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flujos de trabajo de múltiples pasos

  • 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 Python framework for building modular AI agents with pluggable LLMs, memory, tool integration, and multi-step planning.
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    What is SyntropAI?
    SyntropAI is a developer-focused Python library designed to simplify the construction of autonomous AI agents. It provides a modular architecture with core components for memory management, tool and API integration, LLM backend abstraction, and a planning engine that orchestrates multi-step workflows. Users can define custom tools, configure persistent or short-term memory, and select from supported LLM providers. SyntropAI also includes logging and monitoring hooks to track agent decisions. Its plug-and-play modules let teams iterate quickly on agent behaviors, making it ideal for chatbots, knowledge assistants, task automation bots, and research prototypes.
  • Upstreet AI builds custom AI agents that automate data workflows, connect APIs, and execute actions via natural language prompts.
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    What is Upstreet AI?
    Upstreet AI empowers businesses to design and deploy custom AI agents without writing code. Agents can connect to data sources like Salesforce, Google Sheets, and SQL databases, interpret natural language commands, and execute complex workflows. For example, a sales agent can automatically qualify leads, send personalized emails, and update CRM entries. A customer support bot can ingest helpdesk tickets, suggest resolutions, and escalate issues. Upstreet’s visual editor lets users define triggers, conditional logic, and multi-step processes. Agents run on a scalable cloud infrastructure and support webhooks, REST APIs, and event-driven actions. By combining pretrained language models with secure data connectors, Upstreet AI simplifies automation, reduces manual errors, and accelerates time-to-value for enterprise projects.
  • AAGPT is an open-source framework to build autonomous AI agents with multi-step planning, memory management, and tool integrations.
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    What is AAGPT?
    AAGPT is an extensible, open-source AI agent framework designed for building autonomous agents. It enables you to define high-level objectives, manage conversational memory, plan multi-step tasks, and integrate external tools or APIs. Using a simple configuration file and Python SDK, you can customize agent behavior, define custom actions, and deploy agents that can interact with data sources, execute commands, and learn from past interactions to improve performance over time.
  • A GitHub repo of modular AI agent recipes using LangChain and Python, showcasing memory, custom tools, and multi-step automation.
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    What is Advanced Agents Cookbooks?
    Advanced Agents Cookbooks is a community-driven GitHub project offering a library of AI agent recipes built on LangChain. It covers memory modules for context retention, custom tool integrations for external data and API calls, function-calling patterns for structured responses, chain-of-thought planning for complex decision-making, and multi-step workflow orchestration. Developers can use these ready-made examples to understand best practices, customize behavior, and accelerate the development of intelligent agents that automate tasks such as scheduling, data retrieval, and customer support.
  • AWS Agentic Workflows enables dynamic, multi-step AI-driven task orchestration using Amazon Bedrock and Step Functions.
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    What is AWS Agentic Workflows?
    AWS Agentic Workflows is a serverless orchestration framework that lets you chain AI tasks into end-to-end workflows. Using Amazon Bedrock foundation models, you can invoke AI agents to perform natural language processing, classification, or custom tasks. AWS Step Functions manages state transitions, retries, and parallel execution. Lambda functions can preprocess inputs and post-process outputs. CloudWatch provides logs and metrics for real-time monitoring and debugging. This enables developers to build reliable, scalable AI pipelines without managing servers or infrastructure.
  • Aura is an open-source AI agent framework enabling automated multi-step blockchain transactions via natural language commands.
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    What is Aura?
    Aura is a developer-focused framework that transforms simple text prompts into executable blockchain operations. It leverages OpenAI’s GPT models to plan and sequence multi-step transactions, such as token swaps, yield farming, and cross-chain bridges, while securely managing private keys. With an extensible plugin architecture, teams can add new adapters for wallets, DeFi protocols, and on-chain data sources. Aura integrates seamlessly as a Node.js library or microservice, enabling web and backend applications to delegate complex DeFi workflows to an AI-powered agent, reducing errors, speeding development, and opening programmable finance to natural language control. Developers simply configure environment variables for API and network credentials, define prompts and tasks in JavaScript, and deploy Aura as part of CI/CD. Real-time logs and error handling allow monitoring and safe production use.
  • A Python-based autonomous AI Agent framework providing memory, reasoning, and tool integration for multi-step task automation.
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    What is CereBro?
    CereBro offers a modular architecture for creating AI agents capable of self-directed task decomposition, persistent memory, and dynamic tool usage. It includes a Brain core managing thoughts, actions, and memory, supports custom plugins for external APIs, and provides a CLI interface for orchestration. Users can define agent goals, configure reasoning strategies, and integrate functions such as web search, file operations, or domain-specific tools to execute tasks end-to-end without manual intervention.
  • An AI agent framework that supervises multi-step LLM workflows using LlamaIndex, automating query orchestration and result validation.
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    What is LlamaIndex Supervisor?
    LlamaIndex Supervisor is a developer-focused Python framework designed to create, run, and monitor AI agents built on LlamaIndex. It provides tools for defining workflows as nodes—such as retrieval, summarization, and custom processing—and wiring them into directed graphs. The Supervisor oversees each step, validating outputs against schemas, retrying on errors, and logging metrics. This ensures robust, repeatable pipelines for tasks like retrieval-augmented generation, document QA, and data extraction across diverse datasets.
  • Serena is an open-source autonomous AI agent for task planning, web research, data retrieval, summarization, and tool integration.
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    What is Serena?
    Serena is designed to automate complex workflows through autonomous planning and execution. It interacts with web search engines, databases, and APIs to gather information, summarizes results, and carries out tasks according to user-defined goals. Built as a Python library, Serena maintains stateful memory across sessions, dynamically loads plugins for extended capabilities, and uses large language models to generate structured plans. Developers can customize tool integrations for code execution, file management, and analytics, making Serena a versatile framework for research, data processing, content generation, and beyond.
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