Files
ray-project--ray/python/ray/util/collective/tests/cpu_util.py
T
2026-07-13 13:17:40 +08:00

138 lines
4.4 KiB
Python

import logging
import numpy as np
import torch
import ray
import ray.util.collective as col
from ray.util.collective.types import Backend, ReduceOp
logger = logging.getLogger(__name__)
@ray.remote(num_cpus=1)
class Worker:
def __init__(self):
self.buffer = None
self.list_buffer = None
def init_tensors(self):
self.buffer = np.ones((10,), dtype=np.float32)
self.list_buffer = [np.ones((10,), dtype=np.float32) for _ in range(2)]
return True
def init_group(self, world_size, rank, backend=Backend.NCCL, group_name="default"):
col.init_collective_group(world_size, rank, backend, group_name)
return True
def set_buffer(self, data):
self.buffer = data
return self.buffer
def get_buffer(self):
return self.buffer
def set_list_buffer(self, list_of_arrays, copy=False):
if copy:
copy_list = []
for tensor in list_of_arrays:
if isinstance(tensor, np.ndarray):
copy_list.append(tensor.copy())
elif isinstance(tensor, torch.Tensor):
copy_list.append(tensor.clone().detach())
self.list_buffer = copy_list
else:
self.list_buffer = list_of_arrays
return self.list_buffer
def do_allreduce(self, group_name="default", op=ReduceOp.SUM):
col.allreduce(self.buffer, group_name, op)
return self.buffer
def do_reduce(self, group_name="default", dst_rank=0, op=ReduceOp.SUM):
col.reduce(self.buffer, dst_rank, group_name, op)
return self.buffer
def do_broadcast(self, group_name="default", src_rank=0):
col.broadcast(self.buffer, src_rank, group_name)
return self.buffer
def do_allgather(self, group_name="default"):
col.allgather(self.list_buffer, self.buffer, group_name)
return self.list_buffer
def do_reducescatter(self, group_name="default", op=ReduceOp.SUM):
col.reducescatter(self.buffer, self.list_buffer, group_name, op)
return self.buffer
def do_send(self, group_name="default", dst_rank=0):
col.send(self.buffer, dst_rank, group_name)
return self.buffer
def do_recv(self, group_name="default", src_rank=0):
col.recv(self.buffer, src_rank, group_name)
return self.buffer
def destroy_group(self, group_name="default"):
col.destroy_collective_group(group_name)
return True
def report_rank(self, group_name="default"):
rank = col.get_rank(group_name)
return rank
def report_world_size(self, group_name="default"):
ws = col.get_collective_group_size(group_name)
return ws
def report_nccl_availability(self):
avail = col.nccl_available()
return avail
def report_gloo_availability(self):
avail = col.gloo_available()
return avail
def report_is_group_initialized(self, group_name="default"):
is_init = col.is_group_initialized(group_name)
return is_init
def create_collective_workers(num_workers=2, group_name="default", backend="nccl"):
actors = [None] * num_workers
for i in range(num_workers):
actor = Worker.remote()
ray.get([actor.init_tensors.remote()])
actors[i] = actor
world_size = num_workers
init_results = ray.get(
[
actor.init_group.remote(world_size, i, backend, group_name)
for i, actor in enumerate(actors)
]
)
return actors, init_results
def init_tensors_for_gather_scatter(
actors, array_size=10, dtype=np.float32, tensor_backend="numpy"
):
world_size = len(actors)
for i, a in enumerate(actors):
if tensor_backend == "numpy":
t = np.ones(array_size, dtype=dtype) * (i + 1)
elif tensor_backend == "torch":
t = torch.ones(array_size, dtype=torch.float32) * (i + 1)
else:
raise RuntimeError("Unsupported tensor backend.")
ray.get([a.set_buffer.remote(t)])
if tensor_backend == "numpy":
list_buffer = [np.ones(array_size, dtype=dtype) for _ in range(world_size)]
elif tensor_backend == "torch":
list_buffer = [
torch.ones(array_size, dtype=torch.float32) for _ in range(world_size)
]
else:
raise RuntimeError("Unsupported tensor backend.")
ray.get([a.set_list_buffer.remote(list_buffer, copy=True) for a in actors])