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Articles

Artificial Intelligence Driven Sales-Force Optimisation: Enhancing Productivity, Forecasting and Customer Engagement

by Alumni Relations Office
Research by: Sandeep Puri, & Shweta Pandey

Abstract

This paper reviews the expanding literature on AI’s role in sales-force effectiveness, spanning lead generation, customer relationship enhancement, forecasting accuracy, personalised selling, team management and emerging applications such as generative artificial intelligence (AI) and reinforcement learning. Building on empirical studies that demonstrate up to 30 per cent gains in lead qualification, 20 per cent improvements in forecast accuracy, and notable productivity increases from AI-driven coaching and dynamic pricing, it highlights technological capabilities and ethical challenges around data quality, algorithmic bias and governance. Managerial implications emphasise the need for robust data infrastructure and phased AI deployment via pilot projects, cross-functional collaboration and continuous upskilling; they also underscore the importance of explainability and human—AI collaboration to maintain trust and strategic alignment. Concluding with practical guidance, the paper argues that organisations integrating AI responsibly, balancing innovation with ethical oversight, will secure competitive advantages, while setting an agenda for future research on sustainable, human-centred AI in sales management.
Keywords: artificial intelligence; AI; sales-force effectiveness; sales forecasting; sales team management; sales-force productivity
 
To cite this article:
Puri, S., & Pandey, S. (2025). Artificial intelligence driven sales-force optimisation: Enhancing productivity, forecasting and customer engagement. Applied Marketing Analytics, 11(2). https://doi.org/10.69554/CPZQ71574
 
To access the article:https://doi.org/10.69554/CPZQ71574
 

About the Journal

Applied Marketing Analytics is a leading professional journal that publishes in-depth, peer-reviewed articles focused on the measurement and analysis of marketing performance to enhance effectiveness and strategic impact.

The journal maintains a strict no-advertising policy, and all content undergoes rigorous peer review to ensure it delivers practical, actionable insights for marketing professionals and decision-makers.
Publisher
Henry Stewart Publications LLP
Review System
Peer-reviewed
Chartered Association of Business Schools Academic Journal Guide 2024
NA
Scimago Journal & Country Rank
h-index: 7 | SJR 2024: 0.181
Scopus
Citescore 2024: 1.0
Australian Business Deans Council Journal List
NA
Journal Citation Reports (Clarivate)
NA

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