Data-Driven Network Path Simulation with iBox

Author:

Ashok Sachin1,Tiwari Shubham2,Natarajan Nagarajan2,Padmanabhan Venkata N.2,Sellamanickam Sundararajan2

Affiliation:

1. University of Illinois at Urbana-Champaign, Champaign, IL, USA

2. Microsoft Research India, Bengaluru, India

Abstract

While network simulation is widely used for evaluating network protocols and applications, ensuring realism remains a key challenge. There has been much work on simulating network mechanisms faithfully (e.g., links, buffers, etc.), but less attention on the critical task of configuring the simulator to reflect reality. We present iBox ("Internet in a Box"), which enables data-driven network path simulation, using input/output packet traces gathered at the sender/receiver in the target network to create a model of the end-to-end behaviour of a network path. Our work builds on recent work in this direction [2, 6] and makes three contributions: (1) estimation of a lightweight non-reactive cross-traffic model, (2) estimation of a more powerful reactive cross-traffic model based on Bayesian optimization, and (3) evaluation of iBox in the context of congestion control variants in an Internet research testbed and also controlled experiments with known ground truth. This paper represents an abridged version of [3].

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Software

Reference6 articles.

1. pname project website. https://aka.ms/ibox. pname project website. https://aka.ms/ibox.

2. iBox

3. Data-Driven Network Path Simulation with iBox

4. Pantheon: The Training Ground for Internet Congestion Control Research. https://pantheon.stanford.edu/. Pantheon: The Training Ground for Internet Congestion Control Research. https://pantheon.stanford.edu/.

5. K. Winstein , A. Sivaraman , and H. Balakrishnan . Stochastic Forecasts Achieve High Throughput and Low Delay over Cellular Networks . In 10th USENIX Symposium on Networked Systems Design and Implementation (NSDI 13) , pages 459 -- 471 , Lombard, IL , Apr. 2013 . USENIX Association. K. Winstein, A. Sivaraman, and H. Balakrishnan. Stochastic Forecasts Achieve High Throughput and Low Delay over Cellular Networks. In 10th USENIX Symposium on Networked Systems Design and Implementation (NSDI 13), pages 459--471, Lombard, IL, Apr. 2013. USENIX Association.

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