Of all the debates raging about the potential downsides of AI, there is one worry causing the most hand-wringing among AI enthusiasts in Silicon Valley. Their fear is that the giant AI labs that sell proprietary models are somehow acting like Trojan horses.
The concern is that, as startups and enterprises use AI models from labs like OpenAI and Anthropic, the labs gain ever-increasing access to those companiesâ most sensitive business information. The model makers can then use that knowledge for themselves, potentially becoming competitors to their own customers. Those issuing such warnings range from VCs like Jason Calacanis to Palantir CEO Alex Karp.
Now, in a surprising blog post published on Sunday, Microsoft CEO Satya Nadella has joined this crowd. Nadella warns that AI users (the âbuyersâ as he calls them) are paying twice. They knowingly spend for AI token usage but they also, obliviously, hand over valuable data in the process.
âYou essentially pay for intelligence twice, once with money, and again with something even more valuable: the proprietary knowledge you must reveal to make that intelligence useful. The better you want the model to perform, the more of that knowledge you have to feed it!â he writes.
Most dangerously, enterprises are literally teaching the models about the nuances of their businesses, he argues.
âModels learn from âexhaust,â the prompts people write, the tools agents use, and especially the corrections people make when the model is wrong. Every correction is distilled into institutional know-how,â he writes.
This is âthe kind of knowledge a competitor could never buy,â and yet enterprises are handing it over.
Nadella argues that if AI companies get to freely scrape the internet to train their models, itâs only fair that enterprises get to study â or âdistillâ â those models in return. âDistillationâ is the practice of using a modelâs own outputs to learn how it works and to train a new, often cheaper, model based on those insights. In February, Anthropic accused Chinese open source models of sending millions of prompts to Claude as a way to improve their own models, and urged the U.S. government crack down on export controls.
Nadellaâs point is that model makers canât have it both ways. Itâs hypocritical for them to freely train on the worldâs data while restricting others from doing the same to their models.
âWhile the great innovation that comes from model providers having fair use rights to train models on public data is needed, I find it ironic that the status quo is to then turn around and impose restrictive terms on distillation,â Nadella writes.
Nadella is particularly concerned when model makers âreserve the right to learn from customer usage and interaction data.â
Nadellaâs solution is the kind of thing the CEO of a giant cloud provider would suggest. He wants companies to âretain ownershipâ of their data, including prompts, feedback, etc. So heâs urging them to build their own âproprietary learning environmentsâ on the cloud (where their data is likely already stored anyway and, conveniently, could mean Microsoftâs cloud, Azure). He also wants companies to build in what he calls âorchestration layersâ â essentially, a way to easily switch between AI models from different providers rather than being locked into one. Tools like AI âgatewaysâ that let companies do exactly this have become increasingly popular.
While Nadella never uses the words âopen sourceâ as the method for retaining ownership, this is an obvious subtext. Yet, thereâs another subtext.
Large companies, many of which still have some of their own data centers in addition to using the cloud, are already moving to open source models installed on their own premises (âon-prem,â in industry jargon). Idit Levine, founder and CEO of Solo.io â which makes networking and security software that helps enterprises manage AI systems â says sheâs seeing exactly this shift play out with her own customers. After experimenting with proprietary model makers, they start asking themselves: âCan I take an open source model and run it on-prem? It will do almost 90% of what the big oneâs doing. It will cost way less,â she tells TechCrunch. âThey understand that, and they can control it.â
Solo.ioâs technology was selected last year to be the tech powering the Linux Foundationâs Agentgateway project. Her company counts enterprises like T-Mobile, ADP, and SAP as customers. She sees companies increasingly installing on-premise open source models and sees it as the next big wave in enterprise AI use.
Sheâs not alone. Vercel (best known as a platform for building and hosting websites, which has recently added AI model-switching tools) and OpenRouter (a company that helps developers route requests across different AI models) are both seeing a surge in traffic to open source models. In fact, open models accounted for 29% of all traffic routed through Vercelâs gateway last month.
With the CEO of Microsoft, a company that has invested in both OpenAI and Anthropic, now openly urging enterprises to be wary of using proprietary models, weâll bet this trend continues to grow. âIn consuming intelligence, you are creating intelligence. And what you create should belong to you,â Nadella writes.
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