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RELEASE.md
as `tf.tpu.experimental.embedding.serving_embedding_lookup` which can take arbitrary rank of dense and sparse tensor. For ragged tensor, though the input tensor remains to be rank 2, the activations now can be rank 2 or above by specifying the output shape in the feature config or via the build method. * Add
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tensorflow/compiler/mlir/tensorflow/ir/tf_generated_ops.td
```python # Scalar indices (output is rank(params) - 1). output[a_0, ..., a_n, b_0, ..., b_n] = params[a_0, ..., a_n, indices, b_0, ..., b_n] # Vector indices (output is rank(params)). output[a_0, ..., a_n, i, b_0, ..., b_n] = params[a_0, ..., a_n, indices[i], b_0, ..., b_n] # Higher rank indices (output is rank(params) + rank(indices) - 1).
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