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Results 1 - 5 of 5 for 1x80xf32 (0.18 sec)

  1. tensorflow/compiler/mlir/tensorflow/tests/tpu_cluster_formation.mlir

        _xla_compile_device_type = "TPU", _replication_info = "cluster",
        device = "/task:0/device:TPU:0", dtype = f32
      } : (tensor<1x80xf32>, tensor<1x80xf32>) -> tensor<1x80xf32>
      %3 = "tf.ResourceGatherNd"(%arg0, %0) {
        Tindices = i32
      } : (tensor<*x!tf_type.resource<tensor<80xf32>>>, tensor<i32>) -> tensor<1x80xf32>
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Thu May 02 22:03:30 UTC 2024
    - 53.9K bytes
    - Viewed (0)
  2. tensorflow/compiler/mlir/lite/tests/prepare-tf.mlir

    }
    
    func.func @QDQsFollowedByTranspose(tensor<1x2xf32>) -> (tensor<2x1xf32>) {
    ^bb0(%arg0: tensor<1x2xf32>):
      %cst_0 = arith.constant dense<[1, 0]> : tensor<2xi32>
      %0 = "tfl.quantize"(%arg0){qtype = tensor<1x2x!quant.uniform<u8:f32, 1.0>>}: (tensor<1x2xf32>) -> (tensor<1x2x!quant.uniform<u8:f32, 1.0>>)
      %1 = "tfl.dequantize"(%0): (tensor<1x2x!quant.uniform<u8:f32, 1.0>>) -> (tensor<1x2xf32>)
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Wed May 29 07:26:59 UTC 2024
    - 59.8K bytes
    - Viewed (0)
  3. tensorflow/compiler/mlir/lite/tests/prepare-quantize-post-training.mlir

        %recurrent_stats = "quantfork.stats"(%recurrent_input) {layerStats = dense<[-2.0, 1.0]> : tensor<2xf32>} : (tensor<1x20xf32>) -> tensor<1x20xf32>
        %cell_input = arith.constant dense<1.0> : tensor<1x20xf32>
        %cell_stats = "quantfork.stats"(%cell_input) {layerStats = dense<[-2.73090601, 7.94872093]> : tensor<2xf32>} : (tensor<1x20xf32>) -> tensor<1x20xf32>
        %0 = "tfl.unidirectional_sequence_lstm"(%arg0,
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Thu May 02 09:41:17 UTC 2024
    - 52.6K bytes
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  4. tensorflow/compiler/mlir/tensorflow/tests/lower_tf.mlir

        // CHECK-NEXT:  %[[RES:.*]] = "tf.SelectV2"(%[[PRED]], %[[SCALED_GRADIENTS]], %[[SELU_GRAD_VALUE]]) : (tensor<4x8xi1>, tensor<4x8xf32>, tensor<4x8xf32>) -> tensor<4x8xf32>
        // CHECK-NEXT:  return %[[RES]] : tensor<4x8xf32>
        %2 = "tf.SeluGrad"(%gradients, %features) : (tensor<4x8xf32>, tensor<4x8xf32>) -> tensor<4x8xf32>
        func.return %2 : tensor<4x8xf32>
    }
    
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Fri Jan 05 18:35:42 UTC 2024
    - 92K bytes
    - Viewed (0)
  5. tensorflow/compiler/mlir/g3doc/_includes/tf_passes.md

    For example, if we have the code
    
    ```mlir
      %0 = "tf.Const"() {value = dense<[[42.0]]> : tensor<1x1xf32>} : () -> tensor<1x1xf32>
      %1 = "tf.Const"() {device = "", value = dense<[[42.0]]> : tensor<1x1xf32>} : () -> tensor<1x1xf32>
      %2 = "tf.Const"() {device = "baz", value = dense<[[42.0]]> : tensor<1x1xf32>} : () -> tensor<1x1xf32>
    ```
    
    then running this pass with 'default-device=foobar', we get:
    
    ```mlir
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Wed Aug 02 02:26:39 UTC 2023
    - 96.4K bytes
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