shingjan commented on code in PR #12485:
URL: https://github.com/apache/tvm/pull/12485#discussion_r951886852
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python/tvm/relay/frontend/pytorch.py:
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@@ -2242,6 +2243,29 @@ def embedding(self, inputs, input_types):
return _op.take(weight, indices.astype("int32"), axis=0)
+ def embedding_bag(self, inputs, _):
+ assert len(inputs) == 9, "embedding_bag needs 9 arguments"
+ (
+ weights,
+ indices,
+ offsets_1d,
+ scale_grad_by_freq,
+ mode,
+ sparse,
+ per_sample_weights,
+ include_last_offset,
Review Comment:
is it possible that we can support `sparse`, `per_sample_weights` and
`include_last_offset` as well? I think at least for model `dlrm`, `sparse` is
needed. If we can't really figure out a way to support `scale_grad_by_freq`,
for now my take is that we can explicitly put a check here and fail the
compilation if this argument is passed from pytorch.
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