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shenango-all

This repository includes Shenango and all of the applications, benchmarks, and systems evaluated in the Shenango paper at NSDI 2019. Using this repository, you can reproduce all of the results in the paper.

Installing prereqs

sudo apt install build-essential libnuma-dev clang autoconf autotools-dev m4 automake libevent-dev  libpcre++-dev libtool ragel libev-dev moreutils parallel

Install rust, and use the nightly toolchain. See http://rust-lang.org/ for details.

Compiling

To build everything for Shenango, Linux, and Arachne:

git submodule update --init --recursive
./build_all.sh

To clean: ./clean_all.sh.

For instructions on building ZygOS or Memcached for ZygOS, please see their repositories. After building ZygOS, the spin server can be built with:

make -C ./bench/servers spin-ix

We built and ran ZygOS on Ubuntu 16.04; we built and ran everything else on Ubuntu 18.04.

Running

To run the experiments, first run the installation instructions above on your server. On your clients, clone the Shenango repo in your home directory and build it (the experiments will use the iokernel built there). Next, on the server, modify experiment.py so that the IPs, MACs, PCIe address, and interface name match those in your deployment. Also enable the experiments that you would like to run in paper_experiments in experiment.py. Then run the main experiments:

python experiment.py

To run the threading benchmarks (Table 2), follow the instructions in shenango/apps/bench (for Shenango) and bench/threading (for the other systems). To run the latency experiment (Figure 6), follow the instructions in shenango/apps/dpdk_netperf for both building and running.

Analyzing

To process the results for the load shift experiment:

python loadshift_process.py <results_directory>

To process the results for all other experiments:

python summary.py <results_directory>

To reproduce the figures in the paper, install R and the packages ggplot2, plyr, and cowplot (e.g., with install.packages() in the R prompt). Then run the R scripts in the scripts directory. Each script includes a description of its arguments.

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