Kulshrestha, 2024 - Google Patents
A Machine Learning Approach to Improve Scalability and Robustness of Variational Quantum CircuitsKulshrestha, 2024
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- 725112960666658376
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- Kulshrestha A
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Quantum computing is an emerging new field that aims to leverage the power of a “quantum computer” to solve problems which are currently considered to NP-Hard or NP-Complete. The key idea is to encode inputs as quantum states and device a system where the …
- 238000010801 machine learning 0 title abstract description 17
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