Predictive lead scoring for corporate loan data
-
Updated
Apr 28, 2018 - Jupyter Notebook
Predictive lead scoring for corporate loan data
Fixed few things of https://github.com/PredictionIO/template-scala-parallel-leadscoring so you can run locally
Trained a model that estimates if a lead is likely to be converted based on lead behavior in historical customer data using ML.
X Education has appointed you to help them select the most promising leads, i.e. the leads that are most likely to convert into paying customers.
Lead Scoring Case Study using Logistic Regression
Lead Scoring is such a powerful metric when it comes to quantifying the lead & it is nowadays used by every CRM. In this repository, we are going to take a look at the UpGrad lead scoring case study and see how can we solve this problem through several supervised machine learning models.
Request a quote is designed for small business owners to receive inquiry or quote requests from customers.
We perform batch inference on lead scoring task using Pyspark.
Lead scoring is an effective lead prioritization method used to rank prospects based on the likelihood of converting them to customers. This repository aimed to develop an automatic lead scoring through logistic regression technique. Stepwise selection approach is used to identify and select important variables for the model.
Predict the lead score for who is most likely to convert into a paying customer.
Portfolio project: Machine learning automation project for online educational company. Lead scoring and segmentation models.
A Logistic Regression project
Building a end-to-end lead scoring machine learning example with Jupyter, Sagemaker, MLflow, and Booklet.ai.
An end-to-end enterprise-grade example of working a data science problem.
Logistic regression model to assign a lead score between 0 and 100 to each of the leads which can be used by the company to target potential leads
Lead-Scoring-Case-Study
Airflow Pipeline for Lead Scoring to Maximize Profit with retraining pipeline and Development experimentation using mlflow
Lead Scoring is such a powerful metric when it comes to quantifying the lead & it is nowadays used by every CRM. In this repository, we are going to take a look at the UpGrad lead scoring case study and see how can we solve this problem through several supervised machine learning models.
Lead scoring is a pivotal metric for assessing leads and has become a standard in contemporary CRM systems. Within this repository, we delve into how the lead scoring strategy helps solve customer conversion problem, exploring the application of various supervised machine learning models
Add a description, image, and links to the lead-scoring topic page so that developers can more easily learn about it.
To associate your repository with the lead-scoring topic, visit your repo's landing page and select "manage topics."