ColossalAI/colossalai/nn/optimizer/cpu_adam.py
Boyuan Yao 7a58dc5ad2
Update metainfo patch branch (#2517)
* init

* rename and remove useless func

* basic chunk

* add evoformer

* align evoformer

* add meta

* basic chunk

* basic memory

* finish basic inference memory estimation

* finish memory estimation

* fix bug

* finish memory estimation

* add part of index tracer

* finish basic index tracer

* add doc string

* add doc str

* polish code

* polish code

* update active log

* polish code

* add possible region search

* finish region search loop

* finish chunk define

* support new op

* rename index tracer

* finishi codegen on msa

* redesign index tracer, add source and change compute

* pass outproduct mean

* code format

* code format

* work with outerproductmean and msa

* code style

* code style

* code style

* code style

* change threshold

* support check_index_duplicate

* support index dupilictae and update loop

* support output

* update memory estimate

* optimise search

* fix layernorm

* move flow tracer

* refactor flow tracer

* format code

* refactor flow search

* code style

* adapt codegen to prepose node

* code style

* remove abandoned function

* remove flow tracer

* code style

* code style

* reorder nodes

* finish node reorder

* update run

* code style

* add chunk select class

* add chunk select

* code style

* add chunksize in emit, fix bug in reassgin shape

* code style

* turn off print mem

* add evoformer openfold init

* init openfold

* add benchmark

* add print

* code style

* code style

* init openfold

* update openfold

* align openfold

* use max_mem to control stratge

* update source add

* add reorder in mem estimator

* improve reorder efficeincy

* support ones_like, add prompt if fit mode search fail

* fix a bug in ones like, dont gen chunk if dim size is 1

* fix bug again

* update min memory stratege, reduce mem usage by 30%

* last version of benchmark

* refactor structure

* restruct dir

* update test

* rename

* take apart chunk code gen

* close mem and code print

* code format

* rename ambiguous variable

* seperate flow tracer

* seperate input node dim search

* seperate prepose_nodes

* seperate non chunk input

* seperate reorder

* rename

* ad reorder graph

* seperate trace flow

* code style

* code style

* fix typo

* set benchmark

* rename test

* update codegen test

* Fix state_dict key missing issue of the ZeroDDP (#2363)

* Fix state_dict output for ZeroDDP duplicated parameters

* Rewrite state_dict based on get_static_torch_model

* Modify get_static_torch_model to be compatible with the lower version (ZeroDDP)

* update codegen test

* update codegen test

* add chunk search test

* code style

* add available

* [hotfix] fix gpt gemini example (#2404)

* [hotfix] fix gpt gemini example

* [example] add new assertions

* remove autochunk_available

* [workflow] added nightly release to pypi (#2403)

* add comments

* code style

* add doc for search chunk

* [doc] updated readme regarding pypi installation (#2406)

* add doc for search

* [doc] updated kernel-related optimisers' docstring (#2385)

* [doc] updated kernel-related optimisers' docstring

* polish doc

* rename trace_index to trace_indice

* rename function from index to indice

* rename

* rename in doc

* [polish] polish code for get_static_torch_model (#2405)

* [gemini] polish code

* [testing] remove code

* [gemini] make more robust

* rename

* rename

* remove useless function

* [worfklow] added coverage test (#2399)

* [worfklow] added coverage test

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* add doc for trace indice

* [docker] updated Dockerfile and release workflow (#2410)

* add doc

* update doc

* add available

* change imports

* add test in import

* [workflow] refactored the example check workflow (#2411)

* [workflow] refactored the example check workflow

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* Update parallel_context.py (#2408)

* [hotfix] add DISTPAN argument for benchmark (#2412)

* change the benchmark config file

* change config

* revert config file

* rename distpan to distplan

* [workflow] added precommit check for code consistency (#2401)

* [workflow] added precommit check for code consistency

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* polish code

* adapt new fx

* [workflow] added translation for non-english comments (#2414)

* [setup] refactored setup.py for dependency graph (#2413)

* change import

* update doc

* [workflow] auto comment if precommit check fails (#2417)

* [hotfix] add norm clearing for the overflow step (#2416)

* [examples] adding tflops to PaLM (#2365)

* [workflow]auto comment with test coverage report (#2419)

* [workflow]auto comment with test coverage report

* polish code

* polish yaml

* [doc] added documentation for CI/CD (#2420)

* [doc] added documentation for CI/CD

* polish markdown

* polish markdown

* polish markdown

* [example] removed duplicated stable diffusion example (#2424)

* [zero] add inference mode and its unit test (#2418)

* [workflow] report test coverage even if below threshold (#2431)

* [example] improved the clarity yof the example readme (#2427)

* [example] improved the clarity yof the example readme

* polish workflow

* polish workflow

* polish workflow

* polish workflow

* polish workflow

* polish workflow

* [ddp] add is_ddp_ignored (#2434)

[ddp] rename to is_ddp_ignored

* [workflow] make test coverage report collapsable (#2436)

* [autoparallel] add shard option (#2423)

* [fx] allow native ckpt trace and codegen. (#2438)

* [cli] provided more details if colossalai run fail (#2442)

* [autoparallel] integrate device mesh initialization into autoparallelize (#2393)

* [autoparallel] integrate device mesh initialization into autoparallelize

* add megatron solution

* update gpt autoparallel examples with latest api

* adapt beta value to fit the current computation cost

* [zero] fix state_dict and load_state_dict for ddp ignored parameters (#2443)

* [ddp] add is_ddp_ignored

[ddp] rename to is_ddp_ignored

* [zero] fix state_dict and load_state_dict

* fix bugs

* [zero] update unit test for ZeroDDP

* [example] updated the hybrid parallel tutorial (#2444)

* [example] updated the hybrid parallel tutorial

* polish code

* [zero] add warning for ignored parameters (#2446)

* [example] updated large-batch optimizer tutorial (#2448)

* [example] updated large-batch optimizer tutorial

* polish code

* polish code

* [example] fixed seed error in train_dreambooth_colossalai.py (#2445)

* [workflow] fixed the on-merge condition check (#2452)

* [workflow] automated the compatiblity test (#2453)

* [workflow] automated the compatiblity test

* polish code

* [autoparallel] update binary elementwise handler (#2451)

* [autoparallel] update binary elementwise handler

* polish

* [workflow] automated bdist wheel build (#2459)

* [workflow] automated bdist wheel build

* polish workflow

* polish readme

* polish readme

* Fix False warning in initialize.py (#2456)

* Update initialize.py

* pre-commit run check

* [examples] update autoparallel tutorial demo (#2449)

* [examples] update autoparallel tutorial demo

* add test_ci.sh

* polish

* add conda yaml

* [cli] fixed hostname mismatch error (#2465)

* [example] integrate autoparallel demo with CI (#2466)

* [example] integrate autoparallel demo with CI

* polish code

* polish code

* polish code

* polish code

* [zero] low level optim supports ProcessGroup (#2464)

* [example] update vit ci script (#2469)

* [example] update vit ci script

* [example] update requirements

* [example] update requirements

* [example] integrate seq-parallel tutorial with CI (#2463)

* [zero] polish low level optimizer (#2473)

* polish pp middleware (#2476)

Co-authored-by: Ziyue Jiang <ziyue.jiang@gmail.com>

* [example] update gpt gemini example ci test (#2477)

* [zero] add unit test for low-level zero init (#2474)

* [workflow] fixed the skip condition of  example weekly check workflow (#2481)

* [example] stable diffusion add roadmap

* add dummy test_ci.sh

* [example] stable diffusion add roadmap (#2482)

* [CI] add test_ci.sh for palm, opt and gpt (#2475)

* polish code

* [example] titans for gpt

* polish readme

* remove license

* polish code

* update readme

* [example] titans for gpt (#2484)

* [autoparallel] support origin activation ckpt on autoprallel system (#2468)

* [autochunk] support evoformer tracer (#2485)

support full evoformer tracer, which is a main module of alphafold. previously we just support a simplifed version of it.
1. support some evoformer's op in fx
2. support evoformer test
3. add repos for test code

* [example] fix requirements (#2488)

* [zero] add unit testings for hybrid parallelism  (#2486)

* [hotfix] gpt example titans bug #2493

* polish code and fix dataloader bugs

* [hotfix] gpt example titans bug #2493 (#2494)

* [fx] allow control of ckpt_codegen init (#2498)

* [fx] allow control of ckpt_codegen init

Currently in ColoGraphModule, ActivationCheckpointCodeGen will be set automatically in __init__. But other codegen can't be set if so. 
So I add an arg to control whether to set ActivationCheckpointCodeGen in __init__.

* code style

* [example] dreambooth example

* add test_ci.sh to dreambooth

* [autochunk] support autochunk on evoformer (#2497)

* Revert "Update parallel_context.py (#2408)"

This reverts commit 7d5640b9db.

* add avg partition (#2483)

Co-authored-by: Ziyue Jiang <ziyue.jiang@gmail.com>

* [auto-chunk] support extramsa (#3) (#2504)

* [utils] lazy init. (#2148)

* [utils] lazy init.

* [utils] remove description.

* [utils] complete.

* [utils] finalize.

* [utils] fix names.

* [autochunk] support parsing blocks (#2506)

* [zero] add strict ddp mode (#2508)

* [zero] add strict ddp mode

* [polish] add comments for strict ddp mode

* [zero] fix test error

* [doc] update opt and tutorial links (#2509)

* [workflow] fixed changed file detection (#2515)

Co-authored-by: oahzxl <xuanlei.zhao@gmail.com>
Co-authored-by: eric8607242 <e0928021388@gmail.com>
Co-authored-by: HELSON <c2h214748@gmail.com>
Co-authored-by: Frank Lee <somerlee.9@gmail.com>
Co-authored-by: Haofan Wang <haofanwang.ai@gmail.com>
Co-authored-by: Jiarui Fang <fangjiarui123@gmail.com>
Co-authored-by: ZijianYY <119492445+ZijianYY@users.noreply.github.com>
Co-authored-by: YuliangLiu0306 <72588413+YuliangLiu0306@users.noreply.github.com>
Co-authored-by: Super Daniel <78588128+super-dainiu@users.noreply.github.com>
Co-authored-by: ver217 <lhx0217@gmail.com>
Co-authored-by: Ziyue Jiang <ziyue.jiang97@gmail.com>
Co-authored-by: Ziyue Jiang <ziyue.jiang@gmail.com>
Co-authored-by: oahzxl <43881818+oahzxl@users.noreply.github.com>
Co-authored-by: binmakeswell <binmakeswell@gmail.com>
Co-authored-by: Fazzie-Maqianli <55798671+Fazziekey@users.noreply.github.com>
Co-authored-by: アマデウス <kurisusnowdeng@users.noreply.github.com>
2023-01-27 09:52:21 +08:00

170 lines
7.4 KiB
Python

import math
from typing import Optional
import torch
from colossalai.kernel.op_builder import CPUAdamBuilder
from colossalai.registry import OPTIMIZERS
from .nvme_optimizer import NVMeOptimizer
@OPTIMIZERS.register_module
class CPUAdam(NVMeOptimizer):
"""Implements Adam algorithm.
Supports parameters updating on both GPU and CPU, depanding on the device of paramters.
But the parameters and gradients should on the same device:
* Parameters on CPU and gradients on CPU is allowed.
* Parameters on GPU and gradients on GPU is allowed.
* Parameters on GPU and gradients on CPU is **not** allowed.
`CPUAdam` requires CUDA extensions which can be built during installation or runtime.
This version of CPU Adam accelates parameters updating on CPU with SIMD.
Support of AVX2 or AVX512 is required.
The GPU part is implemented in an naive way.
CPU Adam also supports the hybrid precision calculation, eg. fp32 parameters and fp16 gradients.
:class:`colossalai.nn.optimizer.CPUAdam` may be used as a drop-in replacement for ``torch.optim.AdamW``,
or ``torch.optim.Adam`` with ``adamw_mode=False``
Adam was been proposed in `Adam: A Method for Stochastic Optimization`_.
Arguments:
model_params (iterable): iterable of parameters of dicts defining
parameter groups.
lr (float, optional): learning rate. (default: 1e-3)
betas (Tuple[float, float], optional): coefficients used for computing
running averages of gradient and its square. (default: (0.9, 0.999))
eps (float, optional): term added to the denominator to improve
numerical stability. (default: 1e-8)
weight_decay (float, optional): weight decay (L2 penalty) (default: 0)
amsgrad (boolean, optional): whether to use the AMSGrad variant of this
algorithm from the paper `On the Convergence of Adam and Beyond`_
(default: False) NOT SUPPORTED yet in CPUAdam!
adamw_mode (boolean, optional): Apply L2 regularization or weight decay
True for decoupled weight decay(also known as AdamW) (default: True)
simd_log (boolean, optional): whether to show if you are using SIMD to
accelerate. (default: False)
nvme_offload_fraction (float, optional): Fraction of optimizer states to be offloaded to NVMe. Defaults to 0.0.
nvme_offload_dir (Optional[str], optional): Directory to save NVMe offload files.
If it's ``None``, a random temporary directory will be used. Defaults to None.
.. _Adam\: A Method for Stochastic Optimization:
https://arxiv.org/abs/1412.6980
.. _On the Convergence of Adam and Beyond:
https://openreview.net/forum?id=ryQu7f-RZ
"""
# Number of fp32 shards for per parameter
# Param weight, grad, momentum and variance
num_fp32_shards_per_param = 4
def __init__(self,
model_params,
lr=1e-3,
bias_correction=True,
betas=(0.9, 0.999),
eps=1e-8,
weight_decay=0,
adamw_mode=True,
nvme_offload_fraction: float = 0.0,
nvme_offload_dir: Optional[str] = None):
default_args = dict(lr=lr, betas=betas, eps=eps, weight_decay=weight_decay, bias_correction=bias_correction)
super(CPUAdam, self).__init__(model_params, default_args, nvme_offload_fraction, nvme_offload_dir)
self.adamw_mode = adamw_mode
cpu_adam = CPUAdamBuilder().load()
self.cpu_adam_op = cpu_adam.CPUAdamOptimizer(lr, betas[0], betas[1], eps, weight_decay, adamw_mode)
def torch_adam_update(self,
data,
grad,
exp_avg,
exp_avg_sq,
lr,
beta1,
beta2,
eps,
weight_decay,
bias_correction1,
bias_correction2,
use_adamw=False):
# FIXME(ver217): remove the below line when replace torch adam with fused adam
grad = grad.float()
if weight_decay != 0:
if use_adamw:
data.mul_(1 - lr * weight_decay)
else:
grad = grad.add(data, alpha=weight_decay)
# Decay the first and second moment running average coefficient
exp_avg.mul_(beta1).add_(grad, alpha=1 - beta1)
exp_avg_sq.mul_(beta2).addcmul_(grad, grad, value=1 - beta2)
# TODO(jiaruifang) dose not support amsgrad
denom = (exp_avg_sq.sqrt() / math.sqrt(bias_correction2)).add_(eps)
step_size = lr / bias_correction1
data.addcdiv_(exp_avg, denom, value=-step_size)
@torch.no_grad()
def step(self, closure=None, div_scale: float = -1):
loss = None
if closure is not None:
with torch.enable_grad():
loss = closure()
self._pre_step('exp_avg', 'exp_avg_sq')
for _, group in enumerate(self.param_groups):
for _, p in enumerate(group['params']):
if p.grad is None:
continue
state = self.state[p]
target_device = p.device
if len(state) == 0:
state['step'] = 0
# gradient momentums
state['exp_avg'] = torch.zeros_like(p, dtype=torch.float, device=target_device)
# gradient variances
state['exp_avg_sq'] = torch.zeros_like(p, dtype=torch.float, device=target_device)
self._post_state_init(p)
state['step'] += 1
beta1, beta2 = group['betas']
if target_device.type == 'cpu':
assert p.data.numel() == p.grad.data.numel(), "parameter and gradient should have the same size"
assert state['exp_avg'].device.type == 'cpu', "exp_avg should stay on cpu"
assert state['exp_avg_sq'].device.type == 'cpu', "exp_avg should stay on cpu"
self._pre_update(p, 'exp_avg', 'exp_avg_sq')
self.cpu_adam_op.step(state['step'], group['lr'], beta1, beta2, group['eps'], group['weight_decay'],
group['bias_correction'], p.data, p.grad.data, state['exp_avg'],
state['exp_avg_sq'], div_scale)
self._post_update(p, 'exp_avg', 'exp_avg_sq')
elif target_device.type == 'cuda':
assert div_scale == -1, "div_scale should remain default"
assert state['exp_avg'].device.type == 'cuda', "exp_avg should stay on cuda"
assert state['exp_avg_sq'].device.type == 'cuda', "exp_avg should stay on cuda"
bias_correction1 = 1 - beta1**state['step']
bias_correction2 = 1 - beta2**state['step']
# adam on cuda
self.torch_adam_update(p.data, p.grad.data, state['exp_avg'], state['exp_avg_sq'], group['lr'],
beta1, beta2, group['eps'], group['weight_decay'], bias_correction1,
bias_correction2, self.adamw_mode)
else:
raise RuntimeError
self._post_step()
return loss