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2024-09-30 20:17:21 +00:00
Yen-chi Chen, Wells Fargo
- Variational Quantum Circuits
- Parameterized Quantum Circuit (PQC) - "The other PQC"
|0> --- encoding gate --- parameterized -----measurement
Rz = encoding gate
Ry = parameterized gate
[ sin(x)] $$ [[\sin x]] \sqrt{ y }$$
## Quantum gradients =
- the gradient of with respect to the parameter theta - the value can be calculated by running two quantum circuits with parameterized circuits - called parameter shift
- f (x,y,z) = z x Q(x + y)
Quantum CNN -
- use image classification to QCNN wireachhigh accuraccy wuth smaller number of epochs
- quantum federarted learning - they don't share the dataset
- they will train on their own and they only share the models
## Quantum Fedrated ML with Differential Privacy
- During our training we get some noise to get our gradient
- to ensure that our data is differential and private
- Watkins, Yoo -- *Differential machine learning with differential privacy*
## Quantum LSTM
- Quantum long short-term memory
- replace the classical neural networks with variational quantum circuits (VQC_)
- QLSTM can show ---- read the paper
Quantum RL
- quantum agents in the Gym - a vriational quantum algorithm
- quantum rl is similar to classical rl except replace
Paper : *Efficient quantum recurrent reinforcdement learning via quantum reservoir computing*, 2024
When BERT meets quantum - paper
1. H QC P > using classical computer to optimize ]
2. Variational quantum circuits aka paramtererized quantum circuits
3. can be used with classical components and whole model improved with gradient descent methods
4.
Paper outline for structure:
- Motivation
- Challenge:
- Approach
- Create benchmarks for quantum machine learning - very hard to convince classical machine learning people that quantum is useful..
- how to mitigate barren plateau