Design and Deployment of ML in CRM to Identify Leads

In today’s era, organizations are increasingly prioritizing process automation to optimize efficiency and drive sales. One area where Machine Learning (ML) techniques can be particularly valuable is in automating tasks such as lead classification for sales. In Jupyter Notebooks, logistic regression...

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Main Authors: Alonso Yocupicio-Zazueta, Agustin Brau-Avila, Federico Cirett-Galán, Margarita Valenzuela-Galván
Format: Article
Language:English
Published: Taylor & Francis Group 2024-12-01
Series:Applied Artificial Intelligence
Online Access:https://www.tandfonline.com/doi/10.1080/08839514.2024.2376978
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author Alonso Yocupicio-Zazueta
Agustin Brau-Avila
Federico Cirett-Galán
Margarita Valenzuela-Galván
author_facet Alonso Yocupicio-Zazueta
Agustin Brau-Avila
Federico Cirett-Galán
Margarita Valenzuela-Galván
author_sort Alonso Yocupicio-Zazueta
collection DOAJ
description In today’s era, organizations are increasingly prioritizing process automation to optimize efficiency and drive sales. One area where Machine Learning (ML) techniques can be particularly valuable is in automating tasks such as lead classification for sales. In Jupyter Notebooks, logistic regression was utilized to design and to train a model to accurately predict whether a lead will convert into a client or not. Then, in Azure Machine Learning Studio which is a Machine Learning Operations platform (MLOps), the Two-Class Logistic Regression algorithm was used to design a pipeline, train a model, and deploy a web service, which is consumed by Salesforce system through an Apex code. The web service receives the variables of a particular lead record and then returns the prediction as a numeric ranking. By leveraging these ML techniques, firm’s resources can strategically be focused for maximum effectiveness. Overall, our work involves a C# windows application to extract CRM marketing interactions, leveraging the power of ML, a logistic regression model in AML and Apex code. This approach enables us to drive efficiency, enhance sales outcomes, and allocate resources more effectively.
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publishDate 2024-12-01
publisher Taylor & Francis Group
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series Applied Artificial Intelligence
spelling doaj-art-e600555f1d0b4b5c845924c1d2d502bc2025-08-20T02:36:22ZengTaylor & Francis GroupApplied Artificial Intelligence0883-95141087-65452024-12-0138110.1080/08839514.2024.2376978Design and Deployment of ML in CRM to Identify LeadsAlonso Yocupicio-Zazueta0Agustin Brau-Avila1Federico Cirett-Galán2Margarita Valenzuela-Galván3Industrial Engineering Department, Universidad de Sonora, Hermosillo, Sonora, MexicoIndustrial Engineering Department, Universidad de Sonora, Hermosillo, Sonora, MexicoIndustrial Engineering Department, Universidad de Sonora, Hermosillo, Sonora, MexicoIndustrial Engineering Department, Universidad de Sonora, Hermosillo, Sonora, MexicoIn today’s era, organizations are increasingly prioritizing process automation to optimize efficiency and drive sales. One area where Machine Learning (ML) techniques can be particularly valuable is in automating tasks such as lead classification for sales. In Jupyter Notebooks, logistic regression was utilized to design and to train a model to accurately predict whether a lead will convert into a client or not. Then, in Azure Machine Learning Studio which is a Machine Learning Operations platform (MLOps), the Two-Class Logistic Regression algorithm was used to design a pipeline, train a model, and deploy a web service, which is consumed by Salesforce system through an Apex code. The web service receives the variables of a particular lead record and then returns the prediction as a numeric ranking. By leveraging these ML techniques, firm’s resources can strategically be focused for maximum effectiveness. Overall, our work involves a C# windows application to extract CRM marketing interactions, leveraging the power of ML, a logistic regression model in AML and Apex code. This approach enables us to drive efficiency, enhance sales outcomes, and allocate resources more effectively.https://www.tandfonline.com/doi/10.1080/08839514.2024.2376978
spellingShingle Alonso Yocupicio-Zazueta
Agustin Brau-Avila
Federico Cirett-Galán
Margarita Valenzuela-Galván
Design and Deployment of ML in CRM to Identify Leads
Applied Artificial Intelligence
title Design and Deployment of ML in CRM to Identify Leads
title_full Design and Deployment of ML in CRM to Identify Leads
title_fullStr Design and Deployment of ML in CRM to Identify Leads
title_full_unstemmed Design and Deployment of ML in CRM to Identify Leads
title_short Design and Deployment of ML in CRM to Identify Leads
title_sort design and deployment of ml in crm to identify leads
url https://www.tandfonline.com/doi/10.1080/08839514.2024.2376978
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AT margaritavalenzuelagalvan designanddeploymentofmlincrmtoidentifyleads