ayush1997/YouTube-Like-predictor
YouTube Like Count Predictions using Machine Learning
This tool helps content creators, marketers, or social media strategists predict how many likes a YouTube video will receive. You input a list of YouTube video IDs, and it outputs a predicted like count for each video, along with the difference and error rate. This allows you to estimate audience engagement before or after publishing content.
147 stars. No commits in the last 6 months.
Use this if you need to quickly estimate the potential like count for YouTube videos to gauge their likely performance or compare engagement.
Not ideal if you need real-time predictions for a very large number of videos or require predictions for metrics beyond just likes.
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Last pushed
Mar 12, 2019
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