Reports Reports

Industry Research Reports

行业筛选

Top Industries

Search For: “AI GPU”

行业

Top Industries

  • Electronics & Semiconductor

Search For: “AI GPU”

Total: 9 Records, 1 Pages

  • Global and China AI GPU Market Report & Forecast 2024-2030

    Global and China AI GPU Market Report & Forecast 2024-2030

    Broadly speaking, AI chips refer to chips that run artificial intelligence algorithms. AI algorithms mainly include deep learning algorithms and machine learning algorithms. In a narrow sense, AI chips refer to chips specially designed to accelerate artificial intelligence algorithms. AI chips mainly include GPU, TPU, FPGA, ASIC, etc. GPU is a hardware component similar to CPU, but more professional. It can handle complex mathematical operations running in parallel more efficiently than a regular CPU. The GPU was initially used to simulate human imagination, enabling the virtual worlds of video games and films. Today, it also simulates human intelligence, enabling a deeper understanding of the physical world. Its parallel processing capabilities, supported by thousands of computing cores, are essential to running deep learning algorithms. This form of AI, in which software writes itself by learning from large amounts of data, can serve as the brain of computers, robots and self-driving cars that can perceive and understand the world. Since artificial intelligence tasks often require a large number of computationally intensive operations such as matrix multiplication and convolution, these operations can be parallelized to speed up calculations. In contrast, CPUs have weak parallelism and their relatively small number of cores cannot handle this type of task efficiently. Therefore, in artificial intelligence tasks, using GPUs for calculations can significantly speed up calculations and improve calculation efficiency. Some of the most recent applications of GPU-powered deep learning include recommendation systems, which are AI algorithms trained to understand the preferences, previous decisions, and characteristics of people and products using data gathered about their interactions, large Language Models/NLP, which can recognize, summarize, translate, predict and generate text and other content based on knowledge gained from massive datasets. Generative AI, which uses algorithms that create new content, including audio, code, images, text, simulations, and videos, based on the data they have been trained on.

    USD 4350.00
    (Single User License)
    出版日期

    Published: 2024-05-17

    页码

    Pages: 109

    行业

    Industry: Electronics & Semiconductor

    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • AI GPU- Global Market Share and Ranking, Overall Sales and Demand Forecast 2024-2030

    AI GPU- Global Market Share and Ranking, Overall Sales and Demand Forecast 2024-2030

    Broadly speaking, AI chips refer to chips that run artificial intelligence algorithms. AI algorithms mainly include deep learning algorithms and machine learning algorithms. In a narrow sense, AI chips refer to chips specially designed to accelerate artificial intelligence algorithms. AI chips mainly include GPU, TPU, FPGA, ASIC, etc. GPU is a hardware component similar to CPU, but more professional. It can handle complex mathematical operations running in parallel more efficiently than a regular CPU. The GPU was initially used to simulate human imagination, enabling the virtual worlds of video games and films. Today, it also simulates human intelligence, enabling a deeper understanding of the physical world. Its parallel processing capabilities, supported by thousands of computing cores, are essential to running deep learning algorithms. This form of AI, in which software writes itself by learning from large amounts of data, can serve as the brain of computers, robots and self-driving cars that can perceive and understand the world. Since artificial intelligence tasks often require a large number of computationally intensive operations such as matrix multiplication and convolution, these operations can be parallelized to speed up calculations. In contrast, CPUs have weak parallelism and their relatively small number of cores cannot handle this type of task efficiently. Therefore, in artificial intelligence tasks, using GPUs for calculations can significantly speed up calculations and improve calculation efficiency. Some of the most recent applications of GPU-powered deep learning include recommendation systems, which are AI algorithms trained to understand the preferences, previous decisions, and characteristics of people and products using data gathered about their interactions, large Language Models/NLP, which can recognize, summarize, translate, predict and generate text and other content based on knowledge gained from massive datasets. Generative AI, which uses algorithms that create new content, including audio, code, images, text, simulations, and videos, based on the data they have been trained on.

    USD 3950.00
    (Single User License)
    出版日期

    Published: 2024-05-17

    页码

    Pages: 97

    行业

    Industry: Electronics & Semiconductor

    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Research Report 2024

    Global AI GPU Market Research Report 2024

    Broadly speaking, AI chips refer to chips that run artificial intelligence algorithms. AI algorithms mainly include deep learning algorithms and machine learning algorithms. In a narrow sense, AI chips refer to chips specially designed to accelerate artificial intelligence algorithms. AI chips mainly include GPU, TPU, FPGA, ASIC, etc. GPU is a hardware component similar to CPU, but more professional. It can handle complex mathematical operations running in parallel more efficiently than a regular CPU. The GPU was initially used to simulate human imagination, enabling the virtual worlds of video games and films. Today, it also simulates human intelligence, enabling a deeper understanding of the physical world. Its parallel processing capabilities, supported by thousands of computing cores, are essential to running deep learning algorithms. This form of AI, in which software writes itself by learning from large amounts of data, can serve as the brain of computers, robots and self-driving cars that can perceive and understand the world. Since artificial intelligence tasks often require a large number of computationally intensive operations such as matrix multiplication and convolution, these operations can be parallelized to speed up calculations. In contrast, CPUs have weak parallelism and their relatively small number of cores cannot handle this type of task efficiently. Therefore, in artificial intelligence tasks, using GPUs for calculations can significantly speed up calculations and improve calculation efficiency. Some of the most recent applications of GPU-powered deep learning include recommendation systems, which are AI algorithms trained to understand the preferences, previous decisions, and characteristics of people and products using data gathered about their interactions, large Language Models/NLP, which can recognize, summarize, translate, predict and generate text and other content based on knowledge gained from massive datasets. Generative AI, which uses algorithms that create new content, including audio, code, images, text, simulations, and videos, based on the data they have been trained on.

    USD 2900.00
    (Single User License)
    出版日期

    Published: 2024-05-17

    页码

    Pages: 86

    行业

    Industry: Electronics & Semiconductor

    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Insights, Forecast to 2030

    Global AI GPU Market Insights, Forecast to 2030

    Broadly speaking, AI chips refer to chips that run artificial intelligence algorithms. AI algorithms mainly include deep learning algorithms and machine learning algorithms. In a narrow sense, AI chips refer to chips specially designed to accelerate artificial intelligence algorithms. AI chips mainly include GPU, TPU, FPGA, ASIC, etc. GPU is a hardware component similar to CPU, but more professional. It can handle complex mathematical operations running in parallel more efficiently than a regular CPU. The GPU was initially used to simulate human imagination, enabling the virtual worlds of video games and films. Today, it also simulates human intelligence, enabling a deeper understanding of the physical world. Its parallel processing capabilities, supported by thousands of computing cores, are essential to running deep learning algorithms. This form of AI, in which software writes itself by learning from large amounts of data, can serve as the brain of computers, robots and self-driving cars that can perceive and understand the world. Since artificial intelligence tasks often require a large number of computationally intensive operations such as matrix multiplication and convolution, these operations can be parallelized to speed up calculations. In contrast, CPUs have weak parallelism and their relatively small number of cores cannot handle this type of task efficiently. Therefore, in artificial intelligence tasks, using GPUs for calculations can significantly speed up calculations and improve calculation efficiency. Some of the most recent applications of GPU-powered deep learning include recommendation systems, which are AI algorithms trained to understand the preferences, previous decisions, and characteristics of people and products using data gathered about their interactions, large Language Models/NLP, which can recognize, summarize, translate, predict and generate text and other content based on knowledge gained from massive datasets. Generative AI, which uses algorithms that create new content, including audio, code, images, text, simulations, and videos, based on the data they have been trained on.

    USD 4900.00
    (Single User License)
    出版日期

    Published: 2024-04-15

    页码

    Pages: 134

    行业

    Industry: Electronics & Semiconductor

    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • AI GPU - Global Market Insights and Sales Trends 2024

    AI GPU - Global Market Insights and Sales Trends 2024

    This article mainly counts the GPU chips used in the AI field.

    USD 3350.00
    (Single User License)
    出版日期

    Published: 2023-12-17

    页码

    Pages: 71

    行业

    Industry: Electronics & Semiconductor

    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Insights, Forecast to 2029

    Global AI GPU Market Insights, Forecast to 2029

    This article mainly counts the GPU chips used in the AI field.

    USD 4900.00
    (Single User License)
    出版日期

    Published: 2023-06-15

    页码

    Pages: 77

    行业

    Industry: Electronics & Semiconductor

    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Research Report 2023

    Global AI GPU Market Research Report 2023

    This article mainly counts the GPU chips used in the AI field.

    USD 2900.00
    (Single User License)
    出版日期

    Published: 2023-06-15

    页码

    Pages: 69

    行业

    Industry: Electronics & Semiconductor

    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global and United States AI GPU Market Report & Forecast 2023-2029

    Global and United States AI GPU Market Report & Forecast 2023-2029

    This article mainly counts the GPU chips used in the AI field.

    USD 4350.00
    (Single User License)
    出版日期

    Published: 2023-06-15

    页码

    Pages: 71

    行业

    Industry: Electronics & Semiconductor

    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Report, History and Forecast 2018-2029, Breakdown Data by Manufacturers, Key Regions, Types and Application

    Global AI GPU Market Report, History and Forecast 2018-2029, Breakdown Data by Manufacturers, Key Regions, Types and Application

    This article mainly counts the GPU chips used in the AI field.

    USD 3350.00
    (Single User License)
    出版日期

    Published: 2023-06-15

    页码

    Pages: 78

    行业

    Industry: Electronics & Semiconductor

    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global and China AI GPU Market Report & Forecast 2024-2030

    Global and China AI GPU Market Report & Forecast 2024-2030

    Broadly speaking, AI chips refer to chips that run artificial intelligence algorithms. AI algorithms mainly include deep learning algorithms and machine learning algorithms. In a narrow sense, AI chips refer to chips specially designed to accelerate artificial intelligence algorithms. AI chips mainly include GPU, TPU, FPGA, ASIC, etc. GPU is a hardware component similar to CPU, but more professional. It can handle complex mathematical operations running in parallel more efficiently than a regular CPU. The GPU was initially used to simulate human imagination, enabling the virtual worlds of video games and films. Today, it also simulates human intelligence, enabling a deeper understanding of the physical world. Its parallel processing capabilities, supported by thousands of computing cores, are essential to running deep learning algorithms. This form of AI, in which software writes itself by learning from large amounts of data, can serve as the brain of computers, robots and self-driving cars that can perceive and understand the world. Since artificial intelligence tasks often require a large number of computationally intensive operations such as matrix multiplication and convolution, these operations can be parallelized to speed up calculations. In contrast, CPUs have weak parallelism and their relatively small number of cores cannot handle this type of task efficiently. Therefore, in artificial intelligence tasks, using GPUs for calculations can significantly speed up calculations and improve calculation efficiency. Some of the most recent applications of GPU-powered deep learning include recommendation systems, which are AI algorithms trained to understand the preferences, previous decisions, and characteristics of people and products using data gathered about their interactions, large Language Models/NLP, which can recognize, summarize, translate, predict and generate text and other content based on knowledge gained from massive datasets. Generative AI, which uses algorithms that create new content, including audio, code, images, text, simulations, and videos, based on the data they have been trained on.

    出版日期

    Published: 2024-05-17

    页码

    Pages: 109

    USD 4350.00 (Single User License)
    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • AI GPU- Global Market Share and Ranking, Overall Sales and Demand Forecast 2024-2030

    AI GPU- Global Market Share and Ranking, Overall Sales and Demand Forecast 2024-2030

    Broadly speaking, AI chips refer to chips that run artificial intelligence algorithms. AI algorithms mainly include deep learning algorithms and machine learning algorithms. In a narrow sense, AI chips refer to chips specially designed to accelerate artificial intelligence algorithms. AI chips mainly include GPU, TPU, FPGA, ASIC, etc. GPU is a hardware component similar to CPU, but more professional. It can handle complex mathematical operations running in parallel more efficiently than a regular CPU. The GPU was initially used to simulate human imagination, enabling the virtual worlds of video games and films. Today, it also simulates human intelligence, enabling a deeper understanding of the physical world. Its parallel processing capabilities, supported by thousands of computing cores, are essential to running deep learning algorithms. This form of AI, in which software writes itself by learning from large amounts of data, can serve as the brain of computers, robots and self-driving cars that can perceive and understand the world. Since artificial intelligence tasks often require a large number of computationally intensive operations such as matrix multiplication and convolution, these operations can be parallelized to speed up calculations. In contrast, CPUs have weak parallelism and their relatively small number of cores cannot handle this type of task efficiently. Therefore, in artificial intelligence tasks, using GPUs for calculations can significantly speed up calculations and improve calculation efficiency. Some of the most recent applications of GPU-powered deep learning include recommendation systems, which are AI algorithms trained to understand the preferences, previous decisions, and characteristics of people and products using data gathered about their interactions, large Language Models/NLP, which can recognize, summarize, translate, predict and generate text and other content based on knowledge gained from massive datasets. Generative AI, which uses algorithms that create new content, including audio, code, images, text, simulations, and videos, based on the data they have been trained on.

    出版日期

    Published: 2024-05-17

    页码

    Pages: 97

    USD 3950.00 (Single User License)
    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Research Report 2024

    Global AI GPU Market Research Report 2024

    Broadly speaking, AI chips refer to chips that run artificial intelligence algorithms. AI algorithms mainly include deep learning algorithms and machine learning algorithms. In a narrow sense, AI chips refer to chips specially designed to accelerate artificial intelligence algorithms. AI chips mainly include GPU, TPU, FPGA, ASIC, etc. GPU is a hardware component similar to CPU, but more professional. It can handle complex mathematical operations running in parallel more efficiently than a regular CPU. The GPU was initially used to simulate human imagination, enabling the virtual worlds of video games and films. Today, it also simulates human intelligence, enabling a deeper understanding of the physical world. Its parallel processing capabilities, supported by thousands of computing cores, are essential to running deep learning algorithms. This form of AI, in which software writes itself by learning from large amounts of data, can serve as the brain of computers, robots and self-driving cars that can perceive and understand the world. Since artificial intelligence tasks often require a large number of computationally intensive operations such as matrix multiplication and convolution, these operations can be parallelized to speed up calculations. In contrast, CPUs have weak parallelism and their relatively small number of cores cannot handle this type of task efficiently. Therefore, in artificial intelligence tasks, using GPUs for calculations can significantly speed up calculations and improve calculation efficiency. Some of the most recent applications of GPU-powered deep learning include recommendation systems, which are AI algorithms trained to understand the preferences, previous decisions, and characteristics of people and products using data gathered about their interactions, large Language Models/NLP, which can recognize, summarize, translate, predict and generate text and other content based on knowledge gained from massive datasets. Generative AI, which uses algorithms that create new content, including audio, code, images, text, simulations, and videos, based on the data they have been trained on.

    出版日期

    Published: 2024-05-17

    页码

    Pages: 86

    USD 2900.00 (Single User License)
    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Insights, Forecast to 2030

    Global AI GPU Market Insights, Forecast to 2030

    Broadly speaking, AI chips refer to chips that run artificial intelligence algorithms. AI algorithms mainly include deep learning algorithms and machine learning algorithms. In a narrow sense, AI chips refer to chips specially designed to accelerate artificial intelligence algorithms. AI chips mainly include GPU, TPU, FPGA, ASIC, etc. GPU is a hardware component similar to CPU, but more professional. It can handle complex mathematical operations running in parallel more efficiently than a regular CPU. The GPU was initially used to simulate human imagination, enabling the virtual worlds of video games and films. Today, it also simulates human intelligence, enabling a deeper understanding of the physical world. Its parallel processing capabilities, supported by thousands of computing cores, are essential to running deep learning algorithms. This form of AI, in which software writes itself by learning from large amounts of data, can serve as the brain of computers, robots and self-driving cars that can perceive and understand the world. Since artificial intelligence tasks often require a large number of computationally intensive operations such as matrix multiplication and convolution, these operations can be parallelized to speed up calculations. In contrast, CPUs have weak parallelism and their relatively small number of cores cannot handle this type of task efficiently. Therefore, in artificial intelligence tasks, using GPUs for calculations can significantly speed up calculations and improve calculation efficiency. Some of the most recent applications of GPU-powered deep learning include recommendation systems, which are AI algorithms trained to understand the preferences, previous decisions, and characteristics of people and products using data gathered about their interactions, large Language Models/NLP, which can recognize, summarize, translate, predict and generate text and other content based on knowledge gained from massive datasets. Generative AI, which uses algorithms that create new content, including audio, code, images, text, simulations, and videos, based on the data they have been trained on.

    出版日期

    Published: 2024-04-15

    页码

    Pages: 134

    USD 4900.00 (Single User License)
    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • AI GPU - Global Market Insights and Sales Trends 2024

    AI GPU - Global Market Insights and Sales Trends 2024

    This article mainly counts the GPU chips used in the AI field.

    出版日期

    Published: 2023-12-17

    页码

    Pages: 71

    USD 3350.00 (Single User License)
    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Insights, Forecast to 2029

    Global AI GPU Market Insights, Forecast to 2029

    This article mainly counts the GPU chips used in the AI field.

    出版日期

    Published: 2023-06-15

    页码

    Pages: 77

    USD 4900.00 (Single User License)
    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Research Report 2023

    Global AI GPU Market Research Report 2023

    This article mainly counts the GPU chips used in the AI field.

    出版日期

    Published: 2023-06-15

    页码

    Pages: 69

    USD 2900.00 (Single User License)
    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global and United States AI GPU Market Report & Forecast 2023-2029

    Global and United States AI GPU Market Report & Forecast 2023-2029

    This article mainly counts the GPU chips used in the AI field.

    出版日期

    Published: 2023-06-15

    页码

    Pages: 71

    USD 4350.00 (Single User License)
    加入购物车

    Add to Cart

    立即购买

    Buy Now

  • Global AI GPU Market Report, History and Forecast 2018-2029, Breakdown Data by Manufacturers, Key Regions, Types and Application

    Global AI GPU Market Report, History and Forecast 2018-2029, Breakdown Data by Manufacturers, Key Regions, Types and Application

    This article mainly counts the GPU chips used in the AI field.

    出版日期

    Published: 2023-06-15

    页码

    Pages: 78

    USD 3350.00 (Single User License)
    加入购物车

    Add to Cart

    立即购买

    Buy Now