CEO: “token efficiency needs to drop 90%” Dude… just write “\no_think” before you ‘summarize this email’ prompts
Summary
Palo Alto Networks CEO Nikesh Arora warns that AI token costs need to fall 90% for widespread enterprise adoption, citing budget strains and the need for further efficiency improvements beyond OpenAI's 54% token efficiency gain.
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Cached at: 07/10/26, 06:20 AM
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