Example #1
0
def _check_gpu_tensors(tensors):
    """Check all tensors are distributed on different GPUs."""
    if not tensors or not isinstance(tensors, list):
        raise RuntimeError("'tensors' must be a nonempty list.")
    if len(tensors) > nccl_util.get_num_gpus():
        raise RuntimeError("Tensor list cannot be larger than the number"
                           "of available GPUs. Got {} > {}.".format(
                               len(tensors), nccl_util.get_num_gpus()))
    t0 = tensors[0]
    dt = nccl_util.get_nccl_tensor_dtype(t0)
    s = nccl_util.get_tensor_shape(t0)
    d = nccl_util.get_tensor_device(t0)
    for i, t in enumerate(tensors):
        if i == 0:
            continue
        # We need to check the following:
        # (1) tensor is cuda (already checked during API)
        # (2) tensor dtype
        # (3) tensor shape match
        # (4) each tensor is on a different GPU
        dtype = nccl_util.get_nccl_tensor_dtype(t)
        if dt != dtype:
            raise RuntimeError(
                "Tensors must have identical dtype. Got: '{}'.".format(dtype))
        shape = nccl_util.get_tensor_shape(t)
        if s != shape:
            raise RuntimeError(
                "Tensor must have identical shape. Got: '{}'.".format(shape))
        device = nccl_util.get_tensor_device(t)
        if device == d:
            raise RuntimeError("Tensor must be on distinct GPUs.")
Example #2
0
    def barrier(self, barrier_options=BarrierOptions()):
        """Blocks until all processes reach this barrier.

        Args:
            barrier_options: barrier options.

        Returns:
            None
        """
        # Get the device list.
        if self._used_gpu_indices:
            devices = list(self._used_gpu_indices)
        else:
            devices = list(range(nccl_util.get_num_gpus()))
        barrier_tensors = [None] * len(devices)
        for i, d in enumerate(devices):
            with nccl_util.Device(d):
                barrier_tensors[i] = cupy.array([1])
        self.allreduce(barrier_tensors)
Example #3
0
File: util.py Project: zivzone/ray
 def report_num_gpus(self):
     n_gpus = get_num_gpus()
     return n_gpus