The US military used AI to pick thousands of targets but missed a note saying one was a school The US military used AI to select thousands of targets during the Iran war, but a missed intelligence note and disconnected databases led to a missile strike on an Iranian school that killed 120 children. Investigators found that an analyst flagged the school in 2019, but the warning never reached the target database due to system failures. The incident highlights critical gaps in the military's targeting infrastructure, which AI was supposed to improve. The US military used AI to pick thousands of targets but missed a note saying one was a school The probe into a missile strike on an Iranian school exposes serious gaps in the US military's targeting infrastructure. AI is supposed to close them. A missed note from an intelligence analyst and systems that didn't talk to each other: according to a Los Angeles Times https://www.latimes.com/world-nation/story/2026-06-28/us-analyst-missed-remark-surfaced-in-inquiry-into-deadly-iran-school-strike report, these are the two central failures investigators uncovered while looking into a missile strike on an Iranian school. The late-February attack killed an estimated 120 children. The strike took place during a war in which the US military, according to earlier reports https://the-decoder.com/us-military-uses-anthropics-claude-for-ai-driven-strike-planning-in-iran-war/ , used AI at scale for target selection for the first time. Anthropic's Claude model was embedded in Palantir's Maven Smart System and suggested roughly 1,000 targets on day one. Years before the strike, an analyst noticed changes at a site in the city of Minab in southeastern Iran. The US had previously classified the building as an Iranian military naval facility. By then, it had become an elementary school. A note nobody ever saw The analyst flagged the changes in 2019 using a digital intelligence tool, according to the LA Times. The critical problem was that the tool wasn't linked to the official target database the US military uses to develop strike targets. The information never reached commanders. The building was reviewed multiple times, but nobody updated the database. According to the New York Times, the imagery used was seven years old. At least two intelligence databases have never been connected to the authoritative target database, the LA Times reports. In Syria, target data in the mid-2010s was sometimes 10 or 20 years old. At the center sits a database called MIDB, built in the 1980s, that still relies heavily on manual input. It's supposed to be replaced by an automated system called MARS, but the transition is years behind schedule. The US Government Accountability Office flagged long-standing deficiencies in the system back in 2020. This aging infrastructure stands in stark contrast to the speed of AI elsewhere. A WSJ report https://the-decoder.com/u-s-military-strikes-3000-targets-in-iran-with-ai-support-but-oversight-remains-underinvested/ put the number of targets hit in the first days at over 3,000 and warned that oversight mechanisms for human review of lethal decisions were underfunded. Even then, US investigators considered American forces likely responsible for the school strike, a conclusion the LA Times report now backs up with specific technical failures. AI is supposed to fix what broken databases can't Some targeting experts hope that connecting digital systems and adding more AI will reduce errors going forward, the LA Times reports. An automated cross-check against public services like Google Maps could flag anomalies for human review. The Pentagon moved in exactly that direction after the report, unveiling an agentic AI initiative. The Defense Intelligence Agency, which oversees both MIDB and MARS, didn't directly address the flaws or the delayed transition when contacted by Bloomberg. A spokesperson pointed broadly to the thorough analysis conducted by assigned analysts. The Pentagon's own AI pioneer sounds the alarm Under current US targeting doctrine, military commanders decide whether to prioritize and strike a target. They must distinguish military from civilian objects. There's also an optional process called target vetting that checks the accuracy of the underlying intelligence. One former senior intelligence official told the LA Times it would be unthinkable for a commander to skip that step during strikes on the first day of a new campaign. Centcom reviewed targets before operations against Iran, but whether the optional vetting process was initiated remains unclear. The sharpest criticism in the report comes from a striking source. Jack Shanahan, a retired Air Force three-star general, was the first director of the Joint Artificial Intelligence Center established in 2018. Before that, he led the AI program Project Maven. That makes him one of the architects of AI adoption in the US military, the same military now relying on that very Maven system. At the time, Shanahan predicted AI would play a central role in any potential conflict between the US and China, and that within 20 years, algorithms would compete against each other. Shanahan told the LA Times there is no excuse for a command failing to verify the accuracy of its intelligence. He described targeting itself as a moribund career field that withered over two decades while the military focused on counterterrorism. As early as 2017, he said, he could barely find people to fill these roles. 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