Maple Labs: AEO Monitoring SaaS

Delivering a high-performance strategic dashboard and Atomic Design System in a 4-week MVP sprint.

SaaS Architecture
B2B Analytics
Data Visualization
UX Strategy

Project Context

As LLMs (Large Language Models) transform into the primary search entry point, Answer Engine Optimization (AEO) has emerged as a critical business frontier. Maple Labs tasked me with designing a dashboard that monitors how brands are perceived and recommended by AI.

The challenge was to move from concept to a production-ready MVP in 4 weeks, requiring a robust UI framework that could handle complex data visualizations and multi-level competitive analysis without overwhelming the user.

Key Information

Role

Freelance UX/UI Designer

Deliverables

Dashboard UI, Design System, Prototypes

The Challenge

Visualizing the invisible: Monitoring AEO

How do we transform complex data from conversational agents into actionable business indicators?

Speed to Market

Reducing « Time to Market » without sacrificing UX clarity for early-adopter users.

Data Complexity

AEO generates massive textual data. We needed to extract sentiment scores and « Share of Voice ».

Functional Modules

Share of Voice

Reducing « Time to Market » without sacrificing UX clarity for early-adopter users.

Strategic Recommendations

AI-driven identification of specific content and technical optimizations required to improve brand visibility in AI answers.

Citation Mapping

Identification of web sources that the AI uses to justify its answers, allowing for targeted source-level optimization.

Design System: Maple Atomic

The Strategic Palette

A high-contrast dark environment designed for data intensity. Primary surfaces use deep blacks to make vibrant status indicators and charts pop.

Canva

#0A0A0A

Background

#121214

Primary-accent

#6366F1

Semantic-positive

#10B981

Semantic-warning

#F59E0B

Semantic-critical

#EF4444

Component Library

Atomic elements designed for quick implementation and visual consistency across the SaaS platform.

High-Fidelity MVP Preview