# Design Doc: Selected Rows `SelectedRows` is a kind of sparse tensor data type, which is designed to support `embedding` operators. The gradient of embedding table is a sparse tensor. Only a few rows are non-zero values in that tensor. It is straightforward to represent the sparse tensor by the following sparse tensor data structure: ```cpp class SelectedRows { private: vector rows_; Tensor value_; int height_; }; ``` The field `height_` shows the first dimension of `SelectedRows`. The `rows` are the indices of which rows of `SelectedRows` are non-zeros. The `value_` field is an N-dim tensor and shape is `[rows.size() /* NUM_ROWS */, ...]`, which supplies values for each row. The dimension of `SelectedRows` satisfies `[height_] + value_.shape[1:]`. Suppose that a SelectedRows-typed variable `x` has many rows, but only two of them have values -- row 73 is `[1, 2]` and row 84 is `[3, 4]`, the `SelectedRows` representation would be: ``` x = SelectedRow { rows = [73, 84], value = [[1, 2], [3,4]] } ``` ## SelectedRows in Protobuf `SelectedRows` is a kind of `Variable`. `VarDesc` in protobuf should describe the `SelectedRows` information. Only the tensor dimension of a `SelectedRows` will be described in compile-time since the `rows_` and `value_` are related to training data. So we use `TensorDesc` to unify `data_type` and `dims`. A LodTensorDesc contains a `TensorDesc` and `lod_level`. The description of `SelectedRows` is a Tensor description. ```proto message TensorDesc { required DataType data_type = 1; repeated int64 dims = 2; // [UNK, 640, 480] is saved as [-1, 640, 480] } message LodTensorDesc { required TensorDesc tensor = 1; optional int lod_level = 2; } message VarDesc { required string name = 1; enum VarType { LOD_TENSOR = 0; SELECTED_ROWS = 1; } required VarType type = 2; optional LodTensorDesc lod_desc = 3; optional TensorDesc selected_rows_desc = 4; optional bool persistable = 5 [ default = false ]; } ``` ## InferShape for Selected Rows Just like `LoD` information, `InferShape` method will inference output tensor type as well. The operator should decide whether its output is a `SelectedRows` or `Dense` tensor. For example, the gradient operator of `TableLookup` will always generate `SelectedRows`. Its `InferShape` method should be like following ```cpp void TableLookupGrad::InferShape(context) { ... context.SetDataType("Embedding.Grad", kSelectedRows); } ``` ## Sparse Operators There are several operators should be written to support `SelectedRows`. They are: 1. Operators which generates `SelectedRows` gradient. e.g. Gradient of `TableLookupOp`. 2. Optimize operators which support `SelectedRows` gradient. e.g. `SGD` or `AdaGrad` for `SelectedRows`. However, there should be only one `SGD` operator. `OpWithKernel::Run` should select a suitable kernel for both `dense` tensor or `SelectedRows`.