Analytics helps the bank minimize losses and handle new growth opportunities for its loan portfolio.
with grid computing
Modeling portfolio credit risk is a fundamental function in banking today. Loan products, such as lines of credit, mortgages and credit cards, entail a high degree of risk for banks, and on a large scale, especially in turbulent economic periods – defaults produce difficult situations and huge implications for both the lender and the borrower.
Banks regularly employ credit-risk management processes to monitor and assess credit portfolios, to make certain estimates, and to understand their risk position and value of assets at any given time. In today's complex and ever-changing financial system, powerful, rigorous and accurate credit-risk management processes and technology play a critical role in mitigating a lending institution's exposure.
With approximately 59 million consumer and small business relationships, 6,000 retail banking offices and more than 18,000 ATMs, Bank of America is among the world's leading wealth management companies and is a global leader in corporate and investment banking and trading across a broad range of asset classes.
The Corporate Investments Group (CIG) manages Bank of America’s available-for-sale portfolio and is responsible for modeling and calculating the probability of default (PD) on the 9.5 million mortgages it services. In addition, the group calculates the market value, prepayment speeds and sensitivity to changes in interest rates and hedges these risks for the $19 billion mortgage-service-rights asset. Recently, CIG began assisting with the task of forecasting loan losses for the bank’s credit card portfolio.
Without SAS, processing times would be longer, hedging decisions would be delayed and, ultimately, the bank would be behind the market. Russell Condrich Senior Vice President, Corporate Investment Group Bank of America
The need for speed
CIG had been using analytics from SAS for credit-risk modeling for many years, but with the addition of the credit-card loss forecasting responsibility, it was forced to reassess its use of an internal shared-services environment to run its modeling and calculation processes. Doing so would help reduce processing time, increase access and availability of resources for ad hoc analysis, while ensuring business continuity for this mission-critical function of the bank's business.
"We needed a solution that addressed today's business problems, as well as a solution with the flexibility for any future business requirements," says Russell Condrich, Senior Vice President, Corporate Investment Group. "Processing large, multi-terabyte datasets in a quick, efficient manner was a key requirement for us and SAS performed flawlessly. Without SAS, processing times would be longer, hedging decisions would be delayed and, ultimately, the bank would be behind the market."
SAS and IBM show results
To meet its performance requirements, the group moved its processing to a dedicated platform comprised of SAS®Enterprise Risk Management on SAS® Grid Computing, SAS® Scalable Performance Data Server on a 224 core IBM BladeCenter® grid and the IBM's XIV® Storage System. The initiative has already produced considerable results, such as reducing the bank's probability of default calculation time from 96 hours to just four. Processing time for ad hoc jobs has been reduced by 90 percent and, according to the CIG, they are processing at three times the speed of the previous environment.
The platform pulls data from eight systems of record (SOR), amounting to hundreds of millions of records, or 30 terabytes of source data, and allows the SAS environment to consume 3.9 gigabytes of I/O throughput per second from IBM's XIV storage environment. Approximately 30 users now have unfettered access to the environment, as opposed to the shared services environment of the past, in which user time was competitive and response times varied dramatically due to the high number of jobs being executed.
Bank of America – Facts & Figures
Consumer and small business customers
Mortgages requiring loan default calculations
Faster calculations of loan default probability
"We now have an environment that provides users with a robust platform on which to schedule and prioritize jobs, based on duration or computational requirements, so that ad hoc usage is not competing with scheduled work," says Stephen Lange, Managing Director, Corporate Investments Group. "This advanced grid platform is giving us unparalleled performance. SAS is indispensable for its unique way of handling large data sets."
As an example, Lange adds, "we have to score a particular portfolio of 400,000 loans with our suite of models, using multiple scenarios, and we need to run it over the 360 months of the mortgages' life. That process used to take three hours, now it takes 10 minutes because of the parallelization capabilities of the grid. The ability to go from three hours to 10 minutes on a job demonstrates a tremendous increase in our ability to deliver information and make decisions."
“The bank has a strong desire to enable loss forecasting as accurately and quickly as possible, right up to the senior executive layers of the organization,” says Lange. “The only way we can do that is to have sufficient IT resources to score loans and appropriately assess risks. The partnership between SAS, IBM and our internal technology group has provided a platform for us to demonstrate risk management leadership.”