Listen "Noise Driven Computations Explained"
Episode Synopsis
In this episode of Simply Science, we explore a fascinating new approach to machine learning inspired by how our brain works. Imagine using a system of elements that can switch between two states, like light switches being on or off. These elements are influenced by random noise, just like neurons firing unpredictably. Instead of relying on exact values, this system stores information in patterns of probabilities.The researchers show how this method can solve the XOR problem, which is important for creating complex machine-learning systems. Their findings suggest this approach could be useful for applications that need to be both energy-efficient and resilient to noise.If you're interested in learning more about this cutting-edge research, please send us an article at [email protected]!
More episodes of the podcast Simply Science
Speech Recognition and Noise Explained
03/12/2024
Science of Cooling Explained
19/11/2024
Physics Informed Neural Networks Explained
06/11/2024
AI Sustainability Explained
11/11/2024
Brownian Motion Explained - Part 2
11/11/2024
ZARZA We are Zarza, the prestigious firm behind major projects in information technology.