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Last Updated: Apr 25, 2025 | Study Period: 2022-2030
An artificial intelligence technique called a neural network instructs computers to analyse data in a manner modelled after the human brain.
Deep learning is a sort of machine learning that employs interconnected neurons or nodes in a layered framework to mimic the human brain.
It develops an adaptive system that computers utilise to continuously learn from their errors and improve.
Artificial neural networks make an effort to more accurately tackle complex issues, such as summarising documents or identifying faces.
Computers can make intelligent decisions with minimal human intervention thanks to neural networks. This is why they can learn and model complex, nonlinear relationships between input and output data. They can perform the following duties, for example.
A neural net processor is a CPU that models how the human brain functions and places it on a single chip.
One multi-cored chip may now do all the processing necessary for complicated applications like artificial intelligence (AI), machine learning, or computer vision instead of a vast network of computers.
Convoluted neural networks can currently span several computers and be implemented in a variety of ways using software.
These current implementations may make use of numerous CPUs, GPUs, or even FPGA cards that were specifically designed for faster parallel processing.
The global neural network processor market accounted for $XX Billion in 2021 and is anticipated to reach $XX Billion by 2030, registering a CAGR of XX% from 2022 to 2030.
Intel officially revealed its Nervana Neural Network Processor (NNP) family of chips intended for machine learning use cases at the WSJ's D.Live event.
With the pre-launch moniker Lake Crest, Intel had made a hint about these chips. The Nervana Systems deep learning hardware business, which Intel purchased is substantially incorporated into the technology that powers the chips.
The NNP chips from Intel eliminate the conventional cache hierarchy and utilise software to control on-chip memory to speed up deep learning model training.
In recent months, Intel has been struggling to keep up with Nvidia and avoid being utterly outmatched.
The established chip manufacturer undoubtedly expects to capitalise on its network of business contacts to stay viable by focused on the expanding AI market.
1. How many neural network processor are manufactured per annum globally? Who are the sub-component suppliers in different regions?
2. Cost breakup of a Global neural network processor and key vendor selection criteria
3. Where are the neural network processor manufactured? What is the average margin per unit?
4. Market share of Global neural network processor market manufacturers and their upcoming products
5. Cost advantage for OEMs who manufacture Global neural network processor in-house
6. 5 key predictions for next 5 years in Global neural network processor market
7. Average B-2-B neural network processor market price in all segments
8. Latest trends in neural network processor market, by every market segment
9. The market size (both volume and value) of the neural network processor market in 2022-2030 and every year in between?
10. Production breakup of neural network processor market, by suppliers and their OEM relationship
Sl no | Topic |
1 | Market Segmentation |
2 | Scope of the report |
3 | Abbreviations |
4 | Research Methodology |
5 | Executive Summary |
6 | Introduction |
7 | Insights from Industry stakeholders |
8 | Cost breakdown of Product by sub-components and average profit margin |
9 | Disruptive innovation in the Industry |
10 | Technology trends in the Industry |
11 | Consumer trends in the industry |
12 | Recent Production Milestones |
13 | Component Manufacturing in US, EU and China |
14 | COVID-19 impact on overall market |
15 | COVID-19 impact on Production of components |
16 | COVID-19 impact on Point of sale |
17 | Market Segmentation, Dynamics and Forecast by Geography, 2022-2030 |
18 | Market Segmentation, Dynamics and Forecast by Product Type, 2022-2030 |
19 | Market Segmentation, Dynamics and Forecast by Application, 2022-2030 |
20 | Market Segmentation, Dynamics and Forecast by End use, 2022-2030 |
21 | Product installation rate by OEM, 2022 |
22 | Incline/Decline in Average B-2-B selling price in past 5 years |
23 | Competition from substitute products |
24 | Gross margin and average profitability of suppliers |
25 | New product development in past 12 months |
26 | M&A in past 12 months |
27 | Growth strategy of leading players |
28 | Market share of vendors, 2022 |
29 | Company Profiles |
30 | Unmet needs and opportunity for new suppliers |
31 | Conclusion |
32 | Appendix |