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26 lines
800 B
Markdown
26 lines
800 B
Markdown
# Browser Use LLMs
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We officially support the following LLMs:
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- OpenAI
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- Anthropic
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- Google
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- Groq
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- Ollama
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- DeepSeek
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- Mistral
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## Mistral specifics
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Use `ChatMistral` with `MISTRAL_API_KEY` (and optional `MISTRAL_BASE_URL`). Structured outputs automatically strip unsupported JSON schema keywords (`minLength`, `maxLength`, `pattern`, `format`), and generation uses `max_tokens` plus the optional `safe_prompt` flag.
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- Cerebras
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## Migrating from LangChain
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Because of how we implemented the LLMs, we can technically support anything. If you want to use a LangChain model, you can use the `ChatLangchain` (NOT OFFICIALLY SUPPORTED) class.
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You can find all the details in the [LangChain example](/examples/models/langchain/example.py). We suggest you grab that code and use it as a reference.
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