## EmbeddingBagOffsetsSum {#openvino_docs_ops_sparse_EmbeddingBagOffsetsSum_3} **Versioned name**: *EmbeddingBagOffsetsSum-3* **Category**: *Sparse* **Short description**: Computes sums of "bags" of embeddings, without instantiating the intermediate embeddings. **Detailed description**: This is the second case of the PyTorch [EmbeddingBag](https://pytorch.org/docs/stable/nn.html#embeddingbag), it has indices in two 1D tensors provided as 2nd and 3rd inputs. For each index in `indices` this operator gets values from `data` embedding table and sums all values belonging to each bag. Values in `offsets` define starting index in `indices` tensor of each "bag", e.g. `offsets` with value `[0,3,4,4,6]` define 5 "bags" containing `[3,1,0,2,n-6]` elements. **Inputs**: * **1**: `emb_table` tensor containing the embedding lookup table of the module of shape `[num_emb, emb_dim1, emb_dim2, ...]` and of type *T*. Required. * **2**: `indices` tensor of shape `[num_indices]` and of type *T_IND*. Required. * **3**: `offsets` tensor of shape `[batch]` and of type *T_IND* containing the starting index positions of each "bag" in `indices`. Required. * **4**: `default_index` scalar of type *T_IND* containing default index in embedding table to fill empty "bags". If not provided empty "bags" are filled with zeros. Optional. * **5**: `per_sample_weights` tensor of the same shape as `indices` and of type *T*. Each value in this tensor are multiplied with each value pooled from embedding table for each index. Optional, default is tensor of ones. **Outputs**: * **1**: tensor of shape `[batch, emb_dim1, emb_dim2, ...]` and of type *T* containing embeddings for each bag. **Types** * *T*: any numeric type. * *T_IND*: `int32` or `int64`. **Example** ```xml 5 2 4 3 4 3 2 ```