Skip to main content

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

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

ai_infra-0.1.23.tar.gz (81.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

ai_infra-0.1.23-py3-none-any.whl (107.2 kB view details)

Uploaded Python 3

File details

Details for the file ai_infra-0.1.23.tar.gz.

File metadata

  • Download URL: ai_infra-0.1.23.tar.gz
  • Upload date:
  • Size: 81.1 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.12.9

File hashes

Hashes for ai_infra-0.1.23.tar.gz
Algorithm Hash digest
SHA256 d4f9af3f720500c626d08bd1beaae2caf7acbbcf5d50b1bb2391985016df92bc
MD5 04018a69e779e136e92ea07f53be1dc5
BLAKE2b-256 60a9f172d8f19e3b0e9532c68e2ac5046cbd8a1b926e55fc0a866dc3cc75f3de

See more details on using hashes here.

File details

Details for the file ai_infra-0.1.23-py3-none-any.whl.

File metadata

  • Download URL: ai_infra-0.1.23-py3-none-any.whl
  • Upload date:
  • Size: 107.2 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.12.9

File hashes

Hashes for ai_infra-0.1.23-py3-none-any.whl
Algorithm Hash digest
SHA256 a30610aa224f255796350ce0ff33d2950d82f16d0d1228299eb9da21435291e8
MD5 83e9ac62575a3ae4c89e84481f0ea26c
BLAKE2b-256 011f49ec55e3765711b0ac4980c2651f860ffa0b741432dd91c32c21b6214646

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page