Severity: Warning
Message: count(): Parameter must be an array or an object that implements Countable
Filename: controllers/News.php
Line Number: 111
Backtrace:
File: /home/newswire/ci_applications/press1_web/controllers/News.php
Line: 111
Function: _error_handler
File: /home/newswire/ci_applications/press1_web/public/index.php
Line: 309
Function: require_once
ABU DHABI, United Ar--(뉴스와이어)--Technology Innovation Institute (TII), a global research center and applied research pillar of Abu Dhabi’s Advanced Technology Research Council, today announced the launch of NOOR, the world’s largest Arabic natural language processing (NLP) model to date.
TII’s team of advanced researchers and Artificial Intelligence (AI) specialists, has joined forces with LightOn, a technology company that unlocks extreme-scale machine intelligence for businesses, to transform the Arabic NLP model. The NOOR model has the capability to carry out tasks beyond the domain of language - offering end-to-end pipeline high quality data, including crawling, filtering, and curation at scale. The model facilitates extreme-scale distributed training and serving - to deliver applications with efficient inference and model specialization.
Dr. Ray O. Johnson, CEO, TII and ASPIRE, said: “With this development, we are well on track to enhance our research capabilities and credentials as well as elevate the status of Abu Dhabi and the UAE as a serious research ecosystem. Our expert teams have demonstrated yet again that this region can achieve breakthrough R&D outcomes to impact the world.”
Dr. Ebtesam Almazrouei, Director, AI Cross-Center Unit, TII, said: “Large language models have taken the world of natural language processing by storm, and we are proud to introduce this cutting-edge model with 10 billion parameters - the world’s largest Arabic NLP model. The uniquely large Arabic dataset collected to train the model is the result of months of work that included curating, scrapping, and filtering of varied sources. A special thank you to the entire team that worked on this project to make NOOR the go-to exploration model in Arabic for academicians and businesses everywhere.”
Speaking on the launch, Prof. Mérouane Debbah, Chief Researcher, Digital Science Research Center and AI Cross-Center Unit, TII, said: “With NOOR, TII has expanded the scope of the modern standard Arabic model by leveraging know-how in large language models to build cross-disciplinary, cutting-edge expertise in this new generation of AI research.”
To curate the world’s largest high-quality cross-domain Arabic datasets, NOOR’s unique dataset of more than 30 billion words combines web data with books, poetry, news articles, and technical information to significantly widen the applicability of the model.
Dr. Ebtesam Almazrouei said the NOOR model is based on the popular Transformer architecture. As a decoder-only model, similar in structure to GPT-3, it is programmed to tackle generative tasks with architecture upgraded to reflect the latest developments in the world of machine learning, including improvements such as better positional embeddings. To help ensure quality at scale in the NOOR dataset, the TII team designed an automated filtering pipeline based on machine learning techniques. These tools identify text like quality references and safeguard the model from exposure to spam content.
Leveraging state-of-the-art 3D parallelism, NOOR was trained on a High-Performance Computing resource with 128 A100 GPUs, allowing for the distribution of computations and ensuring efficient use of the available hardware resources.
The Director of the AI Cross-Center Unit noted that this was only the first step in the Unit’s efforts to contribute to the wider UAE Strategy for Artificial Intelligence.
Named for the Arabic word “light”, the model has been so called to establish the correlation of the Arabic language model to enlightening the mind.
About Technology Innovation Institute (TII)
For more information, visit www.tii.ae
*Source: AETOSWire
Photos/Multimedia Gallery Available: https://www.businesswire.com/news/home/52671760/en