You may be familiar with the concept of "Schrödinger's cat 😻 ." Schrödinger, a physicist, proposed a theoretical experiment in which a cat is placed in a chamber with a small amount of radioactive substance. The substance may or may not decay, triggering a poison that would kill the cat. Until the chamber is opened, the cat exists in a state of uncertainty, being both dead and alive simultaneously. How does Quantum Physics differ from Classical Physics? This thought experiment is often used to explain the fundamental principles of quantum physics, which describes the behaviour of matter at the atomic and subatomic levels. Quantum physics differs from classical physics, which describes the world at the macroscopic level, in more ways than just scale. Quantum physics often challenges our intuitive understanding of how the world works. SUPERPOSITION IN QUANTUM PHYSICS: In classical physics, an object is assumed to be in a single definite state at any given time (e.g., a c...
Quantum Machine Learning (QML) is an emerging field that explores the intersection of quantum computing and machine learning. While the field is still in its early stages, several advanced algorithms have been proposed for QML. We will discuss these below. Here are a few notable examples: Quantum Support Vector Machines (QSVM): QSVM is a quantum variant of the classical Support Vector Machine (SVM) algorithm. It aims to classify data points by mapping them to high-dimensional quantum feature space and finding an optimal hyperplane that separates different classes. Quantum Neural Networks (QNN): QNNs are quantum counterparts of classical neural networks. They utilize quantum circuits to perform computations and can potentially provide advantages in terms of representation power and optimization compared to classical neural networks. Quantum Generative Models: Quantum generative models leverage quantum algorithms to generate samples that mimic a given dataset's underlying distri...