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embedding_generation_benchmark.py
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embedding_generation_benchmark.py
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## @package embedding_generation_benchmark
# Module caffe2.python.embedding_generation_benchmark
from caffe2.proto import caffe2_pb2
from caffe2.python import workspace, core, utils, model_helper
import argparse
import numpy as np
import time
import logging
logging.basicConfig()
log = logging.getLogger("embedding_generation_benchmark")
log.setLevel(logging.DEBUG)
def generate_data(T, batch_size, max_seq_length):
'''
Fill a queue with input data
'''
log.info("Generating T={} batches".format(T))
generate_input_init_net = core.Net('generate_input_init')
queue = generate_input_init_net.CreateBlobsQueue(
[], "inputqueue", num_blobs=1, capacity=T,
)
workspace.RunNetOnce(generate_input_init_net)
generate_input_net = core.Net('generate_input')
generate_input_net.EnqueueBlobs([queue, "scratch"], ["scratch"])
np.random.seed(2603)
for t in range(T):
if (t % (max(10, T // 10)) == 0):
log.info("Generating data {}/{}".format(t, T))
X = np.tile(np.arange(max_seq_length), [batch_size, 1]).transpose()
workspace.FeedBlob("scratch", X)
workspace.RunNetOnce(generate_input_net.Proto())
log.info("Finished data generation")
return queue
def generate_embedding_table(vocab_size, embedding_size):
log.info("Generating embedding table with dimensions {}"
.format([vocab_size, embedding_size]))
generate_table_net = core.Net('generate_table')
table = generate_table_net.GaussianFill(
[],
['embedding_table'],
shape=[vocab_size, embedding_size],
)
workspace.RunNetOnce(generate_table_net)
return table
def create_model(args, queue, embedding_table, embedding_size):
model = model_helper.ModelHelper(name='embedding_generation_bench')
input_blob = model.net.DequeueBlobs(queue, 'input_data')
if args.implementation == 'sinusoid':
model.net.SinusoidPositionEncoding(
[input_blob],
['output'],
embedding_size=embedding_size
)
else:
model.net.Gather(
[embedding_table, input_blob],
['output'],
)
return model
def Caffe2EmbeddingGeneration(args):
T = args.data_size // args.batch_size
queue = generate_data(T, args.batch_size, args.seq_length)
embedding_table = None
if args.implementation == 'table':
embedding_table = generate_embedding_table(
args.seq_length,
args.embedding_size,
)
model = create_model(args, queue, embedding_table, args.embedding_size)
workspace.RunNetOnce(model.param_init_net)
workspace.CreateNet(model.net)
start_time = time.time()
num_iters = T
total_iters = 0
# Run the Benchmark
log.info("------ Warming up ------")
workspace.RunNet(model.net.Proto().name)
log.info("------ Starting benchmark ------")
start_time = time.time()
last_time = time.time()
for iteration in range(1, num_iters, args.iters_to_report):
iters_once = min(args.iters_to_report, num_iters - iteration)
total_iters += iters_once
workspace.RunNet(model.net.Proto().name, iters_once)
new_time = time.time()
log.info(
"Iter: {} / {}. Embeddings Generated Per Second: {}k.".format(
iteration,
num_iters,
(iters_once * args.batch_size * args.seq_length) /
(new_time - last_time) // 100 / 10,
)
)
last_time = new_time
total_per_sec = (num_iters - 1) * args.batch_size * args.seq_length
total_per_sec = total_per_sec / (time.time() - start_time) // 100 / 10
log.info("Done. Total embeddings generated per second " +
"excluding 1st iteration: {}k".format(total_per_sec))
return time.time() - start_time
@utils.debug
def Benchmark(args):
return Caffe2EmbeddingGeneration(args)
def GetArgumentParser():
parser = argparse.ArgumentParser(
description="Embedding generation benchmark."
)
parser.add_argument(
"--embedding_size",
type=int,
default=512,
help="Embedding size",
)
parser.add_argument(
"--batch_size",
type=int,
default=16,
help="The batch size."
)
parser.add_argument(
"--data_size",
type=int,
default=10000,
help="Number of sequences to generate"
)
parser.add_argument(
"--seq_length",
type=int,
default=128,
help="Max sequence length"
)
parser.add_argument(
"--iters_to_report",
type=int,
default=20,
help="Number of iterations to report progress"
)
parser.add_argument(
"--implementation",
type=str,
default="sinusoid",
help="'table' or 'sinusoid'",
)
return parser
if __name__ == '__main__':
args, extra_args = GetArgumentParser().parse_known_args()
workspace.GlobalInit([
'caffe2',
'--caffe2_log_level=0',
'--caffe2_print_blob_sizes_at_exit=0'] + extra_args)
device = core.DeviceOption(caffe2_pb2.CPU)
with core.DeviceScope(device):
Benchmark(args)