add a conclusion

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Noa Aarts 2025-12-11 13:35:57 +01:00
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@ -149,14 +149,33 @@ Methods of QAS
#align(center)[disadvantages] #align(center)[disadvantages]
- Classical optimizer each sample - Classical optimizer each sample
- Choice of supernet shape - Choice of supernet shape
- Not
] ]
== Conclusion
= Week 4 Two main groups:
- "Building the circuit":
Starts empty and gates are added
- "Sampling and filtering"
Samples random circuits and uses proxies to filter
== Presentation None of the QAS listed find an admissible circuit "in one shot" from what I can tell,
they all either optimise parameters as part of the search protocol or need
multiple outputs to be optimised until a good enough one is found.
Training-Free QAS presentation #link("./tf-qas.pdf")[pdf]
== Conclusion
Likely better for us: "Sampling and Filtering"
- Allows for sampling random "hardware-allowed" circuits
- Expressibility and Entanglement are already both proxies we want to optimise
- No need to train ML for every hardware architecture/
- Can still use ML to filter the sample, but this can be more hardware agnostic
#text(fill: orange)[
- Could maybe also train ML for "random" hardware architectures
to try and make it build admissible circuits in a transferable way but this is unexplored
]
== Planning == Planning
@ -225,6 +244,13 @@ Training-Free QAS presentation #link("./tf-qas.pdf")[pdf]
] ]
] ]
= Week 4
== Presentation
Training-Free QAS presentation #link("./tf-qas.pdf")[pdf]
= Week 3 = Week 3
== Outline == Outline