# Copyright (c) ONNX Project Contributors # SPDX-License-Identifier: Apache-2.0 from __future__ import annotations import numpy as np from onnx.reference.op_run import OpRun from onnx.reference.ops.op_conv import _conv_implementation class QLinearConv(OpRun): def _run( # type: ignore self, x, x_scale, x_zero_point, w, w_scale, w_zero_point, y_scale, y_zero_point, B=None, auto_pad=None, dilations=None, group=None, kernel_shape=None, pads=None, strides=None, ): auto_pad = auto_pad or self.auto_pad # type: ignore dilations = dilations or self.dilations # type: ignore group = group or self.group # type: ignore kernel_shape = kernel_shape or self.kernel_shape # type: ignore pads = pads or self.pads # type: ignore strides = strides or self.strides # type: ignore X = x.astype(np.int32) if x_zero_point is not None: X -= x_zero_point W = w.astype(np.int32) if w_zero_point is not None: if len(w_zero_point.shape) == 1 and w_zero_point.shape[0] == W.shape[0]: missing = (w_zero_point.shape[0],) + (1,) * (len(W.shape) - 1) W -= w_zero_point.reshape(missing) else: W -= w_zero_point res = _conv_implementation( X, W, B, auto_pad, dilations, group, kernel_shape, pads, strides ).astype(np.int32) # w_scale could be a scalar or a 1-D tensor. A 1-D tensor means a per # output channel quantization. if np.size(w_scale) > 1: if np.ndim(w_scale) != 1: raise ValueError( f"w_scale must be a scalar or a 1-D tensor. Got shape {np.shape(w_scale)}." ) if np.size(w_scale) != np.shape(w)[0]: raise ValueError( f"w_scale elements must match output channels: {np.size(w_scale)} != {np.shape(w)[0]}" ) w_scale = np.expand_dims(w_scale, (0, 2, 3)) R = res * (x_scale * w_scale / y_scale) if y_zero_point is not None: R += y_zero_point if y_zero_point.dtype == np.int8: R = np.clip(R, -128, 127) else: R = np.clip(R, 0, 255) return (np.round(R).astype(y_zero_point.dtype),) if x.dtype == np.int8: R = np.clip(R, -128, 127) else: R = np.clip(R, 0, 255) return (np.round(R).astype(x.dtype),)