QDataSet
Quantum datasets
A collection of 52 machine learning datasets for simulating quantum systems with noise and controls.
QDataSet: Quantum Datasets for Machine Learning
98 stars
3 watching
19 forks
Language: Python
last commit: over 3 years ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
qaqarot/qaqarot | A comprehensive quantum computing library for programming and simulating quantum systems. | 372 |
netket/netket | Delivers methods for studying many-body quantum systems with machine learning and neural networks | 548 |
vprusso/toqito | A Python library providing numerical tools for studying quantum information objects | 155 |
qiskit/qiskit-aer | A high-performance simulator for quantum circuits with realistic noise models | 504 |
adgt/qonduit | A Python library providing visualization tools and workflows for quantum computing | 13 |
qiskit-community/qiskit-aqt-provider | A Qiskit provider for accessing AQT ion-trap quantum computing systems | 26 |
qmlcode/qml | A toolkit for representing and learning properties of molecules and solids using quantum machine learning concepts | 199 |
tqsd/qunetsim | A framework for simulating quantum networks and testing quantum protocols. | 118 |
qiskit-community/qiskit-experiments | Tools and framework for designing, running, and analyzing experiments on noisy quantum computers. | 163 |
grey-area/qcircuits | A Python package for simulating small-scale quantum computers using the quantum circuit model. | 58 |
jacobmarks/qtop | A software framework for simulating and visualizing topological quantum codes | 33 |
sequencing-dev/sequencing | A Python package for simulating realistic quantum control sequences using QuTiP. | 13 |
artiste-qb-net/qubiter | A Python-based suite of tools for designing and simulating quantum circuits on classical computers. | 121 |
zlatko-minev/pyepr | Automated design and analysis of quantum microwave circuits | 165 |
libtangle/qcgpu | Provides a Python-based simulator for quantum computing, leveraging hardware acceleration to enhance simulation performance. | 439 |