Mphasis has secured a U.S. patent on ‘System and method for optimized processing of information on quantum systems’. The newly issued patent outlines a pipeline to improve the scalability and performance of quantum machine learning (QML) on near-term quantum computing systems including quantum simulators.
This solution transforms high-dimensional classical input data into an enhanced feature space in quantum format. The feature space transformation ensures efficient mapping and preparation for quantum state loading, paving the way for improved quantum data processing and analysis. The optimal representation method for classical data on quantum systems minimizes the need for additional qubits for higher-dimensional data, handles large feature sets and high volumes of data, and ensures efficient convergence during quantum machine learning (QML) model training. QML leverages its ability to process high-dimensional, complex data, delivering solutions beyond the reach of classical high performance computing hardware.
Mphasis is a global service provider, delivering technology based solutions across many sectors.
| Company Name | CMP |
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| Infosys | 1318.60 |
| HCL Tech. | 1442.50 |
| Wipro | 204.35 |
| Tech Mahindra | 1511.85 |
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