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Noa Aarts 2025-11-26 13:26:33 +01:00
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AAAI <- blijkbaar goeie
= The process
1. sample N random circuits
2. Calculate the number of paths through the DAG.
3. sort by number of paths
4. filter top-R
5. Calculate expressibility for each C in top-R
6. output top-K circuits
= The search-space
This search space is used to generate the random circuits to sample from, in the paper they use two(?) methods
== Layerwise
In this seach space they apply a certain gate type to either all even or all odd qubits.
== Gatewise with IBM's topology
Here they only allow gates available on the topology
= Glossary
What the heck do the terms they're using all mean.
== Query
I presume something like "try to optimize this circuit on the quantum computer"
but **I'm unsure**
== PQAS
Either Neural Predictor based QAS or, GradSign or Tensorcircuit
Probably the Neural Predictor one. (more [here]())
== QAS
Quantum Architecture Search
== HEA-3 till 5
Hardware Efficient Ansatze, specifically number 3 to 5 from ([this paper](https://www.nature.com/articles/nature23879))