Want to get featured here? Explore premium visibility opportunities.

Contact us

AI NewsGoogle VP warns that two types of AI startups may not survive

Google VP warns that two types of AI startups may not survive

12:22 AM IST · February 22, 2026

Google VP warns that two types of AI startups may not survive

Loading the player… The generative AI boom minted a startup a minute. But as the dust starts to settle, two once-hot business models are looking more like cautionary tales: LLM wrappers and AI aggregators. Darren Mowry, who leads Google’s global startup organization across Cloud, DeepMind, and Alphabet, says startups with these hooks have their “check engine light” on. LLM wrappers are essentially startups that wrap existing large language models, like Claude, GPT, or Gemini, with a product or UX layer to solve a specific problem. An example would be a startup thatuses AI to helps students study. “If you’re really just counting on the back end model to do all the work and you’re almost white-labeling that model, the industry doesn’t have a lot of patience for that anymore,” Mowry said on thisweek’s episode of Equity. Wrapping “very thin intellectual property wrapped around Gemini or GPT-5” signals you’re not differentiating yourself, Mowry says. “You’ve got to have deep, wide moats that are either horizontally differentiated or something really specific to a vertical market” for a startup to “progress and grow,” he said. Examples of the deep moat LLM wrapper type include Cursor, a GPT-powered coding assistant, or Harvey AI, a legal AI assistant. In other words, startups can no longer expect to slap a UI on top of a GPT and get traction on their product, like they could, perhaps, in mid-2024 when OpenAIlaunched its ChatGPT store. The challenge now is to build sustainable product value. AI aggregators are a subset of wrappers — they’re startups that aggregate multiple LLMs into one interface or API layer to route queries across models and give users access to multiple models. These companies typically provide an orchestration layer that includes monitoring, governance, or eval tooling. Think: AI search startup Perplexity or developer platform OpenRouter, which provides access to multiple AI models via a single API. While many of these platforms have gained ground, Mowry’s words are clear to incoming startups: “Stay out of the aggregator business.” Generally speaking, aggregators aren’t seeing much growth or progression these days because, he says, users want “some intellectual property built in” to ensure they’re routed to the right model at the right time based on their needs — not because of behind-the-scenes compute or access constraints. Mowry has been in the cloud game for decades, cutting his teeth at AWS and Microsoft before setting up shop at Google Cloud, and he’s seen how this plays out. He said the situation today mirrors the early days of cloud computing in the late 2000s/early 2010s as Amazon’s cloud business started taking off. At that time, a crop of startups sprang up to resell AWS infrastructure, marketing themselves as easier entry points that provided tooling, billing consolidation, and support. But when Amazon built its own enterprise tools and customers learned to manage cloud services directly, most of those startups were squeezed out. The only survivors were the ones who added real services, like security, migration, or DevOps consulting. AI aggregators today face similar margin pressure as model providers expand into enterprise features themselves, potentially sidelining middlemen. For his part, Mowry is bullish on vibe coding and developer platforms, which had a record-breaking year in 2025 with startups like Replit, Lovable, and Cursor (all Google Cloud customers, per Mowry) attracting major investment and customer traction. Mowry also expects strong growth in direct-to-consumer tech, in companies that put some of these powerful AI tools into the hands of customers. He pointed to the opportunity for film and TV students to use Google’s AI video generator Veo to bring stories to life. Beyond AI, Mowry also thinks biotech and climate tech are having a moment — both in terms of venture investment going into the two industries and the “incredible amounts of data” startups can access to create real value “in ways we would never have been able to before.”

read more

Latest AI News

View All News →
Adaption aims big with AutoScientist, an AI tool that helps models train themselves

Adaption aims big with AutoScientist, an AI tool that helps models train themselves

For years, AI researchers have anticipated the moment when AI systems will be able to improve themselves better than humans could. With investors pouring money into a new generation of research-driven AI labs, there are more resources than ever available to pursue the goal. Now, one of those neolabs has taken a major step towards making it real. On Wednesday,Adaptionintroduced a new product calledAutoScientistthat helps models learn specific capabilities quickly by using an automated approach to conventional fine-tuning. The techniques are applicable to a wide range of fields, but the Adaptation team is particularly focused on the potential for speeding up and easing the process of training and fine-tuning a frontier-level AI model. According to co-founder and CEO Sara Hooker, who previously worked as VP of AI research at Cohere, AutoScientist represents a new way to approach the AI training process. “What’s super exciting about it is that it co-optimizes both the data and the model, and learns the best way to basically learn any capability,” Hooker told TechCrunch. “It suggests we can finally allow for successful frontier AI trainings outside of these labs” AutoScientist builds on the company’s existing data offering,Adaptive Data, which aims to make it easier to build high-quality datasets over time. AutoScientist, meanwhile, is designed to turn those continuously improving datasets into continuously improving AI models. “Our view at Adaption is that the whole stack should be completely adaptable, and should basically optimize on the fly to whatever task you have,” Hooker says. Of course, that approach will only be as good as the results. In its launch materials, Adaption boasts that AutoScientist has more than doubled win-rates across different models — impressive numbers, but difficult to put into context. Since the system is built to adapt models to specific tasks, conventional benchmarks like SWE-Bench or ARC-AGI aren’t applicable. Still, Adaption is confident that users will see the difference once they try AutoScientist out — so confident that the lab is making the tool free to use for the first 30 days after its release. “The same way that code generation unlocked a lot of tasks, this is going to unlock a lot of innovation at the frontier of different fields,” Hooker says.

1 hour ago

View

Zoho Commits ₹70 Crore to ONDC to Empower MSMEs with Accessible Sovereign Tech

Zoho Commits ₹70 Crore to ONDC to Empower MSMEs with Accessible Sovereign Tech

With this investment, Zoho seeks to support MSMEs in their digital transformation and contribute to India's economic growth.

1 hour ago

View

 Proximal Cloud, NxtGen Partner to Enable Sovereign AI Deployments in India

Proximal Cloud, NxtGen Partner to Enable Sovereign AI Deployments in India

The partnership targets regulated sectors with compliant, private AI infrastructure and local data control.

1 hour ago

View

AIM Launches ‘Best Firm for GCC Talent’ Certification

AIM Launches ‘Best Firm for GCC Talent’ Certification

The new certification programme focuses on culture, learning, and retention across India’s various Global Capability Centres.

1 hour ago

View