Przewodnik integracji

LangChain + OrcaRouter

LangChain's ChatOpenAI class takes a base_url parameter. Pointing it at OrcaRouter gives every chain, agent, and retriever automatic failover and zero-markup pricing without touching the rest of your graph.

Kroki konfiguracji

Podłącz OrcaRouter w 5 minut

  1. 1.Install: pip install langchain-openai
  2. 2.Import ChatOpenAI from langchain_openai
  3. 3.Construct with base_url='https://api.orcarouter.ai/v1' and api_key='sk-orca-…'
  4. 4.Set the model to any OrcaRouter-supported model ID.
  5. 5.Use it anywhere LangChain expects a chat model — chains, agents, tools.
Przykładowa konfiguracja
from langchain_openai import ChatOpenAI

llm = ChatOpenAI(
    base_url="https://api.orcarouter.ai/v1",
    api_key="sk-orca-...",
    model="claude-sonnet-4",
    temperature=0,
)

response = llm.invoke("Explain retrieval-augmented generation in one paragraph.")
print(response.content)
Dlaczego routować LangChain przez OrcaRouter?

LangChain agents do lots of short, bursty calls that are sensitive to rate limits. OrcaRouter spreads those calls across healthy providers automatically and gives you one cost-attribution view for the whole chain.

Inne integracje

Gotów kierować LangChain przez OrcaRouter?

Uzyskaj klucz API i kieruj LangChain przez OrcaRouter do 200+ modeli — zero marży.

Uzyskaj klucz API
© 2026 OrcaRouter