Copyright - Diyotta, Inc. - All Rights Reserved. Page 2

Similar documents
Teradata IntelliSphere

Enabling Self-Service Analytics Across The UDA With Teradata AppCenter

Investor Presentation. Second Quarter 2016

Architecting an Open Data Lake for the Enterprise

The Importance of good data management and Power BI

Delivering Breakthrough Business Value

Guide to Modernize Your Enterprise Data Warehouse How to Migrate to a Hadoop-based Big Data Lake

5th Annual. Cloudera, Inc. All rights reserved.

Investor Presentation. Fourth Quarter 2015

USING DATA ANALYTICS TO IMPROVE GOVERNMENT

MapR: Converged Data Pla3orm and Quick Start Solu;ons. Robin Fong Regional Director South East Asia

Accelerating Your Big Data Analytics. Jeff Healey, Director Product Marketing, HPE Vertica

CONNECTING THE DOTS FOR BETTER INSIGHT.

Microsoft Azure Essentials

The Industry Leader in Data Warehousing, Big Data Analytics, and Marketing Solutions

Business is being transformed by three trends

Analytics in Action transforming the way we use and consume information

Analytics for All Your Data: Cloud Essentials. Pervasive Insight in the World of Cloud

Cognitive Data Warehouse and Analytics

Confidential

Real-time IoT Big Data-in-Motion Analytics Case Study: Managing Millions of Devices at Country-Scale

PORTFOLIO AND TECHNOLOGY DIRECTION ARMISTEAD SAPP & RANDY GUARD

BIG DATA TRANSFORMS BUSINESS. Copyright 2013 EMC Corporation. All rights reserved.

Business Outcome Led, Technology Enabled. Investor Presentation Q4 2017

How Data Science is Changing the Way Companies Do Business Colin White


Cognizant BigFrame Fast, Secure Legacy Migration

Adobe and Hadoop Integration

C3 Products + Services Overview

Datametica. The Modern Data Platform Enterprise Data Hub Implementations. Why is workload moving to Cloud

INTRODUCTION TO R FOR DATA SCIENCE WITH R FOR DATA SCIENCE DATA SCIENCE ESSENTIALS INTRODUCTION TO PYTHON FOR DATA SCIENCE. Azure Machine Learning

Modernizing Your Data Warehouse with Azure

Spotlight Sessions. Nik Rouda. Director of Product Marketing Cloudera, Inc. All rights reserved. 1

Responsive enterprise the future of the enterprise PERSPECTIVE

Adobe and Hadoop Integration

Common Customer Use Cases in FSI

IoT ANALYTICS IN THE ENTERPRISE WITH FUNL

Your Top 5 Reasons Why You Should Choose SAP Data Hub INTERNAL

Governing Big Data and Hadoop

Aurélie Pericchi SSP APS Laurent Marzouk Data Insight & Cloud Architect

Building a Single Source of Truth across the Enterprise An Integrated Solution

How In-Memory Computing can Maximize the Performance of Modern Payments

KnowledgeENTERPRISE FAST TRACK YOUR ACCESS TO BIG DATA WITH ANGOSS ADVANCED ANALYTICS ON SPARK. Advanced Analytics on Spark BROCHURE

Turn Data into Business Value

E-guide Hadoop Big Data Platforms Buyer s Guide part 1

What will you do as an IBM Entry Level Consultant?

MapR Pentaho Business Solutions

Azure ML Data Camp. Ivan Kosyakov MTC Architect, Ph.D. Microsoft Technology Centers Microsoft Technology Centers. Experience the Microsoft Cloud

ATEA YOUR STRATEGIC PARTNER FOR MICROSOFT EDUCATON

NICE Customer Engagement Analytics - Architecture Whitepaper

TDWI Analytics Fundamentals. Course Outline. Module One: Concepts of Analytics

EXECUTIVE BRIEF. Successful Data Warehouse Approaches to Meet Today s Analytics Demands. In this Paper

Microsoft reinvents sales processing and financial reporting with Azure

How to Build Your Data Ecosystem with Tableau on AWS

Big Data Platform Implementation

Sentient Enterprise for Dummies Where do we start?

Hybrid Data Management

Sunnie Chung. Cleveland State University

#mstrworld. A Deep Dive Into Self-Service Data Discovery In MicroStrategy. Vijay Anand Gianthomas Tewksbury Volpe. #mstrworld

DLT AnalyticsStack. Powering big data, analytics and data science strategies for government agencies

MATLAB for Data Analytics The MathWorks, Inc. 1

EMBED ANALYTICS EVERYWHERE Tomáš Jurczyk

Big Data s Big Impact on Businesses. Webconference : Jan 29, 2013

BIG DATA & ADVANCED ANALYTICS ROADSHOW

Workflow from Straight Thru Processing to Case Management

Six Critical Capabilities for a Big Data Analytics Platform

Managing explosion of data. Cloudera, Inc. All rights reserved.

Azure Data Factory Hybrid data integration, at global scale. Erika Harris Senior Program Manager AzureCAT

Context. The NEW data services from UST Global UST GLOBAL - A UNIQUE PARTNER. UST Global Data Services March 2018!1

HOW GPUS SPEED THE ANALYSIS OF REAL-TIME RISK, FRAUD DETECTION & TRADER SURVEILLANCE. James Mesney Solution Engineer, UK

Augmented Real-time Clinical DataMart. Phani S Srinivasan Ponnapalli, Syneos Health Subrahmanyam Rayaprolu, Syneos Health

Microsoft FastTrack For Azure Service Level Description

Enterprise Architecture for Digital Business

McCain & Teradata Quick overview of a journey through Big Data

Hadoop in the Cloud. Ryan Lippert, Cloudera Product Cloudera, Inc. All rights reserved.

BUILT FOR THE SPEED OF BUSINESS

Evolution to Revolution: Big Data 2.0

Architecture Overview for Data Analytics Deployments

Lippo Group BIG DATA. How to Develop a Deep Understanding of Your Customers by Connecting All of Your Data Sources. Pg. 1

Cask Data Application Platform (CDAP) Extensions

ETL challenges on IOT projects. Pedro Martins Head of Implementation

PERSPECTIVE. Monetize Data

Delivering Value with Big Data and Analytics. Fern Halper VP and Senior Research Director for Advanced Analytics TDWI November 30, 2016

From Data Deluge to Intelligent Data

DataAdapt Active Insight

Big Data Management Best Practices for Data Lakes Philip Russom, Ph.D.

IBM Business Automation Workflow

Jason Virtue Business Intelligence Technical Professional

Azure Data Analytics & Machine Learning Seminar. Daire Cunningham: BI Practice Area Manager

EBOOK: Cloudwick Powering the Digital Enterprise

Data Analytics. Nagesh Madhwal Client Solutions Director, Consulting, Southeast Asia, Dell EMC

Amsterdam. (technical) Updates & demonstration. Robert Voermans Governance architect

GUIDE The Enterprise Buyer s Guide to Public Cloud Computing

Microsoft Developer Day

Azure IoT Suite. Secure device connectivity and management. Data ingestion and command + control. Rich dashboards and visualizations

In-Memory Analytics: Get Faster, Better Insights from Big Data

Datametica DAMA. The Modern Data Platform Enterprise Data Hub Implementations. What is happening with Hadoop Why is workload moving to Cloud

WELCOME TO. Cloud Data Services: The Art of the Possible

Nouvelle Génération de l infrastructure Data Warehouse et d Analyses

Architecting for Real- Time Big Data Analytics. Robert Winters

Transcription:

Page 2

Page 3

Page 4

Page 5 Humanizing Analytics Analytic Solutions that Provide Powerful Insights about Today s Healthcare Consumer to Manage Risk and Enable Engagement and Activation Industry Alignment Mature Products and Services Designed to Support the Healthcare Industry s Shift in Reimbursement from Volume to Value Affordable and Fast An Affordable Pricing Structure that Accommodates Companies of Any Size with an Implementation Approach that Reduces Time-to-Value

Page 6 Health Lumen has the Ingredients Required to Create New and Impactful Insights These Assets Support Predictive Analytics, Segmentation Analysis and Other Data Studies Assets: Data, Technology & Human Capital Detailed Medical and Pharmacy Claims Data for over 700,000 Commercial Lives with Over Five Years of History 200+ Socio-Economic and Psychographic Consumer Data Elements for All Adults in the United States Seasoned Healthcare Business & Data Subject Matter Experts Advanced Data Science Technologies

Page 7 Features Hundreds of Standard and Customizable Reports and Dashboards Thousands of Pre-built Healthcare Attributes and Measures Advanced Data Visualization Capabilities Benefits Target Specific Business Opportunities New Insights From the Lumen Data Science Lab Incorporated as Developed

Page 8

Page 9

Page 10

Page 11

Page 12 Some jobs run up to 50 times faster Earlier data availability to customers More capacity to onboard on new customers

Page 13

Page 14 Analytics and data unleash the potential of great companies

Page 15 Business Solutions Analytic Solutions Analytics Business Consulting The Original Big Data Company Technology Solutions Public Cloud, Private Cloud, Managed Cloud, Hybrid Cloud, On-Premises Teradata Database, Teradata Aster Analytics, Hadoop > High- Impact Business Outcomes Business Value Framework Data Science Architecture Expertise Strategy and Roadmaps Design and Implementation Ecosystem Architecture Managed Services ~1,400 + Customers in 77 Countries Fortune: Top 10 U.S. Software Company ~10,000 Employees including ~5,000 Consultants Market Cap: U.S. $4 Billion+ World s Most Ethical Companies Ethisphere Institute Teradata QueryGrid, Presto, Listener, Unity, AppCenter

Page 16 Sources Acquisition Data Engines Analytics Access Users REAL TIME Audio and Video DATA LAKE NO SQL MULTI GENRE Marketing Executives Sensors DATA LAKE APP FRAMEWORK Operational Systems VIRTUAL QUERY OPERATIONAL Text INGEST EMERGING Customers Partners Web and Social IN MEMORY DATA WAREHOUSE DATA WAREHOUSE Business Intelligence Knowledge Workers Machine Logs COMPUTE CLUSTER CONVENTIONAL Languages Business Analysts CRM Integrated Development Environment Data Scientists SCM Platform Services DATA DEVELOPMENT OPERATIONS ERP Cloud Deployment PUBLIC PRIVATE HYBRID Engineers

Data Mover BAR/DSA Ecosystem Manager QueryGrid Viewpoint Listener Operational Analytics Platform Service App Framework UI/UX Platform Page 17 FLEXIBILITY IntelliCloud (IntelliFlex / IntelliBase / AWS) Public Cloud (AWS / Azure Marketplace) Private Cloud (VMware) On-Premises (IntelliFlex / IntelliBase) Analytical Ecosystem Unified Data Architecture

Page 18 30% improvement in popularity model 75% of viewings via personalized recommendations 99% on-time arrival rate for trains 20% increase in customer retention $34M identified in fraudulent activity 3x the industry standard in customer retention $3.5M net profit increase from IVR flow redesign 2X leads via behavior based triggers $10M cost reduction optimizing patient stay $1M saved via identifying high risk churners 5-Day reduction in close cycle time 10% reduction in RFQ cycle time 200% increase in customer spend 525% increase in email open rates 10-20% uplift in conversion rates 360º real-time view of customers $80M in revenue identified 28% uplift in incremental sales 40M customer accounts supported $3M saved by closing gaps in member care 7M/day interactive loyalty program transactions $6M revenue increase via next best offers 50% time savings for users working with raw data 30% shift in traffic from catalogue to e- commerce

Page 19

Page 20 Data is no longer coming in a linear direction Organizations are becoming data centric to stay relevant Data is considered as a strategic asset to drive business decisions Modern platforms like Hadoop have changed the way we look at data

Page 21 Challenge Why? MDI Principle MPP Exploitation MPPs like Teradata can process data much more efficiently and optimally. ETL architecture limits the exploitation of MPPs. Taking Processing to where the data lives to exploit the power of processing platforms the and remove any I/O bottlenecks. Brittle Architecture Monolithic architecture limits the options in order to meet data diversity demands Cloud, Social Media, Geographical diversity. Linearly scalable architecture using Agentbased mechanism to move data from anywhere to anywhere in secured fashion. Meeting with New Technology Patterns Multiple processing platforms are common in today s data landscape which typically includes a combination of MPP, Hadoop, Spark etc. Fully leverage all platforms based on what they do well instead of having single processing framework i.e. ETL Server. Future Portability Technology advancements demands continuous optimization and porting processing logic over to newer and faster processing engines. Metadata driven approach in order to port the Execution logic to any processing platform available now or in future.

Page 22

Page 23

Page 24 Diyotta s unique approach for orchestrating movement and integration of Big Data is linearly scalable and distributed, without dependency on a central server, while utilizing existing Big Data environments such as Hadoop, Massively Parallel Processing (MPP) and NoSQL platforms for data ingestion and processing. Efficient Data Movement Powerful Processing Flexibility and Reusability Unified Solution Orchestrate data movement directly from source to target Encrypt/compress data for movement Movement of data on premise, in the cloud or both environments Utilize target platforms (Hadoop, MPP and NoSQL) for P data processing Automatically generates native instructions for target platforms Work with multiple platforms in a data flow Run time instructions can be changed to a different target platform with minimal changes Portability to different and newer platforms Create reusable functions and business rules Easy to use graphical interface to interact with all platforms and environments Integrate metadata with other data governance applications Single sign on for all modules

Page 25

Page 26 Healthcare Analytics Sleep Disorders International Banking Credit Risk Analytics Global Data Lake Customer 360 Digital Transformation IVR Analytics Network Forecast Analysis Offer Management Telecom Fraud Analysis Cloud Data Lake Streaming Data Intake Sentimental Analysis Marketing Analytics

Page 27 Q/A Session

Page 28 THANK YOU