Comprehensive Survey of QML: From Data Analysis to Algorithmic Advancements
- URL: http://arxiv.org/abs/2501.09528v1
- Date: Thu, 16 Jan 2025 13:25:49 GMT
- Title: Comprehensive Survey of QML: From Data Analysis to Algorithmic Advancements
- Authors: Sahil Tomar, Rajeshwar Tripathi, Sandeep Kumar,
- Abstract summary: Quantum Machine Learning represents a paradigm shift at the intersection of Quantum Computing and Machine Learning.
The field faces significant challenges, including hardware constraints, noise, and limited qubit coherence.
This survey aims to provide a foundational resource for advancing Quantum Machine Learning toward practical, real-world applications.
- Score: 2.5686697584463025
- License:
- Abstract: Quantum Machine Learning represents a paradigm shift at the intersection of Quantum Computing and Machine Learning, leveraging quantum phenomena such as superposition, entanglement, and quantum parallelism to address the limitations of classical approaches in processing high-dimensional and large-scale datasets. This survey provides a comprehensive analysis of Quantum Machine Learning, detailing foundational concepts, algorithmic advancements, and their applications across domains such as healthcare, finance, and quantum chemistry. Key techniques, including Quantum Support Vector Machine, Quantum Neural Network, Quantum Decision Trees, and hybrid quantum-classical models, are explored with a focus on their theoretical foundations, computational benefits, and comparative performance against classical counterparts. While the potential for exponential speedups and enhanced efficiency is evident, the field faces significant challenges, including hardware constraints, noise, and limited qubit coherence in the current era of Noisy Intermediate-Scale Quantum devices. Emerging solutions, such as error mitigation techniques, hybrid frameworks, and advancements in quantum hardware, are discussed as critical enablers for scalable and fault-tolerant Quantum Machine Learning systems. By synthesizing state-of-the-art developments and identifying research gaps, this survey aims to provide a foundational resource for advancing Quantum Machine Learning toward practical, real-world applications in tackling computationally intensive problems.
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