Designing AI-Resistant Technical Evaluations: Strategies for Hiring Performance Engineers (2026)

Designing AI-resistant technical evaluations can be a challenging task, especially as AI capabilities continue to advance. In this article, Tristan Hume, a lead on Anthropic's performance optimization team, shares his journey in creating and refining a take-home test that has helped the company hire dozens of performance engineers. The test, which involves optimizing code for a simulated accelerator, has been a crucial tool in evaluating technical candidates. However, as AI models like Claude improve, the test has had to be continually redesigned to ensure it remains effective. Hume discusses the evolution of the test, from its initial design to the latest version, and the strategies he's employed to keep it ahead of the capabilities of the top AI models. He also introduces an open challenge, inviting anyone to try the original take-home test with unlimited time, highlighting the enduring advantage of human experts over current AI models at sufficiently long time horizons.

Designing AI-Resistant Technical Evaluations: Strategies for Hiring Performance Engineers (2026)

References

Top Articles
Latest Posts
Recommended Articles
Article information

Author: Tish Haag

Last Updated:

Views: 6019

Rating: 4.7 / 5 (47 voted)

Reviews: 94% of readers found this page helpful

Author information

Name: Tish Haag

Birthday: 1999-11-18

Address: 30256 Tara Expressway, Kutchburgh, VT 92892-0078

Phone: +4215847628708

Job: Internal Consulting Engineer

Hobby: Roller skating, Roller skating, Kayaking, Flying, Graffiti, Ghost hunting, scrapbook

Introduction: My name is Tish Haag, I am a excited, delightful, curious, beautiful, agreeable, enchanting, fancy person who loves writing and wants to share my knowledge and understanding with you.