5.4 KiB
Few-Shot Inference for LLMs
This guide provides instructions on how to use Llama Stack’s chat_completion
API with a few-shot learning approach to enhance text generation. Few-shot examples enable the model to recognize patterns by providing labeled prompts, allowing it to complete tasks based on minimal prior examples.
Overview
Few-shot learning provides the model with multiple examples of input-output pairs. This is particularly useful for guiding the model's behavior in specific tasks, helping it understand the desired completion format and content based on a few sample interactions.
Implementation
-
Initialize the Client
Begin by setting up the
LlamaStackClient
to connect to the inference endpoint.from llama_stack_client import LlamaStackClient client = LlamaStackClient(base_url="http://localhost:5000")
-
Define Few-Shot Examples
Construct a series of labeled
UserMessage
andCompletionMessage
instances to demonstrate the task to the model. EachUserMessage
represents an input prompt, and eachCompletionMessage
is the desired output. The model uses these examples to infer the appropriate response patterns.from llama_stack_client.types import CompletionMessage, UserMessage few_shot_examples = messages=[ UserMessage(content="Have shorter, spear-shaped ears.", role="user"), CompletionMessage( content="That's Alpaca!", role="assistant", stop_reason="end_of_message", tool_calls=[], ), UserMessage( content="Known for their calm nature and used as pack animals in mountainous regions.", role="user", ), CompletionMessage( content="That's Llama!", role="assistant", stop_reason="end_of_message", tool_calls=[], ), UserMessage( content="Has a straight, slender neck and is smaller in size compared to its relative.", role="user", ), CompletionMessage( content="That's Alpaca!", role="assistant", stop_reason="end_of_message", tool_calls=[], ), UserMessage( content="Generally taller and more robust, commonly seen as guard animals.", role="user", ), ]
Note
- Few-Shot Examples: These examples show the model the correct responses for specific prompts.
- CompletionMessage: This defines the model's expected completion for each prompt.
-
Invoke
chat_completion
with Few-Shot ExamplesUse the few-shot examples as the message input for
chat_completion
. The model will use the examples to generate contextually appropriate responses, allowing it to infer and complete new queries in a similar format.response = client.inference.chat_completion( messages=few_shot_examples, model="Llama3.2-11B-Vision-Instruct" )
-
Display the Model’s Response
The
completion_message
contains the assistant’s generated content based on the few-shot examples provided. Output this content to see the model's response directly in the console.from termcolor import cprint cprint(f"> Response: {response.completion_message.content}", "cyan")
Few-shot learning with Llama Stack’s chat_completion
allows the model to recognize patterns with minimal training data, helping it generate contextually accurate responses based on prior examples. This approach is highly effective for guiding the model in tasks that benefit from clear input-output examples without extensive fine-tuning.
Complete code
Summing it up, here's the code for few-shot implementation with llama-stack:
from llama_stack_client import LlamaStackClient
from llama_stack_client.types import CompletionMessage, UserMessage
from termcolor import cprint
client = LlamaStackClient(base_url="http://localhost:5000")
response = client.inference.chat_completion(
messages=[
UserMessage(content="Have shorter, spear-shaped ears.", role="user"),
CompletionMessage(
content="That's Alpaca!",
role="assistant",
stop_reason="end_of_message",
tool_calls=[],
),
UserMessage(
content="Known for their calm nature and used as pack animals in mountainous regions.",
role="user",
),
CompletionMessage(
content="That's Llama!",
role="assistant",
stop_reason="end_of_message",
tool_calls=[],
),
UserMessage(
content="Has a straight, slender neck and is smaller in size compared to its relative.",
role="user",
),
CompletionMessage(
content="That's Alpaca!",
role="assistant",
stop_reason="end_of_message",
tool_calls=[],
),
UserMessage(
content="Generally taller and more robust, commonly seen as guard animals.",
role="user",
),
],
model="Llama3.2-11B-Vision-Instruct",
)
cprint(f"> Response: {response.completion_message.content}", "cyan")
With this fundamental, you should be well on your way to leveraging Llama Stack’s text generation capabilities! For more advanced features, refer to the Llama Stack Documentation.