class ChatGoogleBaseWhether to disable streaming.
If streaming is bypassed, then stream() will defer to
invoke().
Frequency penalty applied to the next token's logprobs, multiplied by the number of times each token has been seen in the respponse so far. A positive penalty will discourage the use of tokens that have already been used, proportional to the number of times the token has been used: The more a token is used, the more dificult it is for the model to use that token again increasing the vocabulary of responses. Caution: A negative penalty will encourage the model to reuse tokens proportional to the number of times the token has been used. Small negative values will reduce the vocabulary of a response. Larger negative values will cause the model to start repeating a common token until it hits the maxOutputTokens limit.
Custom metadata labels to associate with the request. Only supported on Vertex AI (Google Cloud Platform). Labels are key-value pairs where both keys and values must be strings.
Example:
{
labels: {
"team": "research",
"component": "frontend",
"environment": "production"
}
}A path to the module that contains the class, eg. ["langchain", "llms"] Usually should be the same as the entrypoint the class is exported from.
Whether to return log probabilities of the output tokens or not. If true, returns the log probabilities of each output token returned in the content of message.
Maximum number of tokens to generate in the completion. This may include reasoning tokens (for backwards compatibility).
The maximum number of the output tokens that will be used for the "thinking" or "reasoning" stages.
Model to use
Model to use
Alias for model
Version of AIMessage output format to store in message content.
AIMessage.contentBlocks will lazily parse the contents of content into a
standard format. This flag can be used to additionally store the standard format
as the message content, e.g., for serialization purposes.
.contentBlocks).contentBlocks)You can also set LC_OUTPUT_VERSION as an environment variable to "v1" to
enable this by default.
Presence penalty applied to the next token's logprobs if the token has already been seen in the response. This penalty is binary on/off and not dependant on the number of times the token is used (after the first). Use frequencyPenalty for a penalty that increases with each use. A positive penalty will discourage the use of tokens that have already been used in the response, increasing the vocabulary. A negative penalty will encourage the use of tokens that have already been used in the response, decreasing the vocabulary.
The modalities of the response.
Seed used in decoding. If not set, the request uses a randomly generated seed.
Speech generation configuration. You can use either Google's definition of the speech configuration, or a simplified version we've defined (which can be as simple as the name of a pre-defined voice).
Whether or not to include usage data, like token counts in the streamed response chunks.
Sampling temperature to use
Top-k changes how the model selects tokens for output.
A top-k of 1 means the selected token is the most probable among all tokens in the model’s vocabulary (also called greedy decoding), while a top-k of 3 means that the next token is selected from among the 3 most probable tokens (using temperature).
An integer between 0 and 5 specifying the number of most likely tokens to return at each token position, each with an associated log probability. logprobs must be set to true if this parameter is used.
Top-p changes how the model selects tokens for output.
Tokens are selected from most probable to least until the sum of their probabilities equals the top-p value.
For example, if tokens A, B, and C have a probability of .3, .2, and .1 and the top-p value is .5, then the model will select either A or B as the next token (using temperature).
Whether to print out response text.
Integration with a Google chat model.