6
talks
1
posters
0
committee roles
0
leadership roles
2022–2025
years active
Contributions
QIP QCrypt TQC presenter award · △program ◇steering ○organising □local · filled = chair
Talks
| Title | Conference | Type | Co-authors |
|---|---|---|---|
| Constrained local Hamiltonians: quantum generalizations of classical problems | QIP 2025 | regular | Sankara Sai Chaithanya Rayudu, Ojas Parekh |
| Complexity Classification of Product State Problems for Local Hamiltonians | QIP 2024 | regular | ▸John Kallaugher, Ojas Parekh, Yipu Wang, Justin Yirka |
| An SU(2)-symmetric Semidefinite Programming Hierarchy for Quantum Max Cut | TQC 2024 | regular | ▸Jun Takahashi, Chaithanya Rayudu, Cunlu Zhou, Robbie King, Ojas Parekh |
Understanding and approximating extremal energy states of local Hamiltonians is a central problem in quantum physics and complexity theory. Recent work has focused on developing approximation algorithms for local Hamiltonians, and in particular the ``Quantum Max Cut'' (QMaxCut) problem, which is closely related to the antiferromagnetic Heisenberg model. In this work, we introduce a family of semidefinite programming (SDP) relaxations based on the Navascues-Pironio-Acin (NPA) hierarchy which is tailored for QMaxCut by taking into account its SU(2) symmetry. We show that the hierarchy converges to the optimal QMaxCut value at a finite level, which is based on a characterization of the algebra of SWAP operators. We give several analytic proofs and computational results showing exactness/inexactness of our hierarchy at the lowest level on several important families of graphs. We also discuss relationships between SDP approaches for QMaxCut and frustration-freeness in condensed matter physics and numerically demonstrate that the SDP-solvability practically becomes an efficiently-computable generalization of frustration-freeness. Furthermore, by numerical demonstration we show the potential of SDP algorithms to perform as an approximate method to compute physical quantities and capture physical features of some Heisenberg-type statistical mechanics models even away from the frustration-free regions. |
|||
| Unique Games hardness of Quantum Max-Cut, and a conjectured vector-valued Borell's inequality | QIP 2023 | regular | ▸Yeongwoo Hwang, Joe Neeman, Ojas Parekh, John Wright |
| Quantum Approximation Algorithms via the Level-2 Quantum Lasserre Hierarchy | QIP 2022 | regular | Ojas Parekh |
| Unique Games hardness of Quantum Max-Cut, and a vector-valued Borell’s inequality | QIP 2022 | plenary_short | Yeongwoo Hwang, Joe Neeman, Ojas Parekh, John Wright |
Posters
| Title | Conference | Co-authors |
|---|---|---|
| Second Order Cone Relaxations for Quantum Max Cut | QIP 2025 | Felix Huber, Ojas Parekh, Sevag Gharibian |
Collaborators
| Co-author | Joint talks |
|---|---|
| Ojas Parekh | 7 |
| Joe Neeman | 2 |
| John Wright | 2 |
| Yeongwoo Hwang | 2 |
| Chaithanya Rayudu | 1 |
| Cunlu Zhou | 1 |
| Felix Huber | 1 |
| John Kallaugher | 1 |
| Jun Takahashi | 1 |
| Justin Yirka | 1 |
| Robbie King | 1 |
| Sankara Sai Chaithanya Rayudu | 1 |
| Sevag Gharibian | 1 |
| Yipu Wang | 1 |