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fused_8bit_rowwise_embedding_lookup.h
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fused_8bit_rowwise_embedding_lookup.h
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#pragma once
#include <cstdint>
namespace caffe2 {
/**
* Embedding lookup with reduction.
*
* `input` of size data_size * (block_size + 8B)
* `indices` of size index_size
* `lengths` of size output_size
* `weights` nullptr or array of size index_size
* `out` of size output_size * block_size
* sum(lengths[i]) == index_size
*
* Note that block_size should be the number of quantized values per row in the
* data, i.e. excluding the scale and bias. The total (fused) block size is
* assumed to be this block_size, plus 4 bytes for scale and 4 bytes for bias.
*
* Behavior is roughly equivalent to pseudocode:
*
* pos = 0
* fused_block_size = block_size + 8B // quantized values and scale and bias
* for (i = 0..index_size-1)
* for (k = 0..block_size-1)
* out[i*block_size + k] = 0
* for (j = 0..lengths[i]-1)
* for (k = 0..block_size-1)
* out[i*block_size + k] += input[indices[pos]*(fused_block_size) + k] *
* (weights ? weights[IS_WEIGHT_POSITIONAL ? j : pos] : 1.0)
* pos += 1
* if (normalize_weights && lengths[i] > 0)
* for (k = 0..block_size-1)
* out[i*block_size + k] /= lengths[i]
*
*/
template <
typename IndexType,
typename InType,
typename OutType,
bool IS_WEIGHT_POSITIONAL = false>
void Fused8BitRowwiseEmbeddingLookup(
const std::int64_t block_size,
const std::int64_t output_size,
const std::int64_t index_size,
const std::int64_t data_size,
const InType* input,
const IndexType* indices,
const int* lengths,
const float* weights, // optional, can be null for non-weighted sum
bool normalize_by_lengths,
OutType* out);
} // namespace caffe2