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            課程目錄:Big Data Business Intelligence for Criminal Intelligence Analysis培訓
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                     Big Data Business Intelligence for Criminal Intelligence Analysis培訓

             

             

             

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            Day 01
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            Overview of Big Data Business Intelligence for Criminal Intelligence Analysis

            Case Studies from Law Enforcement - Predictive Policing
            Big Data adoption rate in Law Enforcement Agencies and how they are aligning their future operation around Big Data Predictive Analytics
            Emerging technology solutions such as gunshot sensors, surveillance video and social media
            Using Big Data technology to mitigate information overload
            Interfacing Big Data with Legacy data
            Basic understanding of enabling technologies in predictive analytics
            Data Integration & Dashboard visualization
            Fraud management
            Business Rules and Fraud detection
            Threat detection and profiling
            Cost benefit analysis for Big Data implementation
            Introduction to Big Data

            Main characteristics of Big Data -- Volume, Variety, Velocity and Veracity.
            MPP (Massively Parallel Processing) architecture
            Data Warehouses – static schema, slowly evolving dataset
            MPP Databases: Greenplum, Exadata, Teradata, Netezza, Vertica etc.
            Hadoop Based Solutions – no conditions on structure of dataset.
            Typical pattern : HDFS, MapReduce (crunch), retrieve from HDFS
            Apache Spark for stream processing
            Batch- suited for analytical/non-interactive
            Volume : CEP streaming data
            Typical choices – CEP products (e.g. Infostreams, Apama, MarkLogic etc)
            Less production ready – Storm/S4
            NoSQL Databases – (columnar and key-value): Best suited as analytical adjunct to data warehouse/database
            NoSQL solutions

            KV Store - Keyspace, Flare, SchemaFree, RAMCloud, Oracle NoSQL Database (OnDB)
            KV Store - Dynamo, Voldemort, Dynomite, SubRecord, Mo8onDb, DovetailDB
            KV Store (Hierarchical) - GT.m, Cache
            KV Store (Ordered) - TokyoTyrant, Lightcloud, NMDB, Luxio, MemcacheDB, Actord
            KV Cache - Memcached, Repcached, Coherence, Infinispan, EXtremeScale, JBossCache, Velocity, Terracoqua
            Tuple Store - Gigaspaces, Coord, Apache River
            Object Database - ZopeDB, DB40, Shoal
            Document Store - CouchDB, Cloudant, Couchbase, MongoDB, Jackrabbit, XML-Databases, ThruDB, CloudKit, Prsevere, Riak-Basho, Scalaris
            Wide Columnar Store - BigTable, HBase, Apache Cassandra, Hypertable, KAI, OpenNeptune, Qbase, KDI
            Varieties of Data: Introduction to Data Cleaning issues in Big Data

            RDBMS – static structure/schema, does not promote agile, exploratory environment.
            NoSQL – semi structured, enough structure to store data without exact schema before storing data
            Data cleaning issues
            Hadoop

            When to select Hadoop?
            STRUCTURED - Enterprise data warehouses/databases can store massive data (at a cost) but impose structure (not good for active exploration)
            SEMI STRUCTURED data – difficult to carry out using traditional solutions (DW/DB)
            Warehousing data = HUGE effort and static even after implementation
            For variety & volume of data, crunched on commodity hardware – HADOOP
            Commodity H/W needed to create a Hadoop Cluster
            Introduction to Map Reduce /HDFS

            MapReduce – distribute computing over multiple servers
            HDFS – make data available locally for the computing process (with redundancy)
            Data – can be unstructured/schema-less (unlike RDBMS)
            Developer responsibility to make sense of data
            Programming MapReduce = working with Java (pros/cons), manually loading data into HDFS
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            Day 02
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            Big Data Ecosystem -- Building Big Data ETL (Extract, Transform, Load) -- Which Big Data Tools to use and when?

            Hadoop vs. Other NoSQL solutions
            For interactive, random access to data
            Hbase (column oriented database) on top of Hadoop
            Random access to data but restrictions imposed (max 1 PB)
            Not good for ad-hoc analytics, good for logging, counting, time-series
            Sqoop - Import from databases to Hive or HDFS (JDBC/ODBC access)
            Flume – Stream data (e.g. log data) into HDFS
            Big Data Management System

            Moving parts, compute nodes start/fail :ZooKeeper - For configuration/coordination/naming services
            Complex pipeline/workflow: Oozie – manage workflow, dependencies, daisy chain
            Deploy, configure, cluster management, upgrade etc (sys admin) :Ambari
            In Cloud : Whirr
            Predictive Analytics -- Fundamental Techniques and Machine Learning based Business Intelligence

            Introduction to Machine Learning
            Learning classification techniques
            Bayesian Prediction -- preparing a training file
            Support Vector Machine
            KNN p-Tree Algebra & vertical mining
            Neural Networks
            Big Data large variable problem -- Random forest (RF)
            Big Data Automation problem – Multi-model ensemble RF
            Automation through Soft10-M
            Text analytic tool-Treeminer
            Agile learning
            Agent based learning
            Distributed learning
            Introduction to Open source Tools for predictive analytics : R, Python, Rapidminer, Mahut
            Predictive Analytics Ecosystem and its application in Criminal Intelligence Analysis

            Technology and the investigative process
            Insight analytic
            Visualization analytics
            Structured predictive analytics
            Unstructured predictive analytics
            Threat/fraudstar/vendor profiling
            Recommendation Engine
            Pattern detection
            Rule/Scenario discovery – failure, fraud, optimization
            Root cause discovery
            Sentiment analysis
            CRM analytics
            Network analytics
            Text analytics for obtaining insights from transcripts, witness statements, internet chatter, etc.
            Technology assisted review
            Fraud analytics
            Real Time Analytic
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            Day 03
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            Real Time and Scalable Analytics Over Hadoop

            Why common analytic algorithms fail in Hadoop/HDFS
            Apache Hama- for Bulk Synchronous distributed computing
            Apache SPARK- for cluster computing and real time analytic
            CMU Graphics Lab2- Graph based asynchronous approach to distributed computing
            KNN p -- Algebra based approach from Treeminer for reduced hardware cost of operation
            Tools for eDiscovery and Forensics

            eDiscovery over Big Data vs. Legacy data – a comparison of cost and performance
            Predictive coding and Technology Assisted Review (TAR)
            Live demo of vMiner for understanding how TAR enables faster discovery
            Faster indexing through HDFS – Velocity of data
            NLP (Natural Language processing) – open source products and techniques
            eDiscovery in foreign languages -- technology for foreign language processing
            Big Data BI for Cyber Security – Getting a 360-degree view, speedy data collection and threat identification

            Understanding the basics of security analytics -- attack surface, security misconfiguration, host defenses
            Network infrastructure / Large datapipe / Response ETL for real time analytic
            Prescriptive vs predictive – Fixed rule based vs auto-discovery of threat rules from Meta data
            Gathering disparate data for Criminal Intelligence Analysis

            Using IoT (Internet of Things) as sensors for capturing data
            Using Satellite Imagery for Domestic Surveillance
            Using surveillance and image data for criminal identification
            Other data gathering technologies -- drones, body cameras, GPS tagging systems and thermal imaging technology
            Combining automated data retrieval with data obtained from informants, interrogation, and research
            Forecasting criminal activity
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            Day 04
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            Fraud prevention BI from Big Data in Fraud Analytics

            Basic classification of Fraud Analytics -- rules-based vs predictive analytics
            Supervised vs unsupervised Machine learning for Fraud pattern detection
            Business to business fraud, medical claims fraud, insurance fraud, tax evasion and money laundering
            Social Media Analytics -- Intelligence gathering and analysis

            How Social Media is used by criminals to organize, recruit and plan
            Big Data ETL API for extracting social media data
            Text, image, meta data and video
            Sentiment analysis from social media feed
            Contextual and non-contextual filtering of social media feed
            Social Media Dashboard to integrate diverse social media
            Automated profiling of social media profile
            Live demo of each analytic will be given through Treeminer Tool
            Big Data Analytics in image processing and video feeds

            Image Storage techniques in Big Data -- Storage solution for data exceeding petabytes
            LTFS (Linear Tape File System) and LTO (Linear Tape Open)
            GPFS-LTFS (General Parallel File System - Linear Tape File System) -- layered storage solution for Big image data
            Fundamentals of image analytics
            Object recognition
            Image segmentation
            Motion tracking
            3-D image reconstruction
            Biometrics, DNA and Next Generation Identification Programs

            Beyond fingerprinting and facial recognition
            Speech recognition, keystroke (analyzing a users typing pattern) and CODIS (combined DNA Index System)
            Beyond DNA matching: using forensic DNA phenotyping to construct a face from DNA samples
            Big Data Dashboard for quick accessibility of diverse data and display :

            Integration of existing application platform with Big Data Dashboard
            Big Data management
            Case Study of Big Data Dashboard: Tableau and Pentaho
            Use Big Data app to push location based services in Govt.
            Tracking system and management
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            Day 05
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            How to justify Big Data BI implementation within an organization:

            Defining the ROI (Return on Investment) for implementing Big Data
            Case studies for saving Analyst Time in collection and preparation of Data – increasing productivity
            Revenue gain from lower database licensing cost
            Revenue gain from location based services
            Cost savings from fraud prevention
            An integrated spreadsheet approach for calculating approximate expenses vs. Revenue gain/savings from Big Data implementation.
            Step by Step procedure for replacing a legacy data system with a Big Data System

            Big Data Migration Roadmap
            What critical information is needed before architecting a Big Data system?
            What are the different ways for calculating Volume, Velocity, Variety and Veracity of data
            How to estimate data growth
            Case studies
            Review of Big Data Vendors and review of their products.

            Accenture
            APTEAN (Formerly CDC Software)
            Cisco Systems
            Cloudera
            Dell
            EMC
            GoodData Corporation
            Guavus
            Hitachi Data Systems
            Hortonworks
            HP
            IBM
            Informatica
            Intel
            Jaspersoft
            Microsoft
            MongoDB (Formerly 10Gen)
            MU Sigma
            Netapp
            Opera Solutions
            Oracle
            Pentaho
            Platfora
            Qliktech
            Quantum
            Rackspace
            Revolution Analytics
            Salesforce
            SAP
            SAS Institute
            Sisense
            Software AG/Terracotta
            Soft10 Automation
            Splunk
            Sqrrl
            Supermicro
            Tableau Software
            Teradata
            Think Big Analytics
            Tidemark Systems
            Treeminer
            VMware (Part of EMC)
            Q/A session

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