Springboards realized that parameters were blunt instruments for what it wanted to do. It does not make sense to dial up the randomness across the board; you only want to boost it at specific points in its output, he says.
For example, when you ask a chatbot βWhere should I go in Europe?β the model only needs to tweak the randomness just before it names a destination, not for every word in its response.
To make Flint do this, Springboards trained its version of Qwen 3 to identify the points in its output where more variety was possible and fill those spots with words or phrases that were a little more random.
βFlintβs programmed to throw an oddball in. Itβs more of an invitation to think wider,β says Maximilian Weigl, cofounder and chief strategy officer at Uncommon, a marketing firm. βThatβs super interesting.β
Weiglβs team uses Flint alongside ChatGPT, Claude, and Gemini. βYou canβt really create something boundary-breaking with tools that pull you back to the average,β he says.Β
And yet Weigl notes that nine times out of 10 the average is fine. You donβt always need to reach for extremes with something like Flint, he says: βMost people are fine with good enough. They want to see mass-market familiar things.β
Weigl also cautions against using any LLM too much. βI have a big problem when people rely on the output from any AI, including Flint,β he says. βIf I saw people on my team copy-pasting something from AI, Iβd be like, βThatβs not your job! Think, talk to other people, use your own voice.ββ
For now, Flint is aimed at advertisers and marketers because those are Springboardsβs customers. But Bingemann and Browne insist that a lack of variety is a problem for anyone using chatbots.
The idea is to give people the choice and leave it to them to decide if the result is good or not, says Bingemann. βVariety is great when youβre trying to spark ideas,β he says. βLetβs go down this route instead of letting the machines do it all and ending up in a gray, boring world.β


