DOGE has built an AI tool to slash federal regulations

AI News - TechCrunch
Jul 27, 2025 14:39
Anthony Ha
1 views
aistartupstechnology

Summary

The Department of Government Efficiency (DOGE) plans to deploy a new AI tool aimed at cutting 50% of federal regulatory mandates within a year of President Trump's return to office. This initiative highlights the growing use of AI in streamlining government processes and could set a precedent for leveraging AI to reshape regulatory frameworks.

The Department of Government Efficiency has presented plans to use a new AI tool to eliminate half of the federal government’s regulatory mandates by the first anniversary of President Donald Trump’s return to office, according to The Washington Post.

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