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# coding=utf-8
# Copyright (c) 2020, 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.
"""Evaluation utilities."""
import os
import time
from functools import partial
import torch
from megatron import get_args
from megatron import print_rank_last, is_last_rank
from megatron import mpu
from megatron.schedules import get_forward_backward_func
from tasks.finetune_utils import build_data_loader
from tasks.finetune_utils import process_batch
import json
import numpy as np
from tasks.label_dict import get_label_dict
def accuracy_func_provider(single_dataset_provider):
"""Provide function that calculates accuracies."""
args = get_args()
# Build dataloaders.
datapaths = [args.valid_data[0], args.test_data[0]]
dataloaders = []
for datapath in datapaths:
dataset = single_dataset_provider(datapath)
dataloader = build_data_loader(
dataset, args.micro_batch_size, num_workers=args.num_workers,
drop_last=(mpu.get_data_parallel_world_size() > 1))
dataloaders.append((dataset.dataset_name, dataloader))
def _generate_prediction_json(predictions, step, save_acc):
probs_list = predictions[0]
# labels_list = predictions[1]
ids_list = predictions[2]
min_id = min(ids_list)
max_id = max(ids_list)
LABELS = get_label_dict(args.task, write2file=True)
output_submit_file = os.path.join(args.res_path[0], args.task+"_prediction_{}_{}.json".format(step, save_acc))
with open(output_submit_file, "w") as writer:
for i in range(min_id, max_id + 1):
label_index = ids_list.index(i)
pred_prob_list = probs_list[label_index]
label = pred_prob_list.index(max(pred_prob_list))
json_d = {}
if min_id == 1:
json_d['id'] = i - 1
else:
json_d['id'] = i
json_d["label"] = LABELS[str(label)]
writer.write(json.dumps(json_d) + '\n')
def _generate_prediction_prob(predictions, step, save_acc):
probs_list = predictions[0]
ids_list = predictions[2]
min_id = min(ids_list)
max_id = max(ids_list)
output_prob_file = os.path.join(args.res_path[0], args.task+"_prob_{}_{}".format(step, save_acc))
prob_arr = []
for i in range(min_id, max_id + 1):
label_index = ids_list.index(i)
prob_arr.append(probs_list[label_index])
prob_arr = np.array(prob_arr)
np.save(output_prob_file, prob_arr)
def metrics_func(model, step):
print_rank_last('calculating metrics ...')
correct = 0
total = 0
for index, (name, dataloader) in enumerate(dataloaders):
if index == 1:
output_predictions = True
assert mpu.get_data_parallel_world_size() == 1
named_predictions = []
names = 'predictions'
else:
output_predictions = False
output = calculate_correct_answers(name, model, dataloader,
step, output_predictions)
if not output_predictions:
correct_ans, total_count = output
else:
correct_ans, total_count, predictions = output
named_predictions.append((name, predictions))
names += '_' + name
if not output_predictions:
correct += correct_ans
total += total_count
save_acc = str(round(correct / total, 4) * 10000)[:4]
if output_predictions:
print_rank_last("generate prediction...")
# import pdb;pdb.set_trace()
_generate_prediction_json(predictions, step, save_acc)
_generate_prediction_prob(predictions, step, save_acc)
print_rank_last("generate done")
# import pdb;pdb.set_trace()
# import pdb;pdb.set_trace()
# if is_last_rank():
# percent = float(correct) * 100.0 / float(total)
# print(' >> |step: {}| overall: correct / total = {} / {} = '
# '{:.4f} %'.format(step, correct, total, percent))
# if output_predictions and is_last_rank():
# assert args.load is not None
# filename = os.path.join(args.load, names + '.pt')
# torch.save(named_predictions, filename)
return metrics_func
def calculate_correct_answers(name, model, dataloader,
step, output_predictions):
"""Calculate correct over total answers and return prediction if the
`output_predictions` is true."""
args = get_args()
forward_backward_func = get_forward_backward_func()
start_time = time.time()
for m in model:
m.eval()
saved_micro_batch_size = args.micro_batch_size
saved_global_batch_size = args.global_batch_size
ds = dataloader.dataset
if hasattr(ds, 'sample_multiplier'):
# If our dataset as a sample_multiplier attribute that means
# each "sample" from the dataset actually has multiple samples
# that will collapse into the batch dimension (for example in
# the RACE dataset that has several options), we need to
# account for that when setting the micro batch size.
sample_multiplier = ds.sample_multiplier
else:
sample_multiplier = 1
micro_batch_size_times_data_parallel = args.orig_micro_batch_size * args.data_parallel_size
num_micro_batches = args.orig_global_batch_size // micro_batch_size_times_data_parallel
def loss_func(output_predictions, labels, output_tensor):
logits = output_tensor
loss_dict = {}
# Add output predictions.
if output_predictions:
# assert False
loss_dict['softmaxes'] = torch.nn.Softmax(dim=-1)(
logits.float()).data.cpu().numpy().tolist()
loss_dict['labels'] = labels.data.cpu().numpy().tolist()
loss_dict['ids'] = batch['uid'].cpu().numpy().tolist()
# Compute the correct answers.
predicted = torch.argmax(logits, dim=-1)
corrects = (predicted == labels)
# Add to the counters.
loss_dict['total'] = labels.size(0)
loss_dict['correct'] = corrects.sum().item()
return 0, loss_dict
# defined inside to capture output_predictions
def correct_answers_forward_step(batch, model):
try:
batch_ = next(batch)
except BaseException:
batch_ = batch
tokens, types, labels, attention_mask = process_batch(batch_)
# Forward model.
args = get_args()
output_tensor = model(tokens, attention_mask, tokentype_ids=types)
return output_tensor, partial(loss_func, output_predictions, labels)
with torch.no_grad():
# For all the batches in the dataset.
total = 0
correct = 0
if output_predictions:
# This option is only possible when data parallel size is 1.
assert mpu.get_data_parallel_world_size() == 1
softmaxes = []
labels = []
ids = []
for _, batch in enumerate(dataloader):
# For evaluation only mode we use drop_last = False to get all the
# samples, which means we might not have a full batch, so we
# adjust batch_size here to actual batch size of data
actual_batch_size = len(batch['label'])
# ... applying sample_multiplier if necessary
args.micro_batch_size = actual_batch_size * sample_multiplier
args.global_batch_size = actual_batch_size * sample_multiplier * num_micro_batches
loss_dicts = forward_backward_func(correct_answers_forward_step, batch, model,
optimizer=None, timers=None, forward_only=True)
for loss_dict in loss_dicts:
if output_predictions:
softmaxes.extend(loss_dict['softmaxes'])
labels.extend(loss_dict['labels'])
ids.extend(loss_dict['ids'])
total += loss_dict['total']
correct += loss_dict['correct']
for m in model:
m.train()
args.micro_batch_size = saved_micro_batch_size
args.global_batch_size = saved_global_batch_size
# Reduce.
if mpu.is_pipeline_last_stage():
unreduced = torch.cuda.LongTensor([correct, total])
torch.distributed.all_reduce(unreduced,
group=mpu.get_data_parallel_group())
# Print on screen.
correct_ans = unreduced[0].item()
total_count = unreduced[1].item()
percent = float(correct_ans) * 100.0 / float(total_count)
elapsed_time = time.time() - start_time
if not output_predictions:
print_rank_last(' > |step: {} | metrics for {}: correct / total '
'= {} / {} = {:.4f} %, elapsed time (sec): {:.3f}'.format(
step, name, correct_ans, total_count,
percent, elapsed_time))
if output_predictions:
return correct_ans, total_count, (softmaxes, labels, ids)
return correct_ans, total_count
if output_predictions:
return 0, 0, ()
return 0, 0
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