1 / 7

How Will Applications Drive Future Data-Intensive Systems?

Explore how various applications, such as social networking, biomedical sensor networks, finance analytics, and more, are driving the future of data-intensive systems. Discover the common application structures, big data challenges, and the need for data security and integrity in this evolving landscape.

wadel
Download Presentation

How Will Applications Drive Future Data-Intensive Systems?

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. How Will Applications Drive Future Data-Intensive Systems? Data-Intensive Computing Workshop Applications Break-Out Session

  2. Google-style Search Social Networking (Facebook/Twitter) Data warehouse mining Biomedical Sensor networks (e.g., video, radar) Cosmology Astro Climate Fusion Machine translation National security Disaster preparedness Financial analytics GIS Some Driving Applications Many Domains benefit from Data-Intensive Computing

  3. Common Application Structures Derived Data Query • Big Data • Big Data background live Query Derived Data Anticipated vs. ad hoc analysis/queries

  4. Application Trends: Scale E.g., Climate Change Studies need: • 5 orders of magnitude data scale • 5 orders of magnitude speed scale (including algorithmic improvements) But More than That…

  5. SW as service, pervasive mobile clients P2P interaction Built-in verifiability/ provenance of answers Too much raw data; must decide what (derived) data to retain Dealing with privacy controls, role-based authentication Multi-resolution, Multi-D visualization (multi-sensory presentation) at scale Queries expressed using multimedia Heterogeneity, Cross data sources Increased value of data=>increased demand for data security/integrity Application Trends: Features Big Data Challenges: Around the Corner for All of Us

  6. Reducing App Development Time Key issues: • Effective workflow tools: need for convergence to open, standard tools (Multi-user: Tasks are collaborative) • Effective big data libraries & frameworks • Avoid recoding when scale changes • Use familiar APIs (C.S. stuff just works)

  7. Some Lessons Learned • Curriculum mismatch between domain scientists and computer science courses • Hard to determine the resource needs of an app a priori • Cross-disciplinary work is challenging • More cross-disciplinary possibilities in sharing Big Data • Typically not a big data cliff: can make do with less data, but improve with more data • Although some apps need min data size to be useful • Meet needs of those already feeling the pinch vs. Trying to leap ahead • Economics: data is free, networking is free • Payment may not be money: what demand of users

More Related