使用 Litefuse 实现 Novita AI 的可观测性

本指南将介绍如何将 Novita AI 与 Litefuse 集成。Novita AI 用于对话、语言与代码的 API 端点与 OpenAI 的 API 完全兼容。这让我们可以使用 Litefuse 的 OpenAI 替换方案来追踪应用的所有部分。

什么是 Novita AI? Novita AI 是一个 AI 云平台,借助经济实惠且可靠的 GPU 云基础设施,帮助开发者通过简单的 API 轻松部署 AI 模型。你可以在这里 体验 Novita AI 的 Llama 3 API 演示。

什么是 Litefuse? Litefuse 是一个开源的 AI Agent 可观测性与评估平台,帮助团队追踪 API 调用、监控性能并调试 AI 应用中的问题。

第一步:安装依赖

确保已安装所需的 Python 包:

%pip install openai langfuse

第二步:设置环境变量

import os
 
# Get keys for your project from the project settings page
# https://litefuse.cloud
 
os.environ["LANGFUSE_PUBLIC_KEY"] = "pk-..." 
os.environ["LANGFUSE_SECRET_KEY"] = "sk-..."
os.environ["LANGFUSE_BASE_URL"] = "https://litefuse.cloud"
 
 
# Get your Novita AI API key from the project settings page
os.environ["NOVITA_API_KEY"] = "..."

第三步:Litefuse OpenAI 替换方案

在这一步,我们通过 from langfuse.openai import openai 使用原生的 OpenAI 替换方案

要开始通过 OpenAI 客户端库使用 Novita AI,请将你的 Novita AI API Key 传给 api_key 选项,并将 base_url 改为 https://api.novita.ai/v3/openai

# instead of import openai:
from langfuse.openai import openai
 
client = openai.OpenAI(
  api_key=os.environ.get("NOVITA_API_KEY"),
  base_url="https://api.novita.ai/v3/openai",
)
ℹ️

注意: OpenAI 替换方案与 低层级 Litefuse Python SDK 以及 @observe() 装饰器 完全兼容,可以追踪应用的所有部分。

第四步:运行示例

下面的代码演示了如何使用受追踪的 OpenAI 客户端调用 Novita AI 的对话模型。所有 API 调用都会被 Litefuse 自动追踪。

client = openai.OpenAI(
  api_key=os.environ.get("NOVITA_API_KEY"),
  base_url="https://api.novita.ai/v3/openai",
)
 
response = client.chat.completions.create(
  model="meta-llama/llama-3.1-70b-instruct",
  messages=[
    {"role": "system", "content": "Act like you are a helpful assistant."},
    {"role": "user", "content": "What are the famous attractions in San Francisco?"},
  ]
)
 
print(response.choices[0].message.content)

第五步:在 Litefuse 中查看 trace

运行示例模型调用后,你可以在 Litefuse 中查看 trace。你将看到关于 Novita AI 调用的详细信息,包括:

  • 请求参数(模型、messages、temperature 等)
  • 响应内容
  • token 使用统计
  • 延迟指标

Litefuse trace 示例

Litefuse 中的公开示例 trace 链接

Interoperability with the Python SDK

You can use this integration together with the Litefuse SDKs to add additional attributes to the observation.

The @observe() decorator provides a convenient way to automatically wrap your instrumented code and add additional attributes to the observation.

from langfuse import observe, propagate_attributes, get_client
 
langfuse = get_client()
 
@observe()
def my_llm_pipeline(input):
    # Add additional attributes (user_id, session_id, metadata, version, tags) to all spans created within this execution scope
    with propagate_attributes(
        user_id="user_123",
        session_id="session_abc",
        tags=["agent", "my-observation"],
        metadata={"email": "user@litefuse.ai"},
        version="1.0.0"
    ):
 
        # YOUR APPLICATION CODE HERE
        result = call_llm(input)
 
        return result
 
# Run the function
my_llm_pipeline("Hi")

Learn more about using the Decorator in the Langfuse SDK instrumentation docs.

Troubleshooting

No observations appearing

First, enable debug mode in the Python SDK:

export LANGFUSE_DEBUG="True"

Then run your application and check the debug logs:

  • OTel observations appear in the logs: Your application is instrumented correctly but observations are not reaching Litefuse. To resolve this:
    1. Call langfuse.flush() at the end of your application to ensure all observations are exported.
    2. Verify that you are using the correct API keys and base URL.
  • No OTel spans in the logs: Your application is not instrumented correctly. Make sure the instrumentation runs before your application code.
Unwanted observations in Litefuse

The Langfuse SDK is based on OpenTelemetry. Other libraries in your application may emit OTel spans that are not relevant to you. These still count toward your billable units, so you should filter them out. See Unwanted spans in Litefuse for details.

Missing attributes

Some attributes may be stored in the metadata object of the observation rather than being mapped to the Litefuse data model. If a mapping or integration does not work as expected, please raise an issue on GitHub.

Next Steps

Once you have instrumented your code, you can manage, evaluate and debug your application:

Interoperability with the Python SDK

  • 查看 Novita AI 文档 了解可用模型和 API 选项的详细信息。
  • 访问 Litefuse 了解更多关于 LLM 应用监控与追踪的能力。
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