1 / 8

Jason Leigh spiff@evl.uic

SuperDuperNetworking Transforming Supercomputing … from the point of view of Large Scale Visualization and Collaborative Work. Jason Leigh spiff@evl.uic.edu. A Typical Data Correlation and Visualization Pipeline. Data Source  Correlate/Filter  Render  Display

Télécharger la présentation

Jason Leigh spiff@evl.uic

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. SuperDuperNetworking Transforming Supercomputing…from the point of view of Large Scale Visualization andCollaborative Work Jason Leigh spiff@evl.uic.edu

  2. A Typical Data Correlation and Visualization Pipeline Data Source  Correlate/Filter  Render  Display Data Source  Render  Display Data Source  Render + Display Data Source  Correlate  Render + Display Data Source + Correlate  Render + Display Data Source + Correlate  Render  Display • Things to notice: • Pipelines are static for long periods of time-NOT like web surfing- so…. • Routing is not crucial. • Program code is tiny compared to volume of data processed. Caching won’t help much- so…. • Need to stream lots of data through fast concurrent pipelines! • Need pipelines to be optimized from end to end.

  3. Experiment to Use Inexpensive Photonic Switches as an alternative to traditional million $ routers to provide application-controlled deterministic network paths/pipelines. Long haul link The cross connections are application- programmable. Protocol & data rate independent Calient / Glimmerglass at StarLight & EVL

  4. In Collaborative Work, Data or Visualization needs to be Distributed to Collaborating Sites Data Source  Correlate  Render  Display Data Source  Render + Display Data Source  Render  Display Data Source  Correlate  Render + Display Data Source + Correlate  Render + Display Data Source + Correlate  Render  Display

  5. Photonic Multicast Service Glimmerglass Reflexion Photonic Multicast-capable Switch

  6. Photonically Multicasting a Visualization • Challenges: • Need to augment traditional Routing and Wavelength Assignment algorithms to consider photonic multicast constraints. • Need extreme speed reliable multicast protocol

  7. 1st Step: Realize Local Area Photonic Multicasting(Visit Booth R2935 to learn how this is done on the OptIPuter)

  8. Quiz: Guess the Mystery Computer with the enormous bandwidth but tiny caches… 2.4GB/s from main memory to graphics (Today’s AGP8X is at 2.1GB/s) 48GB/s! (Today’s Quadro FX3000only has 27GB/s) Tiny caches Memory 32MB Graphics Synthesizer 4MB SIF IPU 128bit bus DMA 16K cache GIF FPU 300MhZMIPS 3 VU0 VU1 Vector processors with several parallel pipelines For distributed, collaborative large scale data visualization, we need a version of this that extends to wide area environments.

More Related