AI

Google’s research on quantum error correction

1 Mins read

Quantum computers have the potential to revolutionize drug discovery, material design and fundamental physics — that is, if we can get them to work reliably.

Certain problems, which would take a conventional computer billions of years to solve, would take a quantum computer just hours. However, these new processors are more prone to noise than conventional ones. If we want to make quantum computers more reliable, especially at scale, we need to accurately identify and correct these errors.

In a paper published today in Nature, we introduce AlphaQubit, an AI-based decoder that identifies quantum computing errors with state-of-the-art accuracy. This collaborative work brought together Google DeepMind’s machine learning knowledge and Google Quantum AI’s error correction expertise to accelerate progress on building a reliable quantum computer.

Accurately identifying errors is a critical step towards making quantum computers capable of performing long computations at scale, opening the doors to scientific breakthroughs and many new areas of discovery.


Source link

Related posts
AI

Neural Magic Releases LLM Compressor: A Novel Library to Compress LLMs for Faster Inference with vLLM

3 Mins read
Neural Magic has released the LLM Compressor, a state-of-the-art tool for large language model optimization that enables far quicker inference through much…
AI

OpenLS-DGF: An Adaptive Open-Source Dataset Generation Framework for Machine Learning Tasks in Logic Synthesis

3 Mins read
Logic synthesis is one of the important steps in designing digital circuits, in which high-level descriptions are turned into detailed gate-level designs….
AI

Training-Free Guidance (TFG): A Unified Machine Learning Framework Transforming Conditional Generation in Diffusion Models with Enhanced Efficiency and Versatility Across Domains

4 Mins read
Diffusion models have emerged as transformative tools in machine learning, providing unparalleled capabilities for generating high-quality samples across domains such as image…

 

 

Leave a Reply

Your email address will not be published. Required fields are marked *