
Pangram Closes $4 Million in Seed Funding for AI Detection Technology
Our investors recognize the potency and accuracy of our technology and are standing with Pangram as we continue to gain customers and improve our value proposition.
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'Identifying AI text with confidence is increasingly essential across education, business, and the media, and we have the best technology to do that,' said Pangram Co-Founder and CEO Max Spero. 'Our investors recognize the potency and accuracy of our technology and are standing with Pangram as we continue to gain customers and improve our value proposition,' he said.
Leading the seed round is ScOp, a venture capital firm in California. ScOp is joined in the round by Script Capital, and Cadenza, along with a handful of individual investors. Haystack VC was a lead investor in the initial, pre-seed funding round.
'This round was successful, in part, because our investors were impressed by the accuracy of the technology and excited about the market opportunity,' said Co-Founder and CTO Bradley Emi.
With the funding, Pangram will continue to develop partnerships in higher education institutions, which have been struggling to adequately address misuse of AI among students. The company will also build on its existing customer and partner base among businesses and media support organizations which rely on Pangram to establish the authenticity of news development, product reviews, and other written material.
'We set out to build the most accurate AI detection technology, one that can be trusted in education and business sectors, and Pangram has proven this out time and time again,' added Spero.
Pangram has released summaries of four independent, university-backed studies of AI detection technology showing that Pangram's technology is the most accurate in the market.
Emi and Spero have master's degrees in computer science from Stanford University, where they met as undergraduates. Before founding Pangram, Emi was a machine learning engineer at Tesla, and Spero was an AI engineer at Google.
About Pangram
Pangram Labs is the technology leader in AI detection systems, surpassing other detection providers in accuracy, reliability, and information delivery. Pangram's detection systems are relied on by thousands of businesses, primarily for assessing and addressing public reviews of products and services, many of which are compromised by AI. Founded by classmates at Stanford University, Pangram is gaining market traction in education as the high-accuracy alternative for assessing the authenticity of student work. Follow Pangram on LinkedIn.

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Correction: August 11, 2025 — A previous version of this story incorrectly stated Louis Hyman teaches at Cornell, his former employer. He now teaches at Johns Hopkins. Aki Ito is a chief correspondent at Business Insider. Read the original article on Business Insider Error in retrieving data Sign in to access your portfolio Error in retrieving data Error in retrieving data Error in retrieving data Error in retrieving data