Aug. 24, 2022, 4:44 p.m. | Naman Singh

MarkTechPost www.marktechpost.com

Writing computationally efficient code is a skill everyone has wanted to master since they first wrote Hello World on their computers. Thankfully, Researchers at Google and Georgia Tech have found a way to make the life of all coders (especially software developers) easier through their machine learning model designed for programmers to identify multiple options […]


The post Researchers Use Machine Learning To Create A Novel Discrete Variational Autoencoder For Automatically Improving Code Efficiency appeared first on MarkTechPost.

ai paper summary ai shorts applications artificial intelligence autoencoder code country editors pick efficiency georgia tech google learning machine machine learning researchers staff tech news technology unicorns university research usa

More from www.marktechpost.com / MarkTechPost

Senior Machine Learning Engineer

@ GPTZero | Toronto, Canada

ML/AI Engineer / NLP Expert - Custom LLM Development (x/f/m)

@ HelloBetter | Remote

Doctoral Researcher (m/f/div) in Automated Processing of Bioimages

@ Leibniz Institute for Natural Product Research and Infection Biology (Leibniz-HKI) | Jena

Seeking Developers and Engineers for AI T-Shirt Generator Project

@ Chevon Hicks | Remote

Principal Data Architect - Azure & Big Data

@ MGM Resorts International | Home Office - US, NV

GN SONG MT Market Research Data Analyst 11

@ Accenture | Bengaluru, BDC7A