--- description: Start here to integrate Opik into your BytePlus-based genai application for end-to-end LLM observability, unit testing, and optimization. headline: BytePlus | Opik Documentation og:description: Learn to integrate Opik with BytePlus using the OpenAI SDK for seamless access to cutting-edge AI models and enterprise-grade security. og:site_name: Opik Documentation og:title: Integrate Opik with BytePlus for AI Solutions title: Observability for BytePlus with Opik --- [BytePlus](https://www.byteplus.com/) is ByteDance's AI-native enterprise platform offering ModelArk, a comprehensive Platform-as-a-Service (PaaS) solution for deploying and utilizing powerful large language models. It provides access to SkyLark models, DeepSeek V3.1, Kimi-K2, and other cutting-edge AI models with enterprise-grade security and scalability. This guide explains how to integrate Opik with BytePlus using the OpenAI SDK. BytePlus provides OpenAI-compatible API endpoints that allow you to use the standard OpenAI client with BytePlus models. ## Getting started First, ensure you have both `opik` and `openai` packages installed: ```bash pip install opik openai ``` You'll also need a BytePlus API key. Find a guide on creating your BytePlus API keys for model services [here](https://docs.byteplus.com/en/docs/ModelArk/1399008). ## Tracking BytePlus API calls ```python from opik.integrations.openai import track_openai from openai import OpenAI # Initialize the OpenAI client with BytePlus base URL client = OpenAI( base_url="https://ark.ap-southeast.bytepluses.com/api/v3", api_key="YOUR_BYTEPLUS_API_KEY" ) client = track_openai(client) response = client.chat.completions.create( model="kimi-k2-250711", # You can use any model available on BytePlus messages=[ {"role": "user", "content": "Hello, world!"} ], temperature=0.7, max_tokens=100 ) print(response.choices[0].message.content) ``` ## Advanced Usage ### Using with @track decorator You can combine the tracked client with Opik's `@track` decorator for comprehensive tracing: ```python from opik import track from opik.integrations.openai import track_openai from openai import OpenAI client = OpenAI( base_url="https://ark.ap-southeast.bytepluses.com/api/v3", api_key="YOUR_BYTEPLUS_API_KEY" ) client = track_openai(client) @track def analyze_data_with_ai(query: str): """Analyze data using BytePlus AI models.""" response = client.chat.completions.create( model="kimi-k2-250711", messages=[ {"role": "user", "content": query} ] ) return response.choices[0].message.content # Call the tracked function result = analyze_data_with_ai("Analyze this business data...") ``` ## Troubleshooting ### Common Issues 1. **Authentication Errors**: Ensure your API key is correct and has the necessary permissions 2. **Model Not Found**: Verify the model name is available on BytePlus 3. **Rate Limiting**: BytePlus may have rate limits; implement appropriate retry logic 4. **Base URL Issues**: Ensure the base URL is correct for your BytePlus deployment ### Getting Help - Check the [BytePlus API documentation](https://docs.byteplus.com/en/docs/ModelArk/) for detailed error codes - Contact BytePlus support for API-specific problems - Check Opik documentation for tracing and evaluation features ## Next Steps Once you have BytePlus integrated with Opik, you can: - [Evaluate your LLM applications](/evaluation/overview) using Opik's evaluation framework - [Create datasets](/evaluation/advanced/manage_datasets) to test and improve your models - [Set up feedback collection](/tracing/advanced/annotate_traces) to gather human evaluations - [Monitor performance](/tracing/concepts) across different models and configurations For more information about using Opik with OpenAI-compatible APIs, see the [OpenAI integration guide](/integrations/openai).