The Transformer Cookbook
Abstract
We present the transformer cookbook: a collection of techniques for directly encoding algorithms into a transformer's parameters. This work addresses the steep learning curve of such endeavors, a problem exacerbated by a fragmented literature where key results are scattered across numerous papers. In particular, we synthesize this disparate body of findings into a curated set of recipes that demonstrate how to implement everything from basic arithmetic in feed-forward layers to complex data routing via self-attention. Our mise en place of formulations is for both newcomers seeking an accessible entry point and experts in need of a systematic reference. This unified presentation of transformer constructions provides a foundation for future work spanning theoretical research in computational complexity to empirical investigations in architecture design and interpretability.
Keywords
Cite
@article{arxiv.2510.00368,
title = {The Transformer Cookbook},
author = {Andy Yang and Christopher Watson and Anton Xue and Satwik Bhattamishra and Jose Llarena and William Merrill and Emile Dos Santos Ferreira and Anej Svete and David Chiang},
journal= {arXiv preprint arXiv:2510.00368},
year = {2025}
}
Comments
39 pages