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日誌與監控

  • FastAPI Agents is an open-source framework that deploys LLM-based agents as RESTful APIs using FastAPI and LangChain.
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    What is FastAPI Agents?
    FastAPI Agents provides a robust service layer for developing LLM-based agents using the FastAPI web framework. It allows you to define agent behaviors with LangChain chains, tools, and memory systems. Each agent can be exposed as a standard REST endpoint, supporting asynchronous requests, streaming responses, and customizable payloads. Integration with vector stores enables retrieval-augmented generation for knowledge-driven applications. The framework includes built-in logging, monitoring hooks, and Docker support for containerized deployment. You can easily extend agents with new tools, middleware, and authentication. FastAPI Agents accelerates the production readiness of AI solutions, ensuring security, scalability, and maintainability of agent-based applications in enterprise and research settings.
  • AgentGateway connects autonomous AI agents to your internal data sources and services for real-time document retrieval and workflow automation.
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    What is AgentGateway?
    AgentGateway provides a developer-focused environment for creating multi-agent AI applications. It supports distributed agent orchestration, plugin integration, and secure access control. With built-in connectors for vector databases, REST/gRPC APIs, and common services like Slack and Notion, agents can query documents, execute business logic, and generate responses autonomously. The platform includes monitoring, logging, and role-based access controls, making it easy to deploy scalable, auditable AI solutions across enterprises.
  • An extensible Node.js framework for building autonomous AI agents with MongoDB-backed memory and tool integration.
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    What is Agentic Framework?
    Agentic Framework is a versatile, open-source framework designed to streamline the creation of autonomous AI agents that leverage large language models and MongoDB. It equips developers with modular components for managing agent memory, defining toolsets, orchestrating multi-step workflows, and templating prompts. The integrated MongoDB-backed memory store enables agents to maintain persistent context across sessions, while pluggable tool interfaces allow seamless interaction with external APIs and data sources. Built on Node.js, the framework includes logging, monitoring hooks, and deployment examples to rapidly prototype and scale intelligent agents. With customizable configuration, developers can tailor agents for tasks such as knowledge retrieval, automated customer support, data analysis, and process automation, reducing development overhead and accelerating time-to-production.
  • An open-source Python framework enabling rapid development and orchestration of modular AI agents with memory, tool integration, and multi-agent workflows.
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    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.
  • A template demonstrating how to orchestrate multiple AI agents on AWS Bedrock to collaboratively solve workflows.
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    What is AWS Bedrock Multi-Agent Blueprint?
    The AWS Bedrock Multi-Agent Blueprint provides a modular framework to implement a multi-agent architecture on AWS Bedrock. It includes sample code for defining agent roles—planner, researcher, executor, and evaluator—that collaborate through shared message queues. Each agent can invoke different Bedrock models with custom prompts and pass intermediate outputs to subsequent agents. Built-in CloudWatch logging, error handling patterns, and support for synchronous or asynchronous execution demonstrate how to manage model selection, batch tasks, and end-to-end orchestration. Developers clone the repo, configure AWS IAM roles and Bedrock endpoints, then deploy via CloudFormation or CDK. The open-source design encourages extending roles, scaling agents across tasks, and integrating with S3, Lambda, and Step Functions.
  • Dive is an open-source Python framework for building autonomous AI agents with pluggable tools and workflows.
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    What is Dive?
    Dive is a Python-based open-source framework designed for creating and running autonomous AI agents that can perform multi-step tasks with minimal manual intervention. By defining agent profiles in simple YAML configuration files, developers can specify APIs, tools, and memory modules for tasks such as data retrieval, analysis, and pipeline orchestration. Dive manages context, state, and prompt engineering, allowing flexible workflows with built-in error handling and logging. Its pluggable architecture supports a wide range of language models and retrieval systems, making it easy to assemble agents for customer service automation, content generation, and DevOps processes. The framework scales from prototype to production, offering CLI commands and API endpoints to integrate agents seamlessly into existing systems.
  • GenAI Job Agents is an open-source framework that automates task execution using generative AI-based job agents.
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    What is GenAI Job Agents?
    GenAI Job Agents is a Python-based open-source framework designed to streamline the creation and management of AI-powered job agents. Developers can define customized job types and agent behaviors using simple configuration files or Python classes. The system integrates seamlessly with OpenAI for LLM-powered reasoning and LangChain for chaining calls. Jobs can be queued, executed in parallel, and monitored through built-in logging and error-handling mechanisms. Agents can handle dynamic inputs, retry failures automatically, and produce structured results for downstream processing. With modular architecture, extensible plugins, and clear APIs, GenAI Job Agents empowers teams to automate repetitive tasks, orchestrate complex workflows, and scale AI-driven operations in production environments.
  • RxAgent-Zoo uses reactive programming with RxPY to streamline development and experimentation of modular reinforcement learning agents.
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    What is RxAgent-Zoo?
    At its core, RxAgent-Zoo is a reactive RL framework that treats data events from environments, replay buffers, and training loops as observable streams. Users can chain operators to preprocess observations, update networks, and log metrics asynchronously. The library offers parallel environment support, configurable schedulers, and integration with popular Gym and Atari benchmarks. A plug-and-play API allows seamless swapping of agent components, facilitating reproducible research, rapid experimentation, and scalable training workflows.
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