


Google has launched the fifth-generation custom tensor processor (TPU) chip TPU v5e for training and inference of large models. The new chip makes it five times faster to train and run AI models. Compared with the previous generation chip, TPU v5e improves training performance by 2 times per dollar and improves inference performance by 2.5 times per dollar
Google’s fifth-generation custom tensor processor (TPU) chip, known as TPU v5e, is used for training and inference of large models, resulting in training and running artificial intelligence models up to 5 times faster
At Google Cloud Next, the annual Google Cloud conference held in San Francisco, Google released a new artificial intelligence chip, the fifth-generation custom tensor processor (TPU) chip TPU v5e, for large-scale model training and reasoning. Compared with the previous generation chip, TPU v5e has improved training performance per dollar by 2 times and inference performance per dollar by 2.5 times.
Google has designed a dedicated chip TPU for neural networks, which can speed up the training and inference of machine learning models through optimization. The first-generation TPU was launched in 2016, and the fourth-generation custom processor TPU was released in 2021 and will be available to developers in 2022. Cloud TPU is a feature of Google Cloud Services and is suitable for large and complex deep learning models that require large amounts of matrix calculations, such as large language models, protein folding modeling, and drug development. Using cloud TPUs can help enterprises save money and time when implementing AI workloads
Google Cloud has launched TPU v5e, which is designed for the training and inference needs of medium and large models. This version of the chip focuses on efficiency. Compared with the previous generation TPU v4, the training performance per dollar is improved by 2 times, and the inference performance per dollar is improved by 2.5 times, while the cost is less than half of TPU v4. This enables more organizations to train and deploy larger and more complex AI models without sacrificing performance or flexibility. Google Cloud describes TPU v5e as a "supercomputer" that supports the interconnection of up to 256 chips, with a total bandwidth of more than 400 Tb/s, and offers eight different virtual machine configurations to cater for a variety of large language models and generative artificial intelligence Requirements for intelligent models. Training and running AI models is up to 5 times faster with TPU v5e, according to speed benchmarks
According to technology media TechCrunch, Mark Lohmeyer, vice president and general manager of Google Cloud Computing and Machine Learning Infrastructure, said, “This is the most cost-effective and accessible cloud TPU to date.” Lohmeyer emphasized that Google Cloud ensures that users can scale their TPU clusters to previously unreachable levels, allowing customers to easily expand their artificial intelligence models beyond the physical boundaries of a single TPU cluster. That is, a single large AI workload can span multiple physical TPU clusters and scale to tens of thousands of chips cost-effectively. "When it comes to cloud GPUs and cloud TPUs, we give customers a lot of choice and flexibility to meet the broad demand we're seeing for artificial intelligence workloads."
In addition to launching a new generation of TPU, Google Cloud also announced that it will launch an A3 series virtual machine based on Nvidia H100 GPU next month, which will be provided in the form of a GPU supercomputer to provide powerful computing power for large artificial intelligence models
The above is the detailed content of Google releases fifth-generation AI chip: accelerating the training and running speed of AI models by 5 times. For more information, please follow other related articles on the PHP Chinese website!

谷歌三件套指的是:1、google play商店,即下载各种应用程序的平台,类似于移动助手,安卓用户可以在商店下载免费或付费的游戏和软件;2、Google Play服务,用于更新Google本家的应用和Google Play提供的其他第三方应用;3、谷歌服务框架(GMS),是系统软件里面可以删除的一个APK程序,通过谷歌平台上架的应用和游戏都需要框架的支持。

中国不卖google手机的原因:谷歌已经全面退出中国市场了,所以不能在中国销售,在国内是没有合法途径销售。在中国消费市场中,消费者大都倾向于物美价廉以及功能实用的产品,所以竞争实力本就因政治因素大打折扣的谷歌手机主体市场一直不在中国大陆。

虽然谷歌早在2020年,就在自家的数据中心上部署了当时最强的AI芯片——TPU v4。但直到今年的4月4日,谷歌才首次公布了这台AI超算的技术细节。论文地址:https://arxiv.org/abs/2304.01433相比于TPU v3,TPU v4的性能要高出2.1倍,而在整合4096个芯片之后,超算的性能更是提升了10倍。另外,谷歌还声称,自家芯片要比英伟达A100更快、更节能。与A100对打,速度快1.7倍论文中,谷歌表示,对于规模相当的系统,TPU v4可以提供比英伟达A100强1.

2015 年,谷歌大脑开放了一个名为「TensorFlow」的研究项目,这款产品迅速流行起来,成为人工智能业界的主流深度学习框架,塑造了现代机器学习的生态系统。从那时起,成千上万的开源贡献者以及众多的开发人员、社区组织者、研究人员和教育工作者等都投入到这一开源软件库上。然而七年后的今天,故事的走向已经完全不同:谷歌的 TensorFlow 失去了开发者的拥护。因为 TensorFlow 用户已经开始转向 Meta 推出的另一款框架 PyTorch。众多开发者都认为 TensorFlow 已经输掉

前几天,谷歌差点遭遇一场公关危机,Bert一作、已跳槽OpenAI的前员工Jacob Devlin曝出,Bard竟是用ChatGPT的数据训练的。随后,谷歌火速否认。而这场争议,也牵出了一场大讨论:为什么越来越多Google顶尖研究员跳槽OpenAI?这场LLM战役它还能打赢吗?知友回复莱斯大学博士、知友「一堆废纸」表示,其实谷歌和OpenAI的差距,是数据的差距。「OpenAI对LLM有强大的执念,这是Google这类公司完全比不上的。当然人的差距只是一个方面,数据的差距以及对待数据的态度才

由于可以做一些没训练过的事情,大型语言模型似乎具有某种魔力,也因此成为了媒体和研究员炒作和关注的焦点。当扩展大型语言模型时,偶尔会出现一些较小模型没有的新能力,这种类似于「创造力」的属性被称作「突现」能力,代表我们向通用人工智能迈进了一大步。如今,来自谷歌、斯坦福、Deepmind和北卡罗来纳大学的研究人员,正在探索大型语言模型中的「突现」能力。解码器提示的 DALL-E神奇的「突现」能力自然语言处理(NLP)已经被基于大量文本数据训练的语言模型彻底改变。扩大语言模型的规模通常会提高一系列下游N

让一位乒乓球爱好者和机器人对打,按照机器人的发展趋势来看,谁输谁赢还真说不准。机器人拥有灵巧的可操作性、腿部运动灵活、抓握能力出色…… 已被广泛应用于各种挑战任务。但在与人类互动紧密的任务中,机器人的表现又如何呢?就拿乒乓球来说,这需要双方高度配合,并且球的运动非常快速,这对算法提出了重大挑战。在乒乓球比赛中,首要的就是速度和精度,这对学习算法提出了很高的要求。同时,这项运动具有高度结构化(具有固定的、可预测的环境)和多智能体协作(机器人可以与人类或其他机器人一起对打)两大特点,使其成为研究人

ChatGPT在手,有问必答。你可知,与它每次对话的计算成本简直让人泪目。此前,分析师称ChatGPT回复一次,需要2美分。要知道,人工智能聊天机器人所需的算力背后烧的可是GPU。这恰恰让像英伟达这样的芯片公司豪赚了一把。2月23日,英伟达股价飙升,使其市值增加了700多亿美元,总市值超5800亿美元,大约是英特尔的5倍。在英伟达之外,AMD可以称得上是图形处理器行业的第二大厂商,市场份额约为20%。而英特尔持有不到1%的市场份额。ChatGPT在跑,英伟达在赚随着ChatGPT解锁潜在的应用案


Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

AI Hentai Generator
Generate AI Hentai for free.

Hot Article

Hot Tools

Atom editor mac version download
The most popular open source editor

Dreamweaver CS6
Visual web development tools

Safe Exam Browser
Safe Exam Browser is a secure browser environment for taking online exams securely. This software turns any computer into a secure workstation. It controls access to any utility and prevents students from using unauthorized resources.

MantisBT
Mantis is an easy-to-deploy web-based defect tracking tool designed to aid in product defect tracking. It requires PHP, MySQL and a web server. Check out our demo and hosting services.

Zend Studio 13.0.1
Powerful PHP integrated development environment
