In an increasing number of technology companies, the majority of code is being written by AI coding agents. While that primarily boosts software developer productivity, they aren't the only ones that can benefit from this transformation. Here's how AI coding agents can also help designers.
As AI coding agents continue to improve dramatically, developers are turning to them more and more to not only write code but to review and improve it as well. The result isn't just more coder faster but the organizational changes needed to support this transition as well.
"The vast majority of code that is used to support Claude and to design the next Claude is now written by Claude. It's just the vast majority of it within Anthropic. And other fast moving companies, the same is true."
- Dario Amodei, Anthropic CEO
"Codex has transformed how OpenAI builds over the last few months."
- Sam Altman, OpenAI CEO
As just one example, a product manager I speak with regularly now spends his time using Augment Code on his company's production codebase. He creates a branch, prompts Augment's agents until he has a build he's happy with then passes it on to Engineering for implementation. Instead of writing a Product Requirements Document (PRD) he creates code that can be used and experienced by the whole team leading to a clearer understanding of what to build and why.
This kind of accelerated prototyping is a common way for designers to start applying AI coding agents to their workflow as well. But while the tools may be new, prototyping isn't new to designers. In fact, many larger design teams have specific prototyping roles within them. So what additional capabilities do AI coding agents give designers? Here's a few I've been using regularly.
Note: It's worth calling out that for these use cases to work well, you need AI coding tools that deeply understand your company's codebase. I, like the PM mentioned earlier, use Augment Code because their Context Engine is optimized for the kinds of large and complex codebases you'll find in most companies.
Fix Production Bugs
See a bug or user experience issue in production? Just prompt the agent with a description of the issue, test its solution, and push a fix. Not only will fixing bugs make you feel great, your engineering friends will appreciate the help. There's always lots of "small" issues that designers know can be improved but can't get development resources for. Now those resources come in the form of AI coding agents.
Learn & Rethink Solutions
Sometimes what seems like a small fix or improvement is just the tip of an iceberg. That is, changing something in the product has a fan-out effect. To change this, you also need to change that. That change will also impact these things. And so on.
Watching an AI coding agent go through its thinking process and steps can make all this clear. Even if you don't end up using any of the code it writes, seeing an agent's process teaches you a lot about how a system works. I've ended up rethinking my approach, considering different options and ultimately getting to a better solution than I started with. Thanks AI.
Get Engineering Involved
Prompting an agent and seeing its process can also make something else clear: it's time to get Engineering involved. When it's obvious the scope of what an AI agent is trying to do to solve an issue or make an improvement is too broad, chances are it's time to sit down with the developers on your team to come up with a plan. This doesn't mean the agent failed, it means it prompted you to collaborate with your team.
Through these use cases, AI coding agents have helped me make more improvements and make more informed improvements to the products I work on. It's a great time to be a designer.
