


Which technology giant is behind Haier and Siemens' generative AI innovation?
Gu Fan, General Manager of Strategic Business Development Department of Amazon Cloud Technology Greater China
In 2023, big language models and generative AI will "surge" in the global market, not only triggering an "an overwhelming" follow-up in the AI and cloud computing industries, but also strongly attracting the entry of manufacturing giants.
Haier Innovation Design Center has created the country's first AIGC industrial design solution, which greatly shortens the design cycle and reduces conceptual design costs. It not only speeds up the overall conceptual design by 83%, but also increases the integrated rendering efficiency by about 90%. It effectively solves the problems of high labor costs and low concept output and approval efficiency in the design stage.
Siemens China's intelligent knowledge base and intelligent conversational robot "Xiaoyu" based on its own model has core key capabilities such as natural language processing, knowledge base retrieval, and large language model training through data, which has greatly improved the internal employee information. To achieve efficiency, more than 4,000 employees used it in the first week of its launch, and more than 12,000 questions were answered. This solution effectively reduced labor costs, and more than 90% of questions can be answered directly by the chatbot.
Behind the generative artificial intelligence innovation adopted by Haier and Siemens in China is the cloud computing giant Amazon Cloud Technology. Amazon Cloud Technology and its partners have jointly developed generative artificial intelligence solutions to lower the entry barriers for manufacturing companies. For example, Amazon Cloud Technology and its partner Computational Aesthetics (Nolibox) jointly developed solutions such as Wenshengtu and Tushengtu for the design of rapid concept prototypes and marketing materials. The AIGC industrial design solution of Haier Innovation Design Center is based on the cooperation between Amazon Cloud Technology and Computational Aesthetics (Nolibox)
Amazon Cloud Technology also provides manufacturing companies with pre-configured generative artificial intelligence (AI) solution guides so that customers can quickly implement generative AI innovation by "building building blocks." For example, Amazon Cloud Technology uses generative AI technology to build an enterprise-level intelligent knowledge base, which integrates the functions of search engines and large language models, which can help enterprise employees quickly find the most accurate and practical information in the knowledge base, thereby effectively improving production and office efficiency. Siemens China's technical team used this preconfigured solution to carry out only 20% of the customized development work, and successfully completed the development and launch of a project named "Xiaoyu" in just 3 months
In early November 2023, Amazon Cloud Technology held a media communication meeting for the manufacturing industry. Gu Fan, general manager of the Strategic Business Development Department of Amazon Cloud Technology Greater China, said at the communication meeting that Amazon Cloud Technology is committed to promoting the reshaping of generative AI. In the manufacturing industry, by lowering the threshold in the critical path of building generative AI applications, we can fully penetrate into the manufacturing value chain scenarios, work with partners to provide industry-leading end-to-end technology solutions, and develop in scenarios such as industrial design and knowledge base search. Customized solutions allow manufacturing companies to fully realize the potential of generative AI.
Generative AI is rapidly being applied to different business scenarios in the manufacturing industry, including product development and design, manufacturing operations, supply chain management, marketing and sales, intelligent customer service, and knowledge base construction, bringing huge business benefits to enterprises. value. When manufacturing companies choose to prioritize generative AI, they can consider the following three scenarios: industrial design, marketing, and functional support. These scenarios are also generative AI application areas that can create the greatest commercial value for manufacturing companies
The rewritten content is: Amazon Cloud Technology is committed to reducing the difficulty of building generative artificial intelligence applications. With the support of Amazon Bedrock’s comprehensive functions, enterprises can easily and easily access a variety of leading basic models through APIs. It is also possible to customize the model using your own proprietary data. Additionally, with Amazon Bedrock, customers can securely integrate and deploy generative AI capabilities into applications without the need to manage infrastructure and use the Amazon cloud technology services they are already familiar with
However, large-scale models and generative AI are not currently widely used in manufacturing. Gu Fan believes that this is because there is relatively little public data on the core processes of the manufacturing industry, making it difficult to pre-train large models. Manufacturing companies need to start from practical applications and solutions, and the coexistence of large models and small models will become the main trend. In terms of small model solutions, the industrial visual inspection and supply chain arrival time prediction based on artificial intelligence models provided by Amazon Cloud Technology are all based on small models
Whether it is a large model or a small model, Amazon Cloud Technology provides rich and complete solutions. For the manufacturing industry, Amazon Cloud Technology also has a complete and powerful intelligent manufacturing ecosystem. Amazon Cloud Technology works with partners to create "last mile" solutions for intelligent manufacturing. The partners of Amazon Cloud Technology include well-known international companies such as Advantech, Adlink, Lenovo, Accenture, Deloitte, Dassault, and Infosys, as well as Zhongke Cloud Valley, Root Internet, Sushi Technology, Zhongke Chuangda, Ziyun Technology, and Zhongyiyun and other well-known domestic manufacturers.
In the past ten years since entering China, Amazon Cloud Technology has been committed to developing industry solutions and empowering enterprises in all walks of life to achieve digital intelligence transformation and innovative development. In the manufacturing industry, Amazon Cloud Technology has collaborated with hundreds of thousands of partners around the world to develop solutions suitable for a variety of scenarios and applications, comprehensively covering all links in the manufacturing value chain. Looking forward to 2024, Amazon Cloud Technology and its partners will use new technologies to continue to empower the manufacturing industry and continue to move towards a new development pattern. (Text/Ningchuan)
The above is the detailed content of Which technology giant is behind Haier and Siemens' generative AI innovation?. For more information, please follow other related articles on the PHP Chinese website!

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

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics

Generative AI is a type of human artificial intelligence technology that can generate various types of content, including text, images, audio and synthetic data. So what is artificial intelligence? What is the difference between artificial intelligence and machine learning? Artificial intelligence is the discipline, a branch of computer science, that studies the creation of intelligent agents, which are systems that can reason, learn, and perform actions autonomously. At its core, artificial intelligence is concerned with the theories and methods of building machines that think and act like humans. Within this discipline, machine learning ML is a field of artificial intelligence. It is a program or system that trains a model based on input data. The trained model can make useful predictions from new or unseen data derived from the unified data on which the model was trained.

On October 24, 2023, the Ctrip Global Partner Summit was held in Singapore. Liang Jianzhang, co-founder and chairman of the board of directors of Ctrip Group, gave a speech titled "Tourism is the unique and best industry". In his speech, Liang Jianzhang announced The strategic direction of Ctrip’s triple innovation of generative AI, content rankings, and ESG low-carbon hotel standards. What changes and opportunities will these innovations bring to the tourism industry? Generative AI: Creating an Intelligent Travel Assistant Generative AI is one of Ctrip’s core technologies that uses cloud + AI to promote intelligent service upgrades. It can realize the functions of an intelligent travel assistant and provide users with more convenient, more personalized, and more assured travel. Choose and provide merchants with more efficient, more accurate, and more cost-saving marketing solutions. “Generative AI” refers to a

Gu Fan, General Manager of the Strategic Business Development Department of Amazon Cloud Technology Greater China In 2023, large language models and generative AI will "surge" in the global market, not only triggering "an overwhelming" follow-up in the AI and cloud computing industry, but also vigorously Attract manufacturing giants to join the industry. Haier Innovation Design Center created the country's first AIGC industrial design solution, which significantly shortened the design cycle and reduced conceptual design costs. It not only accelerated the overall conceptual design by 83%, but also increased the integrated rendering efficiency by about 90%, effectively solving Problems include high labor costs and low concept output and approval efficiency in the design stage. Siemens China's intelligent knowledge base and intelligent conversational robot "Xiaoyu" based on its own model has natural language processing, knowledge base retrieval, and big language training through data

The implementation of large models is accelerating, and "industrial practicality" has become a development consensus. On May 17, 2024, the Tencent Cloud Generative AI Industry Application Summit was held in Beijing, announcing a series of progress in large model development and application products. Tencent's Hunyuan large model capabilities continue to upgrade. Multiple versions of models hunyuan-pro, hunyuan-standard, and hunyuan-lite are open to the public through Tencent Cloud to meet the model needs of enterprise customers and developers in different scenarios, and to implement the most cost-effective model solutions. . Tencent Cloud releases three major tools: knowledge engine for large models, image creation engine, and video creation engine, creating a native tool chain for the era of large models, simplifying data access, model fine-tuning, and application development processes through PaaS services to help enterprises

The rise of artificial intelligence is driving the rapid development of software development. This powerful technology has the potential to revolutionize the way we build software, with far-reaching impacts on every aspect of design, development, testing and deployment. For companies trying to enter the field of dynamic software development, the emergence of generative artificial intelligence technology provides them with unprecedented development opportunities. By incorporating this cutting-edge technology into their development processes, companies can significantly increase production efficiency, shorten product time to market, and launch high-quality software products that stand out in the fiercely competitive digital market. According to a McKinsey report, it is predicted that the generative artificial intelligence market size is expected to reach US$4.4 trillion by 2031. This forecast not only reflects a trend, but also shows the technology and business landscape.

Since its birth in the 1970s, PC (personal computer) has reached the age of "knowing destiny". By borrowing Huang Renyu's "Big Historical View" and Kondratieff's "Kangbo Cycle" theory, and examining the origins of PC from a broader perspective, we may be able to see what its future will look like. PC plays an important role in the field of IT (information technology), and its fate is closely related to the development of the IT industry. The PC originated from the Turing machine, information theory and cybernetics in the middle of the last century. It promoted the rapid development of information technology and became the most pioneering product in the 1980s and 1990s. It reached its peak in the Internet wave after 2000. However, after picking the "low-hanging fruit", the IT industry entered an innovation bottleneck period, and PCs began to gradually decline.

Microsoft and IDC jointly released a research report to delve into the application and business value of AI in enterprises. Among them, 71% of the respondents said that they are already using AI. Enterprises will get a return on investment in an average of 14 months after deploying AI, and each dollar of investment can bring a return of 3.5 US dollars; 52% of the respondents said that the lack of skilled labor is a key factor in implementation and implementation. The biggest obstacle to scaling AI. In addition, the study found that AI has brought many innovative breakthroughs in areas such as employee experience, customer interaction and internal business processes. With the widespread application of AI intelligent technology in society, its impact on the economy has become increasingly greater. Today, various organizations are gradually realizing the tremendous changes brought about by AI intelligent technology. However, when investing in AI intelligent technology, business significance and value become the key to decision-making.

Without changing the original meaning, it needs to be rewritten into Chinese: We have previously introduced to you a series of solutions just announced by Amazon Web Services (AWS) at re:Invent2023 aimed at accelerating the practical application of generative artificial intelligence-related technologies. Initiatives include but are not limited to establishing a deeper strategic partnership with NVIDIA, launching the first computing cluster based on the GH200 super chip, and brand new self-developed general-purpose processors and AI inference chips, etc. However, as we all know, generative AI relies not only on powerful computing power in hardware, but also on good AI models. Especially in the current technological context, developers and enterprise users often face many
