logo
Marketing agencies using AI in workflows serve more clients2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

Marketing agencies using AI in workflows serve more clients2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

Advertisement

Of all the many industries, it’s marketing where AI is no longer an “innovation lab” side project but embedded in briefs, production pipelines, approvals, and media optimisation. A WPP iQ post published in December, based on a webinar with WPP and Stability AI, shows what AI deployment in daily operations looks like.

Here, we’re talking about a focus on the practical constraints that determine whether AI changes daily work or merely adds another layer of complexity or tooling.

Brand accuracy a repeatable capability

Marketing agencies’ AI treats brand accuracy as something to be engineered. WPP and Stability AI note that off-the-shelf models “don’t come trained on your brand’s visual identity”, so outputs can often look generic. The companies’ remedy is fine-tuning, that is, training models on brand-specific datasets so the model learns the brand playbook, including style, look, and colours. Then, these elements can be reproduced consistently.

WPP’s Argos is a prime example. After fine-tuning a model for the retailer, the team described how the model picked up details beyond the characters, including lighting and subtle shadows used in the brand’s 3D animations. Reproducing these finer details can be where time disappears in production, in the form of re-rendering and several rounds of approvals. When AI outputs start closer to “finished”, teams spend less time correcting and more time shaping narratives and adapting media for different channels.

Cycle time collapses (and calendars change)

WPP and Stability AI point out that traditional 3D animation can be too slow for reactive marketing. After all, cultural moments demand immediate content, not cycles defined in weeks or months. In its Argos case study, WPP trained custom models on two 3D toy characters so the models learned how they look and behave, including details such as proportions and how characters hold objects.

The outcome was “high-quality images…generated in minutes instead of months”.

The accelerated workflow moves rather than removes production bottlenecks. If generating variations becomes fast, then review, compliance, rights management and distribution, become the constraints. Those issues were always there, but the speed and efficiency of AI in this context shows the difference between what’s possible, and systems that have become embedded and accepted into workflows. Agencies that want AI to change daily operations have to redesign the workflow around it, not just add the technology as a new tool.

The “AI front end” becomes essential

WPP and Stability AI call out a “UI problem”, wherecreative teams lose time interfaces to common tools are “disconnected, complex and confusing”, forcing workarounds and constant asset movement between tools. Often, responses are bespoke, brand-specific front ends with complex workflows in the back end..

WPP positions WPP Open as a platform that encodes WPP’s proprietary knowledge into “globally accessible AI agents”, which helps teams plan, produce, create media, and sell. Operational gains come from cleaner handoffs between tools, as work moves from briefs into production, assets into activation, and performance signals back into planning.

Self-serve capability changes agency operations

AI-powered marketing platforms are also becoming client-facing. Operationally, that pushes agencies to concentrate on the parts of the workflow their clients can’t self-serve easily, like designing the brand system, building fine-tunings, and ensuring governance is embedded.

Governance moves from policy to workflow

For AI to be used daily, governance needs to be embedded where work happens. Dentsu describes building “walled gardens”, which are digital spaces where employees can prototype and develop AI-enabled solutions securely, and commercialise the best ideas. This reduces the risk of sensitive data exposure and lets experiments move into production systems.

Planning and insight compress too

The operational impact is not limited to production. Publicis Sapient describes AI-powered content strategy and planning that “transforms months of research into minutes of insight” by combining large language models with contextual knowledge and prompt libraries [PDF]. Research and brief development compress work schedules, so more client work can happen and the agency has faster responses to shifting culture and platform algorithms.

What changes for people

Across these examples, the impact on marketing professionals is one of rebalancing and shifting job descriptions. Less time goes on mechanical drafting, resizing, and versioning, and more time goes on brand stewardship. New operational roles expand, with titles like– model trainer, workflow designer, and AI governance lead.

AI makes the biggest operational difference when agencies use customised models, usable front ends that make adoption (especially by clients) frictionless, and integrated platforms that connect planning, production, and execution.

The headline benefit is speed and scale, but the deeper change is that marketing delivery starts to resemble a software-enabled supply chain, standardised, flexible where it needs to be, and measurable.

(Image source: “Solar Wind Workhorse Marks 20 Years of Science Discoveries” by NASA Goddard Photo and Video is licensed under CC BY 2.0.)

 

Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is part of TechEx and co-located with other leading technology events. Click here for more information.

AI News is powered by TechForge Media. Explore other upcoming enterprise technology events and webinars here.

Recommended

Google reveals its own version of Apple’s AI cloud2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

Google reveals its own version of Apple’s AI cloud2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

Google has rolled out Private AI Compute, a new cloud-based processing system designed to bring the privacy of on-device AI to the cloud. The platform aims to give users faster, more capable AI experiences without compromising data security. It combines Google’s most advanced Gemini models with strict privacy safeguards, reflecting the company’s ongoing effort to make AI both powerful and responsible.

Advertisement

Cisco: Only 13% have a solid AI strategy and they’re lapping rivals2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

Cisco: Only 13% have a solid AI strategy and they’re lapping rivals2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

If you’ve ever thought companies talk more than act when it comes to their AI strategy, a new Cisco report backs you up. It turns out that just 13 percent globally are actually prepared for the AI revolution.

How Lumana is redefining AI’s role in video surveillance2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

How Lumana is redefining AI’s role in video surveillance2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

For all the progress in artificial intelligence, most video security systems still fail at recognising context in real-world conditions. The majority of cameras can capture real-time footage, but struggle to interpret it. This is a problem turning into a growing concern for smart city designers, manufacturers and schools, each of which may depend on AI to keep people and property safe.

Reply’s pre-built AI apps aim to fast-track AI adoption2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

Reply’s pre-built AI apps aim to fast-track AI adoption2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

Adopting AI at scale can be difficult. Enterprises around the world are discovering the pace of AI deployment is frustratingly slow as they face implementation, integration, and customisation challenges. Generative AI is undoubtedly powerful, but it can be complex, particularly for businesses starting from scratch.

China’s generative AI user base doubles to 515 million in six months2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

China’s generative AI user base doubles to 515 million in six months2025’s AI chip wars: What enterprise leaders learned about supply chain realityL’Oréal brings AI into everyday digital advertising production3 best secure container images for modern applications

The AI adoption in China has reached unprecedented levels, with the country’s generative artificial intelligence user base doubling to 515 million in just six months, according to a report released by the China Internet Network Information Centre (CNNIC).

logo

Disclaimer

The content available on this website (including text, graphics, images, and information) is intended for general informational purposes only. Materials, details, terms of use, and descriptions presented on these pages may be changed without prior notice.

© 2025 91info.top