Case Study · Aug – Dec 2024
Orbit: As AI Does More,
Trust Must Be Earned Differently
A UX research project investigating how users want to participate in AI decision-making — from single-task assistance to life-level scheduling agency.
The question
University students manage tasks with real consequences — assignment deadlines, research timelines, part-time jobs running in parallel. We set out to design a task management app. But the harder question surfaced almost immediately:
AI can automate task creation entirely. How much should it actually do — and what does a user need to stay in control?
Should AI convert your lecture screenshot into tasks? Should it learn your energy patterns and schedule your week? Each question asks users to surrender a different kind of control, and requires a fundamentally different kind of trust.
Foundation
Before AI, the baseline: Manual Task Creation
We started with the core manual flow — how users add, organize, and manage tasks by hand. Even here, usability testing surfaced a consistent pattern: users needed the system to visibly confirm it had understood them. Clear save states, explicit feedback, no ambiguous outcomes.
This became the foundation for everything that followed. If users need that reassurance in a manual flow, they need it even more when AI is the one making inferences.
We designed two AI features at this level. Both are triggered by the user, both produce a draft for review, and both require confirmation before anything is committed. The input method differs — one starts with an image, one starts with a goal — but the trust pattern is identical.
Feature A
Image Conversion into Tasks
Users upload a screenshot or photo containing task information. AI extracts the content and presents a draft. One action, one output, one decision point.
"AI should be an assistant, not the main brain."
Feature B
Task Breakdown Assistance
Users describe a long-term goal in natural language. AI generates a structured task plan with subtasks and suggested dates — a conversational flow modeled on familiar chat interfaces.
Usability testing confirmed the same pattern as Image Conversion: participants found the AI output genuinely useful, but immediately asked "Can I edit this?" The confirmation step wasn't optional. It was the minimum viable trust mechanism.
A secondary finding: users wanted the AI to support more diverse input methods — text, images, and documents — suggesting they saw this as a general-purpose task scaffolding tool, not just a text-only assistant.
Shared design principle across both features: users trust AI to act — they need to retain authority to confirm. The two-step flow emerged independently from testing both features. It wasn't a design assumption. It was what users asked for.
This is a different ask entirely. Not "help me with this one thing" — but "learn who I am and plan my life." At this level, a single confirmation step isn't enough. Trust must be built before AI ever acts.
Core insight
Two levels of AI intervention — two trust strategies
The two levels require fundamentally different trust architectures. Level 1 is transactional — trust is built one interaction at a time. Level 2 is relational — trust must be established before AI ever acts.
Level 1 — Human-in-the-loop
Level 2 — Human-on-the-loop
The depth of AI intervention determines the architecture of trust required
At Level 1, trust is transactional — built moment by moment. At Level 2, trust is relational — built over time through transparency and demonstrated understanding. A confirmation step alone is insufficient when AI acts continuously.
Outcome
"AI should be an assistant, not the main brain. These features help summarize everything efficiently."
"I love the image conversion feature for its simplicity and forward-looking AI integration."
"The AI scheduling feature simplifies updating priorities, allowing seamless task reassignment."
Reflection
We ran this research in late 2024, before human-in-the-loop became standard vocabulary in AI product design. What we found empirically — that users need AI to act but not decide unilaterally, that trust architecture changes with AI autonomy level — is now foundational to how the industry designs agentic products.
The pattern has a name now. We found it from the users.