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United StatesTechnology4 days ago

Probably raises $9M to build a more reliable kind of AI

Probably, a startup founded by Peter Elias, has raised $9 million in seed funding from Andreessen Horowitz to develop a more accurate approach to large language models (LLMs). The company aims to reduce hallucinations and factual errors in AI outputs by using a 'mech suit' system that checks LLM responses against a deterministic validator. Its first product is a data science tool that provides answers with citations and audit trails.

As LLMs have grown more powerful, hallucinations have proven stubbornly difficult to avoid. Errors pop up in even the smartest models, and while there are ways to catch those errors, the industry is still figuring out the best way to do it.

Probably , which just raised $9 million in seed funding from Andreessen Horowitz, is trying to build a more rigorous way to catch those errors.

As founder Peter Elias (pictured above) puts it, the company’s goal is to prevent hallucinations and simple factual errors from ever reaching the user, and achieve the kind of 99.99% accuracy that’s common in deterministic systems but much more difficult to reach with AI. As it turns out, bringing LLMs to that level of accuracy requires rethinking many of the basic assumptions of AI engineering.

Probably’s first product is a data science tool, built to produce quick answers from complex datasets. Each result comes with a citation and an audit trail for how it was developed, an increasingly common practice among AI tools.

But keeping errors from creeping into those summaries required an elaborate harness system that Elias describes as a “data science mech suit.” The LLM’s first-pass answers are checked against a deterministic validator system, which bounces back any results that don’t match the dataset. Crucially, the LLM has been trained against the validator, and the whole system is optimized for fast and accurate answers, the company said.

“What we learned building this was that the better your harness engineering is, the weaker the model can be,” Elias says. “If you can refine the context enough, the model does not have to work very hard to do the right thing. Basically, it’s an exercise in reducing ambiguity.”

That allows Probably’s data science tool to run on significantly smaller AI models. Elias says the current version is running on a model that’s “four classes weaker than the frontier models,” which means it can be run on local hardware (that is, a desktop computer instead of a data center), which reduces a huge amount of the token costs associated with AI use.

It’s a welcome idea at a time when token costs are rising and many customers are reassessing their AI budgets . And, Elias’ idea doesn’t end with data science, as the same engine can be extended to cover use cases like accounting or medical services — as Elias puts it, “any precision-sensitive use case.”

“I think it’s really interesting that the big AI labs have not even attempted to do this,” Elias says. “They’re incentivized not to, because they make money the more times you have to correct the model.”

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Russell Brandom has been covering the tech industry since 2012, with a focus on platform policy and emerging technologies. He previously worked at The Verge and Rest of World, and has written for Wired, The Awl and MIT’s Technology Review.

He can be reached at russell.brandom@techcrunch.com or on Signal at 412-401-5489.

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Source document: Pramaana Labs announcement

3 reports

TechCrunchParty-alignedCenter4 days ago
Pramaana Labs raises $27M seed round from Khosla Ventures to bring formal verification to AI

Pramaana Labs, a startup focused on improving AI reliability through formal verification techniques, has raised $27 million in seed funding led by Khosla Ventures. The company aims to apply mathematical formalization to AI systems used in high-stakes fields such as law, drug discovery, and tax preparation. Pramaana's approach combines traditional large language models with a deterministic layer to reduce errors and hallucinations.

Bias read (Center): The article provides a balanced overview of Pramaana Labs' technological innovation without taking a stance on political issues. It focuses on technical details, funding sources, and applications of AI rather than making value judgments or emphasizing any particular ideological perspective.

Official sources cited

  • organisation Pramaana Labs announcement
  • organisation Khosla Ventures investment
TechCrunchParty-alignedCenter5 days ago
Probably raises $9M to build a more reliable kind of AI

Probably, a startup founded by Peter Elias, has raised $9 million in seed funding from Andreessen Horowitz to develop a more accurate approach to large language models (LLMs). The company aims to reduce hallucinations and factual errors in AI outputs by using a 'mech suit' system that checks LLM responses against a deterministic validator. Its first product is a data science tool that provides answers with citations and audit trails.

Bias read (Center): The article discusses a technology development without taking a stance on political issues. It focuses on technical details of AI error prevention and does not frame the subject with political bias.

Official sources cited

  • organisation Probably's Founder Peter Elias
TechCrunchParty-alignedCenter7 days ago
KPMG pulls report on AI usage due to apparent hallucinations

KPMG has withdrawn a report on AI usage after it was found to contain hallucinations.

Bias read (Center): The article presents a factual summary of KPMG pulling a report due to hallucinations without overtly favoring any side. The tone is neutral, focusing on the fact that AI generated unreliable content rather than taking a stance on AI regulation or corporate responsibility.

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The official sources this coverage is built on. Read them directly to bypass framing.

  • organisationPramaana Labs announcement
  • organisationKhosla Ventures investment
  • organisationProbably's Founder Peter Elias