Graph analysis is used in a wide range of applications, from computational social science (social network analysis) to fraud detection and marketing. Just like within Machine Learning (ML), being able to load and analyze data quickly is the key to getting to a solution faster. Additionally, like ML, there is a lot of data prep, which we call graph ETL, that needs to be done. Join us for a talk on using RAPIDS and cuGraph to accelerate the full end-to-end graph analysis pipeline. We will dive into a COVID-19 social network example to illustrate the performance gains of using GPUs.
Watch video GPU Accelerated Graph Analysis in Python using cuGraph- Brad Rees | SciPy 2022 online without registration, duration hours minute second in high quality. This video was added by user Enthought 01 August 2022, don't forget to share it with your friends and acquaintances, it has been viewed on our site 1,11 once and liked it 1 people.