連合型、分散型、FSL(Few-Shot learning):サーバーから機器まで

出版:ABI Research(ABIリサーチ) 出版年月:2022年4月

Federated, Distributed and Few-Shot Learning: From Servers to Devices
連合型、分散型、FSL(Few-Shot learning):サーバーから機器まで
Research Analysis | 2Q 2022 | AN-4952

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種別英文市場調査報告書(PDF)
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ABIリサーチ「連合型、分散型、FSL(Few-Shot learning):サーバーから機器まで – Federated, Distributed and Few-Shot Learning: From Servers to Devices」はエッジAI学習市場を調査・分析しています。

Actionable Benefits

  • Identify the right solution partners for edge AI learning deployment, based on needs and requirements.
  • Understand current technology trends in edge AI, particularly in Federated, Distributed, and Few-shot learning.
  • Identify the key features that the market needs.

Critical Questions Answered

  • Who are the key solution providers for edge AI learning?
  • What are the gaps in edge AI learning deployment?
  • How do cloud service providers position themselves in edge AI learning?

Research Highlights

  • A detailed breakdown of new learning paradigms at the edge AI.
  • Software and service features that are critical to edge AI learning.
  • Market sizing of the edge AI learning ecosystem.

Who Should Read This?

  • Edge AI chipset suppliers.
  • Device and server OEMs.
  • Edge AI software and service providers.
  • System integrators.
  • Cloud service providers.

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[プレスリリース]

More Than 2 Billion Shipments of Devices with Machine Learning will Bring On-Device Learning and Inference Directly to Consumers by 2027

FEDERATED, DISTRIBUTED, AND FEW-SHOT LEARNING CAN MAKE CONSUMERS DIRECT PARTICIPANTS IN ARTIFICIAL INTELLIGENCE PROCESSES

New York, New York – May 25, 2022

Artificial Intelligence (AI) is all around us, but the processes of inference and learning that form the backbone of AI typically take place in big servers, far removed from consumers. New models are changing all that, according to ABI Research, a global technology intelligence firm, as the more recent frameworks of Federated Learning, Distributed Learning, and Few-shot Learning can be deployed directly on consumers’ devices that have lower compute and smaller power budget, bringing AI to end users.

“This is the direction the market has increasingly been moving to, though it will take some time before the full benefits of these approaches become a reality, especially in the case of Few-Shot Learning, where a single individual smartphone would be able to learn from the data that it is itself collecting. This might well prove to be an attractive proposition for many, as it does not involve uploading data onto a cloud server, making for more secure and private data. In addition, devices can be highly personalized and localized as they can possess high situational awareness and better understanding of the local environments,” explains David Lobina, Research Analyst at ABI Research.

ABI Research believes that it will take up to 10 years for such on-device learning and inference to be operative, and these will require adopting new technologies, such as neuromorphic chips. The shift will take place in more powerful consumer devices, such as autonomous vehicles and robots, before making its way into the likes of smartphones, wearables, and smart home devices. Big players such as Intel, NVIDIA, and Qualcomm have been working on these models in recent years, which in addition to neuromorphic chipset players such as BrainChip and GrAI Matter Labs, have provided chips that offer improved performance on a variety of training and inference tasks. The take-up is still small, but it can potentially disrupt the market.

“Indeed, these learning models have the potential to revolutionize a variety of sectors, most probably the fields of autonomous driving and the deployment of robots in public spaces, both of which are currently difficult to pull off, particularly in co-existence with other users,” Lobina concludes. “Federated Learning, Distributed Learning, and Few-shot Learning reduces the reliance on cloud infrastructure, allowing AI implementers to create low latency, localized, and privacy preserving AI that can deliver much better user experience for end users.”

These findings are from ABI Research’s Federated, Distributed and Few-Shot Learning: From Servers to Devices application analysis report. This report is part of the company’s AI and Machine Learning research service, which includes research, data, and ABI Insights. Application Analysis reports present in-depth analysis on key market trends and factors for a specific technology.

About ABI Research

ABI Research is a global technology intelligence firm delivering actionable research and strategic guidance to technology leaders, innovators, and decision makers around the world. Our research focuses on the transformative technologies that are dramatically reshaping industries, economies, and workforces today.


目次

Table of Contents

1. EXECUTIVE SUMMARY
2. WHAT IS MACHINE LEARNING, SO THAT A PERSON MAY GRASP IT?

2.1. From Machine Learning to Deep Learning
2.2. Cloud-to-Edge Training and Inference
2.3. Few-Shot Learning
2.4. Distributed Learning
2.5. Federated Learning
2.6. Bringing Machine Learning to the Edge

3. KEY VENDORS

3.1. NVIDIA
3.2. Intel
3.3. Qualcomm
3.4. GrAI Matter Labs
3.5. Brainchip
3.6. IBM

4. MARKET OUTLOOK
5. CONCLUSIONS AND RECOMMENDATIONS

Companies Mentioned

ACM
AIMultiple
BrainChip
Consilient Technologies
Facebook, Inc.
google
GrAI Matter Labs
IBM Corp
Intel Corporation
Microsoft Corporation
Nvidia
Qualcomm Inc


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