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+from __future__ import annotations
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+
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+import logging
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+import os
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+import time
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+from functools import partial
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+from typing import Callable, Optional, Sequence, Union
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+
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+import torch
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+
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+from hivemind.averaging.control import AveragingStage, StepControl
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+from hivemind.compression import CompressionBase, NoCompression
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+from hivemind.dht import DHT
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+from hivemind.optim.experimental.grad_averager import GradientAverager
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+from hivemind.optim.experimental.progress_tracker import ProgressTracker
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+from hivemind.optim.experimental.state_averager import (
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+ LRSchedulerBase,
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+ OptimizerFactory,
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+ Parameters,
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+ ParamGroups,
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+ SchedulerFactory,
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+ TorchOptimizer,
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+ TrainingStateAverager,
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+)
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+from hivemind.optim.grad_scaler import GradScaler
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+from hivemind.utils import PerformanceEMA, get_dht_time, get_logger
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+
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+logger = get_logger(__name__)
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+
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+
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+class Optimizer(torch.optim.Optimizer):
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+ """
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+ Hivemind Optimizer wraps your regular PyTorch Optimizer for training collaboratively with peers.
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+ By default, Optimizer is configured to be exactly **equivalent to synchronous training** with target_batch_size;
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+ There are advanced options make training semi-asynchronous (delay_optimizer_step and delay_gradient_averaging)
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+ or even fully asynchronous (local_updates=True). However, these options require careful tuning.
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+
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+ :example: The Optimizer can be used as a drop-in replacement for your regular PyTorch Optimizer:
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+
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+ >>> model = transformers.AutoModel("albert-xxlarge-v2")
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+ >>> dht = hivemind.DHT(initial_peers=INITIAL_PEERS, start=True)
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+ >>> opt = hivemind.Optimizer(dht, run_id="run_42", optimizer=lambda params: torch.optim.Adam(params, ...),
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+ params=model.parameters(), target_batch_size=4096, batch_size_per_step=4)
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+ >>> # alternative: opt = hivemind.Optimizer(dht, run_id="run_42", optimizer=torch.optim.Adam(model.parameters())
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+ >>> while True:
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+ >>> loss = compute_loss_on_batch(model, batch_size=4)
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+ >>> opt.zero_grad()
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+ >>> loss.backward()
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+ >>> opt.step() # <-- train collaboratively with any peers that use the same prefix (run_42)
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+
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+ However, unlike regular optimizers, calling opt.step with hivemind.Optimizer can do one of the following:
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+
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+ - accumulate a minibatch of gradients towards the (global) target batch size, without updating parameters yet;
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+ - after accumulating the target batch size, all-reduce gradients with peers and perform optimizer step;
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+ - if your peer lags behind the rest of the swarm, it will download latest state from other peers;
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+
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+ :example: the optimizer has many keyword arguments that may be difficult to understand in one go. Here's quickstart
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+ that will help you setup your first synchronous optimizer.
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+
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+ >>> hivemind.Optimizer(
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+ >>> dht=hivemind.DHT(initial_peers=ADDRESS_HERE, client_mode=TRUE_IF_BEHIND_FIREWALL_OR_UNRELIABLE, start=True),
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+ >>> run_id="a_unique_name_that_every_participant_will_see_when_training",
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+ >>> batch_size_per_step=ACTUAL_BATCH_SIZE_OF_THIS_PEER,
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+ >>> target_batch_size=LARGE_GLOBAL_BATCH, # global batch will be this or *slightly* larger due to stragglers;
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+ >>> # peers should finish averaging in roughly half the time they need to accumulate this batch between them
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+ >>> optimizer=lambda params: AnyPyTorchOptimizer(params, **config_that_makes_sense_for_target_batch_size),
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+ >>> # ^-- scale learning rate for your target_batch_size; good reference: https://arxiv.org/abs/1904.00962
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+ >>> offload_optimizer=True, # this saves GPU memory; large-batch training does not need optimizer that often
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+ >>> scheduler=lambda opt: AnyPytTorchScheduler(opt, **config_that_makes_sense_for_target_batch_size),
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+ >>> # scheduler.step will be called once every time peers collectively accumulate target_batch_size
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+ >>> matchmaking_time=15.0, averaging_timeout=60.0, # <-- if the network is fast reduce to 3-5s and 10-15s
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+ >>> # increase matchmaking_time if at least 25% of the time you see "averaged gradients with <...> peers",
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+ >>> # ... but N is less than 0.9x the actual number of peers. Increase averaging_timeout if half of the epochs
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+ >>> # ... print "Proceeding with local gradients" instead of "Averaged gradients with N peers"
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+ >>> grad_compression=hivemind.Float16Compression(), state_averaging_compression=hivemind.Float16Compression(),
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+ >>> # it is generally fine to use pure 16-bit or even lower precision during communication with no precaution;
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+ >>> # See hivemind/examples/albert for an example of mixed 8-bit compression.
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+ >>> delay_grad_averaging=SHOULD_I_USE_DPU, delay_optimizer_step=SHOULD_I_USE_DPU, # DPU stands for Delayed Para-
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+ >>> # -meter Updates, running allreduce and optimizer step in background. See https://arxiv.org/abs/2101.06840
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+ >>> verbose=True # periodically report the training progress to the console
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+ >>> ) # and you're done!
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+
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+ :note: hivemind.Optimizer can be used the same way any other pytorch optimizer, but there is one caveat:
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+ learning rate schedulers, curriculum and other **time-dependent features should depend on Optimizer.local_epoch**
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+ (and not the number ot calls to opt.step). This is because peers are allowed to join midway through training,
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+ when others have already made some progress and changed their learning rates accordingly.
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+
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+ :param dht: a running hivemind.DHT instance connected to other peers
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+ :param run_id: a unique identifier of this training run, used as a common prefix for all DHT keys.
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+ **Note:** peers with the same run_id should *generally* train the same model and use compatible configurations.
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+ Some options can be safely changed by individual peers: ``batch_size_per_step``, ``client_mode``, ``auxiliary``,
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+ ``reuse_grad_buffers``, ``offload_optimizer``, and ``verbose``. In some cases, other options may also be tuned
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+ individually by each peer, but they should be changed with caution to avoid deadlocks or convergence issues.
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+
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+ :param target_batch_size: global batch size that must be accumulated before the swarm transitions to the next epoch
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+ :param batch_size_per_step: before each call to .step, user should accumulate gradients over this many samples
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+
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+ :param optimizer: a callable(parameters) -> pytorch.optim.Optimizer or a pre-initialized PyTorch optimizer
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+ **Note:** some advanced options like offload_optimizer, delay_optimizer_step, or delay_grad_averaging are not
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+ supported if hivemind.optimizer is created with a pre-initialized optimizer and require optimizer factory
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+ :param params: parameters or param groups for the optimizer; required if optimizer is a callable(params)
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+ :param scheduler: callable(optimizer) -> PyTorch LRScheduler or a pre-initialized PyTorch scheduler.
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+ The learning rate scheduler will adjust learning rate based on global epoch, not the number of
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+ local calls to optimizer.step; this is required to keep different peers synchronized.
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+
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+ :param matchmaking_time: when looking for group, wait for peers to join for up to this many seconds
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+ :param averaging_timeout: if an averaging step hangs for this long, it will be cancelled.
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+ :param load_state_timeout: wait for at most this many seconds before giving up on load_state_from_peers
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+ :param reuse_grad_buffers: if True, use model's .grad buffers for gradient accumulation.
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+ This is more memory efficient, but it requires that the user does *NOT* call model/opt zero_grad at all
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+
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+ :param offload_optimizer: offload the optimizer to host memory, saving GPU memory for parameters and gradients
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+ :param delay_optimizer_step: run optimizer in background, apply results in future .step; requires offload_optimizer
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+ :param delay_grad_averaging: average gradients in background; requires offload_optimizer and delay_optimizer_step
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+ :param delay_state_averaging: if enabled (default), average parameters and extra tensors in a background thread;
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+ if set to False, average parameters synchronously within the corresponding hivemind.Optimizer.step call.
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+ The above 3 options (offload_optimizer, delay_optimizer_step and delay_grad_averaging) require that the optimizer
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+ is created with: ``hivemind.Optimizer(..., optimizer=callable_optimizer_factory, params=model.parameters())``
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+
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+ :param average_state_every: average state (parameters, chosen opt tensors) with peers every this many **epochs**.
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+ This reduces the communication overhead increasing, but can cause parameters to diverge if too large.
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+ The maximal average_state_every=num_epochs depends on how often peers diverge from each other. If peers
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+ hardly ever skip averaging rounds, they can average state less frequently. In turn, network failures, lossy
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+ gradient compression and local_updates cause parameters to diverge faster and requires more frequent averaging.
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+
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+ :param use_local_updates: if enabled, peers will update parameters on each .step using local gradients;
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+ if not enabled (default), accumulate gradients to target_batch_size, and then call .step with averaged gradients.
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+ Even if use_local_updates=True, learning rate scheduler will still be called once per target_batch_size.
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+
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+ :param client_mode: if True, this peer will not accept incoming connections (firewall-compatible mode)
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+ :param auxiliary: if True, optimizer.step will only assist other peers in averaging (for cpu-only workers)
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+
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+ :param grad_compression: compression strategy used for averaging gradients, default = no compression
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+ :param state_averaging_compression: compression for averaging params and state tensors, default = no compression
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+ :param load_state_compression: compression strategy for loading state from peers, default = no compression
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+ :param average_opt_statistics: names of optimizer statistics from state dict that should be averaged with peers
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+ :param extra_tensors: if specified, these extra tensors will also be averaged and shared in load_state_from_peers.
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+
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+ :param averager_opts: additional keyword arguments forwarded to both GradientAverager and TrainingStateAverager
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+ :param tracker_opts: additional keyword arguments forwarded to ProgressTracker
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+ :param performance_ema_alpha: moving average alpha in ProgressTracer, TrainingStateAverager and Optimizer
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+ :param verbose: if True, report internal events such as accumilating gradients and running background tasks
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+
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+ :note: in a large-scale training, peers will inevitably fail and you will see error messages. hivemind.Optimizer
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+ is designed to recover from such failures, but will sometimes need a minute or two to re-adjust.
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+
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+ """
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+
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+ def __init__(
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+ self,
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+ *,
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+ dht: DHT,
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+ run_id: str,
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+ target_batch_size: int,
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+ batch_size_per_step: Optional[int] = None,
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+ optimizer: Union[TorchOptimizer, OptimizerFactory],
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+ params: Optional[Union[Parameters, ParamGroups]] = None,
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+ scheduler: Optional[Union[LRSchedulerBase, SchedulerFactory]] = None,
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+ matchmaking_time: Optional[float] = 15.0,
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+ averaging_timeout: Optional[float] = 60.0,
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+ load_state_timeout: float = 600.0,
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+ reuse_grad_buffers: bool = False,
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+ offload_optimizer: Optional[bool] = None,
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+ delay_optimizer_step: Optional[bool] = None,
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+ delay_grad_averaging: bool = False,
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+ delay_state_averaging: bool = True,
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+ average_state_every: int = 1,
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+ use_local_updates: bool = False,
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+ client_mode: bool = None,
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+ auxiliary: bool = False,
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+ grad_compression: CompressionBase = NoCompression(),
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+ state_averaging_compression: CompressionBase = NoCompression(),
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+ load_state_compression: CompressionBase = NoCompression(),
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+ average_opt_statistics: Sequence[str] = (),
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+ extra_tensors: Sequence[torch.Tensor] = (),
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+ averager_opts: Optional[dict] = None,
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+ tracker_opts: Optional[dict] = None,
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+ performance_ema_alpha: float = 0.1,
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+ shutdown_timeout: float = 5,
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+ verbose: bool = False,
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+ ):
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+ client_mode = client_mode if client_mode is None else dht.client_mode
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+ delay_optimizer_step = delay_optimizer_step if delay_optimizer_step is not None else delay_grad_averaging
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+ offload_optimizer = offload_optimizer if offload_optimizer is not None else (params is not None)
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+ assert not delay_grad_averaging or delay_optimizer_step, "delay_grad_averaging requires delay_optimizer_step"
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+ assert not (client_mode and auxiliary), "Client-mode peers cannot serve as auxiliaries"
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+ assert not auxiliary or batch_size_per_step is None, "Auxiliary peers should not accumulate batches"
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+ if callable(optimizer) and params is not None:
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+ if scheduler is not None and (not callable(scheduler) or isinstance(scheduler, LRSchedulerBase)):
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+ raise ValueError("For this mode, please provide scheduler factory: callable(optimizer) -> scheduler")
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+ elif all(hasattr(optimizer, attr) for attr in ("param_groups", "step", "zero_grad")):
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+ if offload_optimizer or delay_optimizer_step or delay_grad_averaging:
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+ raise ValueError(
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+ "To enable offload_optimizer or delayed updates, please initialize Optimizer as "
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+ "hivemind.Optimizer(..., params=params, optimizer=lambda params: create_opt(params)"
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+ )
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+ else:
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+ raise ValueError(
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+ "Please initialize the optimizer in one of the following two ways:\n"
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+ "(A) hivemind.Optimizer(..., params=params, optimizer=lambda params: create_opt(params)\n"
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+ "(B) hivemind.Optimizer(..., optimizer=pre_initialize_optimizer)"
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+ )
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+ if use_local_updates:
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+ assert not reuse_grad_buffers, "if local_updates is True, gradients will not be accumulated"
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+ assert not delay_grad_averaging, "if local_updates is True, gradients will not be averaged"
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+
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+ self.dht, self.run_id, self.client_mode, self.auxiliary = dht, run_id, client_mode, auxiliary
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+ self.batch_size_per_step, self.target_batch_size = batch_size_per_step, target_batch_size
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+ self.delay_state_averaging, self.average_state_every = delay_state_averaging, average_state_every
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+ self.matchmaking_time, self.offload_optimizer = matchmaking_time, offload_optimizer
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+ self.delay_grad_averaging, self.delay_optimizer_step = delay_grad_averaging, delay_optimizer_step
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+
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+ self.averaging_timeout, self.load_state_timeout = averaging_timeout, load_state_timeout
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+ self.shutdown_timeout = shutdown_timeout
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+
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+ self.status_loglevel = logging.INFO if verbose else logging.DEBUG
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+ self.scheduled_grads: Optional[StepControl] = None
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+ self.scheduled_state: Optional[StepControl] = None
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+
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+ self.tracker = self._make_progress_tracker(
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+ target_batch_size, performance_ema_alpha=performance_ema_alpha, **tracker_opts or {}
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+ )
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+ self.state_averager = self._make_state_averager(
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+ optimizer=optimizer,
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+ params=params,
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+ scheduler=scheduler,
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+ delta_rule_averaging=use_local_updates and self.delay_state_averaging,
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+ compression=state_averaging_compression,
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+ state_compression=load_state_compression,
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+ average_opt_statistics=average_opt_statistics,
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+ performance_ema_alpha=performance_ema_alpha,
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+ extra_tensors=extra_tensors,
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+ **averager_opts or {},
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+ )
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+ if not use_local_updates:
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+ self.grad_averager = self._make_gradient_averager(
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+ reuse_grad_buffers=reuse_grad_buffers, compression=grad_compression, **averager_opts or {}
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+ )
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+ else:
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+ self.grad_averager = None
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+
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+ self._should_check_synchronization_on_update = True # used in self.should_load_state_from_peers
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+ self._schema_hash = self._compute_schema_hash()
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+ self._parent_pid = os.getpid()
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+
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+ self.delay_before_state_averaging = PerformanceEMA(alpha=performance_ema_alpha)
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+ # measures the average time from the beginning of self._update_global_epoch to the call to state_averager
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+ # used for pre-scheduling the averaging round in state_averager
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+
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+ self._step_supports_amp_scaling = reuse_grad_buffers
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+ # note: the line above is used by pytorch AMP GradScaler to enable custom behavior needed when reusing gradient
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+ # buffers over multiple steps (to avoid repeated unscaling). Without reuse_grad_buffers, this is not needed.
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+
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+ def _make_state_averager(self, **kwargs) -> TrainingStateAverager:
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+ return TrainingStateAverager(
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+ dht=self.dht,
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+ prefix=f"{self.run_id}_state_averager",
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+ min_matchmaking_time=self.matchmaking_time,
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+ allreduce_timeout=self.averaging_timeout,
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+ shutdown_timeout=self.shutdown_timeout,
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+ offload_optimizer=self.offload_optimizer,
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+ custom_gradients=self.offload_optimizer,
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+ status_loglevel=self.status_loglevel,
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+ client_mode=self.client_mode,
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+ auxiliary=self.auxiliary,
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+ start=True,
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+ **kwargs,
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+ )
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+
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+ def _make_gradient_averager(self, **kwargs) -> GradientAverager:
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+ assert hasattr(self, "state_averager"), "must initialize state averager first"
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+ grad_averager = GradientAverager(
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+ dht=self.dht,
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+ prefix=f"{self.run_id}_grad_averager",
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+ parameters=self.state_averager.main_parameters,
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+ min_matchmaking_time=self.matchmaking_time,
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+ allreduce_timeout=self.averaging_timeout,
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+ shutdown_timeout=self.shutdown_timeout,
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+ client_mode=self.client_mode,
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+ auxiliary=self.auxiliary,
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+ start=True,
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+ **kwargs,
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+ )
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+ if self.offload_optimizer:
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+ optimized_param_groups = self.state_averager.optimizer.param_groups
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+ optimized_parameters = [param for group in optimized_param_groups for param in group["params"]]
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+ with grad_averager.get_tensors() as averaged_gradients:
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+ assert len(averaged_gradients) == len(optimized_parameters)
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+ for opt_param, averaged_grad in zip(optimized_parameters, averaged_gradients):
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+ opt_param.grad = averaged_grad
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+ return grad_averager
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+
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+ def _make_progress_tracker(self, target_batch_size: int, **kwargs) -> ProgressTracker:
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+ return ProgressTracker(
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+ dht=self.dht,
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+ prefix=self.run_id,
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+ target_batch_size=target_batch_size,
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+ client_mode=self.client_mode,
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+ status_loglevel=self.status_loglevel,
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+ start=True,
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+ **kwargs,
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+ )
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+
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+ def _compute_schema_hash(self) -> int:
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+ optimized_param_groups = self.state_averager.optimizer.param_groups
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+ optimized_parameters = [param for group in optimized_param_groups for param in group["params"]]
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|
|
+ param_shapes = tuple(tuple(param.shape) for param in optimized_parameters)
|
|
|
+
|
|
|
+ # offloaded optimizer requires that gradient tensors are reused between iterations
|
|
|
+ grad_ids = tuple(id(param.grad) for param in optimized_parameters) if self.offload_optimizer else None
|
|
|
+ return hash((grad_ids, param_shapes))
|
|
|
+
|
|
|
+ def is_alive(self) -> bool:
|
|
|
+ return self.state_averager.is_alive()
|
|
|
+
|
|
|
+ @property
|
|
|
+ def local_epoch(self) -> int:
|
|
|
+ return self.state_averager.local_epoch
|
|
|
+
|
|
|
+ @property
|
|
|
+ def use_local_updates(self) -> bool:
|
|
|
+ return self.grad_averager is None
|
|
|
+
|
|
|
+ @property
|
|
|
+ def use_gradient_averaging(self) -> bool:
|
|
|
+ return self.grad_averager is not None
|
|
|
+
|
|
|
+ def step(
|
|
|
+ self,
|
|
|
+ closure: Optional[Callable[[], torch.Tensor]] = None,
|
|
|
+ batch_size: Optional[int] = None,
|
|
|
+ grad_scaler: Optional[GradScaler] = None,
|
|
|
+ ):
|
|
|
+ """
|
|
|
+ Update training progress after accumulating another local batch size. Depending on the configuration, this will
|
|
|
+ report progress to peers, run global or local optimizer step, average parameters or schedule background tasks.
|
|
|
+
|
|
|
+ :param closure: A closure that reevaluates the model and returns the loss
|
|
|
+ :param batch_size: optional override for batch_size_per_step from init
|
|
|
+ :param grad_scaler: if amp is enabled, this **must** be a hivemind-aware gradient scaler
|
|
|
+ :note: this .step is different from normal pytorch optimizers in several key ways. See __init__ for details.
|
|
|
+ """
|
|
|
+ if grad_scaler is not None and not isinstance(grad_scaler, GradScaler):
|
|
|
+ raise ValueError("hivemind.Optimizer requires a hivemind-aware gradient scaler (hivemind.GradScaler)")
|
|
|
+ if self.batch_size_per_step is None and batch_size is None and not self.auxiliary:
|
|
|
+ raise ValueError("Please either set batch_size_per_step parameter at init or when calling .step")
|
|
|
+ if self.auxiliary and (closure is not None or batch_size is not None or grad_scaler is not None):
|
|
|
+ raise ValueError("Auxiliary peers should not have batch size, run closures, or use grad_scaler")
|
|
|
+ batch_size = batch_size if batch_size is not None else self.batch_size_per_step
|
|
|
+
|
|
|
+ # if delayed updates finished before step, apply these updates; otherwise do nothing
|
|
|
+ self.state_averager.step(apply_delayed_updates=True)
|
|
|
+
|
|
|
+ loss = None
|
|
|
+ if closure is not None:
|
|
|
+ with torch.enable_grad():
|
|
|
+ loss = closure()
|
|
|
+
|
|
|
+ if not self.auxiliary and self.should_load_state_from_peers():
|
|
|
+ logger.log(self.status_loglevel, "Peer is out of sync.")
|
|
|
+ self.load_state_from_peers()
|
|
|
+ return loss # local gradients were computed with out-of-sync parameters, must start over
|
|
|
+
|
|
|
+ if self.use_gradient_averaging:
|
|
|
+ # accumulate gradients toward target batch size, then aggregate with peers and run optimizer
|
|
|
+ if not self.auxiliary:
|
|
|
+ grads_are_valid = self._check_and_accumulate_gradients(batch_size, grad_scaler)
|
|
|
+ if not grads_are_valid:
|
|
|
+ return loss # local gradients were reset due to overflow, must start over
|
|
|
+
|
|
|
+ self._maybe_schedule_gradient_averaging()
|
|
|
+ self._maybe_schedule_state_averaging()
|
|
|
+
|
|
|
+ else:
|
|
|
+ # use_local_updates=True: update parameters on every step independently of other peers
|
|
|
+ if not self.auxiliary:
|
|
|
+ if grad_scaler is not None:
|
|
|
+ with grad_scaler.running_global_step():
|
|
|
+ assert grad_scaler.unscale_(self)
|
|
|
+
|
|
|
+ new_samples_accumulated = self.tracker.local_progress.samples_accumulated + batch_size
|
|
|
+ self.tracker.report_local_progress(self.local_epoch, new_samples_accumulated)
|
|
|
+ self._maybe_schedule_state_averaging()
|
|
|
+
|
|
|
+ self.state_averager.step(
|
|
|
+ increment_epoch=False,
|
|
|
+ optimizer_step=True,
|
|
|
+ delay_optimizer_step=self.delay_optimizer_step,
|
|
|
+ grad_scaler=grad_scaler,
|
|
|
+ )
|
|
|
+
|
|
|
+ if self.tracker.ready_to_update_epoch:
|
|
|
+ self._update_global_epoch(grad_scaler)
|
|
|
+
|
|
|
+ return loss
|
|
|
+
|
|
|
+ def _update_global_epoch(self, grad_scaler: Optional[GradScaler]) -> None:
|
|
|
+ """Depending on the configuration: aggregate gradients and/or parameters, perform global optimizer step"""
|
|
|
+ assert self._schema_hash == self._compute_schema_hash(), "parameters or gradients changed during iteration"
|
|
|
+ _epoch_start_time = time.perf_counter()
|
|
|
+
|
|
|
+ with self.tracker.pause_updates():
|
|
|
+ wait_for_trigger = None
|
|
|
+
|
|
|
+ if self.use_gradient_averaging:
|
|
|
+ logger.log(self.status_loglevel, f"Beginning optimizer step #{self.local_epoch}")
|
|
|
+ began_averaging_gradients = self._begin_averaging_gradients(grad_scaler)
|
|
|
+ if not began_averaging_gradients:
|
|
|
+ pass # failed to start gradient averaging due to an internal error
|
|
|
+ elif self.delay_grad_averaging:
|
|
|
+ # if using delayed grad averaing, send this to state_averager as a pre-condition for optimizer step
|
|
|
+ wait_for_trigger = partial(self._average_gradients_and_load_into_optimizer, self.scheduled_grads)
|
|
|
+ else:
|
|
|
+ # delay_grad_averaging=False, average gradients immediately
|
|
|
+ self._average_gradients_and_load_into_optimizer(self.scheduled_grads)
|
|
|
+
|
|
|
+ next_epoch = max(self.local_epoch + 1, self.tracker.global_epoch)
|
|
|
+ swarm_not_empty = self.tracker.global_progress.num_peers > 1
|
|
|
+ should_perform_optimizer_step = not self.auxiliary and not self.use_local_updates
|
|
|
+ should_average_state = (
|
|
|
+ swarm_not_empty
|
|
|
+ and next_epoch % self.average_state_every == 0
|
|
|
+ and not self.state_averager.averaging_in_progress
|
|
|
+ )
|
|
|
+
|
|
|
+ if should_average_state and self.scheduled_state is not None:
|
|
|
+ if self.scheduled_state.triggered or self.scheduled_state.done():
|
|
|
+ logger.log(
|
|
|
+ self.status_loglevel,
|
|
|
+ f"Not using pre-scheduled group for state averaging because it"
|
|
|
+ f"was already used elsewhere: {self.scheduled_state}",
|
|
|
+ )
|
|
|
+ self.scheduled_state = None
|
|
|
+ self.delay_before_state_averaging.update(task_size=1, interval=time.perf_counter() - _epoch_start_time)
|
|
|
+
|
|
|
+ self.state_averager.step(
|
|
|
+ increment_epoch=True,
|
|
|
+ wait_for_trigger=wait_for_trigger,
|
|
|
+ optimizer_step=should_perform_optimizer_step,
|
|
|
+ delay_optimizer_step=self.delay_optimizer_step and should_perform_optimizer_step,
|
|
|
+ grad_scaler=grad_scaler,
|
|
|
+ averaging_round=should_average_state,
|
|
|
+ delay_averaging=self.delay_state_averaging and not self.auxiliary,
|
|
|
+ averaging_control=self.scheduled_state if should_average_state else None,
|
|
|
+ averaging_opts=dict(timeout=self.averaging_timeout) if should_average_state else None,
|
|
|
+ )
|
|
|
+
|
|
|
+ if not should_average_state and self.scheduled_state is not None and not self.scheduled_state.done():
|
|
|
+ self.scheduled_state.cancel()
|
|
|
+ self.scheduled_state = None
|
|
|
+
|
|
|
+ self.tracker.update_epoch(new_epoch=self.state_averager.local_epoch)
|
|
|
+ self._should_check_synchronization_on_update = True
|
|
|
+ # the above line ensures that peers check for *strict* synchronization once per epoch
|
|
|
+
|
|
|
+ if not self.client_mode:
|
|
|
+ self.state_averager.state_sharing_priority = self.local_epoch
|
|
|
+
|
|
|
+ if self.use_gradient_averaging and not self.auxiliary:
|
|
|
+ self.grad_averager.reset_accumulated_grads_()
|
|
|
+ if not self.client_mode:
|
|
|
+ self.grad_averager.state_sharing_priority = self.local_epoch
|
|
|
+
|
|
|
+ logger.log(self.status_loglevel, f"Transitioning to epoch {self.local_epoch}.")
|
|
|
+
|
|
|
+ def _begin_averaging_gradients(self, grad_scaler: Optional[GradScaler]) -> bool:
|
|
|
+ """Begin an all-reduce round to average gradients; return True if succeeded, False if failed"""
|
|
|
+ if grad_scaler is not None:
|
|
|
+ with grad_scaler.running_global_step():
|
|
|
+ assert grad_scaler.unscale_(self)
|
|
|
+
|
|
|
+ began_averaging_gradients = False
|
|
|
+ if self.scheduled_grads is not None and (self.scheduled_grads.triggered or self.scheduled_grads.done()):
|
|
|
+ logger.log(
|
|
|
+ self.status_loglevel,
|
|
|
+ f"Not using pre-scheduled group for state averaging because it"
|
|
|
+ f"was already used elsewhere: {self.scheduled_state}",
|
|
|
+ )
|
|
|
+ self.scheduled_grads = None
|
|
|
+
|
|
|
+ elif self.tracker.global_progress.num_peers > 1:
|
|
|
+ try:
|
|
|
+ self.scheduled_grads = self.grad_averager.step(
|
|
|
+ control=self.scheduled_grads, reset_accumulators=True, wait=False
|
|
|
+ )
|
|
|
+ began_averaging_gradients = True
|
|
|
+ except BaseException as e:
|
|
|
+ logger.exception(e)
|
|
|
+
|
|
|
+ if not began_averaging_gradients and self.scheduled_grads is not None and not self.scheduled_grads.done():
|
|
|
+ logger.log(self.status_loglevel, f"Cancelled pre-scheduled gradient averaging round")
|
|
|
+ self.scheduled_grads.cancel()
|
|
|
+ self.scheduled_grads = None
|
|
|
+ return began_averaging_gradients
|
|
|
+
|
|
|
+ def _check_and_accumulate_gradients(self, batch_size: int, grad_scaler: Optional[GradScaler]) -> bool:
|
|
|
+ """Check if gradients are valid, accumulate and return True; otherwise, reset and return False"""
|
|
|
+ assert not self.use_local_updates and not self.auxiliary
|
|
|
+ if grad_scaler is not None and not grad_scaler.are_grads_finite(self):
|
|
|
+ logger.log(self.status_loglevel, "Encountered incorrect value in fp16 grads, resetting local gradients")
|
|
|
+ self.tracker.report_local_progress(self.local_epoch, samples_accumulated=0)
|
|
|
+ self.grad_averager.reset_accumulated_grads_()
|
|
|
+ return False
|
|
|
+
|
|
|
+ self.grad_averager.accumulate_grads_(batch_size)
|
|
|
+ self.tracker.report_local_progress(self.local_epoch, self.grad_averager.local_samples_accumulated)
|
|
|
+ return True
|
|
|
+
|
|
|
+ def _maybe_schedule_gradient_averaging(self) -> None:
|
|
|
+ """If next epoch is coming soon, schedule the next gradient averaging round at the estimated end of epoch"""
|
|
|
+ assert self.use_gradient_averaging
|
|
|
+ if self.tracker.estimated_next_update_time - get_dht_time() <= self.matchmaking_time:
|
|
|
+ if self.scheduled_grads is None or self.scheduled_grads.triggered or self.scheduled_grads.done():
|
|
|
+ if self.delay_grad_averaging:
|
|
|
+ # wait for previous averaging to finish before starting a new one
|
|
|
+ self.state_averager.step(wait_for_delayed_updates=True)
|
|
|
+
|
|
|
+ eta_seconds = self.tracker.estimated_next_update_time - get_dht_time()
|
|
|
+ eta_seconds = max(eta_seconds, self.grad_averager.matchmaking_kwargs["min_matchmaking_time"])
|
|
|
+ logger.log(self.status_loglevel, f"Pre-scheduling gradient averaging round in {eta_seconds:.2f}s.")
|
|
|
+ self.scheduled_grads = self.grad_averager.schedule_step(timeout=self.averaging_timeout)
|
|
|
+
|
|
|
+ def _maybe_schedule_state_averaging(self) -> None:
|
|
|
+ """If next epoch is coming soon, schedule the next state averaging at estimated parameter averaging start"""
|
|
|
+ next_epoch = max(self.local_epoch + 1, self.tracker.global_epoch)
|
|
|
+ if next_epoch % self.average_state_every != 0:
|
|
|
+ return # averaging is not performed at this epoch
|
|
|
+ if self.state_averager.averaging_in_progress:
|
|
|
+ return # previous run is still in progress
|
|
|
+
|
|
|
+ estimated_time = self.tracker.estimated_next_update_time
|
|
|
+ estimated_time += self.delay_before_state_averaging.ema_seconds_per_sample
|
|
|
+ estimated_time += self.state_averager.delay_before_averaging.ema_seconds_per_sample
|
|
|
+ eta_seconds_to_averaging = estimated_time - get_dht_time()
|
|
|
+
|
|
|
+ if eta_seconds_to_averaging <= self.matchmaking_time:
|
|
|
+ if self.scheduled_state is None or self.scheduled_state.triggered or self.scheduled_state.done():
|
|
|
+
|
|
|
+ min_matchmaking_time = self.state_averager.matchmaking_kwargs["min_matchmaking_time"]
|
|
|
+ actual_seconds = max(eta_seconds_to_averaging, min_matchmaking_time)
|
|
|
+ logger.log(self.status_loglevel, f"Pre-scheduling state averaging round in {actual_seconds:.2f}s.")
|
|
|
+ self.scheduled_state = self.state_averager.schedule_step(
|
|
|
+ gather=next_epoch, timeout=self.averaging_timeout
|
|
|
+ )
|
|
|
+
|
|
|
+ def _average_gradients_and_load_into_optimizer(self, maybe_step_control: Optional[StepControl]):
|
|
|
+ """Run gradient averaging; on success, feed averaged gradients into optimizer; else, use local gradients"""
|
|
|
+ assert self.use_gradient_averaging and maybe_step_control is None or maybe_step_control.triggered
|
|
|
+ averaged_gradients = False
|
|
|
+
|
|
|
+ try:
|
|
|
+ if maybe_step_control is not None:
|
|
|
+ group_info = maybe_step_control.result(self.averaging_timeout)
|
|
|
+ logger.log(self.status_loglevel, f"Averaged gradients with {len(group_info)} peers")
|
|
|
+ self._load_averaged_gradients_into_optimizer_()
|
|
|
+ averaged_gradients = True
|
|
|
+ else:
|
|
|
+ logger.log(self.status_loglevel, f"Skipped averaging: there are no other peers")
|
|
|
+ except BaseException as e:
|
|
|
+ logger.log(self.status_loglevel, f"Averaging gradients failed with {repr(e)}")
|
|
|
+
|
|
|
+ if not averaged_gradients:
|
|
|
+ logger.log(self.status_loglevel, f"Proceeding with local gradients")
|
|
|
+ self.grad_averager.load_accumulators_into_averager_()
|
|
|
+ self._load_averaged_gradients_into_optimizer_()
|
|
|
+
|
|
|
+ def _load_averaged_gradients_into_optimizer_(self):
|
|
|
+ """If required, load averaged gradients into optimizer; otherwise simply notify grad averager"""
|
|
|
+ assert self.use_gradient_averaging
|
|
|
+
|
|
|
+ if self.offload_optimizer:
|
|
|
+ pass # averaged gradients are already baked into optimizer, see _make_gradient_averager
|
|
|
+ else:
|
|
|
+ # copy averaged gradients into optimizer .grad buffers
|
|
|
+ optimized_param_groups = self.state_averager.optimizer.param_groups
|
|
|
+ optimized_parameters = [param for group in optimized_param_groups for param in group["params"]]
|
|
|
+ with torch.no_grad(), self.grad_averager.get_tensors() as averaged_gradients:
|
|
|
+ assert len(averaged_gradients) == len(optimized_parameters)
|
|
|
+ for opt_param, averaged_grad in zip(optimized_parameters, averaged_gradients):
|
|
|
+ opt_param.grad.copy_(averaged_grad, non_blocking=True)
|
|
|
+
|
|
|
+ self.grad_averager.notify_used_averaged_gradients()
|
|
|
+
|
|
|
+ def zero_grad(self, set_to_none: bool = False):
|
|
|
+ """Reset gradients from model. If reuse_grad_buffers=True, this will raise an error."""
|
|
|
+ if self.use_gradient_averaging and self.grad_averager.reuse_grad_buffers:
|
|
|
+ raise ValueError(
|
|
|
+ f"When running {self.__class__.__name__} with reuse_grad_buffers=True, user should never "
|
|
|
+ f"call zero_grad manually. Gradients will be refreshed internally."
|
|
|
+ )
|
|
|
+ for param_group in self.param_groups:
|
|
|
+ for param in param_group["params"]:
|
|
|
+ if param.grad is None:
|
|
|
+ pass
|
|
|
+ elif set_to_none:
|
|
|
+ param.grad = None
|
|
|
+ else:
|
|
|
+ param.grad.zero_()
|
|
|
+
|
|
|
+ def should_load_state_from_peers(self) -> bool:
|
|
|
+ """
|
|
|
+ If true, peer will discard local progress and attempt to download state from peers.
|
|
|
+ This method allows peer to continue training in two cases:
|
|
|
+ - peer is on the same epoch as other collaborators - keep training normally
|
|
|
+ - peer was on the same epoch and accumulated some grads, but some collaborators
|
|
|
+ have just transitioned to the next epoch - this peer should also transition.
|
|
|
+
|
|
|
+ :note: The latter case occurs due to the lack of network synchrony: the first peer that
|
|
|
+ detects enough samples will transition to the next step and start counting samples anew.
|
|
|
+ Some other peers may take time before they check with DHT and observe that
|
|
|
+ - the global epoch is technically one epoch ahead of the current one and
|
|
|
+ - the remaining (non-transitioned) peers no longer have target_batch_size between them
|
|
|
+ If this is the case, peer should transition to the next epoch and does *not* need to re-load state.
|
|
|
+ """
|
|
|
+ if self._should_check_synchronization_on_update and self.tracker.fetched_global_progress_this_epoch.is_set():
|
|
|
+ self._should_check_synchronization_on_update = False
|
|
|
+ return self.local_epoch != self.tracker.global_epoch # require exact synchronization once per step
|
|
|
+ return self.local_epoch < self.tracker.global_epoch - 1 # catch up if a peer just switched to next epoch
|
|
|
+
|
|
|
+ def load_state_from_peers(self, **kwargs):
|
|
|
+ """
|
|
|
+ Attempt to load the newest collaboration state from other peers within the same run_id.
|
|
|
+
|
|
|
+ If successful, this will update parameters, optimizer state, local epoch and learning rate schedule in-place.
|
|
|
+ """
|
|
|
+ self._finish_background_averaging()
|
|
|
+ self.state_averager.step(wait_for_delayed_updates=True)
|
|
|
+
|
|
|
+ with self.tracker.pause_updates():
|
|
|
+ while True:
|
|
|
+ try:
|
|
|
+ self.state_averager.load_state_from_peers(timeout=self.load_state_timeout, **kwargs)
|
|
|
+ break
|
|
|
+ except KeyboardInterrupt:
|
|
|
+ raise
|
|
|
+ except BaseException as e:
|
|
|
+ logger.exception(f"Failed to load state from peers: {e}, retrying ...")
|
|
|
+ continue
|
|
|
+
|
|
|
+ if self.tracker.global_epoch - 1 <= self.local_epoch < self.tracker.global_epoch:
|
|
|
+ logger.log(self.status_loglevel, f"Catching up with collaboration step {self.tracker.global_epoch}.")
|
|
|
+ self.state_averager.local_epoch = self.tracker.global_epoch
|
|
|
+
|
|
|
+ self.tracker.report_local_progress(local_epoch=self.local_epoch, samples_accumulated=0)
|
|
|
+
|
|
|
+ if not self.client_mode:
|
|
|
+ self.state_averager.state_sharing_priority = self.local_epoch
|
|
|
+
|
|
|
+ if self.use_gradient_averaging:
|
|
|
+ self.grad_averager.reset_accumulated_grads_()
|
|
|
+ if not self.client_mode:
|
|
|
+ self.grad_averager.state_sharing_priority = self.local_epoch
|
|
|
+
|
|
|
+ def _finish_background_averaging(self):
|
|
|
+ for scheduled_round in self.scheduled_grads, self.scheduled_state:
|
|
|
+ if scheduled_round is not None:
|
|
|
+ if scheduled_round.stage == AveragingStage.LOOKING_FOR_GROUP:
|
|
|
+ scheduled_round.cancel()
|
|
|
+ if not scheduled_round.triggered:
|
|
|
+ scheduled_round.weight = 0
|
|
|
+ scheduled_round.allow_allreduce()
|
|
|
+ for scheduled_round in self.scheduled_grads, self.scheduled_state:
|
|
|
+ if scheduled_round is not None and not scheduled_round.done():
|
|
|
+ try:
|
|
|
+ time_to_deadline = scheduled_round.deadline - get_dht_time()
|
|
|
+ scheduled_round.result(timeout=max(0.0, time_to_deadline))
|
|
|
+ except BaseException as e:
|
|
|
+ logger.log(self.status_loglevel, f"Caught {e} while averaging gradients")
|
|
|
+ if not scheduled_round.done():
|
|
|
+ scheduled_round.cancel()
|
|
|
+ self.scheduled_grads = self.scheduled_state = None
|
|
|
+
|
|
|
+ def state_dict(self) -> dict:
|
|
|
+ state_dict = self.state_averager.optimizer.state_dict()
|
|
|
+ state_dict["state"]["local_epoch"] = self.local_epoch
|
|
|
+ return state_dict
|
|
|
+
|
|
|
+ def load_state_dict(self, state_dict: dict):
|
|
|
+ if "local_epoch" in state_dict["state"]:
|
|
|
+ self.state_averager.local_epoch = state_dict["state"].pop("local_epoch")
|
|
|
+ return self.state_averager.optimizer.load_state_dict(state_dict)
|
|
|
+
|
|
|
+ @property
|
|
|
+ def state(self):
|
|
|
+ return dict(self.state_averager.optimizer.state, local_epoch=self.local_epoch)
|
|
|
+
|
|
|
+ @property
|
|
|
+ def opt(self) -> TorchOptimizer:
|
|
|
+ return self.state_averager.optimizer
|
|
|
+
|
|
|
+ @property
|
|
|
+ def param_groups(self) -> ParamGroups:
|
|
|
+ next_index = 0
|
|
|
+ param_groups = tuple(dict(param_group) for param_group in self.state_averager.optimizer.param_groups)
|
|
|
+ for param_group in param_groups:
|
|
|
+ num_params = len(param_group["params"])
|
|
|
+ main_params_for_group = self.state_averager.main_parameters[next_index : next_index + num_params]
|
|
|
+ param_group["params"] = main_params_for_group
|
|
|
+ next_index += num_params
|
|
|
+ assert next_index == len(self.state_averager.main_parameters)
|
|
|
+ return param_groups
|
|
|
+
|
|
|
+ def add_param_group(self, param_group: dict) -> None:
|
|
|
+ raise ValueError(
|
|
|
+ f"{self.__class__.__name__} does not support calling add_param_group after creation."
|
|
|
+ f"Please provide all parameter groups at init."
|
|
|
+ )
|
|
|
+
|
|
|
+ def __repr__(self):
|
|
|
+ return f"{self.__class__.__name__}(prefix={self.run_id}, epoch={self.local_epoch})"
|
|
|
+
|
|
|
+ def shutdown(self):
|
|
|
+ logger.log(self.status_loglevel, "Sending goodbye to peers...")
|
|
|
+ self.tracker.shutdown(self.shutdown_timeout)
|
|
|
+ self.state_averager.step(wait_for_delayed_updates=True)
|
|
|
+ self._finish_background_averaging()
|
|
|
+ logger.log(self.status_loglevel, "Shutting down averagers...")
|
|
|
+ self.state_averager.shutdown()
|
|
|
+ if self.use_gradient_averaging:
|
|
|
+ self.grad_averager.shutdown()
|
|
|
+ logger.log(self.status_loglevel, f"{self.__class__.__name__} is shut down.")
|
|
|
+
|
|
|
+ def __del__(self):
|
|
|
+ if self._parent_pid == os.getpid() and self.is_alive():
|
|
|
+ self.shutdown()
|