# Copyright (c) Microsoft Corporation.
# SPDX-License-Identifier: Apache-2.0

# DeepSpeed Team

from .builder import CUDAOpBuilder, installed_cuda_version


class InferenceBuilder(CUDAOpBuilder):
    BUILD_VAR = "DS_BUILD_TRANSFORMER_INFERENCE"
    NAME = "transformer_inference"

    def __init__(self, name=None):
        name = self.NAME if name is None else name
        super().__init__(name=name)

    def absolute_name(self):
        return f'deepspeed.ops.transformer.inference.{self.NAME}_op'

    def is_compatible(self, verbose=False):
        try:
            import torch
        except ImportError:
            if verbose:
                self.warning("Please install torch if trying to pre-compile inference kernels")
            return False

        cuda_okay = True
        if not self.is_rocm_pytorch() and torch.cuda.is_available():
            sys_cuda_major, _ = installed_cuda_version()
            torch_cuda_major = int(torch.version.cuda.split('.')[0])
            cuda_capability = torch.cuda.get_device_properties(0).major
            if cuda_capability < 6:
                if verbose:
                    self.warning("NVIDIA Inference is only supported on Pascal and newer architectures")
                cuda_okay = False
            if cuda_capability >= 8:
                if torch_cuda_major < 11 or sys_cuda_major < 11:
                    if verbose:
                        self.warning("On Ampere and higher architectures please use CUDA 11+")
                    cuda_okay = False
        return super().is_compatible(verbose) and cuda_okay

    def filter_ccs(self, ccs):
        ccs_retained = []
        ccs_pruned = []
        for cc in [cc.split('.') for cc in ccs]:
            if int(cc[0]) >= 6:
                ccs_retained.append(cc)
            else:
                ccs_pruned.append(cc)
        if len(ccs_pruned) > 0:
            self.warning(f"Filtered compute capabilities {ccs_pruned}")
        return ccs_retained

    def sources(self):
        return [
            'csrc/transformer/inference/csrc/pt_binding.cpp',
            'csrc/transformer/inference/csrc/gelu.cu',
            'csrc/transformer/inference/csrc/relu.cu',
            'csrc/transformer/inference/csrc/layer_norm.cu',
            'csrc/transformer/inference/csrc/rms_norm.cu',
            'csrc/transformer/inference/csrc/softmax.cu',
            'csrc/transformer/inference/csrc/dequantize.cu',
            'csrc/transformer/inference/csrc/apply_rotary_pos_emb.cu',
            'csrc/transformer/inference/csrc/transform.cu',
            'csrc/transformer/inference/csrc/pointwise_ops.cu',
        ]

    def extra_ldflags(self):
        if not self.is_rocm_pytorch():
            return ['-lcurand']
        else:
            return []

    def include_paths(self):
        return ['csrc/transformer/inference/includes', 'csrc/includes']
