AI-powered Ingredient scanning app for Indian grocery shoppers
Ingrify was created to address a growing frustration shared by everyday consumers that is ingredient labels are complex, confusing and inconsistent , making it hard to know what’s actually safe to eat in a glance. I collaborated across teams to gather user feedback and created the app's user experience, interface with seamless access to brand values.
10K +
Downloads
4K +
Active users
Role/
Research
Through stakeholder discussions and competitive analysis, I proposed introducing barcode scanning as the primary entry point, with AI ingredient analysis as a fallback when products weren’t available in the database.
Design
I joined as the sole designer after the dev-prototype was build and feasibility was proven, I rebuilt the experience from the ground up. I established the product’s visual identity and keeping it intact throughout the design process.
Problem Discovery/
Primary Research
The goal was to help users quickly understand what’s inside packaged food. To achieve this, the product team initially built an AI-powered prototype using OCR to extract and explain ingredient labels across any product.
Secondary Research
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Same product different result

Challenge
How do we help everyday Indian shoppers understand ingredients instantly?
Design Solutions/
Building a MVP
Through stakeholder discussions and competitive analysis, I proposed introducing barcode scanning as the primary entry point, with AI ingredient analysis as a fallback when products weren’t available in the database.
AI Ingredients Scan
Captures dietary preferences and allergens early so scores and warnings adapt to individual needs.
Barcode Scan
Captures dietary preferences and allergens early so scores and warnings adapt to individual needs.
Beyond the MVP
Through stakeholder discussions and competitive analysis, I proposed introducing barcode scanning as the primary entry point, with AI ingredient analysis as a fallback when products weren’t available in the database.
AI Ingredients Scan
Captures dietary preferences and allergens early so scores and warnings adapt to individual needs.
Barcode Scan
Captures dietary preferences and allergens early so scores and warnings adapt to individual needs.
Research/
Primary Research
I ran a quick survey with 30+ participants and 4 user interviews with everyday Indian consumers. Even with a small sample size, clear patterns emerged…
Secondary Research
I conducted Secondary research using existing studies, industry reports, and public discussions around food labels in India
Key Insights
Insights from NCBI
User Personas/
It captures the strongest patterns from prospect users and guides initial design decisions while leaving room to evolve as more real user data comes in.
Competitor Analysis/
I analyzed competitors like TruthIn, Yuka, TrashPanda to understand how users move from scanning to interpretation.
Goals
Establish what the market looks like right now. See if there is a direct competitor in this specific idea. Learn how other food scanning apps work.
Result
Most apps relied heavily on Barcode scan which depend on their or third-party database coverage and generic health scores, which struggle with Indian products and personalized needs.

User flows/
By prioritizing clarity and speed, the flow keeps the experience effortless and reduces decision fatigue.
Testing & Iterations/
Internal Testing was done to quickly validate core flows, this helped identify technical edge cases, performance issues, and accuracy gaps. Based on user feedback and testing the product underwent few round of iterations. Key insights from user feedback included:
Design Decisions & Trade-offs/
Success Metrics/
The success of this app and it’s features were measured by:
Key Learnings/
Collaboration & Communication
I learned the importance of close collaboration with stakeholders and developers in an early-stage product. I learned how to take a stand on design decisions by backing them with user research, competitive insights, and clear success metrics rather than opinions. This helped align teams, navigate trade-offs around cost and feasibility, and ship decisions that balanced user trust, technical constraints, and business goals.
Designing for imperfect data
Working with third-party databases meant scan failures, mismatches, and incomplete results were inevitable. Instead of hiding these limitations, we designed clear fallbacks ingredient scan, AI analysis, and user reporting to keep the experience intact even when the system wasn’t perfect.
What's Next?
Point Based Reward System
A reward system where users earn rewards for adding verified products and referring others. This aims to encourage high-quality contributions while keeping database growth community-driven and sustainable.
Quiz
Add learning moments that help users understand ingredients over time and keeps engagement high without disrupting the core scan flow.








