IBM Netezza Analytics



Similar documents
IBM Netezza Analytics

IBM Netezza High-performance business intelligence and advanced analytics for the enterprise. The analytics conundrum

IBM PureData Systems. Robert Božič 2013 IBM Corporation

High-Performance Business Analytics: SAS and IBM Netezza Data Warehouse Appliances

Harnessing the power of advanced analytics with IBM Netezza

IBM Netezza High Capacity Appliance

A financial software company

IBM Analytics. Just the facts: Four critical concepts for planning the logical data warehouse

2015 Ironside Group, Inc. 2

Solutions for Communications with IBM Netezza Network Analytics Accelerator

IBM System x reference architecture solutions for big data

Ubrzajte svoj Data Warehouse 100 puta i više

IBM Analytical Decision Management

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

Netezza and Business Analytics Synergy

IBM SPSS Modeler Professional

IBM Cognos 10: Enhancing query processing performance for IBM Netezza appliances

IBM Cognos Enterprise: Powerful and scalable business intelligence and performance management

A business intelligence agenda for midsize organizations: Six strategies for success

HIGH PERFORMANCE ANALYTICS FOR TERADATA

Con-way Freight. Leveraging best-of-breed business intelligence for customer satisfaction. Overview. Before: a company with a vision

Einsatzfelder von IBM PureData Systems und Ihre Vorteile.

Advanced Analytics for Financial Institutions

Next Generation Data Warehousing Appliances

Poslovni slučajevi upotrebe IBM Netezze

Solve your toughest challenges with data mining

Name: Srinivasan Govindaraj Title: Big Data Predictive Analytics

IBM Social Media Analytics

Evolving Solutions Disruptive Technology Series Modern Data Warehouse

Delivering new insights and value to consumer products companies through big data

IBM BigInsights for Apache Hadoop

IBM Social Media Analytics

IBM Cognos Insight. Independently explore, visualize, model and share insights without IT assistance. Highlights. IBM Software Business Analytics

Better planning and forecasting with IBM Predictive Analytics

IBM Data Warehousing and Analytics Portfolio Summary

IBM SPSS Modeler Premium

Three proven methods to achieve a higher ROI from data mining

Making confident decisions with the full spectrum of analysis capabilities

Universal PMML Plug-in for EMC Greenplum Database

PureSystems: Changing The Economics And Experience Of IT

Optimize workloads to achieve success with cloud and big data

The IBM Cognos family

Predictive analytics with System z

Virtual Data Warehouse Appliances

Dell* In-Memory Appliance for Cloudera* Enterprise

Advanced In-Database Analytics

IBM PureFlex System. The infrastructure system with integrated expertise

IBM InfoSphere Guardium Data Activity Monitor for Hadoop-based systems

KnowledgeSTUDIO HIGH-PERFORMANCE PREDICTIVE ANALYTICS USING ADVANCED MODELING TECHNIQUES

IBM Sales and Distribution IBM and Manhattan Associates

MATLAB in Business Critical Applications Arvind Hosagrahara Principal Technical Consultant

Solve your toughest challenges with data mining

Making critical connections: predictive analytics in government

HP and Business Objects Transforming information into intelligence

INVESTOR PRESENTATION. First Quarter 2014

IBM InfoSphere Optim Test Data Management

Data virtualization: Delivering on-demand access to information throughout the enterprise

IBM PureApplication System for IBM WebSphere Application Server workloads

Business Analytics for Big Data

Datalogix. Using IBM Netezza data warehouse appliances to drive online sales with offline data. Overview. IBM Software Information Management

Focus on the business, not the business of data warehousing!

IBM DB2 Near-Line Storage Solution for SAP NetWeaver BW

The IBM Cognos Platform for Enterprise Business Intelligence

How To Use Social Media To Improve Your Business

Achieving customer loyalty with customer analytics

IBM Software Delivering trusted information for the modern data warehouse

Getting the most out of big data

How To Use Hp Vertica Ondemand

Microsoft Big Data. Solution Brief

Setting smar ter sales per formance management goals

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

In-Database Analytics

ETPL Extract, Transform, Predict and Load

The IBM Cognos Platform

Tap into Big Data at the Speed of Business

IBM Software Hadoop in the cloud

Beyond listening Driving better decisions with business intelligence from social sources

IBM Global Business Services Microsoft Dynamics AX solutions from IBM

Five predictive imperatives for maximizing customer value

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

Advanced Big Data Analytics with R and Hadoop

Understanding the Value of In-Memory in the IT Landscape

IBM InfoSphere BigInsights Enterprise Edition

IBM Storwize V7000 Unified and Storwize V7000 storage systems

An Oracle White Paper June High Performance Connectors for Load and Access of Data from Hadoop to Oracle Database

Lowering the Total Cost of Ownership (TCO) of Data Warehousing

IBM Cognos TM1. Enterprise planning, budgeting and analysis. Highlights. IBM Software Data Sheet

IBM Algo Asset Liability Management

Fiserv. Saving USD8 million in five years and helping banks improve business outcomes using IBM technology. Overview. IBM Software Smarter Computing

How To Create An Insight Analysis For Cyber Security

How To Use Big Data To Help A Retailer

SAP SE - Legal Requirements and Requirements

Working with telecommunications

IBM Cognos Controller

Transcription:

IBM Netezza Analytics The advanced analytics platform inside every IBM Netezza appliance Customers use IBM Netezza Analytics to: Predict with more accuracy Deliver predictions faster Respond rapidly to changes Highlights: Serious analytics Answer questions that were previously too complex, required too much data or took too much time to analyze Data exploration Discover subtle patterns within ever-growing data volumes to answer interrelated and complex business questions Analytics on-demand Quickly respond to dynamic business conditions to choose the best course of action Simple to use Build models and score data using existing analytics technologies, including popular analytic packages and languages High-performance In-database, parallelized algorithms take advantage of IBM Netezza s Asymmetric Massively Parallel Processing (AMPP) architecture Today, enterprises are confronted with growing data volumes, more diverse data formats and sources, and increasing demands for speedy answers to increasingly complex and interrelated business questions. Welcome to the world of big data. Advanced analytics helps businesses make sense of this big data and get the answers they need to make better decisions and stay competitive. IBM Netezza Analytics is an embedded, purpose-built, advanced analytics platform delivered with every IBM Netezza appliance that empowers analytic enterprises to meet and exceed those business demands. IBM Netezza Analytics advanced technology fuses data warehousing and in-database analytics into a scalable, high-performance, massively parallel advanced analytic platform that is designed to crunch through petascale data volumes. This lets a large number of users ask questions of the data that could not have been contemplated on other architectures. IBM Netezza Analytics is designed to quickly and effectively provide better and faster answers to the most sophisticated business questions. IBM Netezza Analytics is IBM Netezza s most powerful advanced analytics platform that provides the technology infrastructure to support enterprise deployment of in-database analytics. The analytics platform allows integration of its robust set of built-in analytics with leading analytic tools from such vendors as Revolution Analytics, SAS, IBM SPSS, Fuzzy Logix, and Zementis, on IBM Netezza s core data warehouse appliances. IBM Netezza pioneered the modern data warehouse appliance and has customers worldwide that have realized the value of combining data warehousing and analytics into a single, highperformance integrated system. IBM Netezza Analytics enables analytic enterprises to realize significant business value from new business models and helps companies realize both top-line revenue growth and bottomline cost savings.

IBM Netezza offers a distinctive and simple-to-use approach for serious analytics. Traditionally, analytics are built and deployed on separate analytic servers. This elongates the end-to-end time from model inception to deployment, and also requires data movement, from a data warehouse or other data sources to the analytic server. In addition to this process taking too much time, it is inefficient, limits the data used, constrains the scope of the analytic modeling, and impedes the ability to experiment iteratively. Every IBM Netezza data warehouse is delivered with a library of pre-built, in-database analytic functions that can be accessed through any SQL compliant interface or any of the other supported languages. Additionally, customers can develop new capabilities using the platform s user-defined extensions. It is an easy to use extensible platform that supports multiple tools, languages, and frameworks. IBM Netezza Analytics capabilities: With IBM Netezza Analytics, analytic models can be built and deployed right where the data resides in the data warehouse. By doing this, the time it takes to build and deploy analytic models throughout an enterprise can be significantly reduced. By shrinking the time from model inception to model deployment, companies can move to enterprise-wide, factbased decisions by infusing more of their decisions with insightful on-demand analytics. Data exploration and discovery Data transformation Model building Model diagnostics Model scoring IBM Netezza Analytics 2.0 The IBM Netezza data warehouse appliance a powerful parallel computing platform is fully exploited by IBM Netezza Analytics to deliver high-speed, scalable analytics processing. The appliance uses the high-speed throughput of the Asymmetric Massively Parallel Processing (AMPP) architecture to maximize speed and efficiency for in-database analytics processing. The AMPP architecture is a blade-based Tanay GPU Appliance by Fuzzy Logix IBM InfoSphere Streams Software Development Kit User-Defined Extensions (UDF, UDA, UDTF, UDAP) 3 rd Party In-Database Analytics IBM SPSS SAS 9.3+ Netezza In-Database Analytics Transformations Mathematical Geospatial IBM SPSS SAS Revolution Analytics IBM InfoSphere BigInsights Cloudera Language Support (MapReduce, Java, Python, R, Lua, Perl, C, C++, Fortran, PMML) DBLytix by Fuzzy Logix Universal PMML Plug- In by Zementis Predictive Statistics Time Series Data Mining Eclipse BI Tools Apache Hadoop IBM Netezza AMPP Platform Visualization Tools Figure 1: IBM Netezza Analytics Architecture 2

DISK ENCLOSURES Slice of User Data Swap and Mirror Partitions High-Speed Data Streaming SMP HOSTS SQL, Query Plan, Optimize, Admin SNIPPET BLADES (S-BLADES) Processor & Streaming DB Logic High-performance database engine, complex analytic processing, streaming joins, aggregations, sorts, etc. streaming architecture that uses commodity blades and storage, combined with IBM Netezza s patented data filtering using field programmable gate arrays (FPGAs), to deliver large data, high speed analytics. IBM Netezza has consolidated all analytics activity in a powerful and simple appliance. IBM Netezza Analytics is purpose-built to simplify the building and deploying of models for analytic enterprises that demand the highest performance on large, complex volumes of data. Serious analytics Businesses are collecting and tracking information more than ever before, and are under increasing pressure to operate more efficiently and effectively. The ability to analyze data, foresee outcomes and find ways to improve business is driving companies to fully exploit advanced analytics. Making sense of massive volumes of data and turning it into meaningful results can be daunting or even technically unfeasible in companies with traditional database technology. These systems are easily overextended just keeping up with the growth in user and data volumes. Analytics that once seemed impossible or impractical to run are now possible with IBM Netezza Analytics. With IBM Netezza s simple appliance approach, all of an organization s data can be used to generate a finer set of results, helping to drive new revenue opportunities and gain a competitive advantage. By using advanced analytics on IBM Netezza data warehouse appliances, the entire organization can realize value from financial teams and lines-of-business, to sales and IT, to the executive office. This offers greater clarity for the entire business, and ensures everyone is leveraging the same data, using all available data. By using IBM Netezza Analytics, organizations no longer have to make a choice between large data volumes and serious analytics. Data exploration With IBM Netezza Analytics, it is possible to move beyond traditional business intelligence (BI) and ad-hoc reporting that is based on historical data, and discover new ways to create value from data. Organizations now have the ability to build and deploy sophisticated analytic models that mirror real-world complexities more easily and effectively. They can continuously experiment, improve and tune analytic models to discover trends and find ways to lower business risk, reduce cost, increase revenues, and make fact-based decisions. Investigate new ways to create value from your data while doing concurrent, parallel model experimentation with IBM Netezza Analytics. Now, all data can be used instead of just samples or aggregates, thereby improving accuracy and enabling more targeted decisions. Telecommunications case study In the highly competitive world of telecommunications, the players need accurate and up-to-date information to manage their businesses, exploit new opportunities and keep customer churn to a minimum. The revenue assurance department uses analytics to identify revenue leakage and plug any gaps in the revenue chain. Product marketing and pricing teams can proactively plan and forecast the effect of telephony tariff changes, and plan how to best react to competitors offerings. The credit services department uses analytics to spot high telephony usage and proactively manage any potential credit problems before they arise. IBM Netezza data warehouse appliances crunch through large data volumes and process in-database analytics to help telecommunications companies be competitive and streamline processes. 3

Healthcare case study A healthcare provider was interested in predicting who was at risk for diabetes. By taking a look beyond typical health parameters such as weight and family history, and adding more attributes to their models such as financial background, the provider uncovered that a person s financial situation does indeed impact their diabetes risk. By refining their analytic models, this healthcare provider was able to determine not only if a person may develop diabetes at some point in his or her lifetime, but also predict when the onset of the disease would take place (in one year, three years, etc). By identifying these trends, outreach and preventive care could be provided to these patients at risk. This healthcare provider continues to refine and create models to uncover additional trends and improve patient care leveraging IBM Netezza Analytics. Analytics on-demand Organizations can get ahead of the competition by using IBM Netezza to predict, forecast and optimize business elements. Historically, the analytic process can be expensive and time-consuming it generally takes weeks to develop a predictive model from the data in a data warehouse. Once the model is developed, it still takes hours or even days in some cases to execute on all the data, despite adding expensive hardware to the problem. The issue is further exacerbated with a growth in data volumes. IBM Netezza offers companies fast time-to-value for important predictive initiatives, resulting in a positive impact on the bottom line and in top-line growth. With IBM Netezza on board, organizations are armed with the most accurate intelligence to react more quickly and confidently to any opportunities or threats the market may present. Models can be quickly deployed, tweaked as needed, and dispensed concurrently in multiples, while taking advantage of IBM Netezza s parallel in-database technology. This enables the largest data volumes to be handled quickly and efficiently. At a time when companies need to be as agile as possible to react to changing market conditions and demands, an easy-to-use system that runs blisteringly fast and analyzes petascale data makes a lot of sense. Simple to use The IBM Netezza data warehouse appliance is easy-to-use and dramatically accelerates the entire analytic process. The programming interfaces and parallelization options make it straightforward to move a majority of analytics inside the appliance, regardless of whether they are being performed using tools from such vendors as IBM SPSS, SAS, or Revolution Analytics, or written in languages such as Java, Lua, Perl, Python, R or Fortran. Additionally, IBM Netezza data warehouse appliances are delivered with a built-in library of parallelized analytic functions, purpose-built for large data volumes, to kick-start and accelerate any analytic application development and deployment. The simplicity and ease of development is what truly sets IBM Netezza apart. It is the first appliance of its kind packing the power and scalability of hundreds of processing cores in an architecture ideally suited for parallel analytics. Instead of a fragmented analytics infrastructure with multiple systems where data is replicated, IBM Netezza Analytics consolidates all analytics activity in a powerful appliance. It is easy to deploy and requires minimal ongoing administration, for an overall low total cost of ownership. Simplifying the process of exploring, calculating, modeling and scoring data are key drivers for successful adoption of analytics companywide. With IBM Netezza, business users can run their own analytics in near real time, which helps analytics-backed, data-driven decisions to become pervasive throughout an enterprise. Retail case study A global leader in behavior-based marketing solutions that provide manufacturers and retailers with the ability to execute targeted marketing programs on the fly based on real-time market basket analysis and historical purchasing patterns, has seen great results from introducing IBM Netezza into its business. For example, in one campaign relying on POS information to issue individualized coupons to customers, coupon redemption increased by 30 percent using IBM Netezza. By leveraging the simplicity of IBM Netezza, this company has reduced the number of DBAs required to maintain its data warehouse environment, significantly increased productivity, and IT analytics projects complete 5-10x faster. In addition, the company s primary database storage space has decreased by almost 80TB since migrating to IBM Netezza, due to the elimination of all aggregate tables and indices. This reduction in storage also decreased the corresponding data center footprint. 4

Digital media case study A major digital media company, in the business of providing detailed analytics to its clients, can provide right-time data, drive insightful decision-making, correctly measure marketplace dynamics and effectively bridge the gap between retailers and manufacturers. By leveraging IBM Netezza Analytics and IBM Netezza data warehouse appliances, the company can accommodate more customers now than ever before, and these customers can run custom-defined, ad-hoc market analyses, whereas before they were limited to static views of the market. Also, more data history can be retrieved and analyzed than ever before and new data can be made available in near real-time. Analyses are unconstrained and have greater functionality and flexibility. IBM Netezza has helped reduce IT costs, thereby creating a more effective business model. With its advanced analytic capabilities, the company has a competitive advantage over its rivals. Focus on the business, not the process. Let your IBM Netezza data warehouse appliance do the heavy lifting for you. High performance IBM Netezza has created an extremely flexible analytic platform that offers high performance at petascale. By bringing analytics to the data, modelers and quantitative teams can operate on the data directly inside the appliance, instead of having to move it to a different location and deal with the associated data pre-processing and transformation. Analysts and modelers can take full advantage of the AMPP architecture of IBM Netezza Analytics to ask the most complex questions on all the enterprise data, without the infrastructure getting in the way. Practitioners can iterate through different models more quickly to experiment and find the best fit. Once the model is developed, it can be seamlessly executed against all the relevant data in the enterprise. The prediction and scoring can be done right where the data resides. Users can get the results of prediction scores in near real time, helping operationalize advanced analytics and making it available throughout the enterprise. IBM Netezza data warehouse appliances use field programmable gate arrays (FPGAs), which have been programmed by IBM Netezza to handle large volumes of data very efficiently. These FPGAs filter out extraneous data as fast as it streams off the disk. This removes I/O bottlenecks and frees up downstream components such as the CPU, memory and network from processing unnecessary data, creating a significant turbocharger effect on system performance. The serious big math is performed in powerful multi-core CPUs, where database primitives and complex analytics are executed on the filtered data stream. Analytic tasks are run as independent processes operating on data streams across each S-Blade. IBM Netezza s parallel analytic engine harnesses the power of all the computational cores in the appliance to offer significant performance and scalability for serious analytics. Eliminate technology hurdles by leveraging the IBM Netezza appliance to make your life simpler. With IBM Netezza Analytics, you will have an appliance that can manage all of your analytic queries on massive data volumes, all while taking advantage of the IBM Netezza data warehouse appliance parallel processing platform for better performance. IBM Netezza provides you with the simple appliance for serious analytics. Financial services case study A financial institution needed to calculate value-at-risk for an equity options desk. The IBM Netezza platform was able to run a Monte Carlo simulation on 200,000 positions with 1,000 underlying stocks (2.5 billion simulations) in less than an in-database analytics approach. This allowed the financial institution to use the data where it resided as opposed to building a parallel data-processing platform solely for performing the Monte Carlo simulation. The combination of execution time and the elimination of latency required to move data between two platforms enabled the financial institution to include more variables in assessing the risk of investment strategies and to perform this assessment with greater frequency. 5

IBM Netezza Analytics Platform Included in every IBM Netezza data warehouse appliance Pre-built in-database analytics: Supports parallel model building and deployment/scoring Transformations Execute data prep transformation in-database to gain significant performance Mathematical Statistics Time series Data mining Predictive Geospatial Perform deep mathematical calculations in-database to leverage MPP processing Calculate rich statistics without moving the data Create forecasts and trends using deep, rich history to improve model accuracy Use more, or all the data, to discover new and emerging insights Predict with great accuracy and speed to move from batch processing to near real-time speed of thought analytics Implement location-based analytics on big data with immediate feedback Software Development Kit (SDK) includes: Multi-language support Plug-in for Eclipse User-defined extensions Develop with MapReduce, R, Java, Python, Lua, Perl, C, C++, Fortran, PMML (export) Build custom in-database analytics with easy-to-use, standard integrated development environment Embed custom in-database analytics with user-defined functions (UDF), user-defined aggregates (UDA), user-defined table functions (UDTF), user-defined analytic processes (UDAP) Third-party applications Analytic model development tools In-database analytics Scoring engines IBM SPSS Modeler, Revolution Analytics R Enterprise for Netezza, Revolution Analytics R Visual Productivity SAS, DB Lytix by Fuzzy Logix, IBM SPSS Modeler Zementis Universal PMML Plug-In, SAS Scoring Engine for Netezza Connectors IBM InfoSphere BigInsights, IBM InfoSphere Streams, Cloudera, SAS, WPS Engine for Netezza Spatial tools ESRI, Safe Software, Pitney Bowes MapInfo, Google Earth, Microsoft VirtualEarth, BIS 2, IBM DataStage, Informatica, IBM Cognos, Microstrategy, Business Objects, Intego GPU accelerators Tanay by Fuzzy Logix Data integration Data analysis BI/reporting Ab Initio, BusinessObjects/SAP, Composite Software, DataFlux a SAS company, Expressor Software, Informatica, IBM Information Server, Oracle GoldenGate software, Oracle Sunopsis, WisdomForce IBM SPSS, Revolution Analytics, BusinessObjects/SAP, Kalido, KXEN, Quest software, SAS IBM Cognos, IBM Unica, Acutate, BusinessObjects/SAP, Information Builders, MicroStrategy, Oracle, QlikTech Data visualization Tableau, TIBCO Spotfire, QlikTech, BIS 2 Business continuity/compliance IBM DataMirror, IBM Tivoli Storage Manager, EMC, Symantec Veritas 6

Extensive In-Database Analytics Library for Big Data Crunching Mathematical Basic Math* Permutation and Combination* Greatest Common Divisor and Least Common Multiple* Conversion of of Values* Exponential and Logarithm* Gamma and Beta Functions Matrix Algebra+ Transformations Data Profiling // Descriptive Statistics+ General Diagnostics Statistics+ Sampling Data prep Statistics Descriptive Statistics+ Distance Measures* Hypothesis Testing* Chi-Square & Contingency Tables* Univariate & Multivariate Distributions+ Monte Carlo Simulation* Time Series Autoregressive+ Forecasting* Area Under Curve* Interpolation Methods* Data Mining Association Rules+ Clustering+ Feature Extraction+ Discriminant Analysis* Predictive Linear Regression+ Logistic Regression+ Classification Bayesian Sampling Model Testing Geospatial Geospatial Data Type Geometric Functions Geometric Analysis * Fuzzy Logix DB Lytix capabilities + Netezza Analytics and Fuzzy Logix DB Lytix capabilities About IBM Netezza IBM Netezza data warehouse appliances revolutionized data warehousing and advanced analytics by integrating database, server and storage into a single, easy-to-manage appliance that requires minimal set-up and ongoing administration while producing faster and more consistent analytic performance. The IBM Netezza data warehouse appliance family simplifies business analytics dramatically by consolidating all analytic activity in the appliance, right where the data resides, for industry-leading performance. Visit ibm. com/software/data/netezza to see how our family of data warehouse appliances eliminates complexity at every step and helps you drive true business value for your organization. For the latest data warehouse and advanced analytics blogs, videos and more, please visit: thinking.netezza.com. IBM Data Warehousing and Analytics Solutions IBM provides the broadest and most comprehensive portfolio of data warehousing, information management and business analytic software, hardware and solutions to help customers maximize the value of their information assets and discover new insights to make better and faster decisions and optimize their business outcomes. 7

Copyright IBM Corporation 2012 IBM Corporation Software Group Route 100 Somers, NY 10589 Produced in the United States of America April 2012 IBM, the IBM logo, ibm.com, Unica, InfoSphere, DataMirror, DataStage, Tivoli and Cognos are trademarks of International Business Machines Corp., registered in many jurisdictions worldwide. Other product and service names might be trademarks of IBM or other companies. A current list of IBM trademarks is available on the Web at Copyright and trademark information at www.ibm.com/legal/copytrade.shtml Netezza is a registered trademark of IBM International Group B.V., an IBM Company. Java and all Java-based trademarks and logos are trademarks or registered trademarks of Oracle and/or its affiliates. Microsoft, Windows, Windows NT, and the Windows logo are trademarks of Microsoft Corporation in the United States, other countries, or both. This document is current as of the initial date of publication and may be changed by IBM at any time. Not all offerings are available in every country in which IBM operates. The performance data and client examples cited are presented for illustrative purposes only. Actual performance results may vary depending on specific configurations and operating conditions. THE INFORMATION IN THIS DOCUMENT IS PROVIDED AS IS WITHOUT ANY WARRANTY, EXPRESS OR IMPLIED, INCLUDING WITHOUT ANY WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND ANY WARRANTY OR CONDITION OF NON-INFRINGEMENT. IBM products are warranted according to the terms and conditions of the agreements under which they are provided. Please Recycle IMD14365-USEN-03