For years, PR and communications teams in technology companies have optimised for three things: media coverage, message pull-through and, more recently, search visibility.
That model is no longer enough.
Today, decision makers, buyers, partners and even journalists are asking AI assistants to help them shortlist vendors, agencies and platforms. Tools like ChatGPT, search copilots and embedded enterprise assistants are already shaping perceptions before a human ever visits your website or reads a piece of coverage.
That shift has profound implications for how PR and communications teams do their work.
Traditionally, PR success was measured by where you appeared and what was said. The assumption was that humans would read, interpret and remember the story.
AI does not work like that.
Large language models ingest vast volumes of content and look for clarity, consistency and reinforcement across sources. They do not reward one strong article if ten others describe your organisation differently. They do not cope well with ambiguity. They look for repeatable patterns.
This means PR content now plays a direct role in how AI systems describe your organisation, your category and your relevance to specific problems.
Not indirectly. Directly.
AI visibility is not about gaming prompts or chasing hacks. It is about whether an AI can confidently answer questions like:
Press coverage, executive quotes, bylines, boilerplates and thought leadership all become training data. If those signals are inconsistent, outdated or vague, AI outputs will be too.
This is why AI visibility is now a communications and PR issue, not just an SEO or technical one.
Working with technology brands across APAC, a few patterns show up repeatedly.
Different spokespeople describe the company in different ways. One interview frames the business as a platform, another as a services provider, another as a data company.
Humans can tolerate that variation. AI cannot.
When models detect inconsistency, they hedge. The result is vague descriptions or, worse, exclusion from answers altogether.
Technology companies evolve quickly, but language lags behind.
Old product descriptions, retired services, previous brand names or outdated market labels continue to appear in coverage, profiles and third-party content.
AI systems do not know what is current unless you clean it up. They happily blend past and present into a confused narrative.
For companies that have pivoted, expanded or repositioned, this is one of the fastest ways to damage AI visibility.
Many technology brands produce thought leadership that is polished and insightful, but disconnected from what they actually build or enable.
From an AI visibility perspective, this is a problem.
If your commentary discusses broad trends like AI ethics, digital transformation or innovation culture, but never clearly ties those ideas back to your product, platform or role in the ecosystem, AI systems struggle to categorise you.
Humans may enjoy reading it. AI cannot confidently answer questions like:
For AI systems, effective thought leadership needs two things at once: a clear point of view and a clear connection to real-world capability.
PR does not need to reinvent itself, but it does need to become more deliberate.
Your core description should be short, precise and repeatable.
Every press release, quote, byline and bio should reinforce the same fundamentals:
If your own team cannot summarise this in two sentences, AI systems will not either.
AI does not distinguish between a homepage, a LinkedIn bio and a media quote. It blends them.
PR and comms teams should actively govern:
Consistency here is more valuable than creative variation.
Stories matter, but categories are how AI recommends.
If you want to be known as a cloud security provider, a fintech infrastructure platform or an AI data company, that language needs to appear clearly and consistently in credible third-party contexts.
PR is one of the strongest tools you have to reinforce those category signals at scale.
AI is already influencing early-stage buying decisions.
I regularly see teams ask AI assistants questions like:
If your brand does not appear in those answers, you are not being rejected. You are simply not being considered.
That is why AI visibility is moving from a digital concern to a strategic communications issue.
This is the good news.
PR and communications teams already understand:
AI visibility does not replace PR. It amplifies its importance.
The teams that adapt fastest will not just protect reputation, they will shape how their organisation is discovered and understood in an AI-first world.
The question is no longer whether AI affects PR and communications.
The question is whether PR teams choose to lead how their organisation shows up in AI systems, or leave that definition to technology, SEO or IT teams alone.
From where I sit, PR and communications have never been more strategically important.