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Crunching Massive Numbers The value of high-performance computing in analytics grows. | Published August 1, 2005 Since John Mauchly and John Presper Eckert Jr. introduced the world’s first electronic general-purpose data-processing computer in 1945, high-performance computing (HPC) has fundamentally changed the world of mathematics and statistics. Since the introduction of the Electronic Numerical Integrator and Computer (ENIAC) so many years ago, supercomputers have also been instrumental in helping scientists and researchers perform complex analytics. Without this combination, we’d be hard pressed to perform complex calculations, such as predicting tomorrow’s weather, very quickly. The following is a brief discussion about the evolution of HPC and its influence on analytics. The Advent of Super Computing A supercomputer is a computer that can process hundreds of millions of math calculations per second. Today, many supercomputers sit right on your desk, bringing with them an entirely new paradigm for high-performance computing. In 1945 though, the ENIAC occupied 1,800 square feet of space and weighed more than 60,000 pounds. It contained a few thousand vacuum tubes that had to be replaced each month by technicians. Among ENIAC’s first computing tasks was calculating ballistic data (plane height, target distance, wind velocity, bomb weight, etc.) to produce firing tables for the US government. Mauchly, a physicist, and Eckert, an engineer, soon replaced the ENIAC with the Universal Automatic Computer (UNIVAC), which became the first supercomputer available for commercial applications. By 1957, more than 40 UNIVACs were in use across the country.
Clustering and Grid Computing Today, scientific labs and businesses can access supercomputing power through clustering and potentially grid computing. This fundamental shift has helped fuel the growth of business analytics—the ability to apply advanced analysis and visualization techniques to real-world business problems. Once only available to the supercomputing arena, this practice has led to timely, insightful, sophisticated, and accurate decision making. The genesis occurred in 1996 when a group of physicists at IBM performed one of the largest single calculations ever. They solved one trillion mathematical subproblems by running more than 400 computers continuously for two years. Essentially these physicists used clustering—the practice of linking similar desktop systems on the same platform with high-speed bandwidth between processors—to improve time-to-analysis. Today, companies requiring advanced analytics are doing the same. They are achieving high-performance computing power by clustering; a much more cost-effective practice than purchasing a supercomputer.
Without HPC, Forget Timely Advanced Analytics No matter whether you use a traditional supercomputer, a cluster, or a grid, high-performance computing is essential to sophisticated analytics in science, engineering, and business. As data set sizes grow exponentially, high processing power is required to manage the complexity of the data by processing large and complex data sets simultaneously and quickly. That way, uncovered information remains useful for timely decision-making. This essential part of high-performance computing is called parallel processing. Without it, many of the advantages of cluster and grid computing would be lost. The larger and more complex the data set, the more important high-performance computing is to obtaining fast results. For example, let’s say you need to analyze terabytes of weather data to determine when the next hurricane might hit Florida. Without adequate computing power, bandwidth, processing speed, and the ability to simultaneously process the data, the results might take days or even weeks to complete. By that time, the hurricane will have come and gone, and the data will be useless.
New Kids on the Supercomputing Block For the first time in the US, we are seeing commercial services like banks using high-performance computing. Higher speeds mean faster analytics for their customers, and they remain competitive. This year, for example, CS First Boston was the first financial services company ever named on the Top 500 Supercomputer Sites for 2004. In China, we are also seeing tremendous growth in high-performance computing and analytics in just the last few years. While China still lags behind the US, it is rapidly gaining ground in the areas of oil, gas, and aerospace. Chinese universities and research centers are buying individual computers for clustering as well as supercomputers from Hewlett-Packard and IBM, the most dominant hardware vendors in Asia. But since 80 to 90 percent of China’s IT budgets go toward hardware, they have been developing the analytic software and mathematical and statistical libraries themselves to cut down costs. Now they are starting to realize the value and time savings of buying analytic software and numerical libraries that are already fully hardware compatible. At this year’s SC 05 SuperComputing conference (November 12-18) in Seattle, more software vendors are expected to exhibit than ever before. In addition, a new initiative is emerging called HPC Analytics, which is at the forefront of promoting advanced analytics in high-performance computing. This year, SC 05 is offering the first annual HPC Analytics Challenge. The number of submissions has been high and ranges from scientific research at national laboratories to the music industry.
The Future In the next five years as high-performance computing becomes cheaper and easier to manage, and as company data grows exponentially, we will see more commercial enterprises using supercomputing capabilities in new computing configurations to process and analyze mountains of information. As supercomputing evolves, so will analytics. And in the next 10 years, even "mom and pop" shops will be able to perform advanced predictive analytics to gain better insight into their customers and their future.
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