Simplifying the Next Best Action Planning in Retail Using AI
Optimize Retail Sales With ZBrain
The Hurdles of Determining the Next Best Action
Determining the next best action to engage customers effectively remains challenging in the dynamic retail sector. Whether it’s recommending a product, sending personalized offers, or providing after-sales services, making the right move at the right time is crucial as it directly impacts customer satisfaction, loyalty, and, ultimately, the bottom line. In this context, ZBrain Flow simplifies the process of identifying and implementing the best next steps, offering a professional solution.
I. How ZBrain Flow Transforms the Next Best Action Process
ZBrain Flow automates the task of determining the most suitable actions tailored to individual customer behaviors and preferences. Here’s a time comparison for the process with and without ZBrain Flow:
Steps
|
Without ZBrain Flow
|
Time Without ZBrain Flow
|
With ZBrain Flow
|
---|---|---|---|
Data collection | Manual | ~6 hours | Automated |
Data segmentation and analysis | Manual | ~8 hours | Automated |
Action recommendation | Manual | ~8 hours | Automated |
Report finalization and review | Manual | ~2 hours | Manual |
Total | ~24 hours | ~5 hours |
The table clearly indicates that ZBrain reduces the time spent on identifying the next best action from approximately 24 hours to just 5 hours, providing retailers with a competitive edge in timely customer engagement.
II. Necessary Input Data
For ZBrain to deliver precise recommendations, it requires the following data:
Information Source
|
Description
|
Recency
|
---|---|---|
Retail CRM system | Purchase histories, customer profiles, and feedback | Always updated |
Online shopping cart data | Items browsed, added to cart, and wishlist | Last 30 days |
Loyalty program interactions | Points, redemptions, and customer engagement | Current cycle |
Email and ad interaction metrics | Click rates, open rates, and feedback | Last 3 months |
Past promotion responses | How customers responded to previous sales and offers | Last 6 months |
Social media behavior | Product likes, shares, and comments | Last 3 months |
III. ZBrain Flow: How It Works
Step 1: Data Acquisition and Exploratory Data Analysis (EDA)
ZBrain Flow automatically aggregates customer data, including purchase history, items wishlisted, social media behaviors and past promotion responses from diverse sources. An automated EDA is then conducted to uncover anomalies, missing values, and data patterns. This process extracts essential insights into customer behaviors, interactions, and purchasing patterns.
Step 2: Embedding Generation
Next, textual data, such as feedback, social media interactions, and email responses, undergo embedding processes to transform textual information into numerical representations. This conversion allows for the capture of semantic meanings and relationships among different data points. These embeddings hold essential sentiments and purchasing inclinations, readying the data for actionable insights extraction.
Step 3: Query Execution and Action Recommendation
When a retailer seeks a recommendation for the next best action, ZBrain sources the pertinent data. This data is combined with the retailer’s specific query and processed by the OpenAI Language Model (LLM) to craft actionable recommendations.
Using the refined embeddings, OpenAI LLM identifies potential opportunities, preferences, and the optimal next moves. From this data, it devises a tailored action plan designed to boost engagement and sales.
Step 4: Parsing and Final Report Generation
Upon formulating the next best action in text format, it undergoes detailed parsing. This process extracts and structures pivotal components like recommended products, promotion strategies, and engagement methods. ZBrain’s thorough parsing technique guarantees that the final recommendations are both data-driven and presented in a straightforward, actionable manner, ensuring that retailers can act swiftly and effectively.
By integrating data acquisition, EDA, embedding generation, recommendation formulation, and parsing, ZBrain presents retailers with the optimal next-best-action. This cohesive process ensures maximized customer engagement and increased sales potential.
Streamlined Retail Engagement and Sales Strategy
With the automation and valuable insights provided by ZBrain, retailers can make quick and precise decisions about their next steps. This results in heightened customer satisfaction, boosted sales, and a substantial competitive edge in the bustling retail industry. Trust ZBrain Flow to elevate your retail strategies and witness tangible growth in customer engagement and revenue.
Prompt:
Suggest the next best action to upsell the customer segment who is currently browsing winter coats.
Customer Segment Upsell Opportunity Analysis
Segment Profile
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Total Customers in Segment: 8,000
-
Average Order Value (AOV): $350
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Location: Primarily Northern Region of the United States
Current Behavior
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Segment members are currently browsing winter coats.
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Popular Products: “Luxury Wool Blend Winter Coat” and “Puffer Jacket with Detachable Hood.”
Upsell Opportunity Overview
Winter Coat Enthusiasts represent a valuable segment with a high propensity to make purchases. Capitalizing on their interest in winter coats presents an opportunity to increase AOV and maximize revenue.
Segment Insights
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Average Time Spent Browsing: 15 minutes
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Page Views Per Session: 10 pages
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Browsing Devices: 65% on mobile, 35% on desktop
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Preferred Brands: 50% prefer premium brands, 50% prefer value-for-money options
Upsell Recommendations
Recommendation
|
Description
|
Personalization
|
Benefits
|
---|---|---|---|
Bundle Deal | Offer bundle deals:
“Winter Essentials Combo” includes
|
Based on preferred brands and browsing history |
|
Loyalty Promo |
Offer loyalty program benefits:
|
Based on loyalty program, status, and browsing history |
|
Size & Fit Help |
Provide size and fit assistance:
|
Based on browsing devices |
|
Urgency Alert |
Create a sense of urgency:
|
Based on inventory levels and location preferences |
|
Expected Impact
By implementing these upsell recommendations tailored to the market can expect to see an increase in AOV, higher customer engagement, and improved customer satisfaction within the Winter Coat Enthusiasts segment.
Conclusion
Capturing the attention of Winter Coat Enthusiasts in the market with personalized upsell strategies can result in substantial revenue growth and stronger customer loyalty. By tailoring these recommendations to individual preferences, devices used for browsing, and inventory availability, the company can optimize its upsell efforts and create a win-win scenario for both the customers and the business.