Comprehensive 사용자 정의 워크플로 Tools for Every Need

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사용자 정의 워크플로

  • Effie is an AI Agent that automates workflows and enhances productivity.
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    What is Effie?
    Effie leverages advanced machine learning to analyze workflows, automate routine tasks, and improve overall productivity. It provides insights and recommendations to streamline operations, allowing teams to focus on strategic activities rather than mundane tasks. Effie is customizable, adapting to various business needs and integrating seamlessly with existing tools to deliver exceptional workflow efficiency.
  • n8n is an open-source workflow automation tool that connects various apps and services.
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    What is n8n?
    n8n is a powerful open-source workflow automation platform that allows users to integrate various apps and services easily. With more than 200 app integrations, users can design workflows that include triggers, actions, and data transformation steps without any programming knowledge. The platform features both a visual workflow editor and the capability to create custom nodes for unique requirements, making it an excellent choice for automating tasks and enhancing productivity across various business functions.
  • Open-source Chrome extension enabling natural-language-driven web automation tasks using multi-agent workflows and customizable LLM integrations.
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    What is NanoBrowser?
    NanoBrowser runs directly in your browser as a Chrome extension, enabling you to automate repetitive or complex web tasks via natural-language prompts. You configure it with your own LLM API key—OpenAI GPT, self-hosted LLaMA models, or others—and define workflows composed of multiple agents. It supports data scraping, form interactions, automated research, and workflow chaining through LangChain integration. You can orchestrate agents to collaborate on subtasks, export results in CSV or JSON, and debug or refine steps interactively. As an open-source alternative to proprietary operators, NanoBrowser prioritizes privacy, extensibility, and ease of use.
  • SageFlow is an AI agent that automates workflow processes and integrates seamlessly with your existing tools.
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    What is SageFlow?
    SageFlow automates workflow processes, enabling users to design and optimize workflows without needing extensive programming knowledge. It connects with various applications to facilitate task automation, enhance productivity, and ensure a seamless flow of information between tools. Users can create custom workflows tailored to their specific needs, allowing for a more efficient operation across teams and departments.
  • Open-source Python framework enabling developers to build AI agents with tool integration and multi-LLM support.
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    What is X AI Agent?
    X AI Agent provides a modular architecture for building intelligent agents. It supports seamless integration with external tools and APIs, configurable memory modules, and multi-LLM orchestration. Developers can define custom skills, tool connectors, and workflows in code, then deploy agents that fetch data, generate content, automate processes, and handle complex dialogues autonomously.
  • An open-source framework enabling autonomous LLM agents with retrieval-augmented generation, vector database support, tool integration, and customizable workflows.
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    What is AgenticRAG?
    AgenticRAG provides a modular architecture for creating autonomous agents that leverage retrieval-augmented generation (RAG). It offers components to index documents in vector stores, retrieve relevant context, and feed it into LLMs to generate context-aware responses. Users can integrate external APIs and tools, configure memory stores to track conversation history, and define custom workflows to orchestrate multi-step decision-making processes. The framework supports popular vector databases like Pinecone and FAISS, and LLM providers such as OpenAI, allowing seamless switching or multi-model setups. With built-in abstractions for agent loops and tool management, AgenticRAG simplifies development of agents capable of tasks like document QA, automated research, and knowledge-driven automation, reducing boilerplate code and accelerating time to deployment.
  • AgenticIR orchestrates LLM-based agents to autonomously retrieve, analyze, and synthesize information from web and document sources.
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    What is AgenticIR?
    AgenticIR (Agentic Information Retrieval) provides a modular framework where LLM-powered agents autonomously plan and execute IR workflows. It enables the definition of agent roles — such as query generator, document retriever, and summarizer — running in customizable sequences. Agents can fetch raw text, refine queries based on intermediate results, and merge extracted passages into concise summaries. The framework supports multi-step pipelines including iterative web search, API-based data ingestion, and local document parsing. Developers can adjust agent parameters, plug in different LLMs, and fine-tune behavior policies. AgenticIR also offers logging, error handling, and parallel agent execution to accelerate large-scale information gathering. With a minimal code setup, researchers and engineers can prototype and deploy autonomous retrieval systems.
  • Agent Script is an open-source framework orchestrating AI model interactions with customizable scripts, tools, and memory for task automation.
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    What is Agent Script?
    Agent Script provides a declarative scripting layer over large language models, enabling you to write YAML or JSON scripts that define agent workflows, tool calls, and memory usage. You can plug in OpenAI, local LLMs, or other providers, connect external APIs as tools, and configure long-term memory backends. The framework handles context management, asynchronous execution, and detailed logging out of the box. With minimal code, you can prototype chatbots, RPA workflows, data extraction agents, or custom control loops, making it easy to build, test, and deploy AI-powered automations.
  • A Python-based AI agent orchestrator supervising interactions between multiple autonomous agents for coordinated task execution and dynamic workflow management.
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    What is Agent Supervisor Example?
    The Agent Supervisor Example repository demonstrates how to orchestrate several autonomous AI agents in a coordinated workflow. Built in Python, it defines a Supervisor class to dispatch tasks, monitor agent status, handle failures, and aggregate responses. You can extend base agent classes, plug in different model APIs, and configure scheduling policies. It logs activities for auditing, supports parallel execution, and offers a modular design for easy customization and integration into larger AI systems.
  • AimeBox is a self-hosted AI agent platform enabling conversational bots, memory management, vector database integration, and custom tool use.
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    What is AimeBox?
    AimeBox provides a comprehensive, self-hosted environment for building and running AI agents. It integrates with major LLM providers, stores dialogue state and embeddings in a vector database, and supports custom tool and function calling. Users can configure memory strategies, define workflows, and extend capabilities via plugins. The platform offers a web-based dashboard, API endpoints, and CLI controls, making it easy to develop chatbots, knowledge assistants, and domain-specific digital workers without relying on third-party services.
  • An AI agent automates web browsing tasks, data extraction, and content summarization using Puppeteer and OpenAI API.
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    What is browse-for-me?
    browse-for-me leverages headless Chromium via Puppeteer controlled by OpenAI models to interpret user-defined instructions. Users create configuration files specifying target URLs, actions like clicking, form submission, and data points for extraction. The agent executes each step autonomously, handles errors with retries, and returns structured JSON or plain-text summaries. With support for multi-step sequences, scheduling, and environment variables, it streamlines tasks like web scraping, site monitoring, automated testing, and content summarization.
  • MCP Ollama Agent is an open-source AI agent automating tasks via web search, file operations, and shell commands.
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    What is MCP Ollama Agent?
    MCP Ollama Agent leverages the Ollama local LLM runtime to provide a versatile agent framework for task automation. It integrates multiple tool interfaces, including web search via SERP API, file system operations, shell command execution, and Python environment management. By defining custom prompts and tool configurations, users can orchestrate complex workflows, automate repetitive tasks, and build specialized assistants tailored to various domains. The agent handles tool invocation and context management, maintaining conversation history and tool responses to generate coherent actions. Its CLI-based setup and modular architecture make it easy to extend with new tools and adapt to different use cases, from research and data analysis to development support.
  • Melissa is an AI-powered personal assistant that manages tasks, automates workflows, and answers queries through natural language chat.
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    What is Melissa?
    Melissa operates as a conversational AI agent that uses advanced natural language understanding to interpret user commands, generate context-aware responses, and perform automated tasks. It provides features such as task scheduling, appointment reminders, data lookup, and integration with external APIs like Google Calendar, Slack, and email services. Users can extend Melissa’s capabilities through custom plugins, create workflows for repetitive processes, and access its knowledge base for quick information retrieval. As an open-source project, developers can self-host Melissa on cloud or local servers, configure permissions, and tailor its behavior to suit organizational requirements or personal preferences, making it a flexible solution for productivity, customer support, and digital assistance.
  • Lucek.ai is a no-code AI agent platform that automates data fetching, email handling, scheduling, and custom workflows.
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    What is Lucek.ai?
    Lucek.ai is a no-code AI agent platform designed to help you create intelligent digital workers that perform multi-step tasks automatically. Using an intuitive visual workflow editor, you connect APIs, web scraping routines, email services, and scheduling tools. Once configured, your AI agents can fetch and process data, send or summarize emails, manage calendars, and execute custom sequences without manual intervention. Real-time monitoring and logs keep you informed of each agent’s activity and performance.
  • Triagent orchestrates three specialized AI sub-agents—Strategist, Researcher, and Executor—to plan, research, and execute tasks automatically.
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    What is Triagent?
    Triagent provides a tri-agent architecture consisting of Strategist, Researcher, and Executor modules. The Strategist breaks down high-level goals into actionable steps, the Researcher retrieves and synthesizes data from documents, APIs, and web sources, and the Executor performs tasks like generating text, creating files, or invoking HTTP requests. Built on top of OpenAI language models and extensible via a plugin system, Triagent supports memory management, concurrent processing, and external API integrations. Developers can configure prompts, set resource limits, and visualize task progress through a CLI or web dashboard, simplifying multi-step automation pipelines.
  • Voltagent empowers developers to create autonomous AI agents with integrated tools, memory management, and multi-step reasoning workflows.
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    What is Voltagent?
    Voltagent offers a comprehensive suite for designing, testing, and deploying autonomous AI agents tailored to your business needs. Users can construct agent workflows via a drag-and-drop visual interface or code directly with the platform's SDK. It supports integration with popular language models such as GPT-4, local LLMs, and third-party APIs for real-time data retrieval and tool invocation. Memory modules allow agents to maintain context across sessions, while the debugging console and analytics dashboard provide detailed insights into agent performance. With role-based access control, version management, and scalable cloud deployment options, Voltagent ensures secure, efficient, and maintainable agent experiences from proof-of-concept to production. Additionally, Voltagent's plugin architecture allows seamless extension with custom modules for domain-specific tasks, and its RESTful API endpoints enable easy integration into existing applications. Whether automating customer service, generating real-time reports, or powering interactive chat experiences, Voltagent streamlines the entire agent lifecycle.
  • An AI-powered agent platform that automates business workflows and task handling across integrated apps.
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    What is Anda AI?
    Anda AI lets you design, train, and deploy virtual agents that connect to your tools—email, CRM, spreadsheets, chat apps, and more—and perform rule-based or AI-driven tasks automatically. Define triggers, workflows, and data mappings via a visual builder, then monitor agent performance through real-time dashboards. Use cases include email triage, automated reporting, invoice processing, social listening, and CRM updates, all running 24/7 without coding.
  • ChainML is an AI agent that streamlines workflows and enhances data-driven decision-making.
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    What is ChainML?
    ChainML is a powerful AI agent that facilitates workflow automation, data analysis, and integration with various applications. It enables users to streamline repetitive tasks, improve data-driven decision-making, and enhance overall productivity. Users can define workflows, track progress, and utilize AI insights to make informed decisions, making it a versatile tool for organizations looking to optimize their operations.
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