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petals/src/petals/server/server.py

609 lines
24 KiB
Python

from __future__ import annotations
import gc
import math
import multiprocessing as mp
import random
import threading
import time
from typing import Dict, List, Optional, Union
import numpy as np
import psutil
import requests
import torch
from hivemind import DHT, MAX_DHT_TIME_DISCREPANCY_SECONDS, BatchTensorDescriptor, get_dht_time
from hivemind.moe.server.layers import add_custom_models_from_file
from hivemind.moe.server.runtime import Runtime
from hivemind.proto.runtime_pb2 import CompressionType
from hivemind.utils.logging import get_logger
from transformers import BloomConfig
from petals.bloom.from_pretrained import DTYPE_MAP, load_pretrained_block
from petals.constants import PUBLIC_INITIAL_PEERS
from petals.data_structures import CHAIN_DELIMITER, UID_DELIMITER, ServerState
from petals.dht_utils import declare_active_modules, get_remote_module_infos
from petals.server import block_selection
from petals.server.backend import TransformerBackend
from petals.server.block_utils import get_block_size
from petals.server.handler import TransformerConnectionHandler
from petals.server.memory_cache import MemoryCache
from petals.server.throughput import get_host_throughput
from petals.utils.convert_8bit import replace_8bit_linear
from petals.utils.disk_cache import DEFAULT_CACHE_DIR
logger = get_logger(__file__)
class Server:
"""
Runs ModuleContainer, periodically checks that the network is balanced,
restarts the ModuleContainer with other layers if the imbalance is significant
"""
def __init__(
self,
*,
initial_peers: List[str],
prefix: Optional[str],
converted_model_name_or_path: str,
throughput: Union[float, str],
num_blocks: Optional[int] = None,
block_indices: Optional[str] = None,
num_handlers: int = 8,
min_batch_size: int = 1,
max_batch_size: int = 2048,
inference_max_length: int = 2048,
torch_dtype: str = "auto",
revision: str = "main",
cache_dir: Optional[str] = None,
max_disk_space: Optional[int] = None,
attn_cache_size: Optional[int] = None,
alloc_timeout: float = 60,
device: Optional[Union[str, torch.device]] = None,
compression=CompressionType.NONE,
stats_report_interval: Optional[int] = None,
custom_module_path=None,
update_period: float = 150,
expiration: Optional[float] = None,
request_timeout: float = 3 * 60,
session_timeout: float = 30 * 60,
step_timeout: float = 5 * 60,
prefetch_batches: int = 1,
sender_threads: int = 1,
balance_quality: float = 0.75,
mean_balance_check_period: float = 120,
mean_block_selection_delay: float = 2.5,
use_auth_token: Optional[str] = None,
load_in_8bit: Optional[bool] = None,
skip_reachability_check: bool = False,
**kwargs,
):
"""Create a server with one or more bloom blocks. See run_server.py for documentation."""
self.converted_model_name_or_path = converted_model_name_or_path
self.num_handlers = num_handlers
self.min_batch_size, self.max_batch_size = min_batch_size, max_batch_size
self.inference_max_length = inference_max_length
self.compression = compression
self.stats_report_interval, self.update_period = stats_report_interval, update_period
self.prefetch_batches, self.sender_threads = prefetch_batches, sender_threads
self.use_auth_token = use_auth_token
if custom_module_path is not None:
add_custom_models_from_file(custom_module_path)
if prefix is None:
prefix = converted_model_name_or_path
assert UID_DELIMITER not in prefix and CHAIN_DELIMITER not in prefix, (
f"Cannot use model name as prefix (contains '{UID_DELIMITER}' or '{CHAIN_DELIMITER}'); "
f"Please specify --prefix manually when starting a server"
)
logger.info(f"Automatic dht prefix: {prefix}")
self.prefix = prefix
if expiration is None:
expiration = max(2 * update_period, MAX_DHT_TIME_DISCREPANCY_SECONDS)
self.expiration = expiration
self.request_timeout = request_timeout
self.session_timeout, self.step_timeout = session_timeout, step_timeout
self.block_config = BloomConfig.from_pretrained(
converted_model_name_or_path,
use_auth_token=use_auth_token,
revision=revision,
)
self.module_uids = [f"{self.prefix}.{block_index}" for block_index in range(self.block_config.n_layer)]
self.dht = DHT(initial_peers=initial_peers, start=True, num_workers=self.block_config.n_layer, **kwargs)
visible_maddrs_str = [str(a) for a in self.dht.get_visible_maddrs()]
if initial_peers == PUBLIC_INITIAL_PEERS:
logger.info(f"Connecting to the public swarm, peer_id = {self.dht.peer_id}")
if not skip_reachability_check:
self._check_reachability()
else:
logger.info(f"Running DHT node on {visible_maddrs_str}, initial peers = {initial_peers}")
if device is None:
device = "cuda" if torch.cuda.is_available() else "cpu"
device = torch.device(device)
self.device = device
if isinstance(torch_dtype, str):
torch_dtype = DTYPE_MAP[torch_dtype]
assert torch_dtype in DTYPE_MAP.values(), f"torch_dtype must be one of {list(DTYPE_MAP.values())}"
self.torch_dtype = torch_dtype
if load_in_8bit is None:
load_in_8bit = device.type == "cuda"
if load_in_8bit:
logger.info("Model weights will be loaded in 8-bit format")
self.load_in_8bit = load_in_8bit
assert num_blocks is None or block_indices is None, "Please specify num_blocks or block_indices, not both"
if num_blocks is None and block_indices is None:
num_blocks = self._choose_num_blocks()
if block_indices is not None:
try:
first_block_index, last_block_index = block_indices.split(":")
first_block_index, last_block_index = map(int, map(str.strip, (first_block_index, last_block_index)))
except Exception as e:
logger.error(f"Failed to parse --block_indices ({e}), must be start:end (e.g. 0:18)")
raise
block_indices = range(first_block_index, last_block_index)
num_blocks = len(block_indices)
self.strict_block_indices, self.num_blocks = block_indices, num_blocks
gib = 1024**3
if attn_cache_size is None:
# Hidden size is 14336 for the bigscience/bloom-petals model. For other models, scale accordingly
attn_cache_size = 0.5 * gib * num_blocks * self.block_config.hidden_size / 14336
self.attn_cache_size, self.alloc_timeout = attn_cache_size, alloc_timeout
logger.info(f"Attention cache for all blocks will consume up to {attn_cache_size / gib:.2f} GiB")
if cache_dir is None:
cache_dir = DEFAULT_CACHE_DIR
self.cache_dir = cache_dir
self.max_disk_space = max_disk_space
assert isinstance(throughput, float) or throughput in ["auto", "eval"]
if throughput in ["auto", "eval"]:
throughput = get_host_throughput(
self.block_config,
device,
torch_dtype,
load_in_8bit=load_in_8bit,
force_eval=(throughput == "eval"),
cache_dir=cache_dir,
)
self.throughput = throughput
self.balance_quality = balance_quality
self.mean_balance_check_period = mean_balance_check_period
self.mean_block_selection_delay = mean_block_selection_delay
self.stop = threading.Event()
def _check_reachability(self):
try:
r = requests.get(f"http://health.petals.ml/api/v1/is_reachable/{self.dht.peer_id}", timeout=10)
r.raise_for_status()
response = r.json()
except Exception as e:
logger.warning(f"Skipping reachability check because health.petals.ml is down: {repr(e)}")
return
if not response["success"]:
# This happens only if health.petals.ml is up and explicitly told us that we are unreachable
raise RuntimeError(
f"Server is not reachable from the Internet:\n\n"
f"{response['message']}\n\n"
f"You need to fix your port forwarding and/or firewall settings. How to do that:\n\n"
f" 1. Choose a specific port for the Petals server, for example, 31337.\n"
f" 2. Ensure that this port is accessible from the Internet and not blocked by your firewall.\n"
f" 3. Add these arguments to explicitly announce your IP address and port to other peers:\n"
f" python -m petals.cli.run_server ... --public_ip {response['your_ip']} --port 31337\n"
f" 4. If it does not help, ask for help in our Discord: https://discord.gg/Wuk8BnrEPH\n"
)
logger.info("Server is reachable from the Internet, it will appear at http://health.petals.ml soon")
def _choose_num_blocks(self) -> int:
assert (
self.converted_model_name_or_path == "bigscience/bloom-petals"
), "If you use a model other than bigscience/bloom-petals, please specify --num_blocks manually"
assert self.device.type == "cuda", "If you run a non-GPU server, please specify --num_blocks manually"
total_memory = torch.cuda.get_device_properties(self.device).total_memory
block_size = get_block_size(self.block_config, "memory", dtype=self.torch_dtype, load_in_8bit=self.load_in_8bit)
gib = 1024**3
attn_cache_per_block = 0.5 * gib # TODO: This does not account for manually set --attn_cache_size
num_blocks = math.floor((total_memory - 2 * gib) / (block_size + attn_cache_per_block))
assert num_blocks >= 1, "Your GPU does not have enough memory to serve at least one block"
logger.info(
f"Server will fill all your GPU memory with {num_blocks} transformer blocks. "
f"If you want to leave some free GPU memory, please specify a lesser --num_blocks manually"
)
return min(num_blocks, self.block_config.n_layer)
def run(self):
while True:
block_indices = self._choose_blocks()
self.module_container = ModuleContainer.create(
dht=self.dht,
prefix=self.prefix,
converted_model_name_or_path=self.converted_model_name_or_path,
block_config=self.block_config,
attn_cache_size=self.attn_cache_size,
alloc_timeout=self.alloc_timeout,
throughput=self.throughput,
block_indices=block_indices,
num_handlers=self.num_handlers,
min_batch_size=self.min_batch_size,
max_batch_size=self.max_batch_size,
inference_max_length=self.inference_max_length,
torch_dtype=self.torch_dtype,
cache_dir=self.cache_dir,
max_disk_space=self.max_disk_space,
device=self.device,
compression=self.compression,
stats_report_interval=self.stats_report_interval,
update_period=self.update_period,
expiration=self.expiration,
request_timeout=self.request_timeout,
session_timeout=self.session_timeout,
step_timeout=self.step_timeout,
prefetch_batches=self.prefetch_batches,
sender_threads=self.sender_threads,
use_auth_token=self.use_auth_token,
load_in_8bit=self.load_in_8bit,
start=True,
)
try:
self.module_container.ready.wait()
while True:
timeout = random.random() * 2 * self.mean_balance_check_period
if self.stop.wait(timeout):
return
if not self.module_container.is_healthy():
logger.warning("One of subprocesses crashed, restarting the server")
break
if self._should_choose_other_blocks():
logger.info("Swarm is imbalanced, server will load other blocks")
break # Stop serving this set of modules
finally:
self.module_container.shutdown()
self._clean_memory_and_fds()
def _clean_memory_and_fds(self):
del self.module_container
gc.collect() # In particular, this closes unused file descriptors
cur_proc = psutil.Process()
num_fds = [proc.num_fds() for proc in [cur_proc] + cur_proc.children(recursive=True)]
logger.info(f"Cleaning up, left {sum(num_fds)} open file descriptors")
if self.device.type == "cuda":
torch.cuda.empty_cache()
allocated_vram = torch.cuda.memory_allocated(self.device)
reserved_vram = torch.cuda.memory_reserved(self.device)
gib = 1024**3
logger.info(
f"Cleaning up, left {allocated_vram / gib:.1f} GiB allocated memory, "
f"{reserved_vram / gib:.1f} GiB reserved memory"
)
def _choose_blocks(self) -> List[int]:
if self.strict_block_indices is not None:
return self.strict_block_indices
# If multiple servers (e.g., launched on the same machine by a script) get to this line at the same time,
# this delay decreases the probability of a race condition while choosing the best blocks to serve.
time.sleep(random.random() * 2 * self.mean_block_selection_delay)
module_infos = get_remote_module_infos(self.dht, self.module_uids, expiration_time=np.inf)
return block_selection.choose_best_blocks(self.num_blocks, module_infos)
def _should_choose_other_blocks(self) -> bool:
if self.strict_block_indices is not None:
return False
module_infos = get_remote_module_infos(self.dht, self.module_uids, expiration_time=np.inf)
return block_selection.should_choose_other_blocks(self.dht.peer_id, module_infos, self.balance_quality)
def shutdown(self):
self.stop.set()
self.dht.shutdown()
self.dht.join()
class ModuleContainer(threading.Thread):
"""Serves a set of specific Bloom layers for inference, forward, and backward. Announces itself over the DHT."""
# noinspection PyMethodOverriding
@classmethod
def create(
cls,
*,
dht: DHT,
prefix: str,
converted_model_name_or_path: str,
block_config: BloomConfig,
attn_cache_size: int,
alloc_timeout: float,
throughput: float,
block_indices: List[int],
min_batch_size: int,
max_batch_size: int,
torch_dtype: torch.dtype,
cache_dir: str,
max_disk_space: int,
device: Union[str, torch.device],
compression: CompressionType,
update_period: float,
expiration: Optional[float],
use_auth_token: Optional[str],
load_in_8bit: bool,
**kwargs,
) -> ModuleContainer:
module_uids = [f"{prefix}.{block_index}" for block_index in block_indices]
joining_announcer = ModuleAnnouncerThread(
module_uids,
dht,
ServerState.JOINING,
throughput=throughput,
update_period=update_period,
expiration=expiration,
daemon=True,
)
joining_announcer.start()
logger.info(f"Announced that blocks {block_indices} are joining")
memory_cache = MemoryCache(device, attn_cache_size, alloc_timeout)
blocks = {}
try:
for module_uid, block_index in zip(module_uids, block_indices):
block = load_pretrained_block(
converted_model_name_or_path,
block_index,
block_config,
torch_dtype=torch_dtype,
use_auth_token=use_auth_token,
cache_dir=cache_dir,
max_disk_space=max_disk_space,
)
if load_in_8bit:
block = replace_8bit_linear(block)
block = block.to(device)
for param in block.parameters():
param.requires_grad = False
backend_dtype = block.input_layernorm.weight.dtype if torch_dtype == "auto" else torch_dtype
blocks[module_uid] = TransformerBackend(
module_uid,
block,
memory_cache=memory_cache,
backend_dtype=backend_dtype,
args_schema=(
BatchTensorDescriptor(
1, 2048, block_config.hidden_size, dtype=backend_dtype, compression=compression
),
),
kwargs_schema={},
outputs_schema=(
BatchTensorDescriptor(
1, 2048, block_config.hidden_size, dtype=backend_dtype, compression=compression
),
),
min_batch_size=min_batch_size,
max_batch_size=max_batch_size,
)
except:
logger.debug("Shutting down backends")
for backend in blocks.values():
backend.shutdown()
joining_announcer.stop.set()
joining_announcer.join()
declare_active_modules(
dht,
module_uids,
expiration_time=get_dht_time() + expiration,
state=ServerState.OFFLINE,
throughput=throughput,
)
logger.info(f"Announced that blocks {module_uids} are offline")
raise
else:
joining_announcer.stop.set()
joining_announcer.join()
return cls(
dht,
blocks,
throughput=throughput,
device=device,
update_period=update_period,
expiration=expiration,
**kwargs,
)
def __init__(
self,
dht: DHT,
module_backends: Dict[str, TransformerBackend],
*,
inference_max_length: int,
num_handlers: int,
throughput: float,
update_period: float,
expiration: Optional[float] = None,
request_timeout: float,
session_timeout: float,
step_timeout: float,
start: bool,
**kwargs,
):
super().__init__()
self.dht, self.module_backends = dht, module_backends
self.throughput, self.update_period, self.expiration = throughput, update_period, expiration
self.conn_handlers = [
TransformerConnectionHandler(
dht,
self.module_backends,
inference_max_length=inference_max_length,
request_timeout=request_timeout,
session_timeout=session_timeout,
step_timeout=step_timeout,
)
for _ in range(num_handlers)
]
self.runtime = Runtime(self.module_backends, **kwargs)
self.online_announcer = ModuleAnnouncerThread(
list(self.module_backends.keys()),
dht,
ServerState.ONLINE,
throughput=throughput,
update_period=update_period,
expiration=expiration,
daemon=True,
)
self.checkpoint_saver = None # no need to save checkpoints since we do not change model state
if start:
self.run_in_background(await_ready=True)
def run(self):
"""
Runs ModuleContainer in the current thread. Initializes dht if necessary, starts connection handlers,
runs Runtime (self.runtime) to process incoming requests.
"""
if not self.dht.is_alive():
self.dht.run_in_background(await_ready=True)
self.online_announcer.start()
if self.checkpoint_saver is not None:
self.checkpoint_saver.start()
for handler in self.conn_handlers:
handler.run_in_background()
self.runtime.run()
def run_in_background(self, await_ready=True, timeout=None):
"""
Starts ModuleContainer in a background thread. if await_ready, this method will wait until the container
is ready to process incoming requests or for :timeout: seconds max.
"""
self.start()
if await_ready and not self.ready.wait(timeout=timeout):
raise TimeoutError("ModuleContainer didn't notify .ready in {timeout} seconds")
@property
def ready(self) -> mp.synchronize.Event:
"""
An event (multiprocessing.Event) that is set when the container is ready to process requests.
Example
=======
>>> container.start()
>>> container.ready.wait(timeout=10)
>>> print("Container ready" if container.ready.is_set() else "Container didn't start in 10 seconds")
"""
return self.runtime.ready # mp.Event that is true if self is ready to process batches
def is_healthy(self) -> bool:
return all(handler.is_alive() for handler in self.conn_handlers) and all(
pool.is_alive() for pool in self.runtime.pools
)
def shutdown(self):
"""
Gracefully terminate the container, process-safe.
Please note that terminating container otherwise (e.g. by killing processes) may result in zombie processes.
If you did already cause a zombie outbreak, your only option is to kill them with -9 (SIGKILL).
"""
self.online_announcer.stop.set()
self.online_announcer.join()
declare_active_modules(
self.dht,
self.module_backends.keys(),
expiration_time=get_dht_time() + self.expiration,
state=ServerState.OFFLINE,
throughput=self.throughput,
)
logger.info(f"Announced that blocks {list(self.module_backends.keys())} are offline")
self.ready.clear()
for handler in self.conn_handlers:
handler.shutdown()
logger.debug("Connection handlers terminated")
if self.checkpoint_saver is not None:
self.checkpoint_saver.stop.set()
self.checkpoint_saver.join()
logger.debug(f"Shutting down pools")
for pool in self.runtime.pools:
if pool.is_alive():
pool.shutdown()
logger.debug(f"Shutting down runtime")
self.runtime.shutdown()
logger.debug("Shutting down backends")
for backend in self.module_backends.values():
backend.shutdown()
logger.info("Module container shut down successfully")
class ModuleAnnouncerThread(threading.Thread):
"""Periodically announces that this container hosts the specified modules, visible to all DHT peers"""
def __init__(
self,
module_uids: List[str],
dht: DHT,
state: ServerState,
*,
throughput: float,
update_period: float = 30,
expiration: float,
**kwargs,
):
super().__init__(**kwargs)
self.module_uids = module_uids
self.dht = dht
self.state = state
self.throughput = throughput
self.update_period = update_period
self.expiration = expiration
self.stop = threading.Event()
def run(self) -> None:
while True:
declare_active_modules(
self.dht,
self.module_uids,
expiration_time=get_dht_time() + self.expiration,
state=self.state,
throughput=self.throughput,
)
if self.stop.wait(self.update_period):
break