ray_gpu_executor.py 16.1 KB
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import asyncio
import copy
import os
import pickle
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from collections import defaultdict
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from typing import TYPE_CHECKING, Any, Dict, List, Optional, Set, Tuple
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from vllm.engine.ray_utils import RayWorkerVllm, ray
from vllm.executor.executor_base import ExecutorAsyncBase, ExecutorBase
from vllm.logger import init_logger
from vllm.lora.request import LoRARequest
from vllm.sequence import SamplerOutput, SequenceGroupMetadata
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from vllm.utils import (get_distributed_init_method, get_ip, get_open_port,
                        make_async, set_cuda_visible_devices)
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if ray is not None:
    from ray.util.scheduling_strategies import PlacementGroupSchedulingStrategy

if TYPE_CHECKING:
    from ray.util.placement_group import PlacementGroup

logger = init_logger(__name__)

# If the env var is set, it uses the Ray's compiled DAG API
# which optimizes the control plane overhead.
# Run vLLM with VLLM_USE_RAY_COMPILED_DAG=1 to enable it.
USE_RAY_COMPILED_DAG = bool(os.getenv("VLLM_USE_RAY_COMPILED_DAG", 0))


class RayGPUExecutor(ExecutorBase):

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    def _init_executor(self) -> None:
        assert (not self.speculative_config
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                ), "Speculative decoding not yet supported for RayGPU backend."
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        assert self.parallel_config.worker_use_ray
        placement_group = self.parallel_config.placement_group

        # Disable Ray usage stats collection.
        ray_usage = os.environ.get("RAY_USAGE_STATS_ENABLED", "0")
        if ray_usage != "1":
            os.environ["RAY_USAGE_STATS_ENABLED"] = "0"

        # Create the parallel GPU workers.
        self._init_workers_ray(placement_group)

        self.forward_dag = None
        if USE_RAY_COMPILED_DAG:
            self.forward_dag = self._compiled_ray_dag()

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    def _configure_ray_workers_use_nsight(self,
                                          ray_remote_kwargs) -> Dict[str, Any]:
        # If nsight profiling is enabled, we need to set the profiling
        # configuration for the ray workers as runtime env.
        runtime_env = ray_remote_kwargs.setdefault("runtime_env", {})
        runtime_env.update({
            "nsight": {
                "t": "cuda,cudnn,cublas",
                "o": "'worker_process_%p'",
                "cuda-graph-trace": "node",
            }
        })

        return ray_remote_kwargs

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    def _init_workers_ray(self, placement_group: "PlacementGroup",
                          **ray_remote_kwargs):
        if self.parallel_config.tensor_parallel_size == 1:
            # For single GPU case, we use a ray worker with constrained memory.
            num_gpus = self.cache_config.gpu_memory_utilization
        else:
            # Otherwise, the ray workers are allocated with a full GPU.
            num_gpus = 1

        # The driver dummy worker does not actually use any resources.
        # It holds the resource for the driver worker.
        self.driver_dummy_worker: RayWorkerVllm = None
        # The remaining workers are the actual ray actors.
        self.workers: List[RayWorkerVllm] = []

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        if self.parallel_config.ray_workers_use_nsight:
            ray_remote_kwargs = self._configure_ray_workers_use_nsight(
                ray_remote_kwargs)

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        # Create the workers.
        driver_ip = get_ip()
        for bundle_id, bundle in enumerate(placement_group.bundle_specs):
            if not bundle.get("GPU", 0):
                continue
            scheduling_strategy = PlacementGroupSchedulingStrategy(
                placement_group=placement_group,
                placement_group_capture_child_tasks=True,
                placement_group_bundle_index=bundle_id,
            )
            worker = ray.remote(
                num_cpus=0,
                num_gpus=num_gpus,
                scheduling_strategy=scheduling_strategy,
                **ray_remote_kwargs,
            )(RayWorkerVllm).remote(self.model_config.trust_remote_code)

            worker_ip = ray.get(worker.get_node_ip.remote())
            if worker_ip == driver_ip and self.driver_dummy_worker is None:
                # If the worker is on the same node as the driver, we use it
                # as the resource holder for the driver process.
                self.driver_dummy_worker = worker
            else:
                # Else, added to the list of workers.
                self.workers.append(worker)

        if self.driver_dummy_worker is None:
            raise ValueError(
                "Ray does not allocate any GPUs on the driver node. Consider "
                "adjusting the Ray placement group or running the driver on a "
                "GPU node.")

        # Get the set of GPU IDs used on each node.
        driver_node_id, driver_gpu_ids = ray.get(
            self.driver_dummy_worker.get_node_and_gpu_ids.remote())
        worker_node_and_gpu_ids = ray.get(
            [worker.get_node_and_gpu_ids.remote() for worker in self.workers])

        node_workers = defaultdict(list)
        node_gpus = defaultdict(list)

        node_workers[driver_node_id].append(0)
        node_gpus[driver_node_id].extend(driver_gpu_ids)
        for i, (node_id, gpu_ids) in enumerate(worker_node_and_gpu_ids,
                                               start=1):
            node_workers[node_id].append(i)
            node_gpus[node_id].extend(gpu_ids)
        for node_id, gpu_ids in node_gpus.items():
            node_gpus[node_id] = sorted(gpu_ids)

        # Set CUDA_VISIBLE_DEVICES for the driver and workers.
        set_cuda_visible_devices(node_gpus[driver_node_id])
        for worker, (node_id, _) in zip(self.workers, worker_node_and_gpu_ids):
            worker.set_cuda_visible_devices.remote(node_gpus[node_id])

        distributed_init_method = get_distributed_init_method(
            driver_ip, get_open_port())

        # Lazy import the Worker to avoid importing torch.cuda/xformers
        # before CUDA_VISIBLE_DEVICES is set in the Worker
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        from vllm.worker.worker import Worker
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        model_config = copy.deepcopy(self.model_config)
        parallel_config = copy.deepcopy(self.parallel_config)
        scheduler_config = copy.deepcopy(self.scheduler_config)
        device_config = copy.deepcopy(self.device_config)
        lora_config = copy.deepcopy(self.lora_config)
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        cache_config = copy.deepcopy(self.cache_config)
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        vision_language_config = copy.deepcopy(self.vision_language_config)
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        # Initialize the actual workers with the Worker class.
        for rank, (worker, (node_id, _)) in enumerate(
                zip(self.workers, worker_node_and_gpu_ids),
                start=1,
        ):
            local_rank = node_workers[node_id].index(rank)
            worker.init_worker.remote(
                lambda rank=rank, local_rank=local_rank: Worker(
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                    model_config=model_config,
                    parallel_config=parallel_config,
                    scheduler_config=scheduler_config,
                    device_config=device_config,
                    cache_config=cache_config,
                    local_rank=local_rank,
                    rank=rank,
                    distributed_init_method=distributed_init_method,
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                    lora_config=lora_config,
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                    vision_language_config=vision_language_config,
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                    tensorizer_config=self.tensorizer_config,
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                ))

        # Initialize the driver worker with the Worker class.
        driver_rank = 0
        driver_local_rank = node_workers[driver_node_id].index(driver_rank)
        self.driver_worker = Worker(
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            model_config=self.model_config,
            parallel_config=self.parallel_config,
            scheduler_config=self.scheduler_config,
            device_config=self.device_config,
            cache_config=self.cache_config,
            local_rank=driver_local_rank,
            rank=driver_rank,
            distributed_init_method=distributed_init_method,
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            lora_config=self.lora_config,
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            vision_language_config=self.vision_language_config,
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            tensorizer_config=self.tensorizer_config,
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            is_driver_worker=True,
        )

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        self._run_workers("init_device")
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        self._run_workers(
            "load_model",
            max_concurrent_workers=self.parallel_config.
            max_parallel_loading_workers,
        )

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    def determine_num_available_blocks(self) -> Tuple[int, int]:
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        """Determine the number of available KV blocks.
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        This invokes `determine_num_available_blocks` on each worker and takes
        the min of the results, guaranteeing that the selected cache sizes are
        compatible with all workers.
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        Returns:
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            - Tuple[num_gpu_blocks, num_cpu_blocks]
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        """
        # Get the maximum number of blocks that can be allocated on GPU and CPU.
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        num_blocks = self._run_workers("determine_num_available_blocks", )
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        # Since we use a shared centralized controller, we take the minimum
        # number of blocks across all workers to make sure all the memory
        # operators can be applied to all workers.
        num_gpu_blocks = min(b[0] for b in num_blocks)
        num_cpu_blocks = min(b[1] for b in num_blocks)
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        return num_gpu_blocks, num_cpu_blocks
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    def initialize_cache(self, num_gpu_blocks: int,
                         num_cpu_blocks: int) -> None:
        """Initialize the KV cache in all workers.
        """

        # NOTE: We log here to avoid multiple logs when number of workers is
        # greater than one. We could log in the engine, but not all executors
        # have GPUs.
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        logger.info(f"# GPU blocks: {num_gpu_blocks}, "
                    f"# CPU blocks: {num_cpu_blocks}")

        self.cache_config.num_gpu_blocks = num_gpu_blocks
        self.cache_config.num_cpu_blocks = num_cpu_blocks

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        self._run_workers("initialize_cache",
                          num_gpu_blocks=num_gpu_blocks,
                          num_cpu_blocks=num_cpu_blocks)
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    def execute_model(self,
                      seq_group_metadata_list: List[SequenceGroupMetadata],
                      blocks_to_swap_in: Dict[int, int],
                      blocks_to_swap_out: Dict[int, int],
                      blocks_to_copy: Dict[int, List[int]]) -> SamplerOutput:
        all_outputs = self._run_workers(
            "execute_model",
            driver_kwargs={
                "seq_group_metadata_list": seq_group_metadata_list,
                "blocks_to_swap_in": blocks_to_swap_in,
                "blocks_to_swap_out": blocks_to_swap_out,
                "blocks_to_copy": blocks_to_copy,
            },
            use_ray_compiled_dag=USE_RAY_COMPILED_DAG)

        # Only the driver worker returns the sampling results.
        output = all_outputs[0]
        return output

    def add_lora(self, lora_request: LoRARequest) -> bool:
        assert lora_request.lora_int_id > 0, "lora_id must be greater than 0."
        return self._run_workers(
            "add_lora",
            lora_request=lora_request,
        )

    def remove_lora(self, lora_id: int) -> bool:
        assert lora_id > 0, "lora_id must be greater than 0."
        return self._run_workers(
            "remove_lora",
            lora_id=lora_id,
        )

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    def list_loras(self) -> Set[int]:
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        return self._run_workers("list_loras")

    def _run_workers(
        self,
        method: str,
        *args,
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        driver_args: Optional[Tuple[Any, ...]] = None,
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        driver_kwargs: Optional[Dict[str, Any]] = None,
        max_concurrent_workers: Optional[int] = None,
        use_ray_compiled_dag: bool = False,
        **kwargs,
    ) -> Any:
        """Runs the given method on all workers."""

        if max_concurrent_workers:
            raise NotImplementedError(
                "max_concurrent_workers is not supported yet.")

        if use_ray_compiled_dag:
            # Right now, compiled DAG can only accept a single
            # input. TODO(sang): Fix it.
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            assert self.forward_dag is not None
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            output_channels = self.forward_dag.execute(1)
        else:
            # Start the ray workers first.
            ray_worker_outputs = [
                worker.execute_method.remote(method, *args, **kwargs)
                for worker in self.workers
            ]

        if driver_args is None:
            driver_args = args
        if driver_kwargs is None:
            driver_kwargs = kwargs

        # Start the driver worker after all the ray workers.
        driver_worker_output = getattr(self.driver_worker,
                                       method)(*driver_args, **driver_kwargs)

        # Get the results of the ray workers.
        if self.workers:
            if use_ray_compiled_dag:
                try:
                    ray_worker_outputs = [
                        pickle.loads(chan.begin_read())
                        for chan in output_channels
                    ]
                finally:
                    # Has to call end_read in order to reuse the DAG.
                    for chan in output_channels:
                        chan.end_read()
            else:
                ray_worker_outputs = ray.get(ray_worker_outputs)

        return [driver_worker_output] + ray_worker_outputs

    def _compiled_ray_dag(self):
        import pkg_resources
        required_version = "2.9"
        current_version = pkg_resources.get_distribution("ray").version
        if current_version < required_version:
            raise ValueError(f"Ray version {required_version} or greater is "
                             f"required, but found {current_version}")

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        from ray.dag import InputNode, MultiOutputNode
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        assert self.parallel_config.worker_use_ray

        # Right now, compiled DAG requires at least 1 arg. We send
        # a dummy value for now. It will be fixed soon.
        with InputNode() as input_data:
            forward_dag = MultiOutputNode([
                worker.execute_model_compiled_dag_remote.bind(input_data)
                for worker in self.workers
            ])
        return forward_dag.experimental_compile()

    def check_health(self) -> None:
        """Raises an error if engine is unhealthy."""
        self._check_if_any_actor_is_dead()

    def _check_if_any_actor_is_dead(self):
        if not self.workers:
            return

        dead_actors = []
        for actor in self.workers:
            actor_state = ray.state.actors(actor._ray_actor_id.hex())  # pylint: disable=protected-access
            if actor_state["State"] == "DEAD":
                dead_actors.append(actor)
        if dead_actors:
            raise RuntimeError("At least one Worker is dead. "
                               f"Dead Workers: {dead_actors}. ")


class RayGPUExecutorAsync(RayGPUExecutor, ExecutorAsyncBase):

    async def _run_workers_async(
        self,
        method: str,
        *args,
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        driver_args: Optional[Tuple[Any, ...]] = None,
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        driver_kwargs: Optional[Dict[str, Any]] = None,
        **kwargs,
    ) -> Any:
        """Runs the given method on all workers."""
        coros = []

        if driver_args is None:
            driver_args = args
        if driver_kwargs is None:
            driver_kwargs = kwargs

        # Run the driver worker asynchronously.
        driver_executor = make_async(getattr(self.driver_worker, method))
        coros.append(driver_executor(*driver_args, **driver_kwargs))

        # Run the ray workers asynchronously.
        for worker in self.workers:
            coros.append(worker.execute_method.remote(method, *args, **kwargs))

        all_outputs = await asyncio.gather(*coros)
        return all_outputs

    async def execute_model_async(
        self,
        seq_group_metadata_list: List[SequenceGroupMetadata],
        blocks_to_swap_in: Dict[int, int],
        blocks_to_swap_out: Dict[int, int],
        blocks_to_copy: Dict[int, List[int]],
    ) -> SamplerOutput:
        all_outputs = await self._run_workers_async(
            "execute_model",
            driver_kwargs={
                "seq_group_metadata_list": seq_group_metadata_list,
                "blocks_to_swap_in": blocks_to_swap_in,
                "blocks_to_swap_out": blocks_to_swap_out,
                "blocks_to_copy": blocks_to_copy,
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            })
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        # Only the driver worker returns the sampling results.
        output = all_outputs[0]
        return output