LONDON.- As artificial intelligence rapidly reshapes the digital landscape, designers are rethinking not only how products function, but how people interact with technology itself. For product and UX designer Zhengyang Yang, AI is not simply a tool for efficiency. Rather, it represents a fundamental shift in how users discover, evaluate, and experience the digital world.
Currently working at TikTok on large-scale consumer shopping experiences, Yang operates at the intersection of AI, commerce, and interface design. His work spans conversational shopping systems, recommendation experiences, and AI-assisted consumer flows viewed by global audiences at unprecedented scale. Drawing from experience across AI, e-commerce, Web3, AR/VR, and SaaS, Yang approaches design with a multidisciplinary perspective that combines systems thinking with narrative-driven interaction design.
In recent years, the emergence of generative AI has transformed creative workflows across industries. Yet for designers, the shift is particularly profound: AI is no longer confined to backend infrastructure, but increasingly acts as an interface layer between users and information.
"AI shortens the gap between idea, visualization, and testing," Yang explains. "It allows designers to move from insight to experimentation much faster than before."
According to Yang, AI has accelerated several critical stages of the design process. Research that once required extensive manual synthesis can now be condensed into rapid pattern analysis. Designers can also generate visual assets beyond their core specialization, expanding creative exploration without relying on large multidisciplinary teams. Most significantly, AI-assisted coding tools now enable interactive prototypes that behave much closer to real products, allowing earlier validation of ideas and more realistic stakeholder collaboration.
Yet despite these advances, Yang emphasizes that designing AI-powered experiences requires a fundamentally different mindset from traditional deterministic systems.
"AI systems operate probabilistically," he says. "That means outcomes can vary, and the role of design becomes guiding expectations rather than presenting a single definitive answer."
Rather than positioning AI as an autonomous decision-maker, Yang believes future consumer experiences should frame AI as an assistant that synthesizes information while preserving human agency. In practice, this means designing recommendation systems that remain adjustable, transparent, and collaborative.
One of the most important challenges, he argues, is maintaining a balance between automation and user control. While conversational interfaces can dramatically simplify discovery and decision-making, users still need ways to refine, challenge, and redirect AI-generated results.
"In traditional search experiences, people rely on filters and sorting systems," Yang notes. "AI-powered experiences still need mechanisms that allow users to shape outcomes instead of passively accepting recommendations."
This philosophy has influenced how many leading platforms are approaching AI-native shopping experiences. Lightweight clarification flows, preference collection, behavioral signals, and feedback systems increasingly act as the connective tissue between automation and personalization.
Yang sees this evolution as part of a broader transformation in consumer behavior itself.
Historically, e-commerce platforms were built around browsing interfaces: users entered apps, navigated categories, compared listings, and manually evaluated products. Today, however, conversational AI systems are gradually reshaping discovery behavior.
"The discovery phase is moving into assistant-centric environments," Yang says. "Users are increasingly relying on AI systems to help them explore, compare, and narrow decisions before they ever interact with a traditional storefront."
He predicts that future shopping ecosystems may consolidate the entire consumer journey—discovery, comparison, purchasing, and post-purchase support—within AI-native interfaces. In these environments, the assistant itself becomes the primary interface between consumers and commerce.
At the same time, Yang cautions that trust remains one of the defining challenges of AI-driven UX.
For recommendation systems to feel credible, users must believe the output reflects their preferences rather than hidden promotional incentives. Transparency therefore becomes essential—not through overwhelming technical explanations, but through consistent visual language and recognizable interaction patterns.
"Users don’t necessarily need long explanations," Yang explains. "What matters is that they can clearly recognize when AI is involved and understand why certain recommendations appear."
As industry conventions continue to emerge, Yang believes designers will increasingly rely on lightweight signals—icons, labels, badges, and interface patterns—to communicate AI involvement intuitively.
Still, AI systems remain imperfect. One of the most persistent limitations, Yang observes, is their inability to fully understand the complexity of mature products and real human behavior.
"AI tools are effective at generating prototypes and small systems," he says, "but large-scale products involve years of context, dependencies, and nuanced user expectations that are difficult to fully encode."
Similarly, while AI can summarize research and surface patterns, Yang believes authentic usability testing continues to depend on real human interaction.
"Understanding emotion, hesitation, confusion, or unexpected behavior still requires observing real people," he says. "Human feedback remains irreplaceable."
This human-centered perspective also shapes how Yang approaches failure states within AI systems. When recommendation engines produce inaccurate results, the experience must acknowledge mistakes and provide clear ways for users to correct the system.
"The important thing is that the AI demonstrates it has learned," Yang says. "Users need to feel heard."
As AI-native interfaces continue to evolve, designers face an increasingly important responsibility: not only optimizing efficiency, but shaping how trust, agency, and decision-making function within intelligent systems.
For Yang, the future of consumer UX lies not in replacing human judgment, but in designing systems that amplify it.
"AI should support decision-making rather than take control away from users," he says. "The goal is to create experiences where technology feels collaborative, adaptive, and ultimately more human."
In an era where commerce, creativity, and machine intelligence are becoming deeply intertwined, Yang’s work reflects a broader shift occurring across digital culture: the transition from interface-driven products to AI-native experiences designed around conversation, context, and collaboration.
As that transformation accelerates, designers like Zhengyang Yang are helping define not only how future technologies function, but how people will experience the digital world itself.