Published February 2022 | 540 pages, 22 figures, 72 tables | Table of contents
The development of artificial intelligence (AI) technologies is growing rapidly and transforming the global economy. AI uses data and algorithms to replicate human decision/thinking ability and can optimise the efficiency, precision, and performance of many existing technologies.
AI and human‐machine interaction, in combination with other digitisation technologies, are being increasingly utilized in production and logistics as well as the analysis of markets, customer behaviour, and sales. Advances in machine learning and neural networks have completely changed the AI technology environment over the past decade and the he availability of huge datasets and technology advances in Big Data, the Internet of Things (IoT) and fast connectivity have enabled new AI systems and services, digital assistants, robots and drones.
The development and application of these technologies is an industry in its own right, but AI is also transforming business models across many sectors such as financial services, Information and Communication Technology (ICT), Life Science, Retail, Healthcare, Industrial Manufacturing, Automotive, Security, Oil & Gas, and Chemicals.
Report contents include:
- Artificial intelligence (AI) technology analysis.
- Analysis of the global market and technologies for artificial intelligence (AI).
- Artificial intelligence (AI) value chain, by industry.
- Revenues for artificial intelligence (AI) technologies and markets.
- Market outlook over the next 10 years and beyond.
- Discussion on market drivers, restraints, current trends and investments in the artificial intelligence market
- Analysis of recent mergers & acquisitions, joint ventures, collaborations or partnerships, funding, investments and significant news, from 2020-2022.
- In depth market analysis of AI in manufacturing, automotive and transportation, construction, energy, education, chemicals, medical devices & healthcare, food & agriculture, financial services, smart homes, consumer devices, retail, sales & CRM, waste management, Information & communications technology (ICT), computer vision & facial recognition, AI processors, cybersecurity and electronic noses.
- Competitive landscape including key AI players
- Global government AI initiatives, policy & regulations
- In depth profiles of 400 companies. Profiles include technology focus, products, markets targeted, funding and investors. Companies profiled include Spectrum Labs, 6sense, 7bridges, Personetics, Scale AI, Cohere, Babylon Health, Hive, XtalPi, ASAPP, Aibee, SmartMore, BenevolentAI, iCarbonX, Globality, Intellifusion, Groq Inc, Entos, Holomatic, Covariant, AiFi, Nnaisense etc.
1 EXECUTIVE SUMMARY 28
- 1.1 What is Artificial Intelligence (AI)? 28
- 1.1.1 Artificial Narrow Intelligence 31
- 1.1.2 Artificial General Intelligence 32
- 1.1.3 Artificial Super Intelligence 33
- 1.2 Current market for AI 33
- 1.2.1 Key trends in AI in 2021 35
- 1.2.2 Maturity level of AI by industry 38
- 1.2.3 Market revenues forecast by industry 2020-2030, billions USD 40
- 1.2.4 Global AI software revenues 2020-2030, billions USD 41
- 1.2.5 Global AI Hardware revenues 2020-2030, billions USD 42
- 1.3 Market outlook five years 42
- 1.4 Market outlook ten years and beyond 43
- 1.4.1 AI players and target markets 45
- 1.4.2 Publicly listed AI companies 46
- 1.5 Market challenges 51
2 TECHNOLOGY ANALYSIS 52
- 2.1 AI networks and tools 52
- 2.2 Types of Artificial Intelligence 54
- 2.2.1 AI Based on Functionality 54
- 2.2.2 AI Based on Capability 56
- 2.3 Key Technologies of Artificial Intelligence 58
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- 2.3.1 Machine learning 59
- 2.3.1.1 Supervised learning 59
- 2.3.1.2 Unsupervised learning 60
- 2.3.1.3 Reinforcement learning 60
- 2.3.1.4 Graph machine learning 62
- 2.3.1.5 Tiny machine learning (TinyML) 63
- 2.3.1.6 Deep learning 64
- 2.3.1.6.1 Neural Networks 64
- 2.3.1.6.1.1 Transformer neural networks 65
- 2.3.1.6.1 Neural Networks 64
- 2.3.2 Computer vision 66
- 2.3.3 Natural Language Processing 67
- 2.3.4 Robotics 69
- 2.3.5 Knowledge-based systems 70
- 2.3.6 Optimisation 70
- 2.3.7 Hybrid AI Systems 71
- 2.3.8 No-code AI 76
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3 MARKETS AND APPLICATIONS 79
- 3.1 Market trends and drivers 79
- 3.2 Recent market developments in Artificial Intelligence 2020-2022 81
- 3.3 AI Funding and investments 2020-2022 87
- 3.4 AI in Manufacturing 97
- 3.4.1 Market drivers 97
- 3.4.2 AI in the manufacturing value chain 98
- 3.4.3 Applications 99
- 3.4.3.1 Inspection systems and Predictive & Preventative Maintenance 100
- 3.4.3.2 Worker safety 101
- 3.4.3.3 Supply chain & logistics 102
- 3.4.3.4 Robotics 104
- 3.4.3.5 Quality control 104
- 3.4.4 Companies 106
- 3.5 AI in Automotive and Transportation 108
- 3.5.1 Market drivers 109
- 3.5.2 AI in the automotive value chain 109
- 3.5.3 Applications 110
- 3.5.3.1 AI in Automotive Manufacturing 111
- 3.5.3.1.1 Companies 112
- 3.5.3.2 Autonomous vehicles 112
- 3.5.3.2.1 Deep learning-based image recognition for autonomous driving 114
- 3.5.3.2.2 Hybrid AI 115
- 3.5.3.2.3 Companies 115
- 3.5.3.3 Vehicle fleet management 116
- 3.5.3.3.1 Companies 116
- 3.5.3.4 Rail 119
- 3.5.3.5 Aviation 120
- 3.5.3.1 AI in Automotive Manufacturing 111
- 3.6 AI in Construction 122
- 3.6.1 Market drivers 122
- 3.6.2 AI in the construction value chain 122
- 3.6.3 Applications 123
- 3.6.3.1 Resource and waste optimisation 124
- 3.6.3.2 Supply chain management 124
- 3.6.3.3 Health and safety 124
- 3.6.3.4 Construction site analytics 125
- 3.6.4 Companies 125
- 3.7 AI in Energy 127
- 3.7.1 Market drivers 127
- 3.7.2 AI in the energy value chain 128
- 3.7.3 Applications 129
- 3.7.3.1 Renewables 129
- 3.7.3.2 Oil and gas 130
- 3.7.3.3 AI home energy management 131
- 3.7.3.4 Smart grid 131
- 3.7.4 Companies 131
- 3.8 AI in Education 133
- 3.8.1 Market drivers 134
- 3.8.2 Applications 135
- 3.8.3 Companies 135
- 3.9 AI in Chemicals 136
- 3.9.1 Market drivers 137
- 3.9.2 Applications 138
- 3.9.3 Companies 139
- 3.10 AI in Medical devices and Healthcare 141
- 3.10.1 Market drivers 142
- 3.10.2 AI in the medical devices and healthcare value chain 144
- 3.10.3 Applications 144
- 3.10.3.1 Pharmaceuticals 144
- 3.10.3.1.1 Drug discovery and development 145
- 3.10.3.1.2 Companies 147
- 3.10.3.1.3 Challenges of AI in pharmaceuticals 148
- 3.10.3.2 Medical diagnostics-cancer detection 149
- 3.10.3.2.1 Companies 151
- 3.10.3.3 Medical diagnostics-cardiovascular disease 151
- 3.10.3.3.1 Companies 153
- 3.10.3.4 Medical diagnostics- respiratory disease 153
- 3.10.3.4.1 Companies 155
- 3.10.3.5 Medical diagnostics- retinal disease 155
- 3.10.3.5.1 Companies 156
- 3.10.3.6 Medical diagnostics- neurodegenerative diseases 157
- 3.10.3.6.1 Companies 158
- 3.10.3.7 Medical diagnostics- retinal diseases 159
- 3.10.3.7.1 Companies 159
- 3.10.3.8 Patient monitoring 159
- 3.10.3.8.1 Companies 159
- 3.10.3.1 Pharmaceuticals 144
- 3.11 AI in Food and Agriculture 160
- 3.11.1 Market drivers 161
- 3.11.2 AI in the food and agriculture value chain 161
- 3.11.3 Applications 162
- 3.11.3.1 Deep Learning in agriculture 162
- 3.11.3.2 Agricultural drones 162
- 3.11.3.3 Indoor farming 163
- 3.11.3.4 Food production 163
- 3.11.3.4.1 Traceability to manage waste 163
- 3.11.3.4.2 Food identification and sorting 164
- 3.11.3.4.3 Food packaging 164
- 3.11.3.4.4 Food processing 165
- 3.11.3.5 Self-Driving Tractors 165
- 3.11.3.6 Companies 165
- 3.12 AI in Financial Services 169
- 3.12.1 Market drivers 169
- 3.12.2 Applications 170
- 3.12.3 Companies 171
- 3.13 AI in Smart homes 175
- 3.13.1 Market drivers 176
- 3.13.2 Applications 176
- 3.13.2.1 Home security 176
- 3.13.2.2 Daily household activities 177
- 3.13.2.3 Autonomous HVAC 178
- 3.13.2.4 Household energy 178
- 3.13.3 Companies 178
- 3.14 AI in Consumer devices 179
- 3.14.1 Market drivers 179
- 3.14.2 Applications 180
- 3.14.3 Companies 181
- 3.15 AI in Retail, Sales and CRM 182
- 3.15.1 Market drivers 182
- 3.15.2 Applications 183
- 3.15.3 Companies 185
- 3.16 AI in waste management 189
- 3.16.1 Market drivers 189
- 3.16.2 Applications 190
- 3.16.3 Companies 191
- 3.17 AI in Information and communications technology (ICT) 193
- 3.17.1 AI Processors 194
- 3.17.1.1 Companies 194
- 3.17.2 AI in computer vision and facial recognition 195
- 3.17.2.1 Market drivers 195
- 3.17.2.2 Applications 196
- 3.17.2.3 Companies 197
- 3.17.3 AI in Cybersecurity 197
- 3.17.3.1 Applications 197
- 3.17.3.2 Companies 198
- 3.17.1 AI Processors 194
- 3.18 AI in Electronic noses 200
- 3.18.1.1 Applications 200
- 3.18.1.2 Companies 201
4 GOVERNMENT AI INITIATIVES, POLICY & REGULATIONS 203
- 4.1 United States 203
- 4.2 Canada 205
- 4.3 Europe 206
- 4.4 Asia-Pacific 207
5 ARTIFICAL INTELLIGENCE COMPANY PROFILES 209
6 DEFUNCT AI COMPANIES 534
7 RESEARCH SCOPE AND METHODOLOGY 535
- 7.1 Report scope 535
- 7.2 Research methodology 536
8 REFERENCES 537
List of Tables
- Table 1. Narrow AI vs. General AI. 32
- Table 2. Key trends in AI in 2021. 36
- Table 3. Publicly listed AI companies. 46
- Table 4. Market challenges for Artificial Intelligence. 51
- Table 5. AI based on Functionality. 54
- Table 6. AI Based on Capability. 56
- Table 7. No-code AI players. 76
- Table 8. Market trends and drivers in AI. 79
- Table 9. Recent market developments in Artificial Intelligence 2020-2022 81
- Table 10. AI Funding and investments 2020-2022. 87
- Table 11. Market drivers for use of Artificial Intelligence in manufacturing. 97
- Table 12. Applications of AI in manufacturing. 99
- Table 13. Companies developing AI in manufacturing. 106
- Table 14. Market drivers for use of Artificial Intelligence in automotive and transportation. 109
- Table 15. Applications of AI in automotive and transportation. 110
- Table 16. Companies developing AI for Automotive Manufacturing. 112
- Table 17. Companies developing AI for autonomous vehicles. 115
- Table 18. Companies developing AI for vehicle fleet management. 116
- Table 19. Companies developing AI for vehicle fleet management vehicles 117
- Table 20. Market drivers for use of Artificial Intelligence in construction. 122
- Table 21. Applications of AI in construction. 123
- Table 22. Companies developing AI for construction. 125
- Table 23. Market drivers for use of Artificial Intelligence in energy. 127
- Table 24. Application of AI in renewable energy. 129
- Table 25. Applications of AI in the Oil and Gas sector. 130
- Table 26. Companies developing AI in energy. 132
- Table 27. Market drivers for AI in education. 134
- Table 28. Applications of AI in Education. 135
- Table 29. Companies developing AI in education. 135
- Table 30. Market drivers for AI in the chemicals market. 137
- Table 31. Applications of AI in the chemicals market 138
- Table 32. Companies developing AI in the chemicals market. 140
- Table 33. Market drivers for use of Artificial Intelligence in medical devices and healthcare. 142
- Table 34. Applications of AI in medical devices and healthcare market. 144
- Table 35. AI Methods in Drug Discovery and development. 146
- Table 36. AI tools used in drug discovery, 146
- Table 37. Companies developing AI in pharmaceuticals. 147
- Table 38. Challenges of AI in pharmaceuticals. 148
- Table 39. Companies developing AI for medical diagnostics. 151
- Table 40. Companies developing AI for cardiovascular disease. 153
- Table 41. Companies developing AI for respiratory disease. 155
- Table 42. Companies developing AI for retinal disease. 156
- Table 43. Companies developing AI for neurodegenerative diseases. 158
- Table 44. Companies developing AI for retinal disease. 158
- Table 45. Companies developing AI for Patient monitoring 159
- Table 46. Market drivers for use of Artificial Intelligence in food and agriculture. 160
- Table 47. Applications of AI in food and agriculture. 162
- Table 48. Companies developing AI for agriculture. 165
- Table 49. Market drivers for use of Artificial Intelligence in financial services. 169
- Table 50. Applications of AI in financial services. 170
- Table 51. Companies developing AI for the financial services. 171
- Table 52. Market drivers for use of Artificial Intelligence in smart homes. 175
- Table 53. Applications of AI in smart homes. 175
- Table 54. Companies developing AI for smart homes. 178
- Table 55. Market drivers for use of Artificial Intelligence in consumer devices. 179
- Table 56. Applications of AI in consumer devices. 180
- Table 57. Companies developing AI for consumer devices. 181
- Table 58. Market drivers for use of Artificial Intelligence in retail, sales and CRM. 182
- Table 59. Applications of AI in retail, sales and CRM. 183
- Table 60. Companies developing AI in retail, sales and CRM. 185
- Table 61. Market drivers for use of Artificial Intelligence in waste management. 189
- Table 62. Applications of AI in waste management. 190
- Table 63. Companies developing AI in waste management. 191
- Table 64. AI Processors companies. 194
- Table 65. Market drivers for use of Artificial Intelligence in computer vision and facial recognition. 194
- Table 66. Applications of AI in computer vision and facial recognition. 196
- Table 67. Companies developing AI in computer vision and facial recognition 196
- Table 68. Applications of AI in cybersecurity 197
- Table 69. Companies developing AI in cybersecurity. 198
- Table 70. Applications of AI in electronic noses. 200
- Table 71. Companies developing AI in electronic noses. 201
- Table 72. Defunct AI companies. 534
List of Figures
- Figure 1. History and development of AI. 29
- Figure 2. Components, types and subfields of AI. 31
- Figure 3. Global AI funding 2015-2021. 34
- Figure 4. Maturity level of AI by industry. 39
- Figure 5. Market revenues forecast by industry 2020-2032, billion USD. 40
- Figure 6. Global AI software revenues 2020-2030, billions USD. 41
- Figure 7. Global AI Hardware revenues 2020-2030, billions USD 42
- Figure 8. AI players and target markets. 45
- Figure 9. Method domains of artificial intelligence. 52
- Figure 10. The structure and training of deep neural networks. 65
- Figure 11. AI in the manufacturing value chain. 99
- Figure 12. Computer vison based quality control. 105
- Figure 13. AI in the automotive value chain. 110
- Figure 14. Levels of driving automation. 113
- Figure 15. Baidu self-driving car. 114
- Figure 16. AI in the construction value chain. 123
- Figure 17. AI in the energy value chain. 128
- Figure 18. AI in the medical devices and healthcare value chain. 144
- Figure 19. Applications of AI in pharmaceuticals. 145
- Figure 20. Artificial intelligence (AI) in drug discovery. 146
- Figure 21. AI in the food and agriculture value chain. 161
- Figure 22. Mobileye EyeQ chip. 378
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