Make Business Intelligence Work on Big Data Speed. Scale. Simplicity.

Similar documents
AtScale Intelligence Platform

The Future of Data Management

Native Connectivity to Big Data Sources in MSTR 10

TE's Analytics on Hadoop and SAP HANA Using SAP Vora

More Data in Less Time

The Enterprise Data Hub and The Modern Information Architecture

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

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

Data Integration Checklist

Using Tableau Software with Hortonworks Data Platform

MapR: Best Solution for Customer Success

Real-Time Data Analytics and Visualization

MS 20467: Designing Business Intelligence Solutions with Microsoft SQL Server 2012

IBM BigInsights Has Potential If It Lives Up To Its Promise. InfoSphere BigInsights A Closer Look

Apache Hadoop in the Enterprise. Dr. Amr Awadallah,

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

Cisco IT Hadoop Journey

Databricks. A Primer

Best Practices for Hadoop Data Analysis with Tableau

The Inside Scoop on Hadoop

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

<Insert Picture Here> Extending Hyperion BI with the Oracle BI Server

QLIKVIEW DEPLOYMENT FOR BIG DATA ANALYTICS AT KING.COM

Databricks. A Primer

LEARNING SOLUTIONS website milner.com/learning phone

Cisco Data Preparation

MOC 20467B: Designing Business Intelligence Solutions with Microsoft SQL Server 2012

SQL Server 2012 Business Intelligence Boot Camp

Self-Service Business Intelligence: The hunt for real insights in hidden knowledge Whitepaper

Creating a universe on Hive with Hortonworks HDP 2.0

2074 : Designing and Implementing OLAP Solutions Using Microsoft SQL Server 2000

BIRT ihub Actuate Customer Days. Wow that looks good! Jeff Morris & Mark Gamble

Experience studies data management How to generate valuable analytics with improved data processes

Decoding the Big Data Deluge a Virtual Approach. Dan Luongo, Global Lead, Field Solution Engineering Data Virtualization Business Unit, Cisco

Designing Business Intelligence Solutions with Microsoft SQL Server 2012 Course 20467A; 5 Days

SQL Server 2005 Features Comparison

MicroStrategy Course Catalog

ORACLE OLAP. Oracle OLAP is embedded in the Oracle Database kernel and runs in the same database process

Oracle Big Data Discovery Unlock Potential in Big Data Reservoir

Microsoft Analytics Platform System. Solution Brief

Datenverwaltung im Wandel - Building an Enterprise Data Hub with

Big Data Analytics Nokia

A very short talk about Apache Kylin Business Intelligence meets Big Data. Fabian Wilckens EMEA Solutions Architect

Modern Data Warehousing

<Insert Picture Here> Oracle BI Standard Edition One The Right BI Foundation for the Emerging Enterprise

GAIN BETTER INSIGHT FROM BIG DATA USING JBOSS DATA VIRTUALIZATION

Apache Sentry. Prasad Mujumdar

Qlik Sense Enabling the New Enterprise

Self-service BI for big data applications using Apache Drill

Building a BI Solution in the Cloud

Scalability and Performance Report - Analyzer 2007

Analance Data Integration Technical Whitepaper

TECHNOLOGY TRANSFER PRESENTS MIKE FERGUSON BIG DATA MULTI-PLATFORM JUNE 25-27, 2014 RESIDENZA DI RIPETTA - VIA DI RIPETTA, 231 ROME (ITALY)

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

Getting Started & Successful with Big Data

Data Virtualization Overview

By Makesh Kannaiyan 8/27/2011 1

70-467: Designing Business Intelligence Solutions with Microsoft SQL Server

Analance Data Integration Technical Whitepaper

Harnessing the Power of the Microsoft Cloud for Deep Data Analytics

Azure Data Lake Analytics

Deploy. Friction-free self-service BI solutions for everyone Scalable analytics on a modern architecture

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

Performance and Scalability Overview

Big Data Approaches. Making Sense of Big Data. Ian Crosland. Jan 2016

Tableau for the Enterprise: An Overview for IT

Tap into Hadoop and Other No SQL Sources

ORACLE BUSINESS INTELLIGENCE, ORACLE DATABASE, AND EXADATA INTEGRATION

locuz.com Big Data Services

Three Reasons Why Visual Data Discovery Falls Short

Welkom! Copyright 2014 Oracle and/or its affiliates. All rights reserved.

Microsoft Big Data. Solution Brief

Dashboard Engine for Hadoop

SQL Server and MicroStrategy: Functional Overview Including Recommendations for Performance Optimization. MicroStrategy World 2016

QlikView, Creating Business Discovery Application using HDP V1.0 March 13, 2014

BIG DATA: FROM HYPE TO REALITY. Leandro Ruiz Presales Partner for C&LA Teradata

Performance and Scalability Overview

Agile Business Intelligence Data Lake Architecture

Oracle Database 12c Plug In. Switch On. Get SMART.

Big Data and the Data Lake. February 2015

HDP Hadoop From concept to deployment.

The IBM Cognos Platform

Production ready hadoop. By Deepak Rao Na,onal Head Datawarehousing Bajaj Finserv

White Paper: Evaluating Big Data Analytical Capabilities For Government Use

How Microsoft IT India s Test Organization Enabled Efficient Business Intelligence

MDM and Data Warehousing Complement Each Other

Tableau Metadata Model

Next-Generation Cloud Analytics with Amazon Redshift

Data processing goes big

Architecting for the Internet of Things & Big Data

Interactive data analytics drive insights

News and trends in Data Warehouse Automation, Big Data and BI. Johan Hendrickx & Dirk Vermeiren

Microsoft Services Exceed your business with Microsoft SharePoint Server 2010

With business intelligence, we create a learning organization that adapts quickly to market changes and stays one step ahead of the competition.

Automated Data Ingestion. Bernhard Disselhoff Enterprise Sales Engineer

Cloudera Enterprise Data Hub. GCloud Service Definition Lot 3: Software as a Service

How to Run a Successful Big Data POC in 6 Weeks

CitusDB Architecture for Real-Time Big Data

How To Use Hp Vertica Ondemand

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

Transcription:

Make Business Intelligence Work on Big Data PUT THE POWER OF BIG DATA IN THE HANDS OF BUSINESS USERS Connect your BI tools directly to your Big Data without compromising scale, performance, or control. EASILY ACCESS BIG DATA FOR ANALYTICS Make your Big Data directly accessible and interactive for BI and Analytics no more data movement. Describe complex data as simple measures and dimensions that anyone can understand and use. GET PERFORMANCE WITHOUT COMPLEXITY Interactive Analysis on Big Data, from Your Favorite BI Tool With AtScale you can support current business processes, allowing analysts to use the BI tools they know and love. AtScale allows data in Hadoop and other Big Data systems to be accessed by BI tools in a format users understand. IT gets the control and security they need, while Users get the interactivity and timeliness the business needs. Be More Efficient Analyze the Data Where it Lies Scale-out BI with no data movement, marts or extracts Leverage Choice Use Your Favorite BI & Analytics App Capitalize on investments in tools, people, skills and preferences Gain Agility Unify Data Definitions Deliver consistent, fast updates across all models and reports Deliver Control Empower Business Users + IT Alike Enable self-service insights on big data with security + governance Let AtScale s query optimization engine take care of the complexity of creating and maintaining aggregations. Guarantee performance, at scale, for user-generated queries.

Make Business Intelligence Work on Big Data Intuitive Business Intelligence Design "Adaptive Aggregates is possibly one of the most meaningful breakthroughs in this space. We put the AtScale Adaptive Cache technology through a test on 57 billion rows of data. The results were 10 20 times faster." Richard Langlois Director Enterprise Data Data Modelers can interact directly with data in Hadoop and other Big Data systems via the AtScale Design Center. Modelers can design virtual BI cubes using familiar workflows and intuitive drag-and-drop interactions. Familiar BI Modeling Concepts Define and visualize virtual relational models on top of data in your Hadoop and other Big Data warehouse using well-known BI and standard SQL concepts you already know. Create measures, dimensions, and relationships using drag-and-drop. Rich Multi-Dimensional Support Design hierarchical dimensions for interactive analysis and exploration. Logically model dimensions and relationships of the underlying data format and schema in both Hadoop and Relational Big Data systems. Collaborative Virtual Cube Design Collaborate on virtual BI models with other modelers. Take snapshots at any point in time, and restore previous versions if needed. No Data Movement or ETL Virtual Model Overlay a virtual cube on data in your Hadoop or Big Data Cluster - no need to physically move or normalize your data up front. Analysts can create hierarchies, measures, metadata, and calculations that traditional and new BI tools can use to query data live in a Data Lake.

Make Business Intelligence Work on Big Data Smart Query Optimization " A modern analytic platform standardizes on what s important; an interactive business view of big data that any tool or application can access. In this regard, AtScale is ahead of the pack." Wayne Eckerson Principal Analyst AtScale takes the pain out of BI on Big Data by building and maintaining on-demand aggregate tables. It uses advanced machine-learning algorithms to optimize BI query workloads on-demand, and delivers the performance that users have come to expect from their legacy BI systems. Automated Aggregate Creation and Tuning With AtScale s virtual BI cube definitions and end-user query patterns your aggregates are dynamically created and tuned to optimize performance without the need for manual intervention. Easy Aggregate Maintenance You have complete visibility into aggregate usage and performance. View aggregate hit rates, configure the number of aggregates, and configure incremental updates so data never gets stale. Manual Aggregate Overrides Create aggregates ahead of time if needed - for example, to support known business-critical dashboards, KPIs, and reports. Support across BI Tool and Excel Queries With AtScale both queries used by most BI tools (SQL format) as well as queries used by Excel, MicroStrategy, Business Objects and Tableau (MDX) are covered. AtScale creates an optimized plan across both types to deliver sub-second query response times. Real Distinct Counts on Big Data Create distinct count queries to drive BI tool controls for users, including filter and drop downs, with built-in support for both exact and estimated distinct counts that perform.

Make Business Intelligence Work on Big Data Big BI Solution "With AtScale, Cloudera customers can easily and securely connect their favorite BI tools to their Enterprise Data Hub. Users leverage the power of Cloudera Impala and AtScale to maximize the value of Hadoop data in real-time and with optimal speed" AtScale is purpose-built for BI on Big Data. It leverages the latest advancements in the Big Data ecosystem to support existing and new BI workloads, using Hadoop and other Data Lakes as the modern platform for data storage, discovery, optimization, and processing. Support for Leading SQL-on-Hadoop Engines AtScale works out-of-the-box with the leading SQL-on-Hadoop engines, such as Impala, SparkSQL, or Hive, and allows them to function as an analytics engine. In the Cloud and On-Premises AtScale works with On-premises and Cloud Big Data systems including Hadoop (Apache, Cloudera, Hortonworks, MAPR), Microsoft HDI and others. Query the Data Where It Lies Query your data directly in the Data Lake - no data movement, no data silos. Use advanced statistics and schema-on-read to optimize queries on the data in its native format. Built-in Support for Complex Data Types AtScale is designed for modern data; structured and unstructured including clickstream data, network logs, and IoT data - with built-in support for complex data such as arrays. Amr Awadallah, Founder and CTO Single Gateway Node Drop-in Deployment AtScale deploys on a single gateway node in your Hadoop environment - no additional cluster to maintain, no software footprint on your Big Data nodes.

2 Make Business Intelligence Work on Big Data Enterprise Security and Control "AtScale s no-etl and no-data movement approach is simply a gamechanger. This application should be required for anyone who wants to do BI on Hadoop." - Kevin Johnson CEO, Ebates AtScale works with Big Data deployments to support Enterprise data governance and security requirements. Administrators have complete control over who can access which data across all your clusters. Role-Based Access Control Manage users across departments and organizations using role-based access control. Use AtScale cubes as a metadata layer to control which data in Hadoop is available to which BI users. Pluggable Security Authentication Connect AtScale to secure Hadoop and Big Data services. We support Kerberos, Username/Password, Delegated Authorization, Active Directory, LDAP authentication, SASL, TLS and more. Query Audit Trails Track cube access and query metrics for every query executed by AtScale. Know who is accessing what data, and the data size and response times of all results. Multi-Cluster Support Create separate AtScale execution environments to connect to data from different physical or virtual Hadoop and other Big Data clusters. Easily move published virtual cubes from one environment to another without any downtime.

43 Make Business Intelligence Work on Big Data ATSCALE WORKS WITH: Business Intelligence Microsoft Excel Power BI Tableau Qlik MicroStrategy Business Objects Spotfire Custom and other BI tools The AtScale Architecture AtScale bridges the gap between your BI applications and your Big Data platform both on-prem and in the Cloud. AtScale runs a number of services that interact with BI tools using standard interfaces including ODBC, JDBC or OLE DB. We also use various standard services to optimize and execute BI queries directly on your Data Lake. Languages and Protocols SQL & MDX ODBC, JDBC, OLE DB Big Data Systems Cloudera Hortonworks MapR Microsoft HDInsight SQL-on-Hadoop Engines Impala SparkSQL Hive / Tez Data Storage Formats Parquet RC Files ORC Files Sequence Files Text and others AtScale Gateway Node Requirements OS RHEL 6.x, CentOS 6.x, Ubuntu 12.x CPU 4 cores minimum, 8+ recommended RAM 32 GB minimum, 48+ recommended Web Browsers Chrome Firefox Internet Explorer (10+) Contact www.atscale.com info@atscale.com