Jascha Kaykas-Wolff is a veteran Silicon Valley executive who’s seen waves of various innovation sweep throughout the market as CMO of Mozilla, BitTorrent, and other business.
This time, generative AI is the hot brand-new thing. There’s a healthy argument today over whether this innovation is genuinely important for end users or not. Kaykas-Wolff’s hands-on experience is useful here.
He and his partner, the artist Alexandra Roberts, developed a high-end, cannabis-infused mixed drink that releases in early 2026. It’s called “Eleanore,” part of a wider brand name they’re establishing to take pot items from smelly, bong-filled basements into more glamorous environments such as personal clubs, white wine bars, and barroom.
A couple of years earlier, a venture like this would have taken a minimum of 6 months, cost approximately $500,000, and needed numerous companies and specialists. Rather, Kaykas-Wolff and his partner are primarily utilizing AI tools, consisting of ChatGPT, Claude, ElevenLabs, and Adorable. That’s assisted them move much faster and conserve a great deal of cash.
” We reached the exact same point in about 4 weeks for less than 10% of the expense,” Kaykas-Wolff informed me.
Here’s how they have actually been utilizing AI tools to get their Eleanore mixed drink off the ground. This Q&A has actually been modified for length and clearness.
What AI tools did you utilize to produce the site and other marketing products for this item?
We never ever dealt with AI as a trick. It is our group. It teams up with us throughout technique, imagination, and execution, and it’s still doing so as we develop brand name extensions and physical retail experiences.
We have actually constructed practically every part of Eleanore with AI. Our core toolset begins with ChatGPT, and we likewise utilize Claude and Claude Code. The mix of all 3 permits us to benefit from the multimodal intelligence that emerges when they feed off one another. This setup lets us move fluidly in between innovative and technical work. ElevenLabs powers our voice experiments, and Lovable has actually been the foundation for our web existence.
From top to bottom, we run through numerous tailored GPTs. Alexandra’s main GPT is called Tilda; mine is Ferris. Alexandra leads all of Eleanore’s innovative instructions in collaboration with Tilda, treating her like an extension of her sketchbook. She feeds in initial illustrations, textures, and state of mind referrals, then repeats till we arrive on the visual that feels real to Eleanore. Together, they and other GPT partners have actually established the brand name guide, visual possessions, typography, and even the interaction patterns for the website.
Ferris functions as our service partner. It handles outreach to suppliers and co-manufacturers, designs the marketplace, tracks legal shifts, and maps rivals.
ChatGPT drives brand name architecture, placing language, SEO, and service research study. Claude concentrates on monetary modeling and P&L management. Together, they support item R&D as we co-develop with partners. Adorable builds and preserves the website with deep combinations into Mailchimp, and other functional stacks. ElevenLabs assists us check out the brand name’s audio identity.
Beyond innovative work, we have actually utilized AI to recognize terpene blends, basically functioning as our chemist, AI has actually supported bottling estimates and R&D research study, and AI has actually assisted link us with Process Authorities, Bottle makers, and enclosure designers. We have actually even utilized AI to establish technical schematics for our product packaging and physical items. For operations, Willow Voice for transcription, Fathom tape-records our conferences, AssemblyAI deals with transcription, and Zapier automates interactions and scheduling.
How did you construct these customized GPTs, Tilda and Ferris?
We constructed Tilda and Ferris on top of OpenAI’s and Anthropic’s structure designs. They are not simply chatbots; they learn representatives tuned to particular innovative and functional domains.
Tilda is Alexandra’s innovative partner. She’s been fine-tuned through numerous triggers, visual referrals, and brand name possessions to comprehend Eleanore’s style language and psychological tone. Tilda produces and critiques visual ideas, checks out typography and color systems, and assists equate Alexandra’s sketches and textures into digital kind.
Ferris functions as our operations and technique partner. He’s trained on our internal service information, supplier research study, and monetary structures. Ferris runs market analysis, designs earnings and loss declarations, handles outreach workflows, and collaborates with other AI systems consisting of Claude and Lovable.
We constructed both utilizing a layered technique: the base designs offer thinking and language generation, while our customized memory layers consist of MCPs and structured triggers at the job level to produce relentless context. They act more like AI partners than standard assistants. Self-governing adequate to manage whole workflows, however constantly under human instructions.
What tools would you have utilized for the Eleanore job 4 years earlier, before generative AI?
If we had actually begun Eleanore 4 years earlier, before generative AI, the fact is we most likely would not have actually constructed it. The technique we would require then was cost-prohibitive.
That procedure would have been slower, more direct, and greatly depending on external professionals such as designers, web designers, market experts, and accounting professionals. In both of our previous experiences, innovative model was costly, time-bound, and resource-constrained. The old method required a waterfall-style workflow that required early, frequently irreparable choices rather of motivating expedition.
AI collapsed all of that. Rather of rundown a designer, waiting a week, then modifying, we can move from principle to execution in hours. Rather of being overwhelmed by the concept of releasing a brand-new line of product, we can conceptualize, research study, comprehend the competitive landscape, and recognize partners in hours, not weeks. The barrier in between vision and output has actually basically vanished.
Alexandra frequently states that 4 years earlier, she would have been equating her vision for other individuals to construct. Now she is developing it herself, straight, with her AIs.
What were the primary distinctions in between developing these possessions now and doing so with standard innovative tools?
The most significant distinction now is speed and depth of model. Before generative AI, innovative advancement was primarily about execution, which indicated refining something that currently existed. With AI, it has to do with discovery.
We no longer begin with a blank page. Every originality starts as a discussion in between us and our AIs. We can evaluate numerous innovative instructions, design business effect of each, and see what a launch may appear like, all within a single working session.
Another significant shift is that AI has actually blurred the line in between innovative and analytical work. In the past, those were different lanes. Designers managed looks. Strategists managed placing. Experts managed numbers. Now those procedures are incorporated. We can construct a design and a product packaging principle in the exact same workflow, notified by the exact same information and research study.
In useful terms, this implies we can explore innovative threat while remaining grounded in service reasoning. The tools do not change taste or instinct; they enhance them.
What items would you have utilized before? For how long would it have taken? Just how much would it have cost?
Before generative AI, we would have utilized the basic stack for digital brand name production: Adobe Creative Suite for style, Webflow or Squarespace for the website, Figma for models, Mailchimp for CRM, and Google Analytics for tracking. Each piece of that needed a various professional– a designer, a web designer, a UX lead, and frequently a brand name strategist or copywriter to connect all of it together.
For a task at the level of Eleanore, that group would likely have actually consisted of 5 to 7 individuals working for 3 to 4 months. Expenses would quickly have actually reached in between $75,000 and $150,000 for brand name identity, website style, and launch security alone, extending much greater once product packaging, item R&D, and compliance were included.
Compare that time, expense, and resource load with today.
Compared to the standard procedure, we have actually conserved remarkable quantities of time, cash, and human effort.
In the past, a task like Eleanore would have needed a minimum of 6 months of work and an overall spending plan of $300,000 to $500,000 to cover brand name advancement, style, solution, compliance, product packaging, photography, and marketing products. It likewise would have needed numerous companies and specialists: innovative, web, brand name technique, item style, and monetary modeling.
Today, utilizing AI, we reached the exact same point in about 4 weeks for less than 10% of that expense. Almost every phase was moved through with our tailored GPTs, depending on external partners just for physical production components such as taste style.
The distinction is not just speed and cost. It is utilize. The exact same innovative and functional energy now scales tremendously due to the fact that AI deals with the heavy lift in between concept and execution.
Any concerns with these brand-new tools? Anything that was much better with older ones?
The brand-new tools are effective, however not ideal. The most significant obstacle is trust. AI tools move rapidly and produce positive responses even when they are incorrect. We hear a quote from a Google AI Ethicist not too long ago: “AI resembles a teen. Positive in whatever and incorrect a great deal of the time.’ You need to remain hesitant, confirm every crucial output, and continuously test presumptions.
Another concern is overfitting to your own inputs. The more you tweak and feed your systems, the more they show your worldview. That works for consistency, however it can narrow innovative variety if you do not purposefully promote outdoors viewpoints.
Conventional innovative tools had actually friction integrated in. Groups examined, discussed, and re-interpreted each other’s work. That friction frequently made the work much better. Today, whatever relocations so quick that you need to produce your own checkpoints to ensure you are still seeing plainly.
We have actually likewise found out that some things are still much better by hand. Photography and the physical elements of brand name identity require human texture. AI can mimic feel, however it can not create the subtlety that originates from lived experience.
For Adorable particularly, did you keep utilizing it?
We still utilize Adorable every day. It has actually entered into our operating stack instead of a one-time construct tool.
We initially utilized it to introduce the Eleanore website, however ever since we have actually broadened its function. We incorporated it with Cloudflare for efficiency and security, and linked it to our backend databases for vibrant material and analytics. Adorable’s brand-new Adorable Cloud deals with scale, uptime, and caching incredibly well.
We kept the membership due to the fact that the platform keeps enhancing and it lets us make modifications immediately. We can upgrade the website, test projects, include material, or link to brand-new services without depending on designers or companies. That dexterity is vital.
What’s the primary takeaway for Service Expert readers?
The primary takeaway is that AI has actually turned little, innovative groups into major operators. What pre-owned to need whole departments can now be done by 2 individuals who comprehend how to team up with these systems.
AI does not simply make work much faster. It alters what is possible. It lets you check out concepts you would have deserted in the past due to the fact that of time, expense, or competence. The innovation gets rid of friction in between imagination and execution, which implies more individuals can construct enthusiastic things with less resources.
For us, Eleanore is evidence of that shift. 2 individuals constructed a superior brand name, from technique to voice, from web to R&D, utilizing tools that anybody can gain access to. The lesson is that AI will not change imagination. It broadens it.
Anything we missed out on here?
The only thing worth including is that this procedure has actually altered how we consider business structure. AI has actually collapsed the range in between concept and operation. It has actually made it possible for creators, artists, and little groups to run with the exact same accuracy and reach as big companies.
Eleanore has actually been both an innovative job and a systems experiment. We are evaluating how far human-AI partnership can go when the tools are dealt with as real partners instead of assistants. Up until now, the response is really far.
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Source: Business Insider.