Files
microsoft--agent-lightning/agentlightning/store/memory.py
T
wehub-resource-sync 85742ab165
Deploy Documentation / deploy (push) Has been cancelled
CPU Test / Test (Utilities, legacy, Python 3.10) (push) Has been cancelled
CPU Test / Test (LLM proxy, stable, Python 3.11) (push) Has been cancelled
CPU Test / Test (Others, stable, Python 3.11) (push) Has been cancelled
CPU Test / Test (Store, stable, Python 3.11) (push) Has been cancelled
CPU Test / Test (Utilities, stable, Python 3.11) (push) Has been cancelled
CPU Test / Test (Weave, stable, Python 3.11) (push) Has been cancelled
CPU Test / Test (AgentOps, stable, Python 3.12) (push) Has been cancelled
CPU Test / Test (LLM proxy, stable, Python 3.12) (push) Has been cancelled
CPU Test / Test (Others, stable, Python 3.12) (push) Has been cancelled
CPU Test / Test (Weave, latest, Python 3.13) (push) Has been cancelled
Dashboard / Chromatic (push) Has been cancelled
CPU Test / Lint - fast (push) Has been cancelled
CPU Test / Lint - next (push) Has been cancelled
CPU Test / Lint - slow (push) Has been cancelled
CPU Test / Lint - JavaScript (push) Has been cancelled
CPU Test / Build documentation (push) Has been cancelled
CPU Test / Test (AgentOps, legacy, Python 3.10) (push) Has been cancelled
CPU Test / Test (LLM proxy, legacy, Python 3.10) (push) Has been cancelled
CPU Test / Test (Others, legacy, Python 3.10) (push) Has been cancelled
CPU Test / Test (Store, legacy, Python 3.10) (push) Has been cancelled
CPU Test / Test (Weave, legacy, Python 3.10) (push) Has been cancelled
CPU Test / Test (AgentOps, stable, Python 3.11) (push) Has been cancelled
CPU Test / Test (Store, stable, Python 3.12) (push) Has been cancelled
CPU Test / Test (Utilities, stable, Python 3.12) (push) Has been cancelled
CPU Test / Test (Weave, stable, Python 3.12) (push) Has been cancelled
CPU Test / Test (AgentOps, latest, Python 3.13) (push) Has been cancelled
CPU Test / Test (LLM proxy, latest, Python 3.13) (push) Has been cancelled
CPU Test / Test (Others, latest, Python 3.13) (push) Has been cancelled
CPU Test / Test (Store, latest, Python 3.13) (push) Has been cancelled
CPU Test / Test (Utilities, latest, Python 3.13) (push) Has been cancelled
CPU Test / Test (JavaScript) (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 12:44:17 +08:00

381 lines
16 KiB
Python

# Copyright (c) Microsoft. All rights reserved.
from __future__ import annotations
import asyncio
import logging
import sys
from collections.abc import Iterable
from collections.abc import Mapping as MappingABC
from typing import (
Any,
Callable,
Counter,
Dict,
List,
Literal,
Mapping,
Optional,
Sequence,
Set,
Tuple,
TypeVar,
Union,
cast,
)
import aiologic
from pydantic import BaseModel
from agentlightning.types import AttemptedRollout, NamedResources, PaginatedResult, ResourcesUpdate, Rollout, Span
from agentlightning.utils.metrics import MetricsBackend
from .base import UNSET, LightningStoreCapabilities, LightningStoreStatistics, Unset, is_finished, is_running
from .collection import InMemoryLightningCollections
from .collection_based import CollectionBasedLightningStore, tracked
T_callable = TypeVar("T_callable", bound=Callable[..., Any])
logger = logging.getLogger(__name__)
def estimate_model_size(obj: Any) -> int:
"""Rough recursive size estimate for Pydantic BaseModel instances."""
if isinstance(obj, BaseModel):
values = cast(Iterable[Any], obj.__dict__.values())
return sum(estimate_model_size(value) for value in values) + sys.getsizeof(cast(object, obj))
if isinstance(obj, MappingABC):
mapping = cast(Mapping[Any, Any], obj)
return sum(estimate_model_size(value) for value in mapping.values()) + sys.getsizeof(cast(object, obj))
if isinstance(obj, (list, tuple, set)):
iterable = cast(Iterable[Any], obj)
return sum(estimate_model_size(value) for value in iterable) + sys.getsizeof(cast(object, obj))
return sys.getsizeof(cast(object, obj))
def _detect_total_memory_bytes() -> int:
"""Best-effort detection of the total available system memory in bytes."""
try:
import psutil
return int(psutil.virtual_memory().total)
except ImportError:
# Fallback to 8GB if memory cannot be detected.
logger.error("psutil is not installed. Falling back to 8GB of memory in total.")
return 8 * 1024**3
class InMemoryLightningStore(CollectionBasedLightningStore[InMemoryLightningCollections]):
"""
In-memory implementation of LightningStore using Python data structures.
Thread-safe and async-compatible but data is not persistent.
Args:
thread_safe: Whether the store is thread-safe.
eviction_memory_threshold: The threshold for evicting spans in bytes.
By default, it's 70% of the total VRAM available.
safe_memory_threshold: The threshold for safe memory usage in bytes.
By default, it's 80% of the eviction threshold.
span_size_estimator: A function to estimate the size of a span in bytes.
By default, it's a simple size estimator that uses sys.getsizeof.
tracker: The metrics tracker to use.
scan_debounce_seconds: The debounce time for the scan for unhealthy rollouts.
Set to 0 to disable debouncing.
"""
def __init__(
self,
*,
thread_safe: bool = False,
eviction_memory_threshold: float | int | None = None,
safe_memory_threshold: float | int | None = None,
span_size_estimator: Callable[[Span], int] | None = None,
tracker: MetricsBackend | None = None,
scan_debounce_seconds: float = 10.0,
):
super().__init__(
collections=InMemoryLightningCollections(lock_type="thread" if thread_safe else "asyncio", tracker=tracker),
tracker=tracker,
scan_debounce_seconds=scan_debounce_seconds,
)
self._thread_safe = thread_safe
self._start_time_by_rollout: Dict[str, float] = {}
self._span_bytes_by_rollout: Dict[str, int] = Counter()
self._total_span_bytes: int = 0
self._evicted_rollout_span_sets: Set[str] = set()
self._memory_capacity_bytes = _detect_total_memory_bytes()
if self._memory_capacity_bytes <= 0:
raise ValueError("Detected memory capacity must be positive")
self._eviction_threshold_bytes = self._resolve_memory_threshold(
eviction_memory_threshold,
default_ratio=0.7,
capacity_bytes=self._memory_capacity_bytes,
name="eviction_memory_threshold",
minimum=1,
)
if safe_memory_threshold is None:
safe_memory_threshold = max(int(self._eviction_threshold_bytes * 0.8), 0)
self._safe_threshold_bytes = self._resolve_memory_threshold(
safe_memory_threshold,
default_ratio=self._eviction_threshold_bytes / self._memory_capacity_bytes,
capacity_bytes=self._memory_capacity_bytes,
name="safe_memory_threshold",
minimum=0,
)
if not (0 <= self._safe_threshold_bytes < self._eviction_threshold_bytes):
raise ValueError("safe_memory_threshold must be smaller than eviction_memory_threshold")
self._custom_span_size_estimator = span_size_estimator
# Completion tracking for wait_for_rollouts (cross-loop safe)
self._completion_events: Dict[str, aiologic.Event] = {}
# Running rollouts cache, including preparing and running rollouts
self._running_rollout_ids: Set[str] = set()
# Caches the latest resources ID.
self._latest_resources_id: Union[str, None, Unset] = UNSET
@property
def capabilities(self) -> LightningStoreCapabilities:
"""Return the capabilities of the store."""
return LightningStoreCapabilities(
thread_safe=self._thread_safe,
async_safe=True,
zero_copy=False,
otlp_traces=False,
)
async def statistics(self) -> LightningStoreStatistics:
"""Return the statistics of the store."""
return {
**(await super().statistics()),
"total_span_bytes": self._total_span_bytes,
"eviction_threshold_bytes": self._eviction_threshold_bytes,
"safe_threshold_bytes": self._safe_threshold_bytes,
"memory_capacity_bytes": self._memory_capacity_bytes,
}
@tracked("wait_for_rollout")
async def wait_for_rollout(self, rollout_id: str, timeout: Optional[float] = None) -> Optional[Rollout]:
"""Wait for a specific rollout to complete with a timeout."""
async with self.collections.atomic(mode="r", snapshot=self._read_snapshot, labels=["rollouts"]) as collections:
rollout = await collections.rollouts.get({"rollout_id": {"exact": rollout_id}})
if rollout and is_finished(rollout):
return rollout
if timeout is not None and timeout <= 0:
return None
# If not completed and we have an event, wait for completion
if rollout_id in self._completion_events:
evt = self._completion_events[rollout_id]
# Wait for the event with proper timeout handling
# evt.wait() returns True if event was set, False if timeout occurred
if timeout is None:
# Wait indefinitely by polling with finite timeouts
# This allows threads to exit cleanly on shutdown
while True:
result = await asyncio.to_thread(evt.wait, 10.0) # Poll every 10 seconds
if result: # Event was set
break
# Loop and check again (continues indefinitely since timeout=None)
else:
# Wait with the specified timeout
result = await asyncio.to_thread(evt.wait, timeout)
# If event was set (not timeout), check if rollout is finished
if result:
async with self.collections.atomic(
mode="r", snapshot=self._read_snapshot, labels=["rollouts"]
) as collections:
rollout = await collections.rollouts.get({"rollout_id": {"exact": rollout_id}})
if rollout and is_finished(rollout):
return rollout
return None
@tracked("add_resources_inmemory")
async def add_resources(self, resources: NamedResources) -> ResourcesUpdate:
ret = await super().add_resources(resources)
async with self.collections.atomic(mode="rw", snapshot=self._read_snapshot, labels=["resources"]):
self._latest_resources_id = ret.resources_id
return ret
@tracked("update_resources_inmemory")
async def update_resources(self, resources_id: str, resources: NamedResources) -> ResourcesUpdate:
ret = await super().update_resources(resources_id, resources)
async with self.collections.atomic(mode="rw", snapshot=self._read_snapshot, labels=["resources"]):
self._latest_resources_id = ret.resources_id
return ret
@tracked("_post_update_rollout_inmemory")
async def _post_update_rollout(
self, rollouts: Sequence[Tuple[Rollout, Sequence[str]]], skip_enqueue: bool = False
) -> None:
"""Update the running rollout ids set when the rollout updates."""
await super()._post_update_rollout(rollouts, skip_enqueue=skip_enqueue)
async with self.collections.atomic(mode="rw", snapshot=self._read_snapshot, labels=["rollouts"]):
for rollout, _ in rollouts:
if is_running(rollout):
self._running_rollout_ids.add(rollout.rollout_id)
else:
self._running_rollout_ids.discard(rollout.rollout_id)
if is_finished(rollout):
self._completion_events.setdefault(rollout.rollout_id, aiologic.Event())
self._completion_events[rollout.rollout_id].set()
else:
self._completion_events.setdefault(rollout.rollout_id, aiologic.Event())
# Rollout status can never transition from finished to running (unlike attempt)
# so we don't need to clear the completion event even in case of retrying.
if rollout.rollout_id not in self._start_time_by_rollout:
self._start_time_by_rollout[rollout.rollout_id] = rollout.start_time
@tracked("_unlocked_query_rollouts_by_rollout_ids")
async def _unlocked_query_rollouts_by_rollout_ids(
self, collections: InMemoryLightningCollections, rollout_ids: Sequence[str]
) -> List[Rollout]:
"""Always use exact. This is faster than within filter for in-memory store."""
if len(rollout_ids) == 0:
return []
rollouts = [await collections.rollouts.get({"rollout_id": {"exact": rollout_id}}) for rollout_id in rollout_ids]
return [rollout for rollout in rollouts if rollout is not None]
@tracked("_unlocked_get_running_rollouts")
async def _unlocked_get_running_rollouts(self, collections: InMemoryLightningCollections) -> List[AttemptedRollout]:
"""Accelerated version of `_unlocked_get_running_rollouts` for in-memory store. Used for healthcheck."""
async with self.collections.atomic(
mode="r", snapshot=self._read_snapshot, labels=["rollouts", "attempts"]
) as collections:
rollouts = await self._unlocked_query_rollouts_by_rollout_ids(collections, list(self._running_rollout_ids))
running_rollouts: List[AttemptedRollout] = []
for rollout in rollouts:
latest_attempt = await collections.attempts.get(
filter={"rollout_id": {"exact": rollout.rollout_id}},
sort={"name": "sequence_id", "order": "desc"},
)
if not latest_attempt:
# The rollout is running but has no attempts, this should not happen
logger.error(f"Rollout {rollout.rollout_id} is running but has no attempts")
continue
running_rollouts.append(AttemptedRollout(**rollout.model_dump(), attempt=latest_attempt))
return running_rollouts
@tracked("query_spans_inmemory") # Since this method calls super, we need to track it separately
async def query_spans(
self,
rollout_id: str,
attempt_id: str | Literal["latest"] | None = None,
**kwargs: Any,
) -> PaginatedResult[Span]:
if rollout_id in self._evicted_rollout_span_sets:
raise RuntimeError(f"Spans for rollout {rollout_id} have been evicted")
return await super().query_spans(rollout_id, attempt_id, **kwargs)
@tracked("_post_add_spans")
async def _post_add_spans(self, spans: Sequence[Span], rollout_id: str, attempt_id: str) -> None:
"""In-memory store needs to maintain the span data in memory, and evict spans when memory is low."""
await super()._post_add_spans(spans, rollout_id, attempt_id)
async with self.collections.atomic(
mode="rw", snapshot=self._read_snapshot, labels=["rollouts", "spans"]
) as collections:
for span in spans:
await self._account_span_size(span)
await self._maybe_evict_spans(collections)
@tracked("_get_latest_resources_inmemory")
async def _get_latest_resources(self) -> Optional[ResourcesUpdate]:
if isinstance(self._latest_resources_id, Unset):
return await super()._get_latest_resources()
if self._latest_resources_id is not None:
async with self.collections.atomic(
mode="r", snapshot=self._read_snapshot, labels=["resources"]
) as collections:
return await collections.resources.get(filter={"resources_id": {"exact": self._latest_resources_id}})
return None
@staticmethod
def _resolve_memory_threshold(
value: float | int | None,
*,
default_ratio: float,
capacity_bytes: int,
name: str,
minimum: int,
) -> int:
if value is None:
resolved = int(capacity_bytes * default_ratio)
elif isinstance(value, float):
if minimum == 0:
if not (0 <= value <= 1):
raise ValueError(f"{name} ratio must be between 0 and 1 inclusive")
else:
if not (0 < value <= 1):
raise ValueError(f"{name} ratio must be greater than 0 and at most 1")
resolved = int(capacity_bytes * value)
else:
value_int = value
if value_int < 0:
raise ValueError(f"{name} must be non-negative")
resolved = value_int
if resolved < minimum:
raise ValueError(f"{name} must be at least {minimum} bytes")
return resolved
@tracked("_account_span_size")
async def _account_span_size(self, span: Span) -> int:
if self._custom_span_size_estimator is not None:
size = max(int(self._custom_span_size_estimator(span)), 0)
else:
size = estimate_model_size(span)
self._span_bytes_by_rollout[span.rollout_id] += size
self._total_span_bytes += size
return size
@tracked("_maybe_evict_spans")
async def _maybe_evict_spans(self, collections: InMemoryLightningCollections) -> None:
if self._total_span_bytes <= self._eviction_threshold_bytes:
return
logger.info(
f"Total span bytes: {self._total_span_bytes}, eviction threshold: {self._eviction_threshold_bytes}, "
f"safe threshold: {self._safe_threshold_bytes}. Evicting spans..."
)
candidates: List[tuple[float, str]] = [
(start_time, rollout_id) for rollout_id, start_time in self._start_time_by_rollout.items()
]
candidates.sort()
logger.info(f"Evicting spans for {len(candidates)} rollouts to free up memory...")
memory_consumed_before = self._total_span_bytes
for _, rollout_id in candidates:
if self._total_span_bytes <= self._safe_threshold_bytes:
break
logger.debug(f"Evicting spans for rollout {rollout_id} to free up memory...")
await self._evict_spans_for_rollout(collections, rollout_id)
logger.info(f"Freed up {memory_consumed_before - self._total_span_bytes} bytes of memory")
@tracked("_evict_spans_for_rollout")
async def _evict_spans_for_rollout(self, collections: InMemoryLightningCollections, rollout_id: str) -> None:
await collections.evict_spans_for_rollout(rollout_id)
removed_bytes = self._span_bytes_by_rollout.pop(rollout_id, 0)
if removed_bytes > 0:
# There is something removed for real
self._total_span_bytes = max(self._total_span_bytes - removed_bytes, 0)
self._evicted_rollout_span_sets.add(rollout_id)