The table below compares the two products on multiple parameters that a user would look at before making any decision. I thought of putting together a more in-depth view of how both these products compare to help in your buying decision. To make it simple, SPSS Statistics supports a more top-down, hypothesis-testing approach towards your data while SPSS Modeler allows the patterns and models hidden in the data to expose themselves, using a bottom-up, hypothesis generation approach. And users can now employ languages such as R and Python to extend modeling capabilities. SPSS Modeler offers multiple machine learning techniques - including classification, segmentation and association algorithms including out-of-the-box algorithms that leverage Python and Spark. It enables users to consolidate all types of data sets from dispersed data sources across the organization and build predictive models – all without the requirement of writing code. IBM SPSS Modeler is a visual, drag-and-drop tool that speeds operational tasks for data scientists and data analysts, accelerating time to value. And it's fast- handling tasks such as data manipulation and statistical procedures in a third of the time of many nonstatistical programs. The simple answer is that SPSS Statistics excels at making sense of complex patterns and associations- enabling you to draw conclusions and make predictions on your own or with open source integrations. One often comes across this question about which software to buy and what exactly is then the difference between both of them. Both applications were built to help business users perform complex statistical analysis to solve business and research problems quickly and efficiently. Both SPSS Statistics and Modeler enable users to build predictive models and execute other analytics tasks. IBM’s SPSS Software is an integrated family of products that primarily consists of SPSS Statistics, SPSS Modeler and SPSS Amos. Your ultimate guide to SPSS Statistics vs SPSS Modeler
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