You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
As a part of Quantum error correction review project, we explored tensor network codes (TNC). TNC has diverse nad promising use in quantum error correcting codes. It is powerful tools to design larger stabilizer codes, estimating code distance and maximum likelihood decoding.
$\blacksquare$ Employed Tensor network framework for design and analysis of Stabilizer Quantum error correcting codes
$\blacksquare$ Constructed 11-Qubit stabilizer code via tensor contraction of the three 5-Qubit stabilizer codes
$\blacksquare$ Evaluated code distance and maximum likelihood decoding for the 11-Qubit code via the tensor technique
$\blacksquare$ Examined the impact on successful error correction capability of a tensor network if doped suitably
We used the scripts in this Julia module to generate the stabilizer codes:
https://github.com/ITensor/ITensors.jl.git
Main References:
$\star$ Local Tesor Network Codes (Terry Farrelly et al. 2022 New J. Phys. 24 043015)
$\star$ Tensor Network Codes (Phys. Rev. Lett. 127, 040507 – Published 23 July 2021)
Team Members
Manish Kumar, Q.Tech, IISc Bengaluru
Harsh Ojha, Q.Tech, IISc Bengaluru
About
As a part of Quantum error correction review project, we explored tensor network codes (TNC). TNC has diverse nad promising use in quantum error correcting codes. It is powerful tools to design larger stabilizer codes, estimating code distance and maximum likelihood decoding.