# Copyright (c) ONNX Project Contributors # # SPDX-License-Identifier: Apache-2.0 from __future__ import annotations import numpy as np import onnx from onnx.backend.test.case.base import Base from onnx.backend.test.case.node import expect class ReduceMax(Base): @staticmethod def export_do_not_keepdims() -> None: shape = [3, 2, 2] axes = np.array([1], dtype=np.int64) keepdims = 0 node = onnx.helper.make_node( "ReduceMax", inputs=["data", "axes"], outputs=["reduced"], keepdims=keepdims, ) data = np.array( [[[5, 1], [20, 2]], [[30, 1], [40, 2]], [[55, 1], [60, 2]]], dtype=np.float32, ) reduced = np.maximum.reduce(data, axis=tuple(axes), keepdims=keepdims == 1) # print(reduced) # [[20., 2.] # [40., 2.] # [60., 2.]] expect( node, inputs=[data, axes], outputs=[reduced], name="test_reduce_max_do_not_keepdims_example", opset_imports=[onnx.helper.make_opsetid("", 18)], ) np.random.seed(0) data = np.random.uniform(-10, 10, shape).astype(np.float32) reduced = np.maximum.reduce(data, axis=tuple(axes), keepdims=keepdims == 1) expect( node, inputs=[data, axes], outputs=[reduced], name="test_reduce_max_do_not_keepdims_random", opset_imports=[onnx.helper.make_opsetid("", 18)], ) @staticmethod def export_keepdims() -> None: shape = [3, 2, 2] axes = np.array([1], dtype=np.int64) keepdims = 1 node = onnx.helper.make_node( "ReduceMax", inputs=["data", "axes"], outputs=["reduced"], keepdims=keepdims, ) data = np.array( [[[5, 1], [20, 2]], [[30, 1], [40, 2]], [[55, 1], [60, 2]]], dtype=np.float32, ) reduced = np.maximum.reduce(data, axis=tuple(axes), keepdims=keepdims == 1) # print(reduced) # [[[20., 2.]] # [[40., 2.]] # [[60., 2.]]] expect( node, inputs=[data, axes], outputs=[reduced], name="test_reduce_max_keepdims_example", opset_imports=[onnx.helper.make_opsetid("", 18)], ) np.random.seed(0) data = np.random.uniform(-10, 10, shape).astype(np.float32) reduced = np.maximum.reduce(data, axis=tuple(axes), keepdims=keepdims == 1) expect( node, inputs=[data, axes], outputs=[reduced], name="test_reduce_max_keepdims_random", opset_imports=[onnx.helper.make_opsetid("", 18)], ) @staticmethod def export_default_axes_keepdims() -> None: shape = [3, 2, 2] axes = None keepdims = 1 node = onnx.helper.make_node( "ReduceMax", inputs=["data"], outputs=["reduced"], keepdims=keepdims ) data = np.array( [[[5, 1], [20, 2]], [[30, 1], [40, 2]], [[55, 1], [60, 2]]], dtype=np.float32, ) reduced = np.maximum.reduce(data, axis=axes, keepdims=keepdims == 1) expect( node, inputs=[data], outputs=[reduced], name="test_reduce_max_default_axes_keepdim_example", opset_imports=[onnx.helper.make_opsetid("", 18)], ) np.random.seed(0) data = np.random.uniform(-10, 10, shape).astype(np.float32) reduced = np.maximum.reduce(data, axis=axes, keepdims=keepdims == 1) expect( node, inputs=[data], outputs=[reduced], name="test_reduce_max_default_axes_keepdims_random", opset_imports=[onnx.helper.make_opsetid("", 18)], ) @staticmethod def export_negative_axes_keepdims() -> None: shape = [3, 2, 2] axes = np.array([-2], dtype=np.int64) keepdims = 1 node = onnx.helper.make_node( "ReduceMax", inputs=["data", "axes"], outputs=["reduced"], keepdims=keepdims, ) data = np.array( [[[5, 1], [20, 2]], [[30, 1], [40, 2]], [[55, 1], [60, 2]]], dtype=np.float32, ) reduced = np.maximum.reduce(data, axis=tuple(axes), keepdims=keepdims == 1) # print(reduced) # [[[20., 2.]] # [[40., 2.]] # [[60., 2.]]] expect( node, inputs=[data, axes], outputs=[reduced], name="test_reduce_max_negative_axes_keepdims_example", opset_imports=[onnx.helper.make_opsetid("", 18)], ) np.random.seed(0) data = np.random.uniform(-10, 10, shape).astype(np.float32) reduced = np.maximum.reduce(data, axis=tuple(axes), keepdims=keepdims == 1) expect( node, inputs=[data, axes], outputs=[reduced], name="test_reduce_max_negative_axes_keepdims_random", opset_imports=[onnx.helper.make_opsetid("", 18)], ) @staticmethod def export_bool_inputs() -> None: axes = np.array([1], dtype=np.int64) keepdims = 1 node = onnx.helper.make_node( "ReduceMax", inputs=["data", "axes"], outputs=["reduced"], keepdims=keepdims, ) data = np.array( [[True, True], [True, False], [False, True], [False, False]], ) reduced = np.maximum.reduce(data, axis=tuple(axes), keepdims=bool(keepdims)) # print(reduced) # [[True], # [True], # [True], # [False]] expect( node, inputs=[data, axes], outputs=[reduced], name="test_reduce_max_bool_inputs", ) @staticmethod def export_empty_set() -> None: shape = [2, 0, 4] keepdims = 1 reduced_shape = [2, 1, 4] node = onnx.helper.make_node( "ReduceMax", inputs=["data", "axes"], outputs=["reduced"], keepdims=keepdims, ) data = np.array([], dtype=np.float32).reshape(shape) axes = np.array([1], dtype=np.int64) one = np.array(np.ones(reduced_shape, dtype=np.float32)) zero = np.array(np.zeros(reduced_shape, dtype=np.float32)) reduced = -(one / zero) # -inf expect( node, inputs=[data, axes], outputs=[reduced], name="test_reduce_max_empty_set", )