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Performing an EDL exploratory data analysis on sales file for each year provided in csv format

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Python-Sales-Analysis

Performing an EDL exploratory data analysis on sales data containing sales files for each year provided in csv format. Worked on mainly these questions- Que1. What was the best month for sales? How much was earned that month? Que2. What city sold the most product? Que3. What time should we display advertisements to maximize the likelihood of customer’s buying product? Que4. What products are most often sold together? Que5. What product sold the most? Why do you think it sold the most?

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