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市场调查报告书
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2024 年至 2031 年自然语言处理 (NLP) 市场类型、部署模式、应用程式、最终用户和地区

Natural Language Processing Market By Type, By Deployment Mode, By Application, By End Users (Healthcare, Banking, Financial Services, And Insurance, Media And Entertainment, E-commerce), And Region For 2024-2031

出版日期: | 出版商: Verified Market Research | 英文 202 Pages | 商品交期: 2-3个工作天内

价格
简介目录

自然语言处理 (NLP) 市场估值,2024 年至 2031 年

自然语言处理(NLP) 市场规模预计在2023 年将达到317.6 亿美元,预计到2031 年将达到929.9 亿美元,2024 年至2031 年的复合年增长率为23.97%。达到美国10万美元。医疗保健、银行、零售和客户服务等各行业对 NLP 技术的广泛应用为市场成长做出了重大贡献。 NLP 评估大量非结构化资料并提取竞争见解的能力对于寻求改善决策流程和获得竞争优势的企业来说至关重要。语音启动虚拟助理和聊天机器人的兴起正在推动需求并加速消费市场中 NLP 应用的成长。

自然语言处理 (NLP) 市场定义/概述

自然语言处理(NLP)是一种使用人工智慧来解释人类语言的电脑应用程式。这项电脑技术允许电脑使用一系列技术和理论来研究和解释人类的交流。自然语言处理(NLP)的目标是减少理解Ruby、C、C++和Java等电脑语言所需的时间。在当今的商业世界中,NLP 用于大数据分析,因为大量数据来自语音、电子邮件、网路部落格、文件、社交网站、论坛等来源。

光学字元辨识 (OCR)、自动编码、文字分析、互动式语音应答 (IVR)、模式和影像辨识、分类和归类以及语音分析都是自然语言处理 (NLP) 技术的例子。自然语言处理 (NLP) 可以基于云端或本地部署,并被汽车、零售、消费品、高科技、电子、政府、银行、金融服务和保险 (BFSI)、医疗保健等各行各业广泛使用。 、研究、教育、媒体、娱乐等各行业,用于资讯撷取、问答、机器翻译和报告生成等应用。

哪些因素推动了自然语言处理(NLP)市场的成长?

预计自然语言处理 (NLP) 市场将因高级文本分析需求的不断增长而得到推动。透过将自然语言处理 (NLP) 与文本分析相结合,正在开发高级文本分析解决方案。自然语言处理 (NLP) 有助于将人类语言转换为机器码。这有助于数据处理并将想法翻译回人类语言以便于理解。为了获得更好的市场洞察力,各个组织对文字分析的需求不断增长,这推动了对文字分析解决方案的需求。为了提高获利能力,各行各业的公司都努力掌握市场趋势,并提供顺应新趋势的产品和服务。

社群媒体管道在自然语言处理 (NLP) 市场的成长中发挥着至关重要的作用。许多行业竞争日益激烈,要求即时洞察市场,瞭解客户需求和其他因素。企业必须评估大量非结构化资料才能获得即时的市场洞察。自然语言处理 (NLP) 系统需要将非结构化的人类语言输入转换为机器代码,同时深入瞭解人类语言的情绪和情绪。

人工智慧和机器学习技术的进步进一步推动了自然语言处理 (NLP) 市场的成长。这些进步不断提高自然语言处理 (NLP) 系统的准确性和性能,增强其理解和解释人类语言的能力。各行业数位助理和聊天机器人的兴起正在推动 NLP 解决方案的采用,以实现更无缝的人机互动。随着这些技术越来越多地融入日常工作中,对自然语言处理 (NLP) 解决方案的需求预计只会增加。

自然语言处理(NLP)市场面临哪些课题?

一个大问题是,人类语言复杂且充满了微妙之处、文化差异和机器难以理解的细微差别。机器很难准确地掌握语言的含义,因为相同的单字和短语往往具有不同的含义,发音相同的单字也可能具有不同的含义。另一个问题是自然语言处理 (NLP) 系统需要许多不同类型的资料才能有效地训练。此外还存在隐私和道德课题。使用个人资料来训练 NLP 系统会引发道德问题和隐私问题。

为了维持相关性和实用性,NLP 系统需要定期更新和变更。确保 NLP 系统不带偏见并产生公平的结果非常重要。否则,可能会加剧现有的社会问题。应对这些课题需要不同学科的人们共同努力,继续研究和学习如何以合乎道德和负责任的方式建构人工智慧。

目录

第 1 章 全球自然语言处理 (NLP) 市场简介

    市场概况
  • 研究范围
  • 先决条件

第 2 章执行摘要

第 3 章:经过验证的市场研究方法

  • 资料探勘
  • 验证
  • 主要来源
  • 资料来源列表

第 4 章 全球自然语言处理 (NLP) 市场展望

  • 概述
  • 市场动态
    • 驱动程式
    • 阻碍因素
    • 机会
  • 波特五力模型
  • 价值链分析

第 5 章。
  • 概述
  • 统计自然语言处理 (NLP)
  • 基于规则的 NLP
  • 混合 NLP

6. 全球自然语言处理 (NLP) 市场以部署模式划分

  • 概述
  • 私有云
  • 公有云 混合云

7. 全球自然语言处理 (NLP) 市场(按应用)

  • 概述
  • 资讯撷取
  • 机器翻译
  • 语言翻译
  • 问答
  • 语音识别
  • 文字摘要
  • 报告生成
  • 其他

8. 全球自然语言处理 (NLP) 市场(按最终用户划分)

  • 概述
  • 医疗保健
  • 银行、金融服务和保险 (BFSI)
  • 消费品
  • 研究与教育
  • 电子商务 电子产品
  • 製造业
  • 媒体与娱乐

第 9 章。
  • 概述
  • 北美洲
    • 美国
    • 加拿大
    • 墨西哥
  • 欧洲
    • 德国
    • 英国
    • 法国
    • 其他欧洲国家
    亚太地区
    • 中国
    • 日本
    • 印度
    • 其他亚太地区
  • 世界其他地区
    • 拉丁美洲
    • 中东和非洲

第 10 章。
  • 概述
  • 各公司的市场排名
  • 主要发展策略

第 11 章 公司简介

  • 3M
  • Apple Inc.
  • Amazon Web Services Inc.
  • Baidu Inc.
  • Crayon Data
  • Google LLC
  • Health Fidelity
  • IBM Corporation
  • Inbenta
  • IQVIA

第 12 章 重大进展

  • 产品发布/开发
  • 合併和收购
  • 业务扩展
  • 伙伴关係和合作关係

第 13 章附录

  • 相关研究
简介目录
Product Code: 24697

Natural Language Processing Market Valuation - 2024-2031

The Natural Language Processing Market size was valued at USD 31.76 Billion in 2023 and is projected to reach USD 92.99 Billion by 2031 , with a growth rate (CAGR) of 23.97 % from 2024 to 2031 . The growing use of NLP technology in a variety of industries, including healthcare, banking, retail, and customer service, has contributed significantly to market growth. NLP's ability to evaluate and extract insights from massive volumes of unstructured data has become critical for businesses looking to improve decision-making processes and gain a competitive advantage. The rise of voice-activated virtual assistants and chatbots has increased demand for NLP applications in the consumer market, accelerating growth.

Natural Language Processing Market: Definition/Overview

Natural language processing (NLP) is a computer application that uses artificial intelligence to interpret human language. This computerized technique allows the computer to examine and interpret human communication using a collection of technologies and theories. The purpose of natural language processing is to reduce the time required to grasp computer languages like Ruby, C, C++, and Java. NLP is used in big data analysis because huge amounts of data are generated in today's business scenarios from sources such as audio, emails, web blogs, documents, social networking sites, and forums.

Optical character recognition (OCR), auto coding, text analytics, interactive voice response (IVR), pattern and image recognition, classification and categorization, and speech analytics are all examples of natural language processing technology. Natural language processing (NLP) can be cloud-based or on-premise, and it is used for applications such as information extraction, question answering, machine translation, and report generation in a variety of industries, including automotive, retail, and consumer goods, high-tech and electronics, government, banking, financial services, and insurance (BFSI), health care and life sciences, research and education, and media and entertainment.

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What Factors are Fueling the Growth of Natural Language Processing Market?

The market for natural language processing is expected to be boosted by the rising demand for advanced text analytics. Integration of natural language processing into text analytics has resulted in the development of advanced text analytics solutions. Natural language processing facilitates the conversion of human language to machine language. This aids in data processing and translates ideas back into human language for easier comprehension. The increasing demand for text analytics in various organizations to acquire better market insights has pushed the demand for text analytic solutions. Companies across industries are continually tracking the market pulse and tailoring their product and service offerings to capitalize on emerging trends for increased profitability.

Social media channels play an important part in the growth of the Natural Language Processing Market. Increased competition in numerous verticals has created a desire for real-time market insights into client demands and other factors. Companies must evaluate vast volumes of unstructured data to acquire real-time market insights. Natural language processing systems are required to translate unstructured human language input into machine language while also gaining insights into human language feelings and emotions.

The growth of the Natural Language Processing Market is further fueled by advancements in artificial intelligence and machine learning technologies. These advancements enable NLP systems to continually improve their accuracy and performance, leading to enhanced capabilities in understanding and interpreting human language. The proliferation of digital assistants and chatbots across various industries is driving the adoption of NLP solutions for more seamless human-computer interactions. As these technologies become increasingly integrated into everyday business operations, the demand for natural language processing solutions is expected to continue its upward trajectory.

What are the Challenges Faced by Natural Language Processing Market?

One big issue is that human languages are complex, with many subtle differences, cultural variations, and nuances that are hard for machines to understand. It's tricky for machines to accurately grasp the meaning of language because there are often different meanings for the same word or phrase, and words that sound alike might mean different things. Another problem is that NLP systems need lots of different kinds of data to train them effectively, and the quality and quantity of that data are really important for how well the system works. There's also the challenge of privacy and ethics - using personal data to train NLP systems raises ethical concerns and privacy issues.

For NLP systems to stay relevant and useful, they need to be updated and changed regularly because technology is always advancing. It's important to make sure that NLP systems don't have biases and that they're fair in the results they give because if they're not, they can make existing social problems worse. To deal with these challenges, people from different fields need to work together, and we need to keep studying and learning about how to make AI that's ethical and responsible.

Category-Wise Acumens

How is the Hybrid Cloud Category Predicted to Develop the Quickest in the Natural Language Processing Market Throughout the Forecast Period?

The hybrid cloud category is expected to experience the fastest growth in the natural language processing (NLP) market over the projection period due to its unique ability to effortlessly incorporate the benefits of both public and private cloud settings. As enterprises realize the value of harnessing NLP capabilities for better communication and data analysis, the hybrid cloud model emerges as a strategic solution. This method enables enterprises to benefit from the scalability and cost-effectiveness of public clouds while retaining the protection and control provided by private clouds. The hybrid cloud's versatility meets the varying needs of organizations, allowing for the effective deployment of NLP applications across several domains. This versatility and flexibility are projected to drive significant adoption, putting the hybrid cloud category at the forefront of NLP industry growth for the foreseeable future.

The rapid development of the hybrid cloud category in the natural language processing (NLP) market is also attributed to its capability to address the evolving demands of enterprises. With the increasing complexity of NLP applications and the need for seamless integration with existing IT infrastructure, the hybrid cloud offers a solution that balances performance, security, and scalability. The hybrid cloud model facilitates compliance with regulatory requirements and data governance standards, further enhancing its appeal to organizations operating in regulated industries. This comprehensive approach ensures that enterprises can leverage NLP technologies effectively while mitigating potential risks associated with data privacy and security. Consequently, the hybrid cloud category is anticipated to maintain its momentum and emerge as a pivotal driver of growth in the NLP market, catering to the diverse needs of businesses across various sectors.

How did Machine Translation Dominate the Natural Language Processing Market?

The machine translation category dominates the natural language processing (NLP) market due to its critical function in breaking down language barriers and facilitating seamless communication across varied linguistic landscapes. As organizations and individuals become more involved in worldwide contacts, the demand for rapid and precise language translation solutions has grown. Machine translation systems, utilizing advances in deep learning and neural networks, have considerably improved their ability to produce high-quality translations, thereby closing the language divide. Furthermore, the ongoing advancement of machine translation algorithms, together with the incorporation of sophisticated approaches such as neural machine translation (NMT), has accelerated the category's growth.

Significant investments in research and development have been made by both public and private sectors to enhance machine translation capabilities. Breakthroughs in areas such as natural language processing, computational linguistics, and artificial intelligence have contributed to the refinement of machine translation algorithms. The extensive datasets and corpora have been compiled and utilized to train these systems, enabling them to better understand context, idiomatic expressions, and nuances in language usage.

Enterprises across a variety of industries, including e-commerce, healthcare, and finance, understand the revolutionary power of trustworthy machine translation in broadening their worldwide reach, developing international collaborations, and assuring successful cross-cultural communication. As a result, the machine translation segment has the greatest proportion of the NLP market, demonstrating its importance in today's interconnected and linguistically diverse globe.

Country/Region Wise Acumens

What are the Driving Factors Contributing to North America's Dominance in the Natural Language Processing Market?

North America's dominance in the Natural Language Processing Market is influenced by several driving factors. The region boasts a robust technological infrastructure and a high level of innovation, with leading companies and research institutions continuously pushing the boundaries of NLP technology. This environment fosters the development of cutting-edge NLP solutions and attracts significant investments from both the public and private sectors.

The region is home to a large concentration of tech-savvy enterprises across various industries, including technology, finance, healthcare, and e-commerce. These organizations recognize the transformative potential of NLP in improving customer experiences, streamlining operations, and gaining competitive advantages in the global market. As a result, there is a strong demand for NLP products and services, further driving the growth of the market in the region.

North America benefits from a well-established ecosystem of NLP talent, including researchers, engineers, and data scientists, who contribute to the continuous advancement of NLP technology. Academic institutions and research centers in the region play a pivotal role in nurturing this talent pool and conducting groundbreaking research in areas such as natural language understanding, sentiment analysis, and machine translation. The favorable government policies and regulatory frameworks in North America support the development and adoption of NLP technologies. Initiatives aimed at promoting innovation, fostering collaboration between industry and academia, and incentivizing investment in emerging technologies contribute to the overall growth and competitiveness of the NLP market in the region.

Will Asia Pacific Cause an Increase in Trade of Natural Language Processing Market?

An increase in the trade of the Natural Language Processing (NLP) market is anticipated to be driven by the Asia Pacific region. The rapid expansion of digital infrastructure and internet penetration across Asia Pacific countries has facilitated the collection of vast amounts of linguistic data, which is essential for training NLP algorithms.

Advancements in artificial intelligence and machine learning technologies have bolstered the development of more sophisticated NLP solutions, making them increasingly attractive to businesses in the region.

The growing emphasis on multilingual communication and the need to break down language barriers in diverse markets have spurred demand for NLP solutions that can accurately translate and analyze text in multiple languages. The rising adoption of NLP across various industries such as e-commerce, finance, healthcare, and customer service are fueling the expansion of the market in Asia Pacific. This is driven by the recognition of NLP's ability to enhance operational efficiency, improve customer experiences, and gain insights from unstructured data.

Overall, the Asia Pacific region's pivotal role in driving the trade of NLP solutions is underscored by its technological advancements, increasing digitalization, and growing demand for cross-lingual communication capabilities across diverse industries.

Competitive Landscape

The Natural Language Processing Market is highly competitive and consists of several major players who have been trying to gain larger shares. These major players with prominent shares in the market have been focusing on expanding their customer base across foreign countries. They are providing new innovative solutions, along with deals and mergers, to increase their market shares and profitability.

Some of the prominent players operating in the Natural Language Processing Market include:

3M, Apple Inc., Amazon Web Services Inc., Baidu Inc., Crayon Data, Google LLC, Health Fidelity, IBM Corporation, Inbenta, IQVIA, Meta Platforms Inc., Microsoft Corporation, Oracle Inc., SAS Institute Inc.

Latest Developments

In July 2023, Google AI released PaLM 2, a new LLM with 540 billion parameters. The primary goal is to improve factual language understanding and reasoning abilities.

In October 2023, OpenAI announced its decision of limiting access to its powerful LLM, GPT-4, for only selective research partners and developers.

In February 2024, Apple unveiled its advancements in on-device NLP with the announcement of latest features in its upcoming iOS version that leverage on-device processing for improved privacy and responsiveness in NLP task.

In Oct 2022, IBM expanded its embeddable AI software portfolio with the launch of several new libraries aimed to help IBM Ecosystem partners, customers, and developers build and sell their AI-powered products more easily, rapidly, and cost-effectively. The AI libraries were created by IBM Research and are intended to provide Independent Software Vendors (ISVs) from various industries with an easily scalable way to incorporate natural language processing, text-to-speech, and speech-to-text capabilities into applications running in any environment.

In Jun 2022, Apple announced plans to provide an open-source reference PyTorch version of the Transformer architecture accessible, enabling developers globally to install Transformer models on Apple devices easily.

TABLE OF CONTENTS

1 INTRODUCTION OF GLOBAL NATURAL LANGUAGE PROCESSING MARKET

  • 1.1 Overview of the Market
  • 1.2 Scope of Report
  • 1.3 Assumptions

2 EXECUTIVE SUMMARY

3 RESEARCH METHODOLOGY OF VERIFIED MARKET RESEARCH

  • 3.1 Data Mining
  • 3.2 Validation
  • 3.3 Primary Interviews
  • 3.4 List of Data Sources

4 GLOBAL NATURAL LANGUAGE PROCESSING MARKET OUTLOOK

  • 4.1 Overview
  • 4.2 Market Dynamics
    • 4.2.1 Drivers
    • 4.2.2 Restraints
    • 4.2.3 Opportunities
  • 4.3 Porters Five Force Model
  • 4.4 Value Chain Analysis

5 GLOBAL NATURAL LANGUAGE PROCESSING MARKET, BY TYPE

  • 5.1 Overview
  • 5.2 Statistical NLP
  • 5.3 Rule Based NLP
  • 5.4 Hybrid NLP

6 GLOBAL NATURAL LANGUAGE PROCESSING MARKET, BY DEPLOYMENT MODE

  • 6.1 Overview
  • 6.2 Private Cloud
  • 6.3 Public Cloud
  • 6.4 Hybrid Cloud

7 GLOBAL NATURAL LANGUAGE PROCESSING MARKET, BY APPLICATION

  • 7.1 Overview
  • 7.2 Information Extraction
  • 7.3 Machine translation
  • 7.4 Language Translation
  • 7.5 Question Answering
  • 7.6 Speech Recognition
  • 7.7 Text Summarization
  • 7.8 Report generation
  • 7.9 Others

8 GLOBAL NATURAL LANGUAGE PROCESSING MARKET, BY END USERS

  • 8.1 Overview
  • 8.2 Healthcare
  • 8.3 Banking, Financial Services, & Insurance (BFSI)
  • 8.4 Consumer Goods
  • 8.5 Research & Education
  • 8.6 E-Commerce
  • 8.7 Electronics
  • 8.8 Manufacturing
  • 8.9 Media & Entertainment

9 GLOBAL NATURAL LANGUAGE PROCESSING MARKET, BY GEOGRAPHY

  • 9.1 Overview
  • 9.2 North America
    • 9.2.1 U.S.
    • 9.2.2 Canada
    • 9.2.3 Mexico
  • 9.3 Europe
    • 9.3.1 Germany
    • 9.3.2 U.K.
    • 9.3.3 France
    • 9.3.4 Rest of Europe
  • 9.4 Asia Pacific
    • 9.4.1 China
    • 9.4.2 Japan
    • 9.4.3 India
    • 9.4.4 Rest of Asia Pacific
  • 9.5 Rest of the World
    • 9.5.1 Latin America
    • 9.5.2 Middle East and Africa

10 GLOBAL NATURAL LANGUAGE PROCESSING MARKET COMPETITIVE LANDSCAPE

  • 10.1 Overview
  • 10.2 Company Market Ranking
  • 10.3 Key Development Strategies

11 COMPANY PROFILES

  • 11.1 3M
    • 11.1.1 Overview
    • 11.1.2 Financial Performance
    • 11.1.3 Product Outlook
    • 11.1.4 Key Developments
  • 11.2 Apple Inc.
    • 11.2.1 Overview
    • 11.2.2 Financial Performance
    • 11.2.3 Product Outlook
    • 11.2.4 Key Developments
  • 11.3 Amazon Web Services Inc.
    • 11.3.1 Overview
    • 11.3.2 Financial Performance
    • 11.3.3 Product Outlook
    • 11.3.4 Key Developments
  • 11.4 Baidu Inc.
    • 11.4.1 Overview
    • 11.4.2 Financial Performance
    • 11.4.3 Product Outlook
    • 11.4.4 Key Developments
  • 11.5 Crayon Data
    • 11.5.1 Overview
    • 11.5.2 Financial Performance
    • 11.5.3 Product Outlook
    • 11.5.4 Key Developments
  • 11.6 Google LLC
    • 11.6.1 Overview
    • 11.6.2 Financial Performance
    • 11.6.3 Product Outlook
    • 11.6.4 Key Developments
  • 11.7 Health Fidelity
    • 11.7.1 Overview
    • 11.7.2 Financial Performance
    • 11.7.3 Product Outlook
    • 11.7.4 Key Developments
  • 11.8 IBM Corporation
    • 11.8.1 Overview
    • 11.8.2 Financial Performance
    • 11.8.3 Product Outlook
    • 11.8.4 Key Developments
  • 11.9 Inbenta
    • 11.9.1 Overview
    • 11.9.2 Financial Performance
    • 11.9.3 Product Outlook
    • 11.9.4 Key Developments
  • 11.10 IQVIA
    • 11.10.1 Overview
    • 11.10.2 Financial Performance
    • 11.10.3 Product Outlook
    • 11.10.4 Key Developments

12 KEY DEVELOPMENTS

  • 12.1 Product Launches/Developments
  • 12.2 Mergers and Acquisitions
  • 12.3 Business Expansions
  • 12.4 Partnerships and Collaborations

13 Appendix

  • 13.1 Related Research