Skip to main content
Back to USENIX
  • Conferences
  • Students
Sign in
  • Home
  • Attend
    • Registration Information
    • Registration Discounts
    • Venue, Hotel, and Travel
    • Students and Grants
  • Program
    • At a Glance
    • Symposium Program
    • 2nd Workshop on Security Information Workers
    • Who Are You?! Adventures in Authentication
    • Workshop on Privacy Indicators
    • Workshop on Security Fatigue
    • Workshop on the Future of Privacy Notices and Indicators: Will Drones Deliver My Privacy Policy?
  • Activities
    • Poster Session
    • Birds-of-a-Feather Sessions
  • Sponsorship
  • Participate
    • Instructions for Authors and Speakers
    • Call for Nominations
    • Call for Papers
    • Call for Posters and Proposals
      • Call for Papers: 2nd Workshop on Security Information Workers
      • Call for Papers: Who are you?! Adventures in Authentication
      • Call for Papers: Workshop on Privacy Indicators
      • Call for Papers: Workshop on Security Fatigue
      • Workshop: Will Drones Deliver My Privacy Policy?
  • About
    • Organizers
    • Past Symposia
  • Home
  • Attend
  • Program
  • Sponsorship
  • Participate
  • About

sponsors

Gold Sponsor
Gold Sponsor
Gold Sponsor
Silver Sponsor
Bronze Sponsor
Media Sponsor
Media Sponsor
Media Sponsor
Media Sponsor
Media Sponsor
Industry Partner

help promote

HotCloud '16 button

USENIX Conference Policies

  • Event Code of Conduct
  • Conference Network Policy
  • Statement on Environmental Responsibility Policy

SEeSAW - Similarity Exploiting Storage for Accelerating Analytics Workflows

Kalapriya Kannan, Suparna Bhattacharya, Kumar Raj, Muthukumar Murugan, and Doug Voigt, Hewlett Packard Enterprise

The key to successful deployment of big data solutions lies in the timely distillation of meaningful information. This is made difficult by the mismatch between volume and velocity of data at scale and challenges posed by disparate speeds of IO, CPU, memory and communication links of data storage and processing systems. Instead of viewing storage as a bottleneck in this pipeline, we believe that storage systems are best positioned to discover and exploit intrinsic data properties to enhance information density of stored data. This has the potential to reduce the amount of new information that needs to be processed by an analytics workflow. Towards exploring this possibility, we propose SEeSAW, a Similarity Exploiting Storage for Accelerating Analytics Workflows that makes similarity a fundamental storage primitive. We show that SEeSAW transparently eliminates the need for applications to process uninformative data, thereby incurring substantially lower costs on IO, memory, computation and communication while speeding up (about 97% as observed in our experiment) the rate at which actionable outcomes can be derived by analyzing data. By increasing capacity of analytics workloads to absorb more data within the same resource envelope, SEeSAW can open up rich opportunities to reap greater benefits from machine and human generated data accumulated from various sources.

Kalapriya Kannan, Hewlett Packard Enterprise

Suparna Bhattacharya, Hewlett Packard Enterprise

Kumar Raj, Hewlett Packard Enterprise

Muthukumar Murugan, Hewlett Packard Enterprise

Doug Voigt, Hewlett Packard Enterprise

Open Access Media

USENIX is committed to Open Access to the research presented at our events. Papers and proceedings are freely available to everyone once the event begins. Any video, audio, and/or slides that are posted after the event are also free and open to everyone. Support USENIX and our commitment to Open Access.

BibTeX
@inproceedings {196374,
author = {Kalapriya Kannan and Suparna Bhattacharya and Kumar Raj and Muthukumar Murugan and Doug Voigt},
title = {{SEeSAW} - Similarity Exploiting Storage for Accelerating Analytics Workflows},
booktitle = {8th USENIX Workshop on Hot Topics in Storage and File Systems (HotStorage 16)},
year = {2016},
address = {Denver, CO},
url = {https://www.usenix.org/conference/hotstorage16/workshop-program/presentation/kannan},
publisher = {USENIX Association},
month = jun
}
Download
Kannan PDF
View the slides
  • Log in or register to post comments

Gold Sponsors

Silver Sponsors

Bronze Sponsors

Media Sponsors & Industry Partners

© USENIX
EIN 13-3055038

  • Privacy Policy
  • Contact Us