Dfend — Your Always-On AI Security Companion
Transforming cybersecurity from reactive alerts to proactive protection
I partnered with Dfend’s CEO to define the end-to-end UX for Scout, an intelligent digital agent that monitors accounts, identifies anomalies, and takes protective action automatically.
This wasn’t just about security — it was about building trust in autonomy and reimagining how users collaborate with AI to safeguard their digital identity.
Context
Designing a proactive cybersecurity assistant that protects users before they even realize they’re at risk — rethinking how people interact with AI in high-stakes, trust-sensitive environments.
AI Security · Cyber Defense · Proactive UX

My Role
Principal Product Advisor · UX Lead · AI-First Strategist
Team
CEO (Founder), PM, Engineering Lead, LLM Developer, Product Design Advisor (me)
Tools & Timeline
Figma, GPT-5, Jira
Nov 2024 – Jun 2025 (8 months)
Problem Space
AI Cybersecurity
SaaS
Mobile Experience
Goal: Create a trustworthy, always-on AI assistant that defends personal and professional digital identities — transforming cybersecurity from reactive alerts into proactive protection that users understand and control.
Problem
Everyday users are bombarded with alerts, complex settings, and jargon-heavy dashboards.
Traditional cybersecurity tools react after damage occurs — leaving users anxious, confused, or too late to act.
At the same time, emerging AI solutions often over-promise autonomy without earning user trust or explaining decisions.
The result: fear, fatigue, and fragmented protection.
Core Problem Statement:
Users didn’t feel in control or protected — they didn’t trust AI to act on their behalf, yet they were too overwhelmed to manage digital security manually.
Business Goal:
Design a trustworthy, always-on AI security assistant that can detect and neutralize threats autonomously — while giving users clear, human-readable insight into what’s happening behind the scenes.
3,150+
Reported data breaches in 2024
Impacting over 1 billion individuals.
$13.8T
Projected annual cost of cybercrime
By 2028.
1B+
Personal accounts exposed
In the past year alone.
Traditional tools overwhelm users with endless alerts and complex dashboards. People don't trust AI to act for them — yet they're too overloaded to manage security manually. Dfend set out to bridge that gap by building trust through transparency and autonomy.
Research & Insights
I conducted lean, mixed-method research to understand how users perceive digital safety, react to security alerts, and decide when to trust automation. This included competitive audits of Dashlane, NordVPN, 1Password, and several crypto-mining and wallet security apps to benchmark both usability and visual aesthetics. Alongside that, I performed heuristic analyses of leading security platforms, lightweight user interviews focused on trust and control, and scenario testing exploring comfort levels around “AI autonomy” — from simple notifications to full automation.
Key Insights
1
🔐 Trust, not features, drives adoption
Users weren't looking for another security app — they wanted a digital bodyguard they could trust to act intelligently on their behalf.
2
🧠 Alert fatigue is real
Most users ignore repetitive warnings or confusing "data breach" notifications. Simplicity and clear guidance outperform constant monitoring noise.
3
🤖 Transparency builds confidence
When the AI explained what it was doing — and why — trust scores increased dramatically. Users preferred visible reasoning to "black box" automation.
4
📱 Conversational interfaces reduce fear
Security feels less intimidating when presented through a human-like agent (Scout) rather than a system of switches, logs, and technical dashboards.
Research Evidence
Direct quotes from polled users captured authentic reactions to cybersecurity anxiety, AI trust, and alert fatigue — grounding our design decisions in real human sentiment.
"I just want something that works quietly in the background, like a digital bodyguard, so I don't have to constantly worry about every little threat."
"Honestly, I just ignore most security alerts now. They're usually technical jargon I don't understand, or just another 'warning' about something I can't even fix."
"If an AI is going to protect me, I need to know why it's doing what it's doing. I don't want a black box just making decisions without any explanation."
"I'd much rather talk to 'Scout' about a security issue than stare at another complicated dashboard with graphs and settings. It just feels less scary."
Define & Hypothesis
I needed to design an interaction model that allowed users to trust an AI assistant with real security decisions — while still feeling informed and in control.
How might I create a predictable, transparent autonomy model that lets users choose how much control to delegate to the AI — from “just notify me” to “handle it automatically”?
Hypothesis:
If users can set a personalized AI autonomy threshold and clearly understand what actions the system takes on their behalf, they will feel safer, more confident, and more likely to let the AI act proactively — leading to higher engagement and fewer reactive security incidents.

Design Principles: Transparent Autonomy · Humanized AI · Trust Through Clarity · Calm Security UX · Privacy-First by Design
Ideate & Explore
I explored multiple ways to visualize AI trust, user control, and real-time protection without overwhelming users. The focus was on translating complex security logic into approachable, conversational interfaces that inspire confidence rather than fear.
Decision:
  • A threshold slider allowing users to set how autonomous Scout could be — from passive alerts to full proactive action.
  • Conversational flows that explained why actions were taken, reinforcing transparency and trust.
  • Dynamic dashboards that surfaced only the most relevant risk insights, reducing information overload.
  • Modular tiles for connecting accounts, monitoring threats, and viewing exposure scores — creating a scalable foundation for future enterprise and family use cases.
The Pivot Moment
Midway through testing, we realized that trust couldn’t be designed into the interface — it had to be earned through experience.
Users didn’t immediately trust AI inference; they needed to see it make smart, safe decisions first.
Our initial three-tier autonomy slider (ranging from passive to full automation) introduced cognitive friction and uncertainty. We simplified it into two clear modes:
Assist Me — notifications and guided manual steps
Autopilot — fully automated, AI-managed protection
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Prototype & Test
We prototyped the end-to-end flow for:
  • Onboarding & Account Linking
  • Threat Detection & Alerts
  • Passwordless Identity Recovery
  • AI Autonomy Slider
  • Security Dashboard with Threat Index
Testing Outcomes
  • 72% of participants reported “increased trust” after understanding Scout’s autonomy levels.
  • 87% preferred conversational guidance to traditional alert lists.
  • Task completion improved by 40% in password recovery and breach response flows.
Final Solution — Customer Experience Outcomes
What “Great” Looks Like for Owners
Dfend’s AI assistant redefined personal security by shifting the paradigm:
Proactive Protection
The system neutralizes threats before they disrupt.
User-Controlled Autonomy
The autonomy slider gives agency back to users
Conversational Transparency
Every action is explained clearly in human terms
Simple, Seamless, Secure
A unified mobile experience across accounts, identities, and devices
Enhanced Digital Confidence
Security that feels effortless; users experience peace of mind knowing Scout is always on duty
Final Solution — Engineering & Delivery Outcomes
What 'Great' Looks Like for Engineering Velocity
  • Built a scalable design system supporting modular feature expansion (premium monitoring, enterprise tiers).
  • Implemented component-level states for security alerts, trust thresholds, and notifications.
  • Optimized for AI agent API integration, enabling real-time data signals for proactive actions.
  • Prepared handoff-ready Figma prototypes directly used for pitch funding and engineering alignment.
Impact
AI-Driven Proactive Cybersecurity
Introduced an entirely new category in the market.
Elevated Brand Perception
Transformed from a "security app" to a "personal digital guardian."
Enhanced User Engagement
Increased early-user engagement and reduced abandonment in complex flows.
Repeatable Frameworks
Established for privacy, AI communication, and trust-building.
Reflection
This project blended two worlds—AI autonomy and human-centered security.
Designing trust into automation required empathy, restraint, and clarity.
The work laid a foundation for a new era of cybersecurity UX—one where protection feels invisible, intelligent, and deeply personal.
"The future of security isn't software—it's partnership. Dfend proved that the most advanced protection feels like peace of mind."
Closing — Proactive. Personal. Predictive.
Dfend redefined how users relate to cybersecurity — shifting from reactive tools to proactive, trusted companions. It’s not just AI protecting data; it’s AI protecting people