Hi, I'm Marc Woo.
Product Designer shaping the AI-native discovery and commerce system.
I specialize in core shopping flows, helping millions of users navigate from discovery to checkout.
Search and Navigation Architecture
Dick's Sporting Goods﹒2022 – Present
I re-architected the foundational logic for product discovery, transforming a fragmented legacy schema into a single, adaptive system. This design foundation reduced technical debt and enabled intent-based retrieval for millions of queries.
Mobile Menu Optimization
Cut exit rates 30% by minimizing decision fatigue.
I overhauled mobile wayfinding to prioritize core shopping tasks, streamlining the internal taxonomy to ensure users find what they need in the "ordinary task" of browsing.
Semantic Search Experience
Translated complex ML signals into human-readable results
I designed a visual framework for Vector Search, translating complex ML predictions into transparent, trustworthy results, even for vague customer queries.
Global Navigation Architecture
Optimized the "Digital Front Door" for high-scale retail discovery.
I eliminated layout shifts (CLS) and compressed navigation height by 35%, ensuring instant content visibility and building trust within the first millisecond of interaction.
Browse Ecosystem and Decision Support
Dick's Sporting Goods﹒2022 – Present
I restructured the core browse framework to resolve "choice paralysis." By organizing complex inventory into comparable patterns, I accelerated the transition from merchandise evaluation to conversion.
Active Filtering Feedback
Drove 18% lift in filter engagement with instant visual feedback.
I implemented state-change cues to validate user intent, reducing session abandonment during deep browsing.
Compare Tool
Generated a $1.28M lift in profit/visit by simplifying merchandise evaluation.
I normalized thousands of fragmented data points into scannable, side-by-side patterns, allowing shoppers to evaluate products with confidence without leaving the discovery loop.
AI-Native Content Architecture
Defined the content structure required for high-accuracy AI retrieval.
I optimized content hierarchies to ensure product data is structured for AI retrieval (GEO) while providing high-value, in-flow education for customers.
Loyalty Strategy and Fan Experience
Dick's Sporting Goodsï¹’2025
I architect scalable experience frameworks that bridge visionary engagement with the tactical loyalty infrastructure required for long-term ecosystem growth.
Loyalty Visibility
Drove user authentication by surfacing real-time loyalty rewards.
I optimized global navigation to highlight available rewards and membership status, creating a persistent "Value Visibility" loop that nudges sign-ins and increases interaction with core ecosystem features.
2026 World Cup: Fan Experience Vision
Delivered a modular "North Star" for global sporting events.
I designed a flexible interface logic that leverages real-time tournament data to transform seasonal fan excitement into personalized commerce hubs for events like the World Cup and Super Bowl.
AI-Integrated Discovery Strategy
Dick's Sporting Goods﹒2025 – Present
I defined the strategic vision for shifting the core discovery loop from reactive keyword matching to anticipatory intent prediction. This 0→1 roadmap later presented to Investor Relations as a key driver for future revenue growth.
Context-Aware UI Construction
Synthesized high-level intent into dynamic layouts.
I designed a system that utilizes implicit signals—location, time, and history—to proactively reconstruct the UI and surface relevant content, significantly reducing manual search friction.
LLM-Powered Decision Support
Aggregated fragmented metadata into a cohesive summary.
I leveraged AI to synthesize thousands of data points–Expert Tips, Inventory, Customer Reviews) into clear highlights, This progressive refinement loop builds decision confidence by simplifying complex product data.
Geospatial Health Mapping for IoT System
Novosselov Research Group﹒2021 – 2022
Designed the companion interface for AeroSpec, a portable IoT sensor system that transforms raw environmental telemetry into intuitive, actionable health signals. This architecture allows users to discover hyper-local safety trends through high-fidelity geospatial visualizations.

Longitudinal Validation
De-risking engineering investment through rigorous consumer science.
Validated the data model via 54 surveys and 3 diary studies before code commitment. This ensured the interface solved real-world respiratory needs rather than just displaying available telemetry.
Privacy-First Spatial Indexing
Abstracting individual data points into community-level safety signals.
Architected a hexagonal grid system leveraging Uber’s H3 spatial index to solve the "utility vs. privacy" trade-off. This implementation enables high-resolution community mapping without compromising the precise location of individual contributors.
Interactive Discovery Logic
Prioritizing immediate safety signals over raw data
Utilized progressive disclosure to prevent data overwhelm. The interface highlights critical "Safe/Unsafe" signals first, revealing granular pollutant metrics only upon explicit user interaction.
marcwoo94@gmail.com
© 2022 Marc Woo
marcwoo94@gmail.com