Show HN: I RL-trained an agent that trains models with RL (for –$1.3k)
THE SO WHAT
An RL-trained agent that trains other models—albeit at a small loss—hints at recursive automation creeping into ML ops. Worth monitoring if you run heavy experimentation loops, but don’t bet on hands-free training until reliability and economics improve.
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