import collections import caffe2.python.hypothesis_test_util as hu import hypothesis.strategies as st import numpy as np from caffe2.python import core, dyndep, workspace from caffe2.quantization.server.dnnlowp_test_utils import check_quantized_results_close from hypothesis import given dyndep.InitOpsLibrary("//caffe2/caffe2/quantization/server:dnnlowp_ops") workspace.GlobalInit(["caffe2", "--caffe2_omp_num_threads=11"]) class DNNLowPDequantizeOpTest(hu.HypothesisTestCase): @given(size=st.integers(1024, 2048), is_empty=st.booleans(), **hu.gcs_cpu_only) def test_dnnlowp_dequantize(self, size, is_empty, gc, dc): if is_empty: size = 0 min_ = -10.0 max_ = 20.0 X = (np.random.rand(size) * (max_ - min_) + min_).astype(np.float32) Output = collections.namedtuple("Output", ["Y", "op_type", "engine"]) outputs = [] op_type_list = ["Dequantize", "Int8Dequantize"] engine = "DNNLOWP" outputs.append(Output(X, op_type="", engine="")) for op_type in op_type_list: net = core.Net("test_net") quantize = core.CreateOperator( "Quantize", ["X"], ["X_q"], engine=engine, device_option=gc ) net.Proto().op.extend([quantize]) dequantize = core.CreateOperator( op_type, ["X_q"], ["Y"], engine=engine, device_option=gc ) net.Proto().op.extend([dequantize]) self.ws.create_blob("X").feed(X, device_option=gc) self.ws.run(net) outputs.append( Output(Y=self.ws.blobs["Y"].fetch(), op_type=op_type, engine=engine) ) check_quantized_results_close(outputs)