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benchmark.py
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benchmark.py
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# Copyright (c) 2021 PaddlePaddle Authors. 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.
import sys
import os
import base64
import yaml
import requests
import time
import json
from paddle_serving_server.pipeline import PipelineClient
import numpy as np
from paddle_serving_client.utils import MultiThreadRunner
from paddle_serving_client.utils import benchmark_args, show_latency
def parse_benchmark(filein, fileout):
with open(filein, "r") as fin:
res = yaml.load(fin, yaml.FullLoader)
del_list = []
for key in res["DAG"].keys():
if "call" in key:
del_list.append(key)
for key in del_list:
del res["DAG"][key]
with open(fileout, "w") as fout:
yaml.dump(res, fout, default_flow_style=False)
def gen_yml(device):
fin = open("config.yml", "r")
config = yaml.load(fin, yaml.FullLoader)
fin.close()
config["dag"]["tracer"] = {"interval_s": 10}
if device == "gpu":
config["op"]["det"]["local_service_conf"]["device_type"] = 1
config["op"]["det"]["local_service_conf"]["devices"] = "2"
config["op"]["rec"]["local_service_conf"]["device_type"] = 1
config["op"]["rec"]["local_service_conf"]["devices"] = "2"
with open("config2.yml", "w") as fout:
yaml.dump(config, fout, default_flow_style=False)
def cv2_to_base64(image):
return base64.b64encode(image).decode('utf8')
def run_http(idx, batch_size):
print("start thread ({})".format(idx))
url = "http://127.0.0.1:9999/ocr/prediction"
start = time.time()
test_img_dir = "imgs/"
#test_img_dir = "rctw_test/images/"
latency_list = []
total_number = 0
for img_file in os.listdir(test_img_dir):
l_start = time.time()
with open(os.path.join(test_img_dir, img_file), 'rb') as file:
image_data1 = file.read()
image = cv2_to_base64(image_data1)
data = {"key": ["image"], "value": [image]}
#for i in range(100):
r = requests.post(url=url, data=json.dumps(data))
print(r.json())
end = time.time()
l_end = time.time()
latency_list.append(l_end * 1000 - l_start * 1000)
total_number = total_number + 1
return [[end - start], latency_list, [total_number]]
def multithread_http(thread, batch_size):
multi_thread_runner = MultiThreadRunner()
start = time.time()
result = multi_thread_runner.run(run_http, thread, batch_size)
end = time.time()
total_cost = end - start
avg_cost = 0
total_number = 0
for i in range(thread):
avg_cost += result[0][i]
total_number += result[2][i]
avg_cost = avg_cost / thread
print("Total cost: {}s".format(total_cost))
print("Each thread cost: {}s. ".format(avg_cost))
print("Total count: {}. ".format(total_number))
print("AVG QPS: {} samples/s".format(batch_size * total_number /
total_cost))
show_latency(result[1])
def run_rpc(thread, batch_size):
client = PipelineClient()
client.connect(['127.0.0.1:18090'])
start = time.time()
test_img_dir = "imgs/"
#test_img_dir = "rctw_test/images/"
latency_list = []
total_number = 0
for img_file in os.listdir(test_img_dir):
l_start = time.time()
with open(os.path.join(test_img_dir, img_file), 'rb') as file:
image_data = file.read()
image = cv2_to_base64(image_data)
ret = client.predict(feed_dict={"image": image}, fetch=["res"])
print(ret)
l_end = time.time()
latency_list.append(l_end * 1000 - l_start * 1000)
total_number = total_number + 1
end = time.time()
return [[end - start], latency_list, [total_number]]
def multithread_rpc(thraed, batch_size):
multi_thread_runner = MultiThreadRunner()
start = time.time()
result = multi_thread_runner.run(run_rpc, thread, batch_size)
end = time.time()
total_cost = end - start
avg_cost = 0
total_number = 0
for i in range(thread):
avg_cost += result[0][i]
total_number += result[2][i]
avg_cost = avg_cost / thread
print("Total cost: {}s".format(total_cost))
print("Each thread cost: {}s. ".format(avg_cost))
print("Total count: {}. ".format(total_number))
print("AVG QPS: {} samples/s".format(batch_size * total_number /
total_cost))
show_latency(result[1])
if __name__ == "__main__":
if sys.argv[1] == "yaml":
mode = sys.argv[2] # brpc/ local predictor
thread = int(sys.argv[3])
device = sys.argv[4]
gen_yml(device)
elif sys.argv[1] == "run":
mode = sys.argv[2] # http/ rpc
thread = int(sys.argv[3])
batch_size = int(sys.argv[4])
if mode == "http":
multithread_http(thread, batch_size)
elif mode == "rpc":
multithread_rpc(thread, batch_size)
elif sys.argv[1] == "dump":
filein = sys.argv[2]
fileout = sys.argv[3]
parse_benchmark(filein, fileout)