Newest Ferramentas de Prototipagem Solutions for 2024

Explore cutting-edge Ferramentas de Prototipagem tools launched in 2024. Perfect for staying ahead in your field.

Ferramentas de Prototipagem

  • OpenAssistant is an open-source framework to train, evaluate, and deploy task-oriented AI assistants with customizable plugins.
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    What is OpenAssistant?
    OpenAssistant offers a comprehensive toolset for constructing and fine-tuning AI agents tailored to specific tasks. It includes data processing scripts to convert raw dialogue datasets into training formats, models for instruction-based learning, and utilities to monitor training progress. The framework’s plugin architecture allows seamless integration of external APIs for extended functionalities like knowledge retrieval and workflow automation. Users can evaluate agent performance using preconfigured benchmarks, visualize interactions through an intuitive web interface, and deploy production-ready endpoints with containerized deployments. Its extensible codebase supports multiple deep learning backends, enabling customization of model architectures and training strategies. By providing end-to-end support—from dataset preparation to deployment—OpenAssistant accelerates the development cycle of conversational AI solutions.
  • Rawr Agent is a Python framework enabling creation of autonomous AI agents with customizable task pipelines, memory and tool integrations.
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    What is Rawr Agent?
    Rawr Agent is a modular, open-source Python framework that empowers developers to build autonomous AI agents by orchestrating complex workflows of LLM interactions. Leveraging LangChain under the hood, Rawr Agent lets you define task sequences either through YAML configurations or Python code, specifying tool integrations such as web APIs, database queries, and custom scripts. It includes memory components for storing conversational history and vector embeddings, caching mechanisms to optimize repeated calls, and robust logging and error handling to monitor agent behavior. Rawr Agent’s extensible architecture allows adding custom tools and adapters, making it suitable for tasks like automated research, data analysis, report generation, and interactive chatbots. With its simple API, teams can rapidly prototype and deploy intelligent agents for diverse applications.
  • An open-source ReAct-based AI agent built with DeepSeek for dynamic question-answering and knowledge retrieval from custom data sources.
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    What is ReAct AI Agent from Scratch using DeepSeek?
    The repository provides a step-by-step tutorial and reference implementation for creating a ReAct-based AI agent that uses DeepSeek for high-dimensional vector retrieval. It covers environment setup, dependency installation, and configuration of vector stores for custom data. The agent employs the ReAct pattern to combine reasoning traces with external knowledge searches, resulting in transparent and explainable responses. Users can extend the system by integrating additional document loaders, fine-tuning prompt templates, or swapping vector databases. This flexible framework enables developers and researchers to prototype powerful conversational agents that reason, retrieve, and interact seamlessly with various knowledge sources in a few lines of Python code.
  • A Python framework for building autonomous AI agents that can interact with APIs, manage memory, tools, and complex workflows.
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    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.
  • Agents-Prompts provides curated prompt templates to design, customize, and deploy AI-powered conversational agents across various scenarios.
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    What is Agents-Prompts?
    Agents-Prompts is a comprehensive GitHub repository offering developers a structured collection of customizable prompt templates for building intelligent AI agents. These templates cover core functions such as memory management, dynamic instruction updates, multi-agent orchestration, decision-making logic, and API integration. Users can mix and match templates to define agent roles, tasks, and conversation flows, enabling rapid experimentation and prototyping. The repository also includes code samples for interfacing with major LLM services, examples for chaining agent actions, and guidelines for best practices when designing autonomous workflows. By leveraging these reusable prompt patterns, teams can accelerate development, maintain consistency across agents, and focus on higher-level application logic rather than low-level prompt engineering.
  • AgentVerse is a Python framework enabling developers to build, orchestrate, and simulate collaborative AI agents for diverse tasks.
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    What is AgentVerse?
    AgentVerse is designed to facilitate the creation of multi-agent architectures by offering a set of reusable modules and abstractions. Users can define unique agent classes with custom decision-making logic, establish communication channels for message passing, and simulate environmental conditions. The platform supports synchronous and asynchronous interactions among agents, enabling complex workflows such as negotiation, task delegation, and cooperative problem-solving. With integrated logging and monitoring, developers can trace agent actions and evaluate performance metrics. AgentVerse also includes templates for common use cases like autonomous exploration, trading simulations, and collaborative content generation. Its pluggable design allows seamless integration of external machine learning models, such as language models or reinforcement learning algorithms, providing flexibility for various AI-driven applications.
  • An autonomous AI agent that writes, tests, and refactors code projects using LLMs with iterative test-driven development.
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    What is Code Agent?
    Code Agent combines planning, coding, testing, and debugging into a seamless pipeline. Users provide a project directory and a description of desired functionality. The agent then breaks down the task, generates code, executes tests, analyzes failures, and applies fixes in a loop until tests pass. It supports multiple programming languages, integrates with existing test suites, and commits changes automatically to version control. By automating repetitive tasks and error resolution, Code Agent accelerates prototyping and continuous integration.
  • A Django-based API leveraging RAG and multi-agent orchestration via Llama3 for autonomous website code generation.
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    What is Django RAG Llama3 Multi-AGI CodeGen API?
    The Django RAG Llama3 Multi-AGI Code Generation API unifies retrieval-augmented generation with a coordinated set of AI agents based on Llama3 to streamline website development. It allows users to submit project requirements via REST endpoints, triggers a requirement analysis agent, invokes frontend and backend code generator agents, and performs automated validation. The system can integrate custom knowledge bases, enabling precise code templates and context-aware components. Built on Django's REST framework, it provides easy deployment, scalability, and extensibility. Teams can customize agent behaviors, adjust model parameters, and extend the retrieval corpus. By automating repetitive coding tasks and ensuring consistency, it accelerates prototyping and reduces manual errors while offering full visibility into each agent's contributions throughout the development lifecycle.
  • JaCaMo is a multi-agent system platform integrating Jason, CArtAgO, and Moise for scalable, modular agent-based programming.
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    What is JaCaMo?
    JaCaMo provides a unified environment for designing and running multi-agent systems (MAS) by integrating three core components: the Jason agent programming language for BDI-based agents, CArtAgO for artifact-based environmental modeling, and Moise for specifying organizational structures and roles. Developers can write agent plans, define artifacts with operations, and organize groups of agents under normative frameworks. The platform includes tooling for simulation, debugging, and visualization of MAS interactions. With support for distributed execution, artifact repositories, and flexible messaging, JaCaMo enables rapid prototyping and research in areas like swarm intelligence, collaborative robotics, and distributed decision-making. Its modular design ensures scalability and extensibility across academic and industrial projects.
  • Llamator is an open-source JavaScript framework that builds modular autonomous AI agents with memory, tools, and dynamic prompts.
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    What is Llamator?
    Llamator is an open-source JavaScript library that enables developers to build autonomous AI agents by combining memory modules, tool integrations, and dynamic prompt templates in a unified pipeline. It orchestrates planning, action execution, and reflection loops to handle multi-step tasks, supports multiple LLM providers, and allows custom tool definitions for API calls or data processing. With Llamator, you can rapidly prototype chatbots, personal assistants, and automated workflows within web or Node.js applications, leveraging a modular architecture for easy extension and testing.
  • MARFT is an open-source multi-agent RL fine-tuning toolkit for collaborative AI workflows and language model optimization.
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    What is MARFT?
    MARFT is a Python-based LLMs, enabling reproducible experiments and rapid prototyping of collaborative AI systems.
  • A Python toolkit providing modular pipelines to create LLM-powered agents with memory, tool integration, prompt management, and custom workflows.
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    What is Modular LLM Architecture?
    Modular LLM Architecture is designed to simplify the creation of customized LLM-driven applications through a composable, modular design. It provides core components such as memory modules for session state retention, tool interfaces for external API calls, prompt managers for template-based or dynamic prompt generation, and orchestration engines to control agent workflow. You can configure pipelines that chain together these modules, enabling complex behaviors like multi-step reasoning, context-aware responses, and integrated data retrieval. The framework supports multiple LLM backends, allowing you to switch or mix models, and offers extensibility points for adding new modules or custom logic. This architecture accelerates development by promoting reuse of components, while maintaining transparency and control over the agent’s behavior.
  • Orra.dev is a no-code platform for building and deploying AI agents that automate support, code review, and data analysis tasks.
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    What is Orra.dev?
    Orra.dev is a comprehensive AI agent creation platform designed to simplify the end-to-end lifecycle of intelligent assistants. By combining a visual workflow builder with seamless integrations to leading LLM providers and enterprise systems, Orra.dev allows teams to prototype conversation logic, refine agent behavior, and launch production-ready bots across multiple channels within minutes. Features include access to pre-built templates for FAQ bots, e-commerce assistants, and code review agents, along with customizable triggers, API connectors, and user role management. With built-in testing suites, collaborative versioning, and performance dashboards, organizations can iterate on agent responses, monitor user interactions, and optimize workflows based on real-time data, accelerating deployment and reducing maintenance overhead.
  • An AI-powered Python coding agent that generates, executes, and debugs Python code from natural language prompts.
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    What is Python Coding Agent?
    Python Coding Agent is an open-source command-line tool that uses GPT models to generate Python code based on text prompts, execute that code locally, and catch runtime errors. It provides instant feedback, allowing users to iteratively refine code, automate repetitive scripting tasks, prototype data analysis pipelines, and debug functions. By combining natural language understanding with real-time code execution, it bridges the gap between idea and implementation, speeding up development and learning.
  • SwiftAgent is a Swift framework enabling developers to build customizable GPT-powered agents with actions, memory, and task automation.
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    What is SwiftAgent?
    SwiftAgent offers a robust toolkit for constructing intelligent agents by integrating OpenAI's models directly in Swift. Developers can declare custom actions and external tools, which agents invoke based on user queries. The framework maintains conversational memory, enabling agents to reference past interactions. It supports prompt templating and dynamic context injection, facilitating multi-turn dialogues and decision logic. SwiftAgent's async API works seamlessly with Swift concurrency, making it ideal for iOS, macOS, or server-side environments. By abstracting model calls, memory storage, and pipeline orchestration, SwiftAgent empowers teams to prototype and deploy conversational assistants, chatbots, or automation agents quickly within Swift projects.
  • SwiftSage is an AI coding assistant that generates production-ready SwiftUI components from natural language prompts.
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    What is SwiftSage?
    SwiftSage leverages a large language model to interpret natural language descriptions and output fully functional SwiftUI views or Swift code modules. Users can request UI layouts, data models, or networking components, customize styling, and preview results in real-time. The tool supports iterative feedback, allowing developers and designers to refine code snippets until they meet project requirements. It streamlines prototyping, learning, and production stages of iOS app creation.
  • AI-powered platform for innovative 2D and 3D design.
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    What is Xspiral?
    Xspiral is an AI-enhanced hybrid design and collaboration platform designed for creating stunning visual content. It merges powerful 2D and 3D design capabilities, enabling users to efficiently produce, manage, and share their designs in real-time. Whether you're a professional designer, a product manager, or a marketing expert, Xspiral facilitates intuitive workflows that streamline project collaboration. From rapid prototyping to animations, the platform empowers teams with the technology they need to deliver compelling visual graphics effortlessly.
  • Open-source framework with multi-agent system modules and distributed AI coordination algorithms for consensus, negotiation, and collaboration.
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    What is AI-Agents-Multi-Agent-Systems-and-Distributed-AI-Coordination?
    This repository aggregates a comprehensive collection of multi-agent system components and distributed AI coordination techniques. It provides implementations of consensus algorithms, contract net negotiation protocols, auction-based task allocation, coalition formation strategies, and inter-agent communication frameworks. Users can leverage built-in simulation environments to model and test agent behaviors under varied network topologies, latency scenarios, and failure modes. The modular design allows developers and researchers to integrate, extend, or customize individual coordination modules for applications in robotics swarms, IoT device collaboration, smart grids, and distributed decision-making systems.
  • ASP-DALI combines Answer Set Programming and DALI to model reactive reasoning-based intelligent agents with flexible event handling.
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    What is ASP-DALI?
    ASP-DALI provides a unified platform for defining and executing logic-based intelligent agents. Developers write ASP rules to represent agent knowledge and goals, while DALI constructs define event reactions and action executions. At runtime, an ASP solver computes answer sets that guide the agent’s decisions, enabling it to plan, react to incoming events, and adjust beliefs dynamically. The framework supports modular knowledge bases, facilitating incremental updates and clear separation between declarative rules and reactive behaviors. ASP-DALI is implemented in Prolog with interfaces to popular ASP solvers, simplifying integration and deployment across research and prototype scenarios.
  • Low-code framework and UI toolkit for consistent, brand-compliant web frontends.
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    What is Design System?
    KickstartDS is an open-source starter kit and next-gen UI development toolkit tailored for creating digital design systems. It features a low-code framework, comprehensive component library, and pattern library, enabling web development teams to establish consistent, brand-compliant web frontends efficiently. With KickstartDS, teams can quickly kickstart their design system projects, ensuring they adhere to best practices in UI and UX design.
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