Pack-Size & Variant Mapping - Standardizing Product Variants Across 7 Leading Grocery Platforms

 Case Study   Pack Size & Variant Mapping   Standardizing Product Variants Across 7 Leading Grocery Platforms

Introduction

In today’s competitive digital grocery ecosystem, consistent product representation across platforms is critical for accurate pricing, assortment planning, and consumer trust. Grocery platforms often list the same product in multiple pack sizes, weights, or formats, making comparisons complex and error-prone. This case study explores how Actowiz Solutions successfully implemented Pack-Size & Variant Mapping to standardize product variants across seven leading grocery platforms.

By unifying disparate product listings into a normalized structure, Actowiz enabled seamless comparison of SKUs, pricing intelligence, and assortment visibility. The project focused on resolving inconsistencies in unit measurements, naming conventions, and variant formats across platforms like Amazon Fresh, BigBasket, Instacart, Walmart Grocery, Flipkart Grocery, Zepto, and Swiggy Instamart. The result was a robust, scalable data framework that empowered the client to achieve clarity, consistency, and actionable insights across the grocery commerce landscape.

About the Client

About The Client

The client is a global retail intelligence and analytics firm specializing in grocery, FMCG, and quick commerce insights. Their solutions are used by brands, category managers, and pricing teams to analyze market trends, competitive positioning, and assortment strategies. Operating at enterprise scale, the client aggregates data from multiple grocery platforms to deliver real-time intelligence to retailers and manufacturers.

A major challenge in their analytics offering was Mapping product variants across multiple grocery platforms while maintaining consistency and accuracy. With platforms like Amazon Fresh, BigBasket, Instacart, Walmart Grocery, Flipkart Grocery, Zepto, and Swiggy Instamart listing products differently, the client needed a standardized system to normalize pack sizes, weights, and variants. Their target market demanded reliable SKU-level insights to support pricing optimization, promotion analysis, and product benchmarking across regions and channels.

Challenges & Objectives

Challenges
  • Data inconsistency across platformsEach
  • grocery platform followed unique naming conventions for pack sizes, units, and variants, complicating cross-platform analysis.

  • Variant duplication and mismatch
  • The same SKU appeared as multiple variants due to differences in weight, quantity, or bundle descriptions.

  • Scalability issues
  • Manual normalization was not feasible across millions of SKUs and frequent catalog updates.

  • Accuracy in comparisons
  • Lack of Cross-platform pack size matching for grocery products led to flawed price and assortment insights.

Objectives
  • Build a unified product-mapping framework
  • The client aimed to standardize SKUs across Amazon Fresh, BigBasket, Instacart, Walmart Grocery, Flipkart Grocery, Zepto, and Swiggy Instamart.

  • Enable accurate price and pack-size comparison
  • Ensure that equivalent products were matched correctly across platforms.

  • Automate variant normalization at scale
  • Reduce manual effort and improve processing speed.

  • Enhance analytics reliability
  • Deliver trusted, SKU-level intelligence to enterprise customers.

Our Strategic Approach

Intelligent Normalization Engine

To enable Price & Pack-size comparison From grocery platforms, Actowiz Solutions designed an intelligent normalization engine that converted all product sizes into standardized units (grams, liters, counts). This engine analyzed textual patterns, numerical attributes, and packaging indicators to accurately align equivalent variants. Advanced rule-based logic ensured that single units, multipacks, and bundled offerings were correctly differentiated while still remaining comparable.

Multi-Platform Mapping Framework

Our team built a scalable mapping framework that ingested data from Amazon Fresh, BigBasket, Instacart, Walmart Grocery, Flipkart Grocery, Zepto, and Swiggy Instamart. Machine-assisted clustering grouped similar SKUs, while validation rules prevented incorrect matches. This hybrid approach combined automation with accuracy, ensuring that variant relationships remained consistent even as catalogs changed dynamically.

Technical Roadblocks

Inconsistent Unit Representation

Different platforms represented sizes as “500g,” “0.5 kg,” or “Pack of 2 x 250g.” To address this, Actowiz implemented standardized conversion logic during Real-time product size & variant Data extraction, ensuring all units aligned to a common base measurement.

Dynamic Product Title Structures

Product titles frequently changed due to promotions or platform updates. We introduced adaptive parsers that dynamically identified size, quantity, and variant signals without relying on static patterns.

High Data Velocity

With frequent catalog updates across seven platforms, maintaining accuracy was challenging. Our pipeline supported near-real-time processing with automated re-mapping, ensuring variant relationships stayed current and reliable.

Our Solutions

Actowiz Solutions delivered a comprehensive Pack-Size & Variant Mapping solution that unified product variants across seven leading grocery platforms into a single, normalized dataset. Our solution leveraged automation, intelligent matching logic, and scalable architecture to resolve discrepancies in pack size, unit measurement, and variant representation.

The system accurately mapped equivalent SKUs across Amazon Fresh, BigBasket, Instacart, Walmart Grocery, Flipkart Grocery, Zepto, and Swiggy Instamart. By converting all sizes into standardized units and linking variants intelligently, the client gained clean, analytics-ready datasets. This eliminated duplicate entries, reduced mismatches, and significantly improved comparison accuracy. The solution seamlessly integrated into the client’s analytics stack, enabling faster insights, improved pricing strategies, and more reliable assortment intelligence.

Results & Key Metrics

Key Outcomes
  • 95%+ accuracy in Product Matching across platforms
  • 70% reduction in duplicate or mismatched SKUs
  • 4x faster variant normalization compared to manual methods
  • Improved price comparison accuracy across all mapped products
Business Impact

The client gained a unified view of product variants across seven platforms, enabling consistent pricing intelligence and assortment analysis. Retail and brand teams could now confidently compare like-for-like SKUs, identify pricing gaps, and monitor competitive positioning. The improved data quality enhanced customer trust and strengthened the client’s analytics offerings, driving higher adoption and long-term value.

Client Feedback

“Actowiz Solutions transformed how we manage product variants across grocery platforms. Their mapping framework brought clarity and consistency to millions of SKUs, enabling accurate comparisons and better insights for our clients.”

— Director of Product Analytics, Global Retail Intelligence Firm

Why Partner with Actowiz Solutions?

Proven Data Expertise

We specialize in Grocery & Supermarket Data Scraping, delivering clean, reliable datasets at scale.

Advanced Technology Stack

Our automation-driven frameworks handle complex variant logic, unit normalization, and cross-platform mapping seamlessly.

Scalable & Custom Solutions

From regional pilots to enterprise-scale deployments, our solutions adapt to evolving business needs.

Dedicated Support

Actowiz Solutions provides end-to-end support, ensuring long-term accuracy, scalability, and performance.

Conclusion

This case study demonstrates how Actowiz Solutions helped standardize product variants across seven major grocery platforms using advanced data engineering techniques. By leveraging Web scraping APICustom Datasets, and an instant data scraper, the client achieved accurate variant mapping, reliable comparisons, and scalable analytics. The solution eliminated inconsistencies, improved decision-making, and delivered measurable business impact.

Looking to standardize product data across platforms? Partner with Actowiz Solutions to unlock consistent, actionable grocery intelligence.

FAQs

1. What is pack-size and variant mapping in grocery data?

Pack-size and variant mapping involves identifying and standardizing different representations of the same product across platforms, ensuring accurate comparison and analytics.

2. Which grocery platforms were included in this project?

The project covered Amazon Fresh, BigBasket, Instacart, Walmart Grocery, Flipkart Grocery, Zepto, and Swiggy Instamart.

3. How does Actowiz ensure accurate SKU matching?

We use unit normalization, intelligent clustering, and validation rules to match equivalent SKUs while avoiding incorrect associations.

4. Can the solution scale to millions of products?

Yes. Our architecture is designed for enterprise-scale data volumes with automated re-mapping and real-time updates.

5. How can businesses use this mapped data?

Mapped data supports pricing intelligence, assortment optimization, competitive benchmarking, and market trend analysis.

📩 Email Us:

✉️ sales@actowizsolutions.com

📞 Call or WhatsApp:

📱 +1 (424) 377-7584


Source>> https://www.actowizsolutions.com/pack-size-variant-mapping-grocery-platforms-standardization.php


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