program(1.0) [buildInfo = dict, tensor>({{"coremlc-component-MIL", "3520.4.1"}, {"coremlc-version", "3520.5.1"}, {"coremltools-component-torch", "2.5.1"}, {"coremltools-source-dialect", "TorchScript"}, {"coremltools-version", "8.3.0"}})] { func main(tensor audio, tensor audio_length) [FlexibleShapeInformation = tuple, dict, tensor>>, tuple, dict, list, ?>>>>((("DefaultShapes", {{"audio", [1, 1]}}), ("RangeDims", {{"audio", [[1, 1], [1, 1280000]]}})))] { tensor var_9 = const()[name = tensor("op_9"), val = tensor(1)]; tensor var_10 = const()[name = tensor("op_10"), val = tensor(160)]; tensor var_12 = const()[name = tensor("op_12"), val = tensor(0)]; tensor var_33 = const()[name = tensor("op_33"), val = tensor(512)]; tensor var_34 = add(x = audio_length, y = var_33)[name = tensor("op_34")]; tensor var_35 = const()[name = tensor("op_35"), val = tensor(512)]; tensor var_36 = sub(x = var_34, y = var_35)[name = tensor("op_36")]; tensor floor_div_0 = floor_div(x = var_36, y = var_10)[name = tensor("floor_div_0")]; tensor var_39 = equal(x = audio_length, y = var_12)[name = tensor("op_39")]; tensor var_40 = const()[name = tensor("op_40"), val = tensor([0])]; tensor mel_length = select(a = var_40, b = floor_div_0, cond = var_39)[name = tensor("seq_len")]; tensor audio_to_fp16_dtype_0 = const()[name = tensor("audio_to_fp16_dtype_0"), val = tensor("fp16")]; tensor audio_to_fp16 = cast(dtype = audio_to_fp16_dtype_0, x = audio)[name = tensor("cast_14")]; tensor var_42_shape_cast_fp16 = shape(x = audio_to_fp16)[name = tensor("op_42_shape_cast_fp16")]; tensor gather_0_axis_0 = const()[name = tensor("gather_0_axis_0"), val = tensor(0)]; tensor gather_0_batch_dims_0 = const()[name = tensor("gather_0_batch_dims_0"), val = tensor(0)]; tensor gather_0_validate_indices_0 = const()[name = tensor("gather_0_validate_indices_0"), val = tensor(false)]; tensor var_42_shape_cast_fp16_to_int16_dtype_0 = const()[name = tensor("op_42_shape_cast_fp16_to_int16_dtype_0"), val = tensor("int16")]; tensor select_0_to_uint16 = const()[name = tensor("select_0_to_uint16"), val = tensor(1)]; tensor var_42_shape_cast_fp16_to_int16 = cast(dtype = var_42_shape_cast_fp16_to_int16_dtype_0, x = var_42_shape_cast_fp16)[name = tensor("cast_13")]; tensor gather_0_cast_uint16 = gather(axis = gather_0_axis_0, batch_dims = gather_0_batch_dims_0, indices = select_0_to_uint16, validate_indices = gather_0_validate_indices_0, x = var_42_shape_cast_fp16_to_int16)[name = tensor("gather_0_cast_uint16")]; tensor gather_0_cast_uint16_to_int32_dtype_0 = const()[name = tensor("gather_0_cast_uint16_to_int32_dtype_0"), val = tensor("int32")]; tensor const_0 = const()[name = tensor("const_0"), val = tensor(0)]; tensor const_1 = const()[name = tensor("const_1"), val = tensor(1)]; tensor gather_0_cast_uint16_to_int32 = cast(dtype = gather_0_cast_uint16_to_int32_dtype_0, x = gather_0_cast_uint16)[name = tensor("cast_12")]; tensor var_43 = range_1d(end = gather_0_cast_uint16_to_int32, start = const_0, step = const_1)[name = tensor("op_43")]; tensor var_44_axes_0 = const()[name = tensor("op_44_axes_0"), val = tensor([0])]; tensor var_44 = expand_dims(axes = var_44_axes_0, x = var_43)[name = tensor("op_44")]; tensor var_45_axes_0 = const()[name = tensor("op_45_axes_0"), val = tensor([1])]; tensor var_45 = expand_dims(axes = var_45_axes_0, x = audio_length)[name = tensor("op_45")]; tensor timemask = less(x = var_44, y = var_45)[name = tensor("timemask")]; tensor var_48_begin_0 = const()[name = tensor("op_48_begin_0"), val = tensor([0, 0])]; tensor var_48_end_0 = const()[name = tensor("op_48_end_0"), val = tensor([1, 1])]; tensor var_48_end_mask_0 = const()[name = tensor("op_48_end_mask_0"), val = tensor([true, false])]; tensor var_48_squeeze_mask_0 = const()[name = tensor("op_48_squeeze_mask_0"), val = tensor([false, true])]; tensor var_48_cast_fp16 = slice_by_index(begin = var_48_begin_0, end = var_48_end_0, end_mask = var_48_end_mask_0, squeeze_mask = var_48_squeeze_mask_0, x = audio_to_fp16)[name = tensor("op_48_cast_fp16")]; tensor var_49_axes_0 = const()[name = tensor("op_49_axes_0"), val = tensor([1])]; tensor var_49_cast_fp16 = expand_dims(axes = var_49_axes_0, x = var_48_cast_fp16)[name = tensor("op_49_cast_fp16")]; tensor var_51_begin_0 = const()[name = tensor("op_51_begin_0"), val = tensor([0, 1])]; tensor var_51_end_0 = const()[name = tensor("op_51_end_0"), val = tensor([1, 0])]; tensor var_51_end_mask_0 = const()[name = tensor("op_51_end_mask_0"), val = tensor([true, true])]; tensor var_51_cast_fp16 = slice_by_index(begin = var_51_begin_0, end = var_51_end_0, end_mask = var_51_end_mask_0, x = audio_to_fp16)[name = tensor("op_51_cast_fp16")]; tensor var_53_begin_0 = const()[name = tensor("op_53_begin_0"), val = tensor([0, 0])]; tensor var_53_end_0 = const()[name = tensor("op_53_end_0"), val = tensor([1, -1])]; tensor var_53_end_mask_0 = const()[name = tensor("op_53_end_mask_0"), val = tensor([true, false])]; tensor var_53_cast_fp16 = slice_by_index(begin = var_53_begin_0, end = var_53_end_0, end_mask = var_53_end_mask_0, x = audio_to_fp16)[name = tensor("op_53_cast_fp16")]; tensor var_54_to_fp16 = const()[name = tensor("op_54_to_fp16"), val = tensor(0x1.f0cp-1)]; tensor var_55_cast_fp16 = mul(x = var_53_cast_fp16, y = var_54_to_fp16)[name = tensor("op_55_cast_fp16")]; tensor var_56_cast_fp16 = sub(x = var_51_cast_fp16, y = var_55_cast_fp16)[name = tensor("op_56_cast_fp16")]; tensor x_3_interleave_0 = const()[name = tensor("x_3_interleave_0"), val = tensor(false)]; tensor x_3_cast_fp16 = concat(axis = var_9, interleave = x_3_interleave_0, values = (var_49_cast_fp16, var_56_cast_fp16))[name = tensor("x_3_cast_fp16")]; tensor var_59 = logical_not(x = timemask)[name = tensor("op_59")]; tensor var_16_to_fp16 = const()[name = tensor("op_16_to_fp16"), val = tensor(0x0p+0)]; tensor input_1_cast_fp16 = select(a = var_16_to_fp16, b = x_3_cast_fp16, cond = var_59)[name = tensor("input_1_cast_fp16")]; tensor concat_1x = const()[name = tensor("concat_1x"), val = tensor([1, 1, -1])]; tensor input_3_cast_fp16 = reshape(shape = concat_1x, x = input_1_cast_fp16)[name = tensor("input_3_cast_fp16")]; tensor input_5_pad_0 = const()[name = tensor("input_5_pad_0"), val = tensor([0, 0, 0, 0, 256, 256])]; tensor input_5_mode_0 = const()[name = tensor("input_5_mode_0"), val = tensor("constant")]; tensor const_3_to_fp16 = const()[name = tensor("const_3_to_fp16"), val = tensor(0x0p+0)]; tensor input_5_cast_fp16 = pad(constant_val = const_3_to_fp16, mode = input_5_mode_0, pad = input_5_pad_0, x = input_3_cast_fp16)[name = tensor("input_5_cast_fp16")]; tensor concat_2x = const()[name = tensor("concat_2x"), val = tensor([1, -1])]; tensor input_cast_fp16 = reshape(shape = concat_2x, x = input_5_cast_fp16)[name = tensor("input_cast_fp16")]; tensor expand_dims_3 = const()[name = tensor("expand_dims_3"), val = tensor([160])]; tensor expand_dims_4_axes_0 = const()[name = tensor("expand_dims_4_axes_0"), val = tensor([1])]; tensor expand_dims_4_cast_fp16 = expand_dims(axes = expand_dims_4_axes_0, x = input_cast_fp16)[name = tensor("expand_dims_4_cast_fp16")]; tensor conv_0_pad_type_0 = const()[name = tensor("conv_0_pad_type_0"), val = tensor("valid")]; tensor conv_0_pad_0 = const()[name = tensor("conv_0_pad_0"), val = tensor([0, 0])]; tensor conv_0_dilations_0 = const()[name = tensor("conv_0_dilations_0"), val = tensor([1])]; tensor conv_0_groups_0 = const()[name = tensor("conv_0_groups_0"), val = tensor(1)]; tensor expand_dims_1_to_fp16 = const()[name = tensor("expand_dims_1_to_fp16"), val = tensor(BLOBFILE(path = tensor("@model_path/weights/weight.bin"), offset = tensor(64)))]; tensor conv_0_cast_fp16 = conv(dilations = conv_0_dilations_0, groups = conv_0_groups_0, pad = conv_0_pad_0, pad_type = conv_0_pad_type_0, strides = expand_dims_3, weight = expand_dims_1_to_fp16, x = expand_dims_4_cast_fp16)[name = tensor("conv_0_cast_fp16")]; tensor conv_1_pad_type_0 = const()[name = tensor("conv_1_pad_type_0"), val = tensor("valid")]; tensor conv_1_pad_0 = const()[name = tensor("conv_1_pad_0"), val = tensor([0, 0])]; tensor conv_1_dilations_0 = const()[name = tensor("conv_1_dilations_0"), val = tensor([1])]; tensor conv_1_groups_0 = const()[name = tensor("conv_1_groups_0"), val = tensor(1)]; tensor expand_dims_2_to_fp16 = const()[name = tensor("expand_dims_2_to_fp16"), val = tensor(BLOBFILE(path = tensor("@model_path/weights/weight.bin"), offset = tensor(263296)))]; tensor conv_1_cast_fp16 = conv(dilations = conv_1_dilations_0, groups = conv_1_groups_0, pad = conv_1_pad_0, pad_type = conv_1_pad_type_0, strides = expand_dims_3, weight = expand_dims_2_to_fp16, x = expand_dims_4_cast_fp16)[name = tensor("conv_1_cast_fp16")]; tensor stack_0_axis_0 = const()[name = tensor("stack_0_axis_0"), val = tensor(-1)]; tensor stack_0_cast_fp16 = stack(axis = stack_0_axis_0, values = (conv_0_cast_fp16, conv_1_cast_fp16))[name = tensor("stack_0_cast_fp16")]; tensor var_19_promoted_to_fp16 = const()[name = tensor("op_19_promoted_to_fp16"), val = tensor(0x1p+1)]; tensor var_74_cast_fp16 = pow(x = stack_0_cast_fp16, y = var_19_promoted_to_fp16)[name = tensor("op_74_cast_fp16")]; tensor var_76_axes_0 = const()[name = tensor("op_76_axes_0"), val = tensor([-1])]; tensor var_76_keep_dims_0 = const()[name = tensor("op_76_keep_dims_0"), val = tensor(false)]; tensor var_76_cast_fp16 = reduce_sum(axes = var_76_axes_0, keep_dims = var_76_keep_dims_0, x = var_74_cast_fp16)[name = tensor("op_76_cast_fp16")]; tensor x_11_cast_fp16 = identity(x = var_76_cast_fp16)[name = tensor("x_11_cast_fp16")]; tensor x_13_transpose_x_0 = const()[name = tensor("x_13_transpose_x_0"), val = tensor(false)]; tensor x_13_transpose_y_0 = const()[name = tensor("x_13_transpose_y_0"), val = tensor(false)]; tensor const_4_to_fp16 = const()[name = tensor("const_4_to_fp16"), val = tensor(BLOBFILE(path = tensor("@model_path/weights/weight.bin"), offset = tensor(526528)))]; tensor x_13_cast_fp16 = matmul(transpose_x = x_13_transpose_x_0, transpose_y = x_13_transpose_y_0, x = const_4_to_fp16, y = x_11_cast_fp16)[name = tensor("x_13_cast_fp16")]; tensor var_83_to_fp16 = const()[name = tensor("op_83_to_fp16"), val = tensor(0x1p-24)]; tensor var_84_cast_fp16 = add(x = x_13_cast_fp16, y = var_83_to_fp16)[name = tensor("op_84_cast_fp16")]; tensor x_epsilon_0 = const()[name = tensor("x_epsilon_0"), val = tensor(0x1p-149)]; tensor x_cast_fp16 = log(epsilon = x_epsilon_0, x = var_84_cast_fp16)[name = tensor("x_cast_fp16")]; tensor var_86_shape_cast_fp16 = shape(x = x_cast_fp16)[name = tensor("op_86_shape_cast_fp16")]; tensor gather_5_axis_0 = const()[name = tensor("gather_5_axis_0"), val = tensor(0)]; tensor gather_5_batch_dims_0 = const()[name = tensor("gather_5_batch_dims_0"), val = tensor(0)]; tensor gather_5_validate_indices_0 = const()[name = tensor("gather_5_validate_indices_0"), val = tensor(false)]; tensor var_86_shape_cast_fp16_to_uint16_dtype_0 = const()[name = tensor("op_86_shape_cast_fp16_to_uint16_dtype_0"), val = tensor("uint16")]; tensor select_5_to_uint16 = const()[name = tensor("select_5_to_uint16"), val = tensor(2)]; tensor var_86_shape_cast_fp16_to_uint16 = cast(dtype = var_86_shape_cast_fp16_to_uint16_dtype_0, x = var_86_shape_cast_fp16)[name = tensor("cast_11")]; tensor gather_5_cast_uint16 = gather(axis = gather_5_axis_0, batch_dims = gather_5_batch_dims_0, indices = select_5_to_uint16, validate_indices = gather_5_validate_indices_0, x = var_86_shape_cast_fp16_to_uint16)[name = tensor("gather_5_cast_uint16")]; tensor gather_5_cast_uint16_to_int32_dtype_0 = const()[name = tensor("gather_5_cast_uint16_to_int32_dtype_0"), val = tensor("int32")]; tensor const_5 = const()[name = tensor("const_5"), val = tensor(0)]; tensor const_6 = const()[name = tensor("const_6"), val = tensor(1)]; tensor gather_5_cast_uint16_to_int32 = cast(dtype = gather_5_cast_uint16_to_int32_dtype_0, x = gather_5_cast_uint16)[name = tensor("cast_10")]; tensor mask_1 = range_1d(end = gather_5_cast_uint16_to_int32, start = const_5, step = const_6)[name = tensor("mask_1")]; tensor expand_dims_0_axes_0 = const()[name = tensor("expand_dims_0_axes_0"), val = tensor([0])]; tensor expand_dims_0 = expand_dims(axes = expand_dims_0_axes_0, x = mask_1)[name = tensor("expand_dims_0")]; tensor var_91_axes_0 = const()[name = tensor("op_91_axes_0"), val = tensor([1])]; tensor var_91 = expand_dims(axes = var_91_axes_0, x = mel_length)[name = tensor("op_91")]; tensor mask = greater_equal(x = expand_dims_0, y = var_91)[name = tensor("mask")]; tensor var_93_axes_0 = const()[name = tensor("op_93_axes_0"), val = tensor([1])]; tensor var_93 = expand_dims(axes = var_93_axes_0, x = mask)[name = tensor("op_93")]; tensor processed_signal_cast_fp16 = select(a = var_16_to_fp16, b = x_cast_fp16, cond = var_93)[name = tensor("processed_signal_cast_fp16")]; tensor processed_signal_cast_fp16_to_fp32_dtype_0 = const()[name = tensor("processed_signal_cast_fp16_to_fp32_dtype_0"), val = tensor("fp32")]; tensor mel = cast(dtype = processed_signal_cast_fp16_to_fp32_dtype_0, x = processed_signal_cast_fp16)[name = tensor("cast_9")]; } -> (mel, mel_length); }