import cupy as cp from cupy.cuda import Device import ray import ray.util.collective as collective @ray.remote(num_gpus=2) class Worker: def __init__(self): with Device(0): self.send1 = cp.ones((4,), dtype=cp.float32) with Device(1): self.send2 = cp.ones((4,), dtype=cp.float32) * 2 self.recv = cp.zeros((4,), dtype=cp.float32) def setup(self, world_size, rank): collective.init_collective_group(world_size, rank, "nccl", "177") return True def compute(self): collective.allreduce_multigpu([self.send1, self.send2], "177") return [self.send1, self.send2], self.send1.device, self.send2.device def destroy(self): collective.destroy_collective_group("177") if __name__ == "__main__": ray.init(address="auto") num_workers = 2 workers = [] init_rets = [] for i in range(num_workers): w = Worker.remote() workers.append(w) init_rets.append(w.setup.remote(num_workers, i)) a = ray.get(init_rets) results = ray.get([w.compute.remote() for w in workers]) print(results) ray.get([w.destroy.remote() for w in workers]) ray.shutdown()