This repository contains the supplemental material to the paper Towards Machine Learning-Based Optimal HAS ([paper]). In the paper we train machine-learning models for the adaptation of quality in HTTP Adaptive Streaming (HAS) based on the theoretical optimal decisions. The trained models are compared against the optimal decisions and two state-of-the-art algorithms in an simulation environment.
- Simulation environment with trained ANN: https://github.com/csieber/pydashsim
- Matlab & Gurobi code for optimization (please write c.sieber@tum.de for this)
File | Description | Example Notebook |
---|---|---|
datasets/results.csv | Results from the HASBRAIN paper. | results.ipynb |
Keep Calm and Don't Switch: About the Relationship Between Switches and Quality in HAS, Christian Moldovan, Korbinian Hagn, Christian Sieber, Wolfgang Kellerer, Tobias Hoßfeld, pubished at the Modeling Communication Networks workshop at the International Teletraffic Congress (ITC 2017), September, 2017, Genoa, Italy. Link: https://github.com/csieber/alpha-dataset
If you use the provided material, please cite the following paper:
Towards Machine Learning-Based Optimal HAS, Christian Christian, Korbinian Hagn, Christian Moldovan, Tobias Hoßfeld, Wolfgang Kellerer, August, 2018, Url: https://arxiv.org/abs/1808.08065