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by James Corcoran
The data problem has not appeared overnight. It has been building for years, and not just in technology. When Thomas Jefferson was president, he received around 150 letters per month. One hundred years later, Theodore Roosevelt needed a dedicated staff of around 50 to handle the increased volume. By Harry Truman’s time, it was arriving at a rate of three truckloads per day. Current volumes are in the order of 65,000 letters (yes, still letters) per week – not to mention the emails, tweets, and social media posts that go along with them – and that’s the data volume challenge that everyone faces.
But as well as increasing in volume, data has become more valuable, and the decisions based on it are more critical – just think of backtesting & trading model calibration, predictive healthcare, anomaly detection, predictive maintenance & operational equipment efficiency, and pre-and post-trade analytics. And that’s before you consider what machine learning may reveal in terms of trends or patterns, which, depending on how quickly you find them, could either yield opportunity – or spell disaster.
But many companies in all industry sectors are not actually gaining those insights. They are too focused instead on solving technical problems around their data than uncovering valuable information with it. And the main reason why this is happening is that their time series database and real-time analytics software aren’t up to the demands being placed on them. Here are five must-haves for any modern real-time analytics engine:
Data has evolved. It is now an asset (it has C-Level owners), it automates decisions (in trading, production, and networks), it has value (you pay, handsomely, for it), it is temporal (today’s confidential information may be tomorrow’s public news), it is structured, it is unstructured, it is complicated. But, as everyone knows, there are many benefits that businesses can reap from continuous, context-rich data analytics-driven insights.
Real-time analytics using time series data can deliver better business decisions, enable enterprises to react faster to market changes, increase customer satisfaction, and improve their bottom line, providing they have the right technology in place.