Neonia

The ultimate platform for Autonomous AI Agents. Features include Autonomous Tool Discovery (dynamically finds and executes missing capabilities), Stateful Cloud Memory (remembers cross-session context), Context Packing (saves LLM tokens), and 20+ specialized dev tools.

Neonia Agent MCP Examples

A collection of autonomous agent examples demonstrating how to integrate the Neonia Model Context Protocol (MCP) Gateway using the official Streamable HTTP transport standard.

About These Examples

This repository will continuously grow with new patterns demonstrating deterministic, high-performance AI agents.

Our first major showcases focus on solving two critical problems in modern agent architectures: Context Window Bloat and Tool Rigidity.

1. Solving Tool Rigidity (Auto-Pilot Discovery)

Agents are traditionally hard-coded with a static list of tools. If a user asks for something outside that list, the agent hallucinates or fails. The auto-discovery-url-to-markdown examples demonstrate how to give your agents true autonomy. By connecting to the Neonia Gateway, the agent can dynamically search for missing capabilities, read the tool's schema, and execute it on the fly without human intervention.

2. Solving Context Bloat (Zero-Bloat Data Processing)

Traditionally, when an agent needs to extract data from a large 5MB JSON file, it loads the entire file into its context window, causing massive token consumption, high latency, and LLM "amnesia". By connecting to the Neonia MCP Gateway (mcp.neonia.io/mcp?tools=neo_data_jq_filter), our zero-bloat-jq-filter agents explicitly bind the Wasm-powered JQ Filter tool. The agent executes queries on the remote server and receives only the filtered result (e.g. $651,758.23), saving ~50,000+ tokens per request and responding almost instantly.

3. Stateful Memory Note (stateful-cloud-memory)

Agents typically suffer from absolute amnesia between sessions. If a user states a preference or business rule, it is lost unless hardcoded into the system prompt. The stateful-cloud-memory examples demonstrate how to create stateful agents that use Neonia's neo_sys_memory_note tool to dynamically store and recall rules (like custom personas or user preferences) across completely isolated sessions without needing a custom database.

(More examples covering vision extraction, dynamic execution, and multi-agent orchestration will be added soon!)

Examples Provided

This repository includes implementations of "Zero-Bloat Data Processing", "Auto-Pilot Tool Discovery", and "Stateful Memory Note" across major agentic frameworks in 3 different languages:

1. Python (LangGraph)

A deterministic workflow using LangChain and LangGraph to build a reactive agent (create_agent) that dynamically wraps MCP capabilities into native LangChain @tool instances.

  • Directories: python/langgraph/zero-bloat-jq-filter, python/langgraph/chained-json-jq-filter, python/langgraph/auto-discovery-url-to-markdown, python/langgraph/stateful-cloud-memory
  • Setup: uv sync && uv run python agent.py

2. Python (SmolAgents)

A self-assembling agent using Hugging Face's SmolAgents and LiteLLM. Demonstrates subclassing smolagents.Tool for synchronous forward execution wrapped around an asynchronous Streamable HTTP session.

  • Directories: python/smolagents/zero-bloat-jq-filter, python/smolagents/chained-json-jq-filter, python/smolagents/auto-discovery-url-to-markdown
  • Setup: uv sync && uv run python main.py

3. TypeScript (Vercel AI SDK)

An integration with the Vercel AI SDK utilizing the official @modelcontextprotocol/sdk and @openrouter/ai-sdk-provider. Demonstrates proper multi-turn tool calling and schema mapping for Claude 3.7 Sonnet.

  • Directories: typescript/vercel-ai-sdk/zero-bloat-jq-filter, typescript/vercel-ai-sdk/chained-json-jq-filter, typescript/vercel-ai-sdk/auto-discovery-url-to-markdown, typescript/vercel-ai-sdk/stateful-cloud-memory
  • Setup: npm install && npm start

4. Rust (Rig)

A statically-typed integration using the Rig agent framework and rust-mcp-sdk. Demonstrates bridging an initialized MCP client session into Rust's strong type system.

  • Directories: rust/rig/zero-bloat-jq-filter, rust/rig/chained-json-jq-filter, rust/rig/auto-discovery-url-to-markdown, rust/rig/stateful-cloud-memory
  • Setup: cargo run

Prerequisites

To run these examples, you will need:

  1. A Neonia API Key (NEONIA_API_KEY)
  2. An OpenRouter API Key (OPENROUTER_API_KEY)

Configure these in the .env file within the specific example directory you wish to run.

Ecosystem Architecture

agent-mcp-examples/
├── typescript/                 # TypeScript Ecosystem
│   └── vercel-ai-sdk/          # Vercel AI SDK Framework
│       ├── zero-bloat-jq-filter/           # Single-tool Data Processing
│       ├── chained-json-jq-filter/         # Multi-tool Chained Data Processing
│       ├── auto-discovery-url-to-markdown/ # Auto-Pilot Tool Discovery
│       └── stateful-cloud-memory/          # System Memory Note Persistence
│
├── python/                     # Python Ecosystem
│   ├── langgraph/              # LangGraph Framework
│   │   ├── zero-bloat-jq-filter/
│   │   ├── chained-json-jq-filter/
│   │   ├── auto-discovery-url-to-markdown/
│   │   └── stateful-cloud-memory/
│   └── smolagents/             # SmolAgents Framework
│       ├── zero-bloat-jq-filter/
│       ├── chained-json-jq-filter/
│       ├── auto-discovery-url-to-markdown/
│       └── stateful-cloud-memory/
│
└── rust/                       # Rust Ecosystem
    └── rig/                    # Rig Framework
        ├── zero-bloat-jq-filter/
        ├── chained-json-jq-filter/
        ├── auto-discovery-url-to-markdown/
        └── stateful-cloud-memory/

Available Examples

Each example is self-contained and demonstrates specific, production-ready architectural patterns over MCP.

1. Auto-Pilot Tool Discovery (auto-discovery-url-to-markdown)

Demonstrates how to give agents true autonomy. If an agent lacks a required capability, it dynamically searches the Neonia Gateway for a matching tool, reads its parameters, and executes it on the fly without human intervention.

2. Zero-Bloat Data Processing (zero-bloat-jq-filter)

Demonstrates how to safely process massive API payloads using a deterministic Wasm JQ filter at the edge, drastically reducing LLM token context usage and preventing hallucination.

3. Chained Data Execution (chained-json-jq-filter)

Demonstrates how to safely process massive API payloads using a chained data workflow. The agent uses neo_web_json_fetch to retrieve remote JSON and stores it on the Gateway, returning a lightweight pointer. It then passes this pointer to a deterministic Wasm JQ filter (neo_data_jq_filter) to extract exactly what it needs, keeping its context window incredibly small.

4. Stateful Memory Note (stateful-cloud-memory)

Demonstrates how to use the System Memory Note tool (neo_sys_memory_note) to allow an agent to remember personas or business rules across completely isolated sessions.

Getting Started

To run the examples, you will need an Anthropic API key (for the AI agent) and a free Neonia API key (for the Wasm MCP Gateway).

  1. Clone the repository:

    git clone https://github.com/neonia-io/agent-mcp-examples.git
    cd agent-mcp-examples
    
  2. Navigate to the example you want to try:

    cd typescript/vercel-ai-sdk/zero-bloat-jq-filter
    
  3. Set up environment variables:

    OPENROUTER_API_KEY="your-openrouter-key"
    NEONIA_API_KEY="your-neonia-key"
    

    (Note: The Neonia Gateway requires a free API key to authenticate MCP connections).

  4. Install dependencies and run:

    npm install
    npx tsx index.ts
    

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