test_network_device.py 10.2 KB
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# -*- coding: utf-8 -*-

import functools
import os
import unittest

import numpy as np

from megenginelite import *

set_log_level(2)


def require_cuda(ngpu=1):
    """a decorator that disables a testcase if cuda is not enabled"""

    def dector(func):
        @functools.wraps(func)
        def wrapped(*args, **kwargs):
            if LiteGlobal.get_device_count(LiteDeviceType.LITE_CUDA) >= ngpu:
                return func(*args, **kwargs)

        return wrapped

    return dector


class TestShuffleNetCuda(unittest.TestCase):
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    source_dir = os.getenv("LITE_TEST_RESOURCE")
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    input_data_path = os.path.join(source_dir, "input_data.npy")
    correct_data_path = os.path.join(source_dir, "output_data.npy")
    model_path = os.path.join(source_dir, "shufflenet.mge")
    correct_data = np.load(correct_data_path).flatten()
    input_data = np.load(input_data_path)

    def check_correct(self, out_data, error=1e-4):
        out_data = out_data.flatten()
        assert np.isfinite(out_data.sum())
        assert self.correct_data.size == out_data.size
        for i in range(out_data.size):
            assert abs(out_data[i] - self.correct_data[i]) < error

    def do_forward(self, network, times=3):
        input_name = network.get_input_name(0)
        input_tensor = network.get_io_tensor(input_name)
        output_name = network.get_output_name(0)
        output_tensor = network.get_io_tensor(output_name)

        input_tensor.set_data_by_copy(self.input_data)
        for i in range(times):
            network.forward()
            network.wait()

        output_data = output_tensor.to_numpy()
        self.check_correct(output_data)


class TestNetwork(TestShuffleNetCuda):
    @require_cuda()
    def test_network_basic(self):
        config = LiteConfig()
        config.device_type = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config)
        network.load(self.model_path)

        input_name = network.get_input_name(0)
        input_tensor = network.get_io_tensor(input_name)
        output_name = network.get_output_name(0)
        output_tensor = network.get_io_tensor(output_name)

        assert input_tensor.layout.shapes[0] == 1
        assert input_tensor.layout.shapes[1] == 3
        assert input_tensor.layout.shapes[2] == 224
        assert input_tensor.layout.shapes[3] == 224
        assert input_tensor.layout.data_type == LiteDataType.LITE_FLOAT
        assert input_tensor.layout.ndim == 4

        self.do_forward(network)

    @require_cuda()
    def test_network_shared_data(self):
        config = LiteConfig()
        config.device_type = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config)
        network.load(self.model_path)

        input_name = network.get_input_name(0)
        input_tensor = network.get_io_tensor(input_name)
        output_name = network.get_output_name(0)
        output_tensor = network.get_io_tensor(output_name)

        input_tensor.set_data_by_share(self.input_data)
        for i in range(3):
            network.forward()
            network.wait()

        output_data = output_tensor.to_numpy()
        self.check_correct(output_data)

    @require_cuda(2)
    def test_network_set_device_id(self):
        config = LiteConfig()
        config.device_type = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config)
        assert network.device_id == 0

        network.device_id = 1
        network.load(self.model_path)
        assert network.device_id == 1

        with self.assertRaises(RuntimeError):
            network.device_id = 1

        self.do_forward(network)

    @require_cuda()
    def test_network_option(self):
        option = LiteOptions()
        option.weight_preprocess = 1
        option.var_sanity_check_first_run = 0

        config = LiteConfig(option=option)
        config.device_type = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config=config)
        network.load(self.model_path)

        self.do_forward(network)

    @require_cuda()
    def test_network_reset_io(self):
        option = LiteOptions()
        option.var_sanity_check_first_run = 0
        config = LiteConfig(option=option)

        config.device_type = LiteDeviceType.LITE_CUDA
        input_io = LiteIO("data")
        ios = LiteNetworkIO()
        ios.add_input(input_io)
        network = LiteNetwork(config=config, io=ios)
        network.load(self.model_path)

        input_tensor = network.get_io_tensor("data")
        assert input_tensor.device_type == LiteDeviceType.LITE_CPU

        self.do_forward(network)

    @require_cuda()
    def test_network_share_weights(self):
        option = LiteOptions()
        option.var_sanity_check_first_run = 0
        config = LiteConfig(option=option)
        config.device_type = LiteDeviceType.LITE_CUDA

        src_network = LiteNetwork(config=config)
        src_network.load(self.model_path)

        new_network = LiteNetwork()
        new_network.enable_cpu_inplace_mode()
        new_network.share_weights_with(src_network)

        self.do_forward(src_network)
        self.do_forward(new_network)

    @require_cuda()
    def test_network_share_runtime_memory(self):
        option = LiteOptions()
        option.var_sanity_check_first_run = 0
        config = LiteConfig(option=option)
        config.device_type = LiteDeviceType.LITE_CUDA

        src_network = LiteNetwork(config=config)
        src_network.load(self.model_path)

        new_network = LiteNetwork()
        new_network.enable_cpu_inplace_mode()
        new_network.share_runtime_memroy(src_network)
        new_network.load(self.model_path)

        self.do_forward(src_network)
        self.do_forward(new_network)

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    @require_cuda
    def test_network_start_callback(self):
        config = LiteConfig()
        config.device = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config)
        network.load(self.model_path)
        start_checked = False

        def start_callback(ios):
            nonlocal start_checked
            start_checked = True
            assert len(ios) == 1
            for key in ios:
                io = key
                data = ios[key].to_numpy().flatten()
                input_data = self.input_data.flatten()
                assert data.size == input_data.size
                assert io.name.decode("utf-8") == "data"
                for i in range(data.size):
                    assert data[i] == input_data[i]
            return 0

        network.set_start_callback(start_callback)
        self.do_forward(network, 1)
        assert start_checked == True

    @require_cuda
    def test_network_finish_callback(self):
        config = LiteConfig()
        config.device = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config)
        network.load(self.model_path)
        finish_checked = False

        def finish_callback(ios):
            nonlocal finish_checked
            finish_checked = True
            assert len(ios) == 1
            for key in ios:
                io = key
                data = ios[key].to_numpy().flatten()
                output_data = self.correct_data.flatten()
                assert data.size == output_data.size
                for i in range(data.size):
                    assert data[i] == output_data[i]
            return 0

        network.set_finish_callback(finish_callback)
        self.do_forward(network, 1)
        assert finish_checked == True

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    @require_cuda()
    def test_enable_profile(self):
        config = LiteConfig()
        config.device_type = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config)
        network.load(self.model_path)
        network.enable_profile_performance("./profile.json")

        self.do_forward(network)

        fi = open("./profile.json", "r")
        fi.close()
        os.remove("./profile.json")

    @require_cuda()
    def test_algo_workspace_limit(self):
        config = LiteConfig()
        config.device_type = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config)
        network.load(self.model_path)
        print("modify the workspace limit.")
        network.set_network_algo_workspace_limit(10000)
        self.do_forward(network)

    @require_cuda()
    def test_network_algo_policy(self):
        config = LiteConfig()
        config.device_type = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config)
        network.load(self.model_path)
        network.set_network_algo_policy(
            LiteAlgoSelectStrategy.LITE_ALGO_PROFILE
            | LiteAlgoSelectStrategy.LITE_ALGO_REPRODUCIBLE
        )
        self.do_forward(network)
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    @require_cuda()
    def test_enable_global_layout_transform(self):
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        config_ = LiteConfig(device_type=LiteDeviceType.LITE_CUDA)
        network = LiteNetwork(config=config_)
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        network.enable_global_layout_transform()
        network.load(self.model_path)
        self.do_forward(network)

    @require_cuda()
    def test_dump_layout_transform_model(self):
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        config_ = LiteConfig(device_type=LiteDeviceType.LITE_CUDA)
        network = LiteNetwork(config=config_)
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        network.enable_global_layout_transform()
        network.load(self.model_path)
        network.dump_layout_transform_model("./model_afer_layoutTrans.mgb")
        self.do_forward(network)

        fi = open("./model_afer_layoutTrans.mgb", "r")
        fi.close()
        os.remove("./model_afer_layoutTrans.mgb")
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    @require_cuda()
    def test_fast_run_and_global_layout_transform(self):

        config_ = LiteConfig()
        config_.device_type = LiteDeviceType.LITE_CUDA
        network = LiteNetwork(config_)
        fast_run_cache = "./algo_cache"
        global_layout_transform_model = "./model_afer_layoutTrans.mgb"
        network.set_network_algo_policy(
            LiteAlgoSelectStrategy.LITE_ALGO_PROFILE
            | LiteAlgoSelectStrategy.LITE_ALGO_OPTIMIZED
        )
        network.enable_global_layout_transform()
        network.load(self.model_path)
        self.do_forward(network)
        network.dump_layout_transform_model(global_layout_transform_model)
        LiteGlobal.dump_persistent_cache(fast_run_cache)
        fi = open(fast_run_cache, "r")
        fi.close()
        fi = open(global_layout_transform_model, "r")
        fi.close()

        LiteGlobal.set_persistent_cache(path=fast_run_cache)
        self.do_forward(network)

        os.remove(fast_run_cache)
        os.remove(global_layout_transform_model)