Reading Level

FairDeDup limits social biases in AI models

• Large artificial intelligence models trained on massive datasets often produce biased results, raising important ethical questions.
• A PhD student working on a project in partnership with Adobe, Eric Slyman has developed a method to preserve fair representation in model training data.
• The new algorithm christened FairDeDup, which can be applied to a wide range of models, reduces AI training costs without scrificing fairness.
Read the article
Three people are collaborating around a laptop in a modern office environment. One of them, standing, is explaining something to the two seated individuals, who appear attentive. On the table, there is a desktop computer, a tablet, and office supplies. Plants and desks are visible in the background.
Conceptual image of the Thales Alenia Space data centre - Thales Alenia Space_MasterImageProgrammes

Lower emissions and reinforced digital sovereignty: the plan for datacentres in space

Read the article

Autonomous cars: the five levels of autonomy

Watch the video

Health: Jaide aims to reduce diagnostic errors with generative AI

Read the article

AI researchers aim to boost collective organisation among workers for Uber and other platforms

Read the article
Bactery start-up team

AgTech: start-up Bactery aims to use soil microbial fuel cells to power IoT

Read the article

Photobiomodulation: using light to treat Alzheimer's disease

Read the article