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Global IoT in Warehouse Management Market to reach USD 8.57 billion by 2027.

Global IoT in Warehouse Management Market Size study, by Solutions (Warehouse automation, Workforce management, Inventory management, electronic data interchange (EDI) Tracking) by Device (Sensing Devices, Gateways) by Usage (Usage-based Insurance, 3PL) and Regional Forecasts 2021-2027

Product Code: ICTICTI-31148058
Publish Date: 17-10-2021
Page: 200

Global IoT in Warehouse Management Market is valued approximately USD 3.22 billion in 2020 and is anticipated to grow with a healthy growth rate of more than 15 % over the forecast period 2021-2027. IoT in Warehouse Management refers to use of applications and tracking solution to enhance overall efficiency of warehouse and transportation. Implementation of the Internet of Things (IoT) in warehousing is substantial. It provides visibility into the supply chain from the ordering of materials till the shipment reaches the end customer. Growing demand for application of connected devices in warehouse management and growing logistics and transportation market are the key drivers for growth of IoT application in warehouse Management. As per Statista In 2020, the global logistics market was worth almost USD 8.6 trillion with USD 3.9 trillion in size, the logistics market in the Asia Pacific region is the largest globally and North America was the second largest region in that year, accounting for approximately USD two trillion. Also, increasing application of IoT in Warehouse Management is likely to increase the market growth during the forecast period. However, high installation and maintenance costs impede the growth of the market over the forecast period of 2021-2027.

The key regions considered for the global IoT in Warehouse Management market study includes Asia Pacific, North America, Europe, Latin America and Rest of the World. North America is the leading/significant region across the world in terms of market share owing to growing penetration of automation. Whereas, Asia-Pacific is also anticipated to exhibit highest growth rate / CAGR over the forecast period 2021-2027. Factors such as rising Logistics and transportation market, growing demand for connected devices would create lucrative growth prospects for the IoT in Warehouse Management market across Asia-Pacific region.

Major market player included in this report are:
Omnitracs LLC. IBM Corporation
Software AG
Cisco Systems Inc.
UltraShipTMS
TECSYS Inc.
HCL Technologies Limited
Intel Corporation
PTC Incorporation
Eurotech SpA
Oracle Corporation
The objective of the study is to define market sizes of different segments & countries in recent years and to forecast the values to the coming eight years. The report is designed to incorporate both qualitative and quantitative aspects of the industry within each of the regions and countries involved in the study. Furthermore, the report also caters the detailed information about the crucial aspects such as driving factors & challenges which will define the future growth of the market. Additionally, the report shall also incorporate available opportunities in micro markets for stakeholders to invest along with the detailed analysis of competitive landscape and product offerings of key players. The detailed segments and sub-segment of the market are explained below:
By Solutions:
Warehouse automation
Workforce management
Inventory management
Electronic data interchange (EDI)
Tracking
By Device:
Sensing devices
Gateways
By Service:
User-Based Insurance
3PL

By Region:
North America
U.S.
Canada
Europe
UK
Germany
France
Spain
Italy
ROE

Asia Pacific
China
India
Japan
Australia
South Korea
RoAPAC
Latin America
Brazil
Mexico
Rest of the World

Furthermore, years considered for the study are as follows:

Historical year – 2018, 2019
Base year – 2020
Forecast period – 2021 to 2027

Target Audience of the Global IoT in Warehouse Management Market in Market Study:

Key Consulting Companies & Advisors
Large, medium-sized, and small enterprises
Venture capitalists
Value-Added Resellers (VARs)
Third-party knowledge providers
Investment bankers
Investors

Chapter 1. Executive Summary
1.1. Market Snapshot
1.2. Global & Segmental Market Estimates & Forecasts, 2019-2027 (USD Billion)
1.2.1. IoT in Warehouse Management Market, by Region, 2019-2027 (USD Billion)
1.2.2. IoT in Warehouse Management Market, by Solutions, 2019-2027 (USD Billion)
1.2.3. IoT in Warehouse Management Market, by Device, 2019-2027 (USD Billion)
1.2.4. IoT in Warehouse Management Market, by Service, 2019-2027 (USD Billion)
1.3. Key Trends
1.4. Estimation Methodology
1.5. Research Assumption
Chapter 2. Global IoT in Warehouse Management Market Definition and Scope
2.1. Objective of the Study
2.2. Market Definition & Scope
2.2.1. Scope of the Study
2.2.2. Industry Evolution
2.3. Years Considered for the Study
2.4. Currency Conversion Rates
Chapter 3. Global IoT in Warehouse Management Market Dynamics
3.1. IoT in Warehouse Management Market Impact Analysis (2019-2027)
3.1.1. Market Drivers
3.1.1.1. Growing Logistics and Transportation Market
3.1.1.2. Increasing applications of connected devices
3.1.2. Market Challenges
3.1.2.1. High installation and Maintenance Cost
3.1.3. Market Opportunities
3.1.3.1. Growing adoption of IoT in Transportation

Chapter 4. Global IoT in Warehouse Management Market Industry Analysis
4.1. Porter’s 5 Force Model
4.1.1. Bargaining Power of Suppliers
4.1.2. Bargaining Power of Buyers
4.1.3. Threat of New Entrants
4.1.4. Threat of Substitutes
4.1.5. Competitive Rivalry
4.1.6. Futuristic Approach to Porter’s 5 Force Model (2018-2027)
4.2. PEST Analysis
4.2.1. Political
4.2.2. Economical
4.2.3. Social
4.2.4. Technological
4.3. Investment Adoption Model
4.4. Analyst Recommendation & Conclusion
4.5. Top investment opportunity
4.6. Top winning strategies
Chapter 5. Risk Assessment: COVID-19 Impact
5.1.1. Assessment of the overall impact of COVID-19 on the industry
5.1.2. Pre COVID-19 and post COVID-19 market scenario
Chapter 6. Global IoT in Warehouse Management Market, by Solutions
6.1. Market Snapshot
6.2. Global IoT in Warehouse Management Market by Solutions, Performance – Potential Analysis
6.3. Global IoT in Warehouse Management Market Estimates & Forecasts by Solutions 2018-2027 (USD Billion)
6.4. IoT in Warehouse Management Market, Sub Segment Analysis
6.4.1. Warehouse automation
6.4.2. Workforce management
6.4.3. Inventory management
6.4.4. Electronic data interchange (EDI)
6.4.5. Tracking

Chapter 7. Global IoT in Warehouse Management Market, by Device
7.1. Market Snapshot
7.2. Global IoT in Warehouse Management Market by Device, Performance – Potential Analysis
7.3. Global IoT in Warehouse Management Market Estimates & Forecasts by Device 2018-2027 (USD Billion)
7.4. IoT in Warehouse Management Market, Sub Segment Analysis
7.4.1. Sensing devices
7.4.2. Gateways
Chapter 8. Global IoT in Warehouse Management Market, by Service
8.1. Market Snapshot
8.2. Global IoT in Warehouse Management Market by Service, Performance – Potential Analysis
8.3. Global IoT in Warehouse Management Market Estimates & Forecasts by Service 2018-2027 (USD Billion)
8.4. IoT in Warehouse Management Market, Sub Segment Analysis
8.4.1. Usage-based insurance
8.4.2. 3PL

Chapter 9. Global IoT in Warehouse Management Market, Regional Analysis
9.1. IoT in Warehouse Management Market, Regional Market Snapshot
9.2. North America IoT in Warehouse Management Market
9.2.1. U.S. IoT in Warehouse Management Market
9.2.1.1. Solutions breakdown estimates & forecasts, 2018-2027
9.2.1.2. Device breakdown estimates & forecasts, 2018-2027
9.2.1.3. Service breakdown estimates & forecasts, 2018-2027
9.2.2. Canada IoT in Warehouse Management Market
9.3. Europe IoT in Warehouse Management Market Snapshot
9.3.1. U.K. IoT in Warehouse Management Market
9.3.2. Germany IoT in Warehouse Management Market
9.3.3. France IoT in Warehouse Management Market
9.3.4. Spain IoT in Warehouse Management Market
9.3.5. Italy IoT in Warehouse Management Market
9.3.6. Rest of Europe IoT in Warehouse Management Market
9.4. Asia-Pacific IoT in Warehouse Management Market Snapshot
9.4.1. China IoT in Warehouse Management Market
9.4.2. India IoT in Warehouse Management Market
9.4.3. Japan IoT in Warehouse Management Market
9.4.4. Australia IoT in Warehouse Management Market
9.4.5. South Korea IoT in Warehouse Management Market
9.4.6. Rest of Asia Pacific IoT in Warehouse Management Market
9.5. Latin America IoT in Warehouse Management Market Snapshot
9.5.1. Brazil IoT in Warehouse Management Market
9.5.2. Mexico IoT in Warehouse Management Market
9.6. Rest of The World IoT in Warehouse Management Market

Chapter 10. Competitive Intelligence
10.1. Top Market Strategies
10.2. Company Profiles
10.2.1. Omnitracs LLC. IBM Corporation

10.2.1.1. Key Information
10.2.1.2. Overview
10.2.1.3. Financial (Subject to Data Availability)
10.2.1.4. Product Summary
10.2.1.5. Recent Developments
10.2.2. Software AG
10.2.3. Cisco Systems Inc.
10.2.4. UltraShipTMS
10.2.5. TECSYS Inc.
10.2.6. HCL Technologies Limited
10.2.7. Intel Corporation
10.2.8. PTC Incorporation
10.2.9. Eurotech SpA
10.2.10. Oracle Corporation

Chapter 11. Research Process
11.1. Research Process
11.1.1. Data Mining
11.1.2. Analysis
11.1.3. Market Estimation
11.1.4. Validation
11.1.5. Publishing
11.2. Research Attributes
11.3. Research Assumption

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Market driving trends and favorable economic conditions
Restraints and challenges that are expected to be encountered during the forecast period.
Anticipated opportunities for growth and development
Technological advancements and projected developments in the market
Consumer spending trends and dynamics
Shifts in consumer preferences and behaviors.
The current state of raw materials and trends in supply versus pricing
Regulatory landscape and expected changes or developments.
The existing capacity in the market and any expected additions or expansions up to the end of the forecast period.
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