
  • A Go-based framework enabling developers to build, test and run AI agents with in-process chain-of-thought and customizable tools.
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    What is Goated Agents?
    Goated Agents simplifies building sophisticated AI-driven autonomous systems in Go. By embedding chain-of-thought processing directly in the language runtime, developers can implement multi-step reasoning with transparent intermediate reasoning logs. The library offers a tool definition API, allowing agents to call external services, databases, or custom code modules. Memory management support enables persistent context across interactions. Plugin architecture facilitates extending core capabilities such as tool wrappers, logging, and monitoring. Goated Agents leverages Go’s performance and static typing to deliver efficient, reliable agent execution. Whether constructing chatbots, automation pipelines, or research prototypes, Goated Agents provides the building blocks to orchestrate complex reasoning flows and integrate LLM-driven intelligence seamlessly into Go applications.
  • GRASP is a modular TypeScript framework enabling developers to build customizable AI agents with integrated tools, memory, and planning.
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    What is GRASP?
    GRASP provides a structured pipeline for building AI agents in TypeScript or JavaScript environments. At its core, developers define agents by registering a set of tools—functions or external API connectors—and specifying prompt templates that guide agent behavior. Built-in memory modules allow agents to store and retrieve contextual information, enabling multi-turn conversations with persistent state. The planning component orchestrates tool selection and execution based on user input, while the execution layer handles API calls and result processing. GRASP’s plugin system supports custom extensions, enabling capabilities such as retrieval-augmented generation (RAG), scheduling tasks, and logging. Its modular design means teams can choose only the components they need, facilitating integration with existing systems and services for chatbots, virtual assistants, and automated workflows.
  • Induced AI creates personalized AI agents for various tasks.
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    What is Induced AI?
    Induced AI specializes in creating customized AI agents designed to streamline workflows, automate tasks, and provide intelligent insights. By leveraging advanced machine learning algorithms, these agents can assist users in diverse fields such as marketing, support, and content generation, allowing for improved efficiency and enhanced user experience. The platform emphasizes personalization, enabling users to craft agents that align precisely with their specific objectives.
  • An open-source LLM-driven framework for browser automation: navigate, click, fill forms, and extract web content dynamically
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    What is interactive-browser-use?
    interactive-browser-use is a Python/JavaScript library that connects large language models (LLMs) with browser automation frameworks like Playwright or Puppeteer, allowing AI Agents to perform real-time web interactions. By defining prompts, users can instruct the agent to navigate web pages, click buttons, fill forms, extract tables, and scroll through dynamic content. The library manages browser sessions, context, and action execution, translating LLM responses into usable automation steps. It simplifies tasks like live web scraping, automated testing, and web-based Q&A by providing a programmable interface for AI-driven browsing, reducing manual effort while enabling complex multi-step web workflows.
  • An open-source AI agent framework enabling modular agents with tool integration, memory management, and multi-agent orchestration.
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    What is Isek?
    Isek is a developer-centric platform for building AI agents with modular architecture. It offers a plugin system for tools and data sources, built-in memory for context retention, and a planning engine to coordinate multi-step tasks. You can deploy agents locally or in the cloud, integrate any LLM backend, and extend functionality via community or custom modules. Isek streamlines the creation of chatbots, virtual assistants, and automated workflows by providing templates, SDKs, and CLI tools for rapid development.
  • LemLab is a Python framework enabling you to build customizable AI agents with memory, tool integrations, and evaluation pipelines.
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    What is LemLab?
    LemLab is a modular framework for developing AI agents powered by large language models. Developers can define custom prompt templates, chain multi-step reasoning pipelines, integrate external tools and APIs, and configure memory backends to store conversation context. It also includes evaluation suites to benchmark agent performance on defined tasks. By providing reusable components and clear abstractions for agents, tools, and memory, LemLab accelerates experimentation, debugging, and deployment of complex LLM applications within research and production environments.
  • LinkAgent orchestrates multiple language models, retrieval systems, and external tools to automate complex AI-driven workflows.
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    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.
  • 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.
  • A Python sample demonstrating LLM-based AI agents with integrated tools like search, code execution, and QA.
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    What is LLM Agents Example?
    LLM Agents Example provides a hands-on codebase for building AI agents in Python. It demonstrates registering custom tools (web search, math solver via WolframAlpha, CSV analyzer, Python REPL), creating chat and retrieval-based agents, and connecting to vector stores for document question answering. The repo illustrates patterns for maintaining conversational memory, dispatching tool calls dynamically, and chaining multiple LLM prompts to solve complex tasks. Users learn how to integrate third-party APIs, structure agent workflows, and extend the framework with new capabilities—serving as a practical guide for developer experimentation and prototyping.
  • Open-source multi-agent AI framework enabling customizable LLM-driven bots for efficient task automation and conversational workflows.
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    What is LLMLing Agent?
    LLMLing Agent is a modular framework for building, configuring, and deploying AI agents powered by large language models. Users can instantiate multiple agent roles, connect external tools or APIs, manage conversational memory, and orchestrate complex workflows. The platform includes a browser-based playground that visualizes agent interactions, logs message history, and allows real-time adjustments. With a Python SDK, developers can script custom behaviors, integrate vector databases, and extend the system through plugins. LLMLing Agent streamlines creation of chatbots, data analysis bots, and automated assistants by providing reusable components and clear abstractions for multi-agent collaboration.
  • MACL is a Python framework enabling multi-agent collaboration, orchestrating AI agents for complex task automation.
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    What is MACL?
    MACL is a modular Python framework designed to simplify the creation and orchestration of multiple AI agents. It lets you define individual agents with custom skills, set up communication channels, and schedule tasks across an agent network. Agents can exchange messages, negotiate responsibilities, and adapt dynamically based on shared data. With built-in support for popular LLMs and a plugin system for extensibility, MACL enables scalable and maintainable AI workflows across domains like customer service automation, data analysis pipelines, and simulation environments.
  • AI memory system enabling agents to capture, summarize, embed, and retrieve contextual conversation memories across sessions.
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    What is Memonto?
    Memonto functions as a middleware library for AI agents, orchestrating the complete memory lifecycle. During each conversation turn, it records user and AI messages, distills salient details, and generates concise summaries. These summaries are converted into embeddings and stored in vector databases or file-based stores. When constructing new prompts, Memonto performs semantic searches to retrieve the most relevant historical memories, enabling agents to maintain context, recall user preferences, and provide personalized responses. It supports multiple storage backends (SQLite, FAISS, Redis) and offers configurable pipelines for embedding, summarization, and retrieval. Developers can seamlessly integrate Memonto into existing agent frameworks, boosting coherence and long-term engagement.
  • A lightweight Python framework enabling autonomous AI agents to plan, generate tasks, and retrieve information via OpenAI APIs.
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    What is mini-agi?
    mini-agi is designed to simplify the creation of autonomous AI agents by providing a minimal, modular framework. Built in Python, it leverages OpenAI’s language models to interpret high-level goals, decompose them into sub-tasks, and orchestrate tool calls such as HTTP requests, file operations, or custom actions. The framework includes memory storage to track agent state and results, a planner module for task decomposition with cost-based heuristics, and an executor module that sequentially invokes tools. With configuration files, users can inject custom tools, define prompt templates, and adjust planning depth. mini-agi’s lightweight architecture makes it ideal for prototyping AI agents that perform research queries, automate workflows, or generate code autonomously.
  • Simulates dynamic e-commerce negotiations using customizable buyer and seller AI agents with negotiation protocols and visualization.
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    What is Multi-Agent-Seller?
    Multi-Agent-Seller provides a modular environment for simulating e-commerce negotiations using AI agents. It includes pre-built buyer and seller agents with customizable negotiation strategies, such as dynamic pricing, time-based concessions, and utility-based decision-making. Users can define custom protocols, message formats, and market conditions. The framework handles session management, offer tracking, and result logging with built-in visualization tools for analyzing agent interactions. It integrates easily with machine learning libraries for strategy development, enabling experimentation with reinforcement learning or rule-based agents. Its extensible architecture allows adding new agent types, negotiation rules, and visualization plugins. Multi-Agent-Seller is ideal for testing multi-agent algorithms, studying negotiation behaviors, and teaching concepts in AI and e-commerce domains.
  • Neon AI simplifies team collaboration through customized AI agents.
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    What is Neon AI?
    Neon AI offers tailored AI agents designed to improve team efficiency. These agents can automate mundane tasks, handle inquiries, integrate with tools, and analyze data, resulting in a more streamlined workflow. By contextualizing information and performing repetitive tasks, Neon AI empowers teams to focus on strategic initiatives rather than operational minutiae.
  • NextGenSwitch is an AI-powered agent for switching and automation tasks.
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    What is NextGenSwitch?
    NextGenSwitch is a sophisticated AI Agent designed to streamline switching tasks through intelligent automation. It leverages artificial intelligence to help users manage and switch settings or tasks seamlessly while reducing manual intervention. Its capabilities include intelligent recommendations, task automation, and real-time updates to ensure optimal performance for business operations. Users can expect increased efficiency and decreased operational costs with this tool.
  • A Python-based AI agent framework offering autonomous task planning, plugin extensibility, tool integration, and memory management.
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    What is Nova?
    Nova provides a comprehensive toolkit for creating autonomous AI agents in Python. It offers a planner that decomposes goals into actionable steps, a plugin system to integrate any external tools or APIs, and a memory module to store and recall conversation context. Developers can configure custom behaviors, track agent decisions through logs, and extend functionality with minimal code. Nova streamlines the entire agent lifecycle from design to deployment.
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