Einrichtung
pip install langchain langchain-openai openai
Chat-Modelle
VerwendeChatOpenAI mit der Base URL von Venice:
from langchain_openai import ChatOpenAI
llm = ChatOpenAI(
model="venice-uncensored-1-2",
api_key="your-venice-api-key",
base_url="https://api.venice.ai/api/v1",
temperature=0.7,
)
response = llm.invoke("Explain privacy-preserving AI in 2 sentences.")
print(response.content)
Streaming
for chunk in llm.stream("Write a haiku about decentralization."):
print(chunk.content, end="", flush=True)
Embeddings
from langchain_openai import OpenAIEmbeddings
embeddings = OpenAIEmbeddings(
model="text-embedding-bge-m3",
api_key="your-venice-api-key",
base_url="https://api.venice.ai/api/v1",
check_embedding_ctx_length=False, # Bei Venice erforderlich
)
vectors = embeddings.embed_documents([
"Venice AI provides private inference.",
"No data is retained after processing.",
])
print(f"Embedding dimension: {len(vectors[0])}")
Chains
Einfache Chain mit Prompt-Template
from langchain_core.prompts import ChatPromptTemplate
prompt = ChatPromptTemplate.from_messages([
("system", "You are a {role}. Answer concisely."),
("user", "{question}"),
])
chain = prompt | llm
response = chain.invoke({"role": "privacy expert", "question": "Why does zero data retention matter?"})
print(response.content)
Sequenzielle Chain
from langchain_core.output_parsers import StrOutputParser
# Chain 1: Themen-Zusammenfassung generieren
summarizer = ChatPromptTemplate.from_messages([
("user", "Summarize this topic in 3 bullet points: {topic}")
]) | llm | StrOutputParser()
# Chain 2: Fragen aus der Zusammenfassung erzeugen
questioner = ChatPromptTemplate.from_messages([
("user", "Based on this summary, generate 3 thought-provoking questions:\n{summary}")
]) | llm | StrOutputParser()
# Komposition
summary = summarizer.invoke({"topic": "decentralized AI inference"})
questions = questioner.invoke({"summary": summary})
print(questions)
RAG-Pipeline
Baue eine Retrieval-Augmented-Generation-Pipeline mit Venice:from langchain_openai import ChatOpenAI, OpenAIEmbeddings
from langchain_community.vectorstores import FAISS
from langchain_core.prompts import ChatPromptTemplate
from langchain_core.runnables import RunnablePassthrough
from langchain_core.output_parsers import StrOutputParser
# Venice-Modelle initialisieren
llm = ChatOpenAI(
model="zai-org-glm-5-1",
api_key="your-venice-api-key",
base_url="https://api.venice.ai/api/v1",
)
embeddings = OpenAIEmbeddings(
model="text-embedding-bge-m3",
api_key="your-venice-api-key",
base_url="https://api.venice.ai/api/v1",
check_embedding_ctx_length=False,
)
# Dokumente laden und splitten
documents = [
"Venice AI provides private, uncensored AI inference with zero data retention.",
"The Venice API is OpenAI-compatible, supporting chat completions, images, audio, video, and embeddings.",
"Venice supports function calling, structured outputs, web search, and reasoning models.",
"Privacy levels include Private (zero retention) and Anonymized (third-party processed).",
]
# Vector Store erstellen
vectorstore = FAISS.from_texts(documents, embeddings)
retriever = vectorstore.as_retriever(search_kwargs={"k": 2})
# RAG-Prompt
rag_prompt = ChatPromptTemplate.from_messages([
("system", "Answer the question based only on the following context:\n\n{context}"),
("user", "{question}"),
])
# RAG-Chain
def format_docs(docs):
return "\n\n".join(doc.page_content for doc in docs)
rag_chain = (
{"context": retriever | format_docs, "question": RunnablePassthrough()}
| rag_prompt
| llm
| StrOutputParser()
)
answer = rag_chain.invoke("What privacy levels does Venice offer?")
print(answer)
Function Calling mit Agenten
from langchain_core.tools import tool
from langchain.agents import create_tool_calling_agent, AgentExecutor
from langchain_core.prompts import ChatPromptTemplate
# Verwende ein Modell, das Function Calling unterstützt
llm = ChatOpenAI(
model="zai-org-glm-5-1",
api_key="your-venice-api-key",
base_url="https://api.venice.ai/api/v1",
)
@tool
def get_venice_model_price(model_id: str) -> str:
"""Get the pricing for a Venice AI model."""
prices = {
"venice-uncensored-1-2": "Input: $0.20/1M, Output: $0.90/1M",
"zai-org-glm-5-1": "Input: $1.75/1M, Output: $5.50/1M",
"qwen3-5-9b": "Input: $0.10/1M, Output: $0.15/1M",
}
return prices.get(model_id, f"Model {model_id} not found in price list.")
prompt = ChatPromptTemplate.from_messages([
("system", "You help users find the right Venice AI model. Use tools when needed."),
("placeholder", "{chat_history}"),
("user", "{input}"),
("placeholder", "{agent_scratchpad}"),
])
agent = create_tool_calling_agent(llm, [get_venice_model_price], prompt)
executor = AgentExecutor(agent=agent, tools=[get_venice_model_price], verbose=True)
result = executor.invoke({"input": "What's the cheapest Venice text model?", "chat_history": []})
print(result["output"])
Structured Output
from pydantic import BaseModel, Field
class MovieReview(BaseModel):
title: str = Field(description="Movie title")
rating: float = Field(description="Rating out of 10")
summary: str = Field(description="One-sentence summary")
structured_llm = llm.with_structured_output(MovieReview)
review = structured_llm.invoke("Review the movie Inception")
print(f"{review.title}: {review.rating}/10 — {review.summary}")
Web-Search-Integration
Nutze Venices integrierte Websuche übervenice_parameters:
from langchain_openai import ChatOpenAI
llm_with_search = ChatOpenAI(
model="venice-uncensored",
api_key="your-venice-api-key",
base_url="https://api.venice.ai/api/v1",
extra_body={
"venice_parameters": {
"enable_web_search": "auto"
}
}
)
response = llm_with_search.invoke("What are the latest developments in AI this week?")
print(response.content)
response = llm.invoke(
"What are the latest developments in AI this week?",
extra_body={"venice_parameters": {"enable_web_search": "auto"}}
)
Empfohlene Modelle für LangChain
| Anwendungsfall | Modell | Warum |
|---|---|---|
| Allgemeine Chains | venice-uncensored | Schnell, günstig, unzensiert |
| Komplexes Reasoning | zai-org-glm-5-1 | Bestes privates Flaggschiff-Modell |
| Function Calling | zai-org-glm-5-1 | Zuverlässige Tool-Nutzung |
| Vision + Text | qwen3-vl-235b-a22b | Fortschrittliches Vision-Verständnis |
| Code-Generierung | qwen3-coder-480b-a35b-instruct | Für Code optimiert |
| Embeddings (RAG) | text-embedding-bge-m3 | Private Embeddings |
| Budget / hohes Volumen | qwen3-5-9b | $0,10/1M Input |
Alle Modelle ansehen
Durchsuche alle Venice-Modelle mit Preisen und Funktionen