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Technology Stocks : NVIDIA Corporation (NVDA)
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From: Frank Sully2/15/2022 5:22:42 PM
   of 2646
 
The global data center accelerator market size is projected to grow from USD 13.7 billion in 2021 to USD 65.3 billion by 2026; it is expected to grow at a CAGR of 36.7% from 2021 to 2026.

Factors such as growing demand for deep learning and surge in demand for cloud-based services are driving the growth of the market during the forecast period.



To know about the assumptions considered for the study, Request for Free Sample Report

COVID-19 Impact on the Global Data center accelerator market

Post COVID-19, the manufacturing sector is expected to scale up smart manufacturing processes using AI, IoT, and blockchain technologies. By adopting these technologies, companies can cut costs, increase process efficiency, and reduce human contact significantly. Currently, AI is being used for predictive maintenance and will further be implemented to forecast demand and returns in the supply chain.

COVID-19 has impacted the educational industries rather positively, with ed-tech companies adopting AI technology to impart education during the lockdown. Ed-tech firms have deployed AI tools to enhance online learning and virtual classroom experience for students. For instance, Coursera has launched an AI-powered tool called the CourseMatch that helps schools and universities identify courses on the platform that matches their curriculum. Furthermore, a personalized online tutorial company Squirrel AI uses AI-based adaptive learning to curate lessons for a student.

Several industries are worse hit by this pandemic, but some industries are benefiting from this pandemic. However, the adoption of AI is expected to grow. Therefore, we can say the COVID-19 will drive the data center accelerator market for certain industries.

Data center accelerator Market Dynamics

Driver: Growth of cloud-based services

Deep learning services being made available over the cloud are reducing the initial costs associated with executing business operations and curtailing server maintenance tasks. A growing number of tech giants and startups have begun offering machine learning as a cloud service due to the burgeoning demand for AI-based computation. Most companies and startups do not develop their own specialized hardware or software to apply deep learning to their specific business needs. Cloud-based solutions are ideal for small and midsized businesses that find on-premises solutions costlier. Thus, the increasing adoption of cloud-based technology is necessitating the need for deep learning.

Big data analytics has also played a pivotal role in the growth of cloud services. Big data analytics is the process of scrutinizing large datasets to uncover hidden patterns, unknown correlations, market trends, customer preferences, and other actionable insights. Big data has become important to many public and private organizations wherein massive amounts of domain-specific information is generated, which can contain useful information on national intelligence, cybersecurity, fraud detection, marketing, and medical informatics. The deep learning technique is used to extract high-level, complex abstractions from data through a hierarchical learning process. It is an important technique used for analyzing massive amounts of unsupervised data, making it a valuable tool for big data analytics wherein the raw data is largely unstructured. Deep learning is also used for extracting complex patterns from massive volumes of data, semantic indexing, data tagging, fast information retrieval, and simplifying discriminative tasks.

The evolution of technologies, namely machine learning and artificial intelligence (AI), has generated the demand for cognitive computing technology across various verticals such as automotive, industrial, and consumer. Rapid developments in the video analytics domain and increasing adoption of advanced technologies in the security and surveillance industry have resulted in the development of high-performance AI-capable processors such as GPU and TPU, which have higher memory bandwidth and computational capability as compared to traditional processors, i.e., central processing units (CPUs). Creative professionals, gamers, designers, and video enthusiasts require deep learning accelerators with parallel processing capabilities that can facilitate the provisioning of on-demand machine learning for augmented reality, virtual reality, and several other application areas.

Restraint: Limited AI hardware experts

AI is a complex system, and for developing, managing, and implementing AI systems, companies require personnel with certain skill sets. For instance, people dealing with AI systems should be aware of technologies such as cognitive computing, ML and machine intelligence, deep learning, and image recognition. In addition, integrating AI solutions with existing systems is a difficult task that requires well-funded in-house R&D and patent filling. Even minor errors can translate into system failure or malfunctioning of a solution, which can drastically affect the outcome and desired result.

Professional services of data scientists and developers are needed to customize existing ML-enabled AI processors. AI is a technology that is still growing and emerging, and hence workforce possessing in-depth knowledge of this technology is limited. The impact of this restraining factor will likely remain high during the initial years of the forecast period.

Opportunity: Demand in the market for FPGA-based accelerators

An FPGA is an integrated circuit that can be configured by a customer or designer after it is manufactured (field programmable). FPGAs are programmed using hardware description languages such as VHSIC hardware description language (VHDL) or Verilog. FPGAs offer advantages such as rapid prototyping, short time to market, ability to be reprogramed in the field for debugging, and long product life cycle. They contain individual programmable logic blocks known as configurable logic blocks (CLBs). These logic blocks are interconnected in such a manner that a user can configure the computing system multiple times. FPGAs contain large resources of logic gates and RAM for complex digital computation.

In 2017, Intel (US) acquired field-programmable gate array (FPGA) chip designer Altera (US). With this, Intel is expected to further leverage FPGA accelerators into its primary data center server business. In May 2020, Aldec, Inc., a pioneer in mixed HDL language simulation and hardware-assisted verification for FPGA and ASIC designs, has launched a new FPGA accelerator board for high-performance computing (HPC), high-frequency trading (HFT) applications, and high-speed FPGA prototyping. The HES-XCKU11P-DDR4 is a 1U form factor board featuring a Xilinx Kintex® UltraScale+™ FPGA, a PCIe inference, and two QSFP-DD connectors (providing a total of up to 400 Gbit/s bandwidth), and which hits the ideal sweet spot between speed, logic cells, low power draw, and price.

Challenge: Unreliability of AI algorithms

AI is implemented through machine learning using a computer to run specific software that can be trained. Machine learning can help systems process data with the help of algorithms and identify certain features from that dataset. However, a concern associated with such systems is that it is unclear as to what is going on inside algorithms; the internal workings remain inaccessible, and unlike humans, the answers provided by these systems are uncontextualized. Researchers at the Facebook AI Research (FAIR) lab found that the chatbots they created had deviated from their predefined script and were communicating in a language created by themselves, which humans could not understand. While one of the important goals of current research is to improve AI-to-human communication, the possibility that an AI system can create its own unique language that humans cannot understand could be a setback. Moreover, several scientists and tech influencers, such as Stephen Hawking, Elon Musk, Bill Gates, and Steve Wozniak, have already warned that future AI technology could lead to unintended consequences.

APAC held the largest market for the data center accelerator market in 2026 owing to growing demand for data center accelerator in China

As multinational and domestic enterprises increasingly transition to cloud services providers (CSPs) and colocation solutions, the data center market in China continues to evolve. The demand for data centers in the country has now exceeded the available supply as organizations seek enhanced connectivity and scalable solutions for their growing businesses. Investments by the Chinese government for stimulating technological developments have led to an increase in the adoption of cloud-based services, such as Big Data Analytics and Internet of Things (IoT). Various government reforms, such as the establishment of free trade in Shanghai, are attracting international investors. The growing demand for high-density, redundant facilities is triggering a shift in the design and development of the country’s data centers.

For instance, in June 2017, AMD (US) collaborated with Baidu (China) to create a comprehensive and open ecosystem to address the growing demand for data center workloads and provide enhanced human-computer interaction. Similarly, in August 2019, Intel and Lenovo (China) announced a multi-year collaboration focused on the rapidly-growing opportunity in the convergence of high-performance computing (HPC) and artificial intelligence (AI) to help accelerate solutions for the world’s most challenging problems. Building on the companies’ long-standing partnership in data centers, the multi-year global collaboration will accelerate the convergence of HPC and AI, creating solutions for organizations of all sizes. Also, in December 2019, NVIDIA and Didi Chuxing (DiDi) (China), the world’s leading mobile transportation platform, announced that DiDi would leverage NVIDIA GPUs and AI technology to develop autonomous driving and cloud computing solutions. DiDi will use NVIDIA GPUs in data centers for training machine learning algorithms and NVIDIA DRIVE for inference on its Level 4 autonomous driving vehicles. The above-mentioned key developments of companies are driving the demand for the data center accelerator market in China.



To know about the assumptions considered for the study, download the pdf brochure

The data center accelerator market is dominated by a few globally established players such as:
  • Intel Corporation (US),
  • Google. Inc (US),
  • NVIDIA Corporation (US),
  • Xilinx Inc. (US),
  • IBM Corporation (US),
  • Advanced Micro Devices, Inc (US),
  • Marvell Technology (Hamilton), and
  • Qualcomm Technology (US).
The study categorizes the data center accelerator market based on processor, type, application at the regional and global levels.

By Processor:
  • CPU
  • GPU
  • FPGA
  • ASIC
By Application:
  • Deep learning training
  • Public cloud interface
  • Enterprise interface
By Type:
  • Cloud data center
  • HPC data center
By Region:
  • North AmerIca
  • Europe
  • APAC
  • RoW
Recent Developments
  • In April 2021, Intel announced the launch of a 3rd Gen Intel Xeon Scalable processor that will deliver a balanced architecture with built-in AI, crypto acceleration, and advanced security capabilities.
  • In May 2020, NVIDIA announced two powerful products for its EGX Edge AI platform — the EGX A100 for larger commercial off-the-shelf servers and the tiny EGX Jetson Xavier NX for micro-edge servers, delivering high-performance, secure AI processing. With the NVIDIA EGX Edge AI platform, hospitals, stores, farms, and factories can carry out real-time processing and the protection of massive amounts of data streaming from trillions of edge sensors. The platform makes it possible to securely deploy, manage, and update fleets of servers remotely.
  • In May 2020, NVIDIA announced that the first GPU based on the NVIDIA Ampere architecture, the NVIDIA A100, which is in full production and shipping to customers worldwide. A100 draws on design breakthroughs in the NVIDIA Ampere architecture, offering the company the largest leap in performance to date within its eight generations of GPUs. This, in turn, unify AI training and inference and boost performance by up to 20x over its predecessors. A universal workload accelerator, A100 is also built for data analytics, scientific computing, and cloud graphics.
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