YoVDO

Arya - Arbitrary Graph Pattern Mining with Decomposition-based Sampling

Offered By: USENIX via YouTube

Tags

USENIX Symposium on Networked Systems Design and Implementation (NSDI) Courses Data Analysis Courses

Course Description

Overview

Explore an innovative approach to graph pattern mining in this 15-minute conference talk from NSDI '23. Discover Arya, an ultra-fast approximate graph pattern miner that combines novel graph decomposition theory with edge sampling-based approximation. Learn how this groundbreaking system can detect and count arbitrary patterns in graphs with up to tens of billions of edges, a scale previously only achievable on supercomputers. Understand the Error-Latency Profile (ELP) feature that allows users to configure mining task durations based on different error targets. Examine Arya's impressive performance, outpacing existing exact and approximate pattern mining solutions by up to five orders of magnitude. Gain insights into its capability to support graphs with 5 billion edges on a single machine and scale to 10-billion-edge graphs on a 32-server testbed. Presented by researchers from Boston University and the University of Wisconsin-Madison, this talk offers valuable knowledge for those interested in advanced graph processing techniques and big data analytics.

Syllabus

NSDI '23 - Arya: Arbitrary Graph Pattern Mining with Decomposition-based Sampling


Taught by

USENIX

Related Courses

Scaling Memcache at Facebook
USENIX via YouTube
Multi-Person Localization via RF Body Reflections
USENIX via YouTube
Opaque - An Oblivious and Encrypted Distributed Analytics Platform
USENIX via YouTube
Live Video Analytics at Scale with Approximation and Delay-Tolerance
USENIX via YouTube
Clipper - A Low-Latency Online Prediction Serving System
USENIX via YouTube