Download presentation
Presentation is loading. Please wait.
Published byKathleen Merritt Modified over 9 years ago
1
Jolyon White GEC9, 4 th November 2010 Measurement Flow Architecture in OML
2
OML = Measurement Flows 2 Rutgers University, New Jersey NICTA, Sydney Deutsche Telekom Labs @ TU Berlin BOWL Testbed National Broadband Network 100Mbs FTTH VoD Trial IREEL Network Education Teaching Platform Rail Bridge Monitoring Sensors NSW Road Traffic Authority Parking Discovery Rutgers Marco Gruteser
3
Current OML data pipeline Application or Service Measurement pointsFiltersMeasurement streams OML Server Database (SQL) Database (SQL) Database tables File OML client library 3
4
Schemas Schemas enable: –Provenance –Processing in the pipeline (data crunching) Measurement Stream schema == Combination of schemas of filter outputs Each MS stored in its own DB table 4 MP (A, B, C) A B C (S, T) (U, V, W) (X, Y) (S, T, U, V, W, X, Y) MS Schema
5
Schemas Example: app name is “otr2” SQL issued to the database: Schema names + metadata define provenance 5 avg avg : DOUBLE max : DOUBLE min : DOUBLE ts : DOUBLE flow_id : INT32 seq_no : UINT32 pkt_length : UINT32 src_host : STRING src_port : STRING MP udp_in: CREATE TABLE otr2_udp_in ([METADATA COLS], pkt_length_avg REAL, pkt_length_max REAL, pkt_length_min REAL);
6
Measurement Collection Graph Modularize producers + consumers Measurement Point (MP) – data source Processing Point (PP) – buffer, select, filter, join, forward Termination Point (TP) – persistent storage 6 MP PP TP PP Metadata Store Services API MDA (Measurement Data Archive)
7
Resource provisioning OML has no concept of resource provisioning Experimenter obtains resources for I&M identically to experimental resources –i.e. no distinction between I&M and experiment resources User has full control over how resources used Useful defaults, but allow more if experimenter wants it Can’t always cleanly separate I&M from experiment –Mobile wireless testbeds where I&M must share compute + network with experiment –E.g. Parknet Almost all wireless traffic was measurement flows 7
8
Transports OML currently supports two custom procotols –Text version –Binary version Standard transports are good! We like IPFIX, aiming to support it (near future) Why? Several reasons but: –Template support self-describing measurement streams 8 Metadata headers (schemas) Measurement flow Metadata headers (schemas) Measurement flow
9
Processing Point Applications 9
10
Proxy Server Buffer measurements on command –Don’t transmit to remote server Same protocol as server –Transparent to client applications Proxy server OML Server Application CMD_BUFFERCMD_REPLAY 10
11
Hierarchical Measurement Collection High-resolution measurements lose value over time Local storage may be limited Measuring at different granularities Inspired by existing research in Streaming Databases –Numerous VC-backed startups in financial data feed processing space 11
12
Context-Driven Experiment Steering Dynamic experiments need measured context feedback E.g. Geographic trip lines, link state feedback 12
13
Context-Driven Measurement Environment feedback can be used to influence the measurement process itself 13
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.