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Data Tactics and Nervve Integrated Big Data v3

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    Data Tactics and Nervve Integrated Big Data v3 Data Tactics and Nervve Integrated Big Data v3 Presentation Transcript

    • Data Tactics FMV and Imagery Entity Extraction and Analytics Joint Presentation Integrating Data Tactics GM Stack and Technology OCT 17, 2012http://www.data-tactics.com Data Tactics Corporation Proprietary Material
    • Government Cloud Capabilities• Government Investment in Cloud Technologies and Data Analytics • Secure, Operational Systems providing deep analytics into Petabyte level data sets for National Agencies • Based on Government Off the Shelf (GOTS) and Open Source Software running on commodity hardware • Coalescing of technologies into a Government Standard Cloud Architecture based on standards, security, and capabilities • Fruits of large investments available to all Federal Agencies • USD(I) – DI2E • ODNI – I2 Pilot • NGA – FMV Archive & Exploitation* • NSA – GhostMachine - SIGINT Cloud Node • DIA – Orion • CIA – Commercial Cloud • Army – DCGS-A • DARPA – Advanced Indexing and Analytic Research
    • Single Solution for Multiple Missions• Big Data Storage is ALREADY A COMMODITY • No Need for expensive non-interoperable Stovepipe Systems • Single Data Store supporting multiple missions • multiple data projections • complex and integrated analytics•Concentrate mission effort where it is NEEDED • DO Build customized user interfaces, workflows, and business logic • DO NOT build another data stovepipe and non-reusable application stack
    • NGA FMV and Imagery Data Analytics Cloud FMV and Analytic Complex AnalyticsImagery Sources Environment - Rapid Iteration Time -Linearly - Advanced Query and Analysis Scalable - Explore Non-obvious - Commodity Relationships based on: Hardware - Temporal - GOTS and - Geospatial Open Source - Entity - Interoperable - other attributes - Cost Efficient - Canonical Analysis - Multiple Data Sets - Multiple Dimensions - Anomaly Detection - Prediction - Link Analysis - Statistical Analysis Data Tactics Corporation Proprietary Material
    • Nervve Visual Indexing Capabilities• Nervve Visual Index allows rapid indexing of PBs of Video and Imagery in Seconds!!! – Rapid Iteration time (seconds to minutes) enabling easier iterative filtering or several “what if” scenarios – Query using single image or image model – Directly Analogous to text querying of document store• Infinitely Scalable Architecture with Tunable Indexing – Can Index streaming or archived video from 10s to 100s times speed – Linearly scalable no memory shared architecture – Runs on Commodity Nvidia GPU systems• 2D Image Based Query Model Generation – Ability to create Object Model visually representing an Entity (e.g. “White Truck”) – Ability to Query the Visual Index using Image Models – Sub-second to seconds result set return time over Petabytes of original Video and Imagery – Can create for EO, IR, and LIDAR – algorithm is raster based• Negative Filters – Do not send images or video containing “Just Unmoving Desert” Data Tactics Corporation Proprietary Material
    • Data Tactics Enterprise Analytics• Complex Event Processing Based on Video Content – Identify and Alert Video and Imagery containing “Person of Interest” – Tag Video (in-stream or metadata) – Contact Alerting Engine• Single Dataspace Ontology “maps” all Imagery and FMV sources to common model – Enables apples to apples comparisons across various data sets – Over time creates a “Video Content Log” – What you are interested is the prioritization of the logging• Ability to use Semantic Queries on Entities (e.g. People, Cargo, Vessels) over time periods and within geographic regions – Complex Descriptions of Entities combining IMINT, VIDINT, SIGINT, HUMINT, etc… – Can Federate Imagery and FMV Queries across the IC – Semantic Queries Based NOT on the METADATA but on the CONTENT in the Video Data Tactics Corporation Proprietary Material
    • NGA FMV Enhanced GM Architecture NiFi Ingest IC Standard TUIC Ghost Machine CloudbaseVideo and Image Transformation Semantic OWF Ontology - Alerts -Queries -Analytics Structured Advanced Unstructured AnalyticsSemi-Structured Model Generation Data Tactics Corporation Proprietary Material
    • NGA FMV Enhanced GM Benefits• Single Dataspace allows for analysis of complete data sets of NGA• Complex algorithms can be more easily applied to dataspace using distributed technologies to support NGA Missions• Greatly improved access to the large volume and variety of geospatial knowledge at all security domains• Open and IC ITE Standards Based Architecture enabling, cross domain and cross agency sharing and fusion• Cutting Edge Analytic Capabilities enabling rapid iterations and hypothesis led analysis and Activity Based Intelligence• Customer Service aligned data stores, services, and common user interfaces enabling timely and accurate access to all data on all domains• Affordability at Scale – Commodity Hardware Scales Linearly – Software costs can be minimized by leveraging GOTS and Open Source Data Tactics Corporation Proprietary Material
    • FMV ingestion into IC GM
    • Build and Share Image Object Models In ad-hoc, collaborative fashion, users may create, use, modify and refineLibrary of User Created Object Models object models FMV FMV FMV FMV FMV FMV FMV FMVDistributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Index Index Index Index Index Index Index Index FMV FMV FMV FMV FMV FMV FMV FMVDistributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Index Index Index Index Index Index Index Index FMV FMV FMV FMV FMV FMV FMV FMVDistributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Index Index Index Index Index Index Index Index FMV Distributed Index FMV FMV FMV FMV FMV FMV FMV FMVDistributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Index Index Index Index Index Index Index Index FMV Distributed Index FMV Distributed Index FMV FMV FMV FMV FMV FMV FMV FMV Distributed FMV FMV FMV FMV Distributed FMVDistributed Distributed Distributed Distributed Distributed Distributed Index Distributed Distributed Index Index Index Index Index Index Index Index Index Distribu Distributed ted FMV Distribute Index Distribut Index FMVDistributed FMV Distributed FMV Distributed FMV Distributed FMV Distributed FMV Distributed FMV Distributed FMV FMV Distributed ed Index d Index FMV Distributed Index Index Index Index Index Index Index Index Distributed Index FMV Index Distributed Index
    • Object Models are comprised of a + single or multiple images of what you are looking for Alert! - Object [White Car]Object Models are the - Video Clip Transmitted input/patterns for Queries and Alerts Time Start: 14:38:03 Time Stop: 14:39:27 Lat/Long: 32.3333/44.4333
    • Complex Multi-Dimension Queries Secure, Multi-Domain, Distributed Image “Search for within FMV Content Index in GM Models 5 km of FMVDistributed Index FMV Distributed Index FMV Distributed Index FMV Distributed Index FMV Distributed Index FMV Distributed Index FMV Distributed Index FMV Distributed Index 31.5058° N, 65.8478° E FMV Distributed Index FMV Distributed Index FMV FMV FMV FMV FMV FMV FMV FMV FMV FMVDistributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Index Index Index Index Index Index Index Index Index Index FMV FMV FMV FMV FMV FMV FMV FMV FMV FMVDistributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Index Index Index Index Index Index Index Index Index Index FMV FMV FMV FMV FMV FMV FMV FMV FMV FMVDistributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Index Index Index Index Index Index Index Index Index Index FMV FMV FMV FMV FMV FMV FMV FMV FMV FMVDistributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Index Index Index Index Index Index Index Index Index Index FMV FMV FMV FMV FMV FMV FMV FMV FMV FMVDistributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Distributed Index Index Index Index Index Index Index Index Index Index