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petals/src/petals/server/cache.py

149 lines
6.8 KiB
Python

"""
A pytorch memory cache that can be allocated by ConnectionHandler (on cpu) and used over multiple calls to Runtime.
For now, the only purpose of this code is to ensure that allocated memory will be deleted properly.
"""
import asyncio
import contextlib
import ctypes
import multiprocessing as mp
import os
import time
from typing import AsyncContextManager, Dict, Optional, Union
import hivemind
import torch
from hivemind import use_hivemind_log_handler
from hivemind.utils import TensorDescriptor, get_logger
use_hivemind_log_handler("in_root_logger")
logger = get_logger(__file__)
Handle = int
class MemoryCache:
"""A shared cache for storing tensors that persist across calls. Main use case: storing past attention KVs"""
def __init__(self, device: Union[str, torch.device], max_size_bytes: Optional[int], alloc_timeout: float):
self.max_size_bytes = max_size_bytes if max_size_bytes is not None else (2**64 - 1)
self.alloc_timeout = alloc_timeout
self.device = device
self._lock_metadata, self.size_decreased_event = mp.Lock(), mp.Event()
self._current_size = mp.Value(ctypes.c_int64, 0, lock=False)
self._handle_counter = mp.Value(ctypes.c_int64, 0, lock=False)
self._active_handles: Optional[Dict[Handle, TensorDescriptor]] = None
self._allocated_tensors: Optional[Dict[Handle, torch.Tensor]] = None
self.runtime_pid = os.getpid()
self._pipe_recv, self._pipe_send = mp.Pipe(duplex=False) # any ConnectionHandler -> runtime
self._pending_messages = mp.Value(ctypes.c_int64, 0, lock=False)
self._lock_acquire_memory = mp.Lock()
self._memory_freed_event = mp.Event()
@property
def current_size_bytes(self) -> int:
return self._current_size.value
@current_size_bytes.setter
def current_size_bytes(self, value: int):
self._current_size.value = value
@property
def handle_counter(self) -> int:
return self._handle_counter.value
@handle_counter.setter
def handle_counter(self, value: int):
self._handle_counter.value = value
@contextlib.asynccontextmanager
async def allocate_cache(self, descr: TensorDescriptor) -> AsyncContextManager[Handle]:
"""
Create a handle that is associated with buffers on unique device. If cache full, raises AllocationFailed.
:param descr: allocate a tensor of this size, dtype, etc
:note: This function should be called by connection handlers, it can be called concurrently from multiple processes.
Furthermore, it can be called concurrently with at most one use_cache call in runtime.
"""
assert os.getpid() != self.runtime_pid, "must be called by a ConnectionHandler, not runtime"
assert descr.device is None and descr
allocated_handle = None
allocated_size_bytes = descr.numel() * torch.finfo(descr.dtype).bits // 8
loop = asyncio.get_event_loop()
try:
async with hivemind.utils.enter_asynchronously(self._lock_acquire_memory):
if self.current_size_bytes + allocated_size_bytes > self.max_size_bytes:
await loop.run_in_executor(
None, self._wait_until_available, allocated_size_bytes, timeout=self.alloc_timeout
)
async with hivemind.utils.enter_asynchronously(self._lock_metadata):
allocated_handle = int(self.handle_counter)
self.current_size_bytes += allocated_size_bytes
self.handle_counter += 1 # note: this will eventually overflow and it is okay
self._pending_messages.value += 1
self._pipe_send.send((allocated_handle, descr))
yield allocated_handle
finally:
if allocated_handle is not None:
async with hivemind.utils.enter_asynchronously(self._lock_metadata):
self._pending_messages.value += 1
self._pipe_send.send((allocated_handle, None)) # signal runtime to free that handle
self.current_size_bytes -= allocated_size_bytes
self._memory_freed_event.set()
def _wait_until_available(self, allocated_size: int, timeout: Optional[float] = None):
# note: this function should only be called inside _lock_acquire_memory!
if allocated_size > self.max_size_bytes:
raise AllocationFailed(
f"Could not allocate {allocated_size} bytes, max cache size = {self.max_size_bytes} bytes"
)
deadline = None if timeout is None else time.perf_counter() + timeout
while self.current_size_bytes + allocated_size > self.max_size_bytes:
remaining_time = deadline - time.perf_counter() if timeout is not None else None
if not self._memory_freed_event.wait(remaining_time):
raise AllocationFailed(
f"Server's attention cache is full, failed to allocate {allocated_size} bytes in {timeout} seconds"
)
self._memory_freed_event.clear()
@contextlib.contextmanager
def use_cache(self, handle: Handle) -> torch.Tensor:
"""
Return a tensor that was previously allocated with try_allocate_cache,
:note: This method is called by ExpertBackend in runtime: a single process with NO process parallelism.
However, runtime may call use_cache concurrently with one or more connection handlers calling allocate_cache
"""
assert os.getpid() == self.runtime_pid
# note: this specific function is not concurrent, so you can safely allocate/offload/defragment data here
with self._lock_metadata:
if self._allocated_tensors is None:
self._allocated_tensors = {}
# read creation/deletion requests from connection handlers
for i in range(int(self._pending_messages.value)):
recv_handle, recv_data = self._pipe_recv.recv()
self._pending_messages.value -= 1
if isinstance(recv_data, TensorDescriptor):
self._allocated_tensors[recv_handle] = recv_data.make_zeros(device=self.device)
elif recv_data is None:
if recv_handle not in self._allocated_tensors:
logger.warning(
f"Sanity check failed: asked to delete handle {recv_handle}, but there is no such handle"
)
self._allocated_tensors.pop(recv_handle, None)
else:
logger.error(f"MemoryCache pipe received unexpected message: {recv_data}")
assert handle in self._allocated_tensors, f"Sanity check failed: no such handle ({handle})"
yield self._allocated_tensors[handle]
class AllocationFailed(Exception):
pass