ray/test/component_failures_test.py

459 lines
14 KiB
Python

from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import os
import json
import signal
import sys
import time
import numpy as np
import pytest
import ray
from ray.test.cluster_utils import Cluster
from ray.test.test_utils import run_string_as_driver_nonblocking
@pytest.fixture
def ray_start_workers_separate():
# Start the Ray processes.
ray.worker._init(
num_cpus=1,
start_workers_from_local_scheduler=False,
start_ray_local=True,
redirect_output=True)
yield None
# The code after the yield will run as teardown code.
ray.shutdown()
@pytest.fixture
def shutdown_only():
yield None
# The code after the yield will run as teardown code.
ray.shutdown()
@pytest.fixture
def ray_start_cluster():
node_args = {
"resources": dict(CPU=8),
"_internal_config": json.dumps({
"initial_reconstruction_timeout_milliseconds": 1000,
"num_heartbeats_timeout": 10
})
}
# Start with 4 worker nodes and 8 cores each.
g = Cluster(initialize_head=True, connect=True, head_node_args=node_args)
workers = []
for _ in range(4):
workers.append(g.add_node(**node_args))
g.wait_for_nodes()
yield g
ray.shutdown()
g.shutdown()
# This test checks that when a worker dies in the middle of a get, the plasma
# store and raylet will not die.
@pytest.mark.skipif(
os.environ.get("RAY_USE_NEW_GCS") == "on",
reason="Not working with new GCS API.")
def test_dying_worker_get(shutdown_only):
# Start the Ray processes.
ray.init(num_cpus=2)
@ray.remote
def sleep_forever():
time.sleep(10**6)
@ray.remote
def get_worker_pid():
return os.getpid()
x_id = sleep_forever.remote()
time.sleep(0.01) # Try to wait for the sleep task to get scheduled.
# Get the PID of the other worker.
worker_pid = ray.get(get_worker_pid.remote())
@ray.remote
def f(id_in_a_list):
ray.get(id_in_a_list[0])
# Have the worker wait in a get call.
result_id = f.remote([x_id])
time.sleep(1)
# Make sure the task hasn't finished.
ready_ids, _ = ray.wait([result_id], timeout=0)
assert len(ready_ids) == 0
# Kill the worker.
os.kill(worker_pid, signal.SIGKILL)
time.sleep(0.1)
# Make sure the sleep task hasn't finished.
ready_ids, _ = ray.wait([x_id], timeout=0)
assert len(ready_ids) == 0
# Seal the object so the store attempts to notify the worker that the
# get has been fulfilled.
ray.worker.global_worker.put_object(x_id, 1)
time.sleep(0.1)
# Make sure that nothing has died.
assert ray.services.all_processes_alive()
# This test checks that when a driver dies in the middle of a get, the plasma
# store and raylet will not die.
@pytest.mark.skipif(
os.environ.get("RAY_USE_NEW_GCS") == "on",
reason="Not working with new GCS API.")
def test_dying_driver_get(shutdown_only):
# Start the Ray processes.
address_info = ray.init(num_cpus=1)
@ray.remote
def sleep_forever():
time.sleep(10**6)
x_id = sleep_forever.remote()
driver = """
import ray
ray.init("{}")
ray.get(ray.ObjectID(ray.utils.hex_to_binary("{}")))
""".format(address_info["redis_address"], x_id.hex())
p = run_string_as_driver_nonblocking(driver)
# Make sure the driver is running.
time.sleep(1)
assert p.poll() is None
# Kill the driver process.
p.kill()
p.wait()
time.sleep(0.1)
# Make sure the original task hasn't finished.
ready_ids, _ = ray.wait([x_id], timeout=0)
assert len(ready_ids) == 0
# Seal the object so the store attempts to notify the worker that the
# get has been fulfilled.
ray.worker.global_worker.put_object(x_id, 1)
time.sleep(0.1)
# Make sure that nothing has died.
assert ray.services.all_processes_alive()
# This test checks that when a worker dies in the middle of a wait, the plasma
# store and raylet will not die.
@pytest.mark.skipif(
os.environ.get("RAY_USE_NEW_GCS") == "on",
reason="Not working with new GCS API.")
def test_dying_worker_wait(shutdown_only):
ray.init(num_cpus=2)
@ray.remote
def sleep_forever():
time.sleep(10**6)
@ray.remote
def get_pid():
return os.getpid()
x_id = sleep_forever.remote()
# Get the PID of the worker that block_in_wait will run on (sleep a little
# to make sure that sleep_forever has already started).
time.sleep(0.1)
worker_pid = ray.get(get_pid.remote())
@ray.remote
def block_in_wait(object_id_in_list):
ray.wait(object_id_in_list)
# Have the worker wait in a wait call.
block_in_wait.remote([x_id])
time.sleep(0.1)
# Kill the worker.
os.kill(worker_pid, signal.SIGKILL)
time.sleep(0.1)
# Create the object.
ray.worker.global_worker.put_object(x_id, 1)
time.sleep(0.1)
# Make sure that nothing has died.
assert ray.services.all_processes_alive()
# This test checks that when a driver dies in the middle of a wait, the plasma
# store and raylet will not die.
@pytest.mark.skipif(
os.environ.get("RAY_USE_NEW_GCS") == "on",
reason="Not working with new GCS API.")
def test_dying_driver_wait(shutdown_only):
# Start the Ray processes.
address_info = ray.init(num_cpus=1)
@ray.remote
def sleep_forever():
time.sleep(10**6)
x_id = sleep_forever.remote()
driver = """
import ray
ray.init("{}")
ray.wait([ray.ObjectID(ray.utils.hex_to_binary("{}"))])
""".format(address_info["redis_address"], x_id.hex())
p = run_string_as_driver_nonblocking(driver)
# Make sure the driver is running.
time.sleep(1)
assert p.poll() is None
# Kill the driver process.
p.kill()
p.wait()
time.sleep(0.1)
# Make sure the original task hasn't finished.
ready_ids, _ = ray.wait([x_id], timeout=0)
assert len(ready_ids) == 0
# Seal the object so the store attempts to notify the worker that the
# wait can return.
ray.worker.global_worker.put_object(x_id, 1)
time.sleep(0.1)
# Make sure that nothing has died.
assert ray.services.all_processes_alive()
@pytest.fixture(params=[(1, 4), (4, 4)])
def ray_start_workers_separate_multinode(request):
num_local_schedulers = request.param[0]
num_initial_workers = request.param[1]
# Start the Ray processes.
ray.worker._init(
num_local_schedulers=num_local_schedulers,
start_workers_from_local_scheduler=False,
start_ray_local=True,
num_cpus=[num_initial_workers] * num_local_schedulers,
redirect_output=True)
yield num_local_schedulers, num_initial_workers
# The code after the yield will run as teardown code.
ray.shutdown()
def test_worker_failed(ray_start_workers_separate_multinode):
num_local_schedulers, num_initial_workers = (
ray_start_workers_separate_multinode)
@ray.remote
def f(x):
time.sleep(0.5)
return x
# Submit more tasks than there are workers so that all workers and
# cores are utilized.
object_ids = [
f.remote(i) for i in range(num_initial_workers * num_local_schedulers)
]
object_ids += [f.remote(object_id) for object_id in object_ids]
# Allow the tasks some time to begin executing.
time.sleep(0.1)
# Kill the workers as the tasks execute.
for worker in (
ray.services.all_processes[ray.services.PROCESS_TYPE_WORKER]):
worker.terminate()
time.sleep(0.1)
# Make sure that we can still get the objects after the executing tasks
# died.
ray.get(object_ids)
def _test_component_failed(component_type):
"""Kill a component on all worker nodes and check workload succeeds."""
# Start with 4 workers and 4 cores.
num_local_schedulers = 4
num_workers_per_scheduler = 8
ray.worker._init(
num_local_schedulers=num_local_schedulers,
start_ray_local=True,
num_cpus=[num_workers_per_scheduler] * num_local_schedulers,
redirect_output=True,
_internal_config=json.dumps({
"initial_reconstruction_timeout_milliseconds": 1000,
"num_heartbeats_timeout": 10,
}))
# Submit many tasks with many dependencies.
@ray.remote
def f(x):
return x
@ray.remote
def g(*xs):
return 1
# Kill the component on all nodes except the head node as the tasks
# execute. Do this in a loop while submitting tasks between each
# component failure.
time.sleep(0.1)
components = ray.services.all_processes[component_type]
for process in components[1:]:
# Submit a round of tasks with many dependencies.
x = 1
for _ in range(1000):
x = f.remote(x)
xs = [g.remote(1)]
for _ in range(100):
xs.append(g.remote(*xs))
xs.append(g.remote(1))
# Kill a component on one of the nodes.
process.terminate()
time.sleep(1)
process.kill()
process.wait()
assert not process.poll() is None
# Make sure that we can still get the objects after the
# executing tasks died.
ray.get(x)
ray.get(xs)
def check_components_alive(component_type, check_component_alive):
"""Check that a given component type is alive on all worker nodes.
"""
components = ray.services.all_processes[component_type][1:]
for component in components:
if check_component_alive:
assert component.poll() is None
else:
print("waiting for " + component_type + " with PID " +
str(component.pid) + "to terminate")
component.wait()
print("done waiting for " + component_type + " with PID " +
str(component.pid) + "to terminate")
assert not component.poll() is None
def test_raylet_failed():
# Kill all local schedulers on worker nodes.
_test_component_failed(ray.services.PROCESS_TYPE_RAYLET)
# The plasma stores should still be alive on the worker nodes.
check_components_alive(ray.services.PROCESS_TYPE_PLASMA_STORE, True)
ray.shutdown()
@pytest.mark.skipif(
os.environ.get("RAY_USE_NEW_GCS") == "on",
reason="Hanging with new GCS API.")
def test_plasma_store_failed():
# Kill all plasma stores on worker nodes.
_test_component_failed(ray.services.PROCESS_TYPE_PLASMA_STORE)
# No processes should be left alive on the worker nodes.
check_components_alive(ray.services.PROCESS_TYPE_PLASMA_STORE, False)
check_components_alive(ray.services.PROCESS_TYPE_RAYLET, False)
ray.shutdown()
def test_actor_creation_node_failure(ray_start_cluster):
# TODO(swang): Refactor test_raylet_failed, etc to reuse the below code.
cluster = ray_start_cluster
@ray.remote
class Child(object):
def __init__(self, death_probability):
self.death_probability = death_probability
def ping(self):
# Exit process with some probability.
exit_chance = np.random.rand()
if exit_chance < self.death_probability:
sys.exit(-1)
num_children = 100
# Children actors will die about half the time.
death_probability = 0.5
children = [Child.remote(death_probability) for _ in range(num_children)]
while len(cluster.list_all_nodes()) > 1:
for j in range(3):
# Submit some tasks on the actors. About half of the actors will
# fail.
children_out = [child.ping.remote() for child in children]
# Wait a while for all the tasks to complete. This should trigger
# reconstruction for any actor creation tasks that were forwarded
# to nodes that then failed.
ready, _ = ray.wait(
children_out,
num_returns=len(children_out),
timeout=5 * 60 * 1000)
assert len(ready) == len(children_out)
# Replace any actors that died.
for i, out in enumerate(children_out):
try:
ray.get(out)
except ray.worker.RayTaskError:
children[i] = Child.remote(death_probability)
# Remove a node. Any actor creation tasks that were forwarded to this
# node must be reconstructed.
cluster.remove_node(cluster.list_all_nodes()[-1])
@pytest.mark.skipif(
os.environ.get("RAY_USE_NEW_GCS") == "on",
reason="Hanging with new GCS API.")
def test_driver_lives_sequential():
ray.worker.init()
all_processes = ray.services.all_processes
processes = (all_processes[ray.services.PROCESS_TYPE_PLASMA_STORE] +
all_processes[ray.services.PROCESS_TYPE_RAYLET])
# Kill all the components sequentially.
for process in processes:
process.terminate()
time.sleep(0.1)
process.kill()
process.wait()
ray.shutdown()
# If the driver can reach the tearDown method, then it is still alive.
@pytest.mark.skipif(
os.environ.get("RAY_USE_NEW_GCS") == "on",
reason="Hanging with new GCS API.")
def test_driver_lives_parallel():
ray.worker.init()
all_processes = ray.services.all_processes
processes = (all_processes[ray.services.PROCESS_TYPE_PLASMA_STORE] +
all_processes[ray.services.PROCESS_TYPE_RAYLET])
# Kill all the components in parallel.
for process in processes:
process.terminate()
time.sleep(0.1)
for process in processes:
process.kill()
for process in processes:
process.wait()
# If the driver can reach the tearDown method, then it is still alive.
ray.shutdown()