Research Area:  Machine Learning
Quantum machine learning is at the intersection of two of the most sought after research areas—quantum computing and classical machine learning. Quantum machine learning investigates how results from the quantum world can be used to solve problems from machine learning. The amount of data needed to reliably train a classical computation model is evergrowing and reaching the limits which normal computing devices can handle. In such a scenario, quantum computation can aid in continuing training with huge data. Quantum machine learning looks to devise learning algorithms faster than their classical counterparts. Classical machine learning is about trying to find patterns in data and using those patterns to predict further events. Quantum systems, on the other hand, produce atypical patterns which are not producible by classical systems, thereby postulating that quantum computers may overtake classical computers on machine learning tasks. Here, we review the previous literature on quantum machine learning and provide the current status of it.
Keywords:  
Quantum machine learning
Quantum renormalization procedure
Quantum hhl algorithm
Quantum support vector machine
Quantum classifier
Quantum artificial intelligence
Quantum entanglement
Quantum neural network
Quantum computer
Author(s) Name:  Nimish Mishra, Manik Kapil, Hemant Rakesh, Amit Anand, Nilima Mishra, Aakash Warke, Soumya Sarkar, Sanchayan Dutta, Sabhyata Gupta, Aditya Prasad Dash, Rakshit Gharat, Yagnik Chatterjee, Shuvarati Roy, Shivam Raj, Valay Kumar Jain, Shreeram Bagaria, Smit Chaudhary, Vishwanath Singh, Rituparna Maji, Priyanka Dalei, Bikash K. Behera, Sabyasachi Mukhopadhyay, Prasanta K. Panigrahi
Journal name:  
Conferrence name:  Data Management, Analytics and Innovation
Publisher name:  Springer
DOI:  https://doi.org/10.1007/978-981-15-5619-7_8
Volume Information:  Volume 1175