공급망 관리(SCM)용 인공지능(AI) 시장 : 기술별, 프로세스별, 솔루션별, 관리 기능별, 전개 모델별, 비지니스 유형별, 업종별(2022-2027년)
Artificial Intelligence in Supply Chain Management Market by Technology, Processes, Solutions, Management Function (Automation, Planning and Logistics, Inventory, Risk), Deployment Model, Business Type and Industry Verticals 2022 - 2027
상품코드 : 1049940
리서치사 : Mind Commerce
발행일 : 2022년 01월
페이지 정보 : 영문 272 Pages
US $ 2,500 ₩ 3,193,000
PDF (Single User License)
US $ 3,000 ₩ 3,831,000
PDF (2 - 5 User License)
US $ 4,500 ₩ 5,747,000
PDF (Enterprise Site License)
US $ 5,000 ₩ 6,386,000
PDF (Global Enterprise License)


한글목차

공급망 관리(SCM)용 인공지능(AI) 솔루션 전체는 2027년까지 167억 달러에 이를 것으로 예측됩니다. 아시아태평양은 최대 규모이자 가장 급성장 중인 시장입니다. SCM용 클라우드 기반 AIaaS는 2027년까지 세계에서 30억 달러 이상에 달할 것으로 예상됩니다. IoT 지원 솔루션의 엣지 컴퓨팅용 AI SCM은 2027년까지 53억 5,000만 달러에 달할 것으로 예측됩니다.

공급망 관리(SCM)용 인공지능(AI) 시장에 대해 조사분석했으며, 솔루션별/솔루션 컴포넌트별/관리 기능별/AI 기술별/업종별 상세한 분석과 예측에 대한 정보를 제공합니다.

목차

제1장 개요

제2장 서론

제3장 공급망 관리(SCM)용 인공지능(AI)의 과제와 기회

제4장 공급망 에코시스템 기업 분석

제5장 공급망 관리(SCM)용 인공지능(AI) 시장 사례 연구

제6장 공급망 관리(SCM)용 인공지능(AI) 시장 분석과 예측(2022-2027년)

제7장 요약과 제안

LSH 22.01.27
영문 목차

영문목차

Overview:

This report provides detailed analysis and forecasts for AI in SCM by solution (Platforms, Software, and AI as a Service), solution components (Hardware, Software, Services), management function (Automation, Planning and Logistics, Inventory Management, Fleet Management, Freight Brokerage, Risk Management, and Dispute Resolution), AI technologies (Cognitive Computing, Computer Vision, Context-aware Computing, Natural Language Processing, and Machine Learning), and industry verticals (Aerospace, Automotive, Consumer Goods, Healthcare, Manufacturing, and others).

This is the broadest and detailed report of its type, providing analysis across a wide range of go-to-operational process considerations, such as the need for identity management and real-time location tracking, and market deployment considerations, such as AI type, technologies, platforms, connectivity, IoT integration, and deployment model including AI-as-a-Service (AIaaS).

Each aspect evaluated includes forecasts from 2022 to 2027 such as AIaaS by revenue in China. It provides an analysis of AI in SCM globally, regionally, and by country including the top ten countries per region by market share.

The report also provides an analysis of leading companies and solutions that are leveraging AI in their supply chains and those they manage on behalf of others, with an evaluation of key strengths and weaknesses of these solutions.

It assesses AI in SCM by industry vertical and application such as material movement tracking and drug supply management in manufacturing and healthcare respectively. The report also provides a view into the future of AI in SCM including analysis of performance improvements such as optimization of revenues, supply chain satisfaction, and cost reduction.

Select Report Findings:

Modern supply chains represent complex systems of organizations, people, activities, information, and resources involved in moving a product or service from supplier to customer. Supply Chain Management (SCM) solutions are typically manifest in software architecture and systems that facilitate the flow of information among different functions within and between enterprise organizations.

Leading SCM solutions catalyze information sharing across organizational units and geographical locations, enabling decision-makers to have an enterprise-wide view of the information needed in a timely, reliable and consistent fashion. Various forms of Artificial Intelligence (AI) are being integrated into SCM solutions to improve everything from process automation to overall decision-making. This includes greater data visibility (static and real-time data) as well as related management information system effectiveness.

In addition to fully automated decision-making, AI systems are also leveraging various forms of cognitive computing to optimize the combined efforts of artificial and human intelligence. For example, AI in SCM is enabling improved supply chain automation through the use of virtual assistants, which are used both internally (within a given enterprise) as well as between supply chain members (e.g. customer-supplier chains). It is anticipated that virtual assistants in SCM will leverage an industry-specific knowledge database as well as company, department, and production-specific learning.

AI-enabled improvements in supply chain member satisfaction causes a positive feedback loop, leading to better overall SCM performance. One of the primary goals is to leverage AI to make supply chain improvements from production to consumption within product-related industries as well as create opportunities for supporting "servitization" of products in a cloud-based "as a service" model. AI will identify opportunities for supply chain members to have greater ownership of "outcomes as a service" and control of overall product/service experience and profitability.

With Internet of Things (IoT) technologies and solutions taking an ever-increasing role in SCM, the inclusion of AI algorithms and software-driven processes with IoT represents a very important opportunity to leverage the Artificial Intelligence of Things (AIoT) in supply chains. More specifically, AIoT solutions leverage the connectivity and communications power of IoT, along with the machine learning and decision-making capabilities of AI, as a means of optimizing SCM by way of data-driven managed services.

Companies in Report:

  • 3M
  • Adidas
  • Amazon
  • Arvato SCM Solutions
  • BASF
  • Basware
  • BMW
  • C. H.Robinson
  • Cainiao Network (Alibaba)
  • Cisco Systems
  • ClearMetal
  • Coca-Cola Co.
  • Colgate-Palmolive
  • Coupa Software
  • Descartes Systems Group
  • Diageo
  • E2open
  • Epicor Software Corporation
  • FedEx
  • Fraight AI
  • H&M
  • HighJump
  • Home Depot
  • HP Inc.
  • IBM
  • Inditex.
  • Infor Global Solutions
  • Intel
  • JDA
  • Johnson & Johnson
  • Kimberly-Clark
  • LLamasoft, Inc.
  • Logility
  • L'Oréal
  • Manhattan Associates
  • Micron Technology
  • Microsoft
  • Nestlé
  • Nike
  • Novo Nordisk
  • Nvidia
  • Oracle
  • PepsiCo
  • Presenso
  • Relex Solution
  • Sage
  • Samsung Electronics
  • SAP
  • Schneider Electric
  • SCM Solutions Corp.
  • Splice Machine
  • Starbucks
  • Teknowlogi
  • Unilever
  • Walmart
  • Xilinx

Table of Contents

1.0. Executive Summary

2.0. Introduction

3.0. AI in SCM Challenges and Opportunities

4.0. Supply Chain Ecosystem Company Analysis

5.0. AI in SCM Market Case Studies

6.0. AI in SCM Market Analysis and Forecasts 2022-2027

7.0. Summary and Recommendations

Figures

Tables

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