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train_dense_encoder.py
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train_dense_encoder.py
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#!/usr/bin/env python3
# Copyright (c) Facebook, Inc. and its affiliates.
# All rights reserved.
#
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.
"""
Pipeline to train DPR Biencoder
"""
import logging
import math
import os
import random
import sys
import time
from typing import Tuple
import hydra
import torch
from omegaconf import DictConfig, OmegaConf
from torch import Tensor as T
from torch import nn
from dpr.models import init_biencoder_components
from dpr.models.biencoder import BiEncoderNllLoss, BiEncoderBatch
from dpr.options import (
setup_cfg_gpu,
set_seed,
get_encoder_params_state_from_cfg,
set_cfg_params_from_state,
setup_logger,
)
from dpr.utils.conf_utils import BiencoderDatasetsCfg
from dpr.utils.data_utils import (
ShardedDataIterator,
Tensorizer,
MultiSetDataIterator,
LocalShardedDataIterator,
)
from dpr.utils.dist_utils import all_gather_list
from dpr.utils.model_utils import (
setup_for_distributed_mode,
move_to_device,
get_schedule_linear,
CheckpointState,
get_model_file,
get_model_obj,
load_states_from_checkpoint,
)
logger = logging.getLogger()
setup_logger(logger)
class BiEncoderTrainer(object):
"""
BiEncoder training pipeline component. Can be used to initiate or resume training and validate the trained model
using either binary classification's NLL loss or average rank of the question's gold passages across dataset
provided pools of negative passages. For full IR accuracy evaluation, please see generate_dense_embeddings.py
and dense_retriever.py CLI tools.
"""
def __init__(self, cfg: DictConfig):
self.shard_id = cfg.local_rank if cfg.local_rank != -1 else 0
self.distributed_factor = cfg.distributed_world_size or 1
logger.info("***** Initializing components for training *****")
# if model file is specified, encoder parameters from saved state should be used for initialization
model_file = get_model_file(cfg, cfg.checkpoint_file_name)
saved_state = None
if model_file:
saved_state = load_states_from_checkpoint(model_file)
set_cfg_params_from_state(saved_state.encoder_params, cfg)
tensorizer, model, optimizer = init_biencoder_components(cfg.encoder.encoder_model_type, cfg)
model, optimizer = setup_for_distributed_mode(
model,
optimizer,
cfg.device,
cfg.n_gpu,
cfg.local_rank,
cfg.fp16,
cfg.fp16_opt_level,
)
self.biencoder = model
self.optimizer = optimizer
self.tensorizer = tensorizer
self.start_epoch = 0
self.start_batch = 0
self.scheduler_state = None
self.best_validation_result = None
self.best_cp_name = None
self.cfg = cfg
self.ds_cfg = BiencoderDatasetsCfg(cfg)
if saved_state:
self._load_saved_state(saved_state)
self.dev_iterator = None
def get_data_iterator(
self,
batch_size: int,
is_train_set: bool,
shuffle=True,
shuffle_seed: int = 0,
offset: int = 0,
rank: int = 0,
):
hydra_datasets = self.ds_cfg.train_datasets if is_train_set else self.ds_cfg.dev_datasets
sampling_rates = self.ds_cfg.sampling_rates
logger.info(
"Initializing task/set data %s",
self.ds_cfg.train_datasets_names if is_train_set else self.ds_cfg.dev_datasets_names,
)
single_ds_iterator_cls = LocalShardedDataIterator if self.cfg.local_shards_dataloader else ShardedDataIterator
sharded_iterators = [
single_ds_iterator_cls(
ds,
shard_id=self.shard_id,
num_shards=self.distributed_factor,
batch_size=batch_size,
shuffle=shuffle,
shuffle_seed=shuffle_seed,
offset=offset,
)
for ds in hydra_datasets
]
return MultiSetDataIterator(
sharded_iterators,
shuffle_seed,
shuffle,
sampling_rates=sampling_rates if is_train_set else [1],
rank=rank,
)
def run_train(self):
cfg = self.cfg
train_iterator = self.get_data_iterator(
cfg.train.batch_size,
True,
shuffle=True,
shuffle_seed=cfg.seed,
offset=self.start_batch,
rank=cfg.local_rank,
)
max_iterations = train_iterator.get_max_iterations()
logger.info(" Total iterations per epoch=%d", max_iterations)
if max_iterations == 0:
logger.warning("No data found for training.")
return
updates_per_epoch = train_iterator.max_iterations // cfg.train.gradient_accumulation_steps
total_updates = updates_per_epoch * cfg.train.num_train_epochs
logger.info(" Total updates=%d", total_updates)
warmup_steps = cfg.train.warmup_steps
if self.scheduler_state:
# TODO: ideally we'd want to just call
# scheduler.load_state_dict(self.scheduler_state)
# but it doesn't work properly as of now
logger.info("Loading scheduler state %s", self.scheduler_state)
shift = int(self.scheduler_state["last_epoch"])
logger.info("Steps shift %d", shift)
scheduler = get_schedule_linear(
self.optimizer,
warmup_steps,
total_updates,
steps_shift=shift,
)
else:
scheduler = get_schedule_linear(self.optimizer, warmup_steps, total_updates)
eval_step = math.ceil(updates_per_epoch / cfg.train.eval_per_epoch)
logger.info(" Eval step = %d", eval_step)
logger.info("***** Training *****")
for epoch in range(self.start_epoch, int(cfg.train.num_train_epochs)):
logger.info("***** Epoch %d *****", epoch)
self._train_epoch(scheduler, epoch, eval_step, train_iterator)
if cfg.local_rank in [-1, 0]:
logger.info("Training finished. Best validation checkpoint %s", self.best_cp_name)
def validate_and_save(self, epoch: int, iteration: int, scheduler):
cfg = self.cfg
# for distributed mode, save checkpoint for only one process
save_cp = cfg.local_rank in [-1, 0]
if epoch == cfg.val_av_rank_start_epoch:
self.best_validation_result = None
if not cfg.dev_datasets:
validation_loss = 0
else:
if epoch >= cfg.val_av_rank_start_epoch:
validation_loss = self.validate_average_rank()
else:
validation_loss = self.validate_nll()
if save_cp:
cp_name = self._save_checkpoint(scheduler, epoch, iteration)
logger.info("Saved checkpoint to %s", cp_name)
if validation_loss < (self.best_validation_result or validation_loss + 1):
self.best_validation_result = validation_loss
self.best_cp_name = cp_name
logger.info("New Best validation checkpoint %s", cp_name)
def validate_nll(self) -> float:
logger.info("NLL validation ...")
cfg = self.cfg
self.biencoder.eval()
if not self.dev_iterator:
self.dev_iterator = self.get_data_iterator(
cfg.train.dev_batch_size, False, shuffle=False, rank=cfg.local_rank
)
data_iterator = self.dev_iterator
total_loss = 0.0
start_time = time.time()
total_correct_predictions = 0
num_hard_negatives = cfg.train.hard_negatives
num_other_negatives = cfg.train.other_negatives
log_result_step = cfg.train.log_batch_step
batches = 0
dataset = 0
biencoder = get_model_obj(self.biencoder)
for i, samples_batch in enumerate(data_iterator.iterate_ds_data()):
if isinstance(samples_batch, Tuple):
samples_batch, dataset = samples_batch
logger.info("Eval step: %d ,rnk=%s", i, cfg.local_rank)
biencoder_input = biencoder.create_biencoder_input(
samples_batch,
self.tensorizer,
True,
num_hard_negatives,
num_other_negatives,
shuffle=False,
)
# get the token to be used for representation selection
ds_cfg = self.ds_cfg.dev_datasets[dataset]
rep_positions = ds_cfg.selector.get_positions(biencoder_input.question_ids, self.tensorizer)
encoder_type = ds_cfg.encoder_type
loss, correct_cnt = _do_biencoder_fwd_pass(
self.biencoder,
biencoder_input,
self.tensorizer,
cfg,
encoder_type=encoder_type,
rep_positions=rep_positions,
)
total_loss += loss.item()
total_correct_predictions += correct_cnt
batches += 1
if (i + 1) % log_result_step == 0:
logger.info(
"Eval step: %d , used_time=%f sec., loss=%f ",
i,
time.time() - start_time,
loss.item(),
)
total_loss = total_loss / batches
total_samples = batches * cfg.train.dev_batch_size * self.distributed_factor
correct_ratio = float(total_correct_predictions / total_samples)
logger.info(
"NLL Validation: loss = %f. correct prediction ratio %d/%d ~ %f",
total_loss,
total_correct_predictions,
total_samples,
correct_ratio,
)
return total_loss
def validate_average_rank(self) -> float:
"""
Validates biencoder model using each question's gold passage's rank across the set of passages from the dataset.
It generates vectors for specified amount of negative passages from each question (see --val_av_rank_xxx params)
and stores them in RAM as well as question vectors.
Then the similarity scores are calculted for the entire
num_questions x (num_questions x num_passages_per_question) matrix and sorted per quesrtion.
Each question's gold passage rank in that sorted list of scores is averaged across all the questions.
:return: averaged rank number
"""
logger.info("Average rank validation ...")
cfg = self.cfg
self.biencoder.eval()
distributed_factor = self.distributed_factor
if not self.dev_iterator:
self.dev_iterator = self.get_data_iterator(
cfg.train.dev_batch_size, False, shuffle=False, rank=cfg.local_rank
)
data_iterator = self.dev_iterator
sub_batch_size = cfg.train.val_av_rank_bsz
sim_score_f = BiEncoderNllLoss.get_similarity_function()
q_represenations = []
ctx_represenations = []
positive_idx_per_question = []
num_hard_negatives = cfg.train.val_av_rank_hard_neg
num_other_negatives = cfg.train.val_av_rank_other_neg
log_result_step = cfg.train.log_batch_step
dataset = 0
biencoder = get_model_obj(self.biencoder)
for i, samples_batch in enumerate(data_iterator.iterate_ds_data()):
# samples += 1
if len(q_represenations) > cfg.train.val_av_rank_max_qs / distributed_factor:
break
if isinstance(samples_batch, Tuple):
samples_batch, dataset = samples_batch
biencoder_input = biencoder.create_biencoder_input(
samples_batch,
self.tensorizer,
True,
num_hard_negatives,
num_other_negatives,
shuffle=False,
)
total_ctxs = len(ctx_represenations)
ctxs_ids = biencoder_input.context_ids
ctxs_segments = biencoder_input.ctx_segments
bsz = ctxs_ids.size(0)
# get the token to be used for representation selection
ds_cfg = self.ds_cfg.dev_datasets[dataset]
encoder_type = ds_cfg.encoder_type
rep_positions = ds_cfg.selector.get_positions(biencoder_input.question_ids, self.tensorizer)
# split contexts batch into sub batches since it is supposed to be too large to be processed in one batch
for j, batch_start in enumerate(range(0, bsz, sub_batch_size)):
q_ids, q_segments = (
(biencoder_input.question_ids, biencoder_input.question_segments) if j == 0 else (None, None)
)
if j == 0 and cfg.n_gpu > 1 and q_ids.size(0) == 1:
# if we are in DP (but not in DDP) mode, all model input tensors should have batch size >1 or 0,
# otherwise the other input tensors will be split but only the first split will be called
continue
ctx_ids_batch = ctxs_ids[batch_start : batch_start + sub_batch_size]
ctx_seg_batch = ctxs_segments[batch_start : batch_start + sub_batch_size]
q_attn_mask = self.tensorizer.get_attn_mask(q_ids)
ctx_attn_mask = self.tensorizer.get_attn_mask(ctx_ids_batch)
with torch.no_grad():
q_dense, ctx_dense = self.biencoder(
q_ids,
q_segments,
q_attn_mask,
ctx_ids_batch,
ctx_seg_batch,
ctx_attn_mask,
encoder_type=encoder_type,
representation_token_pos=rep_positions,
)
if q_dense is not None:
q_represenations.extend(q_dense.cpu().split(1, dim=0))
ctx_represenations.extend(ctx_dense.cpu().split(1, dim=0))
batch_positive_idxs = biencoder_input.is_positive
positive_idx_per_question.extend([total_ctxs + v for v in batch_positive_idxs])
if (i + 1) % log_result_step == 0:
logger.info(
"Av.rank validation: step %d, computed ctx_vectors %d, q_vectors %d",
i,
len(ctx_represenations),
len(q_represenations),
)
ctx_represenations = torch.cat(ctx_represenations, dim=0)
q_represenations = torch.cat(q_represenations, dim=0)
logger.info("Av.rank validation: total q_vectors size=%s", q_represenations.size())
logger.info("Av.rank validation: total ctx_vectors size=%s", ctx_represenations.size())
q_num = q_represenations.size(0)
assert q_num == len(positive_idx_per_question)
scores = sim_score_f(q_represenations, ctx_represenations)
values, indices = torch.sort(scores, dim=1, descending=True)
rank = 0
for i, idx in enumerate(positive_idx_per_question):
# aggregate the rank of the known gold passage in the sorted results for each question
gold_idx = (indices[i] == idx).nonzero()
rank += gold_idx.item()
if distributed_factor > 1:
# each node calcuated its own rank, exchange the information between node and calculate the "global" average rank
# NOTE: the set of passages is still unique for every node
eval_stats = all_gather_list([rank, q_num], max_size=100)
for i, item in enumerate(eval_stats):
remote_rank, remote_q_num = item
if i != cfg.local_rank:
rank += remote_rank
q_num += remote_q_num
av_rank = float(rank / q_num)
logger.info("Av.rank validation: average rank %s, total questions=%d", av_rank, q_num)
return av_rank
def _train_epoch(
self,
scheduler,
epoch: int,
eval_step: int,
train_data_iterator: MultiSetDataIterator,
):
cfg = self.cfg
rolling_train_loss = 0.0
epoch_loss = 0
epoch_correct_predictions = 0
log_result_step = cfg.train.log_batch_step
rolling_loss_step = cfg.train.train_rolling_loss_step
num_hard_negatives = cfg.train.hard_negatives
num_other_negatives = cfg.train.other_negatives
seed = cfg.seed
self.biencoder.train()
epoch_batches = train_data_iterator.max_iterations
data_iteration = 0
biencoder = get_model_obj(self.biencoder)
dataset = 0
for i, samples_batch in enumerate(train_data_iterator.iterate_ds_data(epoch=epoch)):
if isinstance(samples_batch, Tuple):
samples_batch, dataset = samples_batch
ds_cfg = self.ds_cfg.train_datasets[dataset]
special_token = ds_cfg.special_token
encoder_type = ds_cfg.encoder_type
shuffle_positives = ds_cfg.shuffle_positives
# to be able to resume shuffled ctx- pools
data_iteration = train_data_iterator.get_iteration()
random.seed(seed + epoch + data_iteration)
biencoder_batch = biencoder.create_biencoder_input(
samples_batch,
self.tensorizer,
True,
num_hard_negatives,
num_other_negatives,
shuffle=True,
shuffle_positives=shuffle_positives,
query_token=special_token,
)
# get the token to be used for representation selection
from dpr.utils.data_utils import DEFAULT_SELECTOR
selector = ds_cfg.selector if ds_cfg else DEFAULT_SELECTOR
rep_positions = selector.get_positions(biencoder_batch.question_ids, self.tensorizer)
loss_scale = cfg.loss_scale_factors[dataset] if cfg.loss_scale_factors else None
loss, correct_cnt = _do_biencoder_fwd_pass(
self.biencoder,
biencoder_batch,
self.tensorizer,
cfg,
encoder_type=encoder_type,
rep_positions=rep_positions,
loss_scale=loss_scale,
)
epoch_correct_predictions += correct_cnt
epoch_loss += loss.item()
rolling_train_loss += loss.item()
if cfg.fp16:
from apex import amp
with amp.scale_loss(loss, self.optimizer) as scaled_loss:
scaled_loss.backward()
if cfg.train.max_grad_norm > 0:
torch.nn.utils.clip_grad_norm_(amp.master_params(self.optimizer), cfg.train.max_grad_norm)
else:
loss.backward()
if cfg.train.max_grad_norm > 0:
torch.nn.utils.clip_grad_norm_(self.biencoder.parameters(), cfg.train.max_grad_norm)
if (i + 1) % cfg.train.gradient_accumulation_steps == 0:
self.optimizer.step()
scheduler.step()
self.biencoder.zero_grad()
if i % log_result_step == 0:
lr = self.optimizer.param_groups[0]["lr"]
logger.info(
"Epoch: %d: Step: %d/%d, loss=%f, lr=%f",
epoch,
data_iteration,
epoch_batches,
loss.item(),
lr,
)
if (i + 1) % rolling_loss_step == 0:
logger.info("Train batch %d", data_iteration)
latest_rolling_train_av_loss = rolling_train_loss / rolling_loss_step
logger.info(
"Avg. loss per last %d batches: %f",
rolling_loss_step,
latest_rolling_train_av_loss,
)
rolling_train_loss = 0.0
if data_iteration % eval_step == 0:
logger.info(
"rank=%d, Validation: Epoch: %d Step: %d/%d",
cfg.local_rank,
epoch,
data_iteration,
epoch_batches,
)
self.validate_and_save(epoch, train_data_iterator.get_iteration(), scheduler)
self.biencoder.train()
logger.info("Epoch finished on %d", cfg.local_rank)
self.validate_and_save(epoch, data_iteration, scheduler)
epoch_loss = (epoch_loss / epoch_batches) if epoch_batches > 0 else 0
logger.info("Av Loss per epoch=%f", epoch_loss)
logger.info("epoch total correct predictions=%d", epoch_correct_predictions)
def _save_checkpoint(self, scheduler, epoch: int, offset: int) -> str:
cfg = self.cfg
model_to_save = get_model_obj(self.biencoder)
cp = os.path.join(cfg.output_dir, cfg.checkpoint_file_name + "." + str(epoch))
meta_params = get_encoder_params_state_from_cfg(cfg)
state = CheckpointState(
model_to_save.get_state_dict(),
self.optimizer.state_dict(),
scheduler.state_dict(),
offset,
epoch,
meta_params,
)
torch.save(state._asdict(), cp)
logger.info("Saved checkpoint at %s", cp)
return cp
def _load_saved_state(self, saved_state: CheckpointState):
epoch = saved_state.epoch
# offset is currently ignored since all checkpoints are made after full epochs
offset = saved_state.offset
if offset == 0: # epoch has been completed
epoch += 1
logger.info("Loading checkpoint @ batch=%s and epoch=%s", offset, epoch)
if self.cfg.ignore_checkpoint_offset:
self.start_epoch = 0
self.start_batch = 0
else:
self.start_epoch = epoch
# TODO: offset doesn't work for multiset currently
self.start_batch = 0 # offset
model_to_load = get_model_obj(self.biencoder)
logger.info("Loading saved model state ...")
model_to_load.load_state(saved_state, strict=True)
logger.info("Saved state loaded")
if not self.cfg.ignore_checkpoint_optimizer:
if saved_state.optimizer_dict:
logger.info("Using saved optimizer state")
self.optimizer.load_state_dict(saved_state.optimizer_dict)
if not self.cfg.ignore_checkpoint_lr and saved_state.scheduler_dict:
logger.info("Using saved scheduler_state")
self.scheduler_state = saved_state.scheduler_dict
def _calc_loss(
cfg,
loss_function,
local_q_vector,
local_ctx_vectors,
local_positive_idxs,
local_hard_negatives_idxs: list = None,
loss_scale: float = None,
) -> Tuple[T, bool]:
"""
Calculates In-batch negatives schema loss and supports to run it in DDP mode by exchanging the representations
across all the nodes.
"""
distributed_world_size = cfg.distributed_world_size or 1
if distributed_world_size > 1:
q_vector_to_send = torch.empty_like(local_q_vector).cpu().copy_(local_q_vector).detach_()
ctx_vector_to_send = torch.empty_like(local_ctx_vectors).cpu().copy_(local_ctx_vectors).detach_()
global_question_ctx_vectors = all_gather_list(
[
q_vector_to_send,
ctx_vector_to_send,
local_positive_idxs,
local_hard_negatives_idxs,
],
max_size=cfg.global_loss_buf_sz,
)
global_q_vector = []
global_ctxs_vector = []
# ctxs_per_question = local_ctx_vectors.size(0)
positive_idx_per_question = []
hard_negatives_per_question = []
total_ctxs = 0
for i, item in enumerate(global_question_ctx_vectors):
q_vector, ctx_vectors, positive_idx, hard_negatives_idxs = item
if i != cfg.local_rank:
global_q_vector.append(q_vector.to(local_q_vector.device))
global_ctxs_vector.append(ctx_vectors.to(local_q_vector.device))
positive_idx_per_question.extend([v + total_ctxs for v in positive_idx])
hard_negatives_per_question.extend([[v + total_ctxs for v in l] for l in hard_negatives_idxs])
else:
global_q_vector.append(local_q_vector)
global_ctxs_vector.append(local_ctx_vectors)
positive_idx_per_question.extend([v + total_ctxs for v in local_positive_idxs])
hard_negatives_per_question.extend([[v + total_ctxs for v in l] for l in local_hard_negatives_idxs])
total_ctxs += ctx_vectors.size(0)
global_q_vector = torch.cat(global_q_vector, dim=0)
global_ctxs_vector = torch.cat(global_ctxs_vector, dim=0)
else:
global_q_vector = local_q_vector
global_ctxs_vector = local_ctx_vectors
positive_idx_per_question = local_positive_idxs
hard_negatives_per_question = local_hard_negatives_idxs
loss, is_correct = loss_function.calc(
global_q_vector,
global_ctxs_vector,
positive_idx_per_question,
hard_negatives_per_question,
loss_scale=loss_scale,
)
return loss, is_correct
def _print_norms(model):
total_norm = 0
for n, p in model.named_parameters():
if p.grad is None:
continue
param_norm = p.grad.data.norm(2)
total_norm += param_norm.item() ** 2
total_norm = total_norm ** (1.0 / 2)
return total_norm
def _do_biencoder_fwd_pass(
model: nn.Module,
input: BiEncoderBatch,
tensorizer: Tensorizer,
cfg,
encoder_type: str,
rep_positions=0,
loss_scale: float = None,
) -> Tuple[torch.Tensor, int]:
input = BiEncoderBatch(**move_to_device(input._asdict(), cfg.device))
q_attn_mask = tensorizer.get_attn_mask(input.question_ids)
ctx_attn_mask = tensorizer.get_attn_mask(input.context_ids)
if model.training:
model_out = model(
input.question_ids,
input.question_segments,
q_attn_mask,
input.context_ids,
input.ctx_segments,
ctx_attn_mask,
encoder_type=encoder_type,
representation_token_pos=rep_positions,
)
else:
with torch.no_grad():
model_out = model(
input.question_ids,
input.question_segments,
q_attn_mask,
input.context_ids,
input.ctx_segments,
ctx_attn_mask,
encoder_type=encoder_type,
representation_token_pos=rep_positions,
)
local_q_vector, local_ctx_vectors = model_out
loss_function = BiEncoderNllLoss()
loss, is_correct = _calc_loss(
cfg,
loss_function,
local_q_vector,
local_ctx_vectors,
input.is_positive,
input.hard_negatives,
loss_scale=loss_scale,
)
is_correct = is_correct.sum().item()
if cfg.n_gpu > 1:
loss = loss.mean()
if cfg.train.gradient_accumulation_steps > 1:
loss = loss / cfg.train.gradient_accumulation_steps
return loss, is_correct
@hydra.main(config_path="conf", config_name="biencoder_train_cfg")
def main(cfg: DictConfig):
if cfg.train.gradient_accumulation_steps < 1:
raise ValueError(
"Invalid gradient_accumulation_steps parameter: {}, should be >= 1".format(
cfg.train.gradient_accumulation_steps
)
)
if cfg.output_dir is not None:
os.makedirs(cfg.output_dir, exist_ok=True)
cfg = setup_cfg_gpu(cfg)
set_seed(cfg)
if cfg.local_rank in [-1, 0]:
logger.info("CFG (after gpu configuration):")
logger.info("%s", OmegaConf.to_yaml(cfg))
trainer = BiEncoderTrainer(cfg)
if cfg.train_datasets and len(cfg.train_datasets) > 0:
trainer.run_train()
elif cfg.model_file and cfg.dev_datasets:
logger.info("No train files are specified. Run 2 types of validation for specified model file")
trainer.validate_nll()
trainer.validate_average_rank()
else:
logger.warning("Neither train_file or (model_file & dev_file) parameters are specified. Nothing to do.")
if __name__ == "__main__":
logger.info("Sys.argv: %s", sys.argv)
hydra_formatted_args = []
# convert the cli params added by torch.distributed.launch into Hydra format
for arg in sys.argv:
if arg.startswith("--"):
hydra_formatted_args.append(arg[len("--") :])
else:
hydra_formatted_args.append(arg)
logger.info("Hydra formatted Sys.argv: %s", hydra_formatted_args)
sys.argv = hydra_formatted_args
main()