In-Memory Databases/In-Memory Analytics

The appeal of in-memory technology is growing as organizations face the challenges of handling and utilizing big data. There are compelling technical advantages to having an in-memory database, but the business benefits can be far-reaching, as the knowledge gained from analytics means that a data-driven business can closely engage with and anticipate the needs of customers and markets. This paper provides a look at the benefits of in-memory technology for dealing with big data and short overviews of in-memory/analytics solutions by five of the major vendors in the space.

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Databases and ERP Selection: Oracle vs. SQL Server

  • Source: IFS
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The database is an essential component of enterprise applications such as enterprise resource planning (ERP) and enterprise asset management (EAM). This white paper outlines the advantages and disadvantages of the Oracle and Microsoft SQL Server database platforms. How do the two compare when it comes to reliability, scalability, and total cost of ownership (TCO) when integrated with enterprise software? Read More

Comparing the Total Cost of Ownership of Business Intelligence Solutions

  • Source: Birst
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For many companies, traditional business intelligence (BI) software is costly and resource-intensive. So are open source alternatives that require significant configuration and integration. In contrast, software-as-a-service (SaaS) solutions can reduce the cost of a BI deployment by providing automation and pre-integration. Compare total cost of ownership (TCO) for traditional, open source, and SaaS BI solutions. Read More

Delivering Information Faster: In-Memory Technology Reboots the Big Data Analytics World

  • Source: SAP
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In-memory technology—in which entire datasets are pre-loaded into a computer’s random access memory, alleviating the need for shuttling data between memory and disk storage every time a query is initiated—has actually been around for a number of years. However, with the onset of big data, as well as an insatiable thirst for analytics, the industry is taking a second look at this promising approach to speeding up data processing. See how it works and how to revolutionize the way you run your business.  Read More

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Prepare for the Quantum Leap in Real-time Analytics: How In-memory Analytics Is Going to Change Everything about Your Enterprise

  • Source: SAP
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For business leaders facing the radical, disruptive change represented by in-memory analytics, the response may range from enthusiasm and advocacy to apprehension and fear. Regardless of your particular posture, the smart company needs to understand how in-memory works and what it represents, and craft a purposeful roadmap for their in-memory future. Download this primer on in-memory analytics to learn what it all means for you. Read More

Blending Transactions and Analytics in a Single In-Memory Platform: Key to the Real-Time Enterprise

  • Source: SAP
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This white paper discusses the issues involved in the traditional practice of deploying transactional and analytic applications on separate platforms using separate databases. Rather than using separate transactional and analytical applications built on separate platforms, a single data management environment for both systems of record and systems of decision would yield numerous benefits. These include real-time data analysis and accelerated decision making, and the potential to transform and innovate the business.  Read More

Delivering Information Faster: In-Memory Technology Reboots the Big Data Analytics World

  • Source: SAP
  • Written By:
  • Published:
In-memory technology—in which entire datasets are pre-loaded into a computer’s random access memory, alleviating the need for shuttling data between memory and disk storage every time a query is initiated—has actually been around for a number of years. However, with the onset of big data, as well as an insatiable thirst for analytics, the industry is taking a second look at this promising approach to speeding up data processing. See how it works and how to revolutionize the way you run your business.  Read More
 
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