Jump to: navigation, search

Difference between revisions of "Meetings/Storlets"

m
Line 10: Line 10:
 
**** Needs more work about fixing setup.py and rebasing
 
**** Needs more work about fixing setup.py and rebasing
 
**** We should decide when we rebase/merge this, to avoid many merge conflicts caused by it. [takashi]
 
**** We should decide when we rebase/merge this, to avoid many merge conflicts caused by it. [takashi]
**** Move swift specific functionality from gateway to middleware
+
*** Move swift specific functionality from gateway to middleware
  
 
* Storlet in Hackathon etherpad
 
* Storlet in Hackathon etherpad

Revision as of 11:32, 16 March 2016

Meeting Time: Every Wednesday at 13:00 UTC in #openstack-storlets

Agenda:

  • Prioritize patches (suggestion):
    • No patches now ready for review
    • Incoming patches
      • Use contextmanager to manager file descriptors: https://review.openstack.org/#/c/282211/
        • COPY should be fixed
      • Refactor directory structure about python modules: https://review.openstack.org/#/c/285947/
        • Needs more work about fixing setup.py and rebasing
        • We should decide when we rebase/merge this, to avoid many merge conflicts caused by it. [takashi]
      • Move swift specific functionality from gateway to middleware
  • Storlet in Hackathon etherpad
    • I would like to add another analytics related question.
    • What timeframe do we think we need?

Austin:

  • We currently have the following abstract
    • Title: From Analytic to Image Processing in Swift with Openstack Storlets
    • Openstack Stolets is an emerging Openstack project aimed at pushing down data centric compute jobs to the object store. Storlets offer a server-less programming model enabling developers to quickly develop and deploy data path computations without worrying about the underlying platform details.
    • Storlets facilitate several interesting use cases such as:
      • Performing image processing in the storage, allowing to process large objects without downloading it.
      • Spark analytic push down to the store, saving on both bandwidth and memory in the analytic cluster.
      • Data obfuscation and anonymization at the source. Thus, preventing sensitive data from ever leaving the store.
    • In this talk we will present the project, discuss and demonstrate the use cases and present a PoC about an effective architecture for image processing using Storlets done at NTT.

Swift Hackathon

Bugs