DeepSketch - A New Machine Learning-Based Reference Search Technique for Post-Deduplication Delta Compression

DeepSketch - A New Machine Learning-Based Reference Search Technique for Post-Deduplication Delta Compression

USENIX via YouTube Direct link

Evaluation Methodology Compared data-reduction techniques

13 of 15

13 of 15

Evaluation Methodology Compared data-reduction techniques

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

DeepSketch - A New Machine Learning-Based Reference Search Technique for Post-Deduplication Delta Compression

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Intro
  2. 2 Executive Summary
  3. 3 Data Reduction in Storage Systems
  4. 4 Post-deduplication Delta Compression Combines three different data-reduction approaches
  5. 5 Overview of Post-Deduplication Delta Compression
  6. 6 Lossless Compression
  7. 7 Key Challenge: Reference Search How to find a good reference block for an incoming data block across a wide range of stored data at low cost
  8. 8 Limitations of Existing Techniques - Provide significantly lower data-reduction ratios than the optimal
  9. 9 DeepSketch: Key Idea Use the learning-to-hash method for sketch generation A promising machine learning (ML).-based approach for the
  10. 10 DeepSketch: Challenges Lack of semantic information
  11. 11 Data Clustering for DeepSketch . Existing clustering algorithms are unsuitable for DeepSketch
  12. 12 Post-Processing for Training Data Set Non-uniform distribution of data blocks across the clusters
  13. 13 Evaluation Methodology Compared data-reduction techniques
  14. 14 Overall Data-Reduction Benefits
  15. 15 Performance Overhead

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.