Files
ray-project--ray/release/air_tests/air_benchmarks/workloads/benchmark_util.py
T
2026-07-13 13:17:40 +08:00

156 lines
4.0 KiB
Python

import os
import socket
import subprocess
from collections import defaultdict
from contextlib import closing
from pathlib import Path
from ray.air.util.node import _force_on_node
import ray
from typing import List, Dict, Union, Callable
def schedule_remote_fn_on_all_nodes(
remote_fn, exclude_head: bool = False, *args, **kwargs
):
head_ip = ray.util.get_node_ip_address()
futures = []
for node in ray.nodes():
if not node["Alive"]:
continue
node_ip = node["NodeManagerAddress"]
if exclude_head and node_ip == head_ip:
continue
node_id = node["NodeID"]
future = _force_on_node(node_id, remote_fn).remote(
*args,
**kwargs,
)
futures.append(future)
return futures
@ray.remote
def _write(stream: bytes, path: str):
Path(path).parent.mkdir(parents=True, exist_ok=True)
with open(path, "wb") as f:
f.write(stream)
def upload_file_to_all_nodes(path: str):
path = os.path.abspath(path)
with open(path, "rb") as f:
stream = f.read()
futures = schedule_remote_fn_on_all_nodes(
_write, exclude_head=True, stream=stream, path=path
)
return ray.get(futures)
@ray.remote
def _run_command(cmd: str):
return subprocess.check_call(cmd)
def run_command_on_all_nodes(cmd: List[str]):
futures = schedule_remote_fn_on_all_nodes(_run_command, cmd=cmd)
return ray.get(futures)
@ray.remote
class CommandRunner:
def run_command(self, cmd: str):
return subprocess.check_call(cmd)
def run_fn(self, fn: Callable, *args, **kwargs):
return fn(*args, **kwargs)
def create_actors_with_options(
num_actors: int,
resources: Dict[str, Union[float, int]],
) -> List[ray.actor.ActorHandle]:
num_cpus = resources.pop("CPU", 1)
num_gpus = resources.pop("GPU", 0)
options = {"num_cpus": num_cpus, "num_gpus": num_gpus, "resources": resources}
return [CommandRunner.options(**options).remote() for _ in range(num_actors)]
def run_commands_on_actors(actors: List[ray.actor.ActorHandle], cmds: List[List[str]]):
assert len(actors) == len(cmds)
futures = []
for actor, cmd in zip(actors, cmds):
futures.append(actor.run_command.remote(cmd))
return ray.get(futures)
def run_fn_on_actors(
actors: List[ray.actor.ActorHandle], fn: Callable, *args, **kwargs
):
futures = []
for actor in actors:
futures.append(actor.run_fn.remote(fn, *args, **kwargs))
return ray.get(futures)
def get_ip_port_actors(actors: List[ray.actor.ActorHandle]) -> List[str]:
# We need this wrapper to avoid deserialization issues with benchmark_util.py
def get_ip_port():
ip = ray.util.get_node_ip_address()
with closing(socket.socket(socket.AF_INET, socket.SOCK_STREAM)) as s:
s.bind(("localhost", 0))
port = s.getsockname()[1]
return ip, port
return run_fn_on_actors(actors=actors, fn=get_ip_port)
def get_gpu_ids_actors(actors: List[ray.actor.ActorHandle]) -> List[List[int]]:
# We need this wrapper to avoid deserialization issues with benchmark_util.py
def get_gpu_ids():
return ray.get_gpu_ids()
return run_fn_on_actors(actors=actors, fn=get_gpu_ids)
def map_ips_to_gpus(ips: List[str], gpus: List[List[int]]):
assert len(ips) == len(gpus)
map = defaultdict(set)
for ip, gpu in zip(ips, gpus):
map[ip].update(set(gpu))
return {ip: sorted(gpus) for ip, gpus in map.items()}
def set_cuda_visible_devices(
actors: List[ray.actor.ActorHandle],
actor_ips: List[str],
ip_to_gpus: Dict[str, set],
):
assert len(actors) == len(actor_ips)
def set_env(key: str, val: str):
os.environ[key] = val
futures = []
for actor, ip in zip(actors, actor_ips):
assert ip in ip_to_gpus
gpu_str = ",".join([str(device) for device in sorted(ip_to_gpus[ip])])
future = actor.run_fn.remote(set_env, "CUDA_VISIBLE_DEVICES", gpu_str)
futures.append(future)
ray.get(futures)