llama-stack/llama_stack/providers/inline/inference/vllm/vllm.py
Hardik Shah a51c8b4efc
Convert SamplingParams.strategy to a union (#767)
# What does this PR do?

Cleans up how we provide sampling params. Earlier, strategy was an enum
and all params (top_p, temperature, top_k) across all strategies were
grouped. We now have a strategy union object with each strategy (greedy,
top_p, top_k) having its corresponding params.
Earlier, 
```
class SamplingParams: 
    strategy: enum ()
    top_p, temperature, top_k and other params
```
However, the `strategy` field was not being used in any providers making
it confusing to know the exact sampling behavior purely based on the
params since you could pass temperature, top_p, top_k and how the
provider would interpret those would not be clear.

Hence we introduced -- a union where the strategy and relevant params
are all clubbed together to avoid this confusion.

Have updated all providers, tests, notebooks, readme and otehr places
where sampling params was being used to use the new format.
   

## Test Plan
`pytest llama_stack/providers/tests/inference/groq/test_groq_utils.py`
// inference on ollama, fireworks and together 
`with-proxy pytest -v -s -k "ollama"
--inference-model="meta-llama/Llama-3.1-8B-Instruct"
llama_stack/providers/tests/inference/test_text_inference.py `
// agents on fireworks 
`pytest -v -s -k 'fireworks and create_agent'
--inference-model="meta-llama/Llama-3.1-8B-Instruct"
llama_stack/providers/tests/agents/test_agents.py
--safety-shield="meta-llama/Llama-Guard-3-8B"`

## Before submitting

- [ ] This PR fixes a typo or improves the docs (you can dismiss the
other checks if that's the case).
- [X] Ran pre-commit to handle lint / formatting issues.
- [X] Read the [contributor
guideline](https://github.com/meta-llama/llama-stack/blob/main/CONTRIBUTING.md),
      Pull Request section?
- [X] Updated relevant documentation.
- [X] Wrote necessary unit or integration tests.

---------

Co-authored-by: Hardik Shah <hjshah@fb.com>
2025-01-15 05:38:51 -08:00

241 lines
8.7 KiB
Python

# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
import logging
import os
import uuid
from typing import AsyncGenerator, List, Optional
from llama_models.llama3.api.chat_format import ChatFormat
from llama_models.llama3.api.tokenizer import Tokenizer
from llama_models.sku_list import resolve_model
from vllm.engine.arg_utils import AsyncEngineArgs
from vllm.engine.async_llm_engine import AsyncLLMEngine
from vllm.sampling_params import SamplingParams as VLLMSamplingParams
from llama_stack.apis.common.content_types import InterleavedContent
from llama_stack.apis.inference import (
ChatCompletionRequest,
ChatCompletionResponse,
ChatCompletionResponseStreamChunk,
CompletionResponse,
CompletionResponseStreamChunk,
EmbeddingsResponse,
Inference,
LogProbConfig,
Message,
ResponseFormat,
SamplingParams,
ToolChoice,
ToolDefinition,
ToolPromptFormat,
)
from llama_stack.apis.models import Model
from llama_stack.providers.datatypes import ModelsProtocolPrivate
from llama_stack.providers.utils.inference.openai_compat import (
get_sampling_options,
OpenAICompatCompletionChoice,
OpenAICompatCompletionResponse,
process_chat_completion_response,
process_chat_completion_stream_response,
)
from llama_stack.providers.utils.inference.prompt_adapter import (
chat_completion_request_to_prompt,
)
from .config import VLLMConfig
log = logging.getLogger(__name__)
def _random_uuid() -> str:
return str(uuid.uuid4().hex)
class VLLMInferenceImpl(Inference, ModelsProtocolPrivate):
"""Inference implementation for vLLM."""
def __init__(self, config: VLLMConfig):
self.config = config
self.engine = None
self.formatter = ChatFormat(Tokenizer.get_instance())
async def initialize(self):
log.info("Initializing vLLM inference provider.")
# Disable usage stats reporting. This would be a surprising thing for most
# people to find out was on by default.
# https://docs.vllm.ai/en/latest/serving/usage_stats.html
if "VLLM_NO_USAGE_STATS" not in os.environ:
os.environ["VLLM_NO_USAGE_STATS"] = "1"
model = resolve_model(self.config.model)
if model is None:
raise ValueError(f"Unknown model {self.config.model}")
if model.huggingface_repo is None:
raise ValueError(f"Model {self.config.model} needs a huggingface repo")
# TODO -- there are a ton of options supported here ...
engine_args = AsyncEngineArgs(
model=model.huggingface_repo,
tokenizer=model.huggingface_repo,
tensor_parallel_size=self.config.tensor_parallel_size,
enforce_eager=self.config.enforce_eager,
gpu_memory_utilization=self.config.gpu_memory_utilization,
guided_decoding_backend="lm-format-enforcer",
)
self.engine = AsyncLLMEngine.from_engine_args(engine_args)
async def shutdown(self):
"""Shut down the vLLM inference adapter."""
log.info("Shutting down vLLM inference provider.")
if self.engine:
self.engine.shutdown_background_loop()
# Note that the return type of the superclass method is WRONG
async def register_model(self, model: Model) -> Model:
"""
Callback that is called when the server associates an inference endpoint
with an inference provider.
:param model: Object that encapsulates parameters necessary for identifying
a specific LLM.
:returns: The input ``Model`` object. It may or may not be permissible
to change fields before returning this object.
"""
log.info(f"Registering model {model.identifier} with vLLM inference provider.")
# The current version of this provided is hard-coded to serve only
# the model specified in the YAML config file.
configured_model = resolve_model(self.config.model)
registered_model = resolve_model(model.model_id)
if configured_model.core_model_id != registered_model.core_model_id:
raise ValueError(
f"Requested model '{model.identifier}' is different from "
f"model '{self.config.model}' that this provider "
f"is configured to serve"
)
return model
def _sampling_params(self, sampling_params: SamplingParams) -> VLLMSamplingParams:
if sampling_params is None:
return VLLMSamplingParams(max_tokens=self.config.max_tokens)
options = get_sampling_options(sampling_params)
if "repeat_penalty" in options:
options["repetition_penalty"] = options["repeat_penalty"]
del options["repeat_penalty"]
return VLLMSamplingParams(**options)
async def unregister_model(self, model_id: str) -> None:
pass
async def completion(
self,
model_id: str,
content: InterleavedContent,
sampling_params: Optional[SamplingParams] = SamplingParams(),
response_format: Optional[ResponseFormat] = None,
stream: Optional[bool] = False,
logprobs: Optional[LogProbConfig] = None,
) -> CompletionResponse | CompletionResponseStreamChunk:
raise NotImplementedError("Completion not implemented for vLLM")
async def chat_completion(
self,
model_id: str,
messages: List[Message],
sampling_params: Optional[SamplingParams] = SamplingParams(),
tools: Optional[List[ToolDefinition]] = None,
tool_choice: Optional[ToolChoice] = ToolChoice.auto,
tool_prompt_format: Optional[ToolPromptFormat] = None,
response_format: Optional[ResponseFormat] = None,
stream: Optional[bool] = False,
logprobs: Optional[LogProbConfig] = None,
) -> ChatCompletionResponse | ChatCompletionResponseStreamChunk:
assert self.engine is not None
request = ChatCompletionRequest(
model=model_id,
messages=messages,
sampling_params=sampling_params,
tools=tools or [],
tool_choice=tool_choice,
tool_prompt_format=tool_prompt_format,
stream=stream,
logprobs=logprobs,
)
log.info("Sampling params: %s", sampling_params)
request_id = _random_uuid()
prompt = await chat_completion_request_to_prompt(
request, self.config.model, self.formatter
)
vllm_sampling_params = self._sampling_params(request.sampling_params)
results_generator = self.engine.generate(
prompt, vllm_sampling_params, request_id
)
if stream:
return self._stream_chat_completion(request, results_generator)
else:
return await self._nonstream_chat_completion(request, results_generator)
async def _nonstream_chat_completion(
self, request: ChatCompletionRequest, results_generator: AsyncGenerator
) -> ChatCompletionResponse:
outputs = [o async for o in results_generator]
final_output = outputs[-1]
assert final_output is not None
outputs = final_output.outputs
finish_reason = outputs[-1].stop_reason
choice = OpenAICompatCompletionChoice(
finish_reason=finish_reason,
text="".join([output.text for output in outputs]),
)
response = OpenAICompatCompletionResponse(
choices=[choice],
)
return process_chat_completion_response(response, self.formatter)
async def _stream_chat_completion(
self, request: ChatCompletionRequest, results_generator: AsyncGenerator
) -> AsyncGenerator:
async def _generate_and_convert_to_openai_compat():
cur = []
async for chunk in results_generator:
if not chunk.outputs:
log.warning("Empty chunk received")
continue
output = chunk.outputs[-1]
new_tokens = output.token_ids[len(cur) :]
text = self.formatter.tokenizer.decode(new_tokens)
cur.extend(new_tokens)
choice = OpenAICompatCompletionChoice(
finish_reason=output.finish_reason,
text=text,
)
yield OpenAICompatCompletionResponse(
choices=[choice],
)
stream = _generate_and_convert_to_openai_compat()
async for chunk in process_chat_completion_stream_response(
stream, self.formatter
):
yield chunk
async def embeddings(
self, model_id: str, contents: List[InterleavedContent]
) -> EmbeddingsResponse:
raise NotImplementedError()