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Rasulgarh, Bhubaneswar, Odisha, PIN: 751010

contactus@astarpublication.us

Important Date

Opening of Paper Submission site : 1st May 2025
Last Date of Paper Submission: 30th June, 2025
Notification of Acceptance/Rejection: 16th August, 2025
Camera Ready Submission: 30th September, 2025
Last Date of Registration: 31st October, 2025
Conference date: 21st-22nd, November 2025
Call for Papers

This premier event serves as a vital platform for global stakeholders to collaborate, share knowledge, and explore how cutting-edge AI technologies are transforming sales and marketing practices worldwide. AISM-205 aims to accelerate digital transformation by bridging the gap between advanced AI innovations and practical business applications. The conference is dedicated to discussing emerging trends, addressing current challenges, and showcasing how intelligent automation and data-driven insights are revolutionizing customer acquisition, engagement, and retention in a competitive global market. AISM-205 invites scholars, practitioners, and industry experts to contribute original research, case studies, and thought-provoking insights. Whether your focus is on enhancing sales pipelines, revolutionizing marketing communications, or exploring the ethical dimensions of AI, this conference offers a fertile ground for discussion and collaboration—paving the way for a future where intelligent technologies drive business success and innovation.

AISM-2025 invites original work from the following list of topics but is not limited to:

1. AI-Driven Sales and Marketing Strategies

  • Leveraging machine learning algorithms for advanced customer segmentation
  • Automated lead generation and scoring using AI models
  • Real-time data analytics for on-the-fly decision-making
  • Personalized communication strategies using customer behavioral data
  • Dynamic pricing models based on AI-driven market insights
  • Optimizing sales funnels with predictive lead conversion metrics
  • AI-driven competitor analysis for strategic market positioning
  • Adaptive campaign management using reinforcement learning
  • Integrating cross-channel data for unified customer profiles
  • Sentiment tracking and adjustment of sales messaging in real time
  • Optimizing resource allocation through AI-powered forecasting
  • Customizable dashboards for monitoring sales performance
  • Leveraging AI for upselling and cross-selling opportunities
  • Automated follow-up processes driven by machine learning
  • Enhancing sales training programs with predictive success models

2. Predictive Analytics and Customer Insights

  • Sales forecasting through historical data and machine learning
  • Real-time trend analysis to identify emerging customer needs
  • Multivariate analysis for better understanding consumer behavior
  • Integration of social media data to enhance sentiment analysis
  • Predictive modeling for customer lifetime value estimation
  • Analysis of demographic and psychographic data for targeted marketing
  • Identifying purchasing patterns through advanced analytics
  • AI-driven anomaly detection in consumer buying behaviors
  • Leveraging natural language processing for unstructured feedback analysis
  • Combining internal and external data sources for holistic insights
  • Visual analytics tools for intuitive data interpretation
  • Predictive maintenance of sales pipelines based on predictive signals
  • Dashboard customization for segmented performance monitoring
  • Customer journey mapping with AI for seamless experiences
  • Forecasting market trends using ensemble learning techniques

3. AI-Powered Content Creation and Engagement

  • Generative AI for automated personalized content production
  • Natural language processing to refine and optimize messaging
  • Automated graphic design and multimedia content generation
  • Hyper-personalization of email marketing content through AI
  • Adaptive storytelling techniques based on audience engagement data
  • Dynamic content testing and A/B optimization in real time
  • Chatbot-driven content interactions to enhance user experience
  • Customization of landing pages using behavioral insights
  • Voice-assisted content engagement through smart devices
  • Video content personalization driven by machine learning algorithms
  • Integration of influencer-generated content with AI analytics
  • Social media post scheduling and optimization based on predictive trends
  • User-generated content curation using AI sentiment analysis
  • Automated content recommendation systems tailored for individual users
  • Developing narrative frameworks for brand storytelling using AI insights

4. Enhancing CRM and Customer Interaction with AI

  • Intelligent CRM systems that integrate customer data and AI insights
  • AI-based chatbots for 24/7 customer support and engagement
  • Predictive analysis to drive proactive customer service
  • Real-time personalization of customer interactions across channels
  • Integration of voice assistants into the CRM ecosystem
  • Automated customer feedback collection and analysis
  • Sentiment analysis for real-time adjustment of communication strategies
  • Customized loyalty programs developed through AI insights
  • AI-driven escalation protocols for handling high-priority customer issues
  • Virtual sales assistants to support on-demand customer inquiries
  • Enhanced data segmentation for more precise targeting in CRM systems
  • Cross-functional integration of CRM with marketing automation tools
  • Real-time tracking of customer engagement metrics for agile responses
  • Intelligent scheduling for customer follow-ups and relationship nurturing
  • Multi-channel interaction tracking and unified customer view

5. Ethical and Responsible AI in Sales and Marketing

  • Ensuring algorithmic transparency in AI-powered marketing systems
  • Regular audits to mitigate bias in predictive models
  • Data privacy protection strategies in compliance with GDPR and CCPA
  • Establishing ethical guidelines for AI-driven customer targeting
  • Balancing automation with human oversight in decision-making
  • Accountability frameworks for AI system errors in customer engagement
  • Transparent data sourcing and consent processes for customer data
  • Mitigating ethical risks in automated personalized marketing
  • Strategies for handling sensitive customer data responsibly
  • Developing fair and unbiased customer segmentation methodologies
  • Corporate policies for responsible AI usage and governance
  • Incorporating ethics training in AI and data analytics teams
  • Ensuring compliance with international data protection regulations
  • Public trust and transparency measures in AI-driven campaigns
  • Best practices for cross-industry collaboration on ethical AI standards

6. Digital Transformation and Emerging AI Technologies

  • Integration of AI with augmented and virtual reality experiences
  • Leveraging the Internet of Things (IoT) for connected sales strategies
  • Exploring blockchain technology for transparent transactions
  • Real-time marketing integrations powered by 5G and edge computing
  • AI applications in mobile marketing and personalized app experiences
  • Using wearables and smart devices for enhanced customer engagement
  • Cloud-based AI solutions for scalable marketing automation
  • Incorporating robotics and automation into physical retail environments
  • Advanced API integrations to connect disparate digital marketing tools
  • Emerging trends in voice search and smart assistant marketing
  • AI-powered virtual events and digital trade shows for lead generation
  • Innovations in geolocation-based marketing through AI analytics
  • Automated influencer marketing campaigns using data-driven insights
  • Future-proofing digital ecosystems with continuous AI innovations
  • Combining human creativity with AI automation in hybrid marketing solutions