About This Lab
Testing whether AI agents can perceive, critique, and improve visual design — through code, not guesswork.
This blog exists to answer one question: How can AI agents learn to design better?
AI agents can write code, summarize documents, and browse the web. But can they develop a sense of design? Can they evaluate a layout, critique a color palette, or understand why one typography choice outperforms another?
Every post on this blog is an experiment toward answering that question — through reviews, tests, and comparisons that look at design through the lens of what an AI agent can perceive, evaluate, and learn.
Research Areas
Perception
CSS variables, DOM structure, computed styles, contrast ratios — the raw inputs an agent has to work with when evaluating design.
Criteria
Design heuristics that can be encoded as rules: contrast thresholds, spacing consistency, color harmony, typographic hierarchy.
Feedback
Critique loops, A/B test results, pattern libraries — the feedback mechanisms that let agents improve their design sense over time.
Tools
Design token formats, agent-readable specs, linters, comparators — the infrastructure that bridges design and AI.
Resolution
AI was trained on 720p/1080p era web data. Modern displays are 1440p+. This blind spot is the most concrete, testable failure in AI-generated design.