Your Work Trained the Model. The Model Replaced You. Philip K. Dick Wrote This Story in 1968.
The first workers displaced by generative AI weren't software engineers. They were translators and $1.32/hr data labelers. Philip K. Dick predicted why. Read All
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Elhadj_C
April 6th, 2026
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Writing fast GPU code is one of the most grueling specializations in machine learning engineering. Researchers from RightNow AI want to automate it entirely. The RightNow AI research team has released AutoKernel, an open-source framework that applies an autonomous LLM agent loop to GPU kernel optimization for arbitrary PyTorch models. The approach is straightforward: give [ ] The post RightNow AI Releases AutoKernel: An Open-Source Framework that Applies an Autonomous Agent Loop to GPU Kernel Optimization for Arbitrary PyTorch Models appeared first on MarkTechPost .

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