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One of those areas is called predictive analytics, where companies extract information from existing data to determine buying patterns and forecast future trends. In this blog post, we are going to cover the role of business intelligence in demand forecasting, an area of predictive analytics focused on customer demand.
2) Sales Target (Actual Revenue vs Forecasted Revenue). A sales growth chart for perfecting small businessanalytics and large enterprise alike, looking to scale and remain relevant rather than sporadically making flurries of quick sales. The second in our rundown of sales chart examples hones in on sales targets.
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If your role in business demands that you stay abreast of changes in businessanalytics, you are probably familiar with the term Smart Data Discovery. You may also have read the recent Gartner report entitled, ‘Augmented Analytics Is the Future of Data and Analytics’ , Published 27 July 2017, by Rita L.
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Data Smart’ contains enough practical knowledge to actually start performing analyses by using good old Microsoft Excel. Boasting inspiring real-world examples and a comprehensive glossary of terms, this data analysis book is a must-read for anyone looking to embark on a lifelong journey toward analytical enlightenment.
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