shishir349/Analyzing-the-Email-Opening-Rates
Before building an email marketing campaign, it’s important to define your goals so you know if your campaign will be a success. One of the most vital factors to consider is how many people read and engage with your emails. This is a great indicator to show if your efforts and resources are worth the investment.
This project helps marketers and small business owners understand the effectiveness of their email marketing campaigns. By analyzing basic email metrics like sends, opens, and clicks, it calculates key performance indicators such as open rates, click-through rates, and click-to-open rates. The output provides a clear picture of how well an email campaign engaged its recipients.
No commits in the last 6 months.
Use this if you need to quickly assess and understand the performance of your email marketing efforts and identify areas for improvement.
Not ideal if you need an advanced, predictive analytics tool or a complete email service provider dashboard for comprehensive campaign management.
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Jupyter Notebook
License
GPL-3.0
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Last pushed
May 25, 2020
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