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These skills include programming languages such as Python and R, statistics and probability, machine learning, datavisualization, and data modeling. This includes sourcing, gathering, arranging, processing, and modeling data, as well as being able to analyze large volumes of structured or unstructured data.
It is a powerful tool that can be used to automate many of the tasks involved in data analysis, and it can also help businesses to discover new insights from their data. It has a wide range of machine 6: Tableau Tableau is a datavisualization software platform that can be used to create interactive dashboards and reports.
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Summary: Pursuing a Microsoft Excel certification in India enhances career prospects by validating skills in Data Analysis and management. Certifications like MOS Excel Associate and Expert, along with DataAnalyst Associate, are available through authorized centres, offering structured learning and global recognition.
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