Ai workflow (Copy)

Problem-to-Prototype Using AI Tools

Goal: Demonstrate how AI tools can drastically reduce the time from problem to prototype.

Objective:
To rapidly ideate, design, and prototype a feature for a mental health app using AI-assisted tools, while identifying the line between human creativity and machine augmentation. Using AI tools I redesigned an AI-powered recommendation experience for a mental health app in 5 hours instead of the typical 3 - 5 days.

Constraints:

  • Solo project without support of a product

  • No direct access to stakeholders or user data

  • Limited time (completed in under a day)

Approach:
Blend human-centred thinking with AI tools to accelerate ideation, competitor research, user flows, and UI design.


Context

The mental health app has a feature that includes content and tools that users have learned throughout their chosen course. They can refer back to this content any time.

A sub-feature is Recommendations, which, based on a machine learning engine, provides users with blog articles relevant to their situation in life.

How it works:

  1. Article Delivery: Users receive 3 blog articles matched to their course and interests

  2. Rating System: Users rate article relevance using thumbs-up or thumbs-down interaction

  3. Save Functionality: Articles can be saved for future reference

  4. Feedback Loop: User ratings are fed back to the recommendations engine to improve future suggestions

  5. Content Refresh: New articles are provided weekly or daily


The qualitative and quantitative insights provided by the App were crucial in identifying emotional tension points and user expectations. Here's how I interpreted the research:

 
Insight Design Implication
70% of users are inexperienced with AI Users need simple, non-technical language and guided onboarding.
Top benefits: efficiency, support, medical care Leverage these perceptions by positioning AI as an assistant, not a decision-maker.
Top concerns: unethical use, misinformation, loss of empathy Design must build ethical transparency, use empathetic tone, and clearly show the human-in-the-loop.
Fear of AI replacing psychotherapists Messaging should emphasize AI as a supportive layer to enhance—not replace—human care.
Emotionally distraught reactions The interface must feel emotionally safe: soft visuals, human-centered language, and clarity about boundaries of AI use.
 

The Challenge

How might we design a clear, trustworthy, and emotionally intelligent experience that helps users understand when and how AI is used, without triggering fears around automation or loss of human empathy, especially in a sensitive space like mental health?

Requirements

1) Improve user understanding of the AI-driven technology during their first use of the feature

2) Ensure the design instils confidence, trust and a sense of safety in users in a visually delightful way

3) Create a design communication system that clearly communicates when AI is used across both the app and website

4) Improve the intrinsic value to users and increase usage of the feature through delight


Timeline: AI-Accelerated Design Process

Here’s a visual breakdown of how I structured my working time:

Phase Tools Used Duration AI vs Human
Competitor Analysis Screenshots, observation notes 45 mins
AI for research, Me for insights
User Flows Me (ideation), We.O (visualization) 30 mins
Co-created
Wireframes (Clickable) Stitch 20 mins
AI-generated
Final UI Figma 1 hr
Me
Prototype Export (Placeholder: Bolt / Lovable) 10 mins
Tool-assisted
Reflection + Learnings Me + ChatGPT for synthesis 30 mins
Me

Total time: 3 hours 15 minutes


Competitor analysis

Based on an analysis of Ai-companions that curate content/results, I indentified the followings trends, ChatGPT summarised the stickies according to the categories asked for in my prompt:

1 )Transparency Through Visual Storytelling

  • Visual Elements: Soft, organic shapes and warm color palette suggesting human touch

  • Copy Tone: "We're learning about you, not judging you"

  • Trust Signals: Privacy badges, data usage explanations in plain language

  • Safety Features: Clear data controls, "Pause AI" option always visible

  • Delight Factor: Gentle animations showing AI "thinking" with breathing-like motions

2) Human-AI Partnership Language

  • Visual Elements: Dual-tone design showing human input + AI processing

  • Copy Tone: "Your insights + our intelligence = better content"

  • Trust Signals: Real user testimonials about recommendation accuracy

  • Safety Features: Explanation of what data is NOT used (no personal journal entries)

  • Delight Factor: Celebration animations when ratings improve recommendations

3: Progressive Accuracy Indicators

  • Visual Elements: Confidence meters showing recommendation strength

  • Copy Tone: "Getting to know you better" with percentage improvements

  • Trust Signals: Accuracy metrics and improvement tracking

  • Safety Features: Easy "Start over" option to reset preferences

  • Delight Factor: Achievement badges for helping train the AI

4: Emotional Safety First Design

  • Visual Elements: Calming gradients and rounded corners throughout

  • Copy Tone: "Gentle suggestions" rather than "recommendations"

  • Trust Signals: Mental health professional endorsements of AI safety

  • Safety Features: Content warnings and emotional impact indicators

  • Delight Factor: Seasonal themes and gentle personality in AI interactions

Apps analysed: Wysa, Dot, Pillow, Gemini, Arc


Concept

To be able to prompt any tool for any next steps, I had to be clear on the concept and their user flows, and it was fastest and easiest for me to map it out directly in Figma. the competitor research and the Ai text-organisation helped me decide on the concepts I wanted to focus on for this project:

  1. An Ai helper

2. A learn-at-your-will system


Tone: Warm, companion-like, emotionally supportive
Direction: A clearly framed AI helper as a co-learning partner that evolves alongside the user. Focused on trust, progress, and collaboration.

Tone: Transparent, empowering, no fluff
Direction: A self-guided, logic-first onboarding with strong UX around control, visibility, and user empowerment. AI is present, but in the background.

User Flows

For the user flows, I wanted to focus more on inform ( app informs the user) as the goal is to inspire trust in the feature.

 
 

Wireframes

Now this is the part I was most looking forward to because I planned to try using Stitch which I’d never used before.

My usual wire- framing process looks like this:

Write down screen elements > Wireframe in Figma

However this time, this is what my process (with low exceptions) looked like:

Write down screen elements > Generate the perfect Stitch prompt via ChatGPT > Generate wireframe in Stitch > Edit in Figma