Generative AI in Logistics Market Synopsis
The Global Generative AI in Logistics Market size was valued at USD 525 Million in 2023 and is projected to reach USD 3,951.73 Million by 2030, growing at a CAGR of 28.70% from 2023 to 2030.
Generative AI is revolutionizing logistics by improving demand forecasting, inventory management, route planning and warehouse operations. It uses algorithms and machine learning to optimize supply chains, improve predictability and increase industrial precision.
- Generative AI can significantly improve logistics by accurately predicting customer demand. By analyzing historical data on customer orders and usage patterns, generative artificial intelligence can predict fluctuations in demand and enable logistics companies to proactively stock needed products. This proactive approach reduces costs and improves overall efficiency by minimizing the risk of inventory or overstocking.
- Optimization of route planning and delivery logistics is another valuable application of generative artificial intelligence in the logistics industry. By examining various factors such as delivery points, periods and frequency, generative AI can identify the most efficient delivery routes and anticipate potential disruptions or delays. This streamlines the delivery process and ensures timely and cost-effective ordering.
- Inventory management also benefits from generative artificial intelligence. By analyzing product data, inventory and customer demand, generative AI enables optimal inventory and replenishment strategies. This ensures that warehouses are well stocked, minimizing the likelihood of items being out of stock or underutilized, ultimately improving overall operational efficiency.
- Generative AI can improve pricing strategies by considering several factors such as customer data, inventory, transportation costs and competition. Using this information, companies can set optimal prices for their products and services, which ensures competitiveness in the market and maximizes profit.
Top Key Players Involved Are:
"IBM Corporation (US), Google LLC (US), Amazon Web Services Inc. (US), Microsoft Corporation (US), Oracle Corporation (US), SAP SE (Germany), Intel Corporation (US), Nvidia Corporation (US), Cognizant Technology Solutions Corp. (US), Accenture PLC (Ireland), JDA Software Group Inc. (US), Blue Yonder (US), LLamasoft Inc. (US), Manhattan Associates Inc. (US), Infor Inc. (US), Kinaxis Inc. (Canada), Salesforce.com Inc. (US), Honeywell International Inc. (US), SAS Institute Inc. (US), Zebra Technologies Corporation (US) and other major players."
The Generative AI in Logistics Market Trend Analysis
Real-Time Insights for Agile Decision-Making
- The demand for real-time insight is critical for logistics companies to navigate the dynamic and rapidly evolving business environment. With generative AI, these companies can access and analyze data in real-time, allowing them to make informed decisions quickly. Real-time data analysis gives logistics companies a comprehensive view of market conditions, customer demands and supply chain disruptions, allowing them to respond quickly and efficiently.
- Using advanced algorithms and machine learning techniques, generative AI quickly identifies patterns, correlations and trends in data. In this way, logistics companies can receive valuable information about customer preferences, market dynamics and operational performance in real-time.
- Real-time overview enables proactive logistics decisions. Detecting changes in customer behaviour, predicting changes in demand and responding to supply chain disruptions quickly optimizes operations, simplifies processes and improves the customer experience. Generative artificial intelligence transforms data into actionable intelligence that ensures the competitiveness and flexibility of logistics.
Efficient Warehouse Management and Replenishment
- Smooth management of inventory and replenishment processes means optimizing inventory operations and efficient processing and timely replenishment. This requires implementing systems, technologies and strategies that minimize waste, improve inventory accuracy and improve overall operational efficiency.
- Various techniques and technologies can be used for smooth inventory management. This includes using warehouse management systems (WMS) to automate processes such as receiving, picking, packing and shipping. It may also require the implementation of barcode or RFID tracking systems to improve inventory visibility and improve accurate inventory management. By streamlining warehouse operations, companies can reduce errors, eliminate inefficiencies and speed up order fulfilment, ultimately improving customer satisfaction.
- Stock replenishment is another important part of inventory management. This includes monitoring inventory levels, forecasting demand and ensuring timely replenishment to avoid stockouts or overstocking. By leveraging data analytics and demand forecasting tools, companies can optimize inventory levels, minimize costs, and maintain an uninterrupted supply of products to effectively meet customer needs.
Segmentation Analysis Of The Generative AI in Logistics Market
Generative AI in Logistics market segments covers the Type, Component, Deployment Mode, and Application. By Application, the Route Optimization segment is Anticipated to Dominate the Market Over the Forecast period.
- Generative AI route optimization in logistics involves the use of algorithms and machine learning techniques to identify the most efficient and optimal transport and delivery routes. By analyzing data such as customer locations, delivery points, modes of transportation and delivery time windows, generative AI can create optimized routes that minimize distance travelled, reduce fuel consumption and optimize delivery schedules.
- Generative AI algorithms can consider various factors such as real-time traffic updates, road conditions, vehicle capacity and delivery constraints to dynamically adjust and optimize routes. It helps logistics companies improve operational efficiency, reduce transportation costs and increase customer satisfaction by ensuring on-time deliveries.
- Route optimization in generative artificial intelligence also allows companies to proactively identify potential interruptions or delays in the delivery process, which enables better contingency planning and proactive customer communication. By optimizing routes, logistics companies can achieve savings, increase productivity and improve overall logistics.
Regional Analysis of The Generative AI in Logistics Market
North America is Expected to Dominate the Market Over the Forecast Period.
- The North American logistics generative AI market is experiencing significant growth and adoption. With a strong presence of technology companies, advanced infrastructure and a highly developed logistics industry, North America is a key region for the application of generative artificial intelligence in logistics.
- Generative AI in North American logistics offers several benefits, including improved demand forecasting, optimized route planning, better inventory management and efficient inventory replenishment. Companies in the region are using generative artificial intelligence technologies to gain insights from big data, optimize supply chain operations and improve customer satisfaction.
- North America is seeing increasing investment and collaboration in generative AI logistics. Major players in the region are investing in R&D to develop advanced generative AI solutions tailored to the logistics industry. In North America, generative AI is expected to continue to grow in the logistics market due to its focus on innovation and technology adoption.
Source: Statista
According to the data, UPS Supply Chain Logistics was first among the leading logistics companies in North America based on its net sales in 2021. UPS achieved a significant net profit of seven billion dollars and became the industry leader. This ranking underlines the company's significant financial success and underscores its dominant position in the North American logistics market this year.
Covid-19 Impact Analysis On Generative AI in Logistics Market
- The COVID-19 pandemic has harmed several sectors, including generative artificial intelligence in the logistics market. One major setback has been the disruption to global supply chains caused by shutdowns and travel restrictions imposed to contain the spread of the virus.
- These disruptions caused delays in the delivery of goods and increased logistical challenges for companies. The unpredictability and instability of the pandemic have negatively affected generative artificial intelligence, which uses large data sets and real-time information to optimize logistics operations.
- The economic downturn caused by the pandemic has forced many companies to reduce investments in new technologies such as generative artificial intelligence. Companies had to prioritize their immediate operational needs and savings measures, which leaves little room for experimentation and the introduction of new logistics solutions based on artificial intelligence.
Top Key Players Covered in The Generative AI in Logistics Market
- IBM Corporation (US)
- Google LLC (US)
- Amazon Web Services Inc. (US)
- Microsoft Corporation (US)
- Oracle Corporation (US)
- SAP SE (Germany)
- Intel Corporation (US)
- Nvidia Corporation (US)
- Cognizant Technology Solutions Corp. (US)
- Accenture PLC (Ireland)
- JDA Software Group Inc. (US)
- Blue Yonder (US)
- LLamasoft Inc. (US)
- Manhattan Associates Inc. (US)
- Infor Inc. (US)
- Kinaxis Inc. (Canada)
- com Inc. (US)
- Honeywell International Inc. (US)
- SAS Institute Inc. (US)
- Zebra Technologies Corporation (US)
Key Industry Developments in the Generative AI in Logistics Market
In June 2023, Accenture Ventures recently made a significant strategic investment in Parfin. This investment by Accenture in Parfin is the first “Project Spotlight" investment by Accenture Ventures in the Latin American region.
In June 2023, IBM expanded its long-standing partnership with Adobe to help brands successfully accelerate their content supply chains by deploying next-generation artificial intelligence, including Adobe Sensei GenAI services and Adobe Firefly (currently in beta), Adobe's family of creative AI models.
In May 2023, Intel and SAP SE collaborated to deliver more efficient and sustainable SAP® software landscapes in the cloud. Designed to help customers improve the scalability, flexibility and consolidation of their current SAP software environments. The collaboration deepens Intel's focus on delivering highly efficient and secure SAP instances with 4th generation Intel® Xeon® Scalable processors.
Global Generative AI in Logistics Market
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Base Year:
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2022
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Forecast Period:
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2023-2030
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Historical Data:
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2016 to 2021
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Market Size in 2023:
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USD 525 Mn.
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Forecast Period 2023-30 CAGR:
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28.70%
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Market Size in 2030:
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USD 3,951.73 Mn.
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Segments Covered:
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By Type
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- Predictive Analytics
- Prescriptive Analytics
- Cognitive Computing
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By Component
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- Software
- Hardware
- Services
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By Deployment Mode
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By Application
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- Route Optimization
- Inventory Management
- Warehouse Management
- Supply Chain Analytics
- Last-Mile Delivery Optimization
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By Region
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- North America (U.S., Canada, Mexico)
- Eastern Europe (Bulgaria, The Czech Republic, Hungary, Poland, Romania, Rest of Eastern Europe)
- Western Europe (Germany, UK, France, Netherlands, Italy, Russia, Spain, Rest of Western Europe)
- Asia Pacific (China, India, Japan, South Korea, Malaysia, Thailand, Vietnam, The Philippines, Australia, New Zealand, Rest of APAC)
- Middle East & Africa (Turkey, Bahrain, Kuwait, Saudi Arabia, Qatar, UAE, Israel, South Africa)
- South America (Brazil, Argentina, Rest of SA)
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Chapter 1: Introduction
1.1 Research Objectives
1.2 Research Methodology
1.3 Research Process
1.4 Scope and Coverage
1.4.1 Market Definition
1.4.2 Key Questions Answered
1.5 Market Segmentation
Chapter 2:Executive Summary
Chapter 3:Growth Opportunities By Segment
3.1 By Type
3.2 By Component
3.3 By Deployment Mode
3.4 By Application
Chapter 4: Market Landscape
4.1 Porter's Five Forces Analysis
4.1.1 Bargaining Power of Supplier
4.1.2 Threat of New Entrants
4.1.3 Threat of Substitutes
4.1.4 Competitive Rivalry
4.1.5 Bargaining Power Among Buyers
4.2 Industry Value Chain Analysis
4.3 Market Dynamics
4.3.1 Drivers
4.3.2 Restraints
4.3.3 Opportunities
4.5.4 Challenges
4.4 Pestle Analysis
4.5 Technological Roadmap
4.6 Regulatory Landscape
4.7 SWOT Analysis
4.8 Price Trend Analysis
4.9 Patent Analysis
4.10 Analysis of the Impact of Covid-19
4.10.1 Impact on the Overall Market
4.10.2 Impact on the Supply Chain
4.10.3 Impact on the Key Manufacturers
4.10.4 Impact on the Pricing
Chapter 5: Generative AI in Logistics Market by Type
5.1 Generative AI in Logistics Market Overview Snapshot and Growth Engine
5.2 Generative AI in Logistics Market Overview
5.3 Predictive Analytics
5.3.1 Introduction and Market Overview
5.3.2 Historic and Forecasted Market Size (2016-2030F)
5.3.3 Key Market Trends, Growth Factors and Opportunities
5.3.4 Predictive Analytics: Geographic Segmentation
5.4 Prescriptive Analytics
5.4.1 Introduction and Market Overview
5.4.2 Historic and Forecasted Market Size (2016-2030F)
5.4.3 Key Market Trends, Growth Factors and Opportunities
5.4.4 Prescriptive Analytics: Geographic Segmentation
5.5 Cognitive Computing
5.5.1 Introduction and Market Overview
5.5.2 Historic and Forecasted Market Size (2016-2030F)
5.5.3 Key Market Trends, Growth Factors and Opportunities
5.5.4 Cognitive Computing: Geographic Segmentation
Chapter 6: Generative AI in Logistics Market by Component
6.1 Generative AI in Logistics Market Overview Snapshot and Growth Engine
6.2 Generative AI in Logistics Market Overview
6.3 Software
6.3.1 Introduction and Market Overview
6.3.2 Historic and Forecasted Market Size (2016-2030F)
6.3.3 Key Market Trends, Growth Factors and Opportunities
6.3.4 Software: Geographic Segmentation
6.4 Hardware
6.4.1 Introduction and Market Overview
6.4.2 Historic and Forecasted Market Size (2016-2030F)
6.4.3 Key Market Trends, Growth Factors and Opportunities
6.4.4 Hardware: Geographic Segmentation
6.5 Services
6.5.1 Introduction and Market Overview
6.5.2 Historic and Forecasted Market Size (2016-2030F)
6.5.3 Key Market Trends, Growth Factors and Opportunities
6.5.4 Services: Geographic Segmentation
Chapter 7: Generative AI in Logistics Market by Deployment Mode
7.1 Generative AI in Logistics Market Overview Snapshot and Growth Engine
7.2 Generative AI in Logistics Market Overview
7.3 On-Premises
7.3.1 Introduction and Market Overview
7.3.2 Historic and Forecasted Market Size (2016-2030F)
7.3.3 Key Market Trends, Growth Factors and Opportunities
7.3.4 On-Premises: Geographic Segmentation
7.4 Cloud-based
7.4.1 Introduction and Market Overview
7.4.2 Historic and Forecasted Market Size (2016-2030F)
7.4.3 Key Market Trends, Growth Factors and Opportunities
7.4.4 Cloud-based: Geographic Segmentation
Chapter 8: Generative AI in Logistics Market by Application
8.1 Generative AI in Logistics Market Overview Snapshot and Growth Engine
8.2 Generative AI in Logistics Market Overview
8.3 Route Optimization
8.3.1 Introduction and Market Overview
8.3.2 Historic and Forecasted Market Size (2016-2030F)
8.3.3 Key Market Trends, Growth Factors and Opportunities
8.3.4 Route Optimization: Geographic Segmentation
8.4 Inventory Management
8.4.1 Introduction and Market Overview
8.4.2 Historic and Forecasted Market Size (2016-2030F)
8.4.3 Key Market Trends, Growth Factors and Opportunities
8.4.4 Inventory Management: Geographic Segmentation
8.5 Warehouse Management
8.5.1 Introduction and Market Overview
8.5.2 Historic and Forecasted Market Size (2016-2030F)
8.5.3 Key Market Trends, Growth Factors and Opportunities
8.5.4 Warehouse Management: Geographic Segmentation
8.6 Supply Chain Analytics
8.6.1 Introduction and Market Overview
8.6.2 Historic and Forecasted Market Size (2016-2030F)
8.6.3 Key Market Trends, Growth Factors and Opportunities
8.6.4 Supply Chain Analytics: Geographic Segmentation
8.7 Last-Mile Delivery Optimization
8.7.1 Introduction and Market Overview
8.7.2 Historic and Forecasted Market Size (2016-2030F)
8.7.3 Key Market Trends, Growth Factors and Opportunities
8.7.4 Last-Mile Delivery Optimization: Geographic Segmentation
Chapter 9: Company Profiles and Competitive Analysis
9.1 Competitive Landscape
9.1.1 Competitive Positioning
9.1.2 Generative AI in Logistics Sales and Market Share By Players
9.1.3 Industry BCG Matrix
9.1.4 Heat Map Analysis
9.1.5 Generative AI in Logistics Industry Concentration Ratio (CR5 and HHI)
9.1.6 Top 5 Generative AI in Logistics Players Market Share
9.1.7 Mergers and Acquisitions
9.1.8 Business Strategies By Top Players
9.2 IBM CORPORATION (US)
9.2.1 Company Overview
9.2.2 Key Executives
9.2.3 Company Snapshot
9.2.4 Operating Business Segments
9.2.5 Product Portfolio
9.2.6 Business Performance
9.2.7 Key Strategic Moves and Recent Developments
9.2.8 SWOT Analysis
9.3 GOOGLE LLC (US)
9.4 AMAZON WEB SERVICES INC. (US)
9.5 MICROSOFT CORPORATION (US)
9.6 ORACLE CORPORATION (US)
9.7 SAP SE (GERMANY)
9.8 INTEL CORPORATION (US)
9.9 NVIDIA CORPORATION (US)
9.10 COGNIZANT TECHNOLOGY SOLUTIONS CORP. (US)
9.11 ACCENTURE PLC (IRELAND)
9.12 JDA SOFTWARE GROUP INC. (US)
9.13 BLUE YONDER (US)
9.14 LLAMASOFT INC. (US)
9.15 MANHATTAN ASSOCIATES INC. (US)
9.16 INFOR INC. (US)
9.17 KINAXIS INC. (CANADA)
9.18 SALESFORCE.COM INC. (US)
9.19 HONEYWELL INTERNATIONAL INC. (US)
9.20 SAS INSTITUTE INC. (US)
9.21 ZEBRA TECHNOLOGIES CORPORATION (US)
9.22 OTHER MAJOR PLAYERS
Chapter 10: Global Generative AI in Logistics Market Analysis, Insights and Forecast, 2016-2030
10.1 Market Overview
10.2 Historic and Forecasted Market Size By Type
10.2.1 Predictive Analytics
10.2.2 Prescriptive Analytics
10.2.3 Cognitive Computing
10.3 Historic and Forecasted Market Size By Component
10.3.1 Software
10.3.2 Hardware
10.3.3 Services
10.4 Historic and Forecasted Market Size By Deployment Mode
10.4.1 On-Premises
10.4.2 Cloud-based
10.5 Historic and Forecasted Market Size By Application
10.5.1 Route Optimization
10.5.2 Inventory Management
10.5.3 Warehouse Management
10.5.4 Supply Chain Analytics
10.5.5 Last-Mile Delivery Optimization
Chapter 11: North America Generative AI in Logistics Market Analysis, Insights and Forecast, 2016-2030
11.1 Key Market Trends, Growth Factors and Opportunities
11.2 Impact of Covid-19
11.3 Key Players
11.4 Key Market Trends, Growth Factors and Opportunities
11.4 Historic and Forecasted Market Size By Type
11.4.1 Predictive Analytics
11.4.2 Prescriptive Analytics
11.4.3 Cognitive Computing
11.5 Historic and Forecasted Market Size By Component
11.5.1 Software
11.5.2 Hardware
11.5.3 Services
11.6 Historic and Forecasted Market Size By Deployment Mode
11.6.1 On-Premises
11.6.2 Cloud-based
11.7 Historic and Forecasted Market Size By Application
11.7.1 Route Optimization
11.7.2 Inventory Management
11.7.3 Warehouse Management
11.7.4 Supply Chain Analytics
11.7.5 Last-Mile Delivery Optimization
11.8 Historic and Forecast Market Size by Country
11.8.1 US
11.8.2 Canada
11.8.3 Mexico
Chapter 12: Eastern Europe Generative AI in Logistics Market Analysis, Insights and Forecast, 2016-2030
12.1 Key Market Trends, Growth Factors and Opportunities
12.2 Impact of Covid-19
12.3 Key Players
12.4 Key Market Trends, Growth Factors and Opportunities
12.4 Historic and Forecasted Market Size By Type
12.4.1 Predictive Analytics
12.4.2 Prescriptive Analytics
12.4.3 Cognitive Computing
12.5 Historic and Forecasted Market Size By Component
12.5.1 Software
12.5.2 Hardware
12.5.3 Services
12.6 Historic and Forecasted Market Size By Deployment Mode
12.6.1 On-Premises
12.6.2 Cloud-based
12.7 Historic and Forecasted Market Size By Application
12.7.1 Route Optimization
12.7.2 Inventory Management
12.7.3 Warehouse Management
12.7.4 Supply Chain Analytics
12.7.5 Last-Mile Delivery Optimization
12.8 Historic and Forecast Market Size by Country
12.8.1 Bulgaria
12.8.2 The Czech Republic
12.8.3 Hungary
12.8.4 Poland
12.8.5 Romania
12.8.6 Rest of Eastern Europe
Chapter 13: Western Europe Generative AI in Logistics Market Analysis, Insights and Forecast, 2016-2030
13.1 Key Market Trends, Growth Factors and Opportunities
13.2 Impact of Covid-19
13.3 Key Players
13.4 Key Market Trends, Growth Factors and Opportunities
13.4 Historic and Forecasted Market Size By Type
13.4.1 Predictive Analytics
13.4.2 Prescriptive Analytics
13.4.3 Cognitive Computing
13.5 Historic and Forecasted Market Size By Component
13.5.1 Software
13.5.2 Hardware
13.5.3 Services
13.6 Historic and Forecasted Market Size By Deployment Mode
13.6.1 On-Premises
13.6.2 Cloud-based
13.7 Historic and Forecasted Market Size By Application
13.7.1 Route Optimization
13.7.2 Inventory Management
13.7.3 Warehouse Management
13.7.4 Supply Chain Analytics
13.7.5 Last-Mile Delivery Optimization
13.8 Historic and Forecast Market Size by Country
13.8.1 Germany
13.8.2 UK
13.8.3 France
13.8.4 Netherlands
13.8.5 Italy
13.8.6 Russia
13.8.7 Spain
13.8.8 Rest of Western Europe
Chapter 14: Asia Pacific Generative AI in Logistics Market Analysis, Insights and Forecast, 2016-2030
14.1 Key Market Trends, Growth Factors and Opportunities
14.2 Impact of Covid-19
14.3 Key Players
14.4 Key Market Trends, Growth Factors and Opportunities
14.4 Historic and Forecasted Market Size By Type
14.4.1 Predictive Analytics
14.4.2 Prescriptive Analytics
14.4.3 Cognitive Computing
14.5 Historic and Forecasted Market Size By Component
14.5.1 Software
14.5.2 Hardware
14.5.3 Services
14.6 Historic and Forecasted Market Size By Deployment Mode
14.6.1 On-Premises
14.6.2 Cloud-based
14.7 Historic and Forecasted Market Size By Application
14.7.1 Route Optimization
14.7.2 Inventory Management
14.7.3 Warehouse Management
14.7.4 Supply Chain Analytics
14.7.5 Last-Mile Delivery Optimization
14.8 Historic and Forecast Market Size by Country
14.8.1 China
14.8.2 India
14.8.3 Japan
14.8.4 South Korea
14.8.5 Malaysia
14.8.6 Thailand
14.8.7 Vietnam
14.8.8 The Philippines
14.8.9 Australia
14.8.10 New Zealand
14.8.11 Rest of APAC
Chapter 15: Middle East & Africa Generative AI in Logistics Market Analysis, Insights and Forecast, 2016-2030
15.1 Key Market Trends, Growth Factors and Opportunities
15.2 Impact of Covid-19
15.3 Key Players
15.4 Key Market Trends, Growth Factors and Opportunities
15.4 Historic and Forecasted Market Size By Type
15.4.1 Predictive Analytics
15.4.2 Prescriptive Analytics
15.4.3 Cognitive Computing
15.5 Historic and Forecasted Market Size By Component
15.5.1 Software
15.5.2 Hardware
15.5.3 Services
15.6 Historic and Forecasted Market Size By Deployment Mode
15.6.1 On-Premises
15.6.2 Cloud-based
15.7 Historic and Forecasted Market Size By Application
15.7.1 Route Optimization
15.7.2 Inventory Management
15.7.3 Warehouse Management
15.7.4 Supply Chain Analytics
15.7.5 Last-Mile Delivery Optimization
15.8 Historic and Forecast Market Size by Country
15.8.1 Turkey
15.8.2 Bahrain
15.8.3 Kuwait
15.8.4 Saudi Arabia
15.8.5 Qatar
15.8.6 UAE
15.8.7 Israel
15.8.8 South Africa
Chapter 16: South America Generative AI in Logistics Market Analysis, Insights and Forecast, 2016-2030
16.1 Key Market Trends, Growth Factors and Opportunities
16.2 Impact of Covid-19
16.3 Key Players
16.4 Key Market Trends, Growth Factors and Opportunities
16.4 Historic and Forecasted Market Size By Type
16.4.1 Predictive Analytics
16.4.2 Prescriptive Analytics
16.4.3 Cognitive Computing
16.5 Historic and Forecasted Market Size By Component
16.5.1 Software
16.5.2 Hardware
16.5.3 Services
16.6 Historic and Forecasted Market Size By Deployment Mode
16.6.1 On-Premises
16.6.2 Cloud-based
16.7 Historic and Forecasted Market Size By Application
16.7.1 Route Optimization
16.7.2 Inventory Management
16.7.3 Warehouse Management
16.7.4 Supply Chain Analytics
16.7.5 Last-Mile Delivery Optimization
16.8 Historic and Forecast Market Size by Country
16.8.1 Brazil
16.8.2 Argentina
16.8.3 Rest of SA
Chapter 17 Investment Analysis
Chapter 18 Analyst Viewpoint and Conclusion