At the Heart of Big Data Management

Similar documents
The Future of Data Management

The Future of Data Management with Hadoop and the Enterprise Data Hub

Datenverwaltung im Wandel - Building an Enterprise Data Hub with

HDP Hadoop From concept to deployment.

SOLVING REAL AND BIG (DATA) PROBLEMS USING HADOOP. Eva Andreasson Cloudera

HDP Enabling the Modern Data Architecture

BIG DATA & DATA SCIENCE

Ganzheitliches Datenmanagement

Talend Big Data. Delivering instant value from all your data. Talend

Interactive data analytics drive insights

Capitalize on Big Data for Competitive Advantage with Bedrock TM, an integrated Management Platform for Hadoop Data Lakes

Comprehensive Analytics on the Hortonworks Data Platform

locuz.com Big Data Services

The Future of Big Data SAS Automotive Roundtable Los Angeles, CA 5 March 2015 Mike Olson Chief Strategy Officer,

Dansk IT Big Data i de største danske banker

Building Your Big Data Team

Big Data Architecture & Analytics A comprehensive approach to harness big data architecture and analytics for growth

#TalendSandbox for Big Data

INDUSTRY BRIEF DATA CONSOLIDATION AND MULTI-TENANCY IN FINANCIAL SERVICES

Cloudera Enterprise Data Hub in Telecom:

BIG DATA TECHNOLOGY. Hadoop Ecosystem

The Enterprise Data Hub and The Modern Information Architecture

Forecast of Big Data Trends. Assoc. Prof. Dr. Thanachart Numnonda Executive Director IMC Institute 3 September 2014

Cloudera Enterprise Reference Architecture for Google Cloud Platform Deployments

Bringing Big Data to People

End to End Solution to Accelerate Data Warehouse Optimization. Franco Flore Alliance Sales Director - APJ

Cloudera Enterprise Reference Architecture for Google Cloud Platform Deployments

More Data in Less Time

Collaborative Big Data Analytics. Copyright 2012 EMC Corporation. All rights reserved.

Are You Big Data Ready?

Big Data and Industrial Internet

GAIN BETTER INSIGHT FROM BIG DATA USING JBOSS DATA VIRTUALIZATION

Oracle Big Data Fundamentals Ed 1 NEW

Self-service BI for big data applications using Apache Drill

Hadoop Evolution In Organizations. Mark Vervuurt Cluster Data Science & Analytics

Integrating a Big Data Platform into Government:

Building Big with Big Data Now companies are in the middle of a renovation that forces them to be analytics-driven to continue being competitive.

Getting Started & Successful with Big Data

WHITE PAPER. Building Big Data Analytical Applications at Scale Using Existing ETL Skillsets INTELLIGENT BUSINESS STRATEGIES

Roadmap Talend : découvrez les futures fonctionnalités de Talend

Implement Hadoop jobs to extract business value from large and varied data sets

This Symposium brought to you by

How to Enhance Traditional BI Architecture to Leverage Big Data

Chukwa, Hadoop subproject, 37, 131 Cloud enabled big data, 4 Codd s 12 rules, 1 Column-oriented databases, 18, 52 Compression pattern, 83 84

Testing Big data is one of the biggest

Actian SQL in Hadoop Buyer s Guide

Hortonworks and ODP: Realizing the Future of Big Data, Now Manila, May 13, 2015

HADOOP SOLUTION USING EMC ISILON AND CLOUDERA ENTERPRISE Efficient, Flexible In-Place Hadoop Analytics

Impact of Big Data in Oil & Gas Industry. Pranaya Sangvai Reliance Industries Limited 04 Feb 15, DEJ, Mumbai, India.

Building Confidence in Big Data Innovations in Information Integration & Governance for Big Data

Agile Business Intelligence Data Lake Architecture

Hadoop Beyond Hype: Complex Adaptive Systems Conference Nov 16, Viswa Sharma Solutions Architect Tata Consultancy Services

Why Big Data in the Cloud?

MapR: Best Solution for Customer Success

Consulting and Systems Integration (1) Networks & Cloud Integration Engineer

Hadoop Data Hubs and BI. Supporting the migration from siloed reporting and BI to centralized services with Hadoop

Oracle Big Data Building A Big Data Management System

Extending the Enterprise Data Warehouse with Hadoop Robert Lancaster. Nov 7, 2012

ESS event: Big Data in Official Statistics. Antonino Virgillito, Istat

Native Connectivity to Big Data Sources in MSTR 10

The Business Analyst s Guide to Hadoop

BIG DATA AND THE ENTERPRISE DATA WAREHOUSE WORKSHOP

Gain Contextual Awareness for a Smarter Digital Enterprise with SAP HANA Vora

Hadoop and Data Warehouse Friends, Enemies or Profiteers? What about Real Time?

Self-service BI for big data applications using Apache Drill

Information Builders Mission & Value Proposition

Why Spark on Hadoop Matters

The Digital Enterprise Demands a Modern Integration Approach. Nada daveiga, Sr. Dir. of Technical Sales Tony LaVasseur, Territory Leader

Big Data for Investment Research Management

How Transactional Analytics is Changing the Future of Business A look at the options, use cases, and anti-patterns

BIG DATA ANALYTICS REFERENCE ARCHITECTURES AND CASE STUDIES

Cisco Data Preparation

Driving Growth in Insurance With a Big Data Architecture

Agenda. Big Data. Dell Cloud Solutions A Dell Story Summary. Concepts Market Trends and Challenges Dell Solutions

Using Tableau Software with Hortonworks Data Platform

White Paper: Evaluating Big Data Analytical Capabilities For Government Use

Virtualizing Apache Hadoop. June, 2012

Intel HPC Distribution for Apache Hadoop* Software including Intel Enterprise Edition for Lustre* Software. SC13, November, 2013

Big Data, Why All the Buzz? (Abridged) Anita Luthra, February 20, 2014

Big Data and Apache Hadoop Adoption:

Apache Hadoop in the Enterprise. Dr. Amr Awadallah,

How To Handle Big Data With A Data Scientist

Big Data Integration: A Buyer's Guide

Extend your analytic capabilities with SAP Predictive Analysis

Big Data Analytics. with EMC Greenplum and Hadoop. Big Data Analytics. Ofir Manor Pre Sales Technical Architect EMC Greenplum

ANALYTICS CENTER LEARNING PROGRAM

So What s the Big Deal?

Dell In-Memory Appliance for Cloudera Enterprise

Accelerating Enterprise Big Data Success. Tim Stevens, VP of Business and Corporate Development Cloudera

QUICK FACTS. Delivering a Unified Data Architecture for Sony Computer Entertainment America TEKSYSTEMS GLOBAL SERVICES CUSTOMER SUCCESS STORIES

Artur Borycki. Director International Solutions Marketing

CA Technologies Big Data Infrastructure Management Unified Management and Visibility of Big Data

Big Data must become a first class citizen in the enterprise

TDWI: BUSINESS INTELLIGENCE & DATA WAREHOUSING EDUCATION EUROPE

Cisco IT Hadoop Journey

Managing Big Data with Hadoop & Vertica. A look at integration between the Cloudera distribution for Hadoop and the Vertica Analytic Database

Native Connectivity to Big Data Sources in MicroStrategy 10. Presented by: Raja Ganapathy

MDM and Data Warehousing Complement Each Other

Mike Maxey. Senior Director Product Marketing Greenplum A Division of EMC. Copyright 2011 EMC Corporation. All rights reserved.

Transforming the Telecoms Business using Big Data and Analytics

Transcription:

www.niit-tech.com At the Heart of Big Management Lake: Powering Your Big Consolidation Journey How can you extract high business value from Big? How can you get a bigger and better picture of what is happening inside and outside? NIIT Technologies can help you take complete control of your business and Big ata cost-effectively through their Big ata storage and analytics solution, Lake. We bring together leading Big experts to help you consolidate data from similar streams. Lake performs detailed analysis of data to give actionable insights that help deliver continual value increased revenues and reduced cost.

Growing Need for Big Analytics Solution is an organization s lifeblood. Without it, an organization cannot function. However, with increasing volumes of data customer data, transactional data, product data, loyalty data, enterprise data, operations data the maintenance cost of the deployed infrastructure increases. It is also hard to get a comprehensive and exhaustive analysis with more than one warehouse. in its raw and original form helps organizations derive new insights and information, which might not be available in structured and clean data. Events with temporal information in log files from e-commerce servers are a typical example. Enterprise users face challenges with data quality such as duplicity, redundancy, etc. Businesses need reservoirs that can not only contain large amounts of data from different warehouses at the same place but also offer prescriptive analytics to help them take data-driven decisions and ensure on-time service delivery. They also need time-effective processes that increase reliability and make data extraction easier. NIIT Technologies Lake, a next-generation data storage and management solution, meets the ever-evolving needs of enterprises in today s dynamic marketplace. The Lake strategy presents a low-cost alternative to the exploding storage and processing costs of traditional platforms. It delivers an excellent methodology to deposit data, especially semi-structured and unstructured data, when an organization is yet to determine how to access and analyze it.

Nuts and Bolts of Lake The Lake foundation includes a Big repository, metadata management, and an application framework to capture and conceptualize end-user feedback. It makes Extract, Transform, Load (ETL) faster and more e cient by providing the user with the flexibility to read data as required during analysis. Lake enables speedy recovery of data with minimal efforts. Key Features Captures and stores data streams on a large scale Stores different types of data in a single repository efines structure of data at the time of its use Integrates modern analytical tools with classic statistical tools to give a comprehensive report of the insights derived from the data O oads data warehouses from TL tasks and migrates them to Lake as the new staging platform for data from different sources Performs advanced Big discovery analytics Allows user to make data transformations Customer Loyalty Social Media Emails Transactional Structured Operations Multi-channel Unstructured IOT Sensors Product Enterprise Customer Service Interaction E-commerce BI/Reporting ClickSense, Tableau BATCH Spark, Hive, Pig, MapReduce Process, Analyze, Serve Stream Impala SQL Solr Search Spark Resource Management Yarn File System HDFS Batch Sqoop Unified Service Relational Kudu Store Integrate NoSQL HBase Statistical Analysis R/SAS Other Kite Security Sentry, RecordStore Other Object Store Apache Flume, Apache Kafka Virtual Machines on NIIT Technologies' Center Cloudera Manager Adhoc Queries by VA Analysts Host Machine Actionable Business Insights Demand Forecast Customer Acquisition Vendor Management Dealership Relationship Management Understanding Driving Behavior Pattern Telematics Predictive Inventory Forecasting Predictive Logistics Analytics Predictive Asset Management Analytics Figure: Solution Architecture The Lake solution comprises the following components: Cloud Platform Hadoop Platform: Cloudera CDH (Cloudera Distribution including Apache Hadoop) components BI, Reporting Tools Tableau ClickSense Statistical Programming Software R SAS

Delivering More Value More Cost-effectiveness The solution captures and stores data in a single data warehouse, making it cost-effective. More Optimization: As structured and semi-structured data is stored and managed in a single repository, data processing activities are optimized. Workloads such as data transformation and integration are performed relatively faster with this solution. More Opportunities: With accelerated analytical applications, organizations can access enterprise data in both batch and real-time modes along with the interactive mode. More Insights: The solution allows data from traditional and emerging data sources to be retained, combined, and mined in new and unforeseen ways. More Ease: An open, flexible, enterprise-grade cloud computing platform makes it easier to handle the ever-increasing sources and volumes of data and analysis functions. More Nimbleness: e offer an enterprise-ready, Open Source distribution that includes Hadoop and related projects. Hadoop components have the ability to integrate with third-party Business Intelligence and analysis tools to quickly accelerate time-to-value, maximize e ciency, and simplify data management.

The NIIT Technologies Advantage Domain Knowledge: Our vast experience along with a team of dedicated subject matter experts and business analysts helps us in astutely analyzing business challenges and client requirements. Extensive domain knowledge allows us to engage and scale up our services quickly and e ciently instilling confidence in our clients. Large Resource Base: Over one-third of our organization s resources comprise technology, domain, testing, and project management consultants/analysts. We have the ability to quickly access talent with the required skillsets and ramp up client s teams with niche skills. Centers of Competence (CoC): We have CoCs for technologies such as Java,.NET, SAP/ERP, Testing, Legacy, Cloud, Mobility, Analytics, Usability, and other areas. CoCs, as part of our charter, keep us abreast of new technologies and industry best practices. The consultants from our CoCs help our clients in overcoming technical challenges in specific situations. Point Solutions: Based on our extensive experience and industry best practices, we have developed innovative, domain-specific, and quick-to-deploy solutions on latest technologies in key business areas.

For more information, contact marketing@niit-tech.com 2016 NIIT Technologies. All rights reserved. NIIT Technologies is a leading global IT solutions organization, differentiated on the strength of domain expertise; it services clients in travel and transportation, banking and financial services, insurance, manufacturing, and media verticals. Leading with its service vision New Ideas, More Value, NIIT Technologies is committed to delivering new ideas combined with operational excellence to provide exceptional value to its clients. The Company is focused on helping businesses design sustainable, optimizable and winning digital operating models, enabling them to become agile, scalable, and flexible. Visit us at www.niit-tech.com C_41_120916 Stay connected: