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  • An HTTP proxy for AI agent API calls enabling streaming, caching, logging, and customizable request parameters.
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    What is MCP Agent Proxy?
    MCP Agent Proxy acts as a middleware service between your applications and the OpenAI API. It transparently forwards ChatCompletion and Embedding calls, handles streaming responses to clients, caches results to improve performance and reduce costs, logs request and response metadata for debugging, and allows on-the-fly customization of API parameters. Developers can integrate it into existing agent frameworks to simplify multi-channel processing and maintain a single managed endpoint for all AI interactions.
    MCP Agent Proxy Core Features
    • HTTP proxy for ChatCompletion and Embedding endpoints
    • Real-time streaming of API responses
    • Response caching with configurable TTL
    • Request and response logging
    • Dynamic override of API parameters
    • Support for high concurrency
  • An AWS Step Functions-based AI agent orchestrating LLM-powered workflows, dynamic branching, and function invocations for automation.
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    What is Step Functions Agent?
    Step Functions Agent is an open-source toolkit enabling developers to construct intelligent serverless workflows on AWS. By leveraging Large Language Models like OpenAI's GPT, this agent dynamically generates AWS Step Functions state machine definitions based on natural language prompts or structured instructions. It supports invoking Lambda functions, passing context between steps, implementing conditional branching, parallelization, retries, and error handling. The framework abstracts AWS service integrations, automatically provisions resources, and offers observability through CloudWatch. Users can customize prompts, integrate custom functions, and monitor workflow executions. With built-in fallback strategies and audit logging, Step Functions Agent streamlines building scalable, resilient AI-driven automation pipelines, accelerating development for data processing, ETL, and decision support applications.
  • A hands-on tutorial demonstrating how to orchestrate debate-style AI agents using LangChain AutoGen in Python.
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    What is AI Agent Debate Autogen Tutorial?
    The AI Agent Debate Autogen Tutorial provides a step-by-step framework for orchestrating multiple AI agents engaged in structured debates. It leverages LangChain’s AutoGen module to coordinate messaging, tool execution, and debate resolution. Users can customize templates, configure debate parameters, and view detailed logs and summaries of each round. Ideal for researchers evaluating model opinions or educators demonstrating AI collaboration, this tutorial delivers reusable code components for end-to-end debate orchestration in Python.
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