1 / 10

Capture Disparities Highlighted by Provenance Datasets

Capture Disparities Highlighted by Provenance Datasets. G. Blake Coe + , R. Christopher Doty * , M. David Allen + , Adriane P. Chapman + + ( gcoe , dmallen , achapman )@ mitre.org * chris.doty@library.gatech.edu. Capture. When a single system is used, provenance is Complete

sakura
Download Presentation

Capture Disparities Highlighted by Provenance Datasets

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. Capture Disparities Highlighted by Provenance Datasets G. Blake Coe+, R. Christopher Doty*, M. David Allen+, Adriane P. Chapman+ +(gcoe, dmallen, achapman)@mitre.org *chris.doty@library.gatech.edu

  2. Capture • When a single system is used, provenance is • Complete • Obtained by one capture point • Options of granularity • High quality • E.g. can see payload in addition to envelope

  3. PLUS Real World Capture is Complicated PASS Taverna Coordination points for automatic provenance capture

  4. The Results of Real World Capture Are Complicated • There may be multiple, independent observations of the same thing • sending system observes transmission of M; receiving system Y observes the receipt of M. • Data or processes may be observed via different technical channels • program generates a file M on disk; months later, user receives email with attachment M • Disconnection and duplication occurs

  5. What do we need when Capture is Messy? • Ability to identify when multiple, independent observations of the same thing occurs • And what to do with that information • Ability to go “up and down” in the provenance abstraction • E.g. work over all of the low-level OS provenance, or just the application-generated provenance, etc. • Ability to function over incomplete provenance graphs • Impossible to work on these issues when the only provenance datasets are generated via single or heterogeneous systems

  6. The Datasets Provided • Actually 3 Datasets! • Complete • App-Based • User Monitor • Show the differences in provenance record when different capture agents are used • In PROV-XX App-Based User Monitor Complete • Related across datasets • E.g. the first G1Complete is the same set of actions as G1App-Based is the same as G1UserMonitor

  7. Complete • “Uber User View” a.k.a. “what Actually happened. • Based on a use case observed within the Georgia Tech Library system Save links App: Word, SharePoint User: Alice Web Data Browse App: Firefox User: Alice Web Data Web Data Notes.txt Web Data Web Data Web Data Email from Prof Email from Mom Create Summary App: Word, SharePoint User: Alice View App: Outlook User: Alice Email from Prof View App: Outlook User: Bob Review App: Word SharePoint User: Bob Summary.doc Publish App: SharePoint User: Cathy AboutInstitution Summary.doc’

  8. App-Based • Capture points in • SharePoint • Firefox • Notice not all processes observable! Web Data Browse App: Firefox User: Alice Save links App: Word SharePoint User: Alice Web Data Web Data Notes.txt Web Data Web Data Web Data Create Summary App: Word, SharePoint User: Alice Review App: Word SharePoint User: Bob Summary.doc Publish App: SharePoint User: Cathy AboutInstitution Summary.doc’

  9. Save links App: Word, SharePoint User: Alice Web Data Browse App: Firefox User: Alice Web Data Web Data Notes.txt Web Data User Monitor Web Data Web Data Email from Prof Email from Mom Create Summary App: Word, SharePoint User: Alice View App: Outlook User: Alice Email from Prof View App: Outlook User: Bob Review App: Word SharePoint User: Bob Summary.doc • Capture Point in SpectorSoft • User Monitoring Software • Notice that all applications are seen, but edges lacking Publish App: SharePoint User: Cathy AboutInstitution Summary.doc’

  10. Conclusions • Providing a set of related datasets and workload queries to facilitate research on provenance capture and system interoperability • PLUS, and some capture agents, can be found at https://github.com/plus-provenance/plus • Datasets can be found at ProvBenchhttps://github.com/provbench

More Related