daddydrac / Machine-Learning-For-Predictive-Lead-ScoringLinks
Predictive Lead Scoring does all the hard work for you by leveraging Machine Learning to provide your sales and marketing team with in-depth customer knowledge and ways to target the hottest and most qualified leads – resulting in saved time and higher revenue streams.
☆104Updated last year
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