llama-stack/llama_stack/providers/inline/inference/meta_reference/model_parallel.py
Ihar Hrachyshka 9e6561a1ec
chore: enable pyupgrade fixes (#1806)
# What does this PR do?

The goal of this PR is code base modernization.

Schema reflection code needed a minor adjustment to handle UnionTypes
and collections.abc.AsyncIterator. (Both are preferred for latest Python
releases.)

Note to reviewers: almost all changes here are automatically generated
by pyupgrade. Some additional unused imports were cleaned up. The only
change worth of note can be found under `docs/openapi_generator` and
`llama_stack/strong_typing/schema.py` where reflection code was updated
to deal with "newer" types.

Signed-off-by: Ihar Hrachyshka <ihar.hrachyshka@gmail.com>
2025-05-01 14:23:50 -07:00

98 lines
3.1 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.
from collections.abc import Callable, Generator
from copy import deepcopy
from functools import partial
from typing import Any
from llama_stack.models.llama.llama3.chat_format import ChatFormat as Llama3ChatFormat
from llama_stack.models.llama.llama4.chat_format import ChatFormat as Llama4ChatFormat
from llama_stack.providers.utils.inference.prompt_adapter import (
ChatCompletionRequestWithRawContent,
CompletionRequestWithRawContent,
)
from .parallel_utils import ModelParallelProcessGroup
class ModelRunner:
def __init__(self, llama):
self.llama = llama
# the `task` object is the same that is sent to `ModelParallelProcessGroup.run_inference()`
def __call__(self, task: Any):
if task[0] == "chat_completion":
return self.llama.chat_completion(task[1])
elif task[0] == "completion":
return self.llama.completion(task[1])
else:
raise ValueError(f"Unexpected task type {task[0]}")
def init_model_cb(
builder_fn: Callable,
params: list[Any],
):
llama = builder_fn(*params)
return ModelRunner(llama)
class LlamaModelParallelGenerator:
"""
This abstraction exists so
- we can run model parallel code without needing to run the CLIs via torchrun
- this also enables use model parallel code within a notebook context.
A Context Manager is used to ensure that the model parallel process is started and stopped
correctly. This does make the ergonomics a little awkward, because it isn't immediately
clear at the callsite why we need to use a context manager.
"""
def __init__(
self,
model_parallel_size: int,
builder_fn: Callable,
builder_params: list[Any],
formatter: Llama3ChatFormat | Llama4ChatFormat,
):
self.model_parallel_size = model_parallel_size
self.builder_fn = builder_fn
self.builder_params = builder_params
self.formatter = formatter
def start(self):
self.__enter__()
def stop(self):
self.__exit__(None, None, None)
def __enter__(self):
self.group = ModelParallelProcessGroup(
self.model_parallel_size,
init_model_cb=partial(init_model_cb, self.builder_fn, self.builder_params),
)
self.group.start()
return self
def __exit__(self, exc_type, exc_value, exc_traceback):
self.group.stop()
def completion(
self,
request_batch: list[CompletionRequestWithRawContent],
) -> Generator:
req_obj = deepcopy(request_batch)
gen = self.group.run_inference(("completion", req_obj))
yield from gen
def chat_completion(
self,
request_batch: list[ChatCompletionRequestWithRawContent],
) -> Generator:
req_obj = deepcopy(request_batch)
gen = self.group.run_inference(("chat_completion", req_obj))
yield from gen