track.01
Quantum Machine Learning
Exploring how quantum models outperform classical models.
R&D
Our R&D team works on open-source quantum software, technical prototypes, and research-driven projects that contribute to the quantum ecosystem.
> initializing research workspace
> loading open-source projects
> mapping quantum education tools
> contributors welcome
Research
track.01
Exploring how quantum models outperform classical models.
track.02
Building tools for quantum circuit research and development.
track.03
Investigating quantum algorithms for chemical applications.
Open source
KUQCI/QML-Molecular-Atomization-Energy
A research-oriented project exploring quantum machine learning approaches for molecular atomization energy prediction using QM7 and variational quantum circuits.
Contribution needs
KUQCI/Introduction-to-Practical-Quantum-Computing
A light and intuitive introduction to quantum computing with a focus on applying it through software.
Contribution needs
KUQCI/Quantum-Circuit-Visualizer
A simplified tool for visualizing and analyzing quantum circuits.
Contribution needs
Contribution
|0> Join QCI -> Explore -> Scope -> Build -> Share
step 1
Join QCI and share your interests.
step 2
Explore the project areas and choose a direction.
step 3
Align with the team on a small, well-scoped task.
step 4
Build a prototype, note, or software contribution.
step 5
Share the result for feedback, publication, or a pull request.