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https://github.com/zeromq/libzmq.git
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74 lines
2.5 KiB
Python
Executable File
74 lines
2.5 KiB
Python
Executable File
#!/usr/bin/python3
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#
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# This script assumes that the set of CSV files produced by "generate_csv.sh" is provided as input
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# and that locally there is the "results" folder.
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#
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# results for TCP:
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INPUT_FILE_PUSHPULL_TCP_THROUGHPUT="results/pushpull_tcp_thr_results.csv"
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INPUT_FILE_REQREP_TCP_LATENCY="results/reqrep_tcp_lat_results.csv"
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TCP_LINK_GPBS=100
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# results for INPROC:
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INPUT_FILE_PUSHPULL_INPROC_THROUGHPUT="results/pushpull_inproc_thr_results.csv"
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INPUT_FILE_PUBSUBPROXY_INPROC_THROUGHPUT="results/pubsubproxy_inproc_thr_results.csv"
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# dependencies
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#
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# pip3 install matplotlib
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#
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import matplotlib.pyplot as plt
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import numpy as np
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# functions
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def plot_throughput(csv_filename, title, is_tcp=False):
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message_size_bytes, message_count, pps, mbps = np.loadtxt(csv_filename, delimiter=',', unpack=True)
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fig, ax1 = plt.subplots()
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# PPS axis
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color = 'tab:red'
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ax1.set_xlabel('Message size [B]')
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ax1.set_ylabel('PPS [Mmsg/s]', color=color)
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ax1.semilogx(message_size_bytes, pps / 1e6, label='PPS [Mmsg/s]', marker='x', color=color)
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ax1.tick_params(axis='y', labelcolor=color)
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# GBPS axis
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color = 'tab:blue'
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ax2 = ax1.twinx() # instantiate a second axes that shares the same x-axis
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ax2.set_ylabel('Throughput [Gb/s]', color=color)
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ax2.semilogx(message_size_bytes, mbps / 1e3, label='Throughput [Gb/s]', marker='o')
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if is_tcp:
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ax2.set_yticks(np.arange(0, TCP_LINK_GPBS + 1, TCP_LINK_GPBS/10))
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ax2.tick_params(axis='y', labelcolor=color)
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ax2.grid(True)
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plt.title(title)
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fig.tight_layout() # otherwise the right y-label is slightly clippe
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plt.savefig(csv_filename.replace('.csv', '.png'))
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plt.show()
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def plot_latency(csv_filename, title):
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message_size_bytes, message_count, lat = np.loadtxt(csv_filename, delimiter=',', unpack=True)
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plt.semilogx(message_size_bytes, lat, label='Latency [us]', marker='o')
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plt.xlabel('Message size [B]')
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plt.ylabel('Latency [us]')
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plt.grid(True)
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plt.title(title)
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plt.savefig(csv_filename.replace('.csv', '.png'))
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plt.show()
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# main
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plot_throughput(INPUT_FILE_PUSHPULL_TCP_THROUGHPUT, 'ZeroMQ PUSH/PULL socket throughput, TCP transport', is_tcp=True)
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plot_throughput(INPUT_FILE_PUSHPULL_INPROC_THROUGHPUT, 'ZeroMQ PUSH/PULL socket throughput, INPROC transport')
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plot_throughput(INPUT_FILE_PUBSUBPROXY_INPROC_THROUGHPUT, 'ZeroMQ PUB/SUB PROXY socket throughput, INPROC transport')
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plot_latency(INPUT_FILE_REQREP_TCP_LATENCY, 'ZeroMQ REQ/REP socket latency, TCP transport')
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