Mathematics of Machine Learning: Introduction to Multivariate Calculus
Continuing in our Mathematics for Machine Learning series, in this article we introduce an importance concept in machine learning: multivariate calculus.
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Continuing in our Mathematics for Machine Learning series, in this article we introduce an importance concept in machine learning: multivariate calculus.
In this article we introduce the first step in the mathematical foundation of machine learning: linear algebra.
In this article we look at how to program the D-Wave quantum annealer to solve several real-world problems.
In this article we're going to take our first steps in programming a quantum computer with Google's Cirq framework.
In this article we review a deep reinforcement learning algorithm called the Twin Delayed DDPG model, which can be applied to continuous action spaces.
In this guide we discuss several approaches to using quantum computing hardware to enhance machine learning algorithms.
In this guide we discuss several paradigms for quantum computing: gate-model quantum computing, adiabatic quantum computing, and quantum annealing.
Quantum systems are similar to classical probability distributions, but they have certain properties that make them unique.
A Tensor Processing Unit (TPU) is a custom computer chip designed by Google specifically for deep learning.
Edge AI means that AI algorithms are processed locally on a hardware device. The algorithms are using data that are created on the device.
Open sourced in November 2015 by Google, TensorFlow is currently the most popular framework for creating deep learning models.