698 lines
27 KiB
Python
698 lines
27 KiB
Python
import asyncio
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import logging
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from concurrent.futures import ThreadPoolExecutor
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from itertools import islice
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from typing import List, Optional
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import ray.dashboard.memory_utils as memory_utils
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from ray import NodeID
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from ray._common.utils import get_or_create_event_loop
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from ray._private.profiling import chrome_tracing_dump
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from ray._private.ray_constants import env_integer
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from ray.dashboard.state_api_utils import do_filter
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from ray.dashboard.utils import compose_state_message
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from ray.runtime_env import RuntimeEnv
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from ray.util.state.common import (
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RAY_MAX_LIMIT_FROM_API_SERVER,
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ActorState,
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ActorSummaries,
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JobState,
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ListApiOptions,
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ListApiResponse,
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NodeState,
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ObjectState,
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ObjectSummaries,
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PlacementGroupState,
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RuntimeEnvState,
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StateSummary,
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SummaryApiOptions,
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SummaryApiResponse,
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TaskState,
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TaskSummaries,
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WorkerState,
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protobuf_message_to_dict,
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protobuf_to_task_state_dict,
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)
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from ray.util.state.state_manager import DataSourceUnavailable, StateDataSourceClient
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logger = logging.getLogger(__name__)
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GCS_QUERY_FAILURE_WARNING = (
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"Failed to query data from GCS. It is due to "
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"(1) GCS is unexpectedly failed. "
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"(2) GCS is overloaded. "
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"(3) There's an unexpected network issue. "
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"Please check the gcs_server.out log to find the root cause."
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)
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NODE_QUERY_FAILURE_WARNING = (
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"Failed to query data from {type}. "
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"Queried {total} {type} "
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"and {network_failures} {type} failed to reply. It is due to "
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"(1) {type} is unexpectedly failed. "
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"(2) {type} is overloaded. "
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"(3) There's an unexpected network issue. Please check the "
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"{log_command} to find the root cause."
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)
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# TODO(sang): Move the class to state/state_manager.py.
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# TODO(sang): Remove *State and replaces with Pydantic or protobuf.
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# (depending on API interface standardization).
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class StateAPIManager:
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"""A class to query states from data source, caches, and post-processes
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the entries.
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"""
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def __init__(
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self,
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state_data_source_client: StateDataSourceClient,
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thread_pool_executor: ThreadPoolExecutor,
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):
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self._client = state_data_source_client
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self._thread_pool_executor = thread_pool_executor
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@property
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def data_source_client(self):
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return self._client
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async def list_actors(self, *, option: ListApiOptions) -> ListApiResponse:
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"""List all actor information from the cluster.
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Args:
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option: Query options (filters, limit, timeout, detail flag).
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Returns:
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{actor_id -> actor_data_in_dict}
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actor_data_in_dict's schema is in ActorState
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"""
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try:
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reply = await self._client.get_all_actor_info(
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timeout=option.timeout, filters=option.filters
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)
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except DataSourceUnavailable:
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raise DataSourceUnavailable(GCS_QUERY_FAILURE_WARNING)
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def transform(reply) -> ListApiResponse:
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result = []
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for message in reply.actor_table_data:
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# Note: this is different from actor_table_data_to_dict in actor_head.py
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# because we set preserving_proto_field_name=True so fields are
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# snake_case, while actor_table_data_to_dict in actor_head.py is
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# camelCase.
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# TODO(ryw): modify actor_table_data_to_dict to use snake_case, and
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# consolidate the code.
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data = protobuf_message_to_dict(
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message=message,
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fields_to_decode=[
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"actor_id",
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"owner_id",
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"job_id",
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"node_id",
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"placement_group_id",
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],
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)
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result.append(data)
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num_after_truncation = len(result) + reply.num_filtered
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result = do_filter(result, option.filters, ActorState, option.detail)
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num_filtered = len(result)
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# Sort to make the output deterministic.
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result.sort(key=lambda entry: entry["actor_id"])
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result = list(islice(result, option.limit))
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return ListApiResponse(
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result=result,
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total=reply.total,
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num_after_truncation=num_after_truncation,
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num_filtered=num_filtered,
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)
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return await get_or_create_event_loop().run_in_executor(
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self._thread_pool_executor, transform, reply
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)
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async def list_placement_groups(self, *, option: ListApiOptions) -> ListApiResponse:
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"""List all placement group information from the cluster.
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Args:
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option: Query options (filters, limit, timeout, detail flag).
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Returns:
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{pg_id -> pg_data_in_dict}
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pg_data_in_dict's schema is in PlacementGroupState
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"""
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try:
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reply = await self._client.get_all_placement_group_info(
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timeout=option.timeout
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)
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except DataSourceUnavailable:
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raise DataSourceUnavailable(GCS_QUERY_FAILURE_WARNING)
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def transform(reply) -> ListApiResponse:
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result = []
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for message in reply.placement_group_table_data:
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data = protobuf_message_to_dict(
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message=message,
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fields_to_decode=[
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"placement_group_id",
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"creator_job_id",
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"node_id",
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],
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)
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result.append(data)
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num_after_truncation = len(result)
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result = do_filter(
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result, option.filters, PlacementGroupState, option.detail
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)
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num_filtered = len(result)
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# Sort to make the output deterministic.
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result.sort(key=lambda entry: entry["placement_group_id"])
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return ListApiResponse(
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result=list(islice(result, option.limit)),
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total=reply.total,
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num_after_truncation=num_after_truncation,
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num_filtered=num_filtered,
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)
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return await get_or_create_event_loop().run_in_executor(
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self._thread_pool_executor, transform, reply
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)
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async def list_nodes(self, *, option: ListApiOptions) -> ListApiResponse:
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"""List all node information from the cluster.
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Args:
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option: Query options (filters, limit, timeout, detail flag).
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Returns:
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{node_id -> node_data_in_dict}
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node_data_in_dict's schema is in NodeState
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"""
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try:
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reply = await self._client.get_all_node_info(
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timeout=option.timeout, filters=option.filters
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)
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except DataSourceUnavailable:
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raise DataSourceUnavailable(GCS_QUERY_FAILURE_WARNING)
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def transform(reply) -> ListApiResponse:
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node_infos, num_truncated = reply
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result = []
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for node_info in node_infos.values():
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data = protobuf_message_to_dict(
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message=node_info, fields_to_decode=["node_id"]
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)
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data["node_ip"] = data["node_manager_address"]
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data["start_time_ms"] = int(data["start_time_ms"])
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data["end_time_ms"] = int(data["end_time_ms"])
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death_info = data.get("death_info", {})
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data["state_message"] = compose_state_message(
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death_info.get("reason", None),
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death_info.get("reason_message", None),
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)
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result.append(data)
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num_after_truncation = len(result)
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total = num_after_truncation + num_truncated
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result = do_filter(result, option.filters, NodeState, option.detail)
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num_filtered = len(result)
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# Sort to make the output deterministic.
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result.sort(key=lambda entry: entry["node_id"])
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result = list(islice(result, option.limit))
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return ListApiResponse(
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result=result,
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total=total,
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num_after_truncation=num_after_truncation,
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num_filtered=num_filtered,
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)
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return await get_or_create_event_loop().run_in_executor(
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self._thread_pool_executor, transform, reply
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)
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async def list_workers(self, *, option: ListApiOptions) -> ListApiResponse:
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"""List all worker information from the cluster.
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Args:
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option: Query options (filters, limit, timeout, detail flag).
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Returns:
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{worker_id -> worker_data_in_dict}
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worker_data_in_dict's schema is in WorkerState
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"""
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try:
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reply = await self._client.get_all_worker_info(
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timeout=option.timeout,
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filters=option.filters,
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)
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except DataSourceUnavailable:
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raise DataSourceUnavailable(GCS_QUERY_FAILURE_WARNING)
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def transform(reply) -> ListApiResponse:
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result = []
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for message in reply.worker_table_data:
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data = protobuf_message_to_dict(
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message=message, fields_to_decode=["worker_id", "node_id"]
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)
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data["worker_id"] = data["worker_address"]["worker_id"]
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data["node_id"] = data["worker_address"]["node_id"]
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data["ip"] = data["worker_address"]["ip_address"]
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data["start_time_ms"] = int(data["start_time_ms"])
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data["end_time_ms"] = int(data["end_time_ms"])
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data["worker_launch_time_ms"] = int(data["worker_launch_time_ms"])
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data["worker_launched_time_ms"] = int(data["worker_launched_time_ms"])
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result.append(data)
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num_after_truncation = len(result)
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result = do_filter(result, option.filters, WorkerState, option.detail)
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num_filtered = len(result)
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# Sort to make the output deterministic.
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result.sort(key=lambda entry: entry["worker_id"])
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result = list(islice(result, option.limit))
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return ListApiResponse(
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result=result,
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total=reply.total,
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num_after_truncation=num_after_truncation,
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num_filtered=num_filtered,
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)
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return await get_or_create_event_loop().run_in_executor(
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self._thread_pool_executor, transform, reply
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)
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async def list_jobs(self, *, option: ListApiOptions) -> ListApiResponse:
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try:
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reply = await self._client.get_job_info(timeout=option.timeout)
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except DataSourceUnavailable:
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raise DataSourceUnavailable(GCS_QUERY_FAILURE_WARNING)
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def transform(reply) -> ListApiResponse:
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result = [job.dict() for job in reply]
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total = len(result)
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result = do_filter(result, option.filters, JobState, option.detail)
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num_filtered = len(result)
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result.sort(key=lambda entry: entry["job_id"] or "")
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result = list(islice(result, option.limit))
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return ListApiResponse(
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result=result,
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total=total,
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num_after_truncation=total,
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num_filtered=num_filtered,
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)
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return await get_or_create_event_loop().run_in_executor(
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self._thread_pool_executor, transform, reply
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)
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async def list_tasks(self, *, option: ListApiOptions) -> ListApiResponse:
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"""List all task information from the cluster.
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Args:
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option: Query options (filters, limit, timeout, detail flag,
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exclude_driver).
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Returns:
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{task_id -> task_data_in_dict}
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task_data_in_dict's schema is in TaskState
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"""
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try:
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reply = await self._client.get_all_task_info(
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timeout=option.timeout,
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filters=option.filters,
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exclude_driver=option.exclude_driver,
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)
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except DataSourceUnavailable:
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raise DataSourceUnavailable(GCS_QUERY_FAILURE_WARNING)
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def transform(reply) -> ListApiResponse:
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"""
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Transforms from proto to dict, applies filters, sorts, and truncates.
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This function is executed in a separate thread.
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"""
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result = [
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protobuf_to_task_state_dict(message) for message in reply.events_by_task
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]
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# Num pre-truncation is the number of tasks returned from
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# source + num filtered on source
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num_after_truncation = len(result)
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num_total = len(result) + reply.num_status_task_events_dropped
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# Only certain filters are done on GCS, so here the filter function is still
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# needed to apply all the filters
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result = do_filter(result, option.filters, TaskState, option.detail)
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num_filtered = len(result)
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result.sort(key=lambda entry: entry["task_id"])
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result = list(islice(result, option.limit))
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# TODO(rickyx): we could do better with the warning logic. It's messy now.
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return ListApiResponse(
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result=result,
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total=num_total,
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num_after_truncation=num_after_truncation,
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num_filtered=num_filtered,
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)
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# In the error case
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if reply.status.code != 0:
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return ListApiResponse(
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result=[],
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total=0,
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num_after_truncation=0,
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num_filtered=0,
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warnings=[reply.status.message],
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)
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return await get_or_create_event_loop().run_in_executor(
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self._thread_pool_executor, transform, reply
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)
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async def list_objects(self, *, option: ListApiOptions) -> ListApiResponse:
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"""List all object information from the cluster.
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Args:
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option: Query options (filters, limit, timeout, detail flag).
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Returns:
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{object_id -> object_data_in_dict}
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object_data_in_dict's schema is in ObjectState
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"""
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all_node_infos, _ = await self._client.get_all_node_info(
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timeout=option.timeout,
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limit=None,
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filters=[("state", "=", "ALIVE")],
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)
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tasks = [
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self._client.get_object_info(
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node_info.node_manager_address,
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node_info.node_manager_port,
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timeout=option.timeout,
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)
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for node_info in all_node_infos.values()
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]
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replies = await asyncio.gather(
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*tasks,
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return_exceptions=True,
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)
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def transform(replies) -> ListApiResponse:
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unresponsive_nodes = 0
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worker_stats = []
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total_objects = 0
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for reply in replies:
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if isinstance(reply, DataSourceUnavailable):
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unresponsive_nodes += 1
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continue
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elif isinstance(reply, Exception):
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raise reply
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total_objects += reply.total
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for core_worker_stat in reply.core_workers_stats:
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# NOTE: Set preserving_proto_field_name=False here because
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# `construct_memory_table` requires a dictionary that has
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# modified protobuf name
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# (e.g., workerId instead of worker_id) as a key.
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worker_stats.append(
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protobuf_message_to_dict(
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message=core_worker_stat,
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fields_to_decode=["object_id"],
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preserving_proto_field_name=False,
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)
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)
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partial_failure_warning = None
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if len(tasks) > 0 and unresponsive_nodes > 0:
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warning_msg = NODE_QUERY_FAILURE_WARNING.format(
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type="raylet",
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total=len(tasks),
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network_failures=unresponsive_nodes,
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log_command="raylet.out",
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)
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if unresponsive_nodes == len(tasks):
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raise DataSourceUnavailable(warning_msg)
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partial_failure_warning = (
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f"The returned data may contain incomplete result. {warning_msg}"
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)
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result = []
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memory_table = memory_utils.construct_memory_table(worker_stats)
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for entry in memory_table.table:
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data = entry.as_dict()
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# `construct_memory_table` returns object_ref field which is indeed
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# object_id. We do transformation here.
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# TODO(sang): Refactor `construct_memory_table`.
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data["object_id"] = data["object_ref"]
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del data["object_ref"]
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data["ip"] = data["node_ip_address"]
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del data["node_ip_address"]
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data["type"] = data["type"].upper()
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data["task_status"] = (
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"NIL" if data["task_status"] == "-" else data["task_status"]
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)
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result.append(data)
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|
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# Add callsite warnings if it is not configured.
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callsite_warning = []
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callsite_enabled = env_integer("RAY_record_ref_creation_sites", 0)
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if not callsite_enabled:
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callsite_warning.append(
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"Callsite is not being recorded. "
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"To record callsite information for each ObjectRef created, set "
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"env variable RAY_record_ref_creation_sites=1 during `ray start` "
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"and `ray.init`."
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)
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num_after_truncation = len(result)
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result = do_filter(result, option.filters, ObjectState, option.detail)
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num_filtered = len(result)
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# Sort to make the output deterministic.
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result.sort(key=lambda entry: entry["object_id"])
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result = list(islice(result, option.limit))
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return ListApiResponse(
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result=result,
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partial_failure_warning=partial_failure_warning,
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total=total_objects,
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num_after_truncation=num_after_truncation,
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num_filtered=num_filtered,
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warnings=callsite_warning,
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)
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return await get_or_create_event_loop().run_in_executor(
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self._thread_pool_executor, transform, replies
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)
|
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|
|
async def list_runtime_envs(self, *, option: ListApiOptions) -> ListApiResponse:
|
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"""List all runtime env information from the cluster.
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|
|
Args:
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option: Query options (filters, limit, timeout, detail flag).
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Returns:
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A list of runtime env information in the cluster.
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The schema of returned "dict" is equivalent to the
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`RuntimeEnvState` protobuf message.
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We don't have id -> data mapping like other API because runtime env
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doesn't have unique ids.
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"""
|
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live_node_infos, _ = await self._client.get_all_node_info(
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timeout=option.timeout,
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limit=None,
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filters=[("state", "=", "ALIVE")],
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)
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node_infos = [
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node_info
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for node_info in live_node_infos.values()
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if node_info.runtime_env_agent_port is not None
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]
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tasks = [
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self._client.get_runtime_envs_info(
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node_info.node_manager_address,
|
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node_info.runtime_env_agent_port,
|
|
timeout=option.timeout,
|
|
)
|
|
for node_info in node_infos
|
|
]
|
|
|
|
replies = await asyncio.gather(
|
|
*tasks,
|
|
return_exceptions=True,
|
|
)
|
|
|
|
def transform(replies) -> ListApiResponse:
|
|
result = []
|
|
unresponsive_nodes = 0
|
|
total_runtime_envs = 0
|
|
for node_info, reply in zip(node_infos, replies):
|
|
if isinstance(reply, DataSourceUnavailable):
|
|
unresponsive_nodes += 1
|
|
continue
|
|
elif isinstance(reply, Exception):
|
|
raise reply
|
|
|
|
total_runtime_envs += reply.total
|
|
states = reply.runtime_env_states
|
|
for state in states:
|
|
data = protobuf_message_to_dict(message=state, fields_to_decode=[])
|
|
# Need to deserialize this field.
|
|
data["runtime_env"] = RuntimeEnv.deserialize(
|
|
data["runtime_env"]
|
|
).to_dict()
|
|
data["node_id"] = NodeID(node_info.node_id).hex()
|
|
result.append(data)
|
|
|
|
partial_failure_warning = None
|
|
if len(tasks) > 0 and unresponsive_nodes > 0:
|
|
warning_msg = NODE_QUERY_FAILURE_WARNING.format(
|
|
type="agent",
|
|
total=len(tasks),
|
|
network_failures=unresponsive_nodes,
|
|
log_command="dashboard_agent.log",
|
|
)
|
|
if unresponsive_nodes == len(tasks):
|
|
raise DataSourceUnavailable(warning_msg)
|
|
partial_failure_warning = (
|
|
f"The returned data may contain incomplete result. {warning_msg}"
|
|
)
|
|
num_after_truncation = len(result)
|
|
result = do_filter(result, option.filters, RuntimeEnvState, option.detail)
|
|
num_filtered = len(result)
|
|
|
|
# Sort to make the output deterministic.
|
|
def sort_func(entry):
|
|
# If creation time is not there yet (runtime env is failed
|
|
# to be created or not created yet, they are the highest priority.
|
|
# Otherwise, "bigger" creation time is coming first.
|
|
if "creation_time_ms" not in entry:
|
|
return float("inf")
|
|
elif entry["creation_time_ms"] is None:
|
|
return float("inf")
|
|
else:
|
|
return float(entry["creation_time_ms"])
|
|
|
|
result.sort(key=sort_func, reverse=True)
|
|
result = list(islice(result, option.limit))
|
|
return ListApiResponse(
|
|
result=result,
|
|
partial_failure_warning=partial_failure_warning,
|
|
total=total_runtime_envs,
|
|
num_after_truncation=num_after_truncation,
|
|
num_filtered=num_filtered,
|
|
)
|
|
|
|
return await get_or_create_event_loop().run_in_executor(
|
|
self._thread_pool_executor, transform, replies
|
|
)
|
|
|
|
async def summarize_tasks(self, option: SummaryApiOptions) -> SummaryApiResponse:
|
|
summary_by = option.summary_by or "func_name"
|
|
if summary_by not in ["func_name", "task_name", "lineage"]:
|
|
raise ValueError(
|
|
'summary_by must be one of "func_name", "task_name", or "lineage".'
|
|
)
|
|
|
|
# For summary, try getting as many entries as possible to minimze data loss.
|
|
result = await self.list_tasks(
|
|
option=ListApiOptions(
|
|
limit=RAY_MAX_LIMIT_FROM_API_SERVER,
|
|
timeout=option.timeout,
|
|
filters=option.filters,
|
|
detail=summary_by == "lineage",
|
|
)
|
|
)
|
|
|
|
if summary_by in ("func_name", "task_name"):
|
|
summary_results = TaskSummaries.to_summary_by_func_name(tasks=result.result)
|
|
else:
|
|
# We will need the actors info for actor tasks.
|
|
actors = await self.list_actors(
|
|
option=ListApiOptions(
|
|
timeout=option.timeout,
|
|
limit=RAY_MAX_LIMIT_FROM_API_SERVER,
|
|
detail=True,
|
|
)
|
|
)
|
|
summary_results = TaskSummaries.to_summary_by_lineage(
|
|
tasks=result.result, actors=actors.result
|
|
)
|
|
summary = StateSummary(node_id_to_summary={"cluster": summary_results})
|
|
warnings = result.warnings
|
|
if (
|
|
summary_results.total_actor_scheduled
|
|
+ summary_results.total_actor_tasks
|
|
+ summary_results.total_tasks
|
|
< result.num_filtered
|
|
):
|
|
warnings = warnings or []
|
|
warnings.append(
|
|
"There is missing data in this aggregation. "
|
|
"Possibly due to task data being evicted to preserve memory."
|
|
)
|
|
return SummaryApiResponse(
|
|
total=result.total,
|
|
result=summary,
|
|
partial_failure_warning=result.partial_failure_warning,
|
|
warnings=warnings,
|
|
num_after_truncation=result.num_after_truncation,
|
|
num_filtered=result.num_filtered,
|
|
)
|
|
|
|
async def summarize_actors(self, option: SummaryApiOptions) -> SummaryApiResponse:
|
|
# For summary, try getting as many entries as possible to minimze data loss.
|
|
result = await self.list_actors(
|
|
option=ListApiOptions(
|
|
timeout=option.timeout,
|
|
limit=RAY_MAX_LIMIT_FROM_API_SERVER,
|
|
filters=option.filters,
|
|
)
|
|
)
|
|
summary = StateSummary(
|
|
node_id_to_summary={
|
|
"cluster": ActorSummaries.to_summary(actors=result.result)
|
|
}
|
|
)
|
|
return SummaryApiResponse(
|
|
total=result.total,
|
|
result=summary,
|
|
partial_failure_warning=result.partial_failure_warning,
|
|
warnings=result.warnings,
|
|
num_after_truncation=result.num_after_truncation,
|
|
num_filtered=result.num_filtered,
|
|
)
|
|
|
|
async def summarize_objects(self, option: SummaryApiOptions) -> SummaryApiResponse:
|
|
# For summary, try getting as many entries as possible to minimize data loss.
|
|
result = await self.list_objects(
|
|
option=ListApiOptions(
|
|
timeout=option.timeout,
|
|
limit=RAY_MAX_LIMIT_FROM_API_SERVER,
|
|
filters=option.filters,
|
|
)
|
|
)
|
|
summary = StateSummary(
|
|
node_id_to_summary={
|
|
"cluster": ObjectSummaries.to_summary(objects=result.result)
|
|
}
|
|
)
|
|
return SummaryApiResponse(
|
|
total=result.total,
|
|
result=summary,
|
|
partial_failure_warning=result.partial_failure_warning,
|
|
warnings=result.warnings,
|
|
num_after_truncation=result.num_after_truncation,
|
|
num_filtered=result.num_filtered,
|
|
)
|
|
|
|
async def generate_task_timeline(self, job_id: Optional[str]) -> List[dict]:
|
|
filters = [("job_id", "=", job_id)] if job_id else None
|
|
result = await self.list_tasks(
|
|
option=ListApiOptions(detail=True, filters=filters, limit=10000)
|
|
)
|
|
return chrome_tracing_dump(result.result)
|