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Minimal LLM client getter for OpenAI Responses + OpenAI-compatible Chat Completions.

Project description

kantan-llm 😺✨

A tiny Python library that removes the boring boilerplate (keys/URLs/provider selection) so you can call LLMs with a single get_llm() 💨

Big idea: set env vars for the providers/models you use, then just do get_llm("model-name") and it “just connects” 😺✨

Supported providers (roughly) 🌍

  • OpenAI (Responses)
  • Anthropic (Claude via OpenAI-compatible SDK)
  • OpenRouter (OpenAI-compatible Chat)
  • Google (Gemini via OpenAI-compatible Chat)
  • LMStudio / Ollama / any OpenAI-compatible Chat

Install 📦

pip install kantan-llm

Quickstart 🚀

OpenAI (Responses API is the source of truth)

export OPENAI_API_KEY="sk-..."
from kantan_llm import get_llm

llm = get_llm("gpt-4.1-mini")
res = llm.responses.create(input="Say hi in one short line.")
print(res.output_text)

llm is OpenAI SDK compatible (unknown attributes delegate to the underlying client).

OpenAI-compatible (Chat Completions is the source of truth)

LMStudio (example: openai/gpt-oss-20b)

export LMSTUDIO_BASE_URL="http://192.168.11.16:1234"  # `/v1` is optional
from kantan_llm import get_llm

llm = get_llm("openai/gpt-oss-20b", provider="lmstudio")
cc = llm.chat.completions.create(messages=[{"role": "user", "content": "Return exactly: OK"}], max_tokens=16)
print(cc.choices[0].message.content)

Ollama (example)

export OLLAMA_BASE_URL="http://localhost:11434"  # `/v1` is optional
from kantan_llm import get_llm

llm = get_llm("llama3.2", provider="ollama")
cc = llm.chat.completions.create(messages=[{"role": "user", "content": "Return exactly: OK"}], max_tokens=16)
print(cc.choices[0].message.content)

Anthropic (Claude via OpenAI-compatible SDK)

export CLAUDE_API_KEY="sk-ant-..."
from kantan_llm import get_llm

llm = get_llm("claude-3-5-sonnet-latest")  # if `CLAUDE_API_KEY` exists -> provider=anthropic (inferred)
cc = llm.chat.completions.create(messages=[{"role": "user", "content": "Return exactly: OK"}], max_tokens=16)
print(cc.choices[0].message.content)

OpenRouter (includes Claude, etc.)

export OPENROUTER_API_KEY="..."
from kantan_llm import get_llm

llm = get_llm("anthropic/claude-3.5-sonnet", provider="openrouter")  # explicit is recommended (Anthropic takes precedence)
cc = llm.chat.completions.create(messages=[{"role": "user", "content": "Return exactly: OK"}], max_tokens=16)
print(cc.choices[0].message.content)

Google (Gemini via an OpenAI-compatible endpoint)

export GOOGLE_API_KEY="..."
from kantan_llm import get_llm

llm = get_llm("gemini-2.0-flash")
cc = llm.chat.completions.create(messages=[{"role": "user", "content": "Return exactly: OK"}], max_tokens=16)
print(cc.choices[0].message.content)

Provider rules 🧭

  • gpt-*openai
  • gemini-*google
  • claude-*anthropic (if CLAUDE_API_KEY is set) → openrouter (if OPENROUTER_API_KEY is set) → otherwise compat
  • If the model name is not recognizable, it picks the first available provider by env vars: lmstudioollamaopenrouteranthropicgoogle

Explicit provider 🎯

from kantan_llm import get_llm

llm = get_llm("gpt-4.1-mini", provider="openai")

Fallback (order = priority) 🧯

from kantan_llm import get_llm

llm = get_llm("gpt-4.1-mini", providers=["openai", "lmstudio", "openrouter"])

Tracing / Tracer 🧵

By default, get_llm() enables a simple tracer that prints input/output (colorized) for each LLM call.

from kantan_llm import get_llm
from kantan_llm.tracing import trace

llm = get_llm("gpt-4.1-mini")
with trace("workflow"):
    llm.responses.create(input="Say hi.")

More: docs/tracing.md

Async (ASGI) support

ASGI(FastAPI/Starlette)で event loop をブロックしないため、async 導線を提供します。

get_async_llm()(推奨)

  • kantan-llm の保証(正規化/フォールバック/ガード/トレース)を async でも維持します。

Async streaming (KantanAsyncLLM)

KantanAsyncLLM では streaming API を提供し、最終応答でまとめてトレースします。

from kantan_llm import get_async_llm

llm = get_async_llm("gpt-4.1-mini")
async with llm.responses.stream(input="Say hi.") as stream:
    async for _ in stream:
        pass
    final = await stream.get_final_response()
print(final.output_text)

Note: Some models (e.g. gpt-5-mini) may emit only response.output_item.* events without output_text/text deltas. KantanAsyncLLM tries output_text first, then stream deltas, then output_item text; if none exists, the stream completes but the traced output can be empty.

get_async_llm_client()(Escape hatch)

  • AsyncOpenAI の raw client を返します(互換性最大化、Agents SDK 注入向け)。
  • 注意: raw client 返却では API ガード / 自動トレーシングは行いません。
  • 代わりに model/provider/base_url を含む bundle を返し、正規化済み model 名を下流へ渡せます。

OpenAI Agents SDK integration

Agents SDK は AsyncOpenAI client を差し替え可能です。

  • デフォルト client を差し替える:
    • set_default_openai_client(AsyncOpenAI(...))
  • モデル単位で client を渡す:
    • OpenAIResponsesModel(..., openai_client=AsyncOpenAI(...))

In kantan-agents

kantan-agents (Agents SDK wrapper) uses the same two entry points:

  • set_default_openai_client(...)
  • OpenAIResponsesModel(..., openai_client=...)

kantan-llm で Agents SDK を使う場合の推奨:

  • 互換性優先: bundle = get_async_llm_client(...)
    • bundle.client を Agents SDK に渡す
    • bundle.model(正規化済み)を Agent/Model 側へ渡す
  • kantan のガード/トレースも使いたい: llm = get_async_llm(...)
    • ただし Agents SDK 側と二重トレースになり得るため、どちらでトレースするか方針を決める(下記)。

Tracing(二重計測を避ける)

Agents SDK 側にはトレーシング無効化の導線があります(例: set_tracing_disabled(True) や環境変数)。 運用では以下のどちらかを選びます。

  • A) Agents SDK のトレースを有効、kantan 側トレースは無効(または raw client を使う)
  • B) kantan のトレースを有効、Agents SDK 側トレースは無効

Search (SQLite) 🔎

Use SQLiteTracer as a lightweight search backend for traces/spans.

from kantan_llm.tracing import SpanQuery, TraceQuery
from kantan_llm.tracing.processors import SQLiteTracer

tracer = SQLiteTracer("traces.sqlite3")
traces = tracer.search_traces(query=TraceQuery(keywords=["hello"], limit=10))
spans = tracer.search_spans(query=SpanQuery(keywords=["hello"], limit=10))

More: docs/search.md Tutorial: docs/tutorial_trace_analysis.md

Examples 📚

  • examples/tracing_basic.py
  • examples/search_sqlite.py

Environment variables 🔐

  • OpenAI
    • OPENAI_API_KEY (required)
    • OPENAI_BASE_URL (optional)
  • Generic compatible (compat)
    • KANTAN_LLM_BASE_URL (required)
    • KANTAN_LLM_API_KEY (optional; falls back to a dummy value)
  • LMStudio
    • LMSTUDIO_BASE_URL (required)
  • Ollama
    • OLLAMA_BASE_URL (required)
  • OpenRouter
    • OPENROUTER_API_KEY (required)
  • Anthropic
    • CLAUDE_API_KEY (required)
    • CLAUDE_BASE_URL (optional)
  • Google
    • GOOGLE_API_KEY (required)
    • GOOGLE_BASE_URL (optional)

Error example 💥

  • Missing OpenAI key: python -c 'from kantan_llm import get_llm; get_llm(\"gpt-4.1-mini\")'[kantan-llm][E2] Missing OPENAI_API_KEY for provider: openai

Tests 🧪

Live integration tests (real APIs) are opt-in:

KANTAN_LLM_RUN_LIVE_TESTS=1 pytest -q -m integration

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