Generative AI for Retail Analysts
Published 5/2025
Duration: 2h 54m | .MP4 1280x720, 30 fps(r) | AAC, 44100 Hz, 2ch | 767 MB
Genre: eLearning | Language: English
Published 5/2025
Duration: 2h 54m | .MP4 1280x720, 30 fps(r) | AAC, 44100 Hz, 2ch | 767 MB
Genre: eLearning | Language: English
1000+ GenAI Prompts for Retail Decision-Maker
What you'll learn
- Understand the core technologies powering Generative AI, including LLMs, diffusion models, and transformers, and how they apply to retail analytics.
- Gain access to a curated 1000+ expert-level prompts to drive innovation across every function of retail analytics.
- Differentiate between Generative AI and traditional Predictive AI, and identify their unique use cases in retail operations.
- Master the fundamentals of prompt engineering, including crafting effective prompts, using prompt chaining, and applying zero-shot, one-shot, and few-shot techn
- Develop and deploy reusable prompt templates for daily retail tasks such as customer segmentation, inventory planning, and pricing optimization.
- Generate customer personas, basket narratives, and churn-risk summaries using behavioral and transactional data.
- Create AI-generated product descriptions, shelf layouts, and category affinity reports to optimize merchandising strategy.
- Automate demand forecasting through stockout/overstock analysis, EOQ narratives, and external signal integration (e.g., weather, events).
- Simulate dynamic pricing strategies, auto-generate markdown plans, and evaluate campaign ROI using scenario-based prompts.
- Summarize customer sentiment from reviews and social media, and monitor competitor pricing using AI-generated reports.
- Auto-generate executive summaries, PowerPoint charts, and natural language dashboards from retail databases and Excel/CSV files.
- Deploy GenAI-powered chatbots and store assistants for operational tasks such as inventory lookup, shift scheduling, and FAQ handling.
- Integrate conversational bots with CRM and POS systems to support seamless, intelligent customer and employee interactions.
- Study real-world case examples from Amazon, Target, and Sephora demonstrating scalable Generative AI adoption.
Requirements
- Basic Understanding of Retail Operations
- Interest in AI and Automation
- No Programming Background Required
- Access to a Computer and Internet
Description
This course provides a comprehensive exploration of howGenerative AIis transforming the retail industry through intelligent automation, enhanced personalization, and real-time decision support. Participants will begin by understanding the foundational technologies behind Generative AI, includingLarge Language Models (LLMs),Diffusion Models, andTransformer architectures. Emphasis is placed on the role of Generative AI in modernretail data analytics, especially in contrast to traditionalpredictive AImethods.
Learners will master the art ofprompt engineering, including crafting effective prompts, usingzero-shot, one-shot, and few-shot learning, and deployingreusable prompt templatesfor daily analytics tasks. Through applied exercises, participants will use Generative AI to createcustomer personas, analyzebasket and journey data, and implementchurn predictionwith tailored messaging strategies.
The course then shifts to merchandising and inventory, where Generative AI is applied to generateproduct descriptions, identifysubstitution patterns, and optimizeshelf layouts. It also covers demand planning throughstockout/overstock simulations,EOQ and reorder point narratives, andforecasting with external signalssuch as weather and events.
Advanced modules focus onpricing and promotions, includingmarkdown strategy generation,dynamic pricing simulations, andcampaign ROI analysis. Sentiment analysis using LLMs,competitor pricing intelligence, andsocial media trend miningare also integrated to enhance competitive positioning.
Operationally, learners will auto-generateexecutive summaries,charts for dashboards, and query business data using natural language. Finally, the course explores the deployment ofAI-powered store assistants,FAQ bots, andCRM-integrated POS chatbotsto enhance in-store efficiency.
Case studies fromAmazon,Target, andSephorahighlight real-world applications, while a curated collection of1000+ Generative AI promptsequips learners to apply these methods across the retail analytics spectrum.
Who this course is for:
- Retail Analysts and Data Professionals Individuals working with sales, customer, or inventory data who want to enhance their analysis using Generative AI-powered insights and automation.
- Category Managers and Merchandisers Professionals responsible for product assortments, shelf layouts, and SKU-level decisions who seek to use AI for trend forecasting, substitution patterns, and pricing strategy.
- Marketing and CRM Specialists Teams focused on personalization, campaign planning, churn prevention, and customer engagement looking to deploy prompt-driven AI solutions.
- Store Managers and Operations Leaders Frontline retail professionals interested in automating store workflows using AI-powered assistants and improving decision-making through dashboard summaries.
- Business Intelligence (BI) and Reporting Teams Professionals responsible for creating reports, presentations, and dashboards who want to convert natural language into executive-ready analytics.
- Retail Strategy and Innovation Leads Individuals leading digital transformation or AI adoption projects in retail seeking practical, case-driven applications of Generative AI.
- Students and Job-Seekers in Retail Analytics Aspiring data professionals or students aiming to build job-ready skills in AI-powered analysis, forecasting, and reporting in the retail domain.
- Product Owners and Tech Teams in Retail Startups Innovators looking to rapidly prototype AI-based retail tools like chatbots, smart dashboards, or customer-facing virtual assistants.
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