MIT News - Artificial intelligence 10月03日 03:39
MIT部署全美最强AI超算TX-GAIN
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麻省理工学院(MIT)的林肯实验室超级计算中心(LLSC)部署了TX-Generative AI Next(TX-GAIN)计算系统,成为美国大学中最强大的AI超算。该系统以其卓越的性能,在TOP500榜单中占据重要位置,有力支持林肯实验室及MIT校园的各项研究与开发。TX-GAIN将加速生成式AI、物理模拟和数据分析等前沿领域的研究突破。它拥有超过600个NVIDIA GPU加速器,峰值性能达每秒两百亿亿次浮点运算,尤其擅长生成式AI,能够创造全新输出,而非仅限于分类任务。该系统已助力多项重要研究,包括飞行器防撞系统开发、自主导航模型训练,并正在探索雷达信号评估、天气数据补充、网络异常检测以及新药和新材料设计等领域。LLSC还致力于提供交互式超计算体验,降低用户使用门槛,并积极研究AI的能耗问题,开发节能工具。

🚀 **全美顶尖AI超算落户MIT:** TX-GAIN系统是美国大学中最强大的AI超级计算机,拥有超过600个NVIDIA GPU加速器,峰值性能达到每秒两百亿亿次浮点运算(2 AI exaflops),标志着MIT在AI计算能力上的重大飞跃,将有力推动校内及林肯实验室的科研发展。

💡 **赋能前沿AI研究:** TX-GAIN尤其擅长生成式AI,它通过“插值”和“外插”的数学组合,能够创造全新的内容,而不仅仅是分类。这使得研究人员可以在雷达信号评估、天气数据补充、网络异常检测以及新药和新材料设计等多个领域,探索和应用生成式AI的潜力。

🤝 **普惠超算与绿色计算:** LLSC致力于提供用户友好的交互式超计算体验,让研究人员无需成为并行处理专家即可使用强大系统。同时,LLSC也在积极研究AI的能耗问题,并开发能将AI模型训练能耗降低高达80%的软件工具,力求在追求高性能的同时实现成本效益和能源效率。

🏛️ **传承与创新并进:** TX-GAIN的命名继承了林肯实验室早期的TX-0和TX-2计算机的“TX”传统,致敬了早期计算机科学和人机交互的先驱。新系统的部署,不仅提升了计算能力,也延续了实验室在推动技术创新和科学发现方面的历史使命。

The new TX-Generative AI Next (TX-GAIN) computing system at the Lincoln Laboratory Supercomputing Center  (LLSC) is the most powerful AI supercomputer at any U.S. university. With its recent ranking from  TOP500, which biannually publishes a list of the top supercomputers in various categories, TX-GAIN joins the ranks of other powerful systems at the LLSC, all supporting research and development at Lincoln Laboratory and across the MIT campus. 

"TX-GAIN will enable our researchers to achieve scientific and engineering breakthroughs. The system will play a large role in supporting generative AI, physical simulation, and data analysis across all research areas," says Lincoln Laboratory Fellow Jeremy Kepner, who heads the LLSC. 

The LLSC is a key resource for accelerating innovation at Lincoln Laboratory. Thousands of researchers tap into the LLSC to analyze data, train models, and run simulations for federally funded research projects. The supercomputers have been used, for example, to simulate billions of aircraft encounters to develop collision-avoidance systems for the Federal Aviation Administration, and to train models in the complex tasks of autonomous navigation for the Department of Defense. Over the years, LLSC capabilities have been essential to numerous award-winning technologies, including those that have improved  airline safety,  prevented the spread of new diseases, and  aided in hurricane responses. 

As its name suggests, TX-GAIN is especially equipped for developing and applying generative AI. Whereas traditional AI focuses on categorization tasks, like identifying whether a photo depicts a dog or cat, generative AI produces entirely new outputs. Kepner describes it as a mathematical combination of interpolation (filling in the gaps between known data points) and extrapolation (extending data beyond known points). Today, generative AI is widely known for its use of large language models to create human-like responses to user prompts. 

At Lincoln Laboratory, teams are applying generative AI to various domains beyond large language models. They are using the technology, for instance, to evaluate radar signatures, supplement weather data where coverage is missing, root out anomalies in network traffic, and explore chemical interactions to design new medicines and materials.

To enable such intense computations, TX-GAIN is powered by more than 600 NVIDIA graphics processing unit accelerators specially designed for AI operations, in addition to traditional high-performance computing hardware. With a peak performance of two AI exaflops (two quintillion floating-point operations per second), TX-GAIN is the top AI system at a university, and in the Northeast. Since TX-GAIN came online this summer, researchers have taken notice. 

"TX-GAIN is allowing us to model not only significantly more protein interactions than ever before, but also much larger proteins with more atoms. This new computational capability is a game-changer for protein characterization efforts in biological defense," says Rafael Jaimes, a researcher in Lincoln Laboratory's Counter–Weapons of Mass Destruction Systems Group

The LLSC's focus on interactive supercomputing makes it especially useful to researchers. For years, the LLSC has pioneered software that lets users access its powerful systems without needing to be experts in configuring algorithms for parallel processing.  

"The LLSC has always tried to make supercomputing feel like working on your laptop," Kepner says. "The amount of data and the sophistication of analysis methods needed to be competitive today are well beyond what can be done on a laptop. But with our user-friendly approach, people can run their model and get answers quickly from their workspace."

Beyond supporting programs solely at Lincoln Laboratory, TX-GAIN is enhancing research collaborations with MIT's campus. Such collaborations include the Haystack ObservatoryCenter for Quantum EngineeringBeaver Works, and Department of Air Force–MIT AI Accelerator. The latter initiative is rapidly prototyping, scaling, and applying AI technologies for the U.S. Air Force and Space Force, optimizing flight scheduling for global operations as one fielded example.

The LLSC systems are housed in an energy-efficient data center and facility in Holyoke, Massachusetts. Research staff in the LLSC are also tackling the immense energy needs of AI and leading research into various power-reduction methods. One software tool they developed can reduce the energy of training an AI model by as much as 80 percent.

"The LLSC provides the capabilities needed to do leading-edge research, while in a cost-effective and energy-efficient manner," Kepner says.

All of the supercomputers at the LLSC use the "TX" nomenclature in homage to Lincoln Laboratory's Transistorized Experimental Computer Zero (TX-0) of 1956. TX-0 was one of the world's first transistor-based machines, and its 1958 successor, TX-2, is storied for its role in pioneering human-computer interaction and AI. With TX-GAIN, the LLSC continues this legacy.

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TX-GAIN MIT AI Supercomputing Generative AI Lincoln Laboratory LLSC NVIDIA Exaflops Deep Learning Machine Learning TX-0 TX-2 Human-Computer Interaction
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