Пример #1
0
def test_join_running_workers_with_exception():
    class ExpectedException(Exception):
        pass

    count = 0

    def counter():
        nonlocal count
        time.sleep(0.1)
        count += 1
        return Batch(())

    with pytest.raises(ExpectedException):
        with spawn_workers([fake_device()
                            for _ in range(10)]) as (in_queues, out_queues):

            def call_in_worker(i, f):
                task = Task(CPUStream, compute=f, finalize=None)
                in_queues[i].put(task)

            for i in range(10):
                call_in_worker(i, counter)

            raise ExpectedException

    # There's no nondeterminism because only 1 task can be placed in input
    # queues.
    assert count == 10
Пример #2
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def test_compute_exception():
    """Task.compute returns (False, exc_info) on failure."""
    def zero_div():
        0 / 0

    with spawn_workers([torch.device("cpu")]) as (in_queues, out_queues):
        t = Task(CPUStream, compute=zero_div, finalize=None)
        in_queues[0].put(t)
        ok, exc_info = out_queues[0].get()

        assert not ok
        assert isinstance(exc_info, tuple)
        assert issubclass(exc_info[0], ZeroDivisionError)
Пример #3
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def test_grad_mode(grad_mode):
    def detect_grad_enabled():
        x = torch.rand(1, requires_grad=torch.is_grad_enabled())
        return Batch(x)

    with torch.set_grad_enabled(grad_mode):
        with spawn_workers([torch.device("cpu")]) as (in_queues, out_queues):
            task = Task(CPUStream, compute=detect_grad_enabled, finalize=None)
            in_queues[0].put(task)

            ok, (_, batch) = out_queues[0].get()

            assert ok
            assert batch[0].requires_grad == grad_mode
Пример #4
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def test_compute_success():
    """Task.compute returns (True, (task, batch)) on success."""
    def _42():
        return Batch(torch.tensor(42))

    with spawn_workers([torch.device("cpu")]) as (in_queues, out_queues):
        t = Task(CPUStream, compute=_42, finalize=None)
        in_queues[0].put(t)
        ok, (task, batch) = out_queues[0].get()

        assert ok
        assert task is t
        assert isinstance(batch, Batch)
        assert batch[0].item() == 42
Пример #5
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def test_worker_per_device():
    cpu = torch.device("cpu")
    cpu0 = torch.device("cpu", index=0)
    fake1 = fake_device()
    fake2 = fake_device()

    with spawn_workers([cpu, cpu, cpu0, fake1,
                        fake2]) as (in_queues, out_queues):
        assert len(in_queues) == len(out_queues) == 5

        # 0: cpu, 1: cpu, 2: cpu0
        assert in_queues[0] is in_queues[1] is in_queues[2]
        assert out_queues[0] is out_queues[1] is out_queues[2]

        # 3: fake1, 4: fake2
        assert in_queues[3] is not in_queues[4]
        assert out_queues[3] is not out_queues[4]
Пример #6
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def test_compute_multithreading():
    """Task.compute should be executed on multiple threads."""
    thread_ids = set()

    def log_thread_id():
        thread_id = threading.current_thread().ident
        thread_ids.add(thread_id)
        return Batch(())

    with spawn_workers([fake_device()
                        for _ in range(2)]) as (in_queues, out_queues):
        for i in range(2):
            t = Task(CPUStream, compute=log_thread_id, finalize=None)
            in_queues[i].put(t)
        for i in range(2):
            out_queues[i].get()

    assert len(thread_ids) == 2
Пример #7
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def test_join_running_workers():
    count = 0

    def counter():
        nonlocal count
        time.sleep(0.1)
        count += 1
        return Batch(())

    with spawn_workers([fake_device()
                        for _ in range(10)]) as (in_queues, out_queues):

        def call_in_worker(i, f):
            task = Task(CPUStream, compute=f, finalize=None)
            in_queues[i].put(task)

        for i in range(10):
            call_in_worker(i, counter)

    # There's no nondeterminism because 'spawn_workers' joins all running
    # workers.
    assert count == 10