Unofficial Implementation of Oboe (SIGCOMM'18').

Related tags

Deep Learningmpcabr
Overview

Oboe-Reproduce

This is the unofficial implementation of the paper "Oboe: Auto-tuning video ABR algorithms to network conditions, Zahaib Akhtar, Yun Seong Nam, Ramesh Govindan, Sanjay Rao, Jessica Chen, Ethan Katz-Bassett, Bruno Ribeiro, Jibin Zhan, Hui Zhang, ACM SIGCOMM, 2018". The code is reconstructed based on the official implementation provided by the authors (Yun and Zahaib).

Here please note that in the original paper, predicted throughput for each system is reduced by a factor of 1/1+d, where d is the learnable value. While in this repo., the throughput is directly discounted by d.

Setup

We include most modules here. To install MPC module do the following steps

pip install pybind11
cd cc
sh build.sh

Config Map

The MPC's config map has already been trained in src/configmap_mpc.py, while training a new one is also welcomed.

cd configmap
python train_configmap.py

Results

To run MPC+Oboe just do the following steps

cd src/
python oboe_mpc.py

Also, plot the figure using

pip install matplotlib
python plot.py

Results are reported in details/cdf.png'. Moreover, we plot the comparison of the performance of this repo. and the original paper here.

Here left: the original paper, right: our implementation.

Owner
Tianchi Huang
SB 250
Tianchi Huang
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