(l-onnx-doc-Ceil)= # Ceil (l-onnx-op-ceil-13)= ## Ceil - 13 ### Version - **name**: [Ceil (GitHub)](https://github.com/onnx/onnx/blob/main/docs/Operators.md#Ceil) - **domain**: `main` - **since_version**: `13` - **function**: `False` - **support_level**: `SupportType.COMMON` - **shape inference**: `True` This version of the operator has been available **since version 13**. ### Summary Ceil takes one input data (Tensor) and produces one output data (Tensor) where the ceil is, y = ceil(x), is applied to the tensor elementwise. If x is integral, +0, -0, NaN, or infinite, x itself is returned. ### Inputs - **X** (heterogeneous) - **T**: Input tensor ### Outputs - **Y** (heterogeneous) - **T**: Output tensor ### Type Constraints * **T** in ( `tensor(bfloat16)`, `tensor(double)`, `tensor(float)`, `tensor(float16)` ): Constrain input and output types to float tensors. ```{toctree} text_diff_Ceil_6_13 ``` (l-onnx-op-ceil-6)= ## Ceil - 6 ### Version - **name**: [Ceil (GitHub)](https://github.com/onnx/onnx/blob/main/docs/Operators.md#Ceil) - **domain**: `main` - **since_version**: `6` - **function**: `False` - **support_level**: `SupportType.COMMON` - **shape inference**: `True` This version of the operator has been available **since version 6**. ### Summary Ceil takes one input data (Tensor) and produces one output data (Tensor) where the ceil is, y = ceil(x), is applied to the tensor elementwise. ### Inputs - **X** (heterogeneous) - **T**: Input tensor ### Outputs - **Y** (heterogeneous) - **T**: Output tensor ### Type Constraints * **T** in ( `tensor(double)`, `tensor(float)`, `tensor(float16)` ): Constrain input and output types to float tensors. ```{toctree} text_diff_Ceil_1_13 text_diff_Ceil_1_6 ``` (l-onnx-op-ceil-1)= ## Ceil - 1 ### Version - **name**: [Ceil (GitHub)](https://github.com/onnx/onnx/blob/main/docs/Operators.md#Ceil) - **domain**: `main` - **since_version**: `1` - **function**: `False` - **support_level**: `SupportType.COMMON` - **shape inference**: `False` This version of the operator has been available **since version 1**. ### Summary Ceil takes one input data (Tensor) and produces one output data (Tensor) where the ceil is, y = ceil(x), is applied to the tensor elementwise. ### Attributes * **consumed_inputs - INTS** : legacy optimization attribute. ### Inputs - **X** (heterogeneous) - **T**: Input tensor ### Outputs - **Y** (heterogeneous) - **T**: Output tensor ### Type Constraints * **T** in ( `tensor(double)`, `tensor(float)`, `tensor(float16)` ): Constrain input and output types to float tensors.