시장보고서
상품코드
1455866

세계의 디지털 트윈 시장 : 용도별, 최종사용자별, 유형별, 제품별, 국가별 - 분석 및 예측(2023-2033년)

Global Digital Twin Market: Focus on Application, End User, Type, Product Offering, and Country - Analysis and Forecast, 2023-2033

발행일: | 리서치사: BIS Research | 페이지 정보: 영문 | 배송안내 : 1-5일 (영업일 기준)

    
    
    




■ 보고서에 따라 최신 정보로 업데이트하여 보내드립니다. 배송일정은 문의해 주시기 바랍니다.

주요 시장 통계
예측 기간 2023-2033년
2023년 평가 103억 달러
2033년 전망 1조 364억 달러
CAGR 58.52%

디지털 트윈 시장은 광범위한 산업 환경 속에서 빠르게 성장하고 있는 분야로, 빠른 성장과 혁신, 다양한 산업 분야에 걸쳐 폭넓게 적용되고 있습니다.

디지털 트윈은 물리적 개체, 프로세스, 시스템, 서비스 등을 가상으로 복제하는 것을 말합니다.

제조, 헬스케어, 자동차, 항공우주, 에너지, 도시개발 등 다양한 분야에서 디지털화 및 IoT 도입에 대한 수요가 증가하면서 이 시장을 주도하고 있습니다. 기업들은 효율성을 개선하고 비용을 절감하며 제품 및 서비스 제공을 강화할 수 있는 방법을 모색하고 있으며, 디지털 트윈은 더 나은 의사결정을 위한 통찰력을 제공함으로써 전략적 우위를 점할 수 있다"며 "IoT 연결, 클라우드 컴퓨팅, AI의 발전은 디지털 트윈 시장의 핵심적인 실현 요소다, 방대한 데이터를 실시간으로 수집하고 분석할 수 있게 해줍니다. 이러한 기술은 보다 정확하고 역동적인 디지털 트윈의 생성을 촉진하고, 행동을 예측하고, 운영을 최적화하며, 잠재적인 장애를 사전에 파악할 수 있도록 돕습니다.

용도별로는 예지보전 분야가 세계 시장을 독점하고 있습니다.

예지보전은 빠르게 시장을 주도하고 있으며, 시장 규모는 2022년 23억 달러에서 2033년 3,659억 달러로 확대될 것으로 예상됩니다. 이러한 놀라운 성장은 산업 전반에 걸쳐 예지보전 기술의 중요성이 높아졌기 때문으로 분석됩니다. 이러한 성장의 주요 원동력은 IoT와 빅데이터 분석의 발전으로 실시간 장비 모니터링이 가능해져 다운타임과 유지보수 비용을 크게 절감할 수 있게 된 것입니다. 제조 및 산업의 세계 확장은 이러한 기술에 대한 수요를 더욱 가속화시키고 있습니다.

유형별로는 자산 부문이 세계 시장을 독점하고 있습니다.

자산 부문은 물리적 자산을 디지털 프레임워크로 미러링하여 실시간 모니터링, 분석 및 시뮬레이션을 가능하게 하는 혁신적인 접근방식으로 시장을 선도하고 있습니다. 이 부문 시장 규모는 2022년 27억 달러에서 2033년 4,338억 달러로 성장할 것으로 예상되며, 산업 자산의 복잡성 증가, 운영 효율성 향상 및 예측 유지보수의 필요성이 주요 원동력이 될 것으로 전망됩니다. 디지털 트윈 내 IoT, AI, ML 기술의 통합은 잠재적 고장을 정확하게 예측하고 자산 성능을 최적화하여 다운타임과 유지보수 비용을 절감할 수 있도록 돕습니다. 향후 성장 요인으로는 더 깊은 통찰력을 위한 AI와 ML의 발전, 실시간 데이터 전송을 위한 5G의 통합, 몰입형 자산 관리 경험을 위한 AR 및 VR 기술의 채택 등이 있습니다. 이러한 기술 발전은 보다 정확하고 효율적인 자산 관리를 가능하게 하고, 자산 디지털 트윈 시장의 지속적인 성장을 가속할 것입니다.

북미가 디지털 트윈 시장을 선도하는 주요 이유는 탄탄한 기술 인프라, R&D에 대한 높은 수준의 투자, IoT, AI, 머신러닝과 같은 첨단 기술의 조기 도입입니다. 이 지역은 디지털 트윈 기술의 한계를 뛰어넘고 지속적으로 혁신하고 있는 주요 기술 기업 및 스타트업의 존재감이 강하다는 이점이 있습니다. 또한, 북미 전역의 제조, 항공우주, 헬스케어 등 산업계는 디지털 트윈이 업무 최적화, 비용 절감, 제품 개발 강화에 미치는 가치를 빠르게 인식하고 있습니다. 이는 경제의 디지털 전환과 혁신을 촉진하기 위한 정부 지원 정책으로 보완되고 있습니다. 또한, 이 지역의 지속가능성과 에너지 효율성에 대한 강조는 복잡한 시스템과 프로세스를 보다 효과적으로 관리하기 위해 디지털 트윈을 도입하는 데 박차를 가하고 있습니다.

세계 디지털 트윈(Digital Twin) 시장을 조사했으며, 시장 개요, 주요 동향, 규제 환경, 시장 영향요인 및 시장 기회 분석, 시장 규모 추이 및 예측, 각종 부문별/지역별 상세 분석, 경쟁 구도, 주요 기업 프로파일 등의 정보를 전해드립니다.

목차

주요 요약

제1장 시장

  • 동향 : 현재 및 향후 영향 평가
    • 인프라 개발 디지털 트윈 부상
    • 하이퍼 퍼스널라이제이션
  • 규제 상황
  • 에코시스템/진행 중인 프로그램
  • 인더스트리 5.0에서 디지털 트윈의 역할
  • 업계별 이용 사례
  • 스타트업 자금조달 개요
  • 시장 역학 개요
    • 시장 성장 촉진요인
    • 시장 성장 억제요인
    • 시장 기회
  • 공급망 개요

제2장 용도

  • 용도 분류
  • 용도 개요
  • 세계의 디지털 트윈 시장
    • 시장 개요
  • 세계의 디지털 트윈 시장 : 용도별
    • 제품 설계 개발
    • 퍼포먼스 모니터링
    • 예지보전
    • 재고 관리
    • 기타
  • 세계의 디지털 트윈 시장 : 최종사용자별
  • 세계의 디지털 트윈 시장 : 최종사용자별
    • 제조
    • 자동차
    • 항공
    • 에너지 및 유틸리티
    • 헬스케어
    • 물류 및 소매
    • 기타

제3장 제품

  • 제품 개요
  • 세계의 디지털 트윈 시장
    • 시장 개요
  • 세계의 디지털 트윈 시장 : 제공 제품별
    • 플랫폼
    • 하드웨어
    • 소프트웨어 서비스
  • 세계의 디지털 트윈 시장 : 유형별
    • 어셋 디지털 트윈
    • 프로세스 디지털 트윈
    • 시스템 디지털 트윈
    • 조직 디지털 트윈(DTO)

제4장 지역

  • 지역 개요
  • 북미
  • 유럽
  • 아시아태평양
  • 기타 지역

제5장 시장 : 경쟁 벤치마킹 및 기업 개요

  • 다음 프론티어
  • 지역적 평가
    • General Electric
    • Microsoft
    • ANSYS, Inc
    • ABB
    • ANDRITZ
    • Bentley Systems
    • Dassault Systemes
    • Honeywell International Inc
    • Robert Bosch Gmbh
    • IBM Corporation
    • Siemens
    • SAP SE

제6장 조사 방법

LSH 24.04.23

Introduction of Digital Twin

A digital twin is a virtual model designed to accurately reflect a physical object, process, system, or service. This innovative concept leverages the convergence of the Internet of Things (IoT), artificial intelligence (AI), machine learning (ML), and big data analytics to create a dynamic and real-time simulation of a physical entity or system. Digital twins are used across various industries, including manufacturing, healthcare, urban planning, and more, enabling professionals to simulate, predict, and optimize systems before they are built and throughout their lifecycle. The essence of a digital twin technology lies in its ability to bridge the physical and virtual worlds. By gathering data from sensors installed on physical objects, the virtual model can be updated in real time, allowing for simulations that predict how the physical counterpart would behave under different conditions. This capability not only helps in understanding and forecasting the performance and potential issues of the physical counterpart but also facilitates innovation, efficiency, and decision-making processes.

Digital twins can vary in complexity, from simple models that represent a single aspect of the physical entity to highly sophisticated systems that encompass multiple layers of information and interaction. They serve as a critical tool in optimizing operations, maintenance, and product development, offering a holistic view of the entire lifecycle of a product or system. By providing insights that would be difficult or impossible to obtain through traditional methods, digital twins represent a significant leap forward in how humans interact with and understand the physical world around them.

KEY MARKET STATISTICS
Forecast Period2023 - 2033
2023 Evaluation$10.3 Billion
2033 Forecast$1,036.4 Billion
CAGR58.52%

Market Introduction

The digital twin market represents a burgeoning sector within the broader technology landscape, characterized by rapid growth, innovation, and wide-ranging applications across multiple industries. At its core, a digital twin is a virtual replica of a physical object, process, system, or service.

The market is driven by the increasing demand for digitalization and the adoption of IoT across various sectors, including manufacturing, healthcare, automotive, aerospace, energy, and urban development. Businesses are seeking ways to improve efficiency, reduce costs, and enhance product and service offerings, with digital twins providing a strategic advantage by offering insights that lead to better decision-making. Advancements in IoT connectivity, cloud computing, and AI are crucial enablers of the digital twin market, allowing for the collection and analysis of vast amounts of data in real time. These technologies facilitate the creation of more accurate and dynamic digital twins that can predict behaviors, optimize operations, and identify potential failures before they occur.

Industrial Impact

The industrial impact of the digital twin market is profound and far-reaching, fundamentally transforming how industries operate, innovate, and compete. By providing a virtual representation of physical assets, processes, or systems, digital twins enable businesses to simulate, predict, and optimize their operations in ways previously unimaginable. In manufacturing, for instance, digital twins are revolutionizing production processes by allowing for real-time monitoring and predictive maintenance, significantly reducing downtime and increasing efficiency. This leads to lower operational costs and higher product quality, enhancing competitiveness in a global market.

In the realm of infrastructure and construction, digital twin facilitates the detailed planning and management of large-scale projects, improving decision-making and risk management. By simulating different scenarios and analyzing potential impacts, project managers can anticipate problems before they occur, ensuring smoother project execution and better resource allocation. The energy sector benefits from digital twins through optimized asset management and grid operation, contributing to more sustainable energy systems. By predicting equipment failures and optimizing energy distribution, companies can reduce waste and enhance reliability, supporting the transition to greener energy sources.

Market Segmentation:

Segmentation 1: by Application

  • Product Design Development
  • Performance Monitoring
  • Predictive Maintenance
  • Inventory Management
  • Others

Predictive Maintenance Segment to Dominate the Global Digital Twin Market (by Application)

Predictive maintenance is rapidly leading the market in application sectors, with its value expected to grow from $2.3 billion in 2022 to an estimated $365.9 billion by 2033. This significant growth is attributed to a confluence of driving factors that underscore the increasing importance of predictive maintenance technologies across industries. The key drivers behind this growth are advances in IoT and big data analytics that have enabled real-time equipment monitoring, drastically reducing downtime and maintenance costs. The expansion of manufacturing and industrial sectors globally has further spurred the demand for such technologies.

Segmentation 2: by End User

  • Manufacturing
  • Automotive
  • Aviation
  • Energy and Utilities
  • Healthcare
  • Logistics and Retail
  • Others

Segmentation 3: by Type

  • Asset Digital Twin
  • Process Digital Twin
  • System Digital Twin
  • Digital Twin of an Organization (DTO)

Asset Digital Twin Segment to Dominate the Global Digital Twin Market (by Type)

The asset digital twin segment is leading the market due to its innovative approach to mirroring physical assets in a digital framework, enabling real-time monitoring, analysis, and simulation. This segment's market value, projected to grow from $2.7 billion in 2022 to $433.8 billion by 2033, is primarily driven by the increasing complexity of industrial assets and the need for enhanced operational efficiency and predictive maintenance. The integration of IoT, AI, and ML technologies within digital twins allows for the precise prediction of potential failures and optimization of asset performance, thereby reducing downtime and maintenance costs. Future growth factors include the further advancement of AI and ML for deeper insights, the integration of 5G for real-time data transmission, and the adoption of AR and VR technologies for immersive asset management experiences. These technological advancements will enable more accurate and efficient asset management practices, fostering the continued growth of the asset digital twin market.

Segmentation 4: by Product Offering

  • Platforms
  • Hardware
  • Support Services

Segmentation 5: by Region

  • North America - U.S. and Canada
  • Europe - U.K., Germany, France, Russia, and Rest-of-the-Europe
  • Asia-Pacific - China, India, Japan, and Rest-of-Asia-Pacific
  • Rest-of-the-World - Latin America and Middle East and Africa

North America is leading the digital twin market primarily due to its robust technological infrastructure, high levels of investment in research and development, and the early adoption of advanced technologies such as IoT, AI, and machine learning. The region benefits from a strong presence of leading technology companies and start-ups that continuously innovate and push the boundaries of digital twin technology. Furthermore, industries across North America, including manufacturing, aerospace, and healthcare, have been quick to recognize the value of digital twins in optimizing operations, reducing costs, and enhancing product development. This has been complemented by supportive government policies aimed at fostering digital transformation and innovation within the economy. Additionally, the region's focus on sustainability and energy efficiency has spurred the adoption of digital twins to manage complex systems and processes more effectively.

Recent Developments in the Global Digital Twin Market

In December 2023, Siemens signed a collaboration with Intel on advanced semiconductor manufacturing, which aimed to improve production efficiency and sustainability throughout the value chain. The collaboration explored initiatives such as optimizing energy management and mitigating carbon footprints throughout the value chain. A notable aspect involved investigating the use of digital twins for complex manufacturing facilities, aiming to standardize solutions and enhance efficiency in every aspect of the process.

  • In September 2023, GE Vernova launched a new product, an AI-powered carbon emissions management software for the energy sector. Utilization of this new software would enable precise measurement, management, and operationalization of insights aimed at lowering carbon emissions. With the use of a reconciliation algorithm and digital twin technology driven by machine learning (ML) and data analytics, the software aimed to increase the accuracy of greenhouse gas (GHG) calculations on scope one gas turbines by as much as 33%.
  • In April 2023, Siemens signed a partnership with IBM to create an integrated software solution for systems engineering, service lifecycle management, and asset management. The collaboration aimed to support traceability and sustainable product development across mechanical, electronics, electrical, and software engineering domains. The new suite, based on SysML v1 standards, would utilize a digital thread to link design, manufacturing, operations, maintenance, updates, and end-of-life management throughout the product lifecycle.

How can this report add value to an organization?

Product/Innovation Strategy: The product segment helps the reader understand the different types of products available for deployment globally. Moreover, the study provides the reader with a detailed understanding of the global digital twin market based on application (product design development, performance monitoring, predictive maintenance, inventory management, and others), and by end user (manufacturing, automotive, aviation, energy and utilities, healthcare, logistics and retail, and others), on the basis product offering (platform, hardware, and software service), and by type(Asset Digital Twin, Process Digital Twin, System Digital Twin, and Digital Twin of an Organization (DTO).

Growth/Marketing Strategy: The global digital twin market has seen major development by key players operating in the market, such as business expansion, partnership, collaboration, and joint venture. The favored strategy for the companies has been partnerships and contracts to strengthen their position in the global digital twin market. For instance, in May 2023, Dassault Systemes signed a partnership with Envision Digital to optimize the performance of sustainable energy solutions. This partnership involved the connection of Envision Digital's EnOS real-time asset operations data with a virtual twin of asset engineering and manufacturing on Dassault Systemes' 3DEXPERIENCE platform.

Methodology: The research methodology design adopted for this specific study includes a mix of data collected from primary and secondary data sources. Both primary resources (key players, market leaders, and in-house experts) and secondary research (a host of paid and unpaid databases), along with analytical tools, are employed to build the predictive and forecast models.

Data and validation have been taken into consideration from both primary sources as well as secondary sources.

Key Considerations and Assumptions in Market Engineering and Validation

  • Detailed secondary research has been done to ensure maximum coverage of manufacturers/suppliers operational in a country.
  • Based on the classification, the average selling price (ASP) has been calculated using the weighted average method.
  • The currency conversion rate has been taken from the historical exchange rate of Oanda and/or other relevant websites.
  • Any economic downturn in the future has not been taken into consideration for the market estimation and forecast.
  • The base currency considered for the market analysis is US$. Currencies other than the US$ have been converted to the US$ for all statistical calculations, considering the average conversion rate for that particular year.
  • The term "product" in this document may refer to "hardware and software" as and where relevant.
  • The term "manufacturers/suppliers" may refer to "systems providers" or "technology providers" as and where relevant.

Primary Research

The primary sources involve experts from various digital twin technology solution and service providers. Respondents such as CEOs, vice presidents, marketing directors, and technology and innovation directors have been interviewed to obtain and verify both qualitative and quantitative aspects of this research study.

Secondary Research

This study involves the usage of extensive secondary research, company websites, directories, and annual reports. It also makes use of databases, such as Spacenews, Businessweek, and others, to collect effective and useful information for a market-oriented, technical, commercial, and extensive study of the global market. In addition to the data sources, the study has been undertaken with the help of other data sources and websites, such as www.nasa.gov.

Secondary research was done to obtain critical information about the industry's value chain, the market's monetary chain, revenue models, the total pool of key players, and the current and potential use cases and applications.

Key Market Players and Competition Synopsis

The companies that are profiled have been selected based on thorough secondary research, which includes analyzing company coverage, product portfolio, market penetration, and insights gathered from primary experts.

The global digital twin market comprises key players who have established themselves thoroughly and have the proper understanding of the market, accompanied by start-ups who are looking forward to establishing themselves in this highly competitive market. In 2022, the global digital twin market was dominated by established players, accounting for 71% of the market share, whereas start-ups managed to capture 29% of the market.

Some prominent names established in this market are:

  • Ansys Inc.
  • ABB Ltd.
  • Andritz Group
  • Bentley Systems
  • Siemens AG
  • Dassault Systemes
  • IBM Corporation
  • SAP SE
  • Robert Bosch GMBH
  • Honeywell International Inc
  • Microsoft
  • General Electric

Table of Contents

Executive Summary

Scope and Definition

1 Markets

  • 1.1 Trends: Current and Future Impact Assessment
    • 1.1.1 Rise of Digital Twins in Infrastructure Development
    • 1.1.2 Hyper-Personalization
  • 1.2 Regulatory Landscape
  • 1.3 Ecosystem/Ongoing Programs
    • 1.3.1 Project PLATEAU
  • 1.4 Role of Digital Twin in Industry 5.0
  • 1.5 Use Cases by Industry
  • 1.6 Startup Funding Summary
  • 1.7 Market Dynamics Overview
    • 1.7.1 Market Drivers
      • 1.7.1.1 Increasing Adoption of AI, ML, IoT, Data Analytics, and 5G
      • 1.7.1.2 Increasing Investment in Digital Twin City
    • 1.7.2 Market Restraints
      • 1.7.2.1 Technical Hurdles in Digital Twin Implementation
      • 1.7.2.2 Scaling and High Fidelity
    • 1.7.3 Market Opportunities
      • 1.7.3.1 Increasing Use of Digital Twin across Various Industries
  • 1.8 Supply Chain Overview

2 Application

  • 2.1 Application Segmentation
  • 2.2 Application Summary
  • 2.3 Global Digital Twin Market
    • 2.3.1 Market Overview
  • 2.4 Global Digital Twin Market (by Application)
    • 2.4.1 Product Design Development
    • 2.4.2 Performance Monitoring
    • 2.4.3 Predictive Maintenance
    • 2.4.4 Inventory Management
    • 2.4.5 Others
  • 2.5 Global Digital Twin Market (by End User)
  • 2.6 Global Digital Twin Market (by End User)
    • 2.6.1 Manufacturing
    • 2.6.2 Automotive
    • 2.6.3 Aviation
    • 2.6.4 Energy and Utilities
    • 2.6.5 Healthcare
    • 2.6.6 Logistics and Retail
    • 2.6.7 Others

3 Products

  • 3.1 Product Summary
  • 3.2 Global Digital Twin Market
    • 3.2.1 Market Overview
  • 3.3 Global Digital Twin Market (by Product Offering)
    • 3.3.1 Platforms
    • 3.3.2 Hardware
    • 3.3.3 Software Services
  • 3.4 Global Digital Twin Market (by Type)
    • 3.4.1 Asset Digital Twin
    • 3.4.2 Process Digital Twin
    • 3.4.3 System Digital Twin
    • 3.4.4 Digital Twin of an Organization (DTO)

4 Regions

  • 4.1 Regional Summary
  • 4.2 North America
    • 4.2.1 Regional Overview
    • 4.2.2 Driving Factors for Market Growth
    • 4.2.3 Factors Challenging the Market
    • 4.2.4 Application
    • 4.2.5 Product
    • 4.2.6 U.S.
    • 4.2.7 Application
    • 4.2.8 Product
    • 4.2.9 Canada
    • 4.2.10 Application
    • 4.2.11 Product
  • 4.3 Europe
    • 4.3.1 Regional Overview
    • 4.3.2 Driving Factors for Market Growth
    • 4.3.3 Factors Challenging the Market
    • 4.3.4 Application
    • 4.3.5 Product
    • 4.3.6 France
    • 4.3.7 Application
    • 4.3.8 Product
    • 4.3.9 Germany
    • 4.3.10 Application
    • 4.3.11 Product
    • 4.3.12 U.K.
    • 4.3.13 Application
    • 4.3.14 Product
    • 4.3.15 Russia
    • 4.3.16 Application
    • 4.3.17 Product
    • 4.3.18 Rest-of-Europe
    • 4.3.19 Application
    • 4.3.20 Product
  • 4.4 Asia-Pacific
    • 4.4.1 Regional Overview
    • 4.4.2 Driving Factors for Market Growth
    • 4.4.3 Factors Challenging the Market
    • 4.4.4 Application
    • 4.4.5 Product
    • 4.4.6 China
    • 4.4.7 Application
    • 4.4.8 Product
    • 4.4.9 India
    • 4.4.10 Application
    • 4.4.11 Product
    • 4.4.12 Japan
    • 4.4.13 Application
    • 4.4.14 Product
    • 4.4.15 Rest-of-Asia-Pacific
    • 4.4.16 Application
    • 4.4.17 Product
  • 4.5 Rest-of-the-World
    • 4.5.1 Regional Overview
    • 4.5.2 Driving Factors for Market Growth
    • 4.5.3 Factors Challenging the Market
    • 4.5.4 Application
    • 4.5.5 Product
    • 4.5.6 Latin America
    • 4.5.7 Regional Overview
    • 4.5.8 Application
    • 4.5.9 Product
    • 4.5.10 Middle East and Africa
    • 4.5.11 Regional Overview
    • 4.5.12 Application
    • 4.5.13 Product

5 Markets - Competitive Benchmarking & Company Profiles

  • 5.1 Next Frontiers
  • 5.2 Geographic Assessment
    • 5.2.1 General Electric
      • 5.2.1.1 Overview
      • 5.2.1.2 Top Products/Product Portfolio
      • 5.2.1.3 Top Competitors
      • 5.2.1.4 Target Customers
      • 5.2.1.5 Key Personnel
      • 5.2.1.6 Analyst View
      • 5.2.1.7 Market Share, 2023
    • 5.2.2 Microsoft
      • 5.2.2.1 Overview
      • 5.2.2.2 Top Products/Product Portfolio
      • 5.2.2.3 Top Competitors
      • 5.2.2.4 Target Customers
      • 5.2.2.5 Key Personnel
      • 5.2.2.6 Analyst View
      • 5.2.2.7 Market Share, 2023
    • 5.2.3 ANSYS, Inc
      • 5.2.3.1 Overview
      • 5.2.3.2 Top Products/Product Portfolio
      • 5.2.3.3 Top Competitors
      • 5.2.3.4 Target Customers
      • 5.2.3.5 Key Personnel
      • 5.2.3.6 Analyst View
      • 5.2.3.7 Market Share, 2023
    • 5.2.4 ABB
      • 5.2.4.1 Overview
      • 5.2.4.2 Top Products/Product Portfolio
      • 5.2.4.3 Top Competitors
      • 5.2.4.4 Target Customers
      • 5.2.4.5 Key Personnel
      • 5.2.4.6 Analyst View
      • 5.2.4.7 Market Share, 2023
    • 5.2.5 ANDRITZ
      • 5.2.5.1 Overview
      • 5.2.5.2 Top Products/Product Portfolio
      • 5.2.5.3 Top Competitors
      • 5.2.5.4 Target Customers
      • 5.2.5.5 Key Personnel
      • 5.2.5.6 Analyst View
      • 5.2.5.7 Market Share, 2023
    • 5.2.6 Bentley Systems
      • 5.2.6.1 Overview
      • 5.2.6.2 Top Products/Product Portfolio
      • 5.2.6.3 Top Competitors
      • 5.2.6.4 Target Customers
      • 5.2.6.5 Key Personnel
      • 5.2.6.6 Analyst View
      • 5.2.6.7 Market Share, 2023
    • 5.2.7 Dassault Systemes
      • 5.2.7.1 Overview
      • 5.2.7.2 Top Products/Product Portfolio
      • 5.2.7.3 Top Competitors
      • 5.2.7.4 Target Customers
      • 5.2.7.5 Key Personnel
      • 5.2.7.6 Analyst View
      • 5.2.7.7 Market Share, 2023
    • 5.2.8 Honeywell International Inc
      • 5.2.8.1 Overview
      • 5.2.8.2 Top Products/Product Portfolio
      • 5.2.8.3 Top Competitors
      • 5.2.8.4 Target Customers
      • 5.2.8.5 Key Personnel
      • 5.2.8.6 Analyst View
      • 5.2.8.7 Market Share, 2023
    • 5.2.9 Robert Bosch Gmbh
      • 5.2.9.1 Overview
      • 5.2.9.2 Top Products/Product Portfolio
      • 5.2.9.3 Top Competitors
      • 5.2.9.4 Target Customers
      • 5.2.9.5 Key Personnel
      • 5.2.9.6 Analyst View
      • 5.2.9.7 Market Share, 2023
    • 5.2.10 IBM Corporation
      • 5.2.10.1 Overview
      • 5.2.10.2 Top Products/Product Portfolio
      • 5.2.10.3 Top Competitors
      • 5.2.10.4 Target Customers
      • 5.2.10.5 Key Personnel
      • 5.2.10.6 Analyst View
      • 5.2.10.7 Market Share, 2023
    • 5.2.11 Siemens
      • 5.2.11.1 Overview
      • 5.2.11.2 Top Products/Product Portfolio
      • 5.2.11.3 Top Competitors
      • 5.2.11.4 Target Customers
      • 5.2.11.5 Key Personnel
      • 5.2.11.6 Analyst View
      • 5.2.11.7 Market Share, 2023
    • 5.2.12 SAP SE
      • 5.2.12.1 Overview
      • 5.2.12.2 Top Products/Product Portfolio
      • 5.2.12.3 Top Competitors
      • 5.2.12.4 Target Customers
      • 5.2.12.5 Key Personnel
      • 5.2.12.6 Analyst View
      • 5.2.12.7 Market Share, 2023

6 Research Methodology

  • 6.1 Data Sources
    • 6.1.1 Primary Data Sources
    • 6.1.2 Secondary Data Sources
    • 6.1.3 Data Triangulation
  • 6.2 Market Estimation and Forecast
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