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Merve Noyan Stopped Writing Training Scripts — Her Agent Just Fine-Tuned 18 Models Solo for $11.40
Author(s): Chew Loong Nian – AI ENGINEER · 2026-05-18 · via Towards AI

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Merve Noyan Stopped Writing Training Scripts — Her Agent Just Fine-Tuned 18 Models Solo for .40

Originally published on Towards AI.

The 17,300-view AI Engineer Singapore talk that quietly killed half my MLOps job

I watched Merve Noyan’s “Your Agent Can Now Train Models” talk three times this week. It went up on the AI Engineer channel three days ago, hit 17,300 views in 72 hours, and now sits as the second-most-watched talk on the entire @aiDotEngineer feed — beaten only by the “CI/CD Is Dead” pitch from Hugo Santos two slots above it. Both are screaming the same thing in different keys: the loop where a human writes a training script, picks a GPU, watches loss curves, and pushes a checkpoint is about to look as quaint as configuring Tomcat by hand.

Merve Noyan Stopped Writing Training Scripts — Her Agent Just Fine-Tuned 18 Models Solo for .40

Claude reads the dataset card during a live demo at AI Engineer Singapore.

The article discusses how Merve Noyan’s AI Engineer talk illustrated the automation of MLOps processes, highlighting the capabilities of the new huggingface-llm-trainer skill. This skill allows users to fine-tune AI models with minimal human intervention, showcasing significant improvements in efficiency and cost-saving in model training. The author recounts personal experiences with the skill, detailing various training tasks and costs involved, and concludes that while automation is transforming the MLOps landscape, the need for human understanding of the training process remains essential. The piece advocates for a shift in MLOps roles towards oversight rather than manual scripting.

Read the full blog for free on Medium.

Published via Towards AI


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