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Infrastructure for efficient and scalable AI applications.

Project description

ai-infra

Infrastructure for efficient and scalable AI applications: clean LLM interfaces, composable graphs, and MCP client/server utilities. Batteries-included quickstarts help you ship fast.

  • LLM: simple chat, agents with tools, streaming, retries, structured output, HITL hooks
  • Graph: small-to-large workflows using LangGraph with typed state and tracing
  • MCP: multi-server client, tool discovery, OpenMCP (OpenAPI-like) doc generation

Install

  • Python: 3.11 – 3.13
  • Package manager: Poetry (recommended) or pip

Using Poetry (dev):

poetry install
poetry shell

Using pip (library use):

pip install ai-infra

Configure providers (env)

Create a .env (or export in your shell) with any providers you plan to use.

# OpenAI
export OPENAI_API_KEY=...
# Anthropic
export ANTHROPIC_API_KEY=...
# Google Generative AI
export GOOGLE_API_KEY=...
# xAI
export XAI_API_KEY=...

Optional: MCP HTTP headers for servers you call through the client.

export MCP_AUTH_TOKEN=...

Quickstarts

Below are tiny copy/paste snippets and how to run included examples.

LLM: chat (sync)

from ai_infra.llm import CoreLLM, Providers, Models

llm = CoreLLM()
resp = llm.chat(
    user_msg="One fun fact about the moon?",
    system="You are concise.",
    provider=Providers.openai,
    model_name=Models.openai.gpt_4o.value,
)
print(resp)

Run the included example (calls a main() function):

python -c "from ai_infra.llm.examples.02_llm_chat_basic import main; main()"

LLM: agent (tools, sync)

from ai_infra.llm import CoreAgent, Providers, Models

agent = CoreAgent()
resp = agent.run_agent(
    messages=[{"role": "user", "content": "Introduce yourself in one sentence."}],
    provider=Providers.openai,
    model_name=Models.openai.gpt_4o.value,
    model_kwargs={"temperature": 0.7},
)
print(getattr(resp, "content", resp))

Run the included example:

python -c "from ai_infra.llm.examples.01_agent_basic import main; main()"

LLM: token streaming (async)

import asyncio
from ai_infra.llm import CoreLLM, Providers, Models

async def demo():
    llm = CoreLLM()
    async for token, meta in llm.stream_tokens(
        "Stream one short paragraph about Mars.",
        provider=Providers.openai,
        model_name=Models.openai.gpt_4o.value,
    ):
        print(token, end="", flush=True)

asyncio.run(demo())

See more examples in src/ai_infra/llm/examples:

  • 03_structured_output.py, 04_agent_stream.py, 05_tool_controls.py, 06_hitl.py, 07_retry.py, 08_agent_stream_tokens.py, 09_chat_stream.py

Graph: minimal state machine

from typing_extensions import TypedDict
from langgraph.graph import END
from ai_infra.graph.core import CoreGraph
from ai_infra.graph.models import Edge, ConditionalEdge

class MyState(TypedDict):
    value: int

def inc(s: MyState) -> MyState:
    s["value"] += 1
    return s

def mul(s: MyState) -> MyState:
    s["value"] *= 2
    return s

graph = CoreGraph(
    state_type=MyState,
    node_definitions=[inc, mul],
    edges=[
        Edge(start="inc", end="mul"),
        ConditionalEdge(
            start="mul", router_fn=lambda s: "inc" if s["value"] < 40 else END, targets=["inc", END]
        ),
    ],
)

print(graph.run({"value": 1}))

Run the included example:

python -c "from ai_infra.graph.examples.01_graph_basic import main; main()"

See also: 02_graph_stream_values.py

MCP: multi-server client

import asyncio
from ai_infra.mcp.client.core import CoreMCPClient

async def main():
    client = CoreMCPClient([
        {"transport": "streamable_http", "url": "http://127.0.0.1:8000/api/mcp", "headers": {"Authorization": "Bearer $MCP_AUTH_TOKEN"}},
        # {"transport": "stdio", "command": "./your-mcp-server", "args": []},
        # {"transport": "sse", "url": "http://127.0.0.1:8001/sse"},
    ])

    await client.discover()
    tools = await client.list_tools()
    print("Discovered tools:", tools)

    docs = await client.get_openmcp()  # or client.get_openmcp("your_server_name")
    print("OpenMCP doc keys:", list(docs.keys()))

asyncio.run(main())

Run the included example:

python -m ai_infra.mcp.examples.01_mcps

Running all quickstarts

If you prefer a single runner command, add a tiny script like this locally:

# quickstart.py
import sys

M = {
    "llm_agent_basic": "ai_infra.llm.examples.01_agent_basic:main",
    "llm_chat_basic": "ai_infra.llm.examples.02_llm_chat_basic:main",
    "graph_basic": "ai_infra.graph.examples.01_graph_basic:main",
    "mcp_discover": "ai_infra.mcp.examples.01_mcps:__main__",
}

if __name__ == "__main__":
    key = sys.argv[1]
    mod, _, func = M[key].partition(":")
    if func == "__main__":
        import runpy; runpy.run_module(mod, run_name="__main__")
    else:
        mod = __import__(mod, fromlist=[func])
        getattr(mod, func)()

Run:

python quickstart.py llm_chat_basic
python quickstart.py graph_basic
python quickstart.py llm_agent_basic
python quickstart.py mcp_discover

Testing and quality

  • Unit tests: pytest
    • pytest -q
  • Lint: ruff
    • ruff check src tests
  • Types: mypy
    • mypy src

Tip: add a test_examples.py that imports and runs the example main() functions to smoke test provider wiring without hitting network (use mocks).

Project layout

  • src/ai_infra/llm: core LLM and Agent APIs, providers, tools, and utils
  • src/ai_infra/graph: CoreGraph wrapper, typed models, and utilities
  • src/ai_infra/mcp: MCP client, examples, and server stubs
  • tests: add your unit/integration tests here

Notes and roadmap

  • Providers: OpenAI, Anthropic, Google GenAI, xAI (via langchain providers)
  • Features include structured output, retries, fallbacks, streaming, and tool call controls
  • MCP doc generation (OpenMCP) is available via CoreMCPClient.get_openmcp()
  • Nice-to-haves: add a simple example runner module; more test coverage around examples and MCP flows

License

MIT

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