Skip to main content
Open In ColabOpen on GitHub

ChatSeekrFlow

Seekr provides AI-powered solutions for structured, explainable, and transparent AI interactions.

本笔记本提供了快速入门Seekr聊天模型的概述。如需详细了解所有ChatSeekrFlow特性和配置,请访问API参考

概览

ChatSeekrFlow 类包装了托管在 SeekrFlow 上的聊天模型端点,可与 LangChain 应用程序实现无缝集成。

集成详情

本地可序列化的软件包下载最新包裹
ChatSeekrFlowseekraibetaPyPI - DownloadsPyPI - Version

模型特性

工具调用结构化输出JSON模式图像输入音频输入视频输入令牌级流式传输原生异步令牌使用量对数概率

支持的方法

ChatSeekrFlow 支持 ChatModel 的所有方法,异步API除外

端点要求

服务端点 ChatSeekrFlow 包含的格式 必须 兼容OpenAI的聊天输入/输出格式。它可以用于:

  1. 微调后的Seekr模型
  2. 自定义SeekrFlow模型
  3. 使用Seekr检索系统的RAG赋能模型

有关异步用法,请参阅 AsyncChatSeekrFlow(即将推出)。

LangChain中ChatSeekrFlow的入门指南

本笔记本介绍了如何在 LangChain 中将 SeekrFlow 用作聊天模型。

设置

确保已安装必要的依赖项:

pip install seekrai langchain langchain-community

你还需要一个来自 Seekr 的 API 密钥来验证请求。

# Standard library
import getpass
import os

# Third-party
from langchain.prompts import ChatPromptTemplate
from langchain.schema import HumanMessage
from langchain_core.runnables import RunnableSequence

# OSS SeekrFlow integration
from langchain_seekrflow import ChatSeekrFlow
from seekrai import SeekrFlow

API密钥设置

你需要将 API 密钥设置为环境变量,以验证请求的身份。

运行下面的单元格。

或者在运行查询之前手动分配它:

SEEKR_API_KEY = "your-api-key-here"
os.environ["SEEKR_API_KEY"] = getpass.getpass("Enter your Seekr API key:")

实例化

os.environ["SEEKR_API_KEY"]
seekr_client = SeekrFlow(api_key=SEEKR_API_KEY)

llm = ChatSeekrFlow(
client=seekr_client, model_name="meta-llama/Meta-Llama-3-8B-Instruct"
)

调用

response = llm.invoke([HumanMessage(content="Hello, Seekr!")])
print(response.content)
Hello there! I'm Seekr, nice to meet you! What brings you here today? Do you have a question, or are you looking for some help with something? I'm all ears (or rather, all text)!

链式调用

prompt = ChatPromptTemplate.from_template("Translate to French: {text}")

chain: RunnableSequence = prompt | llm
result = chain.invoke({"text": "Good morning"})
print(result)
content='The translation of "Good morning" in French is:\n\n"Bonne journée"' additional_kwargs={} response_metadata={}
def test_stream():
"""Test synchronous invocation in streaming mode."""
print("\n🔹 Testing Sync `stream()` (Streaming)...")

for chunk in llm.stream([HumanMessage(content="Write me a haiku.")]):
print(chunk.content, end="", flush=True)


# ✅ Ensure streaming is enabled
llm = ChatSeekrFlow(
client=seekr_client,
model_name="meta-llama/Meta-Llama-3-8B-Instruct",
streaming=True, # ✅ Enable streaming
)

# ✅ Run sync streaming test
test_stream()

🔹 Testing Sync `stream()` (Streaming)...
Here is a haiku:

Golden sunset fades
Ripples on the quiet lake
Peaceful evening sky

错误处理与调试

# Define a minimal mock SeekrFlow client
class MockSeekrClient:
"""Mock SeekrFlow API client that mimics the real API structure."""

class MockChat:
"""Mock Chat object with a completions method."""

class MockCompletions:
"""Mock Completions object with a create method."""

def create(self, *args, **kwargs):
return {
"choices": [{"message": {"content": "Mock response"}}]
} # Mimic API response

completions = MockCompletions()

chat = MockChat()


def test_initialization_errors():
"""Test that invalid ChatSeekrFlow initializations raise expected errors."""

test_cases = [
{
"name": "Missing Client",
"args": {"client": None, "model_name": "seekrflow-model"},
"expected_error": "SeekrFlow client cannot be None.",
},
{
"name": "Missing Model Name",
"args": {"client": MockSeekrClient(), "model_name": ""},
"expected_error": "A valid model name must be provided.",
},
]

for test in test_cases:
try:
print(f"Running test: {test['name']}")
faulty_llm = ChatSeekrFlow(**test["args"])

# If no error is raised, fail the test
print(f"❌ Test '{test['name']}' failed: No error was raised!")
except Exception as e:
error_msg = str(e)
assert test["expected_error"] in error_msg, f"Unexpected error: {error_msg}"
print(f"✅ Expected Error: {error_msg}")


# Run test
test_initialization_errors()
Running test: Missing Client
✅ Expected Error: SeekrFlow client cannot be None.
Running test: Missing Model Name
✅ Expected Error: A valid model name must be provided.

API 参考