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The Need For Speed - How Real-Time Data and Analytics Are Pushing the Boundaries of Efficiency

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The Challenges of Real-Time Data Analytics Becoming a data-driven company can be a difficult journey -- fraught with frustration and uncertainty. Businesses continue to struggle to capture, manage and leverage the value of their data. And when it comes to analytics -- any kind of analytics -- there is nothing more important than the data being used in analytics. And bad data can lead to bad decision-making. Data Strategy To make sure data is truly used as a company asset, a data strategy needs to be put in place. This framework provides a common set of goals and objectives across projects to make sure data is used effectively and efficiently and supports the overall goals and needs of the organization. The bad news: In a 2021 survey by Cognopia, a data transformation and consulting firm, reported that more than two-thirds of firms still did not have a data strategy in place, and a third had no dedicated budget to improve their data. The good news: 53% of the survey participants reported they were in the process of drafting a data strategy now." Neil Burge, CEO of Cognopia, offers a pragmatic solution. "Align your data strategy against business strategic goals," he says. "This enables you to justify investments in data that directly support critical business objectives. Link the dollar values together to get executives interested." Data Governance Data governance helps set the foundation for how a company's data is used, accessed, managed, and protected. Effective data governance drives better data analytics which helps drive better decision making and operational support across the entire organization. According to McKinsey, the challenge starts with management. THE NEED FOR SPEED | 9 Analytics 3.0 Advanced Analytics - The first two decades of the 21st century observed the rise of artificial intelligence (AI), machine learning (ML) and robotic process automation (RPA). These newer, more agile, and advanced analytic tools could produce insights at a much faster rate than ever before. During this time, data analytics comes to the forefront of business initiatives, with bigger budgets and bigger roles -- including the advent of the Chief Data Officer and Chief Analytics Officer. More importantly, technology and business leaders are now working hand in hand to drive greater value in the company's operations. Analytics 4.0: Automated & Embedded - This phase of analytics is still in its infancy. It is largely defined by increased process automation and data analytics that are now embedded in individual business tasks. You will now find data analytics integrated within the operational and transactional processes of key departments in the organization -- including sales and marketing, human resources, finance, and claims.

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