Moving beyond using AI for simple content generation, SAS applies it to enhance marketing quality. They built an AI agent that scores creative briefs against effectiveness criteria. This forces teams to create better inputs, leading to better creative outputs and reframing AI's role from cost-saver to quality-enhancer.
The true power of AI in marketing is not generating more content, but improving its quality and effectiveness. Marketers should focus on using AI—trained on their own historical performance data—to create content that better persuades consumers and builds the brand, rather than simply adding to the noise.
With AI workflows generating thousands of creative variations in minutes, the primary job is no longer the manual act of creation. The critical skill becomes curation: building the right automated systems upfront and then strategically selecting winning assets from a massive pool of options.
To get high-quality, on-brand output from AI, teams must invest more time in the initial strategic phase. This means creating highly precise creative briefs with clear insights and target audience definitions. AI scales execution, but human strategy must guide it to avoid generic, off-brand results.
Marketers should use AI-driven insights at the beginning of the creative process to inform campaign strategy, rather than solely at the end for performance analysis. This approach combines human creativity with data to create more resonant campaigns and avoid generic AI-generated content.
The primary role of AI in marketing isn't to replace creative work but to automate the complex process of understanding customer behavior. AI systems continuously analyze data to answer critical questions about conversion, value, and budget waste, freeing up humans for strategic tasks.
View AI less as a tool for discrete tasks and more as the foundation for a central marketing hub. This system uses AI to create and maintain branded playbooks for all marketing activities, ensuring consistency and quality regardless of who is executing the work.
Most AI tools focus on automation, which often produces more average, noisy content. The superior approach is augmentation—designing AI to enhance a marketer's abilities and produce exceptional, not average, work. This shifts the goal from creating "more" to creating "better."
59% of creatives believe AI's top benefit is making choices bolder. They hope AI can provide real-time feedback and data-driven gut checks, giving them the evidence needed to convince risk-averse stakeholders to approve more daring creative concepts that might otherwise get watered down.
While AI offers efficiency gains, its true marketing potential is as a collaborative partner. This "designed intelligence" approach uses AI for scale and data processing, freeing humans for creativity, connection, and building empathetic customer experiences, thus amplifying human imagination rather than just automating tasks.
Asking an AI to 'predict' or 'evaluate' for a large sample size (e.g., 100,000 users) fundamentally changes its function. The AI automatically switches from generating generic creative options to providing a statistical simulation. This forces it to go deeper in its research and thinking, yielding more accurate and effective outputs.