The writer of that put up on X was referring to a web-based intelligence dashboard following the US-Israel strikes towards Iran in actual time. Constructed by two individuals from the enterprise capital agency Andreessen Horowitz, it combines open-source knowledge like satellite tv for pc imagery and ship monitoring with a chat perform, information feeds, and hyperlinks to prediction markets, the place individuals can guess on issues like who Iran’s subsequent “supreme chief” will probably be (the current number of Mojtaba Khamenei left some bettors with a payout).
I’ve reviewed over a dozen different dashboards like this within the final week. Many have been apparently “vibe-coded” in a few days with the assistance of AI instruments, together with one which acquired the eye of a founding father of the intelligence large Palantir, the platform by way of which the US navy is accessing AI fashions like Claude through the warfare. Some have been constructed earlier than the battle in Iran, however almost all of them are being marketed by their creators as a option to beat the gradual and ineffective media by getting straight to the reality of what’s occurring on the bottom. “Simply discovered extra in 30 seconds watching this map than studying or watching any main information community,” one commenter wrote on LinkedIn, responding to a visualization of Iran’s airspace being shut down earlier than the strikes.
A lot of the highlight on AI and the Iran battle has rightfully been on the position that fashions like Claude could be taking part in in serving to the US navy make selections about the place to strike. However these intelligence dashboards and the ecosystem surrounding them replicate a brand new position that AI is taking part in in wartime: mediating info, typically for the more severe.
There’s a confluence of things at play. AI coding instruments imply individuals don’t want a lot technical talent to assemble open-source intelligence anymore, and chatbots can supply quick, if doubtful, evaluation of it. The rise in faux content material leaves observers of the warfare wanting the form of uncooked, correct evaluation usually accessible solely to intelligence businesses. Demand for these dashboards can also be pushed by real-time prediction markets that promise monetary rewards to anybody sufficiently knowledgeable. And the truth that the US navy is utilizing Anthropic’s Claude within the battle (regardless of its designation as a provide chain danger) has signaled to observers that AI is the intelligence software the professionals use. Collectively, these tendencies are creating a brand new sort of AI-enabled wartime circus that may distort the circulation of data as a lot because it clarifies it.
As a journalist, I imagine these kinds of intelligence instruments have a whole lot of promise. Whereas many people know that real-time knowledge on transport routes or energy outages exist, it’s a robust factor to truly see all of it assembled in a single place (although utilizing it to look at a warfare unfold whilst you munch on popcorn and place bets turns the warfare into perverse leisure). However there are actual causes to assume that these kinds of uncooked knowledge feeds aren’t as informative as they could really feel.
Craig Silverman, a digital investigations skilled who teaches investigative strategies, has been conserving a log of those dashboards (he’s as much as 20). “The priority,” he says, “is there’s an phantasm of being up to the mark and being in management, the place all you’re actually doing is simply pulling in a ton of indicators and never essentially understanding what you’re seeing, or having the ability to pull out true insights from it.”
One drawback has to do with the standard of the data. Many dashboards function “intel feeds” with AI-generated summaries of complicated, ever-changing information occasions. These can introduce inaccuracies. By design, the info is just not particularly curated. As an alternative, the feeds simply show every part without delay, with a map of strike areas in Iran subsequent to the costs of obscure cryptocurrencies.









