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déploiement dans le cloud

  • AGIFlow enables visual creation and orchestration of multi-agent AI workflows with API integration and real-time monitoring.
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    What is AGIFlow?
    At its core, AGIFlow provides an intuitive canvas where users can assemble AI agents into dynamic workflows, defining triggers, conditional logic, and data exchanges between agents. Each agent node can execute custom code, call external APIs, or leverage pre-built models for NLP, vision, or data processing tasks. With built-in connectors to popular databases, web services, and messaging platforms, AGIFlow streamlines integration and orchestration across systems. Version control and rollback features allow teams to iterate rapidly, while real-time logging, metrics dashboards, and alerting ensure transparency and reliability. Once workflows are tested, they can be deployed on scalable cloud infrastructure with scheduling options, enabling businesses to automate complex processes such as report generation, customer support routing, or research pipelines.
  • SuperSwarm orchestrates multiple AI agents to collaboratively solve complex tasks via dynamic role assignment and real-time communication.
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    What is SuperSwarm?
    SuperSwarm is designed for orchestrating AI-driven workflows by leveraging multiple specialized agents that communicate and collaborate in real time. It supports dynamic task decomposition, where a primary controller agent breaks down complex goals into subtasks and assigns them to expert agents. Agents can share context, pass messages, and adapt their approach based on intermediate results. The platform offers a web-based dashboard, RESTful API, and CLI for deployment and monitoring. Developers can define custom roles, configure swarm topologies, and integrate external tools via plugins. SuperSwarm scales horizontally using container orchestration, ensuring robust performance under heavy workloads. Logs, metrics, and visualizations help optimize agent interactions, making it suitable for tasks like advanced research, customer support automation, code generation, and decision-making processes.
  • Create efficient ERP systems from Uzbekistan to streamline businesses and simplify workflows.
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    What is IOTA?
    IOTA ERP and CRM systems specialize in various sectors, including finance, logistics, retail, and manufacturing. Offering functional, fast, and convenient solutions, they enhance business efficiency and streamline operations. The systems are accessible via mobile devices and are fully responsive. We utilize a robust tech stack, including Golang and HTMX, to handle massive data processing and ensure scalable solutions. Embracing AI/ML technologies, we integrate advanced solutions like large language models into business processes to increase productivity. Additionally, IOTA ERP systems can be deployed both on-premises and in the cloud, providing flexible options to meet diverse business needs.
  • A Java-based framework for designing, deploying, and managing autonomous multi-agent systems with communication, coordination, and dynamic behavior modeling.
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    What is Agent-Oriented Architecture?
    Agent-Oriented Architecture (AOA) is a robust framework that equips developers with tools to build and maintain intelligent multi-agent systems. Agents encapsulate state, behaviors, and interaction patterns, communicating via an asynchronous message bus. AOA includes modules for agent registration, discovery, and matchmaking, enabling dynamic service composition. Behavior modeling supports finite-state machines, goal-driven planning, and event-driven triggers. The framework handles agent lifecycle events like creation, suspension, migration, and termination. Built-in monitoring and logging facilitate performance tuning and debugging. AOA’s pluggable transport layer supports TCP, HTTP, and custom protocols, making it adaptable for on-premise, cloud, or edge deployments. Integration with popular libraries ensures seamless data processing and AI model integration.
  • AI Library is a developer platform for building and deploying customizable AI agents using modular chains and tools.
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    What is AI Library?
    AI Library offers a comprehensive framework for designing and running AI agents. It includes agent builders, chain orchestration, model interfaces, tool integration, and vector store support. The platform features an API-first approach, extensive documentation, and sample projects. Whether you’re creating chatbots, data retrieval agents, or automation assistants, AI Library’s modular architecture ensures each component—such as language models, memory stores, and external tools—can be easily configured, combined, and monitored in production environments.
  • Revolutionize software development with Lazy AI's intuitive platform.
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    What is Lazy AI - Create software the fun way?
    Lazy AI transforms the software development landscape by providing users with easy-to-use tools for creating web apps. With AI-driven templates and powerful customization features, developers and non-developers alike can build sophisticated applications with minimal effort. The platform allows you to modify templates, integrate with various APIs, and deploy your app to the cloud with just a single click. This innovation reduces the complexity of coding and empowers teams to focus on creativity, efficiency, and collaboration.
  • LLMWare is a Python toolkit enabling developers to build modular LLM-based AI agents with chain orchestration and tool integration.
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    What is LLMWare?
    LLMWare serves as a comprehensive toolkit for constructing AI agents powered by large language models. It allows you to define reusable chains, integrate external tools via simple interfaces, manage contextual memory states, and orchestrate multi-step reasoning across language models and downstream services. With LLMWare, developers can plug in different model backends, set up agent decision logic, and attach custom toolkits for tasks like web browsing, database queries, or API calls. Its modular design enables rapid prototyping of autonomous agents, chatbots, or research assistants, offering built-in logging, error handling, and deployment adapters for both development and production environments.
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