Instead of iterating on prompts for single assets, focus on building reusable systems. This approach ensures brand consistency, saves time, and empowers non-designers to create on-brand assets efficiently by turning complex workflows into simple interfaces.
Once you've identified the core components of an image, structure them into a repeatable formula. This template allows anyone on your team, even non-designers, to generate consistent, on-brand assets by simply filling in the blanks, effectively turning prompting into a scalable system.
To ensure AI prototypes match your product's design system, don't just describe the style. Instead, start by prompting the tool to "recreate" a screenshot of your live app. Refine this initial output to create a high-fidelity "baseline" template for all future feature prototypes.
Nick Pattison's firm creates generative tools for clients, enabling them to produce on-brand assets like geometric patterns themselves. This innovative handoff empowers clients to scale their brand system instantly and playfully, moving beyond static guidelines.
Traditional brand guidelines in static PDFs fail to scale with AI. A "brand system of record" acts as a dynamic, living brain, capturing tone, style, and visuals that AI can use in real-time to ensure all generated content is consistent and on-brand.
A specialist can build a complex, multi-step AI workflow and then expose only key inputs to the team. This turns their expertise into a scalable, self-serve "app" for marketers, enabling on-demand, on-brand creative generation without direct designer involvement.
Move beyond basic AI prototyping by exporting your design system into a machine-readable format like JSON. By feeding this into an AI agent, you can generate high-fidelity, on-brand components and code that engineers can use directly, dramatically accelerating the path from idea to implementation.
AI tools that generate functional UIs from prompts are eliminating the 'language barrier' between marketing, design, and engineering teams. Marketers can now create visual prototypes of what they want instead of writing ambiguous text-based briefs, ensuring alignment and drastically reducing development cycles.
Generic AI app generation is a commodity. To create valuable, production-ready apps, AI models need deep context. This "Brand OS" combines a company's design system (visual identity) and CMS content (brand voice). Providing this unique context is the key to generating applications that are instantly on-brand.
To avoid generic, 'purple AI slop' UIs, create a custom design system for your AI tool. Use 'reverse prompting': feed an LLM like ChatGPT screenshots of a target app (e.g., Uber) and ask it to extrapolate the foundational design system (colors, typography). Use this output as a custom instruction.
To create effective automation, start with the end goal. First, manually produce a single perfect output (e.g., an image with the right prompt). Then, work backward to build a system that can replicate that specific prompt and its structure at scale, ensuring consistent quality.