We are excited to introduce OpenSynthetics: The Community Hub for AI Development utilizing Synthetic Data -
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We are excited to introduce OpenSynthetics: The Community Hub for AI Development utilizing Synthetic Data

We are excited to introduce OpenSynthetics: The Community Hub for AI Development utilizing Synthetic Data

OOpenSynthetics, an open community for creating and using synthetic data in AI/ML and computer vision, was launched to practitioners, researchers, academics, and the wider industry.

 

OpenSynthetics is a dedicated community focused on advancing synthetic data technology with centralized access to synthetic datasets, research, papers, and code. Synthetic data, or the use of computer-generated images and simulations used to train computer vision models, is an emerging technology that was recently noted as one of the top 10 breakthrough technologies of 2022 by MIT Technology Review. The first book on Synthetic Data for Deep Learning was also published last year and has seen widespread adoption. 

 

Through OpenSynthetics, AI/ML practitioners, regardless of experience, can share tools and techniques for creating and using synthetic data to build more capable AI models. Whether an individual or organization is beginning their synthetic data journey or fully utilizing it in production systems, they will have access to content relevant to their needs and experience. Additionally, OpenSynthetics will serve as a community hub, bringing together academics, practitioners, and researchers to collectively advance the use of synthetic data.

 

Current computer vision models are powered by hand-labeled data, which is labor-intensive, costly, time-consuming, and prone to human error and bias. Additionally, the collection of images of people presents privacy concerns. Using synthetic data approaches, labels and data is available on-demand, allowing practitioners to experiment and reducing time spent collecting and annotating data. However, the democratization of synthetic datasets, papers, and resources is needed to educate the industry on this technology and power further use cases.

 

OpenSynthetics welcomes researchers and practitioners across academia and industry to contribute to the site. By contributing and participating, the community will build a knowledge base to help grow the understanding and adoption of this emerging technology.

 

source:Inside Big Data