


NVIDIA is replicating its successful experience in AI to quantum computing
This article is reproduced from Lei Feng.com. If you need to reprint, please go to the official website of Lei Feng.com to apply for authorization.
To some people, quantum computing (Quantum computer) may sound like science fiction, a scenario decades away.
In fact, many people around the world have already invested in this cutting-edge computing research. There are more than 2,100 quantum computing research papers published, more than 250 quantum computing start-up companies, and 22 National policies related to quantum computing.
Quantum computing is a new computing model that follows the laws of quantum mechanics to regulate quantum information units for calculation. It is usually compared with classical computing. . From a principle point of view, quantum computing can have calculation speeds faster than classical computing, and this gap may be as high as a trillion times.
Quantum computing is expected to overcome many challenges faced today and promote the development of various tasks from drug research and development to weather forecasting, and can play a huge role in future HPC. Because of this, a large number of companies and researchers are investing resources into studying quantum computing.
Currently, there are many options for physical platforms to achieve quantum computing, such as superconductors, ion traps, neutral atoms, silicon quantum, light quantum, etc. However, they all face different challenges. .
To accelerate the development of quantum computing, Hybrid quantum computing is expected to realize the first practical applications of quantum computing.
The so-called hybrid quantum computing means that quantum computers and classical computers work together to give full play to the advantages of classical computing (such as CPU and GPU) in traditional operations, such as circuit optimization, correction and error correction, and Advantages of system-level quantum processors (QPUs) as new accelerators.
Compared with CPU, GPU is a good choice for hybrid quantum computing, because GPU can shorten the execution time of traditional jobs and greatly reduce the communication delay between classical computers and quantum computers. , which is the main bottleneck facing today’s hybrid quantum operations.
Meanwhile, another big challenge is software tools. As an emerging piece of hardware, quantum processors need to be programmed to realize their value. Researchers can only use quantum equivalent to low-level assembly code. In other words, only quantum computing experts can program quantum accelerators. #This also makes it difficult to promote the rapid development of quantum computing. Therefore,
The field of quantum computing requires a unified programming model and compiler tool chain.The compiler allows scientists to easily port part of their HPC applications to a simulated QPU and then to a real QPU, efficiently finding ways to accelerate quantum computing work.
With GPU-accelerated simulation tools, programming models, and compiler toolchains all brought together, HPC researchers can begin building the hybrid quantum data center of the future.Nvidia, which has industry-leading high-performance GPUs and extensive experience in HPC and AI, can help it quickly establish unique products and advantages in the field of quantum computing.
Nvidia has indeed begun to copy its successful experience in the field of AI to the field of quantum computing. Starting from the latest software for developers, lowering the threshold for developers to use it, helping developers in the field of quantum computing solve problems and create value.
Once quantum computing researchers and users choose NVIDIA's tools, they will naturally It can help Nvidia seize the opportunity in the field of quantum computing.At GTC 2021, NVIDIA announced the launch of cuQuantum SDK, which aims to accelerate quantum circuit simulations running on GPUs. Today, dozens of quantum organizations are already using the cuQuantum software development kit to accelerate their quantum circuit simulations on GPUs.
Recently, AWS provided cuQuantum in the Braket service and demonstrated that
cuQuantum achieved 900 times acceleration on quantum machine learning workloads while reducing costs by 3.5 times.Another important value of cuQuantum in promoting the development of quantum computing lies in its ability to implement accelerated computing on major quantum software frameworks, including Google's qsim and IBM's Qiskit Aer , Xanadu’s PennyLane and Classiq’s Quantum Algorithm Design platform.
For scientists and developers, users of these frameworks can access GPU acceleration without any further coding. For Nvidia, it will mean its important value in the quantum computing software framework, as well as giving full play to the role of its GPU in hybrid quantum computing.
On July 12, 2022, NVIDIA continued to move forward in the field of quantum computing and released QODA, a unified computing platform.
The goal of Quantum Optimized Device Architecture (QODA) is to make quantum computing more accessible by creating a coherent hybrid quantum classical programming model. QODA also enables experts in the HPC and AI fields to easily port their applications to public clouds, NVIDIA DGX systems, or supercomputing centers equipped with a large number of NVIDIA GPUs.
For quantum organizations already using the cuQuantum software development kit, NVIDIA QODA enables developers to build complete quantum applications that can be simulated on GPU-accelerated supercomputers with NVIDIA cuQuantum .
Like AI and high-performance computing, ecology is the key to success, so software and hardware partners are crucial to NVIDIA's success in the field of quantum computing.
Q2B 22 At the Tokyo Quantum Computing Conference, Nvidia announced partnerships with quantum hardware vendors IQM quantum Computers, Pasqal, Quantum, Quantum Brilliance and Xanadu, software vendors QC Ware and Zapata Computing, and supercomputing centers The German Jurich Research Center, Lawrence Berkeley National Laboratory and Oak Ridge National Laboratory are cooperating on QODA.
NVIDIA CEO Jensen Huang has always emphasized that what NVIDIA needs to do is to create new products and markets, rather than seize existing markets. Quantum computing is such a brand-new market. Nvidia’s choice of technical route and entry point in the field of quantum computing will help it seize the opportunity of quantum computing.
But we must also note that quantum computing still has a long way to go, and it is still difficult to determine who can have quantum hegemony.
The above is the detailed content of NVIDIA is replicating its successful experience in AI to quantum computing. 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

AI Hentai Generator
Generate AI Hentai for free.

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



According to news from this website on February 23, NVIDIA updated and launched the NVIDIA application last night, providing players with a new unified GPU control center, allowing players to capture wonderful moments through the powerful recording tool provided by the in-game floating window. In this update, NVIDIA also introduced the RTXHDR function. The official introduction is attached to this site: RTXHDR is a new AI-empowered Freestyle filter that can seamlessly introduce the gorgeous visual effects of high dynamic range (HDR) into In games that do not originally support HDR. All you need is an HDR-compatible monitor to use this feature with a wide range of DirectX and Vulkan-based games. After the player enables the RTXHDR function, the game will run even if it does not support HD

According to news from this website on February 19, in the latest video of Moore's LawisDead channel, anchor Tom revealed that Nvidia GeForce RTX50 series graphics cards will be natively equipped with PCIeGen6 16-Pin power supply interface. Tom said that in addition to the high-end GeForceRTX5080 and GeForceRTX5090 series, the mid-range GeForceRTX5060 will also enable new power supply interfaces. It is reported that Nvidia has set clear requirements that in the future, each GeForce RTX50 series will be equipped with a PCIeGen6 16-Pin power supply interface to simplify the supply chain. The screenshots attached to this site are as follows: Tom also said that GeForceRTX5090

According to news from this site on February 22, generally speaking, NVIDIA and AMD have restrictions on channel pricing, and some dealers who privately reduce prices significantly will also be punished. For example, AMD recently punished dealers who sold 6750GRE graphics cards at prices below the minimum price. The merchant was punished. This site has noticed that NVIDIA GeForce RTX 4070 and 4060 Ti have dropped to record lows. Their founder's version, that is, the public version of the graphics card, can currently receive a 200 yuan coupon at JD.com's self-operated store, with prices of 4,599 yuan and 2,999 yuan. Of course, if you consider third-party stores, there will be lower prices. In terms of parameters, the RTX4070 graphics card has a 5888CUDA core, uses 12GBGDDR6X memory, and a bit width of 192bi

The open LLM community is an era when a hundred flowers bloom and compete. You can see Llama-3-70B-Instruct, QWen2-72B-Instruct, Nemotron-4-340B-Instruct, Mixtral-8x22BInstruct-v0.1 and many other excellent performers. Model. However, compared with proprietary large models represented by GPT-4-Turbo, open models still have significant gaps in many fields. In addition to general models, some open models that specialize in key areas have been developed, such as DeepSeek-Coder-V2 for programming and mathematics, and InternVL for visual-language tasks.

According to news from this site on June 2, at the ongoing Huang Renxun 2024 Taipei Computex keynote speech, Huang Renxun introduced that generative artificial intelligence will promote the reshaping of the full stack of software and demonstrated its NIM (Nvidia Inference Microservices) cloud-native microservices. Nvidia believes that the "AI factory" will set off a new industrial revolution: taking the software industry pioneered by Microsoft as an example, Huang Renxun believes that generative artificial intelligence will promote its full-stack reshaping. To facilitate the deployment of AI services by enterprises of all sizes, NVIDIA launched NIM (Nvidia Inference Microservices) cloud-native microservices in March this year. NIM+ is a suite of cloud-native microservices optimized to reduce time to market

Recently, Layer1 blockchain VanarChain has attracted market attention due to its high growth rate and cooperation with AI giant NVIDIA. Behind VanarChain's popularity, in addition to undergoing multiple brand transformations, popular concepts such as main games, metaverse and AI have also earned the project plenty of popularity and topics. Prior to its transformation, Vanar, formerly TerraVirtua, was founded in 2018 as a platform that supported paid subscriptions, provided virtual reality (VR) and augmented reality (AR) content, and accepted cryptocurrency payments. The platform was created by co-founders Gary Bracey and Jawad Ashraf, with Gary Bracey having extensive experience involved in video game production and development.

According to news from this site on April 17, TrendForce recently released a report, believing that demand for Nvidia's new Blackwell platform products is bullish, and is expected to drive TSMC's total CoWoS packaging production capacity to increase by more than 150% in 2024. NVIDIA Blackwell's new platform products include B-series GPUs and GB200 accelerator cards integrating NVIDIA's own GraceArm CPU. TrendForce confirms that the supply chain is currently very optimistic about GB200. It is estimated that shipments in 2025 are expected to exceed one million units, accounting for 40-50% of Nvidia's high-end GPUs. Nvidia plans to deliver products such as GB200 and B100 in the second half of the year, but upstream wafer packaging must further adopt more complex products.

Finally, the last RTX40SUPER series graphics card is here, focusing on 4K high-brush gaming experience, and the initial price is 1,499 yuan lower than the RTX4080, which is 8,099 yuan. If you happen to need to upgrade or install a computer recently, have a sufficient budget and want balanced performance in all aspects, you can get it done in one step. So today’s review of the NVIDIA GeForce RTX 4080 SUPER graphics card will definitely help you. Before the evaluation, as usual, let’s introduce the test platform this time. The specific configuration is as follows: Appearance design: All models of the public version of the card have been changed to black paint, which can be said to be the biggest change in appearance. It is precisely because of this detail difference that the new version of NVIDIA GeForceRTX4080SU
