Eliminating Complexity to Ensure Fastest Time to Big Data Value

Similar documents
Eliminating Complexity to Ensure Fastest Time to Big Data Value

The Power of Pentaho and Hadoop in Action. Demonstrating MapReduce Performance at Scale

Big Data at Cloud Scale

Architected Blended Big Data with Pentaho

Buying vs. Building Business Analytics. A decision resource for technology and product teams

Build a Streamlined Data Refinery. An enterprise solution for blended data that is governed, analytics-ready, and on-demand

Embedded Analytics Vendor Selection Guide. A holistic evaluation criteria for your OEM analytics project

The SMB s Blueprint for Taking an Agile Approach to BI

The Ultimate Guide to Buying Business Analytics

The Ultimate Guide to Buying Business Analytics

Performance and Scalability Overview

Performance and Scalability Overview

Product Innovation with Big Data

Blueprints for Big Data Success

Three Open Blueprints For Big Data Success

Getting Started & Successful with Big Data

WHITE PAPER. Harnessing the Power of Advanced Analytics How an appliance approach simplifies the use of advanced analytics

Your Path to. Big Data A Visual Guide

Big Data for Investment Research Management

Analance Data Integration Technical Whitepaper

Workday Big Data Analytics

Harnessing the power of advanced analytics with IBM Netezza

PLATFORA INTERACTIVE, IN-MEMORY BUSINESS INTELLIGENCE FOR HADOOP

QLIKVIEW DEPLOYMENT FOR BIG DATA ANALYTICS AT KING.COM

Oracle Big Data SQL Technical Update

DATAMEER WHITE PAPER. Beyond BI. Big Data Analytic Use Cases

Oracle Data Integrator 12c (ODI12c) - Powering Big Data and Real-Time Business Analytics. An Oracle White Paper October 2013

Data Catalogs for Hadoop Achieving Shared Knowledge and Re-usable Data Prep. Neil Raden Hired Brains Research, LLC

Automated Data Ingestion. Bernhard Disselhoff Enterprise Sales Engineer

Analance Data Integration Technical Whitepaper

Understanding Your Customer Journey by Extending Adobe Analytics with Big Data

Big Data Use Cases. To Start Today. Paul Scholey Sales Director, EMEA. 2013, Pentaho. All Rights Reserved. pentaho.com. Worldwide +1 (866)

The Business Value of Predictive Analytics

Reporting, Visualization & Predictive Analytics on Big Data. 2013, Pentaho. All Rights Reserved. pentaho.com. Worldwide +1 (866)

9 Reasons Your Product Needs. Better Analytics. A Visual Guide

IBM BigInsights for Apache Hadoop

Global IDs gets big into 'big data' management

5 Keys to Unlocking the Big Data Analytics Puzzle. Anurag Tandon Director, Product Marketing March 26, 2014

SAS Enterprise Decision Management at a Global Financial Services Firm: Enabling More Rapid Implementation of Decision Models into Production

Advanced Big Data Analytics with R and Hadoop

A Visualization is Worth a Thousand Tables: How IBM Business Analytics Lets Users See Big Data

Big Data for Investment Research Management

5 Big Data Use Cases to Understand Your Customer Journey CUSTOMER ANALYTICS EBOOK

An Enterprise Framework for Business Intelligence

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

Ignite Your Creative Ideas with Fast and Engaging Data Discovery

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

Databricks. A Primer

The Definitive Guide to Data Blending. White Paper

Automated Business Intelligence

Databricks. A Primer

Perceptive Software: Corporate Profile

Dashboards as a management tool to monitoring the strategy. Carlos González (IAT) 19th November 2014, Valencia (Spain)

Using Big Data Analytics for Financial Services Regulatory Compliance

Datameer Cloud. End-to-End Big Data Analytics in the Cloud

Tagetik 4 Enabled By Microsoft SharePoint

PrimeDeveloper. Develop Advanced Financial Information Systems

Business Intelligence: Build it or Buy it?

Business Intelligence

Business Intelligence

Big Analytics: A Next Generation Roadmap

birt Analytics data sheet Reduce the time from analysis to action

TIBCO Spotfire Guided Analytics. Transferring Best Practice Analytics from Experts to Everyone

BIG DATA TOOLS. Top 10 open source technologies for Big Data

Testing Big data is one of the biggest

Empowering the Masses with Analytics

Traditional BI vs. Business Data Lake A comparison

The Five Most Common Big Data Integration Mistakes To Avoid O R A C L E W H I T E P A P E R A P R I L

Safe Harbor Statement

Get More Scalability and Flexibility for Big Data

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

IBM Cognos Analysis for Microsoft Excel

Pentaho High-Performance Big Data Reference Configurations using Cisco Unified Computing System

Making big data simple with Databricks

An Oracle White Paper November Leveraging Massively Parallel Processing in an Oracle Environment for Big Data Analytics

Lambda Architecture. Near Real-Time Big Data Analytics Using Hadoop. January Website:

IP Expo 2014 Pentaho Big Data Analytics Accelerating the time to big data value London, UK

IBM Software IBM Business Process Management Suite. Increase business agility with the IBM Business Process Management Suite

Data Integration Checklist

How To Handle Big Data With A Data Scientist

Alexander Nikov. 5. Database Systems and Managing Data Resources. Learning Objectives. RR Donnelley Tries to Master Its Data

Deploying an Operational Data Store Designed for Big Data

Cincom Business Intelligence Solutions

TAMING THE BIG CHALLENGE OF BIG DATA MICROSOFT HADOOP

Maximizing Returns through Advanced Analytics in Transportation

DATA VISUALIZATION: When Data Speaks Business PRODUCT ANALYSIS REPORT IBM COGNOS BUSINESS INTELLIGENCE. Technology Evaluation Centers

Adobe Insight, powered by Omniture

[NUGENESIS SAMPLE MANAGEMENT ] AMPLE IMPROVING LAB EFFICIENCY, ANAGEMENT ACCELERATING BUSINESS DECISIONS. bigstock.com $69

Chapter 6 8/12/2015. Foundations of Business Intelligence: Databases and Information Management. Problem:

ENTERPRISE BI AND DATA DISCOVERY, FINALLY

IBM Big Data Platform

Increase Agility and Reduce Costs with a Logical Data Warehouse. February 2014

Business Intelligence / Big Data Consulting Service

AUTOMATE PROCESSES IMPROVE TRANSPARENCY REDUCE COSTS GAIN TIGHTER CONTROL OVER YOUR LEGAL EXPENSES LEGAL SOLUTIONS SUITE

Data Challenges in Telecommunications Networks and a Big Data Solution

Self-Service Data Assurance for BI and Analytics

This Symposium brought to you by

Are You Big Data Ready?

Cloud Self Service Mobile Business Intelligence MAKE INFORMED DECISIONS WITH BIG DATA ANALYTICS, CLOUD BI, & SELF SERVICE MOBILITY OPTIONS

Accelerate BI Initiatives With Self-Service Data Discovery And Integration

Transcription:

Eliminating Complexity to Ensure Fastest Time to Big Data Value Copyright 2015 Pentaho Corporation. Redistribution permitted. All trademarks are the property of their respective owners. For the latest information, please visit our web site at pentaho.com.

Introduction While most organizations recognize that big data analytics is key to business success, efforts are often stymied or slowed due to operational procedures and workflow issues. In fact, many companies find they now face the challenge of dealing with difficult, new and complex technologies. In many cases, IT does not necessarily have enough people with the right specialized skills required to take on the process of turning big data into actionable, decision-making information. Often the need for these additional resources and skills are not anticipated. Examining a typical big data analytics process workflow helps identify where many of these potential problems may occur, special skill sets are required and delays are introduced. Common steps in the big data analytics workflow include: LOADING AND INGESTION Data must be obtained from a variety of both structured and unstructured data sources including documents, spreadsheets, email messages, images, texts, and social media content. While different organizations may take different approaches to loading and ingesting this data, most efforts require the development of custom code and the writing of scripts or use of specialized ETL tools to complete the process. These tasks are most often performed by developers or IT. MANIPULATION AND TRANSFORMATION Once suitable data for the problem at hand is obtained, it must be prepared in the proper format before any analysis can be performed. Even if this step requires something as straightforward as converting dollars to Euros, aggregating a set of data, or swapping rows of data for columns, the people carrying out the operations must have the expertise to complete the process. Manually completing these steps is a common, but time-consuming process that can easily introduce errors. Automating the processes typically requires the writing of some custom code. ACCESS Once the data required for decision-making is in the correct format, it then needs to be directed to a big data store, to be accessed by business analytics applications. Big data stores such as Hadoop, NoSQL, and analytic databases are the most common types and require specialized skills that many organizations do not currently have. This step in the workflow might also involve moving a slice of a larger dataset to a particular data warehouse. Again, special skills are needed to perform this step through coding or use of specialized ETL tools. Data Discovery 100% Java Open Web-based API s Multi-Tenant Ready Data Integration Predictive Analytics PENTAHO 2

MODEL To derive actionable information from raw data, users need details about the database content. For example, when exploring issues related to inventories and sales, it is essential to know particular attributes (e.g., product ID, product name, price, etc.) of database entries and the relationships between the entities. A metadata model must be built that shows relationships and hierarchies to make the connection between data and business processes. This step might be done through custom coding or with a data modeling tool, but either approach requires expertise. The current approach to big data analytics is rife with potential problems. VISUALIZE AND EXPLORE The next step in the workflow is to examine relevant data, perform the actual analysis, and provide the information in the format needed for an executive, business unit head, or manager to make a quick and informed business decision. Typically users need different information and as they analyze data, requests for additional data and slices of data arise. Traditionally, developers or IT write code or use a BI tool to create fairly static views, dashboards, or reports based on the data. PREDICT Once the data is visualized the next logical step in the big data work flow is to perform predictive analytics. Based on vast amounts of historical data predictive analytics can help organizations to better plan and optimize for the future. Problems with Maintaining the Status Quo The current approach to big data analytics is rife with potential problems. The nature of each step in a common workflow requires manual intervention, opens up the process to potential mistakes, and delays the time to results. Worse, there is often a need for both IT and developers to do a great amount of hand coding and use specialized tools. Once the flow is completed and business users run analysis, new requests often come into IT for access to additional data sources and the linear process begins again. In today s budget-conscious and fast-paced business world, engaging these people can drain precious resources from other projects that are critical to the growth and success of the organization. With companies dealing with an explosion of data volumes, while trying to incorporate more types of data into their decision-making processes, the problems, challenges, and pressure on resources simply multiply. At the same time, demand to make immediate decisions based on this information continues to increase. As a result, new thinking and new approaches are required. Specifically, organizations need a solution that improves and shortens the big data analytics process workflow. The solution must have a number of characteristics to remove complexity, and simplify operations. It should also ensure that errors are not introduced and best practices are carried out. To those points, a solution should offer easy to use data integration including support for structured and unstructured data. There should be tools for visualization and data exploration that address a broad set of users and can support multiple data sources so that both business and technical staff can quickly size up information and gauge its relevance and importance. The dynamic nature of today s marketplace means business priorities can quickly change. PENTAHO 3

A new opportunity may arise or a new data source (an organization s social media stream, for example) might provide needed insights into consumer interests. So the focus of big data analytics efforts will likely need to shift rapidly over time to keep pace with changing business opportunities. A solution that offers an easy to use visual development environment, rather than hand coding every time there is a change, would help an organization remain competitive. And while it is a given that a big data analytics solution work with traditional data stores, a solution also must be capable of working with new big data stores such as Hadoop and NoSQL databases. Pentaho as Your Partner Clearly, big data analytics efforts need solutions that make processes easier to execute, do not require new technical resources, and reduce the time to results. This is where Pentaho can help. Pentaho offers a unified business analytics platform that supports the entire big data analytics flow. In particular, Pentaho tightly couples data integration with business analytics in a single platform for both IT and business users. The Pentaho approach lets both groups easily access, integrate, visualize, and explore all data that impacts business results. Pentaho Data Integration allows organizations to extract data from complex and heterogeneous sources and prepare that data for analysis all with a visual development environment that eliminates the need for specialized IT and developer resources. The solution produces consistent, high quality, ready-to-analyze data. The dynamic nature of today s marketplace means business priorities can quickly change. Additionally, Pentaho Business Analytics provides a highly interactive and easy to use web-based interface for business users to access and visualize data, create and interact with reports and dashboards, and analyze data, without depending on IT or developers. Beyond data discovery, Pentaho also offers predictive analytics capabilities as part of the platform. Thanks to those features, Pentaho software is currently being used by retailers, healthcare providers, media companies, hospitality organizations, and others. Clients include Beachmint, Delta Dental, Rich Relevance, TravelTainment, and Travian Games. (Access Pentaho s big data case studies and testimonials.) One great differentiator that is getting the attention of such companies is Pentaho s visual development environment. Rather than writing code and developing scripts, organizations can quickly set up logical workflows to handle data ingestion, manipulation, integration, and modeling. This can greatly reduce the time to results, frees up staffing resources and opens up access to business analytics to many more users by removing technical complexity. One component of the Pentaho platform is Instaview, the first instant and interactive application for big data. Instaview dramatically reduces the time and complexity required for data analysts to discover, visualize, and explore large volumes of diverse data in Hadoop, Cassandra, and HBase. Instaview broadens big data access to data analysts, removes the need for separate big data visualization tools, and simplifies big data delivery and access management for IT. PENTAHO 4

Complete Big Data Analytics & Visual Data Management Data Ingestion Manipulation Integration Enterprise & Ad Hoc Reporting Data Discovery Visualization Predictive Analytics Pentaho Big Data Analytics Hadoop NoSQL Analytic Relational Databases From an execution standpoint, Pentaho is unique in that it combines a visual development approach with the capability of being able to run in parallel as MapReduce across a Hadoop cluster. This results in executions that are as much as a 15 times faster versus using a handwritten code approach. Given the potential problems that can crop up in managing and incorporating big data into decisionmaking processes, organizations need easy-to-use solutions that can address today s challenges, with the flexibility to adapt to meet future challenges. With a single platform that includes visual tools to simplify development, Pentaho not only shortens the time in getting to big data analytics, but also addresses the broadest set of users for business analytics capabilities such as data preparation, data discovery, and predictive analytics that support an iterative big data analytics process. PENTAHO 5

Learn more about Pentaho Business Analytics pentaho.com/contact +1 (866) 660-7555. Global Headquarters Citadel International - Suite 340 5950 Hazeltine National Drive Orlando, FL 32822, USA tel +1 407 812 6736 fax +1 407 517 4575 US & Worldwide Sales Office 353 Sacramento Street, Suite 1500 San Francisco, CA 94111, USA tel +1 415 525 5540 toll free +1 866 660 7555 United Kingdom, Rest of Europe, Middle East, Africa London, United Kingdom tel +44 (0) 20 3574 4790 toll free (UK) 0 800 680 0693 FRANCE Offices - Paris, France tel +33 97 51 82 296 toll free (France) 0800 915343 GERMANY, AUSTRIA, SWITZERLAND Offices - Munich, Germany tel +49 (0) 322 2109 4279 toll free (Germany) 0800 186 0332 BELGIUM, NETHERLANDS, LUXEMBOURG Offices - Antwerp, Belgium tel (Netherlands) +31 8 58 880 585 toll free (Belgium) 0800 773 83 ITALY, SPAIN, PORTUGAL Offices - Valencia, Spain toll free (Italy) 800 798 217 toll free (Portugal) 800 180 060 Be social with Pentaho: Copyright 2015 Pentaho Corporation. Redistribution permitted. All trademarks are the property of their respective owners. For the latest information, please visit our web site at pentaho.com.