AI+ Sales (AIS) – Perfil
Esquema Detallado del Curso
Module 1: Introduction to Artificial Intelligence (AI) in Sales
- 1.1 Fundamentals of AI
- 1.2 Historical Journey and Evolution of AI in Sales
- 1.3 AI Tools & Technologies Transforming Sales
- 1.4 Benefits and Challenges in Adoption of AI in Sales
- 1.5 Real-world Examples and Applications of AI in Sales
- 1.6 Future of AI in Sales
Module 2: Understanding Data in Sales
- 2.1 Categories of Sales Data
- 2.2 Techniques for Effective Data Collection
- 2.3 Basics of Data Analysis and Interpretation
- 2.4 Data Management Methods
- 2.5 Data Protection Principles
- 2.6 Data Integration in CRM Systems
- 2.7 Overview of Analytical Tools
- 2.8 Ethical Use of Sales Data
- 2.9 Case Studies: Real-World Data Applications
Module 3: AI Technologies for Sales
- 3.1 Introduction to Machine Learning in Sales
- 3.2 Predictive Analytics: Forecasting Sales Trends
- 3.3 NLP: Enhancing Customer Interactions
- 3.4 Chatbots: Automating Customer Service
- 3.5 Segmentation: Tailoring Customer Experiences
- 3.6 Personalization: Customizing Sales Approaches
- 3.7 Recommendation Engines: Driving Product Suggestions
- 3.8 Sales Automation: Streamlining Sales Processes
- 3.9 Performance Analysis: Measuring Sales Effectiveness
Module 4: Implementation of AI in CRM Systems
- 4.1 Foundation of CRM Systems
- 4.2 AI Integration into CRM Systems
- 4.3 Lead Scoring
- 4.4 Customer Insights
- 4.5 Sales Automation
- 4.6 Personalized Communication
- 4.7 Chatbots in CRM
- 4.8 Gaining Actionable Insights from Data
- 4.9 Case Studies
Module 5: Sales Forecasting with AI
- 5.1 Introduction to Sales Forecasting
- 5.2 Overview of Predictive Models in Forecasting
- 5.3 Data Preparation for Analysis
- 5.4 Identifying Sales Patterns and Trends
- 5.5 Enhancing Forecast Reliability
- 5.6 Key Forecasting AI Tools in AI
- 5.7 Utilizing Real-time Data for Forecasts
- 5.8 Developing Forecasts for Different Outcomes
- 5.9 Measuring the Success of Sales Forecasts
Module 6: Enhancing Sales Processes with AI
- 6.1 Task Automation
- 6.2 AI-driven Email Marketing
- 6.3 Social Media with AI Analytics
- 6.4 AI-powered Lead Generation
- 6.5 Customer Segmentation
- 6.6 Optimizing Sales Visits and Calls
- 6.7 Tailoring Content with AI Insights
- 6.8 Real-time Sales Activity Monitoring
- 6.9 Upselling and Cross-selling with AI
Module 7: Ethical Considerations and Bias AI
- 7.1 Ethical Use of AI in Sales
- 7.2 Bias Identification in AI Systems
- 7.3 Bias Mitigation
- 7.4 Transparency in AI Decision-Making
- 7.5 Accountability for AI Actions
- 7.6 Safeguarding Customer Data
- 7.7 Regulatory Compliance
- 7.8 Building Customer Trust through Ethical AI
- 7.9 Anticipating Ethical Issues in AI Advancements
Module 8: Practical Workshop
- 8.1 Scenario-Based Exercises
- 8.2 Addressing Sales Challenges with AI
- 8.3 Collaborative AI Implementation Plans