AiQEM AdTech

A data-driven advertising dashboard that makes complex campaign data instantly actionable.

Project screens coming soon

Overview

AiQEM Tech is an Ethiopian AI and blockchain company providing advertising analytics services to businesses. As their in-house UX Designer, I designed an end-to-end advertising analytics dashboard that gave marketing teams and their clients a single place to track, analyse, and act on campaign performance data.

The product surfaced five core data types — impressions, click-through rates, campaign spend, audience segments, and conversion funnels — across a modular dashboard interface. The challenge: presenting this breadth of data without overwhelming users who needed to make fast, confident decisions.

I was the sole UX Designer on the project, working across the full design process from initial research through to the high-fidelity Figma handoff delivered to AiQEM's development team.

5

Core data modules

2

User types served

1

Design system built

Complexity, not data

The Problem

Five data categories. Multiple campaigns. One dashboard that can't overwhelm.

AiQEM's campaign managers spent significant time each week manually assembling data from separate tools to create client reports. The dashboard needed to eliminate that entirely — while serving two fundamentally different users at the same time.

AiQEM's internal team needed to move fast: scanning across campaigns, spotting anomalies, and adjusting targeting in real time. External clients needed confidence that their budget was being spent well — without needing to understand the underlying data complexity.

The hardest design problem wasn't finding the right chart type. It was deciding what not to show — and when.

Understanding the Users

Two types of users — different goals, same dashboard.

The dashboard served two distinct groups. Designing for both simultaneously without fragmenting the experience was one of the core UX challenges.

📊

Campaign managers

AiQEM Internal Team

Needed to move fast — scanning across campaigns, spotting anomalies, and adjusting targeting or spend in real time.

Cross-campaign overview at a glance
Quick anomaly detection (CTR drops, budget overruns)
Efficient filtering across campaigns and timeframes
Export data for client reporting
🏢

View-only access

Clients & Advertisers

Not deep analytics users — they needed confidence that their budget was being spent well and their ads were reaching the right people.

Clear progress against campaign goals
Understandable data — no jargon
Proof of reach and audience quality
Simple date range filtering

Design Process

From stakeholder interviews to developer handoff.

01

Stakeholder Interviews & Discovery

Interviewed AiQEM's campaign managers to understand their daily workflow — how they moved between tools, what decisions they needed to make quickly, and where the biggest frustrations were. Key finding: they spent significant time each week manually assembling data from separate sources. The dashboard needed to eliminate that entirely.

02

Competitive Audit

Audited Google Ads, Meta Ads Manager, and HubSpot's analytics dashboards — mapping how each handled data density, filtering, and dual-user scenarios. Identified that the best-in-class tools used progressive disclosure and persistent global filters — two patterns I carried directly into the design.

03

Information Architecture

Defined the module structure and navigation model before touching any UI. Key decision: a left-rail nav with five fixed modules, each containing its own filters and sub-views. A persistent global header with date range and campaign selectors applies context across all modules simultaneously.

04

Wireframes & Iteration

Lo-fi wireframes tested with AiQEM's internal team across 3 rounds. Most significant feedback: the initial design surfaced too many chart types simultaneously. Added a view-toggle pattern (table vs. chart vs. summary card) to all modules as a result.

05

High-Fidelity Design & Design System

Built the full high-fidelity dashboard in Figma. Designed a complete component library covering charts, filter components, data tables, KPI cards, and modal patterns, with full developer handoff annotations.

Design Decisions

The choices that made the difference.

Data hierarchy

Summary first, detail on demand

Every module opens with a summary card showing the single most important number — total impressions, overall CTR, total spend. Detail is one click away, not immediately visible. Users could scan the entire dashboard in under 10 seconds to get a health check, then drill down where needed.

Filtering system

Global filters that persist across all modules

A global campaign selector and date range picker persists in the top navigation — any filter applied there applies to all modules simultaneously. This solved the navigation confusion problem: users always know that what they're looking at is consistent across views.

Chart language

Standardised visual patterns across modules

Defined a consistent chart grammar: time-series data always uses area charts, breakdowns always use horizontal bar charts, funnels always use the same step-down visual. Users only had to learn the visual language once — after that, pattern recognition made navigating between modules fast and intuitive.

Dual-user design

One dashboard, two permission levels

Rather than building separate interfaces for the internal team and clients, the same dashboard adapts based on permission level. Internal users see all campaigns; clients see only theirs. The underlying UI is identical — reducing design and development complexity.

Outcome

A single source of truth — delivered under a competitive deadline.

The dashboard was delivered as a complete Figma handoff covering all five data modules with a fully documented design system, component library, and annotated specifications.

AiQEM needed to ship the product before a competitor entered the market. This meant making fast, well-reasoned design decisions rather than over-deliberating. The discipline of progressive disclosure and persistent filtering solved the data-density problem cleanly — and was also the most buildable solution.

The dashboard consolidated what previously required multiple separate tools into a single, coherent experience — giving AiQEM's team a platform they could confidently demo to clients as a differentiator.

5 data modules fully designed and documented
Complete design system and component library delivered
Shipped before competitor entered the market