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API documentation for language_models
package.
Classes
CodeChatModel
CodeChatModel represents a model that is capable of completing code.
.. rubric:: Examples
code_chat_model = CodeChatModel.from_pretrained("codechat-bison@001")
code_chat = code_chat_model.start_chat( max_output_tokens=128, temperature=0.2, )
code_chat.send_message("Please help write a function to calculate the min of two numbers")
CodeChatSession
CodeChatSession represents a chat session with code chat language model.
Within a code chat session, the model keeps context and remembers the previous converstion.
CodeGenerationModel
A language model that generates code.
.. rubric:: Examples
Getting answers:
generation_model = CodeGenerationModel.from_pretrained("code-bison@001") print(generation_model.predict( prefix="Write a function that checks if a year is a leap year.", ))
completion_model = CodeGenerationModel.from_pretrained("code-gecko@001") print(completion_model.predict( prefix="def reverse_string(s):", ))
InputOutputTextPair
InputOutputTextPair represents a pair of input and output texts.
TextEmbedding
Contains text embedding vector.
TextEmbeddingModel
TextEmbeddingModel converts text into a vector of floating-point numbers.
Examples::
# Getting embedding:
model = TextEmbeddingModel.from_pretrained("textembedding-gecko@001")
embeddings = model.get_embeddings(["What is life?"])
for embedding in embeddings:
vector = embedding.values
print(len(vector))
TextGenerationModel
TextGenerationModel represents a general language model.
Examples::
# Getting answers:
model = TextGenerationModel.from_pretrained("text-bison@001")
model.predict("What is life?")
TextGenerationResponse
TextGenerationResponse represents a response of a language model. .. attribute:: text
The generated text
Scores for safety attributes. Learn more about the safety attributes here: https://cloud.google.com/vertex-ai/docs/generative-ai/learn/responsible-ai#safety_attribute_descriptions