anijain2305 commented on a change in pull request #6782:
URL: https://github.com/apache/incubator-tvm/pull/6782#discussion_r513780334



##########
File path: python/tvm/relay/frontend/qnn_torch.py
##########
@@ -826,6 +826,74 @@ def _impl(inputs, _):
     return _impl
 
 
+def _linear_dynamic():
+    def _calculate_qparam(inp):
+        # reference ATen/native/quantized/cpu/qlinear_dynamic.cpp
+        # ChooseQuantizationParams function
+        mn = _op.min(inp)
+        mx = _op.max(inp)
+
+        # Ensure that the interval contains 0
+        mn = _op.minimum(mn, _op.const(0.0, dtype="float32"))
+        mx = _op.maximum(mx, _op.const(0.0, dtype="float32"))
+
+        qmax = 255
+
+        # reduce_range became True in v1.6
+        if is_version_greater_than("1.5.1"):
+            qmax = 127
+
+        scale = (mx - mn) / _expr.const(qmax, dtype="float32")
+
+        zero_point_from_min = -(mn / scale)
+        zero_point = _op.cast(_op.round(_op.clip(zero_point_from_min, 0.0, 
qmax)), "int32")
+
+        return scale, zero_point
+
+    def _impl(inputs, _):
+        weight = inputs[1][0]
+        weight_scale = inputs[1][1]
+        weight_zero_point = inputs[1][2]
+
+        inp = inputs[0]
+
+        input_scale, input_zero_point = _calculate_qparam(inp)
+        qinp = relay.qnn.op.quantize(inp, input_scale, input_zero_point, 
out_dtype="uint8")
+
+        data_shape = infer_shape(inp)
+
+        if len(data_shape) > 2:
+            qinp = _op.reverse_reshape(qinp, [-1, 0])
+
+        weight_shape = infer_shape(weight)
+        units = weight_shape[0]
+        dense = relay.qnn.op.dense(
+            qinp,
+            weight,
+            input_zero_point,
+            weight_zero_point,
+            input_scale,
+            weight_scale,
+            units=units,
+        )
+        bias_var = inputs[1][3]
+
+        dequant_scale = input_scale * weight_scale
+        dense_out = _op.cast(dense, "float32") * dequant_scale

Review comment:
       We should add that in qnn dequantize. It should be easy. (I just 
checked, I missed that optimization, it exists in other ops like conv2d and 
dense)
   
   




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