Comprehensive erweiterbare Architektur Tools for Every Need

Get access to erweiterbare Architektur solutions that address multiple requirements. One-stop resources for streamlined workflows.

erweiterbare Architektur

  • Modular AI Agent framework enabling memory, tool integration, and multi-step reasoning for automating complex developer workflows.
    0
    0
    What is Aegix?
    Aegix provides a robust SDK for orchestrating AI Agents capable of handling complex workflows through multi-step reasoning. With support for various LLM providers, it lets developers integrate custom tools—from database connectors to web scrapers—and maintain conversation state with memory modules such as vector stores. Aegix’s flexible agent loop architecture allows the specification of planning, execution, and review phases, enabling agents to refine outputs iteratively. Whether building document question-answering bots, code assistants, or automated support agents, Aegix simplifies development with clear abstractions, configuration-driven pipelines, and easy extension points. It’s designed to scale from prototypes to production, ensuring reliable performance and maintainable codebases for AI-driven applications.
  • AgentIn is an open-source Python framework for building AI agents with customizable memory, tool integration, and auto-prompting.
    0
    0
    What is AgentIn?
    AgentIn is a Python-based AI agent framework designed to accelerate the development of conversational and task-driven agents. It offers built-in memory modules to persist context, dynamic tool integration to call external APIs or local functions, and a flexible prompt templating system for customized interactions. Multi-agent orchestration enables parallel workflows, while logging and caching improve reliability and auditability. Easily configurable via YAML or Python code, AgentIn supports major LLM providers and can be extended with custom plugins for domain-specific capabilities.
  • An open-source framework enabling modular LLM-powered agents with integrated toolkits and multi-agent coordination.
    0
    0
    What is Agents with ADK?
    Agents with ADK is an open-source Python framework designed to streamline the creation of intelligent agents powered by large language models. It includes modular agent templates, built-in memory management, tool execution interfaces, and multi-agent coordination capabilities. Developers can quickly plug in custom functions or external APIs, configure planning and reasoning chains, and monitor agent interactions. The framework supports integration with popular LLM providers and provides logging, retry logic, and extensibility for production deployments.
  • Agent Adapters provides pluggable middleware to integrate LLM-based agents with various external frameworks and tools seamlessly.
    0
    0
    What is Agent Adapters?
    Agent Adapters is designed to provide developers with a consistent interface for connecting AI agents to external services and frameworks. Through its pluggable adapter architecture, it offers prebuilt adapters for HTTP APIs, messaging platforms like Slack and Teams, and custom tool endpoints. Each adapter handles request parsing, response mapping, error handling, and optional logging or monitoring hooks. Developers can also register custom adapters by implementing a defined interface and configuring adapter parameters in their agent settings. This streamlined approach reduces boilerplate code, ensures uniform workflow execution, and accelerates the deployment of agents across multiple environments without rewriting integration logic.
  • Agent of Code is an AI-powered coding agent that generates, debugs, and refactors code across multiple languages via OpenAI APIs.
    0
    0
    What is Agent of Code?
    Agent of Code is a versatile AI agent framework enabling developers to offload routine coding tasks to intelligent agents. It leverages large language models to translate natural language prompts into fully functional code, perform automated code reviews, debug existing code, and refactor legacy codebases. Users define agent goals and parameters through YAML or JSON configurations, select plugins for tasks like testing or CI integration, and execute agents via CLI. The framework orchestrates API calls, manages context windows, and assembles modular responses into cohesive code scripts. With an extensible architecture, developers can plug in custom modules, integrate with version control, and tailor the agent pipeline to project workflows.
  • Agentic-AI is a Python framework enabling autonomous AI agents to plan, execute tasks, manage memory, and integrate custom tools using LLMs.
    0
    0
    What is Agentic-AI?
    Agentic-AI is an open-source Python framework that streamlines building autonomous agents leveraging large language models such as OpenAI GPT. It provides core modules for task planning, memory persistence, and tool integration, allowing agents to decompose high-level goals into executable steps. The framework supports plugin-based custom tools—APIs, web scraping, database queries—enabling agents to interact with external systems. It features a chain-of-thought reasoning engine coordinating planning and execution loops, context-aware memory recalls, and dynamic decision-making. Developers can easily configure agent behaviors, monitor action logs, and extend functionality, achieving scalable, adaptable AI-driven automation for diverse applications.
  • Open-source AgentPilot orchestrates autonomous AI agents for task automation, memory management, tool integration, and workflow control.
    0
    0
    What is AgentPilot?
    AgentPilot provides a comprehensive monorepo solution for building, managing, and deploying autonomous AI agents. At its core, it features an extensible plugin system for integrating custom tools and LLMs, a memory management layer for preserving context across interactions, and a planning module that sequences agent tasks. Users can interact via a command-line interface or a web-based dashboard to configure agents, monitor execution, and review logs. By abstracting the complexity of agent orchestration, memory handling, and API integrations, AgentPilot enables rapid prototyping and production-ready deployment of multi-agent workflows in domains such as customer support automation, content generation, data processing, and more.
  • A TypeScript framework for building and customizing LangChain AI agents with tool integration and memory management.
    0
    0
    What is Agents from Scratch TS?
    Agents from Scratch TS is an open-source TypeScript framework that demonstrates how to build AI agents from the ground up using LangChain. It includes sample code for defining and registering external tools, managing conversational memory, routing user inputs to the right agent, and chaining multiple LLM calls. Developers can use it to understand best practices, customize agent behaviors, and integrate new capabilities such as web search, data retrieval, or custom plugins to automate tasks or build interactive assistants.
  • AgentX is an open-source framework enabling developers to build customizable AI agents with memory, tool integration, and LLM reasoning.
    0
    1
    What is AgentX?
    AgentX provides an extensible architecture for building AI-driven agents that leverage large language models, tool and API integrations, and memory modules to perform complex tasks autonomously. It features a plugin system for custom tools, support for vector-based retrieval, chain-of-thought reasoning, and detailed execution logs. Users define agents through flexible configuration files or code, specifying tools, memory backends like Chroma DB, and reasoning pipelines. AgentX manages context across sessions, enables retrieval-augmented generation, and facilitates multiturn conversations. Its modular components allow developers to orchestrate workflows, customize agent behaviors, and integrate external services for automation, research assistance, customer support, and data analysis.
  • An open-source Python framework enabling rapid development and orchestration of modular AI agents with memory, tool integration, and multi-agent workflows.
    0
    0
    What is AI-Agent-Framework?
    AI-Agent-Framework offers a comprehensive foundation for building AI-powered agents in Python. It includes modules for managing conversation memory, integrating external tools, and constructing prompt templates. Developers can connect to various LLM providers, equip agents with custom plugins, and orchestrate multiple agents in coordinated workflows. Built-in logging and monitoring tools help track agent performance and debug behaviors. The framework's extensible design allows seamless addition of new connectors or domain-specific capabilities, making it ideal for rapid prototyping, research projects, and production-grade automation.
  • autogen4j is a Java framework enabling autonomous AI agents to plan tasks, manage memory, and integrate LLMs with custom tools.
    0
    0
    What is autogen4j?
    autogen4j is a lightweight Java library designed to abstract the complexity of building autonomous AI agents. It offers core modules for planning, memory storage, and action execution, letting agents decompose high-level goals into sequential sub-tasks. The framework integrates with LLM providers (e.g., OpenAI, Anthropic) and allows registration of custom tools (HTTP clients, database connectors, file I/O). Developers define agents through a fluent DSL or annotations, quickly assembling pipelines for data enrichment, automated reporting, and conversational bots. An extensible plugin system ensures flexibility, enabling fine-tuned behaviors across diverse applications.
  • An AI agent enabling automated task execution inside Slack and Google Workspace via natural language chat.
    0
    0
    What is Automation Chatbot?
    Automation Chatbot is designed to streamline repetitive workflows by allowing users to interact with connected services through conversational AI. Powered by OpenAI models and a Chroma vector store, the agent maintains context across sessions, recalls past interactions, and executes actions in platforms like Slack, Google Drive, and Calendar. With a modular connector architecture, developers can add new integrations for email, file management, or custom APIs. A built-in scheduling module enables automated triggers based on time or events. Using TypeScript definitions, the system validates input/output and generates code snippets automatically. The framework can run on local machines or containerized environments, providing extensibility and security controls like OAuth2 and API key management. This empowers organizations to deploy chat-driven automation tailored to their operational needs.
  • Open-source Python framework that builds modular autonomous AI agents to plan, integrate tools, and execute multi-step tasks.
    0
    0
    What is Autonomais?
    Autonomais is a modular AI agent framework designed for full autonomy in task planning and execution. It integrates large language models to generate plans, orchestrates actions via a customizable pipeline, and stores context in memory modules for coherent multi-step reasoning. Developers can plug in external tools like web scrapers, databases, and APIs, define custom action handlers, and fine-tune agent behavior through configurable skills. The framework supports logging, error handling, and step-by-step debugging, ensuring reliable automation of research tasks, data analysis, and web interactions. With its extensible plugin architecture, Autonomais enables rapid development of specialized agents capable of complex decision-making and dynamic tool usage.
  • A Python library enabling autonomous OpenAI GPT-powered agents with customizable tools, memory, and planning for task automation.
    0
    0
    What is Autonomous Agents?
    Autonomous Agents is an open-source Python library designed to simplify the creation of autonomous AI agents powered by large language models. By abstracting core components such as perception, reasoning, and action, it allows developers to define custom tools, memories, and strategies. Agents can autonomously plan multi-step tasks, query external APIs, process results through custom parsers, and maintain conversational context. The framework supports dynamic tool selection, sequential and parallel task execution, and memory persistence, enabling robust automation for tasks ranging from data analysis and research to email summarization and web scraping. Its extensible design facilitates easy integration with different LLM providers and custom modules.
  • ExampleAgent is a template framework for creating customizable AI agents that automate tasks via OpenAI API.
    0
    0
    What is ExampleAgent?
    ExampleAgent is a developer-focused toolkit designed to accelerate the creation of AI-driven assistants. It integrates directly with OpenAI’s GPT models to handle natural language understanding and generation, and offers a pluggable system for adding custom tools or APIs. The framework manages conversation context, memory, and error handling, enabling agents to perform information retrieval, task automation, and decision-making workflows. With clear code templates, documentation, and examples, teams can rapidly prototype domain-specific agents for chatbots, data extraction, scheduling, and more.
  • Jaaz is a Node.js-based AI agent framework enabling developers to build customizable conversational bots with memory and tool integrations.
    0
    0
    What is Jaaz?
    Jaaz is an extensible AI agent framework designed for crafting highly interactive chatbot and voice assistant solutions. Built on Node.js and JavaScript, it provides core modules for dialog management, context-aware memory, and third-party API integration, enabling dynamic tool usage during conversations. Developers can define custom skills, leverage large language models for natural language understanding, and integrate speech-to-text and text-to-speech engines for voice-enabled experiences. Jaaz’s modular architecture simplifies deployment across cloud and on-premise infrastructures, supporting rapid prototyping and production-grade workflows.
  • This Java-based agent framework enables developers to create customizable agents, manage messaging, lifecycles, behaviors, and simulate multi-agent systems.
    0
    0
    What is JASA?
    JASA provides a comprehensive set of Java libraries for building and running multi-agent system simulations. It supports agent lifecycle management, event scheduling, asynchronous message passing, and environment modeling. Developers can extend core classes to implement custom behaviors, integrate external data sources, and visualize simulation outcomes. The framework’s modular design and clear API documentation facilitate rapid prototyping and scalability, making it suitable for academic research, teaching, and proof-of-concept development in agent-based modeling.
  • A React-based web chat interface to deploy, customize and interact with LangServe-powered AI agents in any web application.
    0
    0
    What is LangServe Assistant UI?
    LangServe Assistant UI is a modular front-end application built with React and TypeScript that interfaces seamlessly with the LangServe backend to deliver a full-featured conversational AI experience. It provides customizable chat windows, real-time message streaming, context-aware prompts, multi-agent orchestration, and plugin hooks for external API calls. The UI supports theming, localization, session management, and event hooks for capturing user interactions. It can be embedded into existing web applications or deployed as a standalone SPA, enabling rapid rollout of customer service bots, content generation assistants, and interactive knowledge agents. Its extensible architecture ensures easy customization and maintenance.
  • A Python library enabling AI agents to seamlessly integrate and invoke external tools through a standardized adapter interface.
    0
    0
    What is MCP Agent Tool Adapter?
    MCP Agent Tool Adapter acts as a middleware layer between language model-based agents and external tool implementations. By registering function signatures or tool descriptors, the framework automatically parses agent outputs that specify tool calls, dispatches the appropriate adapter, handles input serialization, and returns the result back to the reasoning context. Features include dynamic tool discovery, concurrency control, logging, and error handling pipelines. It supports defining custom tool interfaces and integrating cloud or on-premise services. This enables building complex, multi-tool workflows such as API orchestration, data retrieval, and automated operations without modifying underlying agent code.
  • A minimal TypeScript library enabling developers to create autonomous AI agents for task automation and natural language interactions.
    0
    0
    What is micro-agent?
    micro-agent provides a minimalistic yet powerful set of abstractions for creating autonomous AI agents. Built in TypeScript, it runs seamlessly in both browser and Node.js contexts, allowing you to define agents with custom prompt templates, decision logic, and extensible tool integrations. Agents can leverage chain-of-thought reasoning, interact with external APIs, and maintain conversational or task-specific memory. The library includes utilities for handling API responses, error management, and session persistence. With micro-agent, developers can prototype and deploy agents for a range of tasks—such as automating workflows, building conversational interfaces, or orchestrating data-processing pipelines—without the overhead of larger frameworks. Its modular design and clear API surface make it easy to extend and integrate into existing applications.
Featured