PostTrainBench: How Far Can AI Agents Go in Automating LLM Post-Training?
By
Madhu Shantan
3mo ago
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MaximPostTrainBench: How Far Can AI Agents Go in Automating LLM Post-Training?maxim-blog.ghost.ioIntroduction Post-training is where the real cost of LLM development lives. Taking a pretrained base model and turning it into something actually useful - an assistant that follows instructions, reasons carefully, and behaves safely - requires months of supervised fine-tuning, reward modeling, and alignment work from teams of skilled ML
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