ICT

Generative AI in Supply Chain Market Size To Grow USD 12,941.14 Million by 2032

According to a recent research report titled ” Generative AI in Supply Chain Market (By Deployment Mode: Cloud-based, On-Premise; By End-User: Retail, Healthcare, Manufacturing) – Global Industry Analysis, Size, Share, Growth, Trends, Regional Outlook, and Forecast 2023-2032″ published by Precedence Research, the global generative AI in supply chain market size is projected to touch around USD 12,941.14 million by 2032 and growing at a CAGR of 45.62% over the forecast period 2023 to 2032. This comprehensive study examines various factors and their impact on the growth of the GENERATIVE AI IN SUPPLY market.

Generative AI in Supply Chain Market Size 2023 To 2032

Key Takeaways:

  • North America led the market with the largest market share in 2022.
  • Asia Pacific is expected to expand at the fastest CAGR between 2023 and 2032.
  • By deployment, the cloud-based segment contributed more than 61% of revenue share in 2022.
  • By end-user, the retail segment dominated the market with the largest market share in 2022. Additionally, the hospital segment is expected to be the most lucrative segment of the market.

The report primarily focuses on the volume and value of the generative AI in supply chain  market at the global, regional, and company levels. At the global level, the report analyzes historical data and future prospects to present an overview of the overall market size. Regionally, the study emphasizes key regions such as North America, Europe, the Middle East & Africa, Latin America, and others.

Furthermore, the research report provides specific segmentations based on regions (countries), companies, and all market segments. This analysis offers insights into the growth and revenue trends during the historical period of 2017 to 2032, as well as the projected period. By understanding these segments, it becomes possible to identify the significance of different factors that contribute to market growth.

Download a Free Copy of Our Latest Sample Report@ https://www.precedenceresearch.com/sample/3124

The research also highlights significant progressions in both organic and inorganic growth strategies within the global generative AI in supply market. Numerous companies are placing emphasis on new product launches, gaining product approvals, and implementing various business expansion tactics. Moreover, the report presents detailed profiles of firms operating in the generative AI in supply market, along with their respective market strategies. Additionally, the study concentrates on prominent industry participants, furnishing details such as company profiles, product offerings, financial updates, and noteworthy advancements.

Generative AI in Supply Chain Market Report Scope 

Report Coverage Details
Market Size in 2023 USD 439.52 Million
Market Size by 2032 USD 12,941.14 Million
Growth Rate from 2023 to 2032 CAGR of 45.62%
Largest Market North America
Fastest Growing Market Asia Pacific
Base Year 2022
Forecast Period 2023 to 2032
Segments Covered By Deployment Mode and By End-User
Regions Covered North America, Europe, Asia-Pacific, Latin America, and Middle East & Africa

Also read: Castor Oil Market Size to Record US$ 1,253.21 KMT By 2032

Region Snapshot:

The global generative AI in the supply chain market is expected to witness significant growth, with North America emerging as the most profitable region. Within North America, the United States holds a prominent position in AI research and development as well as the global supply chain industry. The country serves as a hub for major technology firms, research institutions, and innovative startups that contribute to the advancement of generative AI for supply chain applications.

Meanwhile, Europe boasts a strong AI research community, particularly focused on supply chain management. Countries like Germany, the United Kingdom, and France have taken the lead in driving AI advancements within the region. European companies actively explore the potential of generative AI to enhance their supply chain operations and improve logistics efficiency.

Major Key Points Covered in Report:

Executive Summary: It includes key trends of the electric vehicle fuel cell market related to products, applications, and other crucial factors. It also provides analysis of the competitive landscape and CAGR and market size of the electric vehicle fuel cell market based on production and revenue.

Production and Consumption by Region: It covers all regional markets to which the research study relates. Prices and key players in addition to production and consumption in each regional market are discussed.

Key Players: Here, the report throws light on financial ratios, pricing structure, production cost, gross profit, sales volume, revenue, and gross margin of leading and prominent companies competing in the Electric vehicle fuel cell market.

Market Segments: This part of the report discusses product, application and other segments of the electric vehicle fuel cell market based on market share, CAGR, market size, and various other factors.

Research Methodology: This section discusses the research methodology and approach used to prepare the report. It covers data triangulation, market breakdown, market size estimation, and research design and/or programs.

Market Key Players

The report incorporates company profiles of key players in the market. These profiles encompass vital information such as product portfolio, key strategies, and a comprehensive SWOT analysis for each player. Additionally, the report presents a matrix illustrating the presence of each prominent player, enabling readers to gain actionable insights. This facilitates a thoughtful assessment of the market status and aids in predicting the level of competition in the generative AI in supply chain market.

Some of the prominent players in the generative AI in supply market include

  • IBM Corporation
  • Microsoft Corporation
  • SAP SE
  • Oracle Corporation
  • Blue Yonder
  • LLamasoft Inc
  • AIMMS

Generative AI in Supply Chain Market Segmentations 

By Deployment Mode

  • Cloud-based
  • On-Premise

By End-User

  • Retail
  • Healthcare
  • Manufacturing

By Geography

  • North America
  • Europe
  • Asia-Pacific
  • Latin America
  • Middle East and Africa

Why should you invest in this report?

This report presents a compelling investment opportunity for those interested in the global generative AI in supply chain market. It serves as an extensive and informative guide, offering clear insights into this niche market. By delving into the report, you will gain a comprehensive understanding of the various major application areas for generative AI in supply chain. Furthermore, it provides crucial information about the key regions worldwide that are expected to experience substantial growth within the forecast period of 2023-2030. Armed with this knowledge, you can strategically plan your market entry approaches.

Moreover, this report offers a deep analysis of the competitive landscape, equipping you with valuable insights into the level of competition prevalent in this highly competitive market. If you are already an established player, it will enable you to assess the strategies employed by your competitors, allowing you to stay ahead as market leaders. For newcomers entering this market, the extensive data provided in this report is invaluable, providing a solid foundation for informed decision-making.

Some of the key questions answered in this report:       

  • What is the size of the overall generative AI in supply chain market and its segments?
  • What are the key segments and sub-segments in the market?
  • What are the key drivers, restraints, opportunities and challenges of the generative AI in supply chain market and how they are expected to impact the market?
  • What are the attractive investment opportunities within the generative AI in supply chain market?
  • What is the generative AI in supply chain market size at the regional and country-level?
  • Who are the key market players and their key competitors?
  • What are the strategies for growth adopted by the key players in generative AI in supply chain market?
  • What are the recent trends in generative AI in supply chain market? (M&A, partnerships, new product developments, expansions)?
  • What are the challenges to the generative AI in supply chain market growth?
  • What are the key market trends impacting the growth of generative AI in supply chain market?

Table of Content:

Chapter 1. Introduction

1.1. Research Objective

1.2. Scope of the Study

1.3. Definition

Chapter 2. Research Methodology (Premium Insights)

2.1. Research Approach

2.2. Data Sources

2.3. Assumptions & Limitations

Chapter 3. Executive Summary

3.1. Market Snapshot

Chapter 4. Market Variables and Scope 

4.1. Introduction

4.2. Market Classification and Scope

4.3. Industry Value Chain Analysis

4.3.1. Raw Material Procurement Analysis

4.3.2. Sales and Distribution Channel Analysis

4.3.3. Downstream Buyer Analysis

Chapter 5. COVID 19 Impact on Generative AI in Supply Chain Market 

5.1. COVID-19 Landscape: Generative AI in Supply Chain Industry Impact

5.2. COVID 19 – Impact Assessment for the Industry

5.3. COVID 19 Impact: Global Major Government Policy

5.4. Market Trends and Opportunities in the COVID-19 Landscape

Chapter 6. Market Dynamics Analysis and Trends

6.1. Market Dynamics

6.1.1. Market Drivers

6.1.2. Market Restraints

6.1.3. Market Opportunities

6.2. Porter’s Five Forces Analysis

6.2.1. Bargaining power of suppliers

6.2.2. Bargaining power of buyers

6.2.3. Threat of substitute

6.2.4. Threat of new entrants

6.2.5. Degree of competition

Chapter 7. Competitive Landscape

7.1.1. Company Market Share/Positioning Analysis

7.1.2. Key Strategies Adopted by Players

7.1.3. Vendor Landscape

7.1.3.1. List of Suppliers

7.1.3.2. List of Buyers

Chapter 8. Global Generative AI in Supply Chain Market, By Deployment Mode

8.1. Generative AI in Supply Chain Market, by Deployment Mode, 2023-2032

8.1.1. Cloud-based

8.1.1.1. Market Revenue and Forecast (2020-2032)

8.1.2. On-Premise

8.1.2.1. Market Revenue and Forecast (2020-2032)

Chapter 9. Global Generative AI in Supply Chain Market, By End-User

9.1. Generative AI in Supply Chain Market, by End-User, 2023-2032

9.1.1. Retail

9.1.1.1. Market Revenue and Forecast (2020-2032)

9.1.2. Healthcare

9.1.2.1. Market Revenue and Forecast (2020-2032)

9.1.3. Manufacturing

9.1.3.1. Market Revenue and Forecast (2020-2032)

Chapter 10. Global Generative AI in Supply Chain Market, Regional Estimates and Trend Forecast

10.1. North America

10.1.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.1.2. Market Revenue and Forecast, by End-User (2020-2032)

10.1.3. U.S.

10.1.3.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.1.3.2. Market Revenue and Forecast, by End-User (2020-2032)

10.1.4. Rest of North America

10.1.4.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.1.4.2. Market Revenue and Forecast, by End-User (2020-2032)

10.2. Europe

10.2.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.2.2. Market Revenue and Forecast, by End-User (2020-2032)

10.2.3. UK

10.2.3.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.2.3.2. Market Revenue and Forecast, by End-User (2020-2032)

10.2.4. Germany

10.2.4.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.2.4.2. Market Revenue and Forecast, by End-User (2020-2032)

10.2.5. France

10.2.5.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.2.5.2. Market Revenue and Forecast, by End-User (2020-2032)

10.2.6. Rest of Europe

10.2.6.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.2.6.2. Market Revenue and Forecast, by End-User (2020-2032)

10.3. APAC

10.3.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.3.2. Market Revenue and Forecast, by End-User (2020-2032)

10.3.3. India

10.3.3.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.3.3.2. Market Revenue and Forecast, by End-User (2020-2032)

10.3.4. China

10.3.4.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.3.4.2. Market Revenue and Forecast, by End-User (2020-2032)

10.3.5. Japan

10.3.5.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.3.5.2. Market Revenue and Forecast, by End-User (2020-2032)

10.3.6. Rest of APAC

10.3.6.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.3.6.2. Market Revenue and Forecast, by End-User (2020-2032)

10.4. MEA

10.4.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.4.2. Market Revenue and Forecast, by End-User (2020-2032)

10.4.3. GCC

10.4.3.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.4.3.2. Market Revenue and Forecast, by End-User (2020-2032)

10.4.4. North Africa

10.4.4.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.4.4.2. Market Revenue and Forecast, by End-User (2020-2032)

10.4.5. South Africa

10.4.5.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.4.5.2. Market Revenue and Forecast, by End-User (2020-2032)

10.4.6. Rest of MEA

10.4.6.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.4.6.2. Market Revenue and Forecast, by End-User (2020-2032)

10.5. Latin America

10.5.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.5.2. Market Revenue and Forecast, by End-User (2020-2032)

10.5.3. Brazil

10.5.3.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.5.3.2. Market Revenue and Forecast, by End-User (2020-2032)

10.5.4. Rest of LATAM

10.5.4.1. Market Revenue and Forecast, by Deployment Mode (2020-2032)

10.5.4.2. Market Revenue and Forecast, by End-User (2020-2032)

Chapter 11. Company Profiles

11.1. IBM Corporation

11.1.1. Company Overview

11.1.2. Product Offerings

11.1.3. Financial Performance

11.1.4. Recent Initiatives

11.2. Microsoft Corporation

11.2.1. Company Overview

11.2.2. Product Offerings

11.2.3. Financial Performance

11.2.4. Recent Initiatives

11.3. SAP SE

11.3.1. Company Overview

11.3.2. Product Offerings

11.3.3. Financial Performance

11.3.4. Recent Initiatives

11.4. Oracle Corporation

11.4.1. Company Overview

11.4.2. Product Offerings

11.4.3. Financial Performance

11.4.4. Recent Initiatives

11.5. Blue Yonder

11.5.1. Company Overview

11.5.2. Product Offerings

11.5.3. Financial Performance

11.5.4. Recent Initiatives

11.6. LLamasoft Inc

11.6.1. Company Overview

11.6.2. Product Offerings

11.6.3. Financial Performance

11.6.4. Recent Initiatives

11.7. AIMMS

11.7.1. Company Overview

11.7.2. Product Offerings

11.7.3. Financial Performance

11.7.4. Recent Initiatives

Chapter 12. Research Methodology

12.1. Primary Research

12.2. Secondary Research

12.3. Assumptions

Chapter 13. Appendix

13.1. About Us

13.2. Glossary of Terms

Contact Us:

Mr. Alex

Sales Manager

Call: +1 9197 992 333

Emailsales@precedenceresearch.com

Web: https://www.precedenceresearch.com

Blog: https://www.pharma-geek.com


684660294776fe14a6b8401565626c39?s=96&d=mm&r=g

Prathamesh

I have completed my education in Bachelors in Computer Application. A focused learner having a keen interest in the field of digital marketing, SEO, SMM, and Google Analytics enthusiastic to learn new things along with building leadership skills.

Prathamesh

I have completed my education in Bachelors in Computer Application. A focused learner having a keen interest in the field of digital marketing, SEO, SMM, and Google Analytics enthusiastic to learn new things along with building leadership skills.

View all posts by Prathamesh →

Leave a Reply

Your email address will not be published. Required fields are marked *