LinkedIn and Twitter have become carefully constructed worlds where influence is built through repetition, engagement hooks, and algorithmic familiarity. Recently, I spoke with an entrepreneur who transitioned into a fin-fluencer, leveraging AI-based products to grow a substantial following on LinkedIn. His approach was methodical—posting financial insights generated through GPT, framing them as personal wisdom, and distributing them at optimal times. What stood out was how surprised people were to discover that much of his advice came from AI. The reaction was strange, considering how normalized AI-generated content has become. Yet, there’s still an implicit trust in human-branded advice, even when the source is automated. The real challenge isn’t creation but distribution—consistently feeding the algorithm to stay visible.
The fin-fluencer’s strategy highlighted a broader trend: shallow but effective content dominates because platforms reward volume over depth. CustomGPT and similar tools make it easy to produce templated advice, financial rules, or generic motivational posts. The real differentiator isn’t the quality of the output but the ability to distribute it effectively. LinkedIn, in particular, thrives on recycled ideas packaged as personal experience. The same principles apply to Twitter, where threads perform well not because they are original but because they align with what the algorithm already favors. The tools are accessible; the real work lies in understanding platform mechanics and playing the distribution game.
What’s unsettling is how willingly audiences accept AI-generated content as human expertise. The fin-fluencer noted that engagement spikes when posts are framed as personal revelations rather than AI-assisted insights. This suggests that authenticity, or the illusion of it, still drives trust. Yet, the line between human and machine-generated content is blurring. People don’t seem to mind as long as the advice is useful, even if its origins are impersonal. The larger implication is that expertise is no longer about deep knowledge but about curation and presentation. The ability to repackage existing ideas convincingly matters more than creating something new.
The rise of AI-assisted content creation doesn’t mean human input is obsolete—it just shifts the focus. Distribution, timing, and framing become the real skills. The tools are secondary. Whether it’s financial advice or thought leadership, the winners are those who understand platform dynamics, not necessarily those with the best ideas. This creates a paradox: the more content floods these platforms, the harder it becomes to stand out, yet the formula for visibility remains predictable. The carefully constructed worlds of LinkedIn and Twitter reward those who play the game, not those who break the rules.