Fine-tuning is engineering with probabilistic outcomes
The vendor demo makes fine-tuning look like installing software - upload data, train, deploy. The real distribution of outcomes is brutal, most of the work is data preparation, and the model you trained for wire fraud can quietly forget how to read ACH. For financial services, guessing is not an option.
Lead essay
Start here when you want the current Doric argument instead of a chronological archive.
Read the note