


From the emergence of large models, to the rapid development of computing power and storage infrastructure, to the commercial innovation and application of generative AI, the "trilogy" of the generalization process of artificial intelligence has become a common thread. The main theme of 2023.
According to the latest report released by IDC Consulting, more than 87% of industry users around the world have begun to apply and deploy generative artificial intelligence, and the proportion in the Chinese market is as high as 93%. This shows that generative artificial intelligence is accelerating from the strategic planning stage to the implementation stage, and application innovation in all walks of life has ushered in an opportunity to explode
From an eye-catching perspective, "killer applications" for individual users have high hopes, but the actual results are always difficult to meet expectations; if you return to normalcy, you will find that many industries in the ToB field are generative AI On the main battlefield, some heavyweight innovative applications have quietly sprouted.
If you expand your vision from applications to the entire industrial environment, it is not difficult to find the underlying logic for the accelerated penetration of generative AI in various industries. In the period of transition from informatization construction to digital transformation, the emergence of cloud computing has provided a new evolutionary path for many enterprises that are restricted by IT investment capabilities and have difficulty in promoting business upgrades. The platform features of large-scale operation and elastic scalability provide a new path for complex applications. Innovation escorts; when digital transformation moves into deep waters, a new wave of intelligence is coming, and mainstream cloud vendors also play a pivotal role. It is time to comprehensively reconstruct the base of generative AI.
As the pioneer and leader of global cloud computing, Amazon Cloud Technology has been very good at the popularization stage of cloud computing, allowing almost all industries to "do it again." In the era of generative AI, Amazon Cloud Technology is still the pioneer, and the "cloud moment" for various industries to be "do it again" by artificial intelligence has arrived.
Chen Xiaojian, General Manager of Amazon Cloud Technology Greater China Product Department, explains the big announcement
Recently, 2023 Amazon Cloud Technology re:Invent made the strongest noise - launching a number of major releases around the themes of reconstructing cloud infrastructure, reconstructing computing, reconstructing storage, and reconstructing enterprise-level generative AI. Help cloud customers quickly achieve digital transformation and increase the speed of enterprise generative AI innovation. It is worth mentioning that the 2023 Amazon Cloud Technology re:Invent China City Tour - Beijing Station event will also be held recently, and the "seeds" of commercial application innovation are expected to take root.
By systematically sorting out the latest strategies, products, solutions and application cases released by Amazon Cloud Technology, we can paint an industry picture of the accelerated penetration of generative artificial intelligence. We are full of expectations for the innovative energy released by "Cloud Moment"
Reshape the generative AI application innovation base based on three-layer architecture
can be rewritten like this: To a certain extent, cloud computing and generative artificial intelligence are a mutually reinforcing and interdependent relationship: on the one hand, the cloud platform provides the best platform for the application innovation of generative artificial intelligence. ;On the other hand, generative artificial intelligence also provides a rare opportunity for the continuous upgrading of cloud computing
Although it is too early to say that cloud service providers will fully invest in generative artificial intelligence, judging from the latest strategies released by several mainstream cloud service providers this year, most of them will focus on generative artificial intelligence. , the infrastructure, product solutions and cooperation models have all changed as a result
In the field of generative AI, the overall layout of Amazon Cloud Technology can be divided into three levels. The first is the application layer built using the base model, followed by the tools layer built using the base model, and finally the infrastructure layer for base model training and inference. At the re:Invent conference in 2023, Amazon Cloud Technology continued to innovate based on this three-layer architecture, greatly lowering the threshold for the construction and application of generative AI
The newly released Amazon Q is a product that can be customized according to the customer's business. It can meet the needs of various office scenarios and is known as an important tool for generative artificial intelligence application innovation. Amazon Q can be widely used in various vertical industries and will completely change the way industry customers build, deploy and apply generative artificial intelligence on cloud platforms. It can also leverage enterprise private knowledge to complete various tasks, customized according to the unique business, data, code and operations of industry customers. It can also be used in conjunction with other Amazon Cloud Technology products to help enterprises improve productivity and optimize operations. It is understood that Amazon Q has already provided a preview version to customers, Amazon Q in Amazon Connect has also been officially launched, and Amazon Q in Amazon Supply Chain will also be available soon
Amazon Bedrock, which has attracted much attention, has released more model choices and powerful functions to help safely build and scale generative AI applications. The latest high-performance models from Anthropic, Cohere, Meta, Stability AI and Amazon provide customers with richer model selection and new capabilities for evaluating models, simplifying the way to customize models with relevant and proprietary data, and providing the ability to automate complex tasks. Tools that enable customers to build and deploy applications responsibly.
It is particularly worth mentioning that Amazon Cloud Technology has also launched five new Amazon SageMaker functions to make it easier and faster for enterprises to build, train and deploy machine learning models that support various generative AI usage scenarios. Among them, Amazon SageMaker HyperPod can accelerate basic model training on a large scale, shorten training time by 40%, and ensure that the training process that lasts for weeks or months is not interrupted; Amazon SageMaker Inference inference function can reduce deployment costs by 50% and 20% on average. inference latency; Amazon SageMaker Clarify helps customers evaluate, compare, and select the best model; two enhancements to Amazon SageMaker Canvas—preparing data with natural language instructions and leveraging models for large-scale business analysis—enable customers to easily integrate Generative AI integrated into workflow
The implementation of generative AI in industry scenarios has been accelerated
With the continuous upgrading of generative artificial intelligence, innovative application scenarios in various industries are gradually implemented and entering the fast lane. This is a field full of opportunities, but also faces many unknown challenges
According to data released by McKinsey, generative artificial intelligence technology will create approximately US$7 trillion in value for the global economy, while increasing the overall economic benefits of artificial intelligence by approximately 50%. China is expected to contribute approximately US$2 trillion, accounting for nearly 1/3 of the global total
However, although the overall "joy" situation seems good, we cannot ignore the structural "worry". “At present, only the electronics industry has a penetration rate of artificial intelligence exceeding 10% among traditional domestic industries, while the penetration rate in the automobile, petrochemical, pharmaceutical and other industries is between 5% and 10%, and the penetration rate in traditional industries such as building materials is Less than 5%.”
In this case, the field of generative artificial intelligence urgently needs a large number of successful actual cases to produce a significant demonstration effect and provide reference for explorers from all walks of life. Amazon Cloud Technology has accumulated rich practical experience in industries such as automobile manufacturing, life sciences, retail e-commerce, games, and financial services, providing guidance for the application of generative artificial intelligence in actual scenarios
Take the automotive and manufacturing industries as an example: Amazon IoT SiteWise Edge preview is a native software that easily collects, organizes, processes, and monitors device data to help simplify, accelerate, and reduce the cost of sending industrial device data to Amazon Cloud Technology cost; the preview version of vision system data from Amazon IoT FleetWise allows car companies to efficiently collect vehicle data and manage it effectively; the Amazon EC2 DL2q instance launched based on Qualcomm AI 100 helps OEM manufacturers accelerate the development of autonomous driving functions.
At the 2023 Amazon Cloud Technology re:Invent conference, many customers in the automotive and manufacturing industries used Amazon Cloud Technology solutions to carry out application innovation around the two key links of customer journey and product journey. For example, BMW and Honda respectively relied on Amazon Cloud Technology to build next-generation autonomous driving platforms and realize software-defined mobility; BYD used Amazon Cloud Technology to deploy intelligent network connection platforms and Amazon Music and other services, improving the efficiency of automobile research and development and improving the efficiency of automobile research and development. Improved the in-car experience; SAIC chose Amazon Cloud Technology for overseas travel to build an intelligent network solution for its overseas independent brand cars
Life science is also a stage for generative AI to show its talents. Amazon Cloud Technology launches AI recommendations for descriptions in Amazon DataZone to help life sciences customers improve data discovery, data understanding, and data usage by enriching business data catalogs; NVIDIA introduces DGX Cloud and BioNeMo to Amazon Cloud Technology to enable pharmaceutical companies to use data to simplify and accelerate models Training drives drug discovery; Amazon HealthScribe is a HIPAA-compliant generative AI service that assists medical application builders in automatically creating preliminary clinical documents from conversations between patients and clinicians.
Judging from specific implementation cases, both giants and start-ups in the biomedical field have been beneficiaries of generative AI. For example: Based on the migration of applications, databases and servers to the cloud, Amazon Cloud Technology helps Pfizer save more than 47 million US dollars per year, increase data generation speed by 75%, and has achieved innovative breakthroughs in 17 use cases; Amgen uses Amazon HealthOmics to integrate genomics Data is transformed into insights to provide drug treatments for patients; Gilead uses generative AI to accelerate the evaluation of potential targets and promote drug discovery.
Work together to outline the future of enterprise-level generative AI
It is worth noting that the application of generative artificial intelligence in retail e-commerce, games, finance and other industries is accelerating. More and more companies have found effective business transformation and application innovation paths. Enterprise-level generative artificial intelligence Intelligence has reached a critical moment when it explodes
In this critical period, it is impossible to achieve the expected goals by relying on a single breakthrough. We urgently need to build an enterprise-level generative artificial intelligence ecosystem. According to a survey by IDC Consulting, more than 30% of enterprises regard public cloud platforms as the most important strategic partners for generative artificial intelligence. This is the source of change
can be rewritten like this: It can be seen that cloud service providers play a core role in the entire ecosystem. The strategic choices and action paths made by Amazon Cloud Technology at critical moments have established a good foundation for the development of enterprise-level generative AI. The new standards will also attract more participants to join the ranks
From a longer-term perspective, the process of generalization of artificial intelligence has just begun, and digital and intelligent upgrades in all walks of life are still on the way. Enterprise-level generative artificial intelligence is more like a vast wilderness, and it is unknown how many roads lead to the "oasis". Let’s ride horses and whip and meet at the next milestone
The above is the detailed content of Generative AI is accelerating its implementation: Industry application innovation is ushering in the 'cloud moment'. For more information, please follow other related articles on the PHP Chinese website!

·美国总统科技顾问委员会成立的生成式AI工作组旨在帮助评估人工智能领域的关键机遇和风险,并就尽可能确保公平、安全、负责地开发和部署这些技术向美国总统提供意见。·AMD的首席执行官苏姿丰(LisaSu)和谷歌云首席信息安全官菲尔·维纳布尔斯(PhilVenables)也是这个工作组的成员。华裔数学家、菲尔茨奖获得者陶哲轩。当地时间5月13日,华裔数学家、菲尔茨奖获得者陶哲轩公布消息,他和物理学家劳拉·格林(LauraGreene)共同领导美国总统科技顾问委员会(PCAST)的生成式人工智能工作组。

图片来源@视觉中国文|王吉伟从“人+RPA”到“人+生成式AI+RPA”,LLM如何影响RPA人机交互?换个角度,从人机交互看LLM如何影响RPA?影响程序开发与流程自动化人机交互的RPA,现在也要被LLM改变了?LLM如何影响人机交互?生成式AI怎么改变RPA人机交互?一文看明白:大模型时代来临,基于LLM的生成式AI正在快速变革RPA人机交互;生成式AI重新定义人机交互,LLM正在影响RPA软件架构变迁。如果问RPA对程序开发以及自动化有哪些贡献,其中一个答案便是它改变了人机交互(HCI,h

▲本图由AI生成酷家乐、三维家、东易日盛等已出手,装饰装修产业链大举引入AIGC生成式AI在装饰装修领域有哪些应用?对设计师有啥影响?一文看懂告别各种设计软件一句话生成效果图,生成式AI正颠覆装饰装修领域使用人工智能增强能力提升设计效率,生成式AI变革装饰装修行业生成式AI对装饰装修行业有哪些影响?未来发展趋势如何?一文看懂LLM变革装饰装修,这28款流行生成式AI装修设计工具值得上手体验文/王吉伟在装饰装修领域,最近与AIGC关联的消息着实不少。Collov推出了生成式AI驱动的设计工具Col

根据市场研究公司Omdia的一份最新报告,预计到2023年,生成式人工智能(GenAI)将成为一个引人注目的技术趋势,为企业和个人带来重要的应用,包括教育。在电信领域,GenAI的用例主要集中在提供个性化营销内容或支持更复杂的虚拟助手,以提升客户体验尽管生成式AI在网络运营中的应用并不明显,但EnterpriseWeb进行了一项有趣的概念验证,展示了该领域中生成式AI的潜力生成式AI在网络自动化方面的能力和限制生成式AI在网络运营中的早期应用之一是利用交互式指导替代工程手册来帮助安装网络元件,从

11月1日消息,微软和西门子宣布加深在生成式人工智能(AI)领域的合作,并将其应用于全球各行各业。为了实现人机协作的革命性突破,两家公司推出了西门子工业Copilot,这是一款联合开发的人工智能助手,旨在提高制造业的生产力。通过利用微软的AzureOpenAI服务,结合西门子工业的专业技术和Xcelerator平台的数据,西门子工业Copilot可以轻松生成、优化和调试复杂的自动化代码,实现自然语言交互。两家公司表示,这项技术可以将一些耗时数周的任务缩短到几分钟,例如仿真过程IT之家注意到,Co

在过度炒作了Web3、虚拟世界和区块链等一系列技术之后,企业高管们正在准备迎接生成式人工智能的浪潮。有人认为,人工智能带来的变革将与互联网的诞生或台式电脑的出现相媲美但能力越大,责任越大。生成式人工智能带来的风险与回报一样多。这项技术正在挑战版权和知识产权方面的法律制度,创造新的网络和数据治理威胁,并在劳动密集的活动中引发了“自动化焦虑”。为了满足利益相关者的期望,公司需要迅速采取行动,但必须谨慎行事,以确保在数据隐私和偏见等领域不违反法规或道德标准在运营方面,企业需要重新配置人力资源,并与科技

作为全球开源领域一年一度的行业盛宴,2023红帽全球峰会于近日如约而至。红帽带来全球开源盛宴在本届峰会上,红帽发布了最新版的OpenShiftAI、搭载IBMWatsonCodeAssistant的AnsibleLightspeed等一系列新品,并且针对媒体记者最为关心的热点话题分享了红帽的观点与看法。红帽总裁兼CEOMattHicks表示:“我们对未来充满了激动和期待,特别是在人工智能和新技术方面。我们发布了一些令人兴奋的新产品,其中包括OpenShiftAI。然而要实现这一愿景,我们还需要注

2023年的科技圈什么技术最火,毫无疑问,回答都会指向生成式AI。生成式AI的到来引发了业内外广泛讨论,也引发了大家对AI发展的新一轮思考——未来几年,生成式AI会成为最重要的生产力工具,无论是训练还是推理端,算力需求都将有望爆发式增长。在6月28日举行的2023年亚马逊云科技中国峰会上,亚马逊云科技大中华区产品部总经理陈晓建发表了名为《专注创新,摆脱基础架构束缚》的主题演讲,他认为,“当前,虽然生成式AI只有短短几个月,但其超大规模人工智能模型和海量数据对高算力提出新要求,不断拉动算力需求快速


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

PhpStorm Mac version
The latest (2018.2.1) professional PHP integrated development tool

Dreamweaver Mac version
Visual web development tools

SecLists
SecLists is the ultimate security tester's companion. It is a collection of various types of lists that are frequently used during security assessments, all in one place. SecLists helps make security testing more efficient and productive by conveniently providing all the lists a security tester might need. List types include usernames, passwords, URLs, fuzzing payloads, sensitive data patterns, web shells, and more. The tester can simply pull this repository onto a new test machine and he will have access to every type of list he needs.

DVWA
Damn Vulnerable Web App (DVWA) is a PHP/MySQL web application that is very vulnerable. Its main goals are to be an aid for security professionals to test their skills and tools in a legal environment, to help web developers better understand the process of securing web applications, and to help teachers/students teach/learn in a classroom environment Web application security. The goal of DVWA is to practice some of the most common web vulnerabilities through a simple and straightforward interface, with varying degrees of difficulty. Please note that this software

MinGW - Minimalist GNU for Windows
This project is in the process of being migrated to osdn.net/projects/mingw, you can continue to follow us there. MinGW: A native Windows port of the GNU Compiler Collection (GCC), freely distributable import libraries and header files for building native Windows applications; includes extensions to the MSVC runtime to support C99 functionality. All MinGW software can run on 64-bit Windows platforms.
