Files
ray-project--ray/python/ray/tests/test_multinode_failures.py
2026-07-13 13:17:40 +08:00

184 lines
5.8 KiB
Python

import os
import signal
import sys
import time
import pytest
import ray
import ray._private.ray_constants as ray_constants
from ray._common.test_utils import Semaphore
from ray._private.test_utils import get_other_nodes
from ray.cluster_utils import Cluster, cluster_not_supported
SIGKILL = signal.SIGKILL if sys.platform != "win32" else signal.SIGTERM
@pytest.mark.xfail(cluster_not_supported, reason="cluster not supported")
@pytest.fixture(params=[(1, 4), (4, 4)])
def ray_start_workers_separate_multinode(request):
num_nodes = request.param[0]
num_initial_workers = request.param[1]
# Start the Ray processes.
cluster = Cluster()
for _ in range(num_nodes):
cluster.add_node(
num_cpus=num_initial_workers, resources={"custom": num_initial_workers}
)
ray.init(address=cluster.address)
yield num_nodes, num_initial_workers
# The code after the yield will run as teardown code.
ray.shutdown()
cluster.shutdown()
def test_worker_failed(ray_start_workers_separate_multinode):
num_nodes, num_initial_workers = ray_start_workers_separate_multinode
block_worker = Semaphore.remote(0)
block_driver = Semaphore.remote(0)
ray.get([block_worker.locked.remote(), block_driver.locked.remote()])
# Acquire a custom resource that isn't released on `ray.get` to make sure
# this task gets spread across all the nodes.
@ray.remote(num_cpus=1, resources={"custom": 1})
def get_pids():
ray.get(block_driver.release.remote())
ray.get(block_worker.acquire.remote())
return os.getpid()
total_num_workers = num_nodes * num_initial_workers
pid_refs = [get_pids.remote() for _ in range(total_num_workers)]
ray.get([block_driver.acquire.remote() for _ in range(total_num_workers)])
ray.get([block_worker.release.remote() for _ in range(total_num_workers)])
pids = set(ray.get(pid_refs))
@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_refs = [f.remote(i) for i in range(num_initial_workers * num_nodes)]
object_refs += [f.remote(object_ref) for object_ref in object_refs]
# Allow the tasks some time to begin executing.
time.sleep(0.1)
# Kill the workers as the tasks execute.
for pid in pids:
try:
os.kill(pid, SIGKILL)
except OSError:
# The process may have already exited due to worker capping.
pass
time.sleep(0.1)
# Make sure that we either get the object or we get an appropriate
# exception.
for object_ref in object_refs:
try:
ray.get(object_ref)
except (ray.exceptions.RayTaskError, ray.exceptions.WorkerCrashedError):
pass
def _test_component_failed(cluster, component_type):
"""Kill a component on all worker nodes and check workload succeeds."""
# Submit many tasks with many dependencies.
@ray.remote
def f(x):
# Sleep to make sure that tasks actually fail mid-execution.
time.sleep(0.01)
return x
@ray.remote
def g(*xs):
# Sleep to make sure that tasks actually fail mid-execution. We
# only use it for direct calls because the test already takes a
# long time to run with the raylet codepath.
time.sleep(0.01)
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)
worker_nodes = get_other_nodes(cluster)
assert len(worker_nodes) > 0
for node in worker_nodes:
process = node.all_processes[component_type][0].process
# 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 process.poll() is not 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(cluster, component_type, check_component_alive):
"""Check that a given component type is alive on all worker nodes."""
worker_nodes = get_other_nodes(cluster)
assert len(worker_nodes) > 0
for node in worker_nodes:
process = node.all_processes[component_type][0].process
if check_component_alive:
assert process.poll() is None
else:
print(
"waiting for "
+ component_type
+ " with PID "
+ str(process.pid)
+ "to terminate"
)
process.wait()
print(
"done waiting for "
+ component_type
+ " with PID "
+ str(process.pid)
+ "to terminate"
)
assert process.poll() is not None
@pytest.mark.parametrize(
"ray_start_cluster",
[
{
"num_cpus": 8,
"num_nodes": 4,
"_system_config": {
# Raylet codepath is not stable with a shorter timeout.
"health_check_initial_delay_ms": 0,
"health_check_failure_threshold": 10,
},
}
],
indirect=True,
)
def test_raylet_failed(ray_start_cluster):
cluster = ray_start_cluster
# Kill all raylets on worker nodes.
_test_component_failed(cluster, ray_constants.PROCESS_TYPE_RAYLET)
if __name__ == "__main__":
sys.exit(pytest.main(["-sv", __file__]))