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	1c641e6aac
	
	
	
		
			
			* `main`/`server`: rename to `llama` / `llama-server` for consistency w/ homebrew
* server: update refs -> llama-server
gitignore llama-server
* server: simplify nix package
* main: update refs -> llama
fix examples/main ref
* main/server: fix targets
* update more names
* Update build.yml
* rm accidentally checked in bins
* update straggling refs
* Update .gitignore
* Update server-llm.sh
* main: target name -> llama-cli
* Prefix all example bins w/ llama-
* fix main refs
* rename {main->llama}-cmake-pkg binary
* prefix more cmake targets w/ llama-
* add/fix gbnf-validator subfolder to cmake
* sort cmake example subdirs
* rm bin files
* fix llama-lookup-* Makefile rules
* gitignore /llama-*
* rename Dockerfiles
* rename llama|main -> llama-cli; consistent RPM bin prefixes
* fix some missing -cli suffixes
* rename dockerfile w/ llama-cli
* rename(make): llama-baby-llama
* update dockerfile refs
* more llama-cli(.exe)
* fix test-eval-callback
* rename: llama-cli-cmake-pkg(.exe)
* address gbnf-validator unused fread warning (switched to C++ / ifstream)
* add two missing llama- prefixes
* Updating docs for eval-callback binary to use new `llama-` prefix.
* Updating a few lingering doc references for rename of main to llama-cli
* Updating `run-with-preset.py` to use new binary names.
Updating docs around `perplexity` binary rename.
* Updating documentation references for lookup-merge and export-lora
* Updating two small `main` references missed earlier in the finetune docs.
* Update apps.nix
* update grammar/README.md w/ new llama-* names
* update llama-rpc-server bin name + doc
* Revert "update llama-rpc-server bin name + doc"
This reverts commit e474ef1df4.
* add hot topic notice to README.md
* Update README.md
* Update README.md
* rename gguf-split & quantize bins refs in **/tests.sh
---------
Co-authored-by: HanClinto <hanclinto@gmail.com>
		
	
		
			
				
	
	
		
			75 lines
		
	
	
		
			2.8 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			75 lines
		
	
	
		
			2.8 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
| # Usage:
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| #! ./llama-server -m some-model.gguf &
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| #! pip install pydantic
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| #! python json-schema-pydantic-example.py
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| 
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| from pydantic import BaseModel, TypeAdapter
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| from annotated_types import MinLen
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| from typing import Annotated, List, Optional
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| import json, requests
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| 
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| if True:
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| 
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|     def create_completion(*, response_model=None, endpoint="http://localhost:8080/v1/chat/completions", messages, **kwargs):
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|         '''
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|         Creates a chat completion using an OpenAI-compatible endpoint w/ JSON schema support
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|         (llama.cpp server, llama-cpp-python, Anyscale / Together...)
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| 
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|         The response_model param takes a type (+ supports Pydantic) and behaves just as w/ Instructor (see below)
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|         '''
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|         if response_model:
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|             type_adapter = TypeAdapter(response_model)
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|             schema = type_adapter.json_schema()
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|             messages = [{
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|                 "role": "system",
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|                 "content": f"You respond in JSON format with the following schema: {json.dumps(schema, indent=2)}"
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|             }] + messages
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|             response_format={"type": "json_object", "schema": schema}
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| 
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|         data = requests.post(endpoint, headers={"Content-Type": "application/json"},
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|                              json=dict(messages=messages, response_format=response_format, **kwargs)).json()
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|         if 'error' in data:
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|             raise Exception(data['error']['message'])
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| 
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|         content = data["choices"][0]["message"]["content"]
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|         return type_adapter.validate_json(content) if type_adapter else content
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| 
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| else:
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| 
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|     # This alternative branch uses Instructor + OpenAI client lib.
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|     # Instructor support streamed iterable responses, retry & more.
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|     # (see https://python.useinstructor.com/)
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|     #! pip install instructor openai
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|     import instructor, openai
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|     client = instructor.patch(
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|         openai.OpenAI(api_key="123", base_url="http://localhost:8080"),
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|         mode=instructor.Mode.JSON_SCHEMA)
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|     create_completion = client.chat.completions.create
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| 
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| 
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| if __name__ == '__main__':
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| 
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|     class QAPair(BaseModel):
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|         question: str
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|         concise_answer: str
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|         justification: str
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| 
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|     class PyramidalSummary(BaseModel):
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|         title: str
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|         summary: str
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|         question_answers: Annotated[List[QAPair], MinLen(2)]
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|         sub_sections: Optional[Annotated[List['PyramidalSummary'], MinLen(2)]]
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| 
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|     print("# Summary\n", create_completion(
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|         model="...",
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|         response_model=PyramidalSummary,
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|         messages=[{
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|             "role": "user",
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|             "content": f"""
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|                 You are a highly efficient corporate document summarizer.
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|                 Create a pyramidal summary of an imaginary internal document about our company processes
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|                 (starting high-level, going down to each sub sections).
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|                 Keep questions short, and answers even shorter (trivia / quizz style).
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|             """
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|         }]))
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