6
$\begingroup$

I'm interested in quantum computing, specifically in “quantum machine learning” (QML). I'm going to start my masters program in computer science and have previous experience in classical machine learning. I'd like to learn quantum mechanics generally but focus on quantum algorithms.

I have read about Qiskit and Pennylane, but I'm unsure where to look next. Could you recommend books, courses, and papers to gain background into QML? My goal is to use Qiskit and Pennylane to develop QML algorithms in NISQ systems for data science and big data.

Another question - can we use quantum computing to develop Bayesian deep learning models (Gaussian processes, bayesian quantum circuits) for data science and big data? Thanks in advance.

$\endgroup$
1

3 Answers 3

6
$\begingroup$

Have a look at these for quantum machine learning:

$\endgroup$
3
$\begingroup$

Since quantum machine learning with NISQ hardware is such a relatively new field, it is still very highly research driven, and a lot of the potential is still being determined.

To make these new research implementations more accessible, we've begun building implementations over at https://pennylane.ai/qml. Interesting ones include:

These implementations are executable, and can be downloaded as Python scripts or Jupyter notebooks. Our goal is to keep regularly adding new implementations and demos (the repository behind the website is also open-source at https://github.com/XanaduAI/qml, so anyone can contribute demos).

$\endgroup$
0
$\begingroup$

You can also run QML/QAI on a real Quantum Computer using Qiskit.

Here are two sample Jupyter Notebooks for qSVM and qGAN. https://quantum-computing.ibm.com/jupyter/tutorial/advanced/aqua/artificial_intelligence/index.ipynb

$\endgroup$

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

Not the answer you're looking for? Browse other questions tagged or ask your own question.