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utils.py
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utils.py
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# coding=utf-8
# Copyright (c) 2019, NVIDIA CORPORATION. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Utilities for logging and serialization"""
import os
import random
import time
import numpy as np
import torch
from torch.nn.parallel.distributed import DistributedDataParallel as torchDDP
from fp16 import FP16_Optimizer
import mpu
import model
def print_rank_0(message):
if torch.distributed.is_initialized():
if torch.distributed.get_rank() == 0:
print(message, flush=True)
else:
print(message, flush=True)
def print_args(args):
"""Print arguments."""
print('arguments:', flush=True)
for arg in vars(args):
dots = '.' * (29 - len(arg))
print(' {} {} {}'.format(arg, dots, getattr(args, arg)), flush=True)
def print_params_min_max_norm(optimizer, iteration):
"""Print min, max, and norm of all parameters."""
index = 0
rank = torch.distributed.get_rank()
string = 'iteration, rank, index, model-parallel,min, max, norm\n'
optimizer_ = optimizer
if isinstance(optimizer, FP16_Optimizer):
optimizer_ = optimizer.optimizer
for param_group in optimizer_.param_groups:
for param in param_group['params']:
index += 1
min_ = param.data.min()
max_ = param.data.max()
norm = param.data.norm()
string += '{:7d}, {:4d}, {:4d}, {:2d}, '.format(
iteration, rank, index, int(param.model_parallel))
string += '{:.6E}, {:.6E}, {:.6E}\n'.format(min_, max_, norm)
print(string, flush=True)
class Timers:
"""Group of timers."""
class Timer:
"""Timer."""
def __init__(self, name):
self.name_ = name
self.elapsed_ = 0.0
self.started_ = False
self.start_time = time.time()
def start(self):
"""Start the timer."""
assert not self.started_, 'timer has already been started'
torch.cuda.synchronize()
self.start_time = time.time()
self.started_ = True
def stop(self):
"""Stop the timer."""
assert self.started_, 'timer is not started'
torch.cuda.synchronize()
self.elapsed_ += (time.time() - self.start_time)
self.started_ = False
def reset(self):
"""Reset timer."""
self.elapsed_ = 0.0
self.started_ = False
def elapsed(self, reset=True):
"""Calculate the elapsed time."""
started_ = self.started_
# If the timing in progress, end it first.
if self.started_:
self.stop()
# Get the elapsed time.
elapsed_ = self.elapsed_
# Reset the elapsed time
if reset:
self.reset()
# If timing was in progress, set it back.
if started_:
self.start()
return elapsed_
def __init__(self):
self.timers = {}
def __call__(self, name):
if name not in self.timers:
self.timers[name] = self.Timer(name)
return self.timers[name]
def log(self, names, normalizer=1.0, reset=True):
"""Log a group of timers."""
assert normalizer > 0.0
string = 'time (ms)'
for name in names:
elapsed_time = self.timers[name].elapsed(
reset=reset) * 1000.0/ normalizer
string += ' | {}: {:.2f}'.format(name, elapsed_time)
print_rank_0(string)
def report_memory(name):
"""Simple GPU memory report."""
mega_bytes = 1024.0 * 1024.0
string = name + ' memory (MB)'
string += ' | allocated: {}'.format(
torch.cuda.memory_allocated() / mega_bytes)
string += ' | max allocated: {}'.format(
torch.cuda.max_memory_allocated() / mega_bytes)
string += ' | cached: {}'.format(torch.cuda.memory_cached() / mega_bytes)
string += ' | max cached: {}'.format(
torch.cuda.max_memory_cached()/ mega_bytes)
print_rank_0(string)
def get_checkpoint_name(checkpoints_path, iteration, release=False, zero=False):
if release:
d = 'release'
else:
d = '{:d}'.format(iteration)
if zero:
dp_rank = mpu.get_data_parallel_rank()
d += '_zero_dp_rank_{}'.format(dp_rank)
return os.path.join(checkpoints_path, d,
'mp_rank_{:02d}_model_states.pt'.format(mpu.get_model_parallel_rank()))
def ensure_directory_exists(filename):
dirname = os.path.dirname(filename)
if not os.path.exists(dirname):
os.makedirs(dirname)
def get_checkpoint_tracker_filename(checkpoints_path):
return os.path.join(checkpoints_path, 'latest_checkpointed_iteration.txt')
def save_zero_checkpoint(args, iteration, optimizer):
zero_sd = {'iteration': iteration,
'optimizer_state_dict': optimizer.state_dict()}
zero_checkpoint_name = get_checkpoint_name(args.save, iteration, zero=True)
ensure_directory_exists(zero_checkpoint_name)
torch.save(zero_sd, zero_checkpoint_name)
print(' successfully saved {}'.format(zero_checkpoint_name))
def save_checkpoint(iteration, model, optimizer,
lr_scheduler, args):
"""Save a model checkpoint."""
# Only rank zer0 of the data parallel writes to the disk.
if isinstance(model, torchDDP):
model = model.module
if mpu.get_data_parallel_rank() == 0:
checkpoint_name = get_checkpoint_name(args.save, iteration)
print('global rank {} is saving checkpoint at iteration {:7d} to {}'.
format(torch.distributed.get_rank(), iteration, checkpoint_name))
sd = {}
sd['iteration'] = iteration
sd['model'] = model.state_dict()
# Optimizer stuff.
if not args.no_save_optim:
if optimizer is not None:
sd['optimizer'] = optimizer.state_dict()
if lr_scheduler is not None:
sd['lr_scheduler'] = lr_scheduler.state_dict()
# rng states.
if not args.no_save_rng:
sd['random_rng_state'] = random.getstate()
sd['np_rng_state'] = np.random.get_state()
sd['torch_rng_state'] = torch.get_rng_state()
sd['cuda_rng_state'] = torch.cuda.get_rng_state()
sd['rng_tracker_states'] = mpu.get_cuda_rng_tracker().get_states()
ensure_directory_exists(checkpoint_name)
torch.save(sd, checkpoint_name)
print(' successfully saved {}'.format(checkpoint_name))
# Wait so everyone is done (necessary)
torch.distributed.barrier()
# And update the latest iteration
if torch.distributed.get_rank() == 0:
tracker_filename = get_checkpoint_tracker_filename(args.save)
with open(tracker_filename, 'w') as f:
f.write(str(iteration))
# Wait so everyone is done (not necessary)
torch.distributed.barrier()
def save_ds_checkpoint(iteration, model, args):
"""Save a model checkpoint."""
sd = {}
sd['iteration'] = iteration
# rng states.
if not args.no_save_rng:
sd['random_rng_state'] = random.getstate()
sd['np_rng_state'] = np.random.get_state()
sd['torch_rng_state'] = torch.get_rng_state()
sd['cuda_rng_state'] = torch.cuda.get_rng_state()
sd['rng_tracker_states'] = mpu.get_cuda_rng_tracker().get_states()
model.save_checkpoint(args.save, iteration, client_state = sd)
def get_checkpoint_iteration(args):
# Read the tracker file and set the iteration.
tracker_filename = get_checkpoint_tracker_filename(args.load)
if not os.path.isfile(tracker_filename):
print_rank_0('WARNING: could not find the metadata file {} '.format(
tracker_filename))
print_rank_0(' will not load any checkpoints and will start from '
'random')
return 0, False, False
iteration = 0
release = False
with open(tracker_filename, 'r') as f:
metastring = f.read().strip()
try:
iteration = int(metastring)
except ValueError:
release = metastring == 'release'
if not release:
print_rank_0('ERROR: Invalid metadata file {}. Exiting'.format(
tracker_filename))
exit()
assert iteration > 0 or release, 'error parsing metadata file {}'.format(
tracker_filename)
return iteration, release, True
def load_checkpoint_model(model, args):
"""Load a model checkpoint."""
iteration, release, success = get_checkpoint_iteration(args)
if not success:
return 0
# Checkpoint.
checkpoint_name = get_checkpoint_name(args.load, iteration, release)
if mpu.get_data_parallel_rank() == 0:
print('global rank {} is loading checkpoint {}'.format(
torch.distributed.get_rank(), checkpoint_name))
# Load the checkpoint.
sd = torch.load(checkpoint_name, map_location='cpu')
if isinstance(model, torchDDP):
model = model.module
# Model.
try:
model.load_state_dict(sd['module'])
except KeyError:
print_rank_0('A metadata file exists but unable to load model '
'from checkpoint {}, exiting'.format(checkpoint_name))
exit()
torch.distributed.barrier()
if mpu.get_data_parallel_rank() == 0:
print(' successfully loaded {}'.format(checkpoint_name))
return iteration
def load_weights(src, dst, dst2src=False):
"""
Loads weights from src to dst via in place copy.
src is a huggingface gpt2model, while dst is one of our models.
dst2src=True loads parameters from our models into huggingface's.
^dst2src is still untested
"""
conv_layer = 'Conv1D' in str(type(src))
for n, p in src.named_parameters():
if dst2src:
data = dst._parameters[n].data
load = p.data
else:
data = p.data
load = dst._parameters[n].data
if conv_layer and 'weight' in n:
data = data.t().contiguous()
load.copy_(data)
# dst._parameters[n].data.copy_(data)
def load_mlp(our, oai, dst2src=False):
load_weights(oai.c_fc, our.dense_h_to_4h, dst2src)
load_weights(oai.c_proj, our.dense_4h_to_h, dst2src)
def load_attention(our, oai, dst2src=False):
load_weights(oai.c_attn, our.query_key_value, dst2src)
load_weights(oai.c_proj, our.dense, dst2src)
def load_transformer_layer(our, oai, dst2src=False):
load_weights(oai.ln_1, our.input_layernorm, dst2src)
load_weights(oai.ln_2, our.post_attention_layernorm, dst2src)
load_mlp(our.mlp, oai.mlp, dst2src)
load_attention(our.attention, oai.attn, dst2src)
def move_weights(our, oai, dst2src=False):
"""
Loads weights from `oai` to `our` via in place copy.
`oai` is a huggingface gpt2model, while `our` is one of our models.
dst2src=True loads parameters from our models into huggingface's.
^dst2src=True is still untested
"""
# while isinstance(our, (torchDDP, model.distributed.DistributedDataParallel, FP16_Module)):
# our=our.module
transformer_model = oai.transformer
load_weights(transformer_model.ln_f, our.transformer.final_layernorm, dst2src)
load_weights(transformer_model.wte, our.word_embeddings, dst2src)
load_weights(transformer_model.wpe, our.position_embeddings, dst2src)
for our_layer, oai_layer in zip(our.transformer.layers, oai.transformer.h):
load_transformer_layer(our_layer, oai_layer, dst2src)