Predictive Lead Scoring with Python
Lead scoring is a methodology used by companies to prioritize leads based on their likelihood of converting into customers. It involves using data and predictive models to rank leads, allowing sales teams to focus on the most promising ones. To build an effective lead scoring model, it's crucial to understand the business context, stakeholders' needs, and available data. Key steps include collecting relevant data, training and iterating on predictive models, assessing performance using appropriate metrics, collaborating with stakeholders, and deploying the final model into production. Regular monitoring and iteration are necessary to ensure the model remains effective over time.
Company
Hex
Date published
Sept. 14, 2022
Author(s)
Pedram Navid
Word count
2629
Hacker News points
None found.
Language
English