420 lines
15 KiB
Markdown
420 lines
15 KiB
Markdown
# Guidance
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Text Generation Inference (TGI) now supports [JSON and regex grammars](#grammar-and-constraints) and [tools and functions](#tools-and-functions) to help developer guide LLM responses to fit their needs.
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These feature are available starting from version `1.4.3`. They are accessible via the [text_generation](https://pypi.org/project/text-generation/) library and is compatible with OpenAI's client libraries. The following guide will walk you through the new features and how to use them!
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## Quick Start
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Before we jump into the deep end, ensure your system is using TGI version `1.4.3` or later to access all the features we're about to explore in this guide.
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If you're not up to date, grab the latest version and let's get started!
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## Table of Contents 📚
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### Grammar and Constraints
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- [The Grammar Parameter](#the-grammar-parameter): Shape your AI's responses with precision.
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- [Constrain with Pydantic](#constrain-with-pydantic): Define a grammar using Pydantic models.
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- [JSON Schema Integration](#json-schema-integration): Fine grain control over your requests via JSON schema.
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- [Using the client](#using-the-client): Use TGI's client libraries to shape the AI's responses.
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### Tools and Functions
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- [The Tools Parameter](#the-tools-parameter): Enhance the AI's capabilities with predefined functions.
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- [Via the client](#text-generation-inference-client): Use TGI's client libraries to interact with the Messages API and Tool functions.
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- [OpenAI integration](#openai-integration): Use OpenAI's client libraries to interact with TGI's Messages API and Tool functions.
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## Grammar and Constraints 🛣️
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### The Grammar Parameter
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In TGI `1.4.3`, we've introduced the grammar parameter, which allows you to specify the format of the response you want from the AI. This is a game-changer for those who need precise control over the AI's output.
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Using curl, you can make a request to TGI's Messages API with the grammar parameter. This is the most primitive way to interact with the API and using [Pydantic](#constrain-with-pydantic) is recommended for ease of use and readability.
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```json
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curl localhost:3000/generate \
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-X POST \
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-H 'Content-Type: application/json' \
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-d '{
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"inputs": "I saw a puppy a cat and a raccoon during my bike ride in the park",
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"parameters": {
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"repetition_penalty": 1.3,
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"grammar": {
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"type": "json",
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"value": {
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"properties": {
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"location": {
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"type": "string"
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},
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"activity": {
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"type": "string"
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},
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"animals_seen": {
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"type": "integer",
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"minimum": 1,
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"maximum": 5
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},
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"animals": {
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"type": "array",
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"items": {
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"type": "string"
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}
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}
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},
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"required": ["location", "activity", "animals_seen", "animals"]
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}
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}
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}
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}'
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// {"generated_text":"{ \n\n\"activity\": \"biking\",\n\"animals\": [\"puppy\",\"cat\",\"raccoon\"],\n\"animals_seen\": 3,\n\"location\": \"park\"\n}"}
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```
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A grammar can be defined using Pydantic models, JSON schema, or regular expressions. The AI will then generate a response that conforms to the specified grammar.
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> Note: A grammar must compile to a intermediate representation to constrain the output. Grammar compliation is a computationally expensive and may take a few seconds to complete on the first request. Subsequent requests will use the cached grammar and will be much faster.
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### Constrain with Pydantic
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Pydantic is a powerful library for data validation and settings management. It's the perfect tool for crafting the a specific response format.
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Using Pydantic models we can define a similar grammar as the previous example in a shorter and more readable way.
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```python
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import requests
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from pydantic import BaseModel, conint
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from typing import List
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class Animals(BaseModel):
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location: str
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activity: str
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animals_seen: conint(ge=1, le=5) # Constrained integer type
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animals: List[str]
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prompt = "convert to JSON: I saw a puppy a cat and a raccoon during my bike ride in the park"
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data = {
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"inputs": prompt,
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"parameters": {
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"repetition_penalty": 1.3,
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"grammar": {
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"type": "json",
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"value": Animals.schema()
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}
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}
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}
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headers = {
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"Content-Type": "application/json",
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}
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response = requests.post(
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'http://127.0.0.1:3000/generate',
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headers=headers,
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json=data
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)
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print(response.json())
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# {'generated_text': '{ "activity": "bike riding", "animals": ["puppy","cat","raccoon"],"animals_seen": 3, "location":"park" }'}
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```
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### JSON Schema Integration
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If Pydantic's not your style, go raw with direct JSON Schema integration. It's like having a conversation with the AI in its own language. This is simliar to the first example but with programmatic control.
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```python
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import requests
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json_schema = {
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"properties": {
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"location": {
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"type": "string"
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},
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"activity": {
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"type": "string"
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},
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"animals_seen": {
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"type": "integer",
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"minimum": 1,
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"maximum": 5
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},
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"animals": {
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"type": "array",
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"items": {
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"type": "string"
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}
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}
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},
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"required": ["location", "activity", "animals_seen", "animals"]
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}
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data = {
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"inputs": "[INST]convert to JSON: I saw a puppy a cat and a raccoon during my bike ride in the park [/INST]",
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"parameters": {
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"max_new_tokens": 200,
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"repetition_penalty": 1.3,
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"grammar": {
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"type": "json",
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"value": json_schema
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}
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}
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}
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headers = {
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"Content-Type": "application/json",
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}
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response = requests.post(
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'http://127.0.0.1:3000/generate',
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headers=headers,
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json=data
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)
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print(response.json())
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# {'generated_text': '{\n"activity": "biking",\n"animals": ["puppy","cat","raccoon"]\n , "animals_seen": 3,\n "location":"park"}'}
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```
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### Using the client
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TGI provides a client library to that make it easy to send requests with all of the parameters we've discussed above. Here's an example of how to use the client to send a request with a grammar parameter.
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```python
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from text_generation import AsyncClient
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from text_generation.types import GrammarType
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# NOTE: tools defined above and removed for brevity
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# Define an async function to encapsulate the async operation
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async def main():
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client = AsyncClient(base_url="http://localhost:3000")
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# Use 'await' to wait for the async method 'chat' to complete
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response = await client.generate(
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"Whats Googles DNS",
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max_new_tokens=10,
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decoder_input_details=True,
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seed=1,
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grammar={
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"type": GrammarType.Regex,
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"value": "((25[0-5]|2[0-4]\\d|[01]?\\d\\d?)\\.){3}(25[0-5]|2[0-4]\\d|[01]?\\d\\d?)",
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},
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)
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# Once the response is received, you can process it
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print(response.generated_text)
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# Ensure the main async function is run in the event loop
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if __name__ == "__main__":
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import asyncio
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asyncio.run(main())
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# 118.8.0.84
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```
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## Tools and Functions 🛠️
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### The Tools Parameter
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In addition to the grammar parameter, we've also introduced a set of tools and functions to help you get the most out of the Messages API.
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Tools are a set of user defined functions that can be used in tandem with the chat functionality to enhance the AI's capabilities. You can use these tools to perform a variety of tasks, such as data manipulation, formatting, and more.
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Functions, similar to grammar are defined as JSON schema and can be passed as part of the parameters to the Messages API.
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```json
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curl localhost:3000/v1/chat/completions \
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-X POST \
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-H 'Content-Type: application/json' \
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-d '{
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"model": "tgi",
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"messages": [
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{
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"role": "user",
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"content": "What is the weather like in New York?"
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}
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],
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"tools": [
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{
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"type": "function",
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"function": {
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"name": "get_current_weather",
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"description": "Get the current weather",
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"parameters": {
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"type": "object",
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"properties": {
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"location": {
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"type": "string",
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"description": "The city and state, e.g. San Francisco, CA"
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},
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"format": {
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"type": "string",
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"enum": ["celsius", "fahrenheit"],
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"description": "The temperature unit to use. Infer this from the users location."
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}
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},
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"required": ["location", "format"]
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}
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}
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}
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],
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"tool_choice": "get_current_weather"
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}'
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// {"id":"","object":"text_completion","created":1709051640,"model":"HuggingFaceH4/zephyr-7b-beta","system_fingerprint":"1.4.3-native","choices":[{"index":0,"message":{"role":"assistant","tool_calls":{"id":0,"type":"function","function":{"description":null,"name":"tools","parameters":{"format":"celsius","location":"New York"}}}},"logprobs":null,"finish_reason":"eos_token"}],"usage":{"prompt_tokens":157,"completion_tokens":19,"total_tokens":176}}
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```
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<details>
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<summary>Tools used in example below</summary>
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```python
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tools = [
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{
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"type": "function",
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"function": {
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"name": "get_current_weather",
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"description": "Get the current weather",
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"parameters": {
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"type": "object",
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"properties": {
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"location": {
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"type": "string",
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"description": "The city and state, e.g. San Francisco, CA",
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},
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"format": {
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"type": "string",
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"enum": ["celsius", "fahrenheit"],
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"description": "The temperature unit to use. Infer this from the users location.",
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},
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},
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"required": ["location", "format"],
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},
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},
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},
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{
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"type": "function",
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"function": {
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"name": "get_n_day_weather_forecast",
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"description": "Get an N-day weather forecast",
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"parameters": {
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"type": "object",
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"properties": {
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"location": {
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"type": "string",
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"description": "The city and state, e.g. San Francisco, CA",
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},
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"format": {
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"type": "string",
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"enum": ["celsius", "fahrenheit"],
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"description": "The temperature unit to use. Infer this from the users location.",
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},
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"num_days": {
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"type": "integer",
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"description": "The number of days to forecast",
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},
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},
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"required": ["location", "format", "num_days"],
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},
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},
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}
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]
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```
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</details>
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### Text Generation Inference Client
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TGI provides a client library to interact with the Messages API and Tool functions. The client library is available in both synchronous and asynchronous versions.
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```python
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from text_generation import AsyncClient
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# NOTE: tools defined above and removed for brevity
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# Define an async function to encapsulate the async operation
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async def main():
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client = AsyncClient(base_url="http://localhost:3000")
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# Use 'await' to wait for the async method 'chat' to complete
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response = await client.chat(
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max_tokens=100,
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seed=1,
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tools=tools,
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presence_penalty=-1.1,
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messages=[
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{
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"role": "system",
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"content": "You're a helpful assistant! Answer the users question best you can.",
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},
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{
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"role": "user",
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"content": "What is the weather like in Brooklyn, New York?",
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},
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],
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)
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# Once the response is received, you can process it
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print(response.choices[0].message.tool_calls)
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# Ensure the main async function is run in the event loop
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if __name__ == "__main__":
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import asyncio
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asyncio.run(main())
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# {"id":"","object":"text_completion","created":1709051942,"model":"HuggingFaceH4/zephyr-7b-beta","system_fingerprint":"1.4.3-native","choices":[{"index":0,"message":{"role":"assistant","tool_calls":{"id":0,"type":"function","function":{"description":null,"name":"tools","parameters":{"format":"celsius","location":"New York"}}}},"logprobs":null,"finish_reason":"eos_token"}],"usage":{"prompt_tokens":157,"completion_tokens":20,"total_tokens":177}}
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```
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### OpenAI integration
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TGI exposes an OpenAI-compatible API, which means you can use OpenAI's client libraries to interact with TGI's Messages API and Tool functions.
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However there are some minor differences in the API, for example `tool_choice="auto"` will ALWAYS choose the tool for you. This is different from OpenAI's API where `tool_choice="auto"` will choose a tool if the model thinks it's necessary.
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```python
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from openai import OpenAI
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# Initialize the client, pointing it to one of the available models
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client = OpenAI(
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base_url="http://localhost:3000/v1",
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api_key="_",
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)
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# NOTE: tools defined above and removed for brevity
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chat_completion = client.chat.completions.create(
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model="tgi",
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messages=[
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{
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"role": "system",
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"content": "Don't make assumptions about what values to plug into functions. Ask for clarification if a user request is ambiguous.",
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},
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{
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"role": "user",
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"content": "What's the weather like the next 3 days in San Francisco, CA?",
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},
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],
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tools=tools,
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tool_choice="auto", # tool selected by model
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max_tokens=500,
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)
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called = chat_completion.choices[0].message.tool_calls
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print(called)
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# {
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# "id": 0,
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# "type": "function",
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# "function": {
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# "description": None,
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# "name": "tools",
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# "parameters": {
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# "format": "celsius",
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# "location": "San Francisco, CA",
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# "num_days": 3,
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# },
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# },
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# }
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```
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