Evan Hockings
@evanhockings.bsky.social
220 followers 55 following 9 posts
Member of Technical Staff @ Iceberg Quantum evanhockings.github.io
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evanhockings.bsky.social
New paper outlining my Julia package QuantumACES now out in the Journal of Open Source Software!
joss-openjournals.bsky.social
Just published in JOSS: 'QuantumACES.jl: design noise characterisation experiments for quantum computers' https://doi.org/10.21105/joss.07707
evanhockings.bsky.social
Stim and PyMatching make this super easy. Characterise a circuit-level Pauli noise model with ACES, throw the noise estimates into your Stim circuit, and then it all just works—thanks @craiggidney.bsky.social and @oscarhiggott.bsky.social!

Code for this now in QuantumACES
github.com/evanhockings...
GitHub - evanhockings/QuantumACES.jl: Design scalable noise characterisation experiments for quantum computers
Design scalable noise characterisation experiments for quantum computers - evanhockings/QuantumACES.jl
github.com
evanhockings.bsky.social
Yes! Gate times in superconducting architectures indicate that ACES noise characterisation experiments performed and processed in just seconds should suffice. At tens of seconds, ACES noise estimates are nearly indistinguishable from the true noise model for decoding.
evanhockings.bsky.social
This means the reduction in logical error rates from noise-aware decoding increases exponentially with the code distance. While gains are limited for small codes, they're substantial for large ones.

But is noise-aware decoding practical at the scales where it's most helpful?
evanhockings.bsky.social
Why characterise noise in syndrome extraction circuits? One reason: directly improving quantum error correction!

In simulations of the surface code, we find that noise-aware decoding—calibrating the decoder with noise estimates—improves the code's error suppression factor.
evanhockings.bsky.social
My first paper—with @acdoherty.bsky.social and Robin Harper—is now out in PRX Quantum! More to come soon :)
journals.aps.org/prxquantum/a...
evanhockings.bsky.social
Yeah, I have to imagine it’s a tokenisation problem (similar to the ARC-AGI benchmark) and I sort of wonder if the labs find it convenient for these issues to stick around right now (reduced alarm, regulation, etc)…or maybe LLMs just aren’t that smart?