pydantic_ai.settings
ModelSettings
Bases: TypedDict
Settings to configure an LLM.
Here we include only settings which apply to multiple models / model providers, though not all of these settings are supported by all models.
Source code in pydantic_ai_slim/pydantic_ai/settings.py
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max_tokens
instance-attribute
max_tokens: int
The maximum number of tokens to generate before stopping.
Supported by:
- Gemini
- Anthropic
- OpenAI
- Groq
- Cohere
- Mistral
- Bedrock
temperature
instance-attribute
temperature: float
Amount of randomness injected into the response.
Use temperature
closer to 0.0
for analytical / multiple choice, and closer to a model's
maximum temperature
for creative and generative tasks.
Note that even with temperature
of 0.0
, the results will not be fully deterministic.
Supported by:
- Gemini
- Anthropic
- OpenAI
- Groq
- Cohere
- Mistral
- Bedrock
top_p
instance-attribute
top_p: float
An alternative to sampling with temperature, called nucleus sampling, where the model considers the results of the tokens with top_p probability mass.
So 0.1 means only the tokens comprising the top 10% probability mass are considered.
You should either alter temperature
or top_p
, but not both.
Supported by:
- Gemini
- Anthropic
- OpenAI
- Groq
- Cohere
- Mistral
- Bedrock
timeout
instance-attribute
timeout: float | Timeout
Override the client-level default timeout for a request, in seconds.
Supported by:
- Gemini
- Anthropic
- OpenAI
- Groq
- Mistral
parallel_tool_calls
instance-attribute
parallel_tool_calls: bool
Whether to allow parallel tool calls.
Supported by:
- OpenAI (some models, not o1)
- Groq
- Anthropic
seed
instance-attribute
seed: int
The random seed to use for the model, theoretically allowing for deterministic results.
Supported by:
- OpenAI
- Groq
- Cohere
- Mistral
presence_penalty
instance-attribute
presence_penalty: float
Penalize new tokens based on whether they have appeared in the text so far.
Supported by:
- OpenAI
- Groq
- Cohere
- Gemini
- Mistral
frequency_penalty
instance-attribute
frequency_penalty: float
Penalize new tokens based on their existing frequency in the text so far.
Supported by:
- OpenAI
- Groq
- Cohere
- Gemini
- Mistral