Table of Links
II. Overview of error Mitigation Methods
IV. Results and Discussions, and References
IV. RESULTS AND DISCUSSIONS
Analysis of testing results shows clear improvement in the Fire Opal distribution compared to IBM Kyoto by itself; see Figure 3 for a visual of the analysis. Fire Opal reduced noise and yielded better overall results on IBM Kyoto by around 30% − 40%. Specifically, the distributions generated on IBM Kyoto with Fire Opal qualitatively captures the specific shape of the distribution with peaks and the long tail. This becomes more pronounced as the number of two-qubit gates.
In conclusion, our experiment validates the effectiveness of Fire Opal’s error suppression and circuit optimization capabilities, highlighting potential to enhance the utilities of quantum hardware in the NISQ era.
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Authors:
(1) Anh Pham, Deloitte Consulting LLP;
(2) Andrew Vlasic, Deloitte Consulting LLP.
This paper is