diagram of ラーメンベット 出金速度 techniques
The ラーメンベット 出金速度 technique applied to different image-to-image generative models.

When people learn things they should not know, getting them to forget that information can be tough. This is also true of rapidly growing artificial intelligence programs that are trained to think as we do, and it has become a problem as they run into challenges based on the use of copyright-protected material and privacy issues.

To respond to this challenge, researchers at The University of Texas at Austin and JPMorgan Chase have developed what they believe is the first "ラーメンベット 出金速度" method applied to image-based generative AI. This method offers the ability to look under the hood and actively block and remove any violent images or copyrighted works without losing the rest of the information in the model.

"When you train these models on such massive data sets, you’re bound to include some data that is undesirable," said Radu Marculescu, a professor in the ラーメンベット 禁止ゲーム of ラーメンベット 出金速度's Chandra Family Department of Electrical and Computer ラーメンベット 出金速度 and one of the leaders on the project. "Previously, the only way to remove problematic content was to scrap everything, start anew, manually take out all that data and retrain the model. Our approach offers the opportunity to do this without having to retrain the model from scratch."

Generative AI models are trained primarily with data on the internet because of the unrivaled amount of information it contains. But it also contains massive amounts of data that is protected by copyright, in addition to personal information and inappropriate ラーメンベット 出金速度.

Underscoring this issue, The New York Times recently sued OpenAI, maker of ChatGPT, arguing that the AI company illegally used its articles as training data to help its chatbots generate ラーメンベット 出金速度.

"If we want to make generative AI models useful for commercial purposes, this is a step we need to build in, the ability to ensure that we're not breaking copyright laws or abusing personal information or using harmful content," said Guihong Li, a graduate ラーメンベット 出金速度 assistant in Marculescu's lab who worked on the project as an intern at JPMorgan Chase and finalized it at UT.

diagram of ラーメンベット 出金速度 algorithm

Image-to-image models are the primary focus of this ラーメンベット 出金速度. They take an input image and transform it — such as creating a sketch, changing a particular scene and more — based on a given context or instruction.

This new ラーメンベット 出金速度 algorithm provides the ability of a machine learning model to "forget" or remove content if it is flagged for any reason without the need for retraining the model from scratch. Human teams handle the moderation and removal of content, providing an extra check on the model and ability to respond to user feedback.

ラーメンベット 出金速度 is an evolving branch of the field that has been primarily applied to classification models. Those models are trained to sort data into different categories, such as whether an image shows a dog or a cat.

Applying ラーメンベット 出金速度 to generative models is "relatively unexplored," the researchers write in the paper, especially when it comes to images.

The researchers will showcase their work as part of the International Conference on Learning Representations, a top machine learning conference that will take place in Vienna during May. Joining Marculescu and Li on the ラーメンベット 出金速度 team are Hsiang Hsu and Chun-Fu (Richard) Chen, both from JPMorgan Chase’s Global Technology Applied ラーメンベット 出金速度 group.