Mojo function
softmax_2_pass
softmax_2_pass[simd_width: Int, buffer_size: Dim, dtype: DType](output: NDBuffer[dtype, 1, origin, DimList.__init__[Dim](buffer_size)], input: NDBuffer[dtype, 1, origin, DimList.__init__[Dim](buffer_size)])
Performs an unbatched softmax on an input tensor using the two-pass online algorithm.
The unbatched two-pass online softmax is described in "Online normalizer calculation for softmax" (https://arxiv.org/abs/1805.02867) and "A full-stack search technique for domain optimized deep learning accelerators" (https://dl.acm.org/doi/abs/10.1145/3503222.3507767) and is defined as:
procedure SoftmaxUnbatched(InputInput)
  runningMax = -∞
  runningSum = 0
  STAGE 1:
  for i = 0 to N do
    newMax = max(runningMax, Input[i])
    runningSum = runningSum*exp(runningMax-newMax) + exp(Input[i]-newMax)
    runningMax = newMax
  end for
  for i = 0 to N do
    Output[i] = exp(Input[i] - runningMax) / runningSum
  end forParameters:
- simd_width (Int): The simd_width to use in vectorization.
- buffer_size (Dim): The size of the input and output buffers.
- dtype (DType): The dtype of the input and output buffers.
Args:
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