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- from typing import List, Optional, Tuple, Union
- import torch
- from aphrodite import _custom_ops as ops
- from aphrodite.common.utils import is_hip
- from aphrodite.platforms import current_platform
- # Input scaling factors are no longer optional in _scaled_mm starting
- # from pytorch 2.5. Allocating a dummy tensor to pass as input_scale
- TORCH_DEVICE_IDENTITY = torch.ones(1).cuda() if is_hip() else None
- def cutlass_fp8_supported() -> bool:
- # cutlass is not supported on Rocm
- if is_hip():
- return False
- capability = current_platform.get_device_capability()
- capability = capability[0] * 10 + capability[1]
- return ops.cutlass_scaled_mm_supports_fp8(capability)
- def per_tensor_dequantize(
- tensor: torch.Tensor, inv_scale: Union[float,
- torch.Tensor]) -> torch.Tensor:
- fake_qweight = tensor.to(torch.float16)
- dq_weight = fake_qweight * inv_scale
- return dq_weight
- def all_close_1d(x: torch.Tensor) -> bool:
- assert len(x.shape) == 1
- return all(torch.allclose(x[0], x[i]) for i in range(x.shape[0]))
- def convert_to_channelwise(
- weight_scale: torch.Tensor,
- logical_widths: List[int]) -> Tuple[torch.Tensor, torch.Tensor]:
- # Create channelwise buffer
- weight_scale_channel = torch.empty((sum(logical_widths), 1),
- dtype=torch.float32,
- device=weight_scale.device)
- # Expand each scale to match the size of each logical matrix.
- start = 0
- for idx, logical_width in enumerate(logical_widths):
- end = start + logical_width
- weight_scale_channel[start:end, :] = weight_scale[idx]
- start = end
- return weight_scale_channel
- def requantize_with_max_scale(
- weight: torch.Tensor, weight_scale: torch.Tensor,
- logical_widths: List[int]) -> Tuple[torch.Tensor, torch.Tensor]:
- # Max scale to be used for requanitzation.
- max_w_scale = weight_scale.max()
- # QKV / MLP is fused in the on disk checkpoint if any of the
- # weight scales are still set to the default since we initialize
- # N weight scales for N shards but we only load 1 weight scale
- # from disk in this case. Skip requantization in this case (since)
- # we already are quantized with the single scale.
- # * Sample Model: nm-testing/Phi-3-mini-128k-instruct-FP8
- unfused_module_in_checkpoint = (weight_scale[-1] > torch.finfo(
- torch.float8_e4m3fn).min)
- # If unfused checkpoint, need requanize with the single scale.
- if unfused_module_in_checkpoint:
- start = 0
- for idx, logical_width in enumerate(logical_widths):
- end = start + logical_width
- weight_dq = per_tensor_dequantize(weight[start:end, :],
- weight_scale[idx])
- weight[start:end, :], _ = ops.scaled_fp8_quant(
- weight_dq, max_w_scale)
- start = end
- return max_w_scale, weight
- def apply_fp8_linear(
- input: torch.Tensor,
- weight: torch.Tensor,
- weight_scale: torch.Tensor,
- input_scale: Optional[torch.Tensor] = None,
- input_scale_ub: Optional[torch.Tensor] = None,
- bias: Optional[torch.Tensor] = None,
- cutlass_fp8_supported: bool = True,
- use_per_token_if_dynamic: bool = False,
- ) -> torch.Tensor:
- # ops.scaled_fp8_quant supports both dynamic and static quant.
- # If dynamic, layer.input_scale is None and x_scale computed from x.
- # If static, layer.input_scale is scalar and x_scale is input_scale.
- # cutlass_scaled_mm supports per tensor/channel W and per tensor/token A
- if cutlass_fp8_supported:
- qinput, x_scale = ops.scaled_fp8_quant(
- input,
- input_scale,
- scale_ub=input_scale_ub,
- use_per_token_if_dynamic=use_per_token_if_dynamic)
- # Fused GEMM_DQ
- return ops.cutlass_scaled_mm(qinput,
- weight,
- out_dtype=input.dtype,
- scale_a=x_scale,
- scale_b=weight_scale,
- bias=bias)
- # torch.scaled_mm supports per tensor weights + activations only
- # so fallback to naive if per channel or per token
- else:
- # Note: we pad the input because torch._scaled_mm is more performant
- # for matrices with batch dimension > 16.
- # This could change in the future.
- qinput, x_scale = ops.scaled_fp8_quant(
- input,
- input_scale,
- num_token_padding=17,
- use_per_token_if_dynamic=use_per_token_if_dynamic)
- per_tensor_weights = (weight_scale.numel() == 1)
- per_tensor_activations = (x_scale.numel() == 1)
- if per_tensor_weights and per_tensor_activations:
- # Fused GEMM_DQ
- output = torch._scaled_mm(qinput,
- weight,
- out_dtype=input.dtype,
- scale_a=x_scale,
- scale_b=weight_scale,
- bias=bias)
- # A fix for discrepancy in scaled_mm which returns tuple
- # for torch < 2.5 and a single value in torch >= 2.5
- if type(output) is tuple and len(output) == 2:
- return torch.narrow(output[0], 0, 0, input.shape[0])
- return torch.narrow(output, 0, 0, input.shape[0])
- else:
- # Fallback for channelwise case, where we use unfused DQ
- # due to limitations with scaled_mm
- # Symmetric quantized GEMM by definition computes the following:
- # C = (s_x * X) (s_w * W) + bias
- # This is equivalent to dequantizing the weights and activations
- # before applying a GEMM.
- #
- # In order to compute quantized operands, a quantized kernel
- # will rewrite the above like so:
- # C = s_w * s_x * (X * W) + bias
- #
- # For the scaled_mm fallback case, we break this down, since it
- # does not support s_w being a vector.
- # Making sure the dummy tensor is on the same device as the weight
- global TORCH_DEVICE_IDENTITY
- if TORCH_DEVICE_IDENTITY.device != weight.device:
- TORCH_DEVICE_IDENTITY = TORCH_DEVICE_IDENTITY.to(weight.device)
- # GEMM
- # This computes C = (X * W).
- # Output in fp32 to allow subsequent ops to happen in-place
- output = torch._scaled_mm(qinput,
- weight,
- scale_a=TORCH_DEVICE_IDENTITY,
- scale_b=TORCH_DEVICE_IDENTITY,
- out_dtype=torch.float32)
- # A fix for discrepancy in scaled_mm which returns tuple
- # for torch < 2.5 and a single value in torch >= 2.5
- if type(output) is tuple and len(output) == 2:
- output = output[0]
- # Unpad (undo num_token_padding)
- output = torch.narrow(output, 0, 0, input.shape[0])
- x_scale = torch.narrow(x_scale, 0, 0, input.shape[0])
- # DQ
- # C = sw * sx * (X * W) + bias
- output = output * x_scale * weight_scale.t()
- if bias is not None:
- output = output + bias
- return output.to(dtype=input.dtype)
- def apply_int8_linear(
- input: torch.Tensor,
- weight: torch.Tensor,
- weight_scale: torch.Tensor,
- input_scale: Optional[torch.Tensor] = None,
- bias: Optional[torch.Tensor] = None,
- ):
- # ops.scaled_int8_quant supports both dynamic and static quant.
- # * dynamic, layer.input_scale is None and x_scale computed from x.
- # * static, layer.input_scale is scalar and x_scale is input_scale.
- x_q, x_scale, _ = ops.scaled_int8_quant(input, input_scale)
- return ops.cutlass_scaled_mm(x_q,
- weight,
- scale_a=x_scale,
- scale_b=weight_scale,
- out_dtype=input.dtype,
- bias=bias)
- def normalize_e4m3fn_to_e4m3fnuz(
- weight: torch.Tensor,
- weight_scale: torch.Tensor,
- input_scale: Optional[torch.Tensor] = None
- ) -> Tuple[torch.Tensor, torch.Tensor, Optional[torch.Tensor]]:
- assert weight.dtype == torch.float8_e4m3fn
- # The bits pattern 10000000(-128) represents zero in e4m3fn
- # but NaN in e4m3fnuz. So here we set it to 0.
- # https://onnx.ai/onnx/technical/float8.html
- weight_as_int8 = weight.view(torch.int8)
- ROCM_FP8_NAN_AS_INT = -128
- weight_as_int8[weight_as_int8 == ROCM_FP8_NAN_AS_INT] = 0
- weight = weight_as_int8.view(torch.float8_e4m3fnuz)
- # For the same bits representation, e4m3fnuz value is half of
- # the e4m3fn value, so we should double the scaling factor to
- # get the same dequantized value.
- # https://onnx.ai/onnx/technical/float8.html
- weight_scale = weight_scale * 2.0
- if input_scale is not None:
- input_scale = input_scale * 2.0
- return weight, weight_scale, input_scale
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