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Results 21 - 30 of 70 for conv_3d (0.15 sec)

  1. tensorflow/compiler/mlir/lite/tests/flatbuffer2mlir/dynamic_shape.mlir

    func.func @main(%arg0: tensor<?x19x19x3xf32>) -> tensor<?x9x9x4xf32> {
      %cst = arith.constant dense<1.0> : tensor<4xf32>
      %cst_3 = arith.constant dense<2.0> : tensor<4x3x3x3xf32>
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Thu Mar 24 07:35:24 UTC 2022
    - 716 bytes
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  2. tensorflow/compiler/mlir/lite/tests/end2end/BUILD

            ":test_utilities",
        ],
        driver = "@llvm-project//mlir:run_lit.sh",
        size_override = {
            "quant_stats.pbtxt": "medium",
        },
        tags_override = {
            "add.pbtxt": ["no_rocm"],
            "conv_2d.pbtxt": ["no_rocm"],
            "fake_quant_per_channel.pbtxt": ["no_rocm"],
        },
        test_file_exts = [
            "pbtxt",
        ],
    )
    
    # Bundle together all of the test utilities that are used by tests.
    filegroup(
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Thu Jun 08 15:18:46 UTC 2023
    - 1.2K bytes
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  3. tensorflow/compiler/mlir/tensorflow/tests/layout_optimization_to_nchw.mlir

      %4 = "tf.Transpose"(%2, %3) : (tensor<1x32x32x8xf32>, tensor<4xi32>) -> tensor<1x8x32x32xf32>
    
      // Check that Conv2D computed in NCHW format, and all redundant transpose
      // operations removed from the function.
    
      // CHECK: %[[CONV:[0-9]*]] = "tf.Conv2D"(%arg0, %arg1)
      // CHECK-SAME: data_format = "NCHW"
      // CHECK-SAME: -> tensor<1x8x32x32xf32>
    
      // CHECK: return %[[CONV]]
    
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Thu Mar 24 05:47:26 UTC 2022
    - 1.3K bytes
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  4. tensorflow/compiler/mlir/quantization/tensorflow/tests/fake_quant_e2e_xla.mlir

        return %3 : tensor<?x?x?x2xf32>
      }
    
    // CHECK-LABEL: func @conv_with_dynamic_shape
    // The Conv2D should not be quantized since it has dynamic channel.
    // CHECK: "tf.Conv2D"
    // CHECK-SAME: (tensor<?x?x?x?xf32>, tensor<2x3x3x2xf32>) -> tensor<?x?x?x2xf32>
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Mon Oct 30 06:52:55 UTC 2023
    - 7.2K bytes
    - Viewed (0)
  5. tensorflow/compiler/mlir/tensorflow/tests/layout_optimization_to_nhwc.mlir

      %5 = "tf.Conv2D"(%4, %arg3)
            {
              data_format = "NCHW",
              dilations = [1, 1, 1, 1],
              explicit_paddings = [],
              padding = "VALID",
              strides = [1, 1, 2, 2]
            } : (tensor<?x3x230x230xf32>, tensor<7x7x3x64xf32>) -> tensor<?x64x112x112xf32>
    
      // CHECK: %[[CONV0:[0-9]*]] = "tf.Conv2D"
      // CHECK-SAME: %[[PAD]]
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Mon Oct 30 06:52:55 UTC 2023
    - 7.3K bytes
    - Viewed (0)
  6. tensorflow/compiler/mlir/tensorflow/tests/layout_optimization_layout_assignment_to_nchw.mlir

      // CHECK: %[[ARG_PERM:.*]] = "tf.Const"() <{value = dense<[0, 3, 1, 2]> : tensor<4xi64>}>
      // CHECK: %[[ARG_TRANSPOSE:[0-9]*]] = "tf.Transpose"(%arg0, %[[ARG_PERM]])
    
      // CHECK: %[[CONV2D:[0-9]*]] = "tf.Conv2D"(%[[ARG_TRANSPOSE]], %arg1)
      // CHECK-SAME: data_format = "NCHW"
      // CHECK-SAME: dilations = [1, 4, 2, 3]
      // CHECK-SAME: explicit_paddings = [1, 2, 7, 8, 3, 4, 5, 6]
      // CHECK-SAME: padding = "EXPLICIT"
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Mon Oct 30 06:52:55 UTC 2023
    - 9K bytes
    - Viewed (0)
  7. tensorflow/compiler/mlir/tensorflow/tests/layout_optimization_layout_assignment_gpu_cc_70.mlir

      // cuDNN prefers NCHW data format for spatial convolutions.
      // CHECK: "tf.Conv2D"(%[[INPUT_TRANSPOSE:[0-9]*]], %arg1)
      // CHECK-SAME: data_format = "NCHW"
      %0 = "tf.Conv2D"(%input, %filter)
           {
             data_format = "NHWC",
             padding = "VALID",
             strides = [1, 1, 1, 1]
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Tue Jun 21 08:41:18 UTC 2022
    - 8.5K bytes
    - Viewed (0)
  8. tensorflow/compiler/mlir/quantization/common/quantization_lib/quantization_driver_test.cc

        }
        func.func private @composite_fn_1(%arg0: tensor<1x4x4x3xf32>, %arg1: tensor<3x1x1x3xf32>, %arg2: tensor<3xf32>) -> tensor<1x4x4x3xf32> attributes {tf_quant.composite_function} {
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Thu Apr 25 16:01:03 UTC 2024
    - 7.9K bytes
    - Viewed (0)
  9. tensorflow/compiler/mlir/tensorflow/tests/optimize.mlir

      %filter = arith.constant dense<2.0> : tensor<3x3x3x16xf32>
      %bias = arith.constant dense<3.0> : tensor<16xf32>
      %value = arith.constant dense<4.0> : tensor<16xf32>
      %0 = "tf.Conv2D"(%arg, %filter) {T = "tfdtype$DT_FLOAT", data_format = "NHWC", dilations = [1, 2, 3, 1], padding = "SAME", strides = [1, 4, 5, 1]} : (tensor<256x32x32x3xf32>, tensor<3x3x3x16xf32>) -> tensor<256x8x7x16xf32>
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Fri Jan 05 18:35:42 UTC 2024
    - 3.3K bytes
    - Viewed (0)
  10. tensorflow/compiler/mlir/tensorflow/tests/layout_optimization_layout_assignment_to_nhwc.mlir

      // CHECK: %[[ARG_PERM:.*]] = "tf.Const"() <{value = dense<[0, 2, 3, 1]> : tensor<4xi64>}>
      // CHECK: %[[ARG_TRANSPOSE:[0-9]*]] = "tf.Transpose"(%arg0, %[[ARG_PERM]])
    
      // CHECK: %[[CONV2D:[0-9]*]] = "tf.Conv2D"(%[[ARG_TRANSPOSE]], %arg1)
      // CHECK-SAME: data_format = "NHWC"
      // CHECK-SAME: dilations = [1, 3, 4, 2]
      // CHECK-SAME: explicit_paddings = [1, 2, 5, 6, 7, 8, 3, 4]
      // CHECK-SAME: padding = "EXPLICIT"
    Registered: Sun Jun 16 05:45:23 UTC 2024
    - Last Modified: Mon Oct 30 06:52:55 UTC 2023
    - 4.5K bytes
    - Viewed (0)
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