Edge-Enabled Tactical <strong>Systems</strong> (EETS)Investigates architectures and technologies that adapt new generations ofmobile devices and sensors to support humans operating in demanding edgeenvironmentsMobile technologies can enhance <strong>the</strong> manner in whichpeople operate in tactical environments• Local data caching with reach back when available• Cyber-foraging to enhance handheld and sensor devicecapabilities• Flexible deployment and rapid adaptation for new missions• Context-aware computing to reduce cognitive load andconserve resources• Local, edge analytics to provide rapid data analysis• Increased use of autonomy (drones, robots, sensors)What architectures and technologies support soldiers and o<strong>the</strong>r edge users incustomizing systems to unique needs, finding information that matters, and tocontinue processing in uncertain computing environments?Does <strong>Scale</strong> Really Matter?: ULS <strong>Systems</strong> <strong>Seven</strong> <strong>Years</strong> LaterLinda Northrop: May 24, <strong>2013</strong>66© <strong>2013</strong> Carnegie Mellon University
SEI and Broader Carnegie Mellon CollaborationS. SimantaCloudlet CoreS. SimantaGaze-TrackingApplicationsJ. BolengSecure DigitalContainersK. HaW. RichterY. AbeP. SubramanyamL. QiS. JainV. ShenoyV. TibrewalM. SubramaniamG. Lewis E. MatershevEnergy Model forBluetooth and WiFiG. LewisApplicationVirtualizationD. MessingerSecure LanguageMobile ComputingJ. Aldrich, AssociateProfessor, SCS, CMUCyber-ForagingR. Reussner,Professor, KITJ. BolengM. Satyanarayanan,Professor, SCS, CMUSocialNetworkAnalysisJ. Pfeffer,AssociateResearchProfessor, ISR,CMUG. LewisEETSEdge AnalyticsK. Carley,Professor,ISR, CMUV. DwivediE. MorrisM. Hebert,Professor, RI,CMUD. Garlan,Professor, ISR,CMUB. Schmerl,Senior <strong>Systems</strong>Scientist, ISR,CMUeMontage/SA MashupsA. Botterell, Research Scientist, CMU Silicon ValleyM. Griss, Director, CMU Silicon ValleyK. ChangB. Myers, Professor, HCII, CMUDynamicWorkflowGenerationA. Dey, Associate Professor, HCII, CMUJ-H Hong, Post Doc, HCII, CMUA. Rowe, Assistant Research Professor, ECES. DeVincentisAR.Drone HardwareN. StorerExtensions and DriversL. PintoT. Lattanze, Associate Teaching Professor, ISR, CMUMSIT-ESE Team (5)End-User ProgrammingInformation Superiority to <strong>the</strong> EdgeStreamingDataAnalysisGroup AutonomyJ. EdmondsonDistributed AIK. Mai, Assistant Professor, ECE, CMUL. Pileggi, Professor, ECE, CMUS. SimantaEmergencyResponseJ. BolengContext-AwareSensor SamplingThermal andAcousticSensorsSummary17 CMU researchers21 students5 SEI Principal InvestigatorsDoes <strong>Scale</strong> Really Matter?: ULS <strong>Systems</strong> <strong>Seven</strong> <strong>Years</strong> LaterLinda Northrop: May 24, <strong>2013</strong>67© <strong>2013</strong> Carnegie Mellon University
- Page 2 and 3:
Software Engineering Institute (SEI
- Page 4 and 5:
Ultra-Large-Scale (ULS)SystemsDoes
- Page 6 and 7:
Beginning of theULS System JourneyD
- Page 8 and 9:
Societal ProblemsClimate change and
- Page 10 and 11:
Trend Toward Increasing Scale-1•
- Page 12 and 13:
Increasing Scale In Military System
- Page 14 and 15:
Expert PanelGregory AbowdGeorgia In
- Page 16 and 17: Inspiration: Open Source and Cooper
- Page 18 and 19: ULS Systems Research Study Reportht
- Page 20 and 21: What Is an Ultra-Large-Scale (ULS)
- Page 22 and 23: Approaches to Software DevelopmentT
- Page 24 and 25: Analogies are UsefulDoes Scale Real
- Page 26 and 27: Think EcosystemDiverse users with c
- Page 28 and 29: ChallengesULS systems will present
- Page 30 and 31: What We LearnedThere is an unstoppa
- Page 32 and 33: Early Post-Study Observations• We
- Page 34 and 35: Since ThenDemonstrators in Cairo's
- Page 36 and 37: Software is Ubiquitous and Often Tr
- Page 38 and 39: More Fuel for ScaleDoes Scale Reall
- Page 40 and 41: The “Crowd”DARPA BAA 11-64: Soc
- Page 42 and 43: Some ULS Systems Buzz~21,266 downlo
- Page 44: Upon ReflectionSTE(Social-Technical
- Page 47 and 48: Selected Experiences withSystems at
- Page 49 and 50: Smart Grid - A ULS SystemDiagrams c
- Page 51 and 52: Broader ULS System ImpactThe expans
- Page 53 and 54: XSEDE’s innovative, open standard
- Page 55 and 56: Healthcare AnalyticsProblem: Define
- Page 57 and 58: Adding AnalyticsBusiness andMission
- Page 59 and 60: Best in Class Healthcare AnalyticsO
- Page 61 and 62: Sample Published WorkContextual Des
- Page 63 and 64: Selected SEI ResearchTargeted at UL
- Page 65: Architecture in ULS System ContextU
- Page 69 and 70: So, Where Are We?The report has bee
- Page 71 and 72: Opportunities and ThreatsOpportunit
- Page 73 and 74: Putting Technology to Work: a Few T
- Page 75 and 76: What I SeeMachine LearningMulticore
- Page 77 and 78: Food for Thought• Is our research
- Page 79 and 80: Thanks To The Entire ULS System Stu
- Page 81 and 82: A Special Thank You and TributeDoes
- Page 83 and 84: InteractionDoes Scale Really Matter
- Page 85 and 86: References for Slides 65-66Does Sca
- Page 87 and 88: References - 2Bryant, Barrett R., J
- Page 89 and 90: References - 4Clements, Paul, and M
- Page 91 and 92: References - 6Froihofer, Lorenz, Ge
- Page 93 and 94: References - 8Hill, James H., Jules
- Page 95 and 96: References - 10Lucrédio, Daniel, E
- Page 97 and 98: References - 12Salehie, Mazeiar, an
- Page 99 and 100: References - 14Valerdi, Ricardo, El
- Page 101 and 102: References - 16Zhu, Liming, and Yan